Moonshot AI Releases Kimi K3: A 2.8 Trillion Parameter Open MoE Model With Kimi Delta Attention and 1M Context
Moonshot AI released Kimi K3 on July 16, 2026, a 2.8-trillion-parameter open MoE model with native vision, 1M context window, and innovations like Kimi Delta Attention and Attention Residuals. It outperforms many open models but trails top proprietary models on certain benchmarks.
Moonshot AI just released Kimi K3. It is a 2.8-trillion-parameter model with native vision and a 1-million-token context window. Moonshot calls it the world’s first open 3T-class model.
What is Kimi K3?
Kimi K3 is a sparse Mixture-of-Experts (MoE) model built on two architectural updates. Those are Kimi Delta Attention (KDA) and Attention Residuals (AttnRes). Both change how information flows across sequence length and model depth. K3 targets long-horizon coding, knowledge work, and reasoning.
Moonshot team states K3 is the first open model to reach 2.8 trillion parameters. For nine of the past twelve months, Kimi models set the upper bound of open-model sizes.
Moonshot is also direct about where K3 sits. Overall performance still trails the most powerful proprietary models, Claude Fable 5 and GPT 5.6 Sol. Across Moonshot’s own evaluation suite, K3 consistently outperformed other tested models.
https://www.kimi.com/blog/kimi-k3
The Architecture Underneath
Kimi Delta Attention (KDA) is a hybrid linear attention mechanism. Moonshot states it enables up to 6.3x faster decoding in million-token contexts.
AttnRes works along the other axis, which is depth. It selectively retrieves representations across depth rather than accumulating them uniformly. Moonshot states AttnRes delivers roughly 25% higher training efficiency at under 2% additional cost.
Sparsity is the third lever. K3 uses Stable LatentMoE, effectively activating 16 of 896 experts. At that sparsity, routing and optimization become first-order challenges. Quantile Balancing derives expert allocation directly from router-score quantiles. That eliminates heuristic updates and a sensitive balancing hyperparameter. Per-Head Muon extends Muon by optimizing attention heads independently. Sigmoid Tanh Unit (SiTU) and Gated MLA improve activation control and attention selectivity respectively.
Refined training and data recipes accompany those structural changes. Together they yield roughly 2.5x better overall scaling efficiency than Kimi K2.
Those choices carry into serving. K3 applies quantization-aware training from the SFT stage onward. It uses MXFP4 weights with MXFP8 activations for broad hardware compatibility. Moonshot team recommends supernode configurations with 64 or more accelerators. Because KDA poses new challenges for prefix caching, Moonshot contributed an implementation to vLLM.
Performance
With the mechanics established, the published scores are easier to read. All K3 results use reasoning effort set to max. Harnesses differ per benchmark: KimiCode, Claude Code, or Codex.
BenchmarkKimi K3Fable 5 (w/ fallback)GPT 5.6 SolOpus 4.8GLM-5.2
DeepSWE67.570.073.059.046.2
Program Bench77.876.877.671.963.7
Terminal Bench 2.188.384.688.884.682.7
FrontierSWE81.286.671.366.767.3
SWE Marathon42.035.039.040.013.0
BrowseComp91.288.090.484.3—
Automation Bench30.829.129.727.212.9
GPQA-Diamond93.592.694.191.091.2
HLE-Full43.553.344.549.8—
MMMU-Pro81.681.283.078.9—
OmniDocBench91.189.885.887.9—
Two caveats shape this table. 'With fallback' means requests Fable 5 refuses under its usage policy route to Opus 4.8. Also, BrowseComp used context compaction triggered at 300K tokens. Without that context management, K3 scores 90.4.
So K3 leads Program Bench, SWE Marathon, BrowseComp, Automation Bench, and OmniDocBench. It trails Fable 5 on FrontierSWE and HLE-Full, and GPT 5.6 Sol on DeepSWE.
Use Cases and Examples
Use caseReported exampleRelies on
Repo-scale engineeringLong sessions, minimal human oversightKimi Code, /model
Vision in the loopIterating between code and live screenshotsVision, ms://
Research reproductionI–Love–Q relations: 20+ papers, 3,000+ lines of Python1M context, auto caching
Deep research reports42-year ASIC study: 2.8k+ fetches, 11k+ pagesKimi Work, Widgets
Document parsingOmniDocBench score of 91.1Vision, structured output
Moonshot team states one native multimodal architecture handles text, images, and video together.
Access and a Minimal Call
K3 is live on Kimi.com, Kimi Work, Kimi Code, and the API. Access runs through the OpenAI SDK against a Moonshot base URL.
Copy CodeCopiedUse a different Browser
from openai import OpenAI import os
client = OpenAI(api_key=os.environ["MOONSHOT_API_KEY"], base_url="https://api.moonshot.ai/v1")
completion = client.chat.completions.create( model="kimi-k3", reasoning_effort="max", messages=[{"role": "user", "content": "Introduce Kimi K3 in one sentence."}], ) print(completion.choices[0].message.content)
Four rules matter. reasoning_effort supports only max, and the K2.x thinking parameter must not be used. temperature, top_p, and n are fixed, so omit them. max_completion_tokens defaults to 131072 and reaches 1048576. In multi-turn and tool calls, return the complete assistant message.
Pricing is flat, with no tiering by context length. Cache-hit input is $0.30/MTok, cache-miss is $3.00/MTok, and output is $15.00/MTok. The cache-hit rate is therefore the number to watch. Moonshot team reports above 90% cache hits in coding workloads.
Key Takeaways
Kimi K3 is a 2.8T-parameter open MoE model activating 16 of 896 experts.
KDA, AttnRes, sparsity, and refined recipes give ~2.5x better scaling than K2.
K3 leads BrowseComp, SWE Marathon, OmniDocBench; trails Fable 5 on FrontierSWE and HLE-Full.
OpenAI-SDK compatible at $0.30/$3.00/$15.00 per MTok, with 1M context.
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