Using Airflow for Real-Time Data Processing at Scale: Architecture, Challenges & Wins
Airflow is a powerhouse for batch data pipelines—but can it be tuned for real-time workloads? In this session, we’ll share how we adapted Apache Airflow to orchestrate near-real-time data processing at scale. From leveraging event-driven triggers and external APIs to minimizing latency with smart DAG design, we’ll dive into real-world architectural patterns, challenges, and optimizations that helped us handle time-sensitive data workflows with confidence. This talk is ideal for teams seeking to expand beyond batch and explore hybrid or real-time orchestration using Airflow.

▶︎
Securing Airflow CLI with API

▶︎
Ex-Google Recruiter Explains Why "Lying" Gets You Hired

▶︎
Webinar Highlights | Fast track Your Data Warehouse Modernization Journey | Ness

▶︎
How NOT to Become a Data Engineer in 2026 (Avoid These Mistakes)

▶︎
Learn Apache Airflow in 10 Minutes | High-Paying Skills for Data Engineers

▶︎
The Intelligence Advantage- Patterns of Digital Strategy using Wardley Maps

▶︎
How To Think SO CLEARLY People Assume You're A Genius

▶︎
How Instagram Scaled Postgres to 2 Billion Users

▶︎
Let’s Handle 1 Million Requests per Second, It’s Scarier Than You Think!

▶︎
Top 10 Data Orchestration Tools in 2026 | Orchestration Tools Completely broken down

▶︎
Temenos T24 Transact Performance Engineering Deep Dive

▶︎
Apache Airflow One Shot- Building End To End ETL Pipeline Using AirFlow And Astro

▶︎
Frankreich - Senegal Highlights FIFA WM 2026 | Sportschau

▶︎
Something is jamming GPS over Europe. Here's what we found

▶︎
Turing Award Winner: Disagreeing with Google, Postgres, Future Problems | Mike Stonebraker

▶︎
Realtime Data Streaming | End To End Data Engineering Project

▶︎
I Think They Are Lying To You

▶︎
Stanford CS153 Frontier Systems | Scale, AGI, and the Future of Everything

▶︎
Inside Anthropic, the $965 Billion AI Juggernaut | The Circuit

▶︎
