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cossistantcom/cossistant

Open-source, customer support platform with fully customizable AI support agents for developers / startups shipping SaaS.

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What it does

Cossistant is a free, open-source customer support platform that lets software startups build and fully customize AI-powered chatbots and support agents to handle customer inquiries automatically. Unlike off-the-shelf tools, it gives teams complete control over how their support experience looks and behaves, without being locked into a vendor's pricing or limitations.

Why it matters

As AI-driven customer support becomes a competitive expectation rather than a differentiator, owning your support infrastructure rather than renting it from vendors like Intercom or Zendesk can dramatically reduce costs and increase flexibility. For founders and PMs, this represents a strategic option to build a branded, deeply integrated support experience without ongoing per-seat or per-conversation fees eating into margins.

1Active

On the radar — signal detected

Stars
683
Forks
40
Contributors
4
Language
TypeScript

Score updated Feb 22, 2026

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