Copyright © 2026 NVIDIA Corporation

1T multimodal MoE for long-horizon coding, agentic tool use, and image/video understanding.
Kimi-K2.6 is an open-source native multimodal agentic model developed by Moonshot AI. Built on a Mixture-of-Experts (MoE) architecture with 1 trillion total parameters (32B active), it delivers long-horizon coding capabilities across Rust, Go, Python, frontend, and DevOps workflows. The model supports agentic task orchestration scaling to 300 sub-agents executing up to 4,000 coordinated steps, and accepts multimodal inputs including text, images, and video via the MoonViT (400M) vision encoder.
This model is ready for commercial/non-commercial use.
This model is not owned or developed by NVIDIA. This model has been developed and built to a third-party's requirements for this application and use case; see link to Non-NVIDIA Kimi-K2.6 Model Card
GOVERNING TERMS: This trial service is governed by the NVIDIA API Trial Terms of Service. Use of this model is governed by the NVIDIA Open Model Agreement. Additional Information: Modified MIT License. Kimi K2.6.
Global
Use Case: Kimi-K2.6 is designed for developers and researchers requiring advanced multimodal agentic AI capabilities. Primary use cases include long-horizon coding workflows (frontend, backend, DevOps, performance optimization), autonomous agent orchestration with proactive background task execution, visual reasoning with image and video inputs, and complex multi-step problem-solving requiring hundreds of sequential tool invocations.
build.nvidia.com: April 29, 2026 via link Hugging Face: April 29, 2026 via link
References:
Architecture Type: Transformer Network Architecture: Mixture-of-Experts (MoE) Total Parameters: 1T Active Parameters: 32B Layers: 61 (including 1 dense layer) Number of Experts: 384 Selected Experts per Token: 8 Shared Experts: 1 Attention Mechanism: MLA (Multi-head Latent Attention) Attention Hidden Dimension: 7168 MoE Hidden Dimension per Expert: 2048 Attention Heads: 64 Vocabulary Size: 160K Context Length: 256K Activation Function: SwiGLU Vision Encoder: MoonViT (400M parameters)
Input Types: Text, Image, Video Input Formats: String, Image (JPEG/PNG), Video frames Input Parameters: Text: One-Dimensional (1D); Image: Two-Dimensional (2D); Video: Three-Dimensional (3D) Other Input Properties: Text is tokenized with a 160K-vocabulary tokenizer. Images and video frames are encoded via MoonViT (400M). Supports multi-turn conversations with system prompts, user messages, tool definitions in JSON schema format, and native tool-use orchestration. Input Context Length (ISL): 256K tokens
Output Types: Text Output Format: String Output Parameters: One Dimensional (1D) Other Output Properties: Generated text can include structured tool call requests, agent coordination directives, and coding artifacts. Supports JSON-structured outputs for agentic workflows.
Our AI models are designed and/or optimized to run on NVIDIA GPU-accelerated systems. By leveraging NVIDIA's hardware (e.g. GPU cores) and software frameworks (e.g., CUDA libraries), the model achieves faster training and inference times compared to CPU-only solutions.
Runtime Engine(s): vLLM
Supported Hardware Microarchitecture Compatibility:
Operating Systems: Linux
The integration of foundation and fine-tuned models into AI systems requires additional testing using use-case-specific data to ensure safe and effective deployment. Following the V-model methodology, iterative testing and validation at both unit and system levels are essential to mitigate risks, meet technical and functional requirements, and ensure compliance with safety and ethical standards before deployment.
Kimi-K2.6 (2026)
Data Modality: Text, Image, Video Text Training Data Size: Undisclosed Training Data Collection: Undisclosed Training Labeling: Undisclosed Training Properties: Undisclosed
Testing Data Collection: Undisclosed Testing Labeling: Undisclosed Testing Properties: Undisclosed
Evaluation Benchmark Score:
| Benchmark | Score |
|---|---|
| Agentic | |
| HLE-Full w/ tools (Pass@1) | 54.0% |
| BrowseComp (Pass@1) | 83.2% |
| BrowseComp Agent Swarm (Pass@1) | 86.3% |
| SWE-Bench Pro (Resolved) | 58.6% |
| SWE-Bench Verified (Resolved) | 80.2% |
| SWE-Bench Multilingual (Resolved) | 76.7% |
| Terminal-Bench 2.0 (Acc) | 66.7% |
| OSWorld-Verified (Acc) | 73.1% |
| Coding | |
| LiveCodeBench v6 (Pass@1) | 89.6% |
| Reasoning & Knowledge | |
| AIME 2026 (Pass@1) | 96.4% |
| HMMT 2026 Feb (Pass@1) | 92.7% |
| GPQA Diamond (Pass@1) | 90.5% |
| IMO-AnswerBench (Pass@1) | 86.0% |
| Vision | |
| MMMU-Pro | 79.4% |
| MathVision | 87.4% |
| CharXiv Reasoning Questions | 80.4% |
Evaluation Data Collection: Automated Evaluation Labeling: Human Evaluation Properties: Evaluated on agentic task completion, coding, mathematical reasoning, and vision benchmarks.
Acceleration Engine(s): vLLM Test Hardware: GB200x4
1. Long-Horizon Coding Supports production-level coding tasks in Rust, Go, Python, front-end frameworks, DevOps pipelines, and performance optimization. Transforms natural language prompts and visual mockups into production-ready code.
2. Agentic Orchestration Scales to 300 parallel sub-agents executing up to 4,000 coordinated steps. Supports 24/7 background autonomous task execution with proactive orchestration.
3. Multimodal Input Native support for text, images, and video inputs via MoonViT (400M vision encoder). Enables visual-to-code workflows and image-grounded reasoning.
4. Open Orchestration Compatible with open agent frameworks. Supports function/tool calling with structured JSON schema definitions.
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Users are responsible for model inputs and outputs. Users are responsible for ensuring safe integration of this model, including implementing guardrails as well as other safety mechanisms, prior to deployment.
Please make sure you have proper rights and permissions for all input image and video content; if image or video includes people, personal health information, or intellectual property, the image or video generated will not blur or maintain proportions of image subjects included.
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