This repo is a work in progress
Discussion and problem solving on the topics of:
- Graph Algorithms
- Max Flow Networks
- Dynamic Programming and principle of optimality
For the purpose we will follow the notation introduced in the book "Digraphs: Theory, Algorithms, and Applications" by Jensen and Gutin.
Specifically we will discuss in details and will be writing python code for the following algorithms:
-
Backtracking
We will look into using open source python packages such as dynamic-programming and networkx.
-
Statistical Learning, Kernel Methods, Kolomogorov-Arnold Networks
-
Deep Learning for solving Image Processing problems and Generative Tasks
-
Hypothesis Testing, Estimation of Treatment Effects and Generalized Synthetic Control
-
Queueing Networks, Queueing Theory, Reversible Stochastic Processes
-
Spectral Analysis, Optimization in Spectral Domain, Spectral Domain Modeling
-
Computability, Automata, Logic Systems, Formal Grammars and Theory of Parsing
-
Thought Forming, Consciousness, Intelligent Machines, Semantic Inference
This repository uses git Large File Storage feature. In order to download locally the large files (> 1MB) which are maintained by git LFS you will need to install the Git extension for versioning large files: https://git-lfs.com/