
Sign up to save your podcasts
Or


The video from IBM Technology explores how agentic AI can significantly improve anomaly detection and resolution in IT systems. It highlights the challenges of traditional methods, where human engineers face sleep inertia and must manually sift through massive volumes of telemetry data, often leading to hallucinations if raw data is fed directly into large language models (LLMs). The video emphasizes the importance of context curation using topology-aware correlation to strategically provide only relevant data to the AI. This agentic AI operates in a perceive-reason-act-observe loop, formulating hypotheses about root causes, and providing explanability with chain of thought reasoning and supporting evidence. Ultimately, this technology assists Site Reliability Engineers (SREs) in validating root causes, generating step-by-step runbooks for remediation, creating automation scripts, and producing automatic documentation, thereby reducing mean time to repair (MTTR) and operational stress.
 By Steven
By StevenThe video from IBM Technology explores how agentic AI can significantly improve anomaly detection and resolution in IT systems. It highlights the challenges of traditional methods, where human engineers face sleep inertia and must manually sift through massive volumes of telemetry data, often leading to hallucinations if raw data is fed directly into large language models (LLMs). The video emphasizes the importance of context curation using topology-aware correlation to strategically provide only relevant data to the AI. This agentic AI operates in a perceive-reason-act-observe loop, formulating hypotheses about root causes, and providing explanability with chain of thought reasoning and supporting evidence. Ultimately, this technology assists Site Reliability Engineers (SREs) in validating root causes, generating step-by-step runbooks for remediation, creating automation scripts, and producing automatic documentation, thereby reducing mean time to repair (MTTR) and operational stress.