Lucia Cerchie
Let's Get Started With Apache Kafka® for Python Developers
#1about 3 minutes
Understanding the purpose and core use cases of Kafka
Apache Kafka is an event streaming platform designed for high-throughput, real-time data feeds like event-driven applications and clickstream analysis.
#2about 2 minutes
Exploring Kafka's core concepts of events, topics, and partitions
Events are organized into logical groupings called topics, which use an immutable log data structure split into partitions for scalability.
#3about 2 minutes
Understanding the roles of producers and consumers
Producers write events to topic partitions based on a key, while consumers read from topics and can be organized into groups to share workloads.
#4about 4 minutes
Building a real-time Kafka producer and consumer in Python
A code walkthrough demonstrates how to use the confluent-kafka library to create a producer that sends click events and a consumer that reads them in real time.
#5about 4 minutes
Navigating the Kafka ecosystem and the power of community
The broad Kafka ecosystem includes tools like k-cat and KIPs, and leveraging developer communities is key to overcoming learning challenges.
#6about 1 minute
Recapping Kafka's capabilities for real-time data feeds
A summary reinforces how Kafka's distributed nature and use of partitions enable a high-throughput, low-latency solution for real-time data.
#7about 23 minutes
Answering questions on Kafka use cases, careers, and learning
The Q&A covers real-world applications like fraud detection, decoupling microservices, the difference between Apache and Confluent Kafka, and learning resources.
Related jobs
Jobs that call for the skills explored in this talk.
Matching moments
01:56 MIN
A brief overview of Apache Kafka architecture
How to Benchmark Your Apache Kafka
30:33 MIN
Live demo setup for debugging Kafka
Tips, Techniques, and Common Pitfalls Debugging Kafka
03:40 MIN
Understanding Kafka's role in modern architectures
Tips, Techniques, and Common Pitfalls Debugging Kafka
08:43 MIN
Getting started with Kafka in Python
Tips, Techniques, and Common Pitfalls Debugging Kafka
00:02 MIN
The growing role of Python in real-time data processing
Python-Based Data Streaming Pipelines Within Minutes
05:04 MIN
Real-world Kafka use cases at scale
Tips, Techniques, and Common Pitfalls Debugging Kafka
05:20 MIN
A traditional approach to streaming with Kafka and Debezium
Python-Based Data Streaming Pipelines Within Minutes
01:03 MIN
Why Python is ideal for data streaming frameworks
Convert batch code into streaming with Python
Featured Partners
Related Videos
Tips, Techniques, and Common Pitfalls Debugging Kafka
DeveloperSteve
Python-Based Data Streaming Pipelines Within Minutes
Bobur Umurzokov
How to Benchmark Your Apache Kafka
Kirill Kulikov
Practical Change Data Streaming Use Cases With Debezium And Quarkus
Alex Soto
Convert batch code into streaming with Python
Bobur Umurzokov
Kafka Streams Microservices
Denis Washington & Olli Salonen
Why and when should we consider Stream Processing frameworks in our solutions
Soroosh Khodami
From event streaming to event sourcing 101
Gerard Klijs
From learning to earning
Jobs that call for the skills explored in this talk.


Senior Java Developer
Picnic Technologies B.V.
Amsterdam, Netherlands
Senior
Java
Spring
Amazon Web Services (AWS)

Senior DevOps Engineer (f/m/x)
Douglas GmbH
Düsseldorf, Germany
Senior
Kubernetes
Cloud (AWS/Google/Azure)

DevOps Engineer – Kubernetes & Cloud (m/w/d)
epostbox epb GmbH
Berlin, Germany
Intermediate
Senior
DevOps
Kubernetes
Cloud (AWS/Google/Azure)



Python Developer - KI & Data Solutions im Healthcare-Tech Umfeld
Skalbach Gmbh
API
Azure
NoSQL
Flask
Django
+8

Principal Backend Engineer - Django / Aws
Django Software Foundation
CSS
HTML
Django
Terraform
JavaScript
+1
