New Signup Offer:0.5 TB on us with code · New Year offer ends January 9 Claim Offer

Filter, Transform, Route: Optimize with OpenObserve Pipelines

January 28, 2026
11:00 AM ET
1 hour
Optional. Used only to send reminders about this webinar.

Note: By registering, you consent to receive emails regarding this event recording and related product updates.

Share:TwitterLinkedInFacebook
Filter, Transform, Route: Optimize with OpenObserve Pipelines

What you'll learn

Understand the OpenObserve Pipelines feature

Learn practical approaches to transforming and enriching messy data into something queryable and useful

See how pipelines can aggregate and filter logs across multiple teams and environments

Most observability platforms require you to ingest everything first and decide what to do with the data later. OpenObserve Pipelines flips that model, giving you the ability to filter, transform, enrich, and route telemetry data either in real time or on a schedule, before it reaches storage.

In this webinar, we’ll tackle common observability pain points head-on and demonstrate how to solve them using data processing workflows in OpenObserve. You’ll learn how to reduce storage costs by filtering unnecessary data, route logs to the right teams without duplication, eliminate noise before it reaches your dashboards, and transform messy telemetry into actionable insights, all before it’s stored.

About the Speakers

Uddhav Dave

Uddhav Dave

LinkedIn

Uddhav Dave is a backend engineer with experience in building scalable, high-performance systems. With a strong background in backend architecture, caching strategies, asynchronous programming, and cloud-native development, he focuses on delivering reliable solutions across distributed systems.

Simran Kumari

Simran Kumari

LinkedIn

Simran specializes in DevOps, cloud-native technologies, and observability, with hands-on experience in Kubernetes, Docker, and AWS. Creates practical, accessible technical content and solutions that help teams simplify complex workflows and improve system reliability.