Moonshot AI Releases Kimi Code CLI: A Terminal AI Coding Agent Built in TypeScript for Next-Gen Agents

moonshot-ai-releases-kimi-code-cli:-a-terminal-ai-coding-agent-built-in-typescript-for-next-gen-agents

Source: MarkTechPost

Moonshot AI has released Kimi Code CLI, an open-source coding agent that runs in the terminal. The tool reads and edits code, runs shell commands, searches files, and fetches web pages. It then chooses its next step based on the feedback it receives. The project is MIT-licensed and lives on GitHub..

Kimi Code CLI is the successor to the older kimi-cli. The new agent is written in TypeScript and distributed via npm. It works out of the box with Moonshot AI’s Kimi models. It can also be configured to use other compatible providers.

What is Kimi Code CLI

Kimi Code CLI is an AI agent for software development and terminal operations. It can implement new features, fix bugs, and complete refactors. It can also explore an unfamiliar codebase and answer architecture questions. Batch file processing, builds, and chained test runs are supported too.

The execution model is feedback-driven. The agent plans steps, modifies code, runs tests, and reports its actions. Read-only operations run automatically by default. For file edits or shell commands, the agent asks for confirmation first. This approval flow keeps risky actions under developer control.

The CLI itself is free and MIT-licensed. Model access requires Kimi Code OAuth or a Moonshot AI Open Platform API key.

https://github.com/MoonshotAI/kimi-code

Key Features

Moonshot lists several features aimed at long, focused agent sessions:

  • Single-binary distribution. One command installs it, with no Node.js setup required.
  • Fast startup. Moonshot says the TUI is ready in milliseconds.
  • Purpose-built TUI. The interface is tuned for extended agent sessions.
  • Video input. Drop a screen recording or demo clip into the chat.
  • AI-native MCP configuration. Add and authenticate Model Context Protocol servers via /mcp-config.
  • Subagents for parallel work. Dispatch built-in coder, explore, and plan subagents in isolated contexts.
  • Lifecycle hooks. Run local commands to gate tool calls, audit decisions, or trigger notifications.

Installation and First Run

Two installation paths exist. The official script needs no pre-installed Node.js.

On macOS or Linux, run the install script:

curl -fsSL https://code.kimi.com/kimi-code/install.sh | bash 

On Windows, use PowerShell:

irm https://code.kimi.com/kimi-code/install.ps1 | iex

The global npm install requires Node.js 24.15.0 or later:

npm install -g @moonshot-ai/kimi-code

Verify the binary, then open a project and start the interactive UI:

kimi --version cd your-project kimi

On first launch, type /login inside the UI. You can choose Kimi Code OAuth or a Moonshot AI Open Platform API key. To run one instruction without the UI, use kimi -p "your task". To resume the previous session, add -C.

Use Cases

  • Understanding a project: Ask for an architecture overview and a module dependency diagram.
  • Implementing a feature: Describe the signature, options, and acceptance criteria up front.
  • Fixing a bug: Give the symptom, reproduction steps, and expected behavior together.
  • Writing tests and refactoring: Extract repeated patterns, then run tests to confirm behavior.
  • One-off automation: Analyze logs and output call counts with p50 and p99 latencies.
  • Scheduled tasks: Ask the agent to set reminders or recurring checks via cron.

Plan mode is available through Shift-Tab or kimi --plan. It outputs a research plan before touching files. For safe batch work, --yolo or /yolo skips approval prompts. The /fork command creates an experimental branch you can abandon. The /compact command compresses context to free up tokens. For large investigations, the main agent can dispatch subagents in parallel.

How Kimi Code CLI Compares

Kimi Code CLI joins several established terminal coding agents. The table below compares it with three of them. Competitor details reflect mid-2026 and can change quickly.

Attribute Kimi Code CLI Claude Code OpenAI Codex CLI Gemini CLI
Developer Moonshot AI Anthropic OpenAI Google
Backing model Kimi models Claude models GPT-5.3-Codex Gemini 2.5 Pro
Language / runtime TypeScript Node.js Rust TypeScript
Install Script or npm (Node.js ≥ 24.15.0) Native installer or npm npm / native npm single binary
MCP support Yes (/mcp-config) Yes Yes Yes
Subagents Yes (coder, explore, plan) Yes Yes No (sequential)
Plan mode Yes (Shift-Tab) Yes Yes Yes
IDE integration ACP (Zed, JetBrains) VS Code, JetBrains VS Code, IDEs VS Code (Code Assist)
License MIT Proprietary Open source Apache 2.0

All four agents support the Model Context Protocol. They differ on backing model, language, license, and orchestration. Kimi Code CLI and Codex CLI both ship native subagents. Gemini CLI runs tasks sequentially without subagent support.

Key Takeaways

  • Kimi Code CLI is an MIT-licensed terminal coding agent from Moonshot AI.
  • It is written in TypeScript and installs via script or npm.
  • Built-in coder, explore, and plan subagents run in isolated contexts.
  • MCP servers are configured conversationally through /mcp-config, not raw JSON.
  • It succeeds kimi-cli and migrates existing configuration and sessions.

Marktechpost’s Visual Explainer

Kimi Code CLI · Guide 01 / 09

Overview

Moonshot AI’s open-source terminal coding agent that reads code, runs commands, and plans its next step.

  • Runs in your terminal as an AI coding agent
  • MIT-licensed · written in TypeScript · distributed via npm
  • Works with Kimi models or other compatible providers

Slide 02

What Is Kimi Code CLI?

  • Reads and edits code, runs shell commands, searches files
  • Fetches web pages and chooses the next step from feedback
  • Read-only actions run automatically by default
  • File edits and shell commands ask for confirmation first

Slide 03

Key Features

  • Single-binary distribution — no Node.js setup required
  • Built-in coder, explore, and plan subagents
  • AI-native MCP configuration via /mcp-config
  • Lifecycle hooks and video input support

Slide 04

Install

macOS / Linux

curl -fsSL https://code.kimi.com/kimi-code/install.sh | bash

Windows (PowerShell)

irm https://code.kimi.com/kimi-code/install.ps1 | iex

npm (Node.js 24.15.0+)

npm install -g @moonshot-ai/kimi-code

Slide 05

First Run

kimi --version cd your-project kimi
  • Type /login → Kimi Code OAuth or Moonshot API key
  • kimi -p "your task" runs one instruction without the UI
  • kimi -C resumes the previous session

Slide 06

Use Cases

  • Understand a project: architecture overview and dependency map
  • Implement features with clear signatures and acceptance criteria
  • Fix bugs from symptom, reproduction steps, and expected behavior
  • Write tests, refactor, and automate log analysis or batch edits

Slide 07

Modes & Commands

  • Plan mode: Shift-Tab or kimi --plan
  • --yolo or /yolo skips approvals for safe batch work
  • /fork creates an experimental branch you can abandon
  • /compact compresses context to free up tokens

Slide 08

How It Compares

Attribute Kimi Code CLI Claude Code Codex CLI Gemini CLI
Model Kimi models Claude models GPT-5.3-Codex Gemini 2.5 Pro
Language TypeScript Node.js Rust TypeScript
Subagents Yes Yes Yes No
License MIT Proprietary Open source Apache 2.0

Slide 09

Key Takeaways

  • MIT-licensed terminal coding agent from Moonshot AI
  • Written in TypeScript; installs via script or npm
  • coder, explore, plan subagents in isolated contexts
  • MCP configured conversationally, not raw JSON
  • Succeeds kimi-cli; migrates config and sessions

Marktechpost Practitioner-first AI & ML news for engineers and data scientists · marktechpost.com


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Michal Sutter is a data science professional with a Master of Science in Data Science from the University of Padova. With a solid foundation in statistical analysis, machine learning, and data engineering, Michal excels at transforming complex datasets into actionable insights.