Applied Machine Learning(1st Edition)

Authors:

Jason Hodson

Type: Hardcover/ PaperBack / Loose Leaf
Condition: Used/New

In Stock: 1 Left

Shipment time

Expected shipping within 2 - 3 Days
Access to 35 Million+ solutions Free
Ask 50 Questions from expert AI-Powered Answers
7 days-trial

Total Price:

$0

List Price: $59.95 Savings: $59.95(100%)

Book details

ISBN: 1493227580, 978-1493227587

Book publisher: Rheinwerk Computing

Get 24/7 Free Help
answer-question From Qualified HTML Programming Tutor

Book Price $0 : Put Machine Learning Theory Into Practice With This Hands-on Guide! Learn About The Real-world Application Of Machine Learning Models By Following Three Use Cases, Each With Its Own Dataset. Get Started With Tools Like GitHub And Anaconda, And Then Follow Detailed Instructions To Prepare Your Data, Select Your Model, Evaluate Its Results, And Measure Its Impact Over Time. With Sample Code For Download, This Book Has Everything You Need To Implement Machine Learning Models For Your Business! In This Book, You'll Learn About: A. Data PreparationThe First Step Is To Understand Your Data. Learn About The Different Data Sources, And Then Explore Your Data Through Visualization, Descriptive Statistics, And Correlation Analysis. Clean Up Your Data By Identifying Errors, Writing Dummy Code, And More.b. Model Selection Choose The Machine Learning Model That Suits Your Needs! Follow A Model Decision Framework And Master Key Algorithms: Regression, Decision Trees, Random Forest, Gradient Boosting, Clustering, And Ensembling.c. Evaluation And IterationAssess And Improve The Quality Of Your Model! Apply A Variety Of Validation Metrics To Your Model And Enhance Interpretability To Avoid Black Box Code. Then Iterate Through Feature Engineering And Adding Or Removing Data. D. Implementation And MonitoringYour Model Is Ready To Go--now See It In Action! Learn How To Implement The Model To Make Predictions, Monitor Its Performance, And Measure Its Impact For Your Business. Highlights Include: 1) Real-world Use Cases2) Data Exploration3) Data Cleaning4) Model Decision Framework5) Regression Algorithms6) Decision Trees7) Clustering8) Validation Metrics9) Model Iteration 10) Interpretability11) Implementation12) Monitoring