Encryption Techniques for Securing Data in Federated Learning
In this informative video, we will discuss the encryption techniques that are suitable for securing data in federated learning.

NextLVLProgramming
6 views • Sep 7, 2025

About this video
What Encryption Techniques Are Suitable For Securing Data In Federated Learning? In this informative video, we will discuss the encryption techniques that are suitable for securing data in federated learning. You'll learn about the importance of protecting model updates during collaborative learning and how various encryption methods can help achieve this goal. We will cover secure aggregation, a method that ensures individual model updates remain confidential while still allowing for their aggregation. Additionally, we’ll explore homomorphic encryption, which enables computations on encrypted data, keeping sensitive information secure throughout the process.
We'll also touch on differential privacy, a concept that adds noise to model updates to obscure individual contributions, and secure multiparty computation, which allows multiple parties to compute functions while keeping their inputs private. Our discussion will include programming considerations for implementing these techniques, such as integrating cryptographic libraries and ensuring compatibility with model aggregation operations.
By the end of the video, you'll have a clearer understanding of how these encryption techniques work together to maintain data security in federated learning. Don’t forget to subscribe to our channel for more content on programming and coding, and to stay updated on the latest in data security and machine learning practices.
⬇️ Subscribe to our channel for more valuable insights.
🔗Subscribe: https://www.youtube.com/@NextLVLProgramming/?sub_confirmation=1
#FederatedLearning #DataSecurity #Encryption #Cryptography #MachineLearning #Privacy #SecureAggregation #HomomorphicEncryption #DifferentialPrivacy #SecureComputation #PrivacyPreserving #DataProtection #Programming #Coding #TechEducation
We'll also touch on differential privacy, a concept that adds noise to model updates to obscure individual contributions, and secure multiparty computation, which allows multiple parties to compute functions while keeping their inputs private. Our discussion will include programming considerations for implementing these techniques, such as integrating cryptographic libraries and ensuring compatibility with model aggregation operations.
By the end of the video, you'll have a clearer understanding of how these encryption techniques work together to maintain data security in federated learning. Don’t forget to subscribe to our channel for more content on programming and coding, and to stay updated on the latest in data security and machine learning practices.
⬇️ Subscribe to our channel for more valuable insights.
🔗Subscribe: https://www.youtube.com/@NextLVLProgramming/?sub_confirmation=1
#FederatedLearning #DataSecurity #Encryption #Cryptography #MachineLearning #Privacy #SecureAggregation #HomomorphicEncryption #DifferentialPrivacy #SecureComputation #PrivacyPreserving #DataProtection #Programming #Coding #TechEducation
Tags and Topics
Browse our collection to discover more content in these categories.
Video Information
Views
6
Likes
1
Duration
4:11
Published
Sep 7, 2025
Related Trending Topics
LIVE TRENDSRelated trending topics. Click any trend to explore more videos.