Picklescan Bugs Allow Malicious PyTorch Models to Evade Scans and Execute Code
These articles are AI-generated summaries. Please check the original sources for full details.
Picklescan Bugs Allow Malicious PyTorch Models to Evade Scans and Execute Code
Three critical Picklescan vulnerabilities (CVE-2025-10155, CVE-2025-10156, CVE-2025-10157) allow malicious PyTorch models to bypass scans and execute arbitrary code, with CVSS scores up to 9.3. Security researcher David Cohen warns these flaws could enable large-scale supply chain attacks via undetectable malicious models.
Why This Matters
Picklescan relies on a blocklist of known hazardous imports to detect malicious pickle files, but this approach fails to adapt to novel attack vectors. Attackers can exploit gaps in the tool’s logic to bypass protections, risking data exfiltration or model tampering. The vulnerabilities highlight a systemic gap between AI innovation and security tooling, leaving organizations exposed to evolving threats.
Key Insights
- “8-hour App Engine outage, 2012” (example placeholder removed; actual insight: “Three CVEs (CVSS 9.3) in Picklescan allow bypassing malware detection via file extensions, CRC errors, or unsafe globals”)
- “Sagas over ACID for e-commerce” (example placeholder removed; actual insight: “Attackers can embed malicious code in PyTorch models using .bin/.pt extensions, evading detection by Picklescan’s blocklist”)
- “Temporal used by Stripe, Coinbase” (example placeholder removed; actual insight: “SecDim demonstrated DNS-based data exfiltration using linecache and ssl modules, undetected by Picklescan 0.0.24”)
Practical Applications
- Use Case: AI model supply chain attacks leveraging Picklescan’s bypasses to inject backdoors into PyTorch models
- Pitfall: Relying on static blocklists without continuous updates, enabling attackers to exploit unknown vectors
References:
Continue reading
Next article
GenAI Security: Defending Against Deepfakes and Automated Social Engineering
Related Content
Anthropic Finds LLMs Can Be Poisoned Using Small Number of Documents
Anthropic's study reveals 250 malicious documents can create LLM backdoors, challenging scaling assumptions.
Two High-Severity n8n Flaws Allow Authenticated Remote Code Execution
Researchers disclosed two n8n vulnerabilities with a CVSS score of 9.9 and 8.5, allowing authenticated users to bypass JavaScript and Python sandboxes and run arbitrary code.
Secure LLM Agents with Two-Stage Prompt Injection Detection
ZooClaw releases a specialized prompt injection detection API using a two-stage architecture to protect agentic workflows. The system achieves a 0.972 F1 score in English benchmarks, significantly outperforming GPT-4o, and provides sub-10ms latency for 95 percent of production traffic.