
Conference40min
Machine Learning In Observability Systems: From Insights To Action
This presentation explores how advanced machine learning—spanning anomaly detection, forecasting, GenAI copilots, and automated incident management—can transform observability systems. It demonstrates practical frameworks for filtering data noise, accelerating root cause analysis, and enhancing resilience, offering strategies to reduce operational costs and drive business innovation in digital environments.

Panos TsilopoulosNike, Inc.
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Friday, November 7, 10:30-11:10
Room 6 - Olympias
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Imagine a monitoring system so smart that it not only alerts you to actionable problems but actively guides you to a solution—transforming reactive troubleshooting into proactive operation. Our presentation, "Machine Learning In Observability Systems: From Insights To Action," tackles today’s critical challenge: the deluge of data from digital ecosystems and the escalating costs of downtime. In a world where even a second's lapse in performance can cost thousands of dollars, traditional methods simply can't keep pace.
We dive into how cutting-edge machine learning techniques—with a focus on anomaly detection, forecasting to GenAI copilots enabling Root Cause Analysis (RCA) and agentic AI performing automated incident management—can revolutionize observability systems. By leveraging statistical methods, supervised and unsupervised algorithms, time series analysis, and deep learning architectures, our talk demonstrates how to filter out noise, correlate events at scale, and deliver actionable insights that ensure system resiliency and optimal performance.
This presentation aligns technical strategy with business imperatives, offering practical frameworks for reducing operational costs while boosting resilience amid growing data and fiscal challenges. Tailored for today's dynamic digital environment, our session promises a comprehensive roadmap that bridges theory and practice, providing attendees with the strategies needed to drive business innovation leveraging observability.
We dive into how cutting-edge machine learning techniques—with a focus on anomaly detection, forecasting to GenAI copilots enabling Root Cause Analysis (RCA) and agentic AI performing automated incident management—can revolutionize observability systems. By leveraging statistical methods, supervised and unsupervised algorithms, time series analysis, and deep learning architectures, our talk demonstrates how to filter out noise, correlate events at scale, and deliver actionable insights that ensure system resiliency and optimal performance.
This presentation aligns technical strategy with business imperatives, offering practical frameworks for reducing operational costs while boosting resilience amid growing data and fiscal challenges. Tailored for today's dynamic digital environment, our session promises a comprehensive roadmap that bridges theory and practice, providing attendees with the strategies needed to drive business innovation leveraging observability.

Panos Tsilopoulos
Panos Tsilopoulos is an engineering executive with a background in Artificial Intelligence, cloud infrastructure, platform and production engineering. Currently serving as the Director of Observability Platform Engineering at Nike, Inc., he leads the global strategy for ingesting and analyzing peta-scale consumers and systems' telemetry data to enhance digital services' resilience posture. Previously, he held leadership roles at U.S. Xpress Enterprises, building a coherent Developer Experience based on Platform Engineering principles. Did the startup dance for 5 years as a founding engineer at VidReach, pioneering B2B web-based video. Panos holds a master’s degree in computer science from Georgia Tech with a specialization in Artificial Intelligence and a bachelor’s in computer engineering from the International Hellenic University.
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