About

AI developer from Japan | IrukaDark🐬 Super Sub-AI. That Boosts Your Productivity. | CEO&Founder of CORe Inc.

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Maker History

  • Amaroad
    AmaroadBuild AI slide decks without leaving your terminal
    Jun 2026
  • Cerememory
    CerememoryA Living Memory Database for the Age of AI
    May 2026
  • DexCode
    DexCodeYour AI Agent builds the Deck & you never leave the terminal
    Mar 2026
  • WhoisP
    WhoisPPeople-Focused Deep Research | Free and open source.
    Nov 2025
  • ZASSHA
    ZASSHARecord your PC once. AI builds clear manuals automatically
    Sep 2025
  • 🎉
    Joined Product HuntJanuary 21st, 2019

Forums

Amaroad - Build AI slide decks without leaving your terminal

Amaroad is an open-source AI-first slide authoring environment for developers. Ask Claude Code, Codex, Gemini CLI, or Cursor to create and refine decks from your terminal, preview slides live, edit multiple slides in parallel, and export to PDF/PPTX or share a live URL.

1mo ago

Cerememory - A Living Memory Database for the Age of AI

Brain-inspired memory architecture. Connect AI agents to lifelike memory shaped by the concepts of time and dreams, building natural long-term recall. Cerememory is a living memory database for the age of AI. Built in Rust, it provides persistent, brain-inspired memory that any LLM can use -- regardless of provider. Memories stored in Cerememory are not static rows in a table; they decay, evolve, form associations, and respond to emotion, just as biological memory does.

2mo 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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