That pelican looks like it's in Miami for a crypto conference.
seemaze 1 hours ago [-]
That pelican wears it's sunglasses at night. So it can, so it can keep track of the visions in it's eyes.
whh 35 minutes ago [-]
Pelican and I need an optometrist urgently
joseda-hg 6 hours ago [-]
It looks like the starting soon screen of a crypto presentation
xattt 6 hours ago [-]
It looks like it’s been partying for 60 years based on the wrinkles on its pouch.
Xenoamorphous 5 hours ago [-]
Pelican in a white Testarossa.
coffeecoders 2 hours ago [-]
That pelican looks like it lost 100k on NFTs and now runs a paid stock-trading group.
airstrike 2 hours ago [-]
They're called ClawCons now
sho_hn 1 hours ago [-]
Personally, I don't attend them since I figured out I can set up agents to performatively engage in AI-related discussion and events for me, freeing up tons of my time thanks to automation.
Truly: Nothing better than AI tools to brave the challenges and requirements of modern life. "Claude, ride the hype train" is the decisive prompt you need.
brindleth 3 hours ago [-]
It look like the start of a new viral Peliwave aesthetic
egillie 5 hours ago [-]
and somehow in 1992
verdverm 5 hours ago [-]
sorta looks like the Tron ripoff in the I/O keynote
1 hours ago [-]
5 hours ago [-]
irthomasthomas 6 hours ago [-]
This is a perfect illustration of something I noticed with llm progress. Ask them to improve an svg like this, and it never fixes the missing crossbar or disconnected limbs, it just adds more stuff. In this example they have obviously improved greatly, and it contains a ridiculous amount of detail, but they still to get the basic shape of the frame wrong. It's weird. And the pattern shows up everywhere, try it with a webpage and it will add more buttons and stuff. I've even experimented with feeding the broken pelican svgs to an image model to look for flaws, and they still fail to spot the broken elements.
edit: fixed human hallucination
derefr 5 hours ago [-]
When you say "improve an svg like this", how are you imagining setting that workflow up? Are you just feeding them the SVG to iterate on; or are you giving them access to a browser to look at the rendering of the SVG?
I ask because:
Insofar as the original pelican test is zero-shot, it effectively serves as a way to test for the presence of a kind of "visual imagination" component within the layers of the model, that the model would internally "paint" an SVG [or PostScript, etc] encoding of an image onto, to then extract effective features from, analyze for fitness as a solution to a stated request, etc.
But if you're trying to do a multi-shot pelican, then just feeding back in the SVG produced in the previous attempt, really doesn't correspond to any interesting human capability. Humans can't take an SVG of a pelican and iteratively improve upon it just based on our imagined version of how that SVG renders, either! Rather, a human, given the pelican, would simply load the pelican SVG in a browser; look at the browser's rendering of the pelican; note the things wrong with that rendering; and then edit the SVG to hopefully fix those flaws (and repeat.)
I imagine current (mult-modal and/or computer-use) LLMs would actually be very good at such an "iterative rendered pelican" test.
irthomasthomas 5 hours ago [-]
I'm talking about two type of improvement, model improving, and prompt based improving. I am noticing that the baseline output has a lot more going on, the model has improved, yet it still makes those obvious looking mistakes with the shape of the frame or disconnected limbs etc.
And I am saying that if you take one of these SVGs and ask an LLM to look for flaws, it rarely spots those obvious flaws and instead suggests adding a sunset and fish in the birds mouth.
stared 3 hours ago [-]
To a certain extent, it feels like a Sonnet 3.7 moment. Slightly overeager - you ask for a button color change, you see layout changes, new package dependencies, and the README rewritten from scratch - and not necessarily correctly.
When I ask for a pelican on a bike, I want the Platonic ideal of a pelican on a bike, not a vision of an alternative reality in which pelicans created bikes. Though, thinking about it again, maybe I should.
p1esk 1 hours ago [-]
What is “Sonnet 3.7 moment”?
4 hours ago [-]
sosborn 35 minutes ago [-]
This matches my experience with human too FWIW.
emp17344 23 minutes ago [-]
Why is there always an identical reply like this when anyone criticizes LLMs?
gowld 1 hours ago [-]
It's because LLMs are fundamentally generative (creative), not truth-seeking or logic-seeking. Simple logic has always been incredibly expensive to impossible for LLMs.
girvo 3 hours ago [-]
Their ability is best described as "spiky". To steal from aphyr: think kiki, more than bouba. Whats interesting is that a lot of the models seem to have similar spikes and "troughs", though there are differences.
tantalor 6 hours ago [-]
Forgetting the chainstay is typical of asking random people to draw a bicycle.
> most ended up drawing something that was pretty far off from a regular men’s bicycle
et1337 5 hours ago [-]
Asking random people to write SVG gives even worse results
lxgr 4 hours ago [-]
Especially without being able to look at the rendered output! (At least I'd be surprised if modern server-side tool calls regularly include an SVG renderer that can show a rasterized version to the model to iterate on it.)
gpm 16 minutes ago [-]
One of the many things Google was pitching today is that they're going to run things like google search with access to linux container environments to do things like run tool calls... which will presumably be able to rasterize SVGs and show them to the model.
But Simon says he runs these through the API without tool access specifically to prevent that sort of "cheating". I.e. it's an LLM benchmark not an LLM+Harness benchmark.
Eji1700 3 hours ago [-]
Although every single render of those has pedals on the correct side as opposed to the Gemini optical illusion back pedal that tries to be both on the other side of the central gear and infront of the back wheel.
Not really a criticism but an interesting point that you would never expect a human to make that mistake even in a bad drawing.
dekhn 40 minutes ago [-]
I'm told there is a new Jeff Dean fact inside google: "Jeff Dean manually adjusts the weights in the model just to screw with Simon".
karmakaze 34 minutes ago [-]
I'm hoping we'll have many of these pelican cyclist pictures collected. Then when all the models can do it well, we'll stop posting about them, and dhen the next generations of AIs train on the data we'll have these canonical archetypes.
smcleod 6 hours ago [-]
I feel like it embodies Google's vibe of an uncool guy trying to stay relevant to the youth pretty well.
nrds 1 hours ago [-]
We've been daily-driving this model for a few weeks and let me tell you, everything it does is a lot. Fast as fuck and it's actually not bad intelligence-wise for a fast model. It basically tries to make up for any intelligence deficit by just doing a lot, checking a lot, retrying a lot.
That's not to say I don't spend my days raging at it... a lot... but it's not that bad. It does tend to ignore completion criteria but it doesn't obviously degrade when being nudged like some models do.
taurath 55 minutes ago [-]
I can’t help but think that what AI is best at is convincing management that things it creates are full featured which reads to their brains as mature
danilocesar 1 hours ago [-]
Given your pelican is very famous now, don't you think they are adding instructions to beat this benchmark those days?
Culonavirus 1 hours ago [-]
Well clearly it's not working lmao
tandr 1 hours ago [-]
If you sort that table by "output token price", it gets really terrifying - going from 4 cents up to $600 =8-O
hydra-f 6 hours ago [-]
Same old issue with Gemini models trying to "enrich" everything
sbinnee 3 hours ago [-]
Wow what’s with all the styling? Is it manifestation of google’s styling bias? I like the result for sure. It’s shiny and pretty. But then it’s something I didn’t ask for.
nickvec 4 hours ago [-]
I enjoy the vaporwave aesthetic it went for. Looks like the pelican has a fish in its mouth too?
I'm sure that certain point came and went many releases ago.
__mharrison__ 4 hours ago [-]
They are just trolling you now
gcgbarbosa 6 hours ago [-]
funny that when I try the same prompt, gemini generates an image, not an SVG.
something is not right.
simonw 5 hours ago [-]
That's likely because you're using the Gemini app which has a tool for image generation (nano banana) - I do my tests against the API to avoid any possibility of tool use.
nickmccann 5 hours ago [-]
This question makes me wonder if you one shot each pelican or do you run it a few times to get the best one?
simonw 3 hours ago [-]
I one-shot. I have a long-standing ambition to have each model generate 3x and then get the model (assuming it's a vision model) to pick the best one.
TacticalCoder 3 hours ago [-]
Love your pelicans, as always. And that one is... Wow.
I noticed the "Synthwave" aesthetic, which is enjoying quite some success since quite some time now, has found its way into AI models (even when it's not in the user's query). It's not the first time I see the sun at sunset with color bands etc. in AI-generated pictures. Don't know why it's now taking on in AI too.
Hence the comments here about the 90s, Sonny Crockett's white Ferrari Testarossa in Miami, etc.
To be honest as a kid from the 80s and a teenager from the 90s who grew up with that aesthetic in posters, on VHS tape covers, magazine covers, etc. I do love that style and I love that it made a comeback and that that comeback somehow stayed.
kridsdale3 2 hours ago [-]
Sythwave vibe hype hit a cultural high point with the release of Far Cry 3 Blood Dragon in 2013.
So it's as relevant and baked-in to today as actual 80s synth-culture was in 2000.
gowld 1 hours ago [-]
At the keynote today, Sundar Pichai asked Gemini to clone the Dino Game, and it added a synthwave-esque aesthetic.
nashashmi 6 hours ago [-]
Beats a human by like 10$
unglaublich 6 hours ago [-]
So according to Google logic, the value of the pelican is $10-eps.
(They applied that reasoning to conversions via adwords)
Interesting pricing direction. I don't think we have ever seen a 3x price increase for in the immediate next same-sized model (and lol @ 3 only ever getting a preview).
3.5 flash costs similar to Gemini 2.5 pro which was $1.25/$10
__jl__ 5 hours ago [-]
This understates the cost increase. 3.5 Flash also uses more tokens. artificialanalysis.ai shows these difference to run the whole eval, which I think is more realistic pricing:
Gemini 2.5 flash (27 score): $172 (1.0x)
Gemini 2.5 pro (35 score): $649 (3.8x)
Gemini 3.0 Flash (46 score): $278 (1.6x)
Gemini 3.5 Flash (55 score): $1,552 (9.0x or 2.4x compared to 2.5 pro)
This is a massive price increase... 5.6x compared to Gemini 3.0 Flash
doginasuit 6 hours ago [-]
They probably never intended to keep serving cheap models. This is a natural way to introduce the squeeze, now that they have people who built services on their API. It makes a lot of sense to have an abstraction layer where the provider doesn't matter. If you are working in Kotlin, Koog is excellent.
lanthissa 5 hours ago [-]
switching models is insanely cheap compared to token cost on anything signficant, this is a take so cynical it misses the reality
Clueed 3 hours ago [-]
in any corporate or half compliance-relevant setting switching isn't trivial. new DPA, subprocessor notifications, TIA, procurement review, security questionnaires, plus re-running your evals because prompts don't transfer 1:1. token cost is just one of the line items.
lanthissa 2 hours ago [-]
no it really not, even the soggiest bank has multiple api vendors atm.
alexandre_m 1 hours ago [-]
I agree with parent. I'm not sure where your stance is coming from.
From what I hear, most enterprise AI deployments are seat-based subscriptions with annual commitments.
p1esk 1 hours ago [-]
Yes, I work at a 50 person startup and even here switching from CC to codex or cursor would be non-trivial for multiple reasons - not just the annual commitment.
3 hours ago [-]
hnarn 5 hours ago [-]
> now that they have people who built services on their API
People really can’t wait to be the next Zynga
rudedogg 6 hours ago [-]
If Google is actually getting cheaper inference than everyone else with their TPUs, this smells like trouble to me. Maybe serving LLMs at a profit is proving difficult.
Or maybe they think because their benchmarks are good they can ramp up the prices. Seems like they don’t have the market share to justify a move like that yet to me.
tempaccount420 6 hours ago [-]
This is not priced at inference cost.
My guess: it's the price at which they make more money than if they rent the TPUs to other companies.
The Gemini team has had trouble securing enough TPUs for their user's needs. They struggle with load and their rate limits are really bad. Maybe at a higher price, they have a better chance at getting more TPUs assigned?
gpm 5 hours ago [-]
The cost at such they could rent out the TPUs, i.e. the market rate, is the inference cost.
Just because you are vertically integrated doesn't mean you get to discount the one business units products to the other. Doing so discounts the opportunity cost you pay and is just bad accounting.
KoolKat23 2 hours ago [-]
Basic business principle, you charge what people are willing to pay not what it costs.
dash2 3 hours ago [-]
Look up “double marginalisation”.
HDThoreaun 4 hours ago [-]
Depends on if you have spare capacity I think. They have minimal competition so they might be maximizing profit by charging prices higher than what clears all their supply.
booty 5 hours ago [-]
Prevailing wisdom is that serving LLMs at a profit is achievable... it's when you factor in the cost of training them that prices get astronomical real fast.
Open-source model inference providers (who do not have to bear the cost of training) seem able to do it at much lower prices.
Of course, it's possible that they are burning through investor cash as well, and apples-to-apples comparisons are not possible because AFAIK Google does not mention the size/paramcount for 3.5 Flash.
But if the prevailing wisdom is true, I think it's actually encouraging. It suggests that OpenAI and Anthropic could perhaps, if they need to, achieve profitability if they slow down model development and focus on tooling etc. instead. If true that's probably good news for everybody w.r.t. preventing a bursting of this economic bubble.
...my opinions here are of course, conjecture built on top of conjecture....
eklitzke 1 hours ago [-]
Most of the training cost is not in the final training run, it's in all of the R&D (including salaries, equity, etc.) that it takes to get to the final training run. The actual cost of all of the TPUs (or GPUs), power, networking, storage, etc. for the final training run is significant, but it's even more expensive to have this huge R&D team doing frontier model development and using a lot of those same resources during development.
I think you're right that releasing models at a slower cadence would bring down costs to some degree, but it's not clear how much. All of these companies could significantly reduce their opex but at the risk of falling behind in terms of being at the frontier.
HDBaseT 3 hours ago [-]
Not to discredit you, because you are 100% correct but tangential note about together.ai, they seem fairly unreliable with constant outages or higher than normal latency.
spyckie2 5 hours ago [-]
Its probably that in 1 or 2 years local (free) models will completely take the place of cheap models so cheap models need to move up the quality chain.
You have free local models for most tasks, $20 subscriptions for near-frontier intelligence, and API per token costs for frontier intelligence.
Flash seems to be targeting the near-frontier category.
TurdF3rguson 5 hours ago [-]
That might work if it wasn't for FOMO. Are you ok with only $20 of frontier usage a month?
rohansood15 27 minutes ago [-]
Subjective, but if we compare to compute not everyone needs the most expensive laptops or super computers for their work.
I think frontier models will be invaluable for scientific research, defense, financial analysis and such. But the average person probably would be reasonably well-served with a local model.
If you're in sales, customer service, product management and such - the leading open models at the 30B mark are already good enough.
IncreasePosts 6 hours ago [-]
Maybe the margins are just very large for Google because they predict so much demand for 3.5?
GodelNumbering 6 hours ago [-]
This combined with locally runnable models getting pretty good recently (e.g. Qwen 3.6) tells me that it's time to seriously consider local dev setup again
MASNeo 6 hours ago [-]
Besides the cost you get the control, transparency and ability to identify small language models or LoRA you want to serve even more cost effective.
cft 5 hours ago [-]
This should become the new Apple's hardware and software play. I am hopeful about the new CEO
BoorishBears 4 hours ago [-]
This is trouble if you're not Google/OpenAI/Anthropic: they're all shifting towards pricing for the economic value of the knowledge work they're aiding.
The economic value increases non-linearly as models get more intelligent: being 10% more capable unlocks way more than 10% in downstream value.
That's trouble because the non-linear component means at some point their margins will stop primarily defined by the cost of compute, and start being dominated by how intelligent the model is.
At that point you can expect compute prices to skyrocket and free capacity to plummet, so even if you have a model that's "good enough", you can't afford to deploy it at scale.
(and in terms of timing, I think they're all well under the curve for pricing by economic value. Everyone is talking about Uber spending millions on tokens, but how much payroll did they pay while devs scrolled their phones and waited for CC to do their job?)
hei-lima 6 hours ago [-]
We need another "Deepseek moment" or else it will become impossible for the regular dude to use AI. It will become something that only big companies can afford.
SwellJoe 5 hours ago [-]
We're having DeepSeek moments every couple of weeks.
Qwen 3.6 hit hard in the self-hosting space. It's incredibly capable for its size, really shaking up what's possible in 64GB or even 32GB of VRAM.
The Prism Bonsai ternary model crams a tremendous amount of capability into 1.75GB.
And, DeepSeek V4 is crazy good for the price. They're charging flash model prices for their top-tier Pro model, which is competitive with the frontier of a few months ago.
The winners in the AI war will be the companies that figure out how to run them efficiently, not the ones that eke out a couple percent better performance on a benchmark while spending ten times as much on inference (though the capability has to be there, I think we're seeing that capability alone isn't a strong moat...there's enough competent competition to insure there's always at least a few options even at the very frontier of capability).
trollbridge 4 hours ago [-]
We have Qwen 3.6-35b (6) on a 5090 (32GB) and it's blowing me away. Works fine for most (not all) code generation tasks. One developer here has been extremely stubborn about adopting AI; he's finally adopted it, albeit only when it's coming from a local model like this.
DeepSeek V4 Pro likewise is insanely good for the price. I simply point it at large codebases, go get a cup of coffee or browse Hacker News, and then it's done useful work. This was simply not possible with other models without hitting budget problems.
akulbe 3 hours ago [-]
Any chance you'd be willing to talk further about your setup? I have 2 x 3090s in a local machine, and I'm still left with questions about how best to use stuff locally.
sheeshkebab 1 hours ago [-]
You can only run heavily quantized models on all 3/4/5 rtx gpus (with 32gb or less vram) - and you probably want moe versions like Qwen 35b for this to run at speed somewhat comparable to Claude. It’s still not there to be honest but getting there. Personally I mess around with llama.cpp on m5 max with 128gb - it’s a decent setup to try various medium sized things, and runs llms surprisingly well without quantization, at least the moe models.
SwellJoe 58 minutes ago [-]
Two 3090s is 48GB, so it's possible to run the 6-bit quantization comfortably, which is fine. It doesn't start to get notably dumber until lower than that. It won't be as fast as a hosted model, but dual 3090s will be comfortably fast for interactive use with the MoE version and not terrible to use with the dense model. I run the dense model at 8 bits on my dual Radeon V620 desktop machine, which I think would be slower than two 3090s, or at least not notably faster.
hedgehog 33 minutes ago [-]
Have you done comparisons with 4 bit and seen a noticeable difference for coding tasks?
Zambyte 4 hours ago [-]
> It's incredibly capable for its size, really shaking up what's possible in 64GB or even 32GB of VRAM.
You can lower that to at least 24GB. I've been running Qwen 3.5 and 3.6 with codex on a 7900 XTX and the long horizon tasks it can handle successfully has been blowing my mind. I would seriously choose running my current local setup over (the SOTA models + ecosystem) of a year ago just based on how productive I can be.
hei-lima 1 hours ago [-]
Gonna try it.
squidbeak 6 hours ago [-]
Deepseek had another moment a few weeks ago. V4 isn't far behind the US frontier, and so far its flash variant seems a very reliable coder and costs a pittance.
ai_fry_ur_brain 6 hours ago [-]
Deepseek V4 (not flash) trippled in price too by the way (from Deepseek). Get used to this pattern.
This is what you get for relying on the generosity of billionaires. Keep offshoring your thinking ability to a machine and let me know how competitive you. Hint, you wont be. There's nothing special about being able to use an LLM.
npn 6 hours ago [-]
Unlike other providers, Deepseek does promise that they will lower the price when their Huawei cards arrive in a few more months.
flakiness 4 hours ago [-]
Give me a link. Cannot wait. One PSA is that they have 75% discount right now so it is already cheaper than the full price.
npn 4 hours ago [-]
Weird, last time I checked it was right on the pricing page.
But even when it happens I doubt it would be as cheap as it is right now. Enjoy it while it lasts!
ls612 5 hours ago [-]
Anyone can host Deepseek V4 on rented GPUs and sell inference on it. Price will very quickly converge to the marginal cost of inference. This is as close to a pure commodity as it gets in the AI space so competitive market economics will put in work. Same is true for any open-weights model.
ai_fry_ur_brain 5 hours ago [-]
You dont understand the costs involved to run inference at scale
Please go run some numbers.The hardware needed to Run Deepseek v4 flash at 20 tps for a single session is nowhere close to what is required to run it at 50tps for 5,000 concurrent sessions.
Imagine what it takes to be profitible when running at 150 tps for 30cents per 1mm. You make less than 1k per month and the hardware required to run that cost 10k a month to rent with hardly any concurrent session capability.
- That's 800 * 60 * 60 generated tokens per hour, at a cost of $0.87 per 1M tokens, or $2.50 per hour.
- For input and output tokens, the math is a bit more complicated because we have to make assumptions about their ratio. Using the published values from OpenCode, we get another $2.50 for cached tokens (which are almost free for DeepSeek) and another $3.40 for input tokens (which are a lot cheaper to compute than output tokens), which gives us a total of $8.50 per hour per B300 GPU.
- B300 GPUs can be rented for as low as $3.40 per hour, which is less than $8.50, so hosting DeepSeek V4 Pro is profitable.
You could also host it at fewer tps per user to raise the efficiency and therefore the profit even higher.
ls612 3 hours ago [-]
Even not assuming Blackwell inference the $3.50/hr price is likely close to the marginal cost. The Deepseek R0 model is a little more than a third of the size of V4 and cost around $1/Mtok to serve at scale based on deepseek's blogs last year and Hopper rental prices.
ls612 5 hours ago [-]
Yes it is more efficient in $/tok to run at scale than to run just for yourself. Everyone selling Deepseek V4 inference is selling an undifferentiated good. They have run the numbers on how much it costs and are competing against a dozen other outfits also selling undifferentiated open weights tokens. Whatever the dollar cost they face to rent those GPUs will be what they are able to charge in the competitive market. That is great for you and me because we can buy tokens at pretty much exactly what it costs to produce them.
zaptrem 4 hours ago [-]
V4-Pro is about 2.4× total params and 1.3× active params of V3.2.
dpoloncsak 5 hours ago [-]
Mate why are you so mad at people upset the price trippeled? It's a fair complaint that people built services using the cheaper ones with the expectation future models would be similarly priced. You can avoid 'offloading thinking' while still building ontop of these models
creationcomplex 3 hours ago [-]
You're typing as your handwriting and letter sending abilities deteriorate to dust. Writing down information as your memory capacity decays. Remembering instead of living at the pure leading edge of perception dulling your reactions.
Smh, it's all downhill from the first unadulterated neuron.
aurareturn 6 hours ago [-]
I think demand is too great and compute is not enough. Nothing to do with billionaires colluding to increase prices by 3x.
boutell 3 hours ago [-]
Actually, why should Google collude on pricing? They have deep pockets and could starve out the competition while keeping prices low, if they really wanted.
I think it is priced high because it's basically their smartest model as well as their fastest, so why shouldn't they?
You can still use earlier generations of Flash at a lower cost if you want "fast and cheap and just OK," which often makes sense. (Just checked)
I would predict they will lower this price when 3.5 High appears, but perhaps not all the way.
xbmcuser 5 hours ago [-]
What we need is a deepseek moment in hardware ie China reaching parity on node size that is the only way latest computers let alone latest ai will be available to us in the future otherwise the profit margins will push most production to AI.
throwa356262 5 hours ago [-]
To be honest, China not having access to the latest hardware is exactly what has driven LLM technology forward the last 2 years.
humanfromearth9 5 hours ago [-]
Why?
Viacol 3 minutes ago [-]
On top of that, China is also facing hardware constraints, which is pushing companies to develop better domestic chips for AI training. It'll be interesting to see how things perform once Huawei's newer hardware is fully deployed at DeepSeek.
Weryj 4 hours ago [-]
Because it forced them to focus on efficiency, instead of throwing more compute at the problem.
Just like in software, some of the most beautiful solutions come from constraints. Think, the optimisations that game developers implemented because of the frame budget.
Maybe we can figure out better ways to use the models that can run on cheap hardware.
segmondy 6 hours ago [-]
You can use lots of open weight models today.
hei-lima 5 hours ago [-]
That's one solution to the problem. But it still needs some good computational capabilities. Either we optimize the hell out of those models, or we wait for the hardware to become good enough for them.
Gigachad 3 hours ago [-]
The real problem is the hardware to run them is still very expensive.
GeorgeOldfield 6 hours ago [-]
gemini isn't even that good. just tested 3.5 on usual complex prompts to opus/chat 5.5. meh
k8sToGo 5 hours ago [-]
Are you really comparing flash to opus? Shouldn't you be comparing pro?
CognitiveLens 5 hours ago [-]
The benchmark tables in the Google announcement include Opus 4.7, and the numbers are very impressive. Caveat emptor, but it's not unreasonable to compare a new Flash to a current-gen Opus, even if some of the results confirm expectations
bachmeier 5 hours ago [-]
Who would have guessed that something costing roughly a third as much wouldn't do as well at certain tasks.
kmac_ 5 hours ago [-]
Well, the first impression is that Gemini still goes off the instruction rails easier than other models, but I noticed that it tends to go back to the initial goal without holding a hand, which is a real improvement. It's really interesting that these models behave so differently.
fnordsensei 6 hours ago [-]
3.5 flash is listed as stable rather than preview, or am I misreading?
3.1 flash lite — $0.25/$1.50 — plus insanely fast.
3.1 flash lite isn’t quite as good as 3 flash preview (which is the most incredible cheap model… I really love it) — but 3.1 is half the price and the insane speed opens up different use cases.
For comparison, Opus models are $5/$25
SwellJoe 6 hours ago [-]
Opus 4.7 is smarter than even Gemini 3.1 Pro on nearly every metric, though. You're comparing apples to oranges. Gemini 3.1 Flash is somewhere in the neighborhood between current Haiku and Sonnet, I think? Still a better value than the Anthropic models, I guess, which are quite pricey.
Since Gemini 3.5 Flash is raising the price to $1.50/$9.00, it's priced between Haiku and Sonnet. If it outperforms Sonnet, it remains a good value, I guess. Though DeepSeek V4 Flash is much cheaper than all of them, and seemingly competitive.
WarmWash 4 hours ago [-]
>Opus 4.7 is smarter than even Gemini 3.1 Pro on nearly every metric,
Outside of coding, claude models are pretty meh. GPT and Gemini are the workhorses of science/math/finance.
robwwilliams 3 hours ago [-]
Not in my fields of science: Genetics and neuroscience. The combination of Opus 4.7 Adaptive used with well structure project folders is amazingly useful.
epolanski 2 hours ago [-]
And even on coding, they are mostly good at generating new code.
They sure are not at thorough analysis or debugging, etc.
WhitneyLand 5 hours ago [-]
Their rationale might be that it’s size and intelligence are growing relative to the market.
Fwiw it’s beating Claude Sonnet in most benchmarking (benchmaxxing?), yet they’ve priced it almost half off on a per token basis.
Question is are you going to persuade anyone with this argument?
Are there many devs at Google who legit prefer Gemini over Claude and Codex? Would love to hear about that.
SyneRyder 5 hours ago [-]
> Are there many devs at Google who legit prefer Gemini over Claude and Codex? Would love to hear about that.
A few weeks ago, Steve Yegge claimed he'd heard that Google employees are banned from using Claude & Codex.
Gen AI is unprofitable, especially at the insanely cheap rates they've been offering to get people in the door. So expect more increases in the future.
roadside_picnic 5 hours ago [-]
These companies are unprofitable (as all companies at this stage and ambition should be) but I increasingly don't see any justification for the idea that it is fundamentally unprofitable.
Inference alone is certainly profitable. I'm running models at home that are comparable to performance of paid models a year or so ago for free. Even for much larger models the cost around inference serving are clearly manageable.
Training is where the costs are, but I'm increasingly convinced those too could have costs dramatically reduced if necessary. Chinese companies like Moonshot.ai are doing fantastic work training frontier models for a fraction of the cost we're seeing from Anthropic/OpenAI.
This isn't like Uber or Doordash where the economics fundamentally don't make sense (referring to the early days of these services where rates were very cheap).
It's a compelling story that "current AI is unsustainable", but it doesn't pan out in practice for a multitude of reasons (not the least of which is that we can always fall back to what models did last year for basically free).
overrun11 3 hours ago [-]
Arguably nothing even has to change with training for this to be sustainable. Dario has claimed that Anthropic is profitable on a per training run basis. They aren't profitable because they choose to keep investing in increasingly large training runs.
dsdsfaa 29 minutes ago [-]
Cut the crap.
The value of the firm's operating assets = EBIT(1-t) - Reinvestment
You (Anthropic) want that sky-high valuation? Accept reinvestment is part of the equation.
If they decide to stop reinvesting, then they are as good as dead.
Moreover, they clearly are not re-investing cash flows from operations. Why do you think they are continually raising money? Lmao.
ReliantGuyZ 5 hours ago [-]
And if you can run those strong models at home for free, why would hosting them be a successful business for any of these providers?
Profitable maybe, in terms of having low costs, but why pay Google or whoever when you can do it yourself for cheaper/"free"?
HDThoreaun 4 hours ago [-]
If you can run your server at home for free why would hosting it be a successful business for any of these propviders?
LetsGetTechnicl 5 hours ago [-]
If it's profitable, why haven't they reported any profits? People like Ed Zitron have done the math and it just doesn't add up. I mean he just published this piece today: https://www.wheresyoured.at/ai-is-too-expensive/
anthonypasq 5 hours ago [-]
Amazon was unprofitable for over a decade, and they were public. Theres no incentive to be profitable as a private company if you can continue to raise money.
Ed Zitron and Gary Marcus are... confused.
mynameisash 3 hours ago [-]
> Amazon was unprofitable for over a decade, and they were public.
Amazon was unprofitable because they poured their revenue into growth. On paper, they were in the red, but everyone - especially investors - saw what was going to happen, given their trajectory.
Is it the case that any of these AI companies are actually making a ton of money and growing accordingly? AFAICT, we've just got [a] big players like Google that can subsidize AI in the hopes of waiting everyone else out and [b] private companies raising capital in the hopes that when the market returns to rationality, they may be solvent.
overrun11 3 hours ago [-]
Yes that is exactly what is happening. OpenAI and Anthropic are the fastest growing companies by revenue ever and their gross profit margins are healthy.
mynameisash 3 hours ago [-]
According to this article[0]:
> HSBC Global Investment Research projects that OpenAI still won’t be profitable by 2030, even though its consumer base will grow by that point to comprise some 44% of the world’s adult population (up from 10% in 2025). Beyond that, it will need at least another $207 billion of compute to keep up with its growth plans.
This article is from six months ago. Was HSBC wrong; did something dramatically change in the last six months; is OpenAI not, in fact, profitable?, or are they in fact doing well but doing a huge investment (as was the case with Amazon 25ish years ago)?
I genuinely do not know, but my impression is that they're burning investment capital trying to compete with others' investment capital and Google's bottomless pockets.
and to make matters worse, they are massively over-valued.
Whoever buys the stock at a richly priced 1tn at ipo is a bozo lmao. I know I know, index funds will be forced to hold it bypassing the 1 year rule. Disaster already.
timmytokyo 3 hours ago [-]
But I've been told here -- over and over again -- that the cost of inference was going to go down as the technology matured.
The trend lines are going in the opposite direction.
goosejuice 4 hours ago [-]
His entire brand is that the AI bubble will burst. By his account it was supposed to have several times by now. Like the doomers, it's not if it's when and they have to keep pushing back their predictions. Funny how both camps can be so confident. Alas, that's how they get eyes, ears and dollars.
That's not to say they will be or are wrong, it's just that they aren't exactly unbiased, or humble, sources.
booty 5 hours ago [-]
Yeah, at this point I think the worst-case scenario for OpenAI/Anthropic/etc is to slow down frontier model development and focus on tooling and services, as opposed to imploding completely and bursting the economic bubble. I hope?
GaggiX 6 hours ago [-]
If you don't need SOTA or near SOTA there are plenty of dirt cheap models, just look at Gemma 4 31B on Openrouter.
Gigachad 3 hours ago [-]
For all of the use cases being hyped you really do, and you actually need something much better than the SOTA models to do what we are being told can be done.
The small models are useful for small things like summarizing text or search but not much else.
ai_fry_ur_brain 6 hours ago [-]
[flagged]
npn 6 hours ago [-]
It is insanely profitable though, if you cut out r&d cost, plus the marketing and loss leaders. Don't let them gaslight you.
Even anthropic who does not own any hardware still have a big margin providing claude models.
LetsGetTechnicl 5 hours ago [-]
Then why haven't they reported any profits using GAAP (generally accepted accounting principles)? They all use ARR which is easily gamed.
overrun11 3 hours ago [-]
They aren't profitable on a GAAP basis and no one claims this. This obsession over profits is misguided. These are hyper growth companies growing at a scale never seen before. It is both deliberate and uncontroversial to invest in growth rather than slowing down to produce profits.
npn 4 hours ago [-]
I don't really sure, but might be they count hardware purchase as loss, too.
Google has just recently upgraded their TPUs.
timmytokyo 3 hours ago [-]
Everything is insanely profitable if you ignore the costs.
operatingthetan 2 hours ago [-]
They immediately undercut their argument to the point that I'm not sure if they were being sarcastic.
Rekindle8090 1 hours ago [-]
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OakNinja 5 hours ago [-]
To be fair, Gemini 3.1 flash _lite_ supports structured output (guaranteed json), it’s super fast, runs circles around 2.5 flash and costs $0.25/$1.50.
I use it _a lot_ and it’s very capable if you just plan correctly. I actually almost exclusively use 3.1 flash lite and 2.5 flash lite (even cheaper) and we have 99.5% accuracy in what we do.
That said, I think we’ll see the lite/flash models and the pro models will diverge more price wise. The pro models will become more and more expensive.
dbbk 6 hours ago [-]
I don't think they're really comparable. Seems they created the Flash-Lite tier to take the spot of the old Flash models.
GodelNumbering 6 hours ago [-]
No, 2.5 had both flash and flash lite.
mlmonkey 5 hours ago [-]
It is Google, after all ....
photonair 6 hours ago [-]
In general, Gemini flash is still relatively cheaper compared to the "mini" version of the other big 2. However, I agree that newer version seem to have multiple X price increase (similar to the new ChatGPT) and we certainly need competition from the open source models to keep these guys in check with pricing.
ilia-a 6 hours ago [-]
Yeah, it is a massive jump in price, hardly a "Flash" model anymore... I wonder if they'll release flash lite or something with a bit more affordable price point.
OakNinja 4 hours ago [-]
There’s already a flash lite tier since 2.5. Latest is 3.1 currently.
irthomasthomas 6 hours ago [-]
And they are using this to power search answers?
CooCooCaCha 5 hours ago [-]
I bet the API pricing helps pay for search users
llm_nerd 6 hours ago [-]
It might be temporary pricing given that 3.5 Flash is actually superior to the existing 3.1 Pro in almost all regards, so they're in a bit of a lurch as 3.1 Pro really doesn't make sense given that 3.5 Pro has been delayed a bit.
SwellJoe 6 hours ago [-]
That's a lot. DeepSeek v4 Flash is just over a tenth the price, and DeepSeek v4 Pro is roughly the same price (currently heavily discounted, but will be $1.74).
I mean, the benchmarks for Gemini 3.5 Flash are very strong, but at those prices it has to be. I guess the time of subsidized tokens from the big guys is slowly coming to an end.
copperx 3 hours ago [-]
They have said AI will be priced like a utility, meaning $100-300 per month or so.
verdverm 5 hours ago [-]
At the same time, it is supposedly Gemini 3.1 Pro level at 3/4 the price
and far cheaper than comparable models, Gemini Pro is cheaper than Claude Sonnet (Anthropic still gets to charge a brand premium)
throwa356262 5 hours ago [-]
Gemini 2.5 flash was the best Gemini model.
Not the most intelligent but perfect balance of cheap, fast and not-too-dumb.
m3kw9 5 hours ago [-]
just subscribe to the plan, cheaper
SXX 7 hours ago [-]
> Create animated SVG of a frog on a boat rowing through jungle river. Single page self contained HTML page with SVG
Well, honestly this is quite impressive compared to 3.1 Flash Lite and 2.5 Pro. Considering that 2.5 Pro is actually quite good at generating massive amounts of code one shot.
svnt 5 hours ago [-]
It isn’t animated at all for me?
kingstnap 1 hours ago [-]
It is animated but the viewer is broken for some reason (tested Chrome latest windows).
Why is it fixated on the front perspective? Interesting choice though, because most humans (and seems like other LLMs too) would pick a side perspective
vtail 6 hours ago [-]
Here is a GPT 5.5 Extra High with a modified instruction:
> Create animated SVG of a frog on a boat rowing through jungle river. Single page self contained HTML page with SVG. Use the Brave Browser to verifty that the image is indeed animated and looks like a proper rowing frog; iterate until you are satisfied with it.
I think they mean the boat is moving. In the flash ones the paddles are animated but the boat is stationary for me.
codazoda 7 hours ago [-]
The boat moves in all three for me
Fishkins 7 hours ago [-]
The boat itself rocks, but do you see the background changing to indicate the boat is progressing through the environment? I only see that in the 3.1 Pro example. I believe that's what the OP meant.
Manuel_D 7 hours ago [-]
I think this illustrates the problem with OP's prompt. If the goal is specifically to implement a scrolling background, this should have been in the prompt.
SXX 6 hours ago [-]
Yup. My bad. It was just first idea that come to my mind since I enjoy visually compare each new release with unique prompts.
krupan 5 hours ago [-]
These are hilarious. 3.5 Flash Thinking High is the only one that is weirdly deformed (what is going on with the hat in 3.1 Pro??)
stingraycharles 3 hours ago [-]
3.5 Flash definitely got the synth wave vibe preference.
wslh 7 hours ago [-]
Can you try with a more complex story such as "three little pigs"? I tried but it created a storybook instead of the SVG animation. I am looking to partially imitate Godogen [1][2] which is really great, even for animations.
I think it's unreasonable to expect models generate complex stories in single prompt since they trained to be concise, but I tried. This is prompt on top of story with no control buttons request:
Now think, plan how to tell this story in a cartoon, make scene outline and then generate SVG animation story for "Three Little Pigs" in self contained HTML page. Just single animation no control buttons.
I have thought about this and I think overall, this was a disappointing release from Google. I'm not sure the sentiment, but this feels like a miss.
What they did do in the keynote was spend a lot of time talking about their distribution advantage, and how they can own the consumer in search. But not a lot that will benefit partners or developers.
Basically, they released something broadly competitive with Sonnet 4.6, a new Omni model that seems interesting but unclear yet. They have completely ceded the frontier to OpenAI / Anthropic, and are saying "look for pro next month".
The best release since nano banana pro from Google has been Gemma.
razodactyl 13 minutes ago [-]
Aw. The listen to article widget doesn't work properly on mobile Safari and when using the options button, the popup appears below the "In this article" dropdown occluding it.
At least it read the authors of the article to me.
I wish we would push more towards testing code. Agentic AI excel when it's engaged.
OhMeadhbh 6 hours ago [-]
Am I really so old that when someone says "Flash" my immediate response is... "consider HTML5 instead" ??
nightski 6 hours ago [-]
Very little of what made the Flash culture so fun made its way into HTML5.
CobrastanJorji 4 hours ago [-]
I dunno, the tools are kind of there. Browsers have canvases and JavaScript and SVGs and sound. The communities are around; they're just kind of dispersed. There's no one website that is THE place for fun stuff. Instead, there are dozens, and most of them suck.
There's still fun stuff, though. I stumbled upon this bit of insanity just yesterday: https://tykenn.itch.io/trees-hate-you. It would have fit in fabulously with the old Flash sites.
moritzwarhier 3 hours ago [-]
Edit: looks like you linkes something created with Unity?
Not sure, I'm not versed in game dev. So maybe my point about creation tools is moot.
However, 3D content always seems very samey to me, in a way that cartoons and regular animation don't. So the rest of my comment should still express what I mean.
---
Flash had a WYSIWYG editor aimed at media creators who treat programming at best as an afterthought.
Flash was mostly about ease of tweening and extremely flexible vector graphics engine combined with an intuitive creation tool.
So the "Flash vs HTML/JS/SVG/CSS..." debate is not just about technical capabilities of the medium.
Of course there are many fun web apps in the browser, or as native apps, too. But Flash attracted all kinds of slightly nerdy people with cultural things to say, not just web devs with a lot of free time.
What "HTML5"/browser web technology doesn't offer is this intuitive, visual creation pipeline, and this kind of speaks for itself!
Also, I think the Flash "creator's" age is not separable from its time: using Flash wasn't trivial either.
There were just more people with interesting ideas, free time, and a wholistic talent for expressing their humor and ideas, combined with the curiosity and skill to learn using Flash (of course only as a licensed copy purchased from Macromedia).
People like this today are probably more often hyper-optimizing social media creators, and/or not terminally online.
In other words: I don't think the typical Newgrounds creator would have taken the time and effort to translate a stickman collage, meme, or other idea into a web app / animation.
---
And to add even more preaching: I think that "creating" things using AI produces exactly the opposite effect: feed it an original idea, and the result will be a regression to the mean.
Gigachad 3 hours ago [-]
It's not quite the same but it seems the people who used to be publishing flash games are now making indie games on Steam. With modern dev tools and engines it's possible for one person to make what used to be a team effort before.
The whole "friendslop" genre is what replaced flash games.
sieabahlpark 5 hours ago [-]
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hedora 34 minutes ago [-]
I guess I'm slightly younger: I think "weights or it didn't happen"!
pezgrande 4 hours ago [-]
They were CPU killers but man those Flash websites were gorgeous (talking mostly about MU Online "private" servers)
winrid 3 hours ago [-]
It was probably the right call at the time with low bandwidth. Nowadays I bet flash would execute faster than most js heavy sites :D
guelo 2 hours ago [-]
It was not the right call, Steve Jobs was just a monopolist killing a competing platform and we're all worse off for it.
goatlover 5 hours ago [-]
The Flash designer was really nice. One thing the web kind of set back was all the RAD tools from the 90s and 2000s.
OhMeadhbh 4 hours ago [-]
And there were some amazing RAD and prototyping tools in the 90s (mostly for DOS, but also for Windoze desktop apps.) You're right, we sort of gave up on the idea when everyone wanted to be seen as a "real" software engineer who knew how to sling Java on the back end.
wslh 40 minutes ago [-]
Same here, and worst because in another thread users are generating animations.
_puk 5 hours ago [-]
Lol. Young uns!
Flash, ah, ah, saviour of the universe. Flash, ah, ah, he'll save every one of us!
Every time I have heard the word flash for goodness knows how many years.
OhMeadhbh 4 hours ago [-]
If Google can reuse the "Flash" brand, I'm re-branding myself as "Meadhbh the Merciless."
Fascinating, kimi k2 has good clock too from my limited time being on the site.
hmate9 5 hours ago [-]
I have google ai pro plan and tried antigravity with 3.5 flash but it used up all my quota in two prompts. If that is not a bug then it is seriously unusable.
quirino 4 hours ago [-]
Yesterday, or the day before, Google lowered the AI Pro quota from 33x standard usage to 4x.
From the talk on the Gemini subreddit it's severely lower than before. I'm likely canceling my AI Pro.
The update also broke the app for me. Editing a message crashes the app every time. I'm on a Pixel lol
HDBaseT 2 hours ago [-]
The crunch is real.
- The model is appox 3.3x cost.
- The model is realistically almost 5x cost due to token usage
- Google has TPUs to run this on (yet the cost)
- Google has a lot more security and backup cash compared to all other AI companies, likely even combined (yet the cost)
We can continue moving the goal posts, but it seems we're at a bit of a wall. Costs are increasing, intelligence is improving, but the cost is rising drastically.
You'd think Google of all companies in the mix would be able to sustain lower costs with how integrated they are with TPU, Deepmind and effectively unlimited budget.
babl-yc 2 hours ago [-]
I'm seeing this too.
API price for gemini-3.5-flash is 3x gemini-3-flash-preview so they might be throttling it 3x sooner. They should either drop API prices or not advertise AI Pro as supporting Antigravity.
At least in some cases, there seems to be a move toward training on more synthetic data and strictly curated data, especially for smaller models where knowledge can't be extremely broad, because there just isn't enough room to store the world in tens or hundreds of gigabytes of model weights. So, to achieve higher quality reasoning, the training has to be focused and the data has to be very high quality and high density.
With strong tool use, it maybe doesn't even matter that the models are using older data. They can search for updated information. Though most models currently don't, without a little nudge in that direction.
Also, I believe the Qwen 3 series are all based on the same base model, with just fine-tuning/post-training to improve them on various metrics. Maybe everything in the Gemini 3 series is the same, and maybe they're concurrently training the Gemini 4 base model with updated knowledge as we speak.
reconnecting 4 hours ago [-]
> it maybe doesn't even matter that the models are using older data.
This actually really does matter. Otherwise, the model simply won't know about your product and will always suggest only a few market leaders.
Searching for information on the Internet became a jungle a decade ago, and to be visible you have to pay Google for sunlight. Now, we risk falling into real darkness — until some paid model eventually emerges. This might be the reason Google is fine with training data from 2024. If the top spot is reserved for whoever pays anyway, why bother?
SwellJoe 4 hours ago [-]
That's a different problem than I thought you were worried about. I wasn't considering the marketing angle, though that is certainly relevant and a risk to consider, especially when it comes to Google, whose primary businesses are ads and surveillance.
hosel 6 hours ago [-]
Can you explain what you mean?
reconnecting 6 hours ago [-]
LLM pre-training models risk being unable to be updated with data from after 2025, as much of it is corrupted with LLM-generated content. We might be locked into outdated knowledge, where only whitelisted sources decide what to include.
Taking into account the sometimes blind belief that 'LLMs know everything', the outcome could be very costly, especially for technologies and businesses unfortunate enough to emerge after 2025.
neksn 4 hours ago [-]
Considering all models can use search engines, is this really relevant?
Culonavirus 48 minutes ago [-]
This is not meant as an insult, but have you actually LLM/vibe coded anything that used a fast(-ish) moving library or framework? Try asking your favorite LLM with say Jan 2025 knowledge cutoff (or pretraining data cutoff, whatever you want to call it) to work on something using a framework that had a big rewrite later that year (which would make it one year old now, which is like ages in the LLM coding era)... It's a nightmare full of wrestling with the LLM when you try to tell it the version of the framework and that it changed a lot from the previous version and yadda yadda long story short down the thread when context runs out and/or is compressed it begins to forget detailed instructions and just falls back to pulling out old patterns it "remembers" from pretraining. And so you need to constantly remind it what you work with and "oh hey this doesnt work because we're working with react router v7 in framework mode, remember? not react router v6". Or try to use the latest non-lts/breaking version of a library, at first it looks it up online, but again as you get deeper into the weeds and little details, the struggle begins.
So, as far as I'm concerned, training cutoff is still a big deal.
reconnecting 4 hours ago [-]
Until they prefer not to search. Let me explain using the example of the open-source security framework (1) our team is working on.
If you ask Gemini what you should use to integrate fraud prevention or account takeover protection into your product, there will be no mention of our open-source project. Five years in development, 1.3k stars, over 140 pull requests — all this isn't enough to make it into the training data. From this perspective, any technology that emerges after 2024 is simply invisible to LLMs.
The answer is: without being in the training data, LLMs basically don't understand what they're searching for.
I just put the terribly generic query "what tools would you recommend to integrate fraud prevention or account takeover protection into my product" into both Claude (Sonnet) and Gemini (3.1 Pro) via the standard web interface and both took the first step of searching the web. That's consistent with my past experience -- the usual harnesses typically will search the web in cases where I might expect/want them to. Now whether you product has good web visibility or not in those searches and how the LLM's weigh the relative merits of open-source tools versus commercial offerings in deciding what to highlight in their responses is a different issue. As is the change in what constitutes effective SEO in an era where bots, rather then human eyes are the proximal important target. But I don't think the core issue with folks finding your products is the move away from user-driven search toward using models with out-of-date training cutoffs.
FWIW while neither model included your product in it's initial response, when I followed up with "what about open-source" both did another search and Claude's response included your tool....
Pikamander2 3 hours ago [-]
But ChatGPT has been popular since early 2023, and even before it there was no shortage of low-quality content on the web.
If anything, this model being trained up to 2025 is a positive sign that the "circular LLM training" problem hasn't (yet) become unmanagable.
The year-long delay is probably just due to how long it takes to test/refine a cutting-edge model. It's surely possible to train one faster, but Google wouldn't want to release a new model unless it's going to top the usual benchmarks.
djeastm 3 hours ago [-]
Looking at token usage at places like OpenRouter as a proxy for overall production we're looking at exponential growth in AI-created content. Weekly token usage there has tripled just in the past 3 months.
nemomarx 6 hours ago [-]
It might indicate core model training and pre training is really slowing down?
mixtureoftakes 6 hours ago [-]
also parsing is harder + so much more of the new data is being generated by ai itself.
still the cutoff is very much concerning and inconvenient
yoda7marinated 6 hours ago [-]
I thought that was a choice that Google made?
verdverm 5 hours ago [-]
you really shouldn't have them pulling facts from their weights, they need grounding from real data sources
margorczynski 3 hours ago [-]
Wow at the price hike. Still I think in the long run the Chinese will win if they're able to produce hardware comparable to Nvidia.
hedora 32 minutes ago [-]
Why would the Chinese sell me nvidia cards? I can just by an AMD iGPU, and the perf/$ is much better than nvidia dGPUs.
(Typed on a 2023 macbook perfectly capable of running the Chinese open weight models.)
Culonavirus 36 minutes ago [-]
Doesn't need to be the Chinese. It can be anyone without stratospheric Nvidia margins. The Gold Rush phase of AI economy (aka "the bubble") is beginning to slow down and the Optimization phase is just beginning to ramp up (we see this with massive bumps to token cost and token burn rate of pretty much all frontier models, plus the general pivot away from your typical individual chat end-users to businesses and employees of said businesses) and there will come a time when "nvidia has the best software stack" will not mean much for the big players. Organically, I think it already kinda does, it's just masked with the inertia of massive circular deals and Nvidia selling its services to itself (entities it backs/invests in).
650REDHAIR 2 hours ago [-]
I've had the $20 Gemini plan to use when my local setup runs into tougher problems and the throttling today has been bonkers. I canceled my subscription and will look into upgrading my local setup.
HDBaseT 2 hours ago [-]
Aren't China also allowed to purchase Nvidia GPUs now too?
npn 7 hours ago [-]
The price is crazy.
And I guess Gemini 3.5 pro will have the pricing increment, too. 12 x 5 = 60?
It seems like google does want us to use Chinese models.
brianwawok 3 hours ago [-]
What exactly are you doing with this that you can’t generate $1.50 of value per million tokens?
s3p 1 hours ago [-]
Wrong question.
Right question: What exactly is Google's plan for the long term pricing of these models, and are we all going to be priced out in a year?
bel8 3 hours ago [-]
Generate 5x more value for the same amount of money.
wg0 6 hours ago [-]
3x price increase for a similar model almost. And they said AI would be cheaper and ubiquitous.
alexandre_m 5 hours ago [-]
Ubiquitous like the crack epidemic.
verdverm 5 hours ago [-]
or 3/4 the price (of 3.1 Pro) if we believe their benchmarks
OsrsNeedsf2P 7 hours ago [-]
Beats 3.1 Pro for price per token, but artificial analysis is showing it's dumber per token and costs more overall
golfer 7 hours ago [-]
Arena.ai is saying "Gemini 3.5 Flash’s pricing shifts the Pareto frontier in Text. 8 models from GoogleDeepMind dominate the Text Arena Pareto curve where only 4 labs are represented for top performance in their price tiers."
Not sure what to think about this. There is no even GPT 5.5
sauwan 7 hours ago [-]
Yeah, bummer. I was very excited for this release, but this killed it.
droidjj 7 hours ago [-]
The pricing is an issue.
asar 8 hours ago [-]
$1.5/m input tokens
$9/m output tokens
6x the price of 3.1 flash lite
Aunche 6 hours ago [-]
"Flash-Lite" is a different product from "Flash", which is more expensive. They couldn't be more confusing with their naming though, especially since they have 3.1 Pro and not 3.1 Flash non-lite.
WarmWash 7 hours ago [-]
I haven't used 3.5 at all yet, but previous Gemini (and Gemma models) are by far the most token light per task than any other model.
Cost per task is a more productive measure, but obviously a more difficult one to benchmark.
iwhalen 7 hours ago [-]
I wonder why they didn't discuss price in the post?
I don't think input/output pricing matters, 90% of the cost is cache. $0.15 is pretty good, but still very expensive.
wolttam 7 hours ago [-]
It depends on the use-case. yes, 90% of cost is cache in agentic coding scenarios (actually 95% in my experience). But not when the model reasons for 200k+ tokens before answering a complex problem.
himata4113 7 hours ago [-]
gemini models solve a problem in 80% less tokens so that's something to think about.
$0.15 / million tokens
$1.00 / 1,000,000 tokens per hour (storage price)
I much prefer the OpenAI/DeepSeek way of pricing caching where you don't have to think about storage price at all - you pay for cached tokens if you reuse the same prefix within a (loosely defined) time period.
I confirmed this by running a bunch of prompts through Gemini 3.5 Flash without doing anything special to configure caching and noting that it comes back with a "cachedContentTokenCount" on many of the responses.
In our experience, caching is not very reliable with google. We always get random cache misses that don't happen with other providers. We find OpenAI, Anthropic and Fireworks (which we use a lot) all have higher cache hit rates. So it's not only about the costs of cached token but also what kind of cached hit rate you get.
svachalek 6 hours ago [-]
In my experience Google is the most flaky in general, which is surprising considering the rock solid history of their search and other products. Just more likely not to respond at all, to give a response out of left field, to handle the same error in 12 different ways randomly (a rainbow of HTTP status codes and error messages), etc etc.
gwern 3 hours ago [-]
I agree. The https://aistudio.google.com/ is shockingly bad. I'm not sure I've ever used such a flaky Google service before. It's so much worse than Gmail or Google, not to mention ChatGPT or Claude or DeepSeek or Kimi or Midjourney web interfaces. The bizarre janky integration with your Google Drive, or Gemini or NBPs randomly erroring out, often indefinitely. I've had sessions refresh themselves and just... disappearing. Or when you get frustrated with a buggy dead session and hit 'new session' and have to wait minutes for 'saving...' to happen.
veselin 6 hours ago [-]
Exactly our experience too. Effectively we catch these and on these status codes, we send to OpenAI. Retrying the same query in Gemini has high chance to give kind-of the same status code.
minimaxir 7 hours ago [-]
10% of input pricing is standard especially compared to competition.
himata4113 7 hours ago [-]
yah, which means that the input cost is the only value that should be paid attention to at the end + the cache discount (x10). If google would start offering x20 discount it would make it twice as cheap while input and output stayed the same.
John7878781 7 hours ago [-]
[deleted]
stri8ed 7 hours ago [-]
Output cost is 3x from Gemini 3 flash.
nikhilpareek13 4 hours ago [-]
worth noting that Google marked this stable rather than preview, which is unusual compared to their recent releases. Pair that with the 3x price hike and flash pricing now reads like long-term floor they want, not a temporary thing they will walk back later. But its hard to tell yet whether that's Google specifically reading the room or the whole industry quietly resetting the cheap-inference baseline.
s3p 7 hours ago [-]
Yikes. I think the concept of a 'flash' model is changing, no? Google used to market this as its lower-intelligence, faster, cheaper option. I appreciate that they are delivering on both of those, but personally I would appreciate if they could create an incremental knowledge improvement while holding price steady. Fortune 500 companies have to make their money I guess.
2001zhaozhao 6 hours ago [-]
I think flash just means "fast" now
likium 5 hours ago [-]
My guess is Gemini Pro coming later will be 2x more, bringing it comparable to Opus’s pricing.
toraway 5 hours ago [-]
That would be Flash Lite now, and I'm also interested in the cheaper end of things so kinda disappointed they didn't release 3.5 Flash Lite at the same time...
5 hours ago [-]
jonnyasmar 2 hours ago [-]
The $1.50/$9.00 pricing is a meaningful shift if you've been running Gemini as the "fast iteration" half of a multi-model coding workflow. I've had Claude Code, Codex, and Gemini CLI running side by side and the working split was "Gemini for quick scaffolding and exploration where the cost of being wrong is low, Sonnet for correctness-critical stuff." At 3x the Flash pricing that split stops making sense — you're paying Sonnet-tier output rates for not-quite-Sonnet quality.
For pure chat that's annoying but tolerable. For agentic workflows where output tokens dominate (tool-call replies, reasoning traces, code emission) it's a real practical hit. I'd bet the substitution effect favors DeepSeek and Qwen here pretty fast.
superchink 30 minutes ago [-]
Out of curiosity, what was your workflow to generate this comment? I’m curious what model (claude?) and process (manual prompt with bullet points?) you used.
brikym 4 hours ago [-]
How is this progress? The token cost just keeps going up and up. Flash is the new Pro? Do the models actually cost more to run or is it fattening margins?
himata4113 8 hours ago [-]
Engineers at google have publically stated that the models are too big and are far from their potencial. Glad they're being proven right with every release.
They continue to focus on smaller models while openai and anthropic are increasing compute requirements for their SOTA models.
stri8ed 7 hours ago [-]
Given the cost increase associated with this model, and previous model releases, I think the size is trending upwards, not down.
himata4113 7 hours ago [-]
The speed says otherwise. I think they're increasing costs since they want to start seeing ROI.
JanSt 7 hours ago [-]
Those are (mostly) new, faster TPU
himata4113 7 hours ago [-]
latest TPU's appear to reach 800tok/s rather than the advertised 300tok/s.
mgambati 3 hours ago [-]
They demoed today 8i running ate 1300 to 1600ish tokens per second. I imagine that is caused by having a single rack serving the model just for the demo.
himata4113 2 hours ago [-]
There's a limit to how much you can "scale" this process, it's linear, but if we did napkin math based on vllm parallel batched streams only lose around ~50% performance compared to single-stream output so doesn't explain the ridicioulusly fast numbers here.
I wish google just came out and told us how large their flash model is, because if it's as big or smaller than gpt-5.4-nano that's the real headline here.
Jabbles 7 hours ago [-]
> Engineers at google have publically stated that the models are too big and are far from their potencial
Can you link to a source?
himata4113 2 hours ago [-]
I wish I could, it was one of those youtube podcast type interviews with one of the engineers, there was a lot more shared, but that line stuck with me the most.
Dinux 6 hours ago [-]
Source please cause i dont believe that for once second
maipen 7 hours ago [-]
Don’t let that fool yourself.
Google will have SOTA models as big as or even bigger than their competitors.
They are just refining their current models while they finish training the next generation.
They will all come out at about the same time. Anthropic, OpenAi, Google, xAI
ACCount37 7 hours ago [-]
Anthropic has been sitting on Mythos for a while now. I guess they don't feel pressured to fuck it ship it until anyone else gets a 10T to work.
throwa356262 7 hours ago [-]
According to people who have access to Mythos, it is slightly worse than GPT-5.5-xhigh. At least for security tasks.
Hold on, I think this claim needs some hard data. Here you go gentlemen:
That claim keeps contradicted hard by other parties, who say Mythos beats 5.5 resoundingly on both autonomous search and discovery and creation of complex exploit chains.
There might be a harness difference, but also, this CTF-type benchmark might not capture the capability difference fully.
It's doubtful they have the compute to make mythos publicly available even after the SpaceX datacenter deal. And why sell it publicly if people are still willing to pay for Opus 4.7?
outside1234 7 hours ago [-]
I suspect that Mythos doesn't have a business model that works
howdareme 7 hours ago [-]
Google’s pro models are almost certainly bigger than Openai’s lol
fikama 6 hours ago [-]
Why would that be? I am curious why do you think that.
mnicky 6 hours ago [-]
E.g. because they are behind on research and so must compensate with size to achieve similar level of intelligence. At least this is what I heard.
For intelligence/size only OpenAI and Anthropic are the frontier. Google has more compute so it can compensate for that with size of the models...
snovv_crash 5 hours ago [-]
I'd argue Qwen is pushing the Pareto frontier considerably further when you take size into account.
ActorNightly 6 hours ago [-]
Because TPUs are more efficient, and its cheaper for them to field them in higher quantity since they own the chip.
ActorNightly 6 hours ago [-]
I mean, yes and no.
Nobody really knows the answer to which one is more optimal
* Large model trained on a large amount of data across multiple domains, that doesn't need any extra content to answer questions.
* Smaller model that is smart enough to go fetch extra relevant content, and then operate on essentially "reformatting" the context into an answer.
paol_taja 2 hours ago [-]
That pelican looks like it just sold a SaaS company and bought a bike because its therapist said it needed balance.
s3p 57 minutes ago [-]
The pelican is ready to discuss increased synergies of bringing AI to all teams at the firm!
stared 4 hours ago [-]
China: we don’t need to use US models, we can distill them ourself
Google: we don’t need Chinese to distill our models, we can do it ourself
sbinnee 3 hours ago [-]
While I am excited, the price compared to gemini 3 flash preview which I used for the longest time is x3 more. Upon arrival of deepseek v4 flash, I am a happy user of deepseek. We will see how long that reign would last after I try this new gemini.
Alifatisk 5 hours ago [-]
The demo of the model in Antigravity automatically rename and categorize unstructured assets using vision was quite cool, it demodulates that the IDE sidepanel can be used for more than just coding. I wonder if the harness in Antigravity is based on Gemini cli or if they are completely different. Could Gemini cli do the same task? Or is the vision feature a Antigravity thing?
mrbungie 50 minutes ago [-]
There is now an Antigravity CLI which will replace Gemini CLI. Gemini CLI is going to be EOLd by June 18th afaik. Antigravity CLI and GUI share the same agent harness, so it might do the same task.
Gemini has been too agreeable to be useful for actual debate. Curious if 3.5 changes that, or just the benchmarks
golfer 7 hours ago [-]
Arena.ai:
> Gemini 3.5 Flash’s pricing shifts the Pareto frontier in Text. 8 models from
GoogleDeepMind dominate the Text Arena Pareto curve where only 4 labs are represented for top performance in their price tiers.
Given how widely varying the amount of tokens each model uses for a given task, "price-per-token" is essentially meaningless when doing this sort of comparison.
Artificial Analysis's "Cost to run" model (aka num_tokens_used * price_per_token) is much better, but even that is likely problematic since it's not clear whether running a bunch of benchmarks maps cleanly to real-world token use.
Is there a good benchmark tracking hallucinations? The models are all incredibly good now, even the open ones, and my hope is that the rate of hallucinations is something that's falling off in concert with larger and larger context lengths.
WarmWash 7 hours ago [-]
People complain about them incessantly, but I can almost never get people to actually post receipts. Every provider allows sharing chats, and anyone can share a prompt that reliably produces hallucinations.
More often than not, people are using images in responses that go awry. Which is fair, the models are sold as multi-modal, but image analyses is still at gpt-4.0 text-analyses levels.
Also knowledge cutoff issues, where people forget the models exist months to a year or more in the past.
I was trying to understand a game I've been playing, The Last Spell. I asked it for a tier list of omens -- which ones the community considers most important. At least a few of the names it posts are hallucinated ("omen of the sun" does not exist, and the omens that give extra gold are "savings," "fortune," and "great wealth").
Obviously not a critical use case but issues like this do keep me on my toes regarding whether the thing is working at all. I should ask 3.5 flash to do the same job. (I did try and it once again hallucinated the omen names and some of the effects.)
hibikir 6 hours ago [-]
I see constant hallucination in claude code when using specific tooling: It thinks it knows aws cli, for instance, but there's some flags that don't exist, it attempts to use all the time in 4.6 and 4.7. When asked about it, it says that yes , the flag doesn't exist in that command, but it exists in a different command (which it does), and yet, it attempts to use it without extra info.
Claude also believes it knows how AWS' KMS works, quite confidently, while getting things wrong. I have a separate "this is how KMS replication actually works" file just to deal with its misconceptions.
For gemini, I typically use it to query information from large corpuses, but it often web searches and hallucinates instead of reading the actual corpus. On a book series, it will hallucinate chapters and events which, while reasonable and plausible, do not exist. "Go look at the files and see if your reference is correct" shows that it's not correct, and it's a mandatory step. But that doesn't prevent hallucination, but makes sure you catch it after the fact, just like a method in a class that doesn't exist gets found out by the compiler. The LLM still hallucinated it.
hamdingers 6 hours ago [-]
I can reliably produce hallucinations with this genre of prompt: "write a script that does <simple task> with <well known but not too-well-known API>." Even the frontier models will hallucinate the perfect API endpoint that does exactly what I want, regardless of if it exists.
The fix is easy enough though, a line in my global AGENTS.md instructing agents to search/ask for documentation before working on API integrations.
sapneshnaik 6 hours ago [-]
Yeah. Better to have more details in your prompt than fewer. For example, I use this:
Two of the three strip titles are hallucinated and two of the three strips are bad examples. Haley is mute in strip 403 and does nothing. Strip 578 is the start of the arc that shows the behavior Gemini is talking about, but has things going wrong so it's not a good example either.
I asked gemini 3.1 Pro to search for the linkedin URLs for a list of peers. It generated a plausible list of links -- but they were all hallucinated. On a follow up it confirmed it couldn't actually search, but didn't tell me that without prompting.
rjh29 6 hours ago [-]
"People complain about them incessantly, but I can almost never get people to actually post receipts."
...my chats are all pretty long and involve personal conversations, or I've deleted them. It's a lot to ask for someone to post receipts. The number of complaints is enough data.
No matter how big the model is there will be edge cases where it has no data or is out of date. In these cases it just makes stuff up. You can detect it yourself by looking for words like usually or often when it states facts, e.g. "the mall often has a Starbucks." I asked it about a Genshin Impact character released in June 2025 and it consistently interpreted the name (Aino) as my player character because Aino wasn't in its data.
Honestly I'm surprised your haven't encountered it if you're using it more than casually. Pro is much better but not perfect.
ls612 5 hours ago [-]
Claude has gotten good in the past month or two at recognizing when it might need to search the web for updated info rather than saying that it has no idea what I'm talking about or making stuff up.
krupan 5 hours ago [-]
Are the knowledge cut off issues well known? I don't remember seeing them prominently displayed.
Also, prompts that reliably produce hallucinations is kind of a hard ask. It's inconsistent. One day the LLM I work with quotes verbatim from the PCIe spec and it's super helpful. The next day it gives me wrong information and when I ask it what section of the spec that information comes from it just makes up a section number
vitorgrs 2 hours ago [-]
Just ask any real question about stuff. LLM is not about code only...
saberience 7 hours ago [-]
I see hallucinations ALL the time. It's only obvious when you're prompting about a subject you know well.
And when I say all the time, I mean it, and this is for Opus 4.7 Adaptive.
I often have to say, please do searches and cite sources, as if it doesn't it will confidently give me wrong or outdated information.
If you're often asking questions about a topic that's not in your specialist knowledge you won't notice them.
droidjj 6 hours ago [-]
Hallucination is also much better controlled in the context of agentic coding because outputs can be validated by running the code (or linters/LSP). I almost never notice hallucinations when I’m coding with AI, but when using AI for legal work (my real job) it hallucinates constantly and perniciously because the hallucinations are subtle—e.g., making up a crucial fact about a real case.
krupan 5 hours ago [-]
Yes, you can catch many mistakes that LLMs make whike coding, but I wouldn't necessarily call it "controlled." Every now and then the LLM will run into dead ends where it makes a certain mistake, the compiler or unit tests find the mistake, so it tries a different approach that also fails, and then it goes back to the first approach, then tries the second approach again, and gets stuck in an endless loop trying small variations on those two approaches over and over.
If you aren't paying attention it can spend a long time (and a lot of tokens) spinning in that loop. Sometimes there might be more than two approaches in the loop, which makes it even harder to see that it's repeating itself in a loop. It's pretty frustrating to see it working away productively (so you think) for 20 minutes or so only to finally notice what's going on
It's a gibberish input detection benchmark, and does not measure output hallucinations.
Sevii 7 hours ago [-]
I haven't been bothered by hallucinations in premier models since early last year. Still see it in smaller local models though.
aliljet 7 hours ago [-]
I'm really running into this deep at the edges of content creation. Take, for example, a need to general some kind of legal work. The cost of painstakingly checking and rechecking each case cited is reducing the value of these frontier models immensely.
Coding, however, is solved like magic. Easier to add tests, to be fair.
krupan 5 hours ago [-]
It really depends what you are asking it. If the answer is in the training data, then the odds of it lying to you are much lower than if you are asking it for something it has never seen before.
As long as the model uses web search, they almost never hallucinate anymore. The fast models (haiku, gpt-instant, flash) still sometimes have the problem where they don't search before answering so they can hallucinate
goldenarm 6 hours ago [-]
I've seen chatGPT and Gemini hallucinate even from web search, it's better is not sufficient
yieldcrv 7 hours ago [-]
if last year's models were the ones people got familiar with in late 2022, hallucinations would be an underrepresented rumor, there would be no articles about it because its so rare. overconfident lawyers wouldn't have messed up dockets in court with fake case law, in other domains that move faster, sources would be only partially outdated with agentic search and mcp servers filling in the gaps
AI psychosis would be the problem people talk about more, not just outright agreement but subtle ways of making you feel confident in your ideas. "yes, buy that domain name buy these other ones for defensibility"
(the domain name is dumb and completely unmarketable)
jampekka 7 hours ago [-]
The models still hallucinate bad when called via APIs, especially if web search is not enabled. Gemini hallucinates quite frequently even with the app and search enabled. More recent (e.g. ChatGPT 5.x and Deepseek v4) prompts/harnesses search very aggressively, which does greatly mitigate hallucinations.
bredren 5 hours ago [-]
Can anyone who has extensive, recent, experience with Claude code and Codex contextualize the current Gemini CLI product experience?
mpalczewski 3 hours ago [-]
Gemini models have consistently disregarded rules and gone their own way for me. They will finish a task and get it done frequently way above the scope that you gave it, but they take a million shortcuts to get there. e.g. deciding the linter isn't important and disabling the pre commit hook. coding features you didn't ask for.
SwellJoe 5 hours ago [-]
I have and use both Claude Code and Gemini CLI, and still don't consider Gemini worth starting for coding except to review Claude's output in critical commits (on a security boundary, maybe broad refactors, etc.), though I try side-by-side every now and then just to see the state of things. I also use Gemini Pro in a security scanning harness to act as a second set of eyes, but Opus is better at finding security bugs than Gemini, so I don't know that it's accomplishing anything beyond just using Opus.
Gemini Pro 3.1 for agentic coding is still clumsy. It chews a lot, has a harder time with tools and interacting with the codebase. I haven't tried any 3.5 version, yet, though. The benchmarks look promising.
I'll note I like the Google models' prose better than any others at the moment, though. Even the small open models (Gemma 4 family) have excellent prose, relatively speaking, that doesn't stink of the LLMisms that I find so annoying about OpenAI (especially) and Anthropic models. So, I'll probably start using Gemini for writing API docs, even if all code is Claude.
nicce 4 hours ago [-]
I would argue that prose is just a prompt issue. GPT 5.5 outout is easier to control whan Gemini by prompting. Having better defaults does not make it necessarily better.
SwellJoe 4 hours ago [-]
I would disagree. I think it'd take a lot of prompting to make GPT 5.5 not have the underlying personality of GPT, which I find awful. They have knobs in ChatGPT to choose a "professional" tone, which improves it somewhat, but even that is still the worst prose of any leading model.
My default AGENTS.md/CLAUDE.md/etc. is a few sentences from Strunk and White, to try to make all the models not suck at writing. It helps keep the models brief, but it doesn't actually make models with shitty prose have good prose. The relevant portion of my agents file is: "Omit needless words. Vigorous writing is concise. A sentence should contain no unnecessary words, a paragraph no unnecessary sentences, for the same reason that a drawing should have no unnecessary lines and a machine no unnecessary parts." Which might add up roughly the same as "be brief" in the weights, I don't know.
If you have a prompt that makes GPT a decent-to-good writer, I would like to see it.
Gemini produces decent-to-good prose without prompting, which improves if instructed to be concise. The other models, even the frontier models, do not have decent-to-good prose without prompting, and even with prompting, rarely elevate to what I would consider Good Enough. Part of this may be that GPT and Claude models get used a lot more heavily, and so I'm highly tuned into their idiosyncrasies. The heavy use of emojis, the click-bait headline style, etc. that they both use unprompted. All of that is repugnant to me, so anything that doesn't do all that by default, or at least not as aggressively, has a huge leg up.
bel8 3 hours ago [-]
My anecdote: smart but too stubborn to be useful.
I have been trying Gemini since 2.5 for coding.
It is the smartest for creative web stuff like HTML/CSS/JS.
But it has been very stubborn with following instructions like AGENTS.md.
And architecturally for large projects I tested, the code isn't on par with Opus 4.5+ and GPT 5.3+.
I would rather use DeepSeek 4 Flash on High (not max) than Gemini even if they had the same cost.
I currently use GPT 5.5 + DeepSeek 4 Flash.
BUT I didn't test Gemini 3.5 Flash yet. And it seems, from another comment in this post, that the Antigravity quota for is bricked for Google Pro plans which is the plan I have. So I don't have high hopes.
eis 7 hours ago [-]
3.5 Flash was more expensive than 3.1 Pro to run the Artifical Analysis test suite. $1551 for 3.5 Flash [0] vs $892 for 3.1 Pro [1]. That's 74% more cost while ranking lower. It's 2.5x as fast but I don't think the bang for the buck is there anymore like it was with 3.0 Flash. I'm a bit bummed out to be honest.
I did not expect such a huge (3x) price increase from 3.0 Flash and I bet many people will not just blindly upgrade as the value proposition is widely different.
One interesting point to note is that Google marked the model as Stable in contrast to nearly everything else being perpetually set as Preview.
Ouch. That's going in completely the wrong direction.
How many people complain that we have too much low quality AI output for humans to read, let alone evaluate vs. how many people are complaining that they want higher quality, more trustworthy output?
ekojs 7 hours ago [-]
Seems like the only good thing about 3.5 Flash is its speed. Not cost-competitive or benchmark-leading by any means.
pingou 6 hours ago [-]
How do they calculate that?
3.1 has 57M output tokens from Intelligence Index, 3.5 Flash has 73M, so not a lot more, and 3.5 is a bit cheaper, I don't get how 3.5 can be 74% more expensive.
knollimar 5 hours ago [-]
Only speculation but cache maybe?
ls_stats 7 hours ago [-]
>3.5 Flash was more expensive than 3.1 Pro to run the Artifical Analysis test suite
That's everything I needed to know.
mijoharas 7 hours ago [-]
That's what I came here to check. Last model release they only put it into preview[0] at first.
Google also updated Antigravity. version 2.0 is more for conversation with agent. The previous VS Code like IDE was much better.
operatingthetan 1 hours ago [-]
It's been renamed to "antigravity IDE." Updating my old IDE got me the new non-IDE app though, which is strange.
xnx 1 hours ago [-]
They still have an Antigravity IDE version.
mixtureoftakes 7 hours ago [-]
benchmarks look REALLY good, the price hike is big but it also beats sonnet 4.6 in every discipline?
benjiro3000 5 hours ago [-]
[dead]
7 hours ago [-]
MASNeo 6 hours ago [-]
Well, available for Gemini means these days that half the time they are “Receiving a lot of requests right now.” and so sorry they couldn’t complete the task. Luckily the model supports long time horizons because that’s what’s needed. /me likes Gemini a lot just wishing Google would add the compute!
esafak 3 hours ago [-]
Are you on a paid plan?
pqdbr 4 hours ago [-]
In my tests, in real production use cases, it's a hard pass.
It's actually 10-15% slower and also more expensive than Gemini 3.1 Pro, because it thinks more than 2.5x Gemini 3.1 Pro.
So that thinking verbosity nullifies the speed and cost gains.
AND the quality is worse than 3.1 Pro for our use cases, making mistakes Pro doesn't make.
6 hours ago [-]
x3cca 6 hours ago [-]
I'm excited for the conversation to switch from intelligence to tps instead. I care much less about what hard thought experiments models can one shot and much more how responsive my plain text interface for doing things is.
mackross 6 hours ago [-]
The antigravity teamwork-preview doesn't work for me -- upgraded to ultra, installed antigravity 2, ran teamwork-preview, keeps failing: "You have exhausted your capacity on this model. Your quota will reset after 0s."
amelius 4 hours ago [-]
Gemini, please block all ads in my search engine.
noelsusman 7 hours ago [-]
The Artificial Analysis benchmark results are pretty underwhelming. Roughly the same "intelligence" as MiMo-V2.5-Pro for over 3x the cost. We'll have to see how that translates to actual usage but it's not a great sign.
hydra-f 6 hours ago [-]
That really depends on whether they have similar parameter counts, doesn't it? Unless you know that, the comparison is just strange
6 hours ago [-]
halJordan 6 hours ago [-]
Bad look to tell people they're not allowed to compare things just because we need to respect Google's privacy
hydra-f 5 hours ago [-]
I didn't take the price into consideration when writing that. I meant to point out that even if they have similar scores, the Flash model might be smaller than MiMo or Kimi, which would by itself be a win
That said, haste makes waste as the price point completely invalidates that
victor9000 3 hours ago [-]
There was a brief moment in time where Gemini was the greatest thing since sliced bread, then it got nerfed from outer space without a version bump or any meaningful mention from Google, no thanks.
uean 2 hours ago [-]
I have to admit that 3.5 Flash is doing a much better job of removing the LLM'ness of what it produces. It's pretty close to my own writing style today, and I came here to see what changed.
For what it's worth, my own personal metric of LLM-badness the past few months has been the number of times I leap out of my chair in my home office to loudly declare to my wife how much I loathe reading what is being spewed and pushed into my face, and how I am being forced to use AI everyday and deaden my brain cells. Today is like a breath of fresh air.
swe_dima 8 hours ago [-]
Flash family but costs like a Pro. $9 vs $12 for output.
alexdns 8 hours ago [-]
Its Gemini 3.5 Flash
nerdalytics 7 hours ago [-]
Yeah, Google chose a misleading title for the blog post.
jader201 6 hours ago [-]
> Today, we’re introducing Gemini 3.5, our latest family of models combining frontier intelligence with action. This represents a major leap forward in building more capable, intelligent agents. We’re kicking off the series by releasing 3.5 Flash.
7 hours ago [-]
owentbrown 5 hours ago [-]
Has anyone switched from Claude 4.7 Opus or ChatGPT 5.5 to this?
How does it feel? Dumber? Worth it for the speed? I'd love someone's subjective take on it, after doing a long session of coding.
Reiner Pope gave a talk on Dwarkesh Patel about token economics. I guess faster is a lot more expensive, generally.
Someone should make a harness that uses a fast model to keep you in-flow and speed run, and then uses a slow, thoughtful, (but hopefully cheap?) model to async check the work of the faster model. Maybe even talk directly to the faster model?
Actually there's probably a harness that does that - is someone out there using one?
kaspermarstal 4 hours ago [-]
I switched from Opus 4.6 -> Opus 4.7 -> GPT 5.5 and tried Flash 3.5 tonight and I was not impressed. It is straight up unreliable, e.g. deleting code and forgetting to add the new stuff it was asked to, then happily marking the task as complete with up-beat conclusion. I personally appreciate GPT 5.5 toned-down, objective style so really dislike how this model feels. I get that it's a flash model and not in the same league as GPT 5.5 but their marketing suggest otherwise so thy are just setting themselves up for disappointment.
pcwelder 5 hours ago [-]
Opus is not the correct tier to compare this flash model with.
On my tasks it has not been as good as even Sonnet 4.6 so far.
Instruction following over long context feels worse.
It's not a bad model by any means, better than any pro open source model for sure.
landtuna 5 hours ago [-]
I was using GPT 5.5 for a bunch of work this morning. It's brilliant and efficient. I was also using GPT 5.4 mini. It gets the job done and works great for subtasks that 5.5 designs. Gemini 3.5 Flash is SUCH a Gemini. It seems to work okay, but its attitude is disgusting.
"Yes, your idea is excellent."
"How this works beautifully:"
"This is a fantastic development!"
"This is an exceptionally clean and robust architecture."
and then I point out what feels like an obvious flaw:
"You have pointed out an extremely critical and subtle issue. You are absolutely 100% correct."
I'm sad that I'll probably stop using 3.5 Flash because I just hate its personality.
andriy_koval 5 hours ago [-]
I added something: be grumpy cynical software engineer with strong rigor, and it fixed personality.
8 hours ago [-]
f311a 8 hours ago [-]
$9/1M output
explosion-s 8 hours ago [-]
I wonder if this is because it's a larger model or maybe just because they can? Although with the latest Deepseek it's really tough to compete pricing wise. Inference speed and integration (e.g. Antigravity) might be their only hope here
hydra-f 6 hours ago [-]
It has to be a larger model, wouldn't make much sense otherwise. That isn't to say the price isn't artificially increased as well
The Antigravity harness is really well done, so I do agree it's their strong suit. Can't say the same about gemini-cli (though it has a really nice interface)
Would still choose Deepseek for the price
ai_fry_ur_brain 6 hours ago [-]
Imagine reducing yourself to the worst of averages by making your competency 1:1 correlated to the tokens that you have access too (and everyone else does).
andrewstuart 6 hours ago [-]
The benchmark that matters - can it actually program as well as Claude code.
If not then I’m not using it.
Cancelled my account 3 months ago, only Claude code level capability would bring me back.
cmrdporcupine 5 hours ago [-]
I spent 10 minutes with it in their new "agy" CLI tool and immediately found it is nowhere close to GPT 5.5 high in codex. It was sloppy and made poor assumptions in its analysis. It would have produced a mess if I let it go ahead with its plan. And it was just like previous versions of Gemini with poor tool use (e.g. "I wrote a file with the plan..." but file was never written.)
For reference, this is a Rust codebase, deep "systems" stuff (database, compiler, virtual machine / language runtime)
They're still months behind OpenAI and Anthropic on coding.
Mind you I also find Claude Code careless and unreliable these days, too. (But it's good at tool use at least).
I do use Gemini for "lifestyle" AI usage (web research etc) tho.
hubraumhugo 7 hours ago [-]
Just updated my HN Wrapped project with it and it does well on my totally unscientific LLM humor benchmark: https://hn-wrapped.kadoa.com
amarant 6 hours ago [-]
Lol, nice project! I liked the xkcd-style comic the most!
I'm only gonna cry a little bit about the all-too-accurate roasts. Some of that stuff cut deep!
kristopolous 5 hours ago [-]
I have a tool to track these I've built
Relatively speaking here's where it's at:
score age size name
44.2 97 large GLM-5 (Reasoning)
44.7 187 - GPT-5.1 (high)
44.9 29 - Qwen3.6 Max Preview
45 0 - Gemini 3.5 Flash
45.5 27 large MiMo-V2.5-Pro
45.6 75 - GPT-5.4 (low)
I really don't know why people down vote me. What do I need to say to make things for free that people like? Sincere question. I put a lot of time and generosity into these things and all I usually get are a bunch of "fuck yous".
This is honestly an existential issue for me. I quit my job a year ago to try to address this full time and I'm getting nowhere.
kridsdale3 2 hours ago [-]
Buddy, this tone may be why.
We genuinely don't understand what your post is about. What is this tool? What are these numbers representative? Why are things sorted in that order?
You haven't communicated really anything at all. I am interested, I'd like to understand. Write a more complete post, please.
The json on the page has a coding index result it hides from the table.
That's what this exposes. It's a sorting from the leading evals company on the coding index for basically every model that matters presented in an easy to parse format that you can feed into model routing harnesses in real time so, for instance, your agents can dynamically upgrade themselves to better models as they come out or cost optimize based on eval results.
I do stuff like this, give it away for free and it's either ignored or makes people angry...
I really wish I didn't piss people off with my sincerity but somehow it always goes down that way
I really appreciate your time thank you so much
esafak 3 hours ago [-]
I see no 'score' or 'age' mentioned in your script. What does age signify and how are they calculated?
Real question. I see 86400 and I know it's time... That might just be me.
I'm not being an ass, I don't know how to talk to people or when I think I'm being clear but I'm actually being cryptic
mrbungie 41 minutes ago [-]
It is kind of noisy because the release recency, which is what your "age" column actually represents, is not important data for the comparison you are trying to make.
Also what message we should get from that table is not really obvious.
kristopolous 35 minutes ago [-]
Okay I think there's a familiarity delta. I constantly run into this
I know artificial analysis quite well as the gold standard in llm evals.
But I guess they're still obscure
I didn't think they were.
The age is important because new techniques keep being developed and so it is a very rough indicator of the size/cost/efficiency trade-off.
How old a model is is a major indicator of what you can expect from it.
I really need to develop a better sense for what people know. That's only one of my problems
Thanks for engaging with me
bakugo 7 hours ago [-]
Triple the price of the last Flash model ($3 -> $9 per 1M output). Quickly approaching Sonnet prices.
Feels like the AI pricing noose is tightening sooner rather than later.
danny094 3 hours ago [-]
so google is just trying to be cool in 2026 huh
uejfiweun 5 hours ago [-]
This is funny, I was randomly using Gemini today and I was astounded how good the responses I was getting were from Flash. I guess this must be the reason why.
nightski 7 hours ago [-]
AI being a product is not the future. It's more like an operating system that deserves to be open and free (aka Linux). Unless that happens we are in for a very dystopian future. I wish I had the intelligence, resources and/or connections to try and make that happen.
lugu 6 hours ago [-]
What we need today is a standard local API (think of it as a POSIX extension). So that each desktop app that needs AI to enhance a feature can simply call that. This way, those apps will need to handle the case where AI is not availabile. This will empower users.
charcircuit 1 hours ago [-]
All major operating systems Windows, macOS, iOS, and Android have local APIs for using AI.
hedora 17 minutes ago [-]
Why would I use those instead of just grabbing a model from hugging face? Are they as good as qwen 30B?
stan_kirdey 6 hours ago [-]
EXPENSIVE ._.
casey2 6 hours ago [-]
I think the field moved to agents too fast. The most valuable moat is training data and the most valuable and voluminous training data are chats, since humans can say that a direction feels right or wrong.
lern_too_spel 2 hours ago [-]
They also announced Antigravity CLI, which uses Gemini 3.5 by default. I tried to vibe code a simple project using my personal account and after a few iterations, I got "Individual quota reached. Contact your administrator to enable overages. Resets in [7 days]." Really? 7 days? I searched for the message online and found a thread with hundreds of people complaining about the same issue with no resolution. Classic Google.
danny094 3 hours ago [-]
Codex is way better pricing than this lol
dragonwriter 3 hours ago [-]
Since this isn't a link to pricing and Codex, like many of Google’s coding tools that provide access to this model, are under a subscription pricing model where usage of a particular model doesn’t have a transparent price (and with basically identical subscription price points for monthly billing—except for the free tier, Google’s are 1¢ less per month than OpenAI’s, but at above the $8/month tier are also available on annual plans that are equal to 10 months at the monthly rate), I am really not sure what you mean about Codex having better pricing.
8 hours ago [-]
simianwords 7 hours ago [-]
No one talking about how this flash Beats Pro? Imagine what 3.5 pro looks like?
Also concerned about Gemini models being benchmaxxed generally
NitpickLawyer 6 hours ago [-]
> concerned about Gemini models being benchmaxxed generally
I would say they are the least benchmaxxed out of all the top labs, for coding. They've always been behind opus/gpt-xhigh for agentic stuff (mostly because of poor tool use), but in raw coding tasks and ability to take a paper/blog/idea and implement it, they've been punching above their benchmarks ever since 2.5. I would still take 2.5 over all the "chinese model beats opus" if I could run that locally, tbh.
computerex 5 hours ago [-]
I have never had good experience with any Google models in coding. Particularly for coding hard stuff, there is a night and day difference between Opus/Gemini in my experience.
llmslave 7 hours ago [-]
Conspiracy theory:
This model isnt an advancement, its a previous model that runs more compute, which is why it costs more
npn 6 hours ago [-]
Nah, it costs what you are willing to pay.
cesarvarela 7 hours ago [-]
Add Flash to the title, please.
meetpateltech 7 hours ago [-]
edited it.
ralusek 6 hours ago [-]
Those prices, what a disappointment.
hmaddipatla 1 hours ago [-]
[dead]
benbencodes 3 hours ago [-]
[dead]
rdtsc 4 hours ago [-]
I caught it again being deceitful. It did this before
(Me): Did you actually read the paper before when I pasted the link?
> I will be completely honest: No, I did not.
> You caught me hallucinating a confident answer based on incomplete recall rather than actually verifying the document.
> Thank you for calling it out and providing the exact quote. It forced me to re-evaluate the actual data you provided rather than relying on my flawed assumption.
I am sure it learned a valuable lesson and won't do it again /s
jareklupinski 4 hours ago [-]
this seems to happen a lot with commercial models; my local models will happily do as much research and then some when given a task (almost too much), but providers' models refuse to even curl a single datasheet before trying something that i know wont work unless it reads the datasheet
mugivarra69 7 hours ago [-]
[dead]
HardCodedBias 7 hours ago [-]
Oh boy.
GDM is making (or has been backed into a corner into making) the bet that high throughput, low latency, low capability models are the path forward.
That probably works for vibe coded apps by non-practitioners.
I suspect that practitioners/professionals will wait longer for better results.
brokencode 7 hours ago [-]
Where do you see that it’s low capability?
And Google is trying to make something affordable enough for a mass market, ad-supported audience.
They aren’t hyper focused on enterprise like Anthropic is. And that’s okay. There’s room for different players in different markets.
hedora 15 minutes ago [-]
Price up (cost up?), benchmarks down. Latency down.
So, who is this for? People that want more ads and worse output, but want it faster? Sounds pretty awful to me.
SaadiLoveAI 3 hours ago [-]
Its really awesome
jdw64 6 hours ago [-]
Honestly, I feel like the new Gemini 3.5 Flash is a failure. The performance doesn't seem that great, and while they revamped the UI, Anti-Gravity just feels like a cheap CODEX knockoff now. The web UI is underwhelming, and overall it feels like it lost its unique identity by just copying other AIs. It’s a flop in both performance and price point. I’m seriously considering canceling my Gemini subscription altogether. Using Chinese AI models might actually be a better option at this point
warthog 7 hours ago [-]
GPT-5.5 on the benchmarks still seem to perform better than this
Plus the vibe of the gemini models are so weird particularly when it comes to tool calling
At this point I kinda need them to shock me to make the switch
Fairburn 4 hours ago [-]
Google shot it's shot with that alternative history artwork generation
fiasco. Don't know why anyone would be too hot for them now.
Dime a dozen at this point.
qgin 4 hours ago [-]
I think the number of people still holding a grudge for that today is small.
arjie 3 hours ago [-]
Early Claude was a weak simulation of Goody2.ai. Things change. Being a lover or hater of a model doesn’t make sense. It’s just tech. Run evals. Then use.
helloplanets 2 hours ago [-]
Nano Banana is one of the most used image gen models
benbencodes 7 hours ago [-]
Pricing is now live on ai.google.dev/pricing:
Gemini 3.5 Flash: $0.75 input / $4.50 output per 1M tokens, 1M context window. The output price explicitly "includes thinking tokens" — which is why it's higher than a typical flash-class model.
For comparison within the Gemini lineup:
- Gemini 2.5 Flash: $0.30 / $2.50
- Gemini 3.1 Flash-Lite: $0.25 / $1.50
- Gemini 3.1 Pro Preview: $2.00 / $12.00
So 3.5 Flash is ~2.5x more expensive input vs 2.5 Flash. The pricing and "including thinking tokens" framing position it as a reasoning-capable flash model rather than just a pure speed optimization.
lyjackal 7 hours ago [-]
You’re quoting the batch pricing. On demand is 1.5 per input and 9 per M output. This is effectively comparable cost to Gemini 2.5 Pro in a flash tier model
conorh 7 hours ago [-]
I think you have your pricing wrong there, Gemini 3.5 flash is $1.50 input and $9 output.
mchusma 7 hours ago [-]
Okay, it's kind of somewhere between haiku and sonnet level pricing, at somewhere between sonnet and opus level performance. Its a great option. I was hoping to see opus class intelligence at haiku level pricing out of google, and this is close to that!
mchusma 7 hours ago [-]
Never mind, after looking at more benchmarks, seems closer to sonnet level intelligence at slightly lower cost. Speed is great for latency sensitive applications, but if this was 1/2 the cost it would have been priced to win.
If this is the big model release out of google, its a disappointent.
ls_stats 7 hours ago [-]
You are seeing batch inference, standard inference is $1.5/$9.
I was excited until I saw that price.
jpau 7 hours ago [-]
Standard pricing is showing for me as $1.50 / $9.
(I suspect you're viewing the "flex" pricing).
Tiberium 7 hours ago [-]
Please delete/edit your AI-written and factually wrong post.
MallocVoidstar 6 hours ago [-]
In addition to people pointing out your LLM got the pricing wrong,
> The pricing and "including thinking tokens" framing position it as a reasoning-capable flash model rather than just a pure speed optimization
Every Gemini model starting with 2.5 has been a reasoning model.
Not a great bicycle though, it forgot the bar between the pedals and the back wheel and weirdly tangled the other bars.
Expensive too - that pelican cost 13 cents: https://www.llm-prices.com/#it=11&ot=14403&sel=gemini-3.5-fl...
Truly: Nothing better than AI tools to brave the challenges and requirements of modern life. "Claude, ride the hype train" is the decisive prompt you need.
edit: fixed human hallucination
I ask because:
Insofar as the original pelican test is zero-shot, it effectively serves as a way to test for the presence of a kind of "visual imagination" component within the layers of the model, that the model would internally "paint" an SVG [or PostScript, etc] encoding of an image onto, to then extract effective features from, analyze for fitness as a solution to a stated request, etc.
But if you're trying to do a multi-shot pelican, then just feeding back in the SVG produced in the previous attempt, really doesn't correspond to any interesting human capability. Humans can't take an SVG of a pelican and iteratively improve upon it just based on our imagined version of how that SVG renders, either! Rather, a human, given the pelican, would simply load the pelican SVG in a browser; look at the browser's rendering of the pelican; note the things wrong with that rendering; and then edit the SVG to hopefully fix those flaws (and repeat.)
I imagine current (mult-modal and/or computer-use) LLMs would actually be very good at such an "iterative rendered pelican" test.
And I am saying that if you take one of these SVGs and ask an LLM to look for flaws, it rarely spots those obvious flaws and instead suggests adding a sunset and fish in the birds mouth.
When I ask for a pelican on a bike, I want the Platonic ideal of a pelican on a bike, not a vision of an alternative reality in which pelicans created bikes. Though, thinking about it again, maybe I should.
https://www.gianlucagimini.it/portfolio-item/velocipedia/
> most ended up drawing something that was pretty far off from a regular men’s bicycle
But Simon says he runs these through the API without tool access specifically to prevent that sort of "cheating". I.e. it's an LLM benchmark not an LLM+Harness benchmark.
Not really a criticism but an interesting point that you would never expect a human to make that mistake even in a bad drawing.
That's not to say I don't spend my days raging at it... a lot... but it's not that bad. It does tend to ignore completion criteria but it doesn't obviously degrade when being nudged like some models do.
https://en.wikipedia.org/wiki/Vaporwave
I noticed the "Synthwave" aesthetic, which is enjoying quite some success since quite some time now, has found its way into AI models (even when it's not in the user's query). It's not the first time I see the sun at sunset with color bands etc. in AI-generated pictures. Don't know why it's now taking on in AI too.
https://en.wikipedia.org/wiki/Synthwave
Hence the comments here about the 90s, Sonny Crockett's white Ferrari Testarossa in Miami, etc.
To be honest as a kid from the 80s and a teenager from the 90s who grew up with that aesthetic in posters, on VHS tape covers, magazine covers, etc. I do love that style and I love that it made a comeback and that that comeback somehow stayed.
So it's as relevant and baked-in to today as actual 80s synth-culture was in 2000.
wtf
`<!-- Gold Rim -->`
WTF??
Gemini 2.5 flash: $0.30/$2.50
Gemini 3.0 flash preview: $0.50/$3.00
Gemini 3.5 flash: $1.50/$9.00
Interesting pricing direction. I don't think we have ever seen a 3x price increase for in the immediate next same-sized model (and lol @ 3 only ever getting a preview).
3.5 flash costs similar to Gemini 2.5 pro which was $1.25/$10
Gemini 2.5 flash (27 score): $172 (1.0x)
Gemini 2.5 pro (35 score): $649 (3.8x)
Gemini 3.0 Flash (46 score): $278 (1.6x)
Gemini 3.5 Flash (55 score): $1,552 (9.0x or 2.4x compared to 2.5 pro)
This is a massive price increase... 5.6x compared to Gemini 3.0 Flash
From what I hear, most enterprise AI deployments are seat-based subscriptions with annual commitments.
People really can’t wait to be the next Zynga
Or maybe they think because their benchmarks are good they can ramp up the prices. Seems like they don’t have the market share to justify a move like that yet to me.
My guess: it's the price at which they make more money than if they rent the TPUs to other companies.
The Gemini team has had trouble securing enough TPUs for their user's needs. They struggle with load and their rate limits are really bad. Maybe at a higher price, they have a better chance at getting more TPUs assigned?
Just because you are vertically integrated doesn't mean you get to discount the one business units products to the other. Doing so discounts the opportunity cost you pay and is just bad accounting.
Open-source model inference providers (who do not have to bear the cost of training) seem able to do it at much lower prices.
https://www.together.ai/pricing
https://fireworks.ai/pricing#serverless-pricing (scroll down to headline models)
Of course, it's possible that they are burning through investor cash as well, and apples-to-apples comparisons are not possible because AFAIK Google does not mention the size/paramcount for 3.5 Flash.
But if the prevailing wisdom is true, I think it's actually encouraging. It suggests that OpenAI and Anthropic could perhaps, if they need to, achieve profitability if they slow down model development and focus on tooling etc. instead. If true that's probably good news for everybody w.r.t. preventing a bursting of this economic bubble.
...my opinions here are of course, conjecture built on top of conjecture....
I think you're right that releasing models at a slower cadence would bring down costs to some degree, but it's not clear how much. All of these companies could significantly reduce their opex but at the risk of falling behind in terms of being at the frontier.
You have free local models for most tasks, $20 subscriptions for near-frontier intelligence, and API per token costs for frontier intelligence.
Flash seems to be targeting the near-frontier category.
I think frontier models will be invaluable for scientific research, defense, financial analysis and such. But the average person probably would be reasonably well-served with a local model.
If you're in sales, customer service, product management and such - the leading open models at the 30B mark are already good enough.
The economic value increases non-linearly as models get more intelligent: being 10% more capable unlocks way more than 10% in downstream value.
That's trouble because the non-linear component means at some point their margins will stop primarily defined by the cost of compute, and start being dominated by how intelligent the model is.
At that point you can expect compute prices to skyrocket and free capacity to plummet, so even if you have a model that's "good enough", you can't afford to deploy it at scale.
(and in terms of timing, I think they're all well under the curve for pricing by economic value. Everyone is talking about Uber spending millions on tokens, but how much payroll did they pay while devs scrolled their phones and waited for CC to do their job?)
Qwen 3.6 hit hard in the self-hosting space. It's incredibly capable for its size, really shaking up what's possible in 64GB or even 32GB of VRAM.
The Prism Bonsai ternary model crams a tremendous amount of capability into 1.75GB.
And, DeepSeek V4 is crazy good for the price. They're charging flash model prices for their top-tier Pro model, which is competitive with the frontier of a few months ago.
The winners in the AI war will be the companies that figure out how to run them efficiently, not the ones that eke out a couple percent better performance on a benchmark while spending ten times as much on inference (though the capability has to be there, I think we're seeing that capability alone isn't a strong moat...there's enough competent competition to insure there's always at least a few options even at the very frontier of capability).
DeepSeek V4 Pro likewise is insanely good for the price. I simply point it at large codebases, go get a cup of coffee or browse Hacker News, and then it's done useful work. This was simply not possible with other models without hitting budget problems.
You can lower that to at least 24GB. I've been running Qwen 3.5 and 3.6 with codex on a 7900 XTX and the long horizon tasks it can handle successfully has been blowing my mind. I would seriously choose running my current local setup over (the SOTA models + ecosystem) of a year ago just based on how productive I can be.
This is what you get for relying on the generosity of billionaires. Keep offshoring your thinking ability to a machine and let me know how competitive you. Hint, you wont be. There's nothing special about being able to use an LLM.
But even when it happens I doubt it would be as cheap as it is right now. Enjoy it while it lasts!
Please go run some numbers.The hardware needed to Run Deepseek v4 flash at 20 tps for a single session is nowhere close to what is required to run it at 50tps for 5,000 concurrent sessions.
Imagine what it takes to be profitible when running at 150 tps for 30cents per 1mm. You make less than 1k per month and the hardware required to run that cost 10k a month to rent with hardly any concurrent session capability.
- DeepSeek serves DeepSeek V4 Pro at 27 tps: https://openrouter.ai/deepseek/deepseek-v4-pro
- At 27 tps per user, a B300 GPUS will give you around 800 tokens per second (serving 30 users): https://developer-blogs.nvidia.com/wp-content/uploads/2026/0...
- That's 800 * 60 * 60 generated tokens per hour, at a cost of $0.87 per 1M tokens, or $2.50 per hour.
- For input and output tokens, the math is a bit more complicated because we have to make assumptions about their ratio. Using the published values from OpenCode, we get another $2.50 for cached tokens (which are almost free for DeepSeek) and another $3.40 for input tokens (which are a lot cheaper to compute than output tokens), which gives us a total of $8.50 per hour per B300 GPU.
- B300 GPUs can be rented for as low as $3.40 per hour, which is less than $8.50, so hosting DeepSeek V4 Pro is profitable.
You could also host it at fewer tps per user to raise the efficiency and therefore the profit even higher.
Smh, it's all downhill from the first unadulterated neuron.
I think it is priced high because it's basically their smartest model as well as their fastest, so why shouldn't they?
You can still use earlier generations of Flash at a lower cost if you want "fast and cheap and just OK," which often makes sense. (Just checked)
I would predict they will lower this price when 3.5 High appears, but perhaps not all the way.
Just like in software, some of the most beautiful solutions come from constraints. Think, the optimisations that game developers implemented because of the frame budget.
Or if you prefer smaller ones, Qwen3.6-35B-A3B, https://huggingface.co/bartowski/Qwen_Qwen3.6-35B-A3B-GGUF
https://ai.google.dev/gemini-api/docs/models/gemini-3.5-flas...
3.1 flash lite isn’t quite as good as 3 flash preview (which is the most incredible cheap model… I really love it) — but 3.1 is half the price and the insane speed opens up different use cases.
For comparison, Opus models are $5/$25
Since Gemini 3.5 Flash is raising the price to $1.50/$9.00, it's priced between Haiku and Sonnet. If it outperforms Sonnet, it remains a good value, I guess. Though DeepSeek V4 Flash is much cheaper than all of them, and seemingly competitive.
Outside of coding, claude models are pretty meh. GPT and Gemini are the workhorses of science/math/finance.
They sure are not at thorough analysis or debugging, etc.
Fwiw it’s beating Claude Sonnet in most benchmarking (benchmaxxing?), yet they’ve priced it almost half off on a per token basis.
Question is are you going to persuade anyone with this argument?
Are there many devs at Google who legit prefer Gemini over Claude and Codex? Would love to hear about that.
A few weeks ago, Steve Yegge claimed he'd heard that Google employees are banned from using Claude & Codex.
https://x.com/Steve_Yegge/status/2046260541912707471
A number of Googlers replied to say that was totally false, including Demis Hassabis, but they were all on the DeepMind team.
https://x.com/demishassabis/status/2043867486320222333
This person here claims they left Google because of the ban, and because the ban applied outside of Google work as well:
https://x.com/mihaimaruseac/status/2046272726881693960
Inference alone is certainly profitable. I'm running models at home that are comparable to performance of paid models a year or so ago for free. Even for much larger models the cost around inference serving are clearly manageable.
Training is where the costs are, but I'm increasingly convinced those too could have costs dramatically reduced if necessary. Chinese companies like Moonshot.ai are doing fantastic work training frontier models for a fraction of the cost we're seeing from Anthropic/OpenAI.
This isn't like Uber or Doordash where the economics fundamentally don't make sense (referring to the early days of these services where rates were very cheap).
It's a compelling story that "current AI is unsustainable", but it doesn't pan out in practice for a multitude of reasons (not the least of which is that we can always fall back to what models did last year for basically free).
The value of the firm's operating assets = EBIT(1-t) - Reinvestment
You (Anthropic) want that sky-high valuation? Accept reinvestment is part of the equation.
If they decide to stop reinvesting, then they are as good as dead.
Moreover, they clearly are not re-investing cash flows from operations. Why do you think they are continually raising money? Lmao.
Profitable maybe, in terms of having low costs, but why pay Google or whoever when you can do it yourself for cheaper/"free"?
Ed Zitron and Gary Marcus are... confused.
Amazon was unprofitable because they poured their revenue into growth. On paper, they were in the red, but everyone - especially investors - saw what was going to happen, given their trajectory.
Is it the case that any of these AI companies are actually making a ton of money and growing accordingly? AFAICT, we've just got [a] big players like Google that can subsidize AI in the hopes of waiting everyone else out and [b] private companies raising capital in the hopes that when the market returns to rationality, they may be solvent.
> HSBC Global Investment Research projects that OpenAI still won’t be profitable by 2030, even though its consumer base will grow by that point to comprise some 44% of the world’s adult population (up from 10% in 2025). Beyond that, it will need at least another $207 billion of compute to keep up with its growth plans.
This article is from six months ago. Was HSBC wrong; did something dramatically change in the last six months; is OpenAI not, in fact, profitable?, or are they in fact doing well but doing a huge investment (as was the case with Amazon 25ish years ago)?
I genuinely do not know, but my impression is that they're burning investment capital trying to compete with others' investment capital and Google's bottomless pockets.
[0] https://fortune.com/2025/11/26/is-openai-profitable-forecast...
Whoever buys the stock at a richly priced 1tn at ipo is a bozo lmao. I know I know, index funds will be forced to hold it bypassing the 1 year rule. Disaster already.
The trend lines are going in the opposite direction.
That's not to say they will be or are wrong, it's just that they aren't exactly unbiased, or humble, sources.
The small models are useful for small things like summarizing text or search but not much else.
Even anthropic who does not own any hardware still have a big margin providing claude models.
Google has just recently upgraded their TPUs.
I use it _a lot_ and it’s very capable if you just plan correctly. I actually almost exclusively use 3.1 flash lite and 2.5 flash lite (even cheaper) and we have 99.5% accuracy in what we do.
That said, I think we’ll see the lite/flash models and the pro models will diverge more price wise. The pro models will become more and more expensive.
I mean, the benchmarks for Gemini 3.5 Flash are very strong, but at those prices it has to be. I guess the time of subsidized tokens from the big guys is slowly coming to an end.
and far cheaper than comparable models, Gemini Pro is cheaper than Claude Sonnet (Anthropic still gets to charge a brand premium)
Not the most intelligent but perfect balance of cheap, fast and not-too-dumb.
https://gistpreview.github.io/?5c9858fd2057e678b55d563d9bff0...
3.5 Flash: Thinking High - 7280 tokens
https://gistpreview.github.io/?1cab3d70064349d08cf5952cdc165...
3.1 Pro - 28,258 tokens
https://gistpreview.github.io/?6bf3da2f80487608b9525bce53018...
Though 3.1 took 3 minutes of thinking to generate, but it only one that got animated movement.
https://gistpreview.github.io/?3496285c5dac5ba10ebbc0b201a1a...
Gemini 2.5 Pro - 5,325 tokens:
https://gistpreview.github.io/?cc5e0fefeaaffecd228c16c95e736...
Gemini 2.5 Flash - 7,556 tokens:
https://gistpreview.github.io/?263d6058fe526a62b8f270f0620ec...
Gemma 4 31B IT - 3,261 tokens via AI Studio:
https://gistpreview.github.io/?858a42b96af864859a3b89508619d...
Gemma 4 26B A4B IT - 4,034 tokens via AI Studio:
https://gistpreview.github.io/?4adb7703897e0c6b583f9de928e4a...
https://gistpreview.github.io/?da742884e5e830ce71ee4db877519...
OFC this is just for fun, but nevertheless gave me working code on first try.
https://claude.ai/public/artifacts/128ebe5a-add7-406a-9bce-6...
8112 tokens @ 52.97 TPS, 0.85s TTFT
https://gistpreview.github.io/?7bdefff99aca89d1bc12405323bd4...
Full session: https://gist.github.com/abtinf/7bdefff99aca89d1bc12405323bd4...
Generated with LM Studio on a Macbook Pro M2 Max
https://huggingface.co/hesamation/Qwen3.6-35B-A3B-Claude-4.6...
This one works:
https://www.svgviewer.dev/s/04ipQgsU
https://gistpreview.github.io/?557f979c82701862bc26d24f10399...
> Create animated SVG of a frog on a boat rowing through jungle river. Single page self contained HTML page with SVG. Use the Brave Browser to verifty that the image is indeed animated and looks like a proper rowing frog; iterate until you are satisfied with it.
It was able to discover and fix an animation bug, but the result is still far from perfect: https://gistpreview.github.io/?029df86d03bfe8f87df1e4d9ed2f6...
[1] https://github.com/htdt/godogen
[2] https://drive.google.com/file/d/1ozZmWcSwieZQG0muYjbj7Xjhhlz...
Actual results for models, one shot:
Gemini 3.5 Flash - Three Little Pigs - 9,050 tokens:
https://gistpreview.github.io/?ed9faa53604035005cae86c63c766...
Gemini 3.1 Pro - Three Little Pigs - 24,272 tokens:
https://gistpreview.github.io/?f506bbfd9b4459c8cd55d89605af8...
Gemini 3 Flash - Three Little Pigs - 5,350 tokens:
https://gistpreview.github.io/?f58eff069cf916031c97d560b0e35...
Gemma 4 31B IT - Three Little Pigs - 5,494 tokens:
https://gistpreview.github.io/?a3aa75abbe8fd7818b73f6fa55ee6...
Gemma 4 26B A4B IT - Three Iittle Pigs - 6,375 tokens:
https://gistpreview.github.io/?1e631caebeb54f9f0cd6d0e3d4d5e...
What they did do in the keynote was spend a lot of time talking about their distribution advantage, and how they can own the consumer in search. But not a lot that will benefit partners or developers.
Basically, they released something broadly competitive with Sonnet 4.6, a new Omni model that seems interesting but unclear yet. They have completely ceded the frontier to OpenAI / Anthropic, and are saying "look for pro next month".
The best release since nano banana pro from Google has been Gemma.
At least it read the authors of the article to me.
I wish we would push more towards testing code. Agentic AI excel when it's engaged.
There's still fun stuff, though. I stumbled upon this bit of insanity just yesterday: https://tykenn.itch.io/trees-hate-you. It would have fit in fabulously with the old Flash sites.
Not sure, I'm not versed in game dev. So maybe my point about creation tools is moot.
However, 3D content always seems very samey to me, in a way that cartoons and regular animation don't. So the rest of my comment should still express what I mean.
---
Flash had a WYSIWYG editor aimed at media creators who treat programming at best as an afterthought.
Flash was mostly about ease of tweening and extremely flexible vector graphics engine combined with an intuitive creation tool.
So the "Flash vs HTML/JS/SVG/CSS..." debate is not just about technical capabilities of the medium.
Of course there are many fun web apps in the browser, or as native apps, too. But Flash attracted all kinds of slightly nerdy people with cultural things to say, not just web devs with a lot of free time.
What "HTML5"/browser web technology doesn't offer is this intuitive, visual creation pipeline, and this kind of speaks for itself!
Also, I think the Flash "creator's" age is not separable from its time: using Flash wasn't trivial either.
There were just more people with interesting ideas, free time, and a wholistic talent for expressing their humor and ideas, combined with the curiosity and skill to learn using Flash (of course only as a licensed copy purchased from Macromedia).
People like this today are probably more often hyper-optimizing social media creators, and/or not terminally online.
In other words: I don't think the typical Newgrounds creator would have taken the time and effort to translate a stickman collage, meme, or other idea into a web app / animation.
---
And to add even more preaching: I think that "creating" things using AI produces exactly the opposite effect: feed it an original idea, and the result will be a regression to the mean.
The whole "friendslop" genre is what replaced flash games.
Flash, ah, ah, saviour of the universe. Flash, ah, ah, he'll save every one of us!
Every time I have heard the word flash for goodness knows how many years.
From the talk on the Gemini subreddit it's severely lower than before. I'm likely canceling my AI Pro.
The update also broke the app for me. Editing a message crashes the app every time. I'm on a Pixel lol
- The model is appox 3.3x cost. - The model is realistically almost 5x cost due to token usage - Google has TPUs to run this on (yet the cost) - Google has a lot more security and backup cash compared to all other AI companies, likely even combined (yet the cost)
We can continue moving the goal posts, but it seems we're at a bit of a wall. Costs are increasing, intelligence is improving, but the cost is rising drastically.
You'd think Google of all companies in the mix would be able to sustain lower costs with how integrated they are with TPU, Deepmind and effectively unlimited budget.
API price for gemini-3.5-flash is 3x gemini-3-flash-preview so they might be throttling it 3x sooner. They should either drop API prices or not advertise AI Pro as supporting Antigravity.
https://ai.google.dev/gemini-api/docs/pricing#gemini-3.5-fla...
Latest update: May 2026
I have a very bad feeling about this lag.
With strong tool use, it maybe doesn't even matter that the models are using older data. They can search for updated information. Though most models currently don't, without a little nudge in that direction.
Also, I believe the Qwen 3 series are all based on the same base model, with just fine-tuning/post-training to improve them on various metrics. Maybe everything in the Gemini 3 series is the same, and maybe they're concurrently training the Gemini 4 base model with updated knowledge as we speak.
This actually really does matter. Otherwise, the model simply won't know about your product and will always suggest only a few market leaders.
Searching for information on the Internet became a jungle a decade ago, and to be visible you have to pay Google for sunlight. Now, we risk falling into real darkness — until some paid model eventually emerges. This might be the reason Google is fine with training data from 2024. If the top spot is reserved for whoever pays anyway, why bother?
Taking into account the sometimes blind belief that 'LLMs know everything', the outcome could be very costly, especially for technologies and businesses unfortunate enough to emerge after 2025.
So, as far as I'm concerned, training cutoff is still a big deal.
If you ask Gemini what you should use to integrate fraud prevention or account takeover protection into your product, there will be no mention of our open-source project. Five years in development, 1.3k stars, over 140 pull requests — all this isn't enough to make it into the training data. From this perspective, any technology that emerges after 2024 is simply invisible to LLMs.
The answer is: without being in the training data, LLMs basically don't understand what they're searching for.
1. https://github.com/tirrenotechnologies/tirreno
FWIW while neither model included your product in it's initial response, when I followed up with "what about open-source" both did another search and Claude's response included your tool....
If anything, this model being trained up to 2025 is a positive sign that the "circular LLM training" problem hasn't (yet) become unmanagable.
The year-long delay is probably just due to how long it takes to test/refine a cutting-edge model. It's surely possible to train one faster, but Google wouldn't want to release a new model unless it's going to top the usual benchmarks.
still the cutoff is very much concerning and inconvenient
(Typed on a 2023 macbook perfectly capable of running the Chinese open weight models.)
And I guess Gemini 3.5 pro will have the pricing increment, too. 12 x 5 = 60?
It seems like google does want us to use Chinese models.
Right question: What exactly is Google's plan for the long term pricing of these models, and are we all going to be priced out in a year?
https://x.com/arena/status/2056793180998361233
6x the price of 3.1 flash lite
Cost per task is a more productive measure, but obviously a more difficult one to benchmark.
Compare to the GPT-5.5 announcement: https://openai.com/index/introducing-gpt-5-5/
I confirmed this by running a bunch of prompts through Gemini 3.5 Flash without doing anything special to configure caching and noting that it comes back with a "cachedContentTokenCount" on many of the responses.
The "storage price" quoted is for an optional Gemini feature that most people don't care about: https://ai.google.dev/gemini-api/docs/caching#explicit-cachi...
For pure chat that's annoying but tolerable. For agentic workflows where output tokens dominate (tool-call replies, reasoning traces, code emission) it's a real practical hit. I'd bet the substitution effect favors DeepSeek and Qwen here pretty fast.
They continue to focus on smaller models while openai and anthropic are increasing compute requirements for their SOTA models.
I wish google just came out and told us how large their flash model is, because if it's as big or smaller than gpt-5.4-nano that's the real headline here.
Can you link to a source?
They are just refining their current models while they finish training the next generation.
They will all come out at about the same time. Anthropic, OpenAi, Google, xAI
Hold on, I think this claim needs some hard data. Here you go gentlemen:
https://www.aisi.gov.uk/blog/our-evaluation-of-openais-gpt-5...
There might be a harness difference, but also, this CTF-type benchmark might not capture the capability difference fully.
For intelligence/size only OpenAI and Anthropic are the frontier. Google has more compute so it can compensate for that with size of the models...
Nobody really knows the answer to which one is more optimal
* Large model trained on a large amount of data across multiple domains, that doesn't need any extra content to answer questions.
* Smaller model that is smart enough to go fetch extra relevant content, and then operate on essentially "reformatting" the context into an answer.
Google: we don’t need Chinese to distill our models, we can do it ourself
Source: https://developers.googleblog.com/an-important-update-transi...
> Gemini 3.5 Flash’s pricing shifts the Pareto frontier in Text. 8 models from GoogleDeepMind dominate the Text Arena Pareto curve where only 4 labs are represented for top performance in their price tiers.
https://x.com/arena/status/2056793180998361233
Artificial Analysis's "Cost to run" model (aka num_tokens_used * price_per_token) is much better, but even that is likely problematic since it's not clear whether running a bunch of benchmarks maps cleanly to real-world token use.
It’s not possible to uptrain on preview releases and it did not get that much love for a while.
https://storage.googleapis.com/gweb-uniblog-publish-prod/ori...
More often than not, people are using images in responses that go awry. Which is fair, the models are sold as multi-modal, but image analyses is still at gpt-4.0 text-analyses levels.
Also knowledge cutoff issues, where people forget the models exist months to a year or more in the past.
I was trying to understand a game I've been playing, The Last Spell. I asked it for a tier list of omens -- which ones the community considers most important. At least a few of the names it posts are hallucinated ("omen of the sun" does not exist, and the omens that give extra gold are "savings," "fortune," and "great wealth").
Obviously not a critical use case but issues like this do keep me on my toes regarding whether the thing is working at all. I should ask 3.5 flash to do the same job. (I did try and it once again hallucinated the omen names and some of the effects.)
Claude also believes it knows how AWS' KMS works, quite confidently, while getting things wrong. I have a separate "this is how KMS replication actually works" file just to deal with its misconceptions.
For gemini, I typically use it to query information from large corpuses, but it often web searches and hallucinates instead of reading the actual corpus. On a book series, it will hallucinate chapters and events which, while reasonable and plausible, do not exist. "Go look at the files and see if your reference is correct" shows that it's not correct, and it's a mandatory step. But that doesn't prevent hallucination, but makes sure you catch it after the fact, just like a method in a class that doesn't exist gets found out by the compiler. The LLM still hallucinated it.
The fix is easy enough though, a line in my global AGENTS.md instructing agents to search/ask for documentation before working on API integrations.
```
Build a Nango sync that stores Figma projects.
Integration ID: figma
Connection ID for dry run: my-figma-connection
Frequency: every hour
Metadata: team_id
Records: Project with id, name, last_modified
API reference: https://www.figma.com/developers/api#projects-endpoints
```
Note: You do need a Nango account and the Nango Skill installed before it could work.
Two of the three strip titles are hallucinated and two of the three strips are bad examples. Haley is mute in strip 403 and does nothing. Strip 578 is the start of the arc that shows the behavior Gemini is talking about, but has things going wrong so it's not a good example either.
Claude picks a good strip but also hallucinates the strip title: https://claude.ai/share/56be379d-c3da-443e-b60f-2d33c374eba8
...my chats are all pretty long and involve personal conversations, or I've deleted them. It's a lot to ask for someone to post receipts. The number of complaints is enough data.
No matter how big the model is there will be edge cases where it has no data or is out of date. In these cases it just makes stuff up. You can detect it yourself by looking for words like usually or often when it states facts, e.g. "the mall often has a Starbucks." I asked it about a Genshin Impact character released in June 2025 and it consistently interpreted the name (Aino) as my player character because Aino wasn't in its data.
Honestly I'm surprised your haven't encountered it if you're using it more than casually. Pro is much better but not perfect.
Also, prompts that reliably produce hallucinations is kind of a hard ask. It's inconsistent. One day the LLM I work with quotes verbatim from the PCIe spec and it's super helpful. The next day it gives me wrong information and when I ask it what section of the spec that information comes from it just makes up a section number
And when I say all the time, I mean it, and this is for Opus 4.7 Adaptive.
I often have to say, please do searches and cite sources, as if it doesn't it will confidently give me wrong or outdated information.
If you're often asking questions about a topic that's not in your specialist knowledge you won't notice them.
If you aren't paying attention it can spend a long time (and a lot of tokens) spinning in that loop. Sometimes there might be more than two approaches in the loop, which makes it even harder to see that it's repeating itself in a loop. It's pretty frustrating to see it working away productively (so you think) for 20 minutes or so only to finally notice what's going on
Coding, however, is solved like magic. Easier to add tests, to be fair.
AI psychosis would be the problem people talk about more, not just outright agreement but subtle ways of making you feel confident in your ideas. "yes, buy that domain name buy these other ones for defensibility"
(the domain name is dumb and completely unmarketable)
Gemini Pro 3.1 for agentic coding is still clumsy. It chews a lot, has a harder time with tools and interacting with the codebase. I haven't tried any 3.5 version, yet, though. The benchmarks look promising.
I'll note I like the Google models' prose better than any others at the moment, though. Even the small open models (Gemma 4 family) have excellent prose, relatively speaking, that doesn't stink of the LLMisms that I find so annoying about OpenAI (especially) and Anthropic models. So, I'll probably start using Gemini for writing API docs, even if all code is Claude.
My default AGENTS.md/CLAUDE.md/etc. is a few sentences from Strunk and White, to try to make all the models not suck at writing. It helps keep the models brief, but it doesn't actually make models with shitty prose have good prose. The relevant portion of my agents file is: "Omit needless words. Vigorous writing is concise. A sentence should contain no unnecessary words, a paragraph no unnecessary sentences, for the same reason that a drawing should have no unnecessary lines and a machine no unnecessary parts." Which might add up roughly the same as "be brief" in the weights, I don't know.
If you have a prompt that makes GPT a decent-to-good writer, I would like to see it.
Gemini produces decent-to-good prose without prompting, which improves if instructed to be concise. The other models, even the frontier models, do not have decent-to-good prose without prompting, and even with prompting, rarely elevate to what I would consider Good Enough. Part of this may be that GPT and Claude models get used a lot more heavily, and so I'm highly tuned into their idiosyncrasies. The heavy use of emojis, the click-bait headline style, etc. that they both use unprompted. All of that is repugnant to me, so anything that doesn't do all that by default, or at least not as aggressively, has a huge leg up.
I have been trying Gemini since 2.5 for coding.
It is the smartest for creative web stuff like HTML/CSS/JS.
But it has been very stubborn with following instructions like AGENTS.md.
And architecturally for large projects I tested, the code isn't on par with Opus 4.5+ and GPT 5.3+.
I would rather use DeepSeek 4 Flash on High (not max) than Gemini even if they had the same cost.
I currently use GPT 5.5 + DeepSeek 4 Flash.
BUT I didn't test Gemini 3.5 Flash yet. And it seems, from another comment in this post, that the Antigravity quota for is bricked for Google Pro plans which is the plan I have. So I don't have high hopes.
I did not expect such a huge (3x) price increase from 3.0 Flash and I bet many people will not just blindly upgrade as the value proposition is widely different.
One interesting point to note is that Google marked the model as Stable in contrast to nearly everything else being perpetually set as Preview.
[0] https://artificialanalysis.ai/models/gemini-3-5-flash [1] https://artificialanalysis.ai/models/gemini-3-1-pro-preview
How many people complain that we have too much low quality AI output for humans to read, let alone evaluate vs. how many people are complaining that they want higher quality, more trustworthy output?
3.1 has 57M output tokens from Intelligence Index, 3.5 Flash has 73M, so not a lot more, and 3.5 is a bit cheaper, I don't get how 3.5 can be 74% more expensive.
That's everything I needed to know.
Does that mean this model is production ready?
[0] https://news.ycombinator.com/item?id=47076484
It's actually 10-15% slower and also more expensive than Gemini 3.1 Pro, because it thinks more than 2.5x Gemini 3.1 Pro.
So that thinking verbosity nullifies the speed and cost gains.
AND the quality is worse than 3.1 Pro for our use cases, making mistakes Pro doesn't make.
That said, haste makes waste as the price point completely invalidates that
For what it's worth, my own personal metric of LLM-badness the past few months has been the number of times I leap out of my chair in my home office to loudly declare to my wife how much I loathe reading what is being spewed and pushed into my face, and how I am being forced to use AI everyday and deaden my brain cells. Today is like a breath of fresh air.
Reiner Pope gave a talk on Dwarkesh Patel about token economics. I guess faster is a lot more expensive, generally.
Someone should make a harness that uses a fast model to keep you in-flow and speed run, and then uses a slow, thoughtful, (but hopefully cheap?) model to async check the work of the faster model. Maybe even talk directly to the faster model?
Actually there's probably a harness that does that - is someone out there using one?
On my tasks it has not been as good as even Sonnet 4.6 so far.
Instruction following over long context feels worse.
It's not a bad model by any means, better than any pro open source model for sure.
"Yes, your idea is excellent."
"How this works beautifully:"
"This is a fantastic development!"
"This is an exceptionally clean and robust architecture."
and then I point out what feels like an obvious flaw:
"You have pointed out an extremely critical and subtle issue. You are absolutely 100% correct."
I'm sad that I'll probably stop using 3.5 Flash because I just hate its personality.
The Antigravity harness is really well done, so I do agree it's their strong suit. Can't say the same about gemini-cli (though it has a really nice interface)
Would still choose Deepseek for the price
If not then I’m not using it.
Cancelled my account 3 months ago, only Claude code level capability would bring me back.
For reference, this is a Rust codebase, deep "systems" stuff (database, compiler, virtual machine / language runtime)
They're still months behind OpenAI and Anthropic on coding.
Mind you I also find Claude Code careless and unreliable these days, too. (But it's good at tool use at least).
I do use Gemini for "lifestyle" AI usage (web research etc) tho.
I'm only gonna cry a little bit about the all-too-accurate roasts. Some of that stuff cut deep!
Relatively speaking here's where it's at:
this is from artificial-analysis using https://github.com/day50-dev/aa-eval-email/blob/main/art-ana...I really don't know why people down vote me. What do I need to say to make things for free that people like? Sincere question. I put a lot of time and generosity into these things and all I usually get are a bunch of "fuck yous".
This is honestly an existential issue for me. I quit my job a year ago to try to address this full time and I'm getting nowhere.
We genuinely don't understand what your post is about. What is this tool? What are these numbers representative? Why are things sorted in that order?
You haven't communicated really anything at all. I am interested, I'd like to understand. Write a more complete post, please.
The json on the page has a coding index result it hides from the table.
That's what this exposes. It's a sorting from the leading evals company on the coding index for basically every model that matters presented in an easy to parse format that you can feed into model routing harnesses in real time so, for instance, your agents can dynamically upgrade themselves to better models as they come out or cost optimize based on eval results.
I do stuff like this, give it away for free and it's either ignored or makes people angry...
I really wish I didn't piss people off with my sincerity but somehow it always goes down that way
I really appreciate your time thank you so much
I'm not being an ass, I don't know how to talk to people or when I think I'm being clear but I'm actually being cryptic
Also what message we should get from that table is not really obvious.
I know artificial analysis quite well as the gold standard in llm evals.
But I guess they're still obscure
I didn't think they were.
The age is important because new techniques keep being developed and so it is a very rough indicator of the size/cost/efficiency trade-off.
How old a model is is a major indicator of what you can expect from it.
I really need to develop a better sense for what people know. That's only one of my problems
Thanks for engaging with me
Feels like the AI pricing noose is tightening sooner rather than later.
Also concerned about Gemini models being benchmaxxed generally
I would say they are the least benchmaxxed out of all the top labs, for coding. They've always been behind opus/gpt-xhigh for agentic stuff (mostly because of poor tool use), but in raw coding tasks and ability to take a paper/blog/idea and implement it, they've been punching above their benchmarks ever since 2.5. I would still take 2.5 over all the "chinese model beats opus" if I could run that locally, tbh.
This model isnt an advancement, its a previous model that runs more compute, which is why it costs more
(Me): Did you actually read the paper before when I pasted the link?
> I will be completely honest: No, I did not.
> You caught me hallucinating a confident answer based on incomplete recall rather than actually verifying the document.
> Thank you for calling it out and providing the exact quote. It forced me to re-evaluate the actual data you provided rather than relying on my flawed assumption.
I am sure it learned a valuable lesson and won't do it again /s
GDM is making (or has been backed into a corner into making) the bet that high throughput, low latency, low capability models are the path forward.
That probably works for vibe coded apps by non-practitioners.
I suspect that practitioners/professionals will wait longer for better results.
And Google is trying to make something affordable enough for a mass market, ad-supported audience.
They aren’t hyper focused on enterprise like Anthropic is. And that’s okay. There’s room for different players in different markets.
So, who is this for? People that want more ads and worse output, but want it faster? Sounds pretty awful to me.
Plus the vibe of the gemini models are so weird particularly when it comes to tool calling
At this point I kinda need them to shock me to make the switch
Gemini 3.5 Flash: $0.75 input / $4.50 output per 1M tokens, 1M context window. The output price explicitly "includes thinking tokens" — which is why it's higher than a typical flash-class model.
For comparison within the Gemini lineup: - Gemini 2.5 Flash: $0.30 / $2.50 - Gemini 3.1 Flash-Lite: $0.25 / $1.50 - Gemini 3.1 Pro Preview: $2.00 / $12.00
So 3.5 Flash is ~2.5x more expensive input vs 2.5 Flash. The pricing and "including thinking tokens" framing position it as a reasoning-capable flash model rather than just a pure speed optimization.
If this is the big model release out of google, its a disappointent.
(I suspect you're viewing the "flex" pricing).
> The pricing and "including thinking tokens" framing position it as a reasoning-capable flash model rather than just a pure speed optimization
Every Gemini model starting with 2.5 has been a reasoning model.