Building a CML Pipeline with Spark and Kafka - YOW! 2018
Offered By: GOTO Conferences via YouTube
Course Description
Overview
Explore the process of building a Continuous Machine Learning (CML) pipeline using Apache Spark and Apache Kafka in this conference talk from YOW! 2018. Dive into functional programming concepts as Principal Machine Learning Engineer Cameron Joannidis demonstrates how to leverage these powerful tools for efficient data processing and real-time analytics. Learn best practices for integrating Spark and Kafka in a machine learning workflow, optimizing performance, and scaling your pipeline to handle large datasets. Gain insights into the challenges and solutions involved in creating robust, scalable CML systems that can adapt to changing data streams and model requirements.
Syllabus
Building a CML Pipeline with Spark & Kafka • Cameron Joannidis • YOW! 2018
Taught by
GOTO Conferences
Related Courses
CS115x: Advanced Apache Spark for Data Science and Data EngineeringUniversity of California, Berkeley via edX Big Data Analytics
University of Adelaide via edX Big Data Essentials: HDFS, MapReduce and Spark RDD
Yandex via Coursera Big Data Analysis: Hive, Spark SQL, DataFrames and GraphFrames
Yandex via Coursera Introduction to Apache Spark and AWS
University of London International Programmes via Coursera