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AgentRecall
Persistent memory for your AI agents
AgentRecall gives your AI agents graph-powered memory that persists across sessions. Store, search, and traverse memories with semantic intelligence — works with any framework.
About AgentRecall on Product Hunt
“Persistent memory for your AI agents”
AgentRecall was submitted on Product Hunt and earned 3 upvotes and 1 comments, placing #68 on the daily leaderboard. AgentRecall gives your AI agents graph-powered memory that persists across sessions. Store, search, and traverse memories with semantic intelligence — works with any framework.
On the analytics side, AgentRecall competes within Artificial Intelligence and GitHub — topics that collectively have 511.7k followers on Product Hunt. The dashboard above tracks how AgentRecall performed against the three products that launched closest to it on the same day.
Who hunted AgentRecall?
AgentRecall was hunted by Mars H. A “hunter” on Product Hunt is the community member who submits a product to the platform — uploading the images, the link, and tagging the makers behind it. Hunters typically write the first comment explaining why a product is worth attention, and their followers are notified the moment they post. Around 79% of featured launches on Product Hunt are self-hunted by their makers, but a well-known hunter still acts as a signal of quality to the rest of the community. See the full all-time top hunters leaderboard to discover who is shaping the Product Hunt ecosystem.
For a complete overview of AgentRecall including community comment highlights and product details, visit the product overview.


Hey Product Hunt 👋
I'm Marco, and I built AgentRecall because I was tired of my AI agents forgetting key information between sessions.
Every time I restarted a conversation, my agent lost all context of what we had previously discussed. I tried prompt stuffing, vector stores, flat files but nothing gave them real, structured memory.
So I built AgentRecall: a memory SDK that gives AI agents persistent, graph-powered intelligence.
What it does:
- Stores memories with automatic entity extraction and relationship detection
- Connects memories in a knowledge graph (Neo4j) so agents can traverse and discover connections
- Semantic search finds relevant memories by meaning, not just keywords
- Works locally with your own infra, or via our cloud API
The tech:
- Open source SDK (Node.js + Python)
- Neo4j graph database for relationship traversal
- Qwen2.5-7B for AI-powered memory processing
- Sentence-transformers for local embeddings (no API calls needed)
Pricing:
- Free tier: 1,000 memories, 1 agent
- Pro: $9/mo for unlimited everything
I'd love to hear what you think, especially if you're building with AI agents. What's your biggest memory pain point?
Happy to answer any questions. Thanks for checking it out! 🚀