
AI Security Podcast Build vs. Buy in AI Security: Why Internal Prototypes Fail & The Future of CodeMender
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Dec 3, 2025 The debate on whether to build or buy AI security tools heats up with insights on Google's CodeMender, which autonomously finds and fixes vulnerabilities. The challenges of scaling prototypes into production-grade solutions lead to alarming failures within 18 months. They discuss incentives for internal teams that drive unnecessary AI expansion, potentially igniting an AI bubble. Predictions emerge about the shift towards auto-personalized security products that adapt to environments, as the hype around 'agentic AI' raises more questions than answers.
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CodeMender Automates Full Vulnerability Workflow
- DeepMind's CodeMender finds, root-causes, patches and validates vulnerabilities across static and dynamic analysis.
- This combines static analysis, fuzzing and automated patch implementation into a single agent-driven workflow.
Prototype Ease, Production Pain
- Prototyping AI features is easy but achieving consistency, scalability and production quality is hard.
- Expect hidden costs and an 18-month slog to learn tuning, data and stability issues before production readiness.
Pair Data Engineers With Security Experts
- Don't assume existing data engineers can turn general data lakes into security solutions without domain context.
- Collaborate with security experts when transforming logs and pen test results into actionable models and RAG sources.
