Skip to Main Content
Menu
Hours
Databases
Ask a Librarian
My Account
Purdue Libraries
Library Guides
Workshop & Event Guides
D-VELOP
Machine Learning and Deep Learning Workshop - 2023
Search this Guide
Search
D-VELOP
Home
Data Visualization Workshop
Toggle Dropdown
Introduction to Tableau (Summer 2021)
Data Visualization using Python (Matplotlib and Seaborn)
Data Visualization Using Python - Interactive Plots (Bokeh)
Data Visualization using Microsoft PowerPoint and Excel
Data Visualization with R Part 1: Intro to R
Data Visualization with R Part 2: Tidyverse/Tidy Data and dplyr
Data Visualization with R Part 3 - Web Scraping with OpenRefine API
Data Visualization with R Part 4: ggplot2
Data Visualization with R Part 5 - Sentiment Analysis
Data Visualization using Tableau (Summer 2020)
Machine Learning Workshop
Toggle Dropdown
Introduction to Python
Machine Learning Overview (using Python)
Preparing your data for Machine Learning
Machine Learning using Matlab
Supervised Learning 1 - Linear Classifiers
Supervised Learning 2 - Tree Based Models
Application 1 - Sentiment Analysis
Application 2 - Dimensionality Reduction
Application 3 - Time Series Data
Unsupervised Learning - Clustering Analysis
Model Validation and Selection
Fairness and Bias in Machine Learning
Explainable AI - An Overview
Introduction to Reinforcement Learning
Machine Learning and Deep Learning Workshop - 2021
Toggle Dropdown
Introduction to Neural Networks
Intro to Automated Machine Learning: Hyper-Parameter Tuning
Introduction to NLP part1 - text processing
Hyper-Parameter Tuning: Bayesian Optimization
Introduction to NLP Part 2 - Neural Networks
Introduction to Julia
Introduction to Computer Vision with Neural Networks
Intro to Python visualization tools: Seaborn and ipywidgets.
Data Scraping and Analysis with Python
Intro to Reinforcement Learning on an optimization perspective.
Machine Learning and Deep Learning Workshop - 2022
Toggle Dropdown
Data Scraping and Analysis with Python
Introduction to Neural Networks
Introduction to Computer Vision with Neural Networks
Intro to Hyperparameter Optimization: Black-Box Optimization Approaches
Introduction to Generative adversarial networks (GANs)
Introduction to Recommender Systems
Intro to Parallel Computing
Introduction to Python in Data Science
Intro to Supervised and Unsupervised Machine Learning Algorithms
Data Scraping and Analysis with Python
Intro to Java and Algorithms Part 1
Intro to Java and Algorithms Part 2
Introduction to Nueral Network
Introduction to Web API and Database
Intro to RNN and LSTM
Introduction to Transformers in Image Processing
Intro to Hyperparameter Optimization: Bayesian Optimization
Machine Learning and Deep Learning Workshop - 2023
Introduction to Python
Data Scraping and Analysis with Python
Introduction to Hadoop and Mapreduce
Introduction to Container and Kubernetes
Introduction to Federated Learning
Topics
Introductory Topics
Spring 2023
Introduction to Python
Data scraping and analysis with Python
Introduction to Hadoop and Mapreduce
Introduction to Container and Kubernetes
Introduction to Federated Learning
TRANSLATE with
x
English
Arabic
Hebrew
Polish
Bulgarian
Hindi
Portuguese
Catalan
Hmong Daw
Romanian
Chinese Simplified
Hungarian
Russian
Chinese Traditional
Indonesian
Slovak
Czech
Italian
Slovenian
Danish
Japanese
Spanish
Dutch
Klingon
Swedish
English
Korean
Thai
Estonian
Latvian
Turkish
Finnish
Lithuanian
Ukrainian
French
Malay
Urdu
German
Maltese
Vietnamese
Greek
Norwegian
Welsh
Haitian Creole
Persian
TRANSLATE with
COPY THE URL BELOW
Back
EMBED THE SNIPPET BELOW IN YOUR SITE
Enable collaborative features and customize widget:
Bing Webmaster Portal
Back
<<
Previous:
Intro to Hyperparameter Optimization: Bayesian Optimization
Next:
Introduction to Python >>