CS 7301: Spring 2021 Course on Advanced Topics in Optimization in Machine Learning

Overview

Advanced Topics in Optimization for Machine Learning

CS 7301: Spring 2021 Course on Advanced Topics in Optimization for Machine Learning

Video Lectures

Video Lectures are on this youtube playlist: https://www.youtube.com/playlist?list=PLGod0_zT9w92_evaYrf3-rE67AmgPJoUU

Github Link to all Demos

https://github.com/rishabhk108/OptimizationDemos

Link to Google Spreadsheet for Paper Review and Project Topics

https://docs.google.com/spreadsheets/d/1UHHFlo_8QAvmXjWqoU02Calq86S-ewYl7Jczjhgr0wY/edit?usp=sharing

Deadline for finalizing on the papers to cover: February 26th

Deadine for finalizing on the project topic: March 5th

Topics Covered in this Course

  • Week 1
    • Logistics, Outline of this Course
    • Continuous Optimization in ML
    • Convex Sets and Basics of Convexity
  • Week 2: Gradient Descent and Family
    • Convex Functions, Properties, Minima, Subgradients
    • Gradient Descent and Line Search
  • Week 3: Gradient Descent Cont.
    • Accelerated Gradient Descent
    • Projected and Proximal Gradient Descent
  • Week 4
    • Projected GD and Conditional GD (Constrained Case)
    • Second Order Methods (Newton, Quasi-Newton, BFGS, LBFGS)
  • Week 5
    • Second Order Methods Completed
    • Barzelia Borwein and Conjugate GD
    • Coordinate Descent Family
  • Week 6
    • Stochastic Gradient and Family (SGD, SVRG)
    • SGD for Non-Convex Optimization. Modern variants of SGD particularly for deep learning (e.g. Adagrad, Adam, AdaDelta, RMSProp, Momentum etc.)
  • Week 7
    • Submodular Optimization: Basics, Definitions, Properties, and Examples.
  • Week 8
    • Submodular Information Measures: Conditional Gain, Submodular Mutual Information, Submodular Span, Submodular Multi-Set Mutual Information
  • Week 9
    • Submodular Minimization and Continuous Extensions of Submodular Functions. Submodular Minimization under constraints
  • Week 10
    • Submodular Maximization Variants, Submodular Set Cover, Approximate submodularity. Algorithms under different constraints and monotone/non-monotone settings. Also, distributed and streaming algorithms, DS Optimization, Submodular Optimization under Submodular Constraints
  • Week 11
    • Applications of Discrete Optimization: Data Subset Selection, Data Summarization, Feature Selection, Active Learning etc.
  • Rest of the Weeks
    • Paper Presentations/Project Presentations by the Students

Grading

  • 10% for Class Participation (Interaction, asking questions, answering questions)
  • 30% Assignments (2 Assignments, one on continuous optimization and one on discrete optimization)
  • 30% Paper Presentations (1-2 papers per student)
  • 30% for the Final Project
    • Take a new dataset/problem and study how existing optimization algorithms work on them
    • Take an existing problem and compare all optimization algorithms with your implementation from scratch
    • Design a ML optimization toolkit with algorithms implemented from scratch -- if one of you would like to extend my current python demos for optimization, that will be an awesome contribution and I might pick it up for my future classes and acknowledge you :)

Other Similar Courses

Resources/Books/Papers

Owner
Rishabh Iyer
Currently Assistant Prof. at CSE @ UTD. 10+ years experience in Deep Learning, AI and ML. Ph.D. and PostDoc from UW and previously ML Researcher at Microsoft.
Rishabh Iyer
Napari sklearn decomposition

napari-sklearn-decomposition A simple plugin to use with napari This napari plug

1 Sep 01, 2022
Machine Learning Algorithms

Machine-Learning-Algorithms In this project, the dataset was created through a survey opened on Google forms. The purpose of the form is to find the p

Göktuğ Ayar 3 Aug 10, 2022
Combines MLflow with a database (PostgreSQL) and a reverse proxy (NGINX) into a multi-container Docker application

Combines MLflow with a database (PostgreSQL) and a reverse proxy (NGINX) into a multi-container Docker application (with docker-compose).

Philip May 2 Dec 03, 2021
Production Grade Machine Learning Service

This project is made to help you scale from a basic Machine Learning project for research purposes to a production grade Machine Learning web service

Abdullah Zaiter 10 Apr 04, 2022
A Python Module That Uses ANN To Predict A Stocks Price And Also Provides Accurate Technical Analysis With Many High Potential Implementations!

Stox A Module to predict the "close price" for the next day and give "technical analysis". It uses a Neural Network and the LSTM algorithm to predict

Stox 31 Dec 16, 2022
Machine Learning for Time-Series with Python.Published by Packt

Machine-Learning-for-Time-Series-with-Python Become proficient in deriving insights from time-series data and analyzing a model’s performance Links Am

Packt 124 Dec 28, 2022
SageMaker Python SDK is an open source library for training and deploying machine learning models on Amazon SageMaker.

SageMaker Python SDK SageMaker Python SDK is an open source library for training and deploying machine learning models on Amazon SageMaker. With the S

Amazon Web Services 1.8k Jan 01, 2023
A toolbox to iNNvestigate neural networks' predictions!

iNNvestigate neural networks! Table of contents Introduction Installation Usage and Examples More documentation Contributing Releases Introduction In

Maximilian Alber 1.1k Jan 05, 2023
Mortality risk prediction for COVID-19 patients using XGBoost models

Mortality risk prediction for COVID-19 patients using XGBoost models Using demographic and lab test data received from the HM Hospitales in Spain, I b

1 Jan 19, 2022
A benchmark of data-centric tasks from across the machine learning lifecycle.

A benchmark of data-centric tasks from across the machine learning lifecycle.

61 Dec 28, 2022
The Emergence of Individuality

The Emergence of Individuality

16 Jul 20, 2022
A Python Automated Machine Learning tool that optimizes machine learning pipelines using genetic programming.

Master status: Development status: Package information: TPOT stands for Tree-based Pipeline Optimization Tool. Consider TPOT your Data Science Assista

Epistasis Lab at UPenn 8.9k Jan 09, 2023
Examples and code for the Practical Machine Learning workshop series

Practical Machine Learning Workshop Series Practical Machine Learning for Quantitative Finance Post conference workshop at the WBS Spring Conference D

CompatibL 21 Jun 25, 2022
Required for a machine learning pipeline data preprocessing and variable engineering script needs to be prepared

Feature-Engineering Required for a machine learning pipeline data preprocessing and variable engineering script needs to be prepared. When the dataset

kemalgunay 5 Apr 21, 2022
nn-Meter is a novel and efficient system to accurately predict the inference latency of DNN models on diverse edge devices

A DNN inference latency prediction toolkit for accurately modeling and predicting the latency on diverse edge devices.

Microsoft 241 Dec 26, 2022
MegFlow - Efficient ML solutions for long-tailed demands.

Efficient ML solutions for long-tailed demands.

旷视天元 MegEngine 371 Dec 21, 2022
moDel Agnostic Language for Exploration and eXplanation

moDel Agnostic Language for Exploration and eXplanation Overview Unverified black box model is the path to the failure. Opaqueness leads to distrust.

Model Oriented 1.2k Jan 04, 2023
Combines Bayesian analyses from many datasets.

PosteriorStacker Combines Bayesian analyses from many datasets. Introduction Method Tutorial Output plot and files Introduction Fitting a model to a d

Johannes Buchner 19 Feb 13, 2022
Repository for DCA0305, an undergraduate course about Machine Learning Workflows and Pipelines

Federal University of Rio Grande do Norte Technology Center Department of Computer Engineering and Automation Machine Learning Based Systems Design Re

Ivanovitch Silva 81 Oct 18, 2022
Predicting Keystrokes using an Audio Side-Channel Attack and Machine Learning

Predicting Keystrokes using an Audio Side-Channel Attack and Machine Learning My

3 Apr 10, 2022