Cracking the Machine Learning Code: Technicality or Innovation? (Studies in Computational Intelligence, 1155)

★★★★★ 4.3 39 reviews

US$55.03
Price when purchased online
Free shipping Free 30-day returns

Sold and shipped by www.green-brands.org
We aim to show you accurate product information. Manufacturers, suppliers and others provide what you see here.
US$55.03
Price when purchased online
Free shipping Free 30-day returns

How do you want your item?
You get 30 days free! Choose a plan at checkout.
Shipping
Arrives Jul 20
Free
Pickup
Check nearby
Delivery
Not available

Sold and shipped by www.green-brands.org
Free 30-day returns Details

Product details

Management number 237215178 Release Date 2026/07/10 List Price US$55.03 Model Number 237215178
Category

Employing off-the-shelf machine learning models is not an innovation. The journey through technicalities and innovation in the machine learning field is ongoing, and we hope this book serves as a compass, guiding the readers through the evolving landscape of artificial intelligence. It typically includes model selection, parameter tuning and optimization, use of pre-trained models and transfer learning, right use of limited data, model interpretability and explainability, feature engineering and autoML robustness and security, and computational cost – efficiency and scalability. Innovation in building machine learning models involves a continuous cycle of exploration, experimentation, and improvement, with a focus on pushing the boundaries of what is achievable while considering ethical implications and real-world applicability. The book is aimed at providing a clear guidance that one should not be limited to building pre-trained models to solve problems using the off-the-self basic building blocks. With primarily three different data types: numerical, textual, and image data, we offer practical applications such as predictive analysis for finance and housing, text mining from media/news, and abnormality screening for medical imaging informatics. To facilitate comprehension and reproducibility, authors offer GitHub source code encompassing fundamental components and advanced machine learning tools. Read more

ISBN10 9819727197
ISBN13 978-9819727193
Edition 2024th
Language English
Publisher Springer
Dimensions 6 x 0.5 x 8.9 inches
Item Weight 13.6 ounces
Print length 146 pages
Publication date May 9, 2024

Correction of product information

If you notice any omissions or errors in the product information on this page, please use the correction request form below.

Correction Request Form

Customer ratings & reviews

4.3 out of 5
★★★★★
39 ratings | 16 reviews
How item rating is calculated
View all reviews
5 stars
80% (31)
4 stars
6% (2)
3 stars
3% (1)
2 stars
1% (0)
1 star
10% (4)
Sort by

There are currently no written reviews for this product.