Detecting outliers and anomalies in realtime at Datadog - Homin Lee (OSCON Austin 2016)
Monitoring even a modestly sized systems infrastructure quickly becomes untenable without automated alerting. For many metrics, it is nontrivial to define ahead of time what constitutes “normal” versus “abnormal” values. This is especially true for metrics whose baseline value fluctuates over time. To make this problem more tractable, Datadog provides outlier detection functionality to automatically identify any host (or group of hosts) that is behaving abnormally compared to its peers and anomaly detection to alert when any single metric is behaving differently than its past history would suggest. Homin Lee discusses the algorithms and open source tools Datadog uses for outlier and anomaly detection and lessons learned from using these alerts on its own systems, along with some real-life examples on how to avoid false positives and negatives.

Automatically Find Patterns & Anomalies from Time Series or Sequential Data - Sean Law

DASH 2026 Keynote

Jan van der Vegt: A walk through the isolation forest | PyData Amsterdam 2019

Watch Everything, Watch Anything: Anomaly Detection By Nathaniel Cook

Anomaly Detection 101 - Elizabeth (Betsy) Nichols Ph.D.

Why The Russian Accent Terrifies Everyone

Trump Preps for 80th Birthday, Threatens to Hit Iran, Knicks Historic Win & Elon Musk Trillionaire!?

Anomaly Detection: Algorithms, Explanations, Applications

A review of machine learning techniques for anomaly detection - Dr David Green

Detecting Anomalies Using Statistical Distances | SciPy 2018 | Charles Masson

How to Measure your Most Expensive Milliseconds

Apache Iceberg: What It Is and Why Everyone’s Talking About It.

Anomaly Detection for Data Quality and Metric Shifts at Netflix | Netflix

Data-Driven Anomaly Detection | Nikunj Oza | Talks at Google

Practical Time-Series Forecast and Anomaly Detection in Python, Dr. Ahmed Abdulaal 20191028

Personne ne réalise ce que Yann LeCun vient de créer

Unsupervised real-time anomaly detection and root cause estimation by Aitor Landete and Pablo Mateos

Anomaly Detection for Real-World Systems by Manojit Nandi | DataEngConf NY '16

The Strange Math That Predicts (Almost) Anything

