List of AI News about AI observability
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2026-01-19 19:00 |
Why Production-Ready RAG Systems Need Observability: Key Metrics and Evaluation Strategies for AI Deployment
According to DeepLearningAI, production-ready Retrieval Augmented Generation (RAG) systems require comprehensive observability to ensure reliable performance and output quality (source: DeepLearningAI on Twitter, Jan 19, 2026). Effective observability involves monitoring both latency and throughput, as well as evaluating response quality using human feedback or LLM-as-a-judge methods. DeepLearningAI's course highlights that a robust evaluation system is essential for identifying issues at both component and system-wide levels. The lesson emphasizes balancing cost, automation, and accuracy when selecting metrics for AI system monitoring. This approach enables AI teams to deploy RAG solutions with confidence, reduces operational risks, and helps businesses maintain high-quality AI-driven outputs, creating tangible business opportunities in regulated and mission-critical industries (source: DeepLearningAI, https://hubs.la/Q03_lM8f0). |
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2025-10-22 15:54 |
Governing AI Agents Course: Practical AI Governance and Observability Strategies with Databricks
According to DeepLearning.AI on Twitter, the newly launched 'Governing AI Agents' course, developed in collaboration with Databricks and taught by Amber Roberts, delivers practical training on integrating AI governance at every phase of an agent’s lifecycle (source: DeepLearning.AI Twitter, Oct 22, 2025). The course addresses critical industry needs by teaching how to implement governance protocols to safeguard sensitive data, ensure safe AI operation, and maintain observability in production environments. Participants gain hands-on experience applying governance policies to real datasets within Databricks and learn techniques for tracking and debugging agent performance. This initiative targets the growing demand for robust AI governance frameworks, offering actionable skills for businesses deploying AI agents at scale. |
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2025-08-06 00:17 |
Why Observability is Essential for Production-Ready RAG Systems: AI Performance, Quality, and Business Impact
According to DeepLearning.AI, production-ready Retrieval-Augmented Generation (RAG) systems require robust observability to ensure both system performance and output quality. This involves monitoring latency and throughput metrics, as well as evaluating response quality using approaches like human feedback or large language model (LLM)-as-a-judge frameworks. Comprehensive observability enables organizations to identify bottlenecks, optimize component performance, and maintain consistent output quality, which is critical for deploying RAG solutions in enterprise AI applications. Strong observability also supports compliance, reliability, and user trust, making it a key factor for businesses seeking to leverage AI-driven knowledge retrieval and generation at scale (source: DeepLearning.AI on Twitter, August 6, 2025). |