Hey everyone,
I'm building Sigui, a DePIN security oracle for AI agents. Today I hit a milestone I'm proud of:
Dataset: https://huggingface.co/datasets/Ibonon/sigui-depin-1m
What's in it:
- 1,000,000 visual transaction graph images generated from 1.87M real on-chain transactions (Ethereum, Arbitrum, Polygon)
- Each graph is annotated with attack topology labels:
DRAIN_STAR,MIXING_CHAIN,NORMAL - Generated in ~1h15 using 20-core parallel processing on AMD MI300X
What I'm doing with it: I'm currently fine-tuning Qwen2-VL-7B via LoRA on this dataset using AMD ROCm. The goal is a model that sees attack patterns in transaction graphs instead of relying on static rules. This will power Imina-Na V2, the vision brain of my security oracle.
If you want to try V1 right now: https://huggingface.co/Ibonon/imina_na_lora β the first vision model trained on DePIN transaction graphs. Feedback welcome.
The standard behind this: I also co-authored ERC-8259, a proposed Ethereum standard for AI Agent Identity & Threat Registry. https://ethereum-magicians.org/t/erc-8259-ai-agent-identity-threat-registry/28473 https://github.com/ibonon/ERCs
The dataset is fully open (MIT license). Would love feedback on the graph generation approach, annotation quality, or the ERC proposal.
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