Immutable checkpoint storage for ML training pipelines. Kernel-level protection, anomaly detection, score-gated rollback, and self-healing recovery. Built in Rust.
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Updated
Apr 4, 2026 - Rust
Immutable checkpoint storage for ML training pipelines. Kernel-level protection, anomaly detection, score-gated rollback, and self-healing recovery. Built in Rust.
Static analysis and integrity verification for GGUF model files
Machine-checks every fixed model artefact—weights, vocab, quant tables, tokenizers.
Detect and defend against AI model poisoning attacks on ML training data
Security scanner for the LLM fine-tuning lifecycle — detect dataset poisoning, malicious LoRA adapters, and model weight tampering
Practical guardrails against silent GPU-side model corruption
Time‑Shift LLM Integrity Tester
Blockchain-based ML model and file integrity verification using SHA-256, Proof-of-Work, and IPFS via Pinata
Model integrity and provenance verification for LLMs and AI models. Generate, verify, and cryptographically secure your model artifacts.
Live-state attestation and drift detection for secure AI inference runtimes
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