Introduction to Database Management System,2nd Edition
ISBN-10: 9381159319
ISBN-13: 9789381159316
Publication Date 出版日期: 2017
Print Length 页数: 552
Publisher finelybook 出版社: USP
Language 语言: English
The basic aim of this book is to help the student understand the designing procedure of algorithms,how to analyze algorithms and how to implement the algorithms. This book provides comprehensive and completely up-to-date coverage of ?Design and Analysis of Algorithms?. It meets student?s needs by addressing both the designing principle as well as the critical role of performance in driving the algorithm. This book covers the syllabus of all the universities which offer the B.E./B.Tech (Computer Science & Engg./ Information Technology),B.Sc. (Computer Science/ Information Technology),and M.Sc. (Computer Science/ Information Technology) and it is also useful for MCA students. This has been written in a very simple and lucid language.
Salient Features of the Book:
Easily understandable,step by step description of each algorithm. Plenty of illustrations supporting the theoretical concepts. Large number of solved problems for real situation applications. A simple formal descriptive language used throughout the book. Step by step description of Red Black Tree (insertion and deletion). Effective description of Sorting (Quick Sort,Heap Sort,Counting Sort etc.) A simple description of Graphs Algorithms. Numerous unsolved problems for practice in each chapter.
Introduction to Database Management System,2nd Edition
相关推荐
- Computational Intelligence for Autonomous Finance: Challenges and Future Directions
- Optimization and Computing using Intelligent Data-Driven Approaches for Decision-Making: Artificial Intelligence Applications
- Super Study Guide: Transformers & Large Language Models
- Federated Learning for Future Intelligent Wireless Networks
- Deep Reinforcement Learning Hands-On: A practical and easy-to-follow guide to RL from Q-learning and DQNs to PPO and RLHF, 3rd Edition
- Optimization and Computing Using Intelligent Data-Driven Approaches for Decision-Making: Optimization Applications