YoVDO

Federated Learning - Private Distributed ML

Offered By: Strange Loop Conference via YouTube

Tags

Strange Loop Conference Courses Machine Learning Courses Distributed Systems Courses Federated Learning Courses Data Privacy Courses

Course Description

Overview

Explore federated learning, a distributed machine learning approach that preserves data privacy, in this 44-minute conference talk from Strange Loop. Learn how this technique enables collaboration on ML models without sharing sensitive data directly. Discover the federated averaging algorithm, real-world challenges, and ongoing research to enhance security, reduce communication costs, and strengthen privacy guarantees. Gain insights into practical applications, potential pitfalls, and strategies for implementing federated learning across various domains, from embedded devices to legal entities. Understand when and how to leverage this technology to balance the benefits of machine learning with crucial privacy concerns.

Syllabus

Intro
What is ML
Privacy
Data
Hardware
Federated learning
Pseudocode
Lost Curve
Turbofan Tycoon
Hello World
Unequal distribution
The bad things
Does it work
Resources
Problems
Example
Strategies
When to use federated learning
Practical advice
Papers


Taught by

Strange Loop Conference

Tags

Related Courses

Online Master of Computer Science
Arizona State University via Coursera
Blockchain Scalability and its Foundations in Distributed Systems
The University of Sydney via Coursera
Blockchain Fundamentals: Understanding the Origins, Mechanisms, and Applications of Decentralized Systems
SDA Bocconi School of Management via edX
Blockchain Technology
University of California, Berkeley via edX
Building Globally Distributed Databases with Cosmos DB
Coursera Project Network via Coursera