Modern Data Mining With Python A Risk Managed Approach To Developing And Deploying Explainable And Efficient Algorithms Using Modelops(1st Edition)

Authors:

Dushyant Singh Sengar ,Vikash Chandra

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

In Stock: 1 Left

Shipment time

Expected shipping within 2 - 3 Days
Access to 35 Million+ Textbooks solutions Free
Ask Unlimited Questions from expert AI-Powered Answers 30 Min Free Tutoring Session
7 days-trial

Total Price:

$0

List Price: $27.95 Savings: $27.95 (100%)
Access to 30 Million+ solutions
Ask 50 Questions from expert AI-Powered Answers 24/7 Tutor Help Detailed solutions for Modern Data Mining With Python A Risk Managed Approach To Developing And Deploying Explainable And Efficient Algorithms Using Modelops

Price:

$9.99

/month

Book details

ISBN: 9355519141, 978-9355519146

Book publisher: BPB Publications

Offer Just for You!: Buy 2 books before the end of January and enter our lucky draw.

Book Price $0 : Data Minerâ??s Survival Kit For Explainable, Effective, And Efficient Algorithms Enabling Responsible Decision-makingKey Featuresâ? Accessible, And Case-based Exploration Of The Most Effective Data Mining Techniques In Python.â? An Indispensable Guide For Utilizing AI Potential Responsibly.â? Actionable Insights On Modeling Techniques, Deployment Technologies, Business Needs, And The Art Of Data Science, For Risk Mitigation And Better Business Outcomes.Description"Modern Data Mining With Python" Is A Guidebook For Responsibly Implementing Data Mining Techniques That Involve Collecting, Storing, And Analyzing Large Amounts Of Structured And Unstructured Data To Extract Useful Insights And Patterns.Enter Into The World Of Data Mining And Machine Learning. Use Insights From Various Data Sources, From Social Media To Credit Card Transactions. Master Statistical Tools, Explore Data Trends, And Patterns. Understand Decision Trees And Artificial Neural Networks (ANNs). Manage High-dimensional Data With Dimensionality Reduction. Explore Binary Classification With Logistic Regression. Spot Concealed Patterns With Unsupervised Learning. Analyze Text With Recurrent Neural Networks (RNNs) And Visuals With Convolutional Neural Networks (CNNs). Ensure Model Compliance With Regulatory Standards.After Reading This Book, Readers Will Be Equipped With The Skills And Knowledge Necessary To Use Python For Data Mining And Analysis In An Industry Set-up. They Will Be Able To Analyze And Implement Algorithms On Large Structured And Unstructured Datasets.â? Explore The Data Mining Spectrum Ranging From Data Exploration And Statistics.â? Gain Hands-on Experience Applying Modern Algorithms To Real-world Problems In The Financial Industry.â? Develop An Understanding Of Various Risks Associated With Model Usage In Regulated Industries.â? Gain Knowledge About Best Practices And Regulatory Guidelines To Mitigate Model Usage-related Risk In Key Banking Areas.â? Develop And Deploy Risk-mitigated Algorithms On Self-serve ModelOps Platforms.Who This Book Is ForThis Book Is For A Wide Range Of Early Career Professionals And Students Interested In Data Mining Or Data Science With A Financial Services Industry Focus. Senior Industry Professionals, And Educators, Trying To Implement Data Mining Algorithms Can Benefit As Well.Table Of Contents1. Understanding Data Mining In A Nutshell2. Basic Statistics And Exploratory Data Analysis3. Digging Into Linear Regression4. Exploring Logistic Regression5. Decision Trees With Bagging And Boosting6. Support Vector Machines And K-Nearest Neighbors7. Putting Dimensionality Reduction Into Action8. Beginning With Unsupervised Models9. Structured Data Classification Using Artificial Neural Networks10. Language Modeling With Recurrent Neural Networks11. Image Processing With Convolutional Neural Networks12. Understanding Model Risk Management For Data Mining Models13. Adopting ModelOps To Manage Model Risk