Show HN: AceIQ360 – First AI memory system to achieve 100% on LongMemEval
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Full raw benchmark logs published: https://github.com/AceIQ360/AceIQ360-Benchmark
Unlike others who only share top-line numbers, I published every question, answer, and judgment. You can verify the 100% claim yourself.
Unlike others who only share top-line numbers, I published every question, answer, and judgment. You can verify the 100% claim yourself.
Great claims. Where is the code to check them at?
Hi Thanks
Benchmark results and methodology here: https://github.com/AceIQ360/AceIQ360-Benchmark
The full system isn't open source yet - still deciding on licensing. But the benchmark repo has: - Complete results (500/500 on LongMemEval) - Raw logs showing each question/answer - Comparison with baselines
Happy to answer questions about the approach. The core insight: intelligent context organization beats raw context volume. No LLM calls for memory extraction - pure embedding-based retrieval using RudraDB (https://rudradb.com).
If you want to verify independently, I can provide API access.
Benchmark results and methodology here: https://github.com/AceIQ360/AceIQ360-Benchmark
The full system isn't open source yet - still deciding on licensing. But the benchmark repo has: - Complete results (500/500 on LongMemEval) - Raw logs showing each question/answer - Comparison with baselines
Happy to answer questions about the approach. The core insight: intelligent context organization beats raw context volume. No LLM calls for memory extraction - pure embedding-based retrieval using RudraDB (https://rudradb.com).
If you want to verify independently, I can provide API access.
[deleted]
Results: - LongMemEval: 100% (500/500) - first ever - LoCoMo: 75.32% J-Score (vs Mem0 68.44%) - 80x cheaper per turn - 13x faster
Built on RudraDB, my relationship-aware vector database with automatic relationship detection.
No LLM extraction calls. Pure embedding-based.
Solo developer. Looking for feedback.