*COD & Shipping Charges may apply on certain items.
Review final details at checkout.
₹717
₹799
10% OFF
Paperback
All inclusive*
Qty:
1
About The Book
Description
Author
Hands-on ML problem solving and creating solutions using Python. Key Features Introduction to Python Programming Python for Machine Learning Introduction to Machine Learning Introduction to Predictive Modelling Supervised and Unsupervised Algorithms Linear Regression Logistic Regression and Support Vector Machines Description You will learn about the fundamentals of Machine Learning and Python programming post which you will be introduced to predictive modelling and the different methodologies in predictive modelling. You will be introduced to Supervised Learning algorithms and Unsupervised Learning algorithms and the difference between them. We will focus on learning supervised machine learning algorithms covering Linear Regression Logistic Regression Support Vector Machines Decision Trees and Artificial Neural Networks. For each of these algorithms you will work hands-on with open-source datasets and use python programming to program the machine learning algorithms. You will learn about cleaning the data and optimizing the features to get the best results out of your machine learning model. You will learn about the various parameters that determine the accuracy of your model and how you can tune your model based on the reflection of these parameters. What will you learn Get a clear vision of what is Machine Learning and get familiar with the foundation principles of Machine learning. Understand the Python language-specific libraries available for Machine learning and be able to work with those libraries. Explore the different Supervised Learning based algorithms in Machine Learning and know how to implement them when a real-time use case is presented to you. Have hands-on with Data Exploration Data Cleaning Data Preprocessing and Model implementation. Get to know the basics of Deep Learning and some interesting algorithms in this space. Choose the right model based on your problem statement and work with EDA techniques to get good accuracy on your model Who this book is for This book is for anyone interested in understanding Machine Learning. Beginners Machine Learning Engineers and Data Scientists who want to get familiar with Supervised Learning algorithms will find this book helpful. Table of Contents 1. Introduction to Python Programming 2. Python for Machine Learning 3. Introduction to Machine Learning 4. Supervised Learning and Unsupervised Learning 5. Linear Regression: A Hands-on guide 6. Logistic Regression – An Introduction 7. A sneak peek into the working of Support Vector machines(SVM) 8. Decision Trees 9. Random Forests 10. Time Series models in Machine Learning 11. Introduction to Neural Networks 12. Recurrent Neural Networks 13. Convolutional Neural Networks 14. Performance Metrics 15. Introduction to Design Thinking 16. Design Thinking Case Study About the Author Gnana Lakshmi T C —iis Technology Geek Innovator Keynote speaker Community builder and holds a Bachelor degree in Computer Science from National Institute of Technology Tiruchirappalli. She is currently associated with WileyNXT as Product Manager; Emerging Technologies. She is also a Fellow Alumni at WomenWhoCode and started WomenWhoCode Blockchain community (). She harnesses her knowledge by sharing it with others by conducting live events like webinars and workshops and through online channels like tutorials social media posts etc. She has conducted several meetups on Machine learning Blockchain and various other emerging technology topics including a recent meetup at the International open UP Summit on GPT-3. LinkedIn Profile: Madeleine Shang —is a Recommender Systems Team Lead @openMined. She started the Data Science and Machine Learning community at WomenWhoCode which is now successfully running with 2147 members. She is an expert in AI and Blockchain Research. She has been involved in many startups as a Founder. She is an Adventurer and Futurist at heart. LinkedIn Profile: