Introduction
In this first homework assignment well familiarize ourselves with PyTorch
as a general-purpose tensor library with automatic gradient calculation capabilities. Well use it to implement some traditional machine-learning algorithms and remind ourselves about basic concepts such as different data sets and their uses, model hyperparameters, cross-validation, loss functions and gradient derivation. Well also familiarize ourselves with other highly important python machine learning packages such as numpy
, sklearn
and pandas
.
General Guidelines
- Please read the getting started page on the course website. It explains how to setup, run and submit the assignment.
- The text and code cells in these notebooks are intended to guide you through the assignment and help you verify your solutions. The notebooks do not need to be edited at all (unless you wish to play around). The only exception is to fill your name(s) in the above cell before submission. Please do not remove sections or change the order of any cells.
- All your code (and even answers to questions) should be written in the files within the python package corresponding the assignment number (
hw1
,hw2
, etc). You can of course use any editor or IDE to work on these files.
Contents
- Part 1: Working with data in
PyTorch
- Datasets
- Built-in Datasets and Transforms
DataLoader
s andSampler
s- Training, Validation and Test Sets
- Part 2: Nearest-neighbor image classification:
- kNN Classification
- Cross-validation
- Part 3: Multiclass linear classification
- Linear Classification
- Loss Functions
- Optimizing a Loss Function with Gradient Descent
- Training the model with SGD
- Automatic differentiation
- Part 4: Linear Regression
- Dataset exploration
- Linear Regression Model
- Adding nonlinear features
- Generalization
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