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Harvard University

Introduction to Data Science with Python

Harvard University via edX

Overview

Every single minute, computers across the world collect millions of gigabytes of data. What can you do to make sense of this mountain of data? How do data scientists use this data for the applications that power our modern world?

Data science is an ever-evolving field, using algorithms and scientific methods to parse complex data sets. Data scientists use a range of programming languages, such as Python and R, to harness and analyze data. This course focuses on using Python in data science. By the end of the course, you’ll have a fundamental understanding of machine learning models and basic concepts around Machine Learning (ML) and Artificial Intelligence (AI).

Using Python, learners will study regression models (Linear, Multilinear, and Polynomial) and classification models (kNN, Logistic), utilizing popular libraries such as sklearn, Pandas, matplotlib, and numPy. The course will cover key concepts of machine learning such as: picking the right complexity, preventing overfitting, regularization, assessing uncertainty, weighing trade-offs, and model evaluation. Participation in this course will build your confidence in using Python, preparing you for more advanced study in Machine Learning (ML) and Artificial Intelligence (AI), and advancement in your career.

Learners must have a minimum baseline of programming knowledge (preferably in Python) and statistics in order to be successful in this course. Python prerequisites can be met with an introductory Python course offered through CS50’s Introduction to Programming with Python, and statistics prerequisites can be met via Fat Chance or with Stat110 offered through HarvardX.

Syllabus

Course Outline:

  1. Linear Regression
  2. Multiple and Polynomial Regression
  3. Model Selection and Cross-Validation
  4. Bias, Variance, and Hyperparameters
  5. Classification and Logistic Regression
  6. Multi-logstic Regression and Missingness
  7. Bootstrap, Confidence Intervals, and Hypothesis Testing
  8. Capstone Project

Taught by

Pavlos Protopapas

Reviews

4.0 rating, based on 1 Class Central review

4.3 rating at edX based on 124 ratings

Start your review of Introduction to Data Science with Python

  • Profile image for M H
    M H
    I liked the course. The text book recommended was Statistical Learning. Additionally, professor explained difficult concepts by using pictures, codes and matplotlib based graphics.
    This course could be tightened by making introducing some more quizzes after every lecture to reinforce some thinking.

    Cons: Staff support is just minimal.

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