HomeBooks, Movies and MusicMotivational & Self-HelpFundamentals of Robust Machine Learning: Handling Outliers and Anomalies in Data Science Book by A. K. Md. Ehsanes Saleh, Resve A. Saleh, and Sohaib Majzoub
product_image_name-Jumia Books-Fundamentals of Robust Machine Learning: Handling Outliers and Anomalies in Data Science Book by A. K. Md. Ehsanes Saleh, Resve A. Saleh, and Sohaib Majzoub-1

Share this product

Jumia Books Fundamentals of Robust Machine Learning: Handling Outliers and Anomalies in Data Science Book by A. K. Md. Ehsanes Saleh, Resve A. Saleh, and Sohaib Majzoub

KSh 1,500

In stock

+ shipping from KSh 90 to CBD - UON/Globe/Koja/River Road
0 out of 5
(No ratings available)

2offers starting fromKSh 1,500

See More Offers

Promotions

Delivery & Returns

Choose your location

Pickup Station

Delivery Fees KSh 90
Ready for pickup between 19 December and 22 December if you place your order within the next 16hrs 52mins

Door Delivery

Delivery Fees KSh 200
Ready for delivery between 19 December and 22 December if you place your order within the next 16hrs 52mins

Return Policy

Easy Return, Quick Refund.Details

Seller Information

Karl Wilhelm

New Seller

Be the first to follow

Follow

Seller Performance

This seller does not have enough history for us to evaluate his performance yet

Compare Offers

KSh 1,500

Sold by: Nookery | Seller Score: 80%

Product details

"Fundamentals of Robust Machine Learning: Handling Outliers and Anomalies in Data Science" by A. K. Md. Ehsanes Saleh, Resve A. Saleh, and Sohaib Majzoub is a comprehensive and accessible guide focused on addressing the often-overlooked challenge of outliers and anomalies in machine learning datasets.

The book emphasizes two primary approaches:

Using outlier-tolerant machine learning tools that can work effectively despite the presence of anomalous data.

Identifying and removing outliers before applying conventional machine learning methods.

Balancing theoretical foundations with practical application, it equips readers with skills to improve the accuracy, stability, and reliability of machine learning models by properly handling data irregularities. Practical Python code examples accompany the concepts to facilitate hands-on learning.

This volume is ideal for students and professionals in data science and machine learning who want to build robust, resilient models that maintain performance even when data contains noise, outliers, or anomalies. It highlights the importance of robust methods to avoid incorrect conclusions or decisions that could arise from ignoring such data issues.

Overall, the book serves as an essential resource for understanding and implementing methods to enhance machine learning systems' robustness in real-world, imperfect data environments

Specifications

Key Features

This volume is ideal for students and professionals in data science and machine learning who want to build robust, resilient models that maintain performance even when data contains noise, outliers, or anomalies. It highlights the importance of robust methods to avoid incorrect conclusions or decisions that could arise from ignoring such data issues.

What’s in the box

1 BOOK

Specifications

  • SKU: JU506BM5UTZH6NAFAMZ
  • GTIN Barcode: 09781394294374
  • Weight (kg): 1

Customer Feedback

This product has no ratings yet.

Jumia Books Fundamentals of Robust Machine Learning: Handling Outliers and Anomalies in Data Science Book by A. K. Md. Ehsanes Saleh, Resve A. Saleh, and Sohaib Majzoub

Jumia Books Fundamentals of Robust Machine Learning: Handling Outliers and Anomalies in Data Science Book by A. K. Md. Ehsanes Saleh, Resve A. Saleh, and Sohaib Majzoub

KSh 1,500
Questions about this product?

Recently Viewed

See All