Bobur Umurzokov

Python-Based Data Streaming Pipelines Within Minutes

Build production-ready streaming pipelines in minutes, not months. This talk introduces a Python-native solution that eliminates complex infrastructure.

Python-Based Data Streaming Pipelines Within Minutes
#1about 2 minutes

The growing role of Python in real-time data processing

Python is becoming a primary language for real-time data science and machine learning, challenging traditional Java-based tools like Kafka.

#2about 3 minutes

Understanding the challenges of adopting real-time data streaming

Companies hesitate to adopt real-time streaming due to high initial infrastructure costs, the mental shift from batch processing, and inefficient resource usage.

#3about 4 minutes

A traditional approach to streaming with Kafka and Debezium

A common but complex streaming architecture involves using Debezium for change data capture and Kafka as a message broker, which presents DevOps challenges.

#4about 7 minutes

Exploring the operational complexity of Kafka and Flink

Combining Kafka for messaging and Apache Flink for computation creates significant operational overhead, requiring specialized roles and complex infrastructure management.

#5about 4 minutes

Simplifying streaming with modern Python-native frameworks

Modern Python frameworks unify the message broker and stream processor, abstracting away infrastructure complexity and enabling developers to focus on business logic.

#6about 3 minutes

Practical applications for real-time Python data pipelines

Real-time Python pipelines can power various applications, including clickstream analytics, ad enrichment, vector database updates, and anomaly detection alerts.

#7about 8 minutes

How to build a serverless pipeline with GlassFlow

A step-by-step guide shows how to create a real-time data pipeline using a visual editor, a Python transformation function, and webhooks for integration.

#8about 4 minutes

A live demo of a real-time price prediction pipeline

Watch a live demonstration where new data inserted into a Supabase database is instantly processed by a GlassFlow pipeline to predict a price using AI.

#9about 3 minutes

Key benefits of using Python-native streaming frameworks

Python-native frameworks provide self-sufficiency for data teams, reduce infrastructure management with serverless execution, and accelerate the development of real-time applications.

Related jobs
Jobs that call for the skills explored in this talk.

d

Saby Company
Delebio, Italy

Junior

test

Milly
Vienna, Austria

Intermediate

Featured Partners

Related Articles

View all articles
CH
Chris Heilmann
Dev Digest 134 - Where pixels sing?
News and ArticlesWeAreDevelopers LIVE Data and Security Day is on Wednesday, 25/09/2024. Learn about OPC UA Updates, Best Practices for Using GitHub Secrets, Passwordless Web 1.5, Emerging AI Security Risks, Data Privacy in LLMs and get a chance to t...
Dev Digest 134 - Where pixels sing?
BB
Benedikt Bischof
How we Build The Software of Tomorrow
Welcome to this issue of the WeAreDevelopers Live Talk series. This article recaps an interesting talk by Thomas Dohmke who introduced us to the future of AI – coding.This is how Thomas describes himself:I am the CEO of GitHub and drive the company’s...
How we Build The Software of Tomorrow
DC
Daniel Cranney
10+ Free Tools Built on Top of the Bluesky API
Bluesky has been making waves recently, and the chances are you've heard the noise.Although it launched back in 2021, the platform saw a massive surge in popularity following the US presidential elections in November 2024, as millions of users withdr...
10+ Free Tools Built on Top of the Bluesky API

From learning to earning

Jobs that call for the skills explored in this talk.