Enterprise-Scale MLflow Operations and Security Practices at LY Corporation
Excerpt
How LY Corporation Uses MLflow: An Overview
Excerpt from the source feed. For the full article, follow the source link above.
More from MLflow Blog
From Black Box to Observability: Tracing OpenClaw with MLflow
MLflow Tracing now provides full observability for OpenClaw agents, moving them from black box to transparent. Learn how to quickly set up tracing to understand why your agent makes specific decisions, rather than just seeing the output.
See What Your AI Sees: Multimodal Tracing for Images, Audio, and Files
Databricks now supports multimodal tracing for images, audio, and files, allowing you to visualize and interact with these artifacts directly within your traces instead of opaque base64 strings. This enhancement improves debugging for GenAI agents, reduces storage costs, and speeds up trace queries by avoiding direct storage of large multimedia strings.
AI observability for production: Seeing Inside Your Multi-Agent System with MLflow
MLflow now offers enhanced AI observability for multi-agent systems, providing crucial visibility into their internal workings. This helps practitioners prevent unintended actions like data purges or sensitive information leaks in production.
Structuring AI Evaluation and Observability with MLflow: From Development to Production
MLflow now offers enhanced tools for structuring AI evaluation and observability, including new APIs and UI features for logging LLM calls, prompts, responses, and metrics. This enables practitioners to systematically track, compare, and analyze model performance and behavior across development and production, facilitating iterative improvement and robust monitoring.
Enforce Content Policies at the Gateway with AI Gateway Guardrails
MLflow AI Gateway now supports configurable guardrails, using LLM judges to block or sanitize harmful content, PII, and custom policy violations. Enforce content policies at the gateway before requests reach your users or models.
Tired of Reviewing Traces? Meet Automatic Issue Detection for Your Agent
Automatic issue detection for your AI agent is now available, eliminating the need for manual trace reviews. This new feature helps you act on your observability data, improving the user experience beyond just recording logs, metrics, and traces.