Machine Learning: A Constraint-Based Approach

(9780081006597) - Height: 191mm - Spine width: 34mm - Width: 235mm - Morgan Kaufmann - Elsevier Science - ISBN: 9780081006597 - Number of pages: 580 - Languages: English - Publication date: 13 Nov 2017

 Stores where to buy this product

Sponsored  This site contains affiliate links for which we may receive compensation. More information
This product has not been found in any sponsored store recently, please check similar products from our sponsors or review other stores we offer where you may find the product.

 Similar products

Sponsored


CHECK PRODUCTS/PRICES ON THE WEBSITE
This product in Comparor
Category
This product is cataloged in our store in these categories
- Library & Information Sciences Books
- Algorithms
- Artificial Intelligence
- Information Systems
- Applied Mathematics
- Discrete Mathematics
- Database Management Systems
- Maths
International
Find this product in one of our international stores
es
164.98 EUR
Colors
Predominant colors of the product
Identifiers
Brand Morgan Kaufmann
Morgan Kaufmann is a publisher of scientific, technical, and engineering books and journals. It was founded in 1970 by Bill Morgan and Charlie Kaufmann. The company is headquartered in San Francisco, California.
ISBN Morgan Kaufmann 0081006594
ID 7385848
Dimensions / Weight
Key Features
Height
The vertical dimension of a product measured from its lowest to highest point. It is expressed in a physical unit such as millimetres, centimetres or inches and applies to any item where height is relevant, including books, electronics, furniture and other objects.
191mm
Imprint
The name of the entity that publishes or distributes the product. It typically refers to a publishing house, imprint, or brand responsible for producing and releasing the item.
Morgan Kaufmann
ISBN
A unique identifier assigned to books and other printed publications, typically consisting of 10 or 13 digits. It may include hyphens for readability but is treated as a string value. The ISBN uniquely identifies a specific edition of a title across the publishing industry.
9780081006597
Languages
A list of the natural languages in which a product is available or supported.
English
Number of pages
The total count of individual pages contained in a book or printed publication. It represents the number of physical sheets that make up the product, regardless of layout or formatting.
580
Publication date
The calendar date on which the product was first made available to the public or released for sale. It is expressed as a full year, month, and day (YYYY-MM-DD) and can be used to filter or sort items by release period.
13 Nov 2017
Publisher
The name of the entity that publishes or distributes the product, such as a book, magazine, or other media item.
Elsevier Science
Spine width
The linear measurement of a book’s spine from one edge to the other, expressed in units such as millimetres or inches. It indicates how thick the binding is and helps determine storage space, handling, and compatibility with shelving or protective covers.
34mm
Weight
The mass of the product expressed in a standard unit such as grams or kilograms. It represents how heavy the item is and can be used for shipping calculations, handling instructions, or consumer information.
1182g
Width
The horizontal measurement of a product, expressed in a linear unit such as millimetres or inches. It indicates how wide the item is from one side to the other and is used for sizing, fitting, and compatibility purposes.
235mm

Related articles

(9780128042915) - Country of publication: UNITED STATES - Dimensions: (H) 234mm, (W) 190mm, (D) 28mm - Edition: 4 ed - Paperback: 654 pages - Publisher: Morgan Kaufmann; 4 edition (22 Dec. 2016) - Morgan Kaufmann Publishers In
(9780262035613 / 45189572) - Country of publication: UNITED STATES - Dimensions: 229 x 178 x 32 mm - Format: 800 pages - Height: 187 mm - Spine width: 35 mm - Width: 237 mm - The MIT Press - In Print | Deep Learning techniques
Learn hands-on machine learning techniques with Scikit-Learn, Keras, and TensorFlow in this book, available in stores now.
Explore how early electronic pop shaped today’s soundscape in this insightful guide. From synth pioneers of 1978–1983 to modern machine‑learning audio, discover the history and future of machines making music.
Learn hands-on machine learning techniques with Scikit-Learn, Keras, and TensorFlow in this book, available in stores now.
🤖 Hello! I'm your virtual assistant. I can help you find products, compare prices and answer questions about your orders. Where should we start?
Chatbot service provided thanks to Gemini 3 / OpenAI using Comparor’s database. The AI may make mistakes — always verify the information.
Comparor AI BETA
Online
Restart the conversation?