
Briefly
- Inception Labs’ Mercury 2 generates roughly 1,000 tokens per second and scored 90 on the AIME 2026
- Google’s latest DiffusionGemma hits comparable speeds however performs worse on benchmarks.
- DiffusionGemma is free and open-weight on Hugging Face. Mercury 2 is a paid, closed-weight API mannequin.
Inception Labs launched Mercury 2 on Thursday, calling it the world’s quickest reasoning language mannequin. Per the corporate’s announcement, it generates about 1,000 tokens per second—the chunks of textual content an AI mannequin reads and writes—towards roughly 89 tokens per second for Anthropic’s Claude Haiku 4.5 Reasoning and 71 for OpenAI’s GPT-5 Mini.
That places it in the identical pace bracket Google would later declare for DiffusionGemma.
Welcome to the diffusion period.
We guess on parallel era years in the past, when it was a contrarian concept. It is nice to see the business arrive.
Mercury 2 continues to steer the Pareto frontier for high quality, pace, and value amongst publicly accessible diffusion LLMs. pic.twitter.com/qSHuiR7vmH
— Inception (@_inception_ai) June 18, 2026
Each fashions get there by dropping the typewriter strategy to writing. A typical chatbot writes one phrase, checks what it simply wrote, then writes the subsequent, looping till the reply is completed. Diffusion fashions as an alternative fill a block of textual content with random placeholder tokens and erase the noise throughout a handful of parallel passes—the identical trick that turns static into a photograph in picture mills like Secure Diffusion—till the entire block locks right into a completed response without delay.
The place the 2 diverge is what survives that course of. On AIME 2026—constructed from actual American Invitational Arithmetic Examination issues and scored as the proportion solved accurately—Mercury 2 hit 90%. Google examined DiffusionGemma on the identical set, the place it scored 69.1%, whereas commonplace, non-diffusion Gemma 4 scored 88.3% on the identical take a look at.
On GPQA, a PhD-level science benchmark scored the identical means, the 2 fashions almost tie: Mercury 2 at 77% towards DiffusionGemma’s 73.2%. However Google’s personal developer information recommends commonplace Gemma 4 for purposes that demand most high quality, conceding DiffusionGemma trails it throughout the board.
The pace declare holds up outdoors the lab, too. Increase Code, an AI coding-agent firm, swapped Mercury 2 in for Anthropic’s Claude Opus 4.7 on its context-compaction subagent and noticed an 82% drop in latency and a 90% lower in price, whereas reporting the identical output high quality, in keeping with a joint case research.
Inception was constructed on analysis from its founder Stefano Ermon, a Stanford professor who co-authored among the score-based diffusion strategies that energy right now’s picture mills. The startup’s $50 million funding spherical drew backing from Nvidia’s enterprise arm and particular person buyers Andrew Ng and Andrej Karpathy.
For non-technical customers, the massive factor most individuals do not discover till they really feel it’s the “circulation.” Conventional fashions make you wait between ideas in a protracted session. Diffusion fashions like this make the AI really feel prefer it’s holding tempo with you—instantaneous autocomplete, fast iterations on code or plans, and sub-agents that may deal with the boring high-volume work with out dragging the entire system down.
That subagent layer is the fascinating architectural shift. Complicated AI methods aren’t one big sensible mannequin anymore. They’re orchestras of specialised helpers: one for deep reasoning, a number of for fast summarization, routing, device lookup, output checking, and many others. Sequential fashions make these utility calls costly and gradual. Parallel diffusion ones make them low-cost and quick sufficient to make use of liberally.
Lifelike caveats for normal customers: These are nonetheless greatest for speed-sensitive, high-volume elements of workflows relatively than absolutely the hardest frontier reasoning (the place the most important AR fashions should still have an edge for now). Mercury 2 is not open weights, so it is API/cloud for now. And like Google’s model, the total ecosystem (native runtimes, agent frameworks) remains to be catching as much as make it seamless all over the place.
Use circumstances that pop instantly: real-time fast programming and “vibe coding” the place the mannequin retains up along with your edits, multi-agent coding or assist methods the place a lot of quick sub-calls occur, voice interfaces that do not really feel laggy, and any latency-sensitive autocomplete or next-action prediction. At scale, the price and vitality financial savings from greater throughput on commonplace {hardware} add up quick.
The numbers Inception shares (and the unbiased evals) make the case visually: Mercury 2 sits within the “quick and good” quadrant for diffusion fashions, pushing what used to require unique {hardware} right down to commodity GPUs.
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