Haimaker.ai Logo
Moonshotai logo

Kimi K2 Instruct 0905

moonshotai/kimi-k2-0905
Chatother
Moonshotai|
Function Calling
|Released Sep 2025 · Updated Jan 2026

Kimi K2 Instruct 0905 (moonshotai/kimi-k2-0905) is a kimi_k2 1026.5B-parameter model from Moonshotai with a 262,144-token context window and 262,144 max output tokens, priced at $0.60/1M input and $2.50/1M output tokens. Available via the haimaker.ai OpenAI-compatible API.

Parameters
1.0T
Context Window
262K
tokens
Max Output
262K
tokens
Input Price
$0.60
/1M tokens
Output Price
$2.50
/1M tokens

Overview

Kimi K2 0905 is a chat model by Moonshotai. It has 1026.5B parameters. It supports a 262K token context window. Supports function calling.

Model Card

Kimi K2: Open Agentic Intellignece

Chat github Homepage
Hugging Face Twitter Follow Discord
License

📰  Tech Blog     |     📄  Paper

1. Model Introduction

Kimi K2-Instruct-0905 is the latest, most capable version of Kimi K2. It is a state-of-the-art mixture-of-experts (MoE) language model, featuring 32 billion activated parameters and a total of 1 trillion parameters.

Key Features

  • Enhanced agentic coding intelligence: Kimi K2-Instruct-0905 demonstrates significant improvements in performance on public benchmarks and real-world coding agent tasks.
  • Improved frontend coding experience: Kimi K2-Instruct-0905 offers advancements in both the aesthetics and practicality of frontend programming.
  • Extended context length: Kimi K2-Instruct-0905’s context window has been increased from 128k to 256k tokens, providing better support for long-horizon tasks.

2. Model Summary

| | |
|:---:|:---:|
| Architecture | Mixture-of-Experts (MoE) |
| Total Parameters | 1T |
| Activated Parameters | 32B |
| Number of Layers (Dense layer included) | 61 |
| Number of Dense Layers | 1 |
| Attention Hidden Dimension | 7168 |
| MoE Hidden Dimension (per Expert) | 2048 |
| Number of Attention Heads | 64 |
| Number of Experts | 384 |
| Selected Experts per Token | 8 |
| Number of Shared Experts | 1 |
| Vocabulary Size | 160K |
| Context Length | 256K |
| Attention Mechanism | MLA |
| Activation Function | SwiGLU |

3. Evaluation Results

| Benchmark | Metric | K2-Instruct-0905 | K2-Instruct-0711 | Qwen3-Coder-480B-A35B-Instruct | GLM-4.5 | DeepSeek-V3.1 | Claude-Sonnet-4 | Claude-Opus-4 |
|------------------------|--------|------------------|------------------|--------|--------|--------|-----------------|---------------|
| SWE-Bench verified | ACC | 69.2 ± 0.63 | 65.8 | 69.6 | 64.2 | 66.0 | 72.7 | 72.5* |
| SWE-Bench Multilingual | ACC | 55.9 ± 0.72 | 47.3 | 54.7 | 52.7 | 54.5 | 53.3* | - |
| Multi-SWE-Bench | ACC | 33.5 ± 0.28 | 31.3 | 32.7 | 31.7 | 29.0 | 35.7 | - |
| Terminal-Bench | ACC | 44.5 ± 2.03 | 37.5 | 37.5 | 39.9 | 31.3 | 36.4 | 43.2* |
| SWE-Dev | ACC | 66.6 ± 0.72 | 61.9 | 64.7 | 63.2 | 53.3 | 67.1 | - |

All K2-Instruct-0905 numbers are reported as mean ± std over five independent, full-test-set runs.
Before each run we prune the repository so that every Git object unreachable from the target commit disappears; this guarantees the agent sees only the code that would legitimately be available at that point in history.

Except for Terminal-Bench (Terminus-2), every result was produced with our in-house evaluation harness. The harness is derived from SWE-agent, but we clamp the context windows of the Bash and Edit tools and rewrite the system prompt to match the task semantics. All baseline figures denoted with an asterisk (*) are excerpted directly from their official report or public leaderboard; the remaining metrics were evaluated by us under conditions identical to those used for K2-Instruct-0905.

For SWE-Dev we go one step further: we overwrite the original repository files and delete any test file that exercises the functions the agent is expected to generate, eliminating any indirect hints about the desired implementation.

4. Deployment

[!Note]
You can access Kimi K2's API on https://platform.moonshot.ai , we provide OpenAI/Anthropic-compatible API for you.

>

The Anthropic-compatible API maps temperature by real_temperature = request_temperature * 0.6 for better compatible with existing applications.

Our model checkpoints are stored in the block-fp8 format, you can find it on Huggingface.

Currently, Kimi-K2 is recommended to run on the following inference engines:

  • vLLM
  • SGLang
  • KTransformers
  • TensorRT-LLM
Deployment examples for vLLM and SGLang can be found in the Model Deployment Guide.

5. Model Usage

Chat Completion

Once the local inference service is up, you can interact with it through the chat endpoint:

def simple_chat(client: OpenAI, model_name: str):
    messages = [
        {"role": "system", "content": "You are Kimi, an AI assistant created by Moonshot AI."},
        {"role": "user", "content": [{"type": "text", "text": "Please give a brief self-introduction."}]},
    ]
    response = client.chat.completions.create(
        model=model_name,
        messages=messages,
        stream=False,
        temperature=0.6,
        max_tokens=256
    )
    print(response.choices[0].message.content)

NOTE: The recommended temperature for Kimi-K2-Instruct-0905 is temperature = 0.6.
If no special instructions are required, the system prompt above is a good default.


Tool Calling

Kimi-K2-Instruct-0905 has strong tool-calling capabilities.
To enable them, you need to pass the list of available tools in each request, then the model will autonomously decide when and how to invoke them.

The following example demonstrates calling a weather tool end-to-end:

# Your tool implementation
def get_weather(city: str) -> dict:
    return {"weather": "Sunny"}

Tool schema definition

tools = [{ "type": "function", "function": { "name": "get_weather", "description": "Retrieve current weather information. Call this when the user asks about the weather.", "parameters": { "type": "object", "required": ["city"], "properties": { "city": { "type": "string", "description": "Name of the city" } } } } }]

Map tool names to their implementations

tool_map = { "get_weather": get_weather } def tool_call_with_client(client: OpenAI, model_name: str): messages = [ {"role": "system", "content": "You are Kimi, an AI assistant created by Moonshot AI."}, {"role": "user", "content": "What's the weather like in Beijing today? Use the tool to check."} ] finish_reason = None while finish_reason is None or finish_reason == "tool_calls": completion = client.chat.completions.create( model=model_name, messages=messages, temperature=0.6, tools=tools, # tool list defined above tool_choice="auto" ) choice = completion.choices[0] finish_reason = choice.finish_reason if finish_reason == "tool_calls": messages.append(choice.message) for tool_call in choice.message.tool_calls: tool_call_name = tool_call.function.name tool_call_arguments = json.loads(tool_call.function.arguments) tool_function = tool_map[tool_call_name] tool_result = tool_function(**tool_call_arguments) print("tool_result:", tool_result) messages.append({ "role": "tool", "tool_call_id": tool_call.id, "name": tool_call_name, "content": json.dumps(tool_result) }) print("-" * 100) print(choice.message.content)

The tool_call_with_client function implements the pipeline from user query to tool execution.
This pipeline requires the inference engine to support Kimi-K2’s native tool-parsing logic.
For more information, see the Tool Calling Guide.


6. License

Both the code repository and the model weights are released under the Modified MIT License.


7. Third Party Notices

See THIRD PARTY NOTICES


7. Contact Us

If you have any questions, please reach out at support@moonshot.cn.

Features & Capabilities

Modechat
Context Window262,144 tokens
Max Output262,144 tokens
Function CallingSupported
Vision-
Reasoning-
Web Search-
Url Context-

Technical Details

ArchitectureDeepseekV3ForCausalLM
Model Typekimi_k2
Librarytransformers

API Usage

from openai import OpenAI

client = OpenAI(
    base_url="https://api.haimaker.ai/v1",
    api_key="YOUR_API_KEY",
)

response = client.chat.completions.create(
    model="moonshotai/kimi-k2-0905",
    messages=[
        {"role": "user", "content": "Hello, how are you?"}
    ],
)

print(response.choices[0].message.content)

Frequently Asked Questions

What is the context window of Kimi K2 Instruct 0905?

Kimi K2 Instruct 0905 (moonshotai/kimi-k2-0905) has a 262,144-token context window and supports up to 262,144 output tokens per request.

How much does Kimi K2 Instruct 0905 cost?

Kimi K2 Instruct 0905 is priced at $0.60 per 1M input tokens and $2.50 per 1M output tokens when accessed via the haimaker.ai OpenAI-compatible API.

What features does Kimi K2 Instruct 0905 support?

Kimi K2 Instruct 0905 supports function calling.

How do I use Kimi K2 Instruct 0905 via API?

Send requests to https://api.haimaker.ai/v1/chat/completions with model "moonshotai/kimi-k2-0905" using any OpenAI-compatible SDK. Authentication uses a Bearer API key from https://app.haimaker.ai.

Use Kimi K2 Instruct 0905 with the haimaker API

OpenAI-compatible endpoint. Start building in minutes.

Get API Access

More from Moonshotai