Bezmaksas piegāde pasūtījumiem virs 29€

  • check 10+ miljoni grāmatu
  • check Jaunumi katru dienu
  • check Vairāk nekā 1 miljons klientu mums uzticas
  • check Labas cenas un atlaides
  • check Piegāde visā Eiropā

Algorithm Design Techniques: Recursion, Backtracking, Greedy, Divide and Conquer, and Dynamic Programming - Narasimha Karumanchi

angļu valoda
2018-01-01
35,59 € 50,84 €

-30% ar kodu BOOKS

Nav noliktavā

30 dienu atgriešanas politika

Algorithm Design Techniques: Recursion, Backtracking, Greedy, Divide and Conquer, and Dynamic Programming Algorithm Design Techniques is a detailed, friendly guide that teaches you how to apply common algorithms to the practical problems you face every day as a programmer.  What's Inside  Enumeration of possible solutions for the problems.  Performance trade-offs (time and space complexities) between the al ... Pilns apraksts

Jums varētu patikt arī

Aprašymas

Algorithm Design Techniques: Recursion, Backtracking, Greedy, Divide and Conquer, and Dynamic Programming Algorithm Design Techniques is a detailed, friendly guide that teaches you how to apply common algorithms to the practical problems you face every day as a programmer.  

What's Inside 

  • Enumeration of possible solutions for the problems. 
  • Performance trade-offs (time and space complexities) between the algorithms. 
  • Covers interview questions on data structures and algorithms. 
  • All the concepts are discussed in a lucid, easy to understand manner. 
  • Interview questions collected from the actual interviews of various software companies will help the students to be successful in their campus interviews. 
  • Python-based code samples were given the book.

Vairāk informācijas

Autors Narasimha Karumanchi
Izdevējs Touchladybirdlucky Studios
Izlaides gads 2018
Vāka tips Mīkstais vāks
EAN 9788193245255
Rakstiet savu atsauksmi
Jūs vērtējat: Algorithm Design Techniques: Recursion, Backtracking, Greedy, Divide and Conquer, and Dynamic Programming
Jūsu novērtējums:

Goodreads atsauksmes

35,59 € 50,84 €