Drifter: Efficient Online Feature Monitoring for Improved Data Integrity in Large-Scale Recommendation Systems

09/04/2023
by   Blaž Škrlj, et al.
0

Real-world production systems often grapple with maintaining data quality in large-scale, dynamic streams. We introduce Drifter, an efficient and lightweight system for online feature monitoring and verification in recommendation use cases. Drifter addresses limitations of existing methods by delivering agile, responsive, and adaptable data quality monitoring, enabling real-time root cause analysis, drift detection and insights into problematic production events. Integrating state-of-the-art online feature ranking for sparse data and anomaly detection ideas, Drifter is highly scalable and resource-efficient, requiring only two threads and less than a gigabyte of RAM per production deployments that handle millions of instances per minute. Evaluation on real-world data sets demonstrates Drifter's effectiveness in alerting and mitigating data quality issues, substantially improving reliability and performance of real-time live recommender systems.

READ FULL TEXT
research
03/15/2022

Practical data monitoring in the internet-services domain

Large-scale monitoring, anomaly detection, and root cause analysis of me...
research
07/18/2022

Lightweight Automated Feature Monitoring for Data Streams

Monitoring the behavior of automated real-time stream processing systems...
research
10/12/2017

On the Runtime-Efficacy Trade-off of Anomaly Detection Techniques for Real-Time Streaming Data

Ever growing volume and velocity of data coupled with decreasing attenti...
research
09/04/2023

OutRank: Speeding up AutoML-based Model Search for Large Sparse Data sets with Cardinality-aware Feature Ranking

The design of modern recommender systems relies on understanding which p...
research
07/31/2023

General Anomaly Detection of Underwater Gliders Validated by Large-scale Deployment Dataset

This paper employs an anomaly detection algorithm to assess the normal o...
research
11/21/2019

Event Detection in Noisy Streaming Data with Combination of Corroborative and Probabilistic Sources

Global physical event detection has traditionally relied on dense covera...

Please sign up or login with your details

Forgot password? Click here to reset