Skip to main content
Graph
Search
fr
|
en
Login
Search
All
Categories
Concepts
Courses
Lectures
MOOCs
People
Practice
Publications
Startups
Units
Show all results for
Home
Lecture
Information Theory and Coding: Source Coding
Graph Chatbot
Related lectures (30)
Previous
Page 2 of 3
Next
Compression: Prefix-Free Codes
Explains prefix-free codes for efficient data compression and the significance of uniquely decodable codes.
Conditional Entropy and Data Compression Techniques
Discusses conditional entropy and its role in data compression techniques.
Information Theory: Entropy and Information Processing
Explores entropy in information theory and its role in data processing and probability distributions.
Information Theory: Review and Mutual Information
Reviews information measures like entropy and introduces mutual information as a measure of information between random variables.
Source Coding Theorem
Explores the Source Coding Theorem, entropy, Huffman coding, and conditioning's impact on entropy reduction.
Source Coding and Prefix-Free Codes
Covers source coding, injective codes, prefix-free codes, and Kraft's inequality.
Error Correction Codes: Theory and Applications
Covers error correction codes theory and applications, emphasizing the importance of minimizing distance for reliable communication.
Information Theory: Source Coding, Cryptography, Channel Coding
Covers source coding, cryptography, and channel coding in communication systems, exploring entropy, codes, error channels, and future related courses.
Data Compression and Shannon's Theorem: Shannon's Theorem Demonstration
Covers the demonstration of Shannon's theorem, focusing on data compression.
Information in Networked Systems: Functional Representation and Data Compression
Explores traditional information theory, data compression, data transmission, and functional representation lemmas in networked systems.