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MonkeyCode Launches as Open-Source Enterprise AI Development Platform

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Chaitin has released MonkeyCode, an open-source, enterprise-grade AI development platform aimed at professional engineering teams. The platform integrates cloud-based development environments, AI task management, and support for multiple AI models including DeepSeek, Qwen, and Kimi, among others. MonkeyCode is accessible directly in the browser with no local setup required, and also offers native mobile support for iOS and Android with real-time desktop sync. For organizations with strict data-privacy needs, the platform supports private and on-premise deployment, ensuring data remains within internal networks. The source code is publicly available on GitHub under the AGPL-3.0 license, and the project welcomes community contributions, bug reports, and feature requests.

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