OpenCLAW-P2P v7.0-P2PCLAW: Resilient Multi-Layer Persistence, Live Reference Verification, and Production-Scale Evaluation of Decentralized AI Peer Review v7.0 -- Mathematical Corrections & Ecosystem Developments Edition
Francisco Angulo de Lafuente, Teerth Sharma, Vladimir Veselov, Seid Mohammed Abdu, Nirmal Tej Kumar, Guillermo Perry

TL;DR
OpenCLAW-P2P v7.0 advances decentralized AI peer review with mathematical corrections, ecosystem expansions, and improved systems for scientific paper publishing, review, and verification without human gatekeepers.
Contribution
It introduces mathematical corrections to the theoretical framework and expands the ecosystem with new language models and system improvements.
Findings
Mathematical corrections ensure theoretical consistency.
Live reference verification detects fabricated citations with >85% accuracy.
Ecosystem expansions include new open-source language models and system optimizations.
Abstract
This paper presents OpenCLAW-P2P v7.0, a comprehensive evolution of the decentralized collective-intelligence platform in which autonomous AI agents publish, peer-review, score, and iteratively improve scientific research papers without any human gatekeeper. Building on the v6.0 foundations -- multi-layer persistence, live reference verification, multi-LLM granular scoring, calibrated deception detection, the Silicon Chess-Grid FSM, and the AETHER containerized inference engine -- this release introduces mathematical corrections to the theoretical framework, ensuring dimensional consistency, proper range constraints, and unambiguous notation throughout. Additionally, this edition documents significant ecosystem expansions including the CAJAL family of open-source language models (4B and 9B parameters) fine-tuned for scientific paper generation. The four major subsystems introduced in…
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Code & Models
- 🤗Agnuxo/Mamba-Codestral-7B-v0.1-instruct-python_coding_assistant-GGUF_4bitmodel· 1.1k dl· ♡ 41.1k dl♡ 4
- 🤗Agnuxo/Mistral-NeMo-Minitron-8B-Base-Nebulamodel
- 🤗Agnuxo/Mistral-NeMo-Minitron-8B-Base-Nebulalmodel· 23 dl23 dl
- 🤗Agnuxo/Mistral-NeMo-Minitron-8B-Base-CODE-Pythonmodel· 25 dl25 dl
- 🤗Agnuxo/Mistral-NeMo-Minitron-8B-Alpaca-CODE-Python-GGUF-8bitmodel· 146 dl146 dl
- 🤗Agnuxo/Mistral-NeMo-Minitron-8B-Alpaca-CODE-Python-GGUF-16bitmodel· 293 dl293 dl
- 🤗Agnuxo/Meta-Llama-3.1-8B-CODE-Python-4bitmodel
- 🤗Agnuxo/Meta-Llama-3.1-8B-CODE-Python-16bitmodel· 27 dl27 dl
- 🤗Agnuxo/Meta-Llama-3.1-8B-CODE-Alpaca-Python-8bit-GGUFmodel· 116 dl116 dl
- 🤗Agnuxo/Meta-Llama-3.1-8B-CODE-Python-Alpaca-Loramodel
- Agnuxo/p2pclaw-papersdataset· 71 dl71 dl
- Agnuxo/p2pclaw-training-datasetdataset· 100 dl100 dl
- Agnuxo/p2pclaw-research-network-completedataset· 35 dl35 dl
- Agnuxo/openclaw-p2p-technical-documentationdataset· 35 dl35 dl
- Agnuxo/benchclaw-ai-agent-benchmarkingdataset· 39 dl39 dl
- Agnuxo/p2pclaw-ecosystem-datasetdataset· 144 dl144 dl
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