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Python Machine Learning & Predictive Analytics
New
200 students

Python Machine Learning & Predictive Analytics

Build predictive models, master deep learning, and solve real-world data science problems using Python, Scikit-Learn, an
Last updated 5/2026
English

What you'll learn

  • Build robust predictive models using Python, TensorFlow, and Keras to solve practical, real-world analytical problems
  • Develop and evaluate machine learning algorithms, including house price prediction and customer churn classification models
  • Clean, preprocess, and analyze complex datasets from sources like Kaggle to prepare them for neural networks
  • Train and deploy advanced predictive analytics solutions, such as energy efficiency regression models, from scratch

Included in This Course

100 questions
  • Python Machine Learning & Predictive Analytics Test Part-125 questions
  • Python Machine Learning & Predictive Analytics Test Part-225 questions
  • Python Machine Learning & Predictive Analytics Test Part-325 questions
  • Python Machine Learning & Predictive Analytics Test Part-425 questions

Description

Data is the new oil, but without machine learning, it's just raw information. In today's tech-driven economy, the ability to build predictive models is one of the most lucrative and highly sought-after skills by employers across the globe. Whether you want to predict stock market trends, identify customer churn, or build image recognition tools, this course is your complete roadmap.

"Python Machine Learning & Predictive Analytics" is designed to take you from understanding basic data structures to deploying advanced artificial intelligence models. We bypass the heavy, intimidating academic math and focus entirely on highly practical, applied programming.

In this course, we start with the essentials of data preprocessing—teaching you how to clean, scale, and manipulate messy real-world datasets using Pandas and NumPy. From there, we dive into Supervised Learning, building powerful Regression and Classification models like Random Forests, Support Vector Machines, and Gradient Boosted Trees. You will learn exactly how to evaluate your models using professional metrics like ROC-AUC, Precision, and Recall.

Finally, we transition into the cutting-edge world of Deep Learning. You will learn how to build, train, and deploy complex Neural Networks using the industry-standard Keras and TensorFlow libraries. By the end of this course, you will have a robust portfolio of functioning predictive models to show prospective employers.

Basic info

  • Course locale: English (US) or your preferred locale

  • Course instructional level: All Levels

  • Course category: Development

  • Course subcategory: Data Science

  • What is primarily taught in your course? (Topic): Machine Learning

Who this course is for:

  • This course is ideal for students, data analysts, and developers looking to break into the fast-growing field of machine learning and data science. If you want to move beyond abstract theory and build a highly practical portfolio of predictive analytics models—such as business regression systems and customer retention classifiers—this course is exactly what you need to stand out to recruiters