Programming for Data Science at URI Fall 2020
Welcome to Programming for Data Science
Syllabus
About
Tools and Resources
Grading
Learning Objective, Schedule, and Rubric
Support
Policies
Class Notes
Class 2: intro to notebooks and python
Class 3: Welcome to Week 2
Class 4: Pandas
Class 5: Accessing Data, continued
Class 6: Exploratory Data Analysis
Class 7: Visualization for EDA
Class 8: Visualization and Starting to Clean Data
Class 9: Preparing Data For Analysis
Class 10: Cleaning review and Ray Summit Keynotes
Class 11: Cleaning Data
Class 12: Constructing Datasets from Multiple Sources
Class 13: Data from multiple sources and Databases
Class 15: Intro to ML & Modeling
Class 16: Naive Bayes Classification
Class 17: Evaluating Classification and Midsemester Feedback
Class 18: Mid Semester Checkin, Git, & How GNB makes decisions
Class 19: Decision Trees
Class 20: Decision Trees and Cross Validation
Class 21: Regression
Class 22: More Regression, More Evaluation and LASSO
Class 23: Interpretting Regression Evaluations
Class 24: Clustering
Class 25: Evaluating Clustering
Class 26: More Clustering Models
Class 27: Model Optimization- Choosing K
Class 28: SVM & Model Optimization
Class 29: Choosing a Model
Class 30: Learning Curves, Validation Curves
Class 31: Confidence Intervals
Class 32: Intro to NLP
Class 33: Tools, Workflow & more NLP
Class : More Representations of Text
Assignments
Assignment 1: Portfolio Setup, Data Science, and Python
Assignment 2: Practicing Python and Accessing Data
Assignment 3: Exploratory Data Analysis
Assignment 4: Preparing Data for Analysis
Assignment 5: Constructing Datasets and Using Databases
Assignment 6: Naive Bayes
Assignment 7: Decision Trees
Assignment 8: Linear Regression
Assignment 9
Assignment 10: Optimizing Models
Assignment 11: Model Comparison
Assignment 12: Fake News
Portfolio
Formatting Tips
Reflective Prompts
Analysis Prompts
FAQ
Syllabus FAQ
GitHub FAQ
Common Debugging Issues
Resources
General Tips and Resources
References on Python
Data Sources
.md
.pdf
open issue
suggest edit
References on Python
ΒΆ
Course Text
General Tips and Resources
<no title>