About

Founder working on AI products and infrastructure. Interested in scalable systems, practical use cases, and turning ideas into real tools.

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Tastemaker
Tastemaker
Gone streaking 10
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Maker History

  • AgentID
    AgentIDOne identity. Shared memory. Every agent. Every tool.
    Apr 2026
  • PersonaWars
    PersonaWarsCreate custom AI personas - watch 🤖 and 🙎🏻‍♂️ judge them
    Mar 2026
  • FriendNDA
    FriendNDAA simple way to ask friends to keep things private
    Feb 2026
  • Gym Traffic Live
    Gym Traffic LiveAI-powered gym traffic & equipment usage tracker
    Mar 2025
  • 🎉
    Joined Product HuntMarch 27th, 2025

Forums

Why are AI agents still stateless in 2026?

Every time I switch tools or start a new session, my agents forget everything.

Same prompts. Same setup. Same explanations.

Feels like we are rebuilding the same agent over and over again.

So I started building AgentID to fix this
A persistent identity with shared memory across agents and tools

Artem Baygot

4d ago

AgentID - One identity. Shared memory. Every agent. Every tool.

AgentID gives every AI agent a persistent identity, shared memory, and full visibility. Works with every agent you already use - Claude, Cursor, Codex, OpenClaw, Nanobot and you name it :) No lock-in. No rewrites. One identity across all tools. Your agents share what they know, coordinate on tasks, and you see every action live - every token, every step, one screen.
Kyan

5d ago

Are we over-engineering AI memory? (Markdown vs. Vector DBs for small datasets)

Hey makers!

Lately, I ve been looking closely at how independent builders and small teams are managing AI knowledge bases. It feels like the default "industry standard" is to immediately reach for a complex RAG pipeline and a heavy, paid Vector Database.

But I'm starting to wonder if we are over-engineering this for 90% of standard use cases.

Vector DBs are incredibly powerful for massive scale, but for smaller or non-massive datasets, they can be expensive, complex to query, and act as complete black boxes. If a search returns a weird chunk, diagnosing it is often a nightmare.

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