Classic Computer Science Problems in Python

Af David KopecEngelsk
Salgspris309,95 kr
Vælg format:
Classic Computer Science Problems in Python

Classic Computer Science Problems in Python

Lagerstatus kan ændre sig i løbet af dagen. Kontakt derfor butikken for at sikre, at varen stadig er på lager, så du ikke går forgæves.

Klik & hent fragtfrit i din lokale butik eller få varen leveret. Medlemmer får halv pris på fragten

Detaljer

Classic Computer Science Problems in Python presents dozens of coding challenges, ranging from simple tasks like finding items in a list with a binary sort algorithm to clustering data using k-means.   Classic Computer Science Problems in Python deepens your Python language skills by challenging you with time-tested scenarios, exercises, and algorithms. As you work through examples in search, clustering, graphs, and more, you''ll remember important things you''ve forgotten and discover classic solutions to your "new" problems   Key Features ·   Breadth-first and depth-first search algorithms ·   Constraints satisfaction problems ·   Common techniques for graphs ·   Adversarial Search ·   Neural networks and genetic algorithms ·   Written for data engineers and scientists with experience using Python.   For readers comfortable with the basics of Python   About the technology Python is used everywhere for web applications, data munging, and powerful machine learning applications. Even problems that seem new or unique stand on the shoulders of classic algorithms, coding techniques, and engineering principles. Master these core skills, and you’ll be ready to use Python for AI, data-centric programming, deep learning, and the other challenges you’ll face as you grow your skill as a programmer.   David Kopec teaches at Champlain College in Burlington, VT and is the author of Manning’s Classic Computer Science Problemsin Swift. Classic Computer Science Problems in Python presents dozens of coding challenges, ranging from simple tasks like finding items in a list with a binary sort algorithm to clustering data using k-means.   Classic Computer Science Problems in Python deepens your Python language skills by challenging you with time-tested scenarios, exercises, and algorithms. As you work through examples in search, clustering, graphs, and more, you''ll remember important things you''ve forgotten and discover classic solutions to your "new" problems   Key Features ·   Breadth-first and depth-first search algorithms ·   Constraints satisfaction problems ·   Common techniques for graphs ·   Adversarial Search ·   Neural networks and genetic algorithms ·   Written for data engineers and scientists with experience using Python.   For readers comfortable with the basics of Python   About the technology Python is used everywhere for web applications, data munging, and powerful machine learning applications. Even problems that seem new or unique stand on the shoulders of classic algorithms, coding techniques, and engineering principles. Master these core skills, and you’ll be ready to use Python for AI, data-centric programming, deep learning, and the other challenges you’ll face as you grow your skill as a programmer.   David Kopec teaches at Champlain College in Burlington, VT and is the author of Manning’s Classic Computer Science Problemsin Swift.

Forfatter

David Kopec

Forlag

Manning Publications

Udgivelsesdato

Opslagsdato

Varegruppe
Edb

Anmeldelser

Brugernes anmeldelser

Vurderet 0.0 ud af 5 baseret på 0 vurderinger

Mere om Classic Computer Science Problems in Python

Passer perfekt sammen med

Gør dit køb komplet med produkter, der matcher i stil, tema eller stemning

Produkt 45,00 kr
Produkt 45,00 kr
Produkt 45,00 kr
Produkt 45,00 kr
Produkt 45,00 kr
Produkt 45,00 kr
Produkt 45,00 kr
Produkt 45,00 kr
Produkt 45,00 kr
Produkt 45,00 kr

Andre fandt også inspiration i

Flere produkter, som fanger nysgerrigheden hos andre kunder

Produkt 45,00 kr
Produkt 45,00 kr
Produkt 45,00 kr
Produkt 45,00 kr
Produkt 45,00 kr
Produkt 45,00 kr
Produkt 45,00 kr
Produkt 45,00 kr
Produkt 45,00 kr
Produkt 45,00 kr