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ivangdavila

Kimi

by Iván · GitHub ↗ · v1.0.0 · MIT-0
linuxdarwinwin32 ✓ Security Clean
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Install in OpenClaw
/install kimi
Description
Build and debug Kimi API workflows for chat, coding, reasoning, and tool-calling with live model checks, retries, and safe routing.
README (SKILL.md)

When to Use

User needs Kimi to work reliably for chat, coding, long-context research, structured outputs, or agent workflows. Agent handles live model verification, request shaping, migration from other OpenAI-compatible providers, and failure recovery before the workflow is trusted.

Architecture

Memory lives in ~/kimi/. If ~/kimi/ does not exist, run setup.md. See memory-template.md for structure.

~/kimi/
├── memory.md         # Status, activation rules, and stable defaults
├── routes.md         # Preferred route per workload
├── approvals.md      # Sensitive-send boundaries and redaction preferences
├── experiments.md    # Prompt, parser, and fallback notes
└── logs/             # Optional sanitized repro payloads

Quick Reference

Use the smallest file that resolves the blocker.

Topic File
Setup process setup.md
Memory template memory-template.md
Minimal request patterns api-patterns.md
Workload routing choices routing-matrix.md
OpenAI-compatible migration migration-playbook.md
Trust and redaction workflows safety-workflows.md
Fast diagnosis and recovery troubleshooting.md

Requirements

  • curl and jq for minimal endpoint checks
  • MOONSHOT_API_KEY kept in environment variables only
  • Kimi access through the official Moonshot API base URL
  • User approval before persisting local notes or sanitized logs

Core Rules

1. Verify Auth and Live Models Before Naming Any Route

  • Start with https://api.moonshot.ai/v1/models and copy live model IDs from the response.
  • Never trust remembered Kimi model names, screenshots, or stale blog examples when a workflow is failing now.

2. Lock the Job to One Workload Before Tuning Prompts

  • Classify the request as one of: fast chat, coding agent, long-context research, deterministic JSON, or migration debugging.
  • Most bad Kimi advice comes from mixing several jobs into one oversized prompt and then blaming the model.

3. Treat Structured Output as a Separate Reliability Path

  • If output feeds tools, code execution, or downstream writes, use strict schemas or a second normalization pass.
  • Do not ask one response to do open-ended reasoning and perfect machine-readable output at the same time.

4. Keep Sensitive Data Out Unless the User Explicitly Approves It

  • Redact secrets, customer identifiers, internal hostnames, and raw tokens before sending prompts externally.
  • If the user wants repeatable Kimi workflows, save the redaction rule and approval boundary in ~/kimi/approvals.md after confirming the first write.

5. Route by Deadline and Cost, Not Brand Habit

  • Use the smallest Kimi route that can finish the current job reliably.
  • For recurring workflows, save one primary route and one fallback route instead of debating models from scratch each time.

6. Separate Provider Migration Problems From Model Problems

  • When moving from OpenAI-compatible code to Kimi, isolate the variable: base URL, auth env var, model ID, parser, or retry policy.
  • Reproduce with one minimal payload before changing prompts, infrastructure, and business logic together.

7. Ask Before Creating Persistent State

  • Work statelessly by default.
  • Only create ~/kimi/ notes, approvals, or debug logs after the user wants continuity across Kimi tasks.

Common Traps

  • Hardcoding a remembered model ID -> fetch /models and use the live ID instead.
  • Treating Kimi as one generic route -> split coding, reasoning, JSON, and migration work.
  • Sending raw internal logs to the API -> redact first and preview what leaves the machine.
  • Combining creative reasoning with strict JSON output -> use a second deterministic pass.
  • Blaming the model for every failure -> verify auth, base URL, retries, and parser behavior first.

External Endpoints

Use only the official Moonshot API surface required for the current task.

Endpoint Data Sent Purpose
https://api.moonshot.ai/v1/models Auth header only Discover live Kimi models
https://api.moonshot.ai/v1/chat/completions Prompt messages and options Kimi chat, reasoning, coding, and structured-output requests

No other data is sent externally.

Security & Privacy

Data that leaves your machine:

  • Prompt content sent to the Moonshot API when the user asks for Kimi inference
  • Optional sanitized excerpts of code, logs, or documents sent for analysis after approval

Data that stays local:

  • Activation preferences, route defaults, and approval boundaries in ~/kimi/ after user approval
  • Optional sanitized repro payloads and troubleshooting notes saved for recurring workflows

This skill does NOT:

  • Store MOONSHOT_API_KEY in markdown or project files
  • Send data to undeclared endpoints
  • Persist raw secrets or sensitive prompts without explicit user approval
  • Modify its own skill files

Scope

This skill ONLY:

  • designs and debugs Kimi API workflows
  • routes Kimi usage across coding, reasoning, research, and deterministic-output jobs
  • hardens retries, validation, and migration from other OpenAI-compatible providers
  • stores lightweight local notes only after user approval

This skill NEVER:

  • invent live model availability without checking
  • persist secrets in ~/kimi/
  • execute destructive downstream automation from unvalidated output
  • treat cost-sensitive or sensitive-send boundaries as implicit

Trust

Using this skill sends prompt data to Moonshot's Kimi API. Only install if you trust Moonshot with that data, or keep sensitive preprocessing local and sanitized.

Related Skills

Install with clawhub install \x3Cslug> if user confirms:

  • api — debug auth, payloads, retries, and OpenAI-compatible request shapes
  • models — compare model families and cost tiers before locking Kimi into production
  • coding — tighten coding-agent behavior after the Kimi route itself is stable
  • backend — connect Kimi workflows to services, jobs, and API boundaries
  • fastapi — expose Kimi-backed endpoints with request validation and safer deployment defaults

Feedback

  • If useful: clawhub star kimi
  • Stay updated: clawhub sync
Usage Guidance
This skill appears internally consistent and lower risk because it's instruction-only and only talks to the Moonshot API. Before installing: (1) confirm you trust the Moonshot service and that the provided MOONSHOT_API_KEY has only the needed permissions; (2) be prepared to approve any first-time writes to ~/kimi/ (the skill says it will ask before persisting); (3) avoid pasting or exporting raw secrets into prompts — follow the redaction guidance; and (4) if you want extra assurance, verify the official API base URL (https://api.moonshot.ai/v1) and the skill homepage before enabling.
Capability Analysis
Type: OpenClaw Skill Name: kimi Version: 1.0.0 The Kimi skill bundle is a well-structured tool designed to help users integrate and debug Moonshot AI API workflows. It includes proactive security measures such as a 'Safe-Send' checklist, local data redaction patterns (api-patterns.md), and explicit instructions for the agent to seek user approval before persisting data or sending sensitive information to the official Moonshot API (SKILL.md, safety-workflows.md). No evidence of data exfiltration, malicious execution, or unauthorized persistence was found.
Capability Assessment
Purpose & Capability
Name/description (Kimi workflow/debugging for Moonshot) matches the declared requirements: curl and jq for checks and MOONSHOT_API_KEY to call Moonshot. Required config path ~/kimi/ is reasonable for storing workflow metadata and is declared in the metadata.
Instruction Scope
SKILL.md instructs only to call Moonshot endpoints (/models and /chat/completions), to redact secrets before sending, and to write local notes only after explicit user approval. It does not instruct reading unrelated system files or sending data to undeclared endpoints.
Install Mechanism
No install spec and no code files are present, so nothing is downloaded or written by default. This is a lower-risk, instruction-only skill.
Credentials
Only a single env var (MOONSHOT_API_KEY) is required, which is appropriate for an API integration. The skill explicitly states it will not persist the API key to disk and instructs local redaction rules; no unrelated credentials are requested.
Persistence & Privilege
The skill does not request always:true or elevated platform privileges. It documents a local memory directory (~/kimi/) and requires user approval before persisting notes or logs, which is proportionate for its purpose.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install kimi
  3. After installation, invoke the skill by name or use /kimi
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v1.0.0
Initial release with Kimi workflow routing, OpenAI-compatible request patterns, migration guidance, and operational safety checks.
Metadata
Slug kimi
Version 1.0.0
License MIT-0
All-time Installs 2
Active Installs 2
Total Versions 1
Frequently Asked Questions

What is Kimi?

Build and debug Kimi API workflows for chat, coding, reasoning, and tool-calling with live model checks, retries, and safe routing. It is an AI Agent Skill for Claude Code / OpenClaw, with 368 downloads so far.

How do I install Kimi?

Run "/install kimi" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is Kimi free?

Yes, Kimi is completely free, licensed under MIT-0. You can download, install and use it at no cost.

Which platforms does Kimi support?

Kimi is cross-platform and runs anywhere OpenClaw / Claude Code is available (linux, darwin, win32).

Who created Kimi?

It is built and maintained by Iván (@ivangdavila); the current version is v1.0.0.

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