Intro to Predictive Analytics Using Python

This course is part of How to Use Data Specialization

Instructor: Brandon Krakowsky

What you'll learn

  •   Implement data preprocessing and model training procedures for regression.
  •   Interpret feature importance in decision trees and random forests.
  •   Explain the difference between supervised and unsupervised learning.
  • Skills you'll gain

  •   Predictive Modeling
  •   Predictive Analytics
  •   Data Analysis
  •   Decision Tree Learning
  •   Regression Analysis
  •   Scikit Learn (Machine Learning Library)
  •   Machine Learning
  •   Forecasting
  •   Unsupervised Learning
  •   Feature Engineering
  •   Random Forest Algorithm
  •   Classification And Regression Tree (CART)
  •   Supervised Learning
  •   Python Programming
  • There are 3 modules in this course

    "Introduction to Predictive Analytics and Advanced Predictive Analytics Using Python" is specially designed to enhance your skills in building, refining, and implementing predictive models using Python. This course serves as a comprehensive introduction to predictive analytics, beginning with the fundamentals of linear and logistic regression. These models are the cornerstone of predictive analytics, enabling you to forecast future events by learning from historical data. We cover a bit of the theory behind these models, but in particular, their application in real-world scenarios​ and the process of evaluating their performance​ to ensure accuracy and reliability.​ As the course progresses, we delve deeper​ into the realm of machine learning​ with a focus on decision trees and random forests.​ These techniques represent a more advanced aspect​ of supervised learning, offering powerful tools​ for both classification and regression tasks.​ Through practical examples and hands-on exercises,​ you'll learn how to build these models,​ understand their intricacies, and apply them​ to complex datasets to identify patterns​ and make predictions. Additionally, we introduce the concepts​ of unsupervised learning and clustering, broadening your analytics toolkit,​ and providing you with the skills to tackle data without predefined labels or categories.​ By the end of this course, you'll not only have a thorough understanding​ of various predictive analytics techniques,​ but also be capable of applying these techniques to solve real-world problems,​ setting the stage for continued growth​ and exploration in the field of data analytics.

    Module 2: Decision Trees and Introduction to Advanced Predictive Analytics and Random Forests

    Module 3: Introduction to Unsupervised Learning and Clustering

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