Video by H2O.ai via YouTube

How H2O.ai delivers audit-ready AI with centralized logging, automated model documentation, and traceable agent execution.
When regulators ask questions, teams need a complete, reproducible paper trail. H2O.ai builds auditability directly into the DSML lifecycle—centralized audit logs capture every user action, deployment event, and configuration change with precise timestamps and actor context. AutoDoc eliminates manual reporting by generating comprehensive model documentation automatically. For generative AI, every agent execution step is fully traceable, exposing tool calls, data access, and reasoning steps to explain exactly how a recommendation was reached.
Technical Capabilities & Resources
➤ Centralized Audit Logging: Complete history of user actions, administrative changes, and operational events with timestamps and actor context.
🔗 https://docs.h2o.ai/haic-documentation/security-guarantees-model#audit-logging
➤ Automated Model Documentation (AutoDoc): Generate reproducible reports covering model configurations, feature importance, and performance metrics automatically.
🔗 https://docs.h2o.ai/driverless-ai/latest-lts/docs/userguide/autodoc-using.html
➤ Traceable Agent Execution: Step-by-step breakdown of agent tool calls, data access, and reasoning for full decision transparency.
🔗 https://docs.h2oai.com/enterprise-h2ogpte/guide/agents#how-to-review-agent-behavior
➤ ML Interpretability & Retention: Support long-term compliance with interpretability tooling and configurable data retention policies.
🔗 https://docs.h2o.ai/driverless-ai/latest-lts/docs/userguide/mli.html