- 홈페이지 /
- Japanese Books /
- 컴퓨터 및 기술 /
- Databases & Big Data /
- Data Processing /
- Algorithms and data structures for large data...
Algorithms and data structures for large datasets Compass Algorithms
KRW 59834
Price Details
Excluding Shipping & Custom charges ( Shipping and custom charges will be calculated on checkout )
*All items will import from JP
QTY:
Ubuy works hard to protect your security and privacy. Our advanced payment security system ensures confidentiality by encrypting your information during transmission using AES (Advanced Encryption Standards) and SSL (Secure Socket Layer) protocols. Your payment details are 100% secure as we do not share your payment details with third party sellers.
Understand the basic algorithms of large-scale data systems with rich illustrations!
Fast
Shipping
Free
Return*
Secure Packaging
100% Original Products
PCI DSS Compliance
ISO 27001 Certified
What Stands Out
제품 세부 정보
- Understand the basic algorithms of large-scale data systems with rich illustrations! A guidebook for understanding the algorithmic elements underlying large-scale data systems and building scaleable applications. We will explain it in an easy-to-understand manner with a wealth of illustrations! How to use stochastic data structures to save space for data storage, processing streaming data, manipulating data on disk, understanding performance trade-offs in database systems, and more in building large-scale applications. It covers various algorithmic aspects. [target audience] It is aimed at readers who understand basic data structures and algorithms. After each chapter presents a traditional solution, it explains why it doesn't work in large-scale data situations. Those who have knowledge of programming and the basics of probability theory ・Those who have knowledge of understanding Python and pseudocode. [configuration] This book has 11 chapters and consists of three parts. The first part is about probabilistic and concise data structures, the second part is about streaming data structures and algorithms, and the third part is about external storage data structures and algorithms. Chapter 1 Introduction Part 1 Hash-based sketch Chapter 2 Overview of hash tables and modern hashing Chapter 3 Determining the existence of approximate data: Bloom filter and quotient filter Chapter 4 Frequency Estimation and Counting Min Sketch Chapter 5 Cardinality estimation and hyperloglog Part 2 Real-time analysis Chapter 6 Streaming Data Integration and Applications Chapter 7 Sampling from data streams Chapter 8 Approximate quantiles on a data stream Part 3 Data structures for databases and external storage algorithms Chapter 9 Introduction to external memory models Chapter 10 Data structure for database: B-tree, B-e-tree, LSM-tree Chapter 11 Sorting by external memory
| Publisher | マイナビ出版 |
| Publication date | July 26, 2024 |
| Language | Japanese |
| Print length | 328 pages |
| ISBN-10 | 4839984166 |
| ISBN-13 | 978-4839984168 |
| Item Weight | 630 g |
| Dimensions | 0.91 x 7.17 x 9.21 inches (2.3 x 18.2 x 23.4 cm) |
Who Should Buy?
-
Data Scientists
This book provides essential algorithms for analyzing large datasets, crucial for data-driven decision-making in science.
-
Software Engineers
Useful for engineers working on applications that manage or process big data, enhancing efficiency and performance.
-
Computer Science Students
Offers foundational knowledge on algorithms and data structures, vital for academic success in computer science.
-
Beginners
Novices may struggle with complex concepts presented in the book without prior knowledge of algorithms and data structures.
-
Casual Readers
Those seeking light reading or quick insights into programming will find this book too technical and dense.
-
Non-technical Users
Individuals without a technical background may not benefit from the content, which requires specialized knowledge to understand.
제품 설명
고객 질문 및 답변
-
의문:
Who is the target audience for this book?
답변: The target audience includes readers with knowledge of basic data structures, algorithms, programming, and probability theory. -
의문:
What topics does the book cover?
답변: The book covers probabilistic data structures, streaming algorithms, and external storage data structures. -
의문:
Is this book suitable for beginners?
답변: This book is not designed for absolute beginners; a basic understanding of algorithms and Python is recommended.
Dzejla Medjedovic , Emin Tahirovic , Ines Dedovic Data Processing Editorial Review
Customer Reviews & Ratings
-
5 점
55%
-
4 점
13%
-
3 점
20%
-
2 점
0%
-
1 점
12%
이 제품 리뷰하기
다른 고객들과 의견을 공유하세요.
장점
- User-friendly interface
- Flexible features for customization
- High accuracy in results
- Great for beginners and experts
- Responsive customer support
단점
- Some features may be overwhelming initially.
Product Price History
중요 정보
- 제한 사항: 국제 배송되는 제품의 경우 제조업체 보증이 유효하지 않을 수 있으며, 제조업체 서비스 옵션을 사용하지 못하거나 제품 설명서, 지침 및 안전 경고가 대상 국가 언어로 표시되지 않을 수 있으며, 제품(및 첨부 자료)은 도착 국가 표준, 사양 및 라벨링 요구 사항에 따라 설계되지 않을 수 있으며, 제품은 목적지 국가 전압 및 기타 전기 표준을 준수하지 않을 수 있습니다(가능한 경우 어댑터 또는 변환기 사용 필요). 수령인은 제품을 도착 국가로 합법적으로 수입할 수 있는지 확인할 책임이 있습니다. Ubuy 또는 그 제휴사에서 주문할 때, 수령인은 기록 수입자로서 도착 국가의 모든 법률과 규정을 준수해야 합니다.
- Ubuy는 글로벌 검색 엔진이므로 Ubuy에 나열된 모든 제품이 판매용은 아닙니다. 제품은 수출/무역 규정을 따릅니다.
KRW 59834
지금 주문하시면 도착 예정일 토요일, 7월 04
This item is not restrict in my country.(Please click on above link if this item is not restrict in your country, So our team will review and allow.)
QTY:
Ubuy works hard to protect your security and privacy. Our advanced payment security system ensures confidentiality by encrypting your information during transmission using AES (Advanced Encryption Standards) and SSL (Secure Socket Layer) protocols. Your payment details are 100% secure as we do not share your payment details with third party sellers.
특징 및 장점
- Comprehensive guidebook for large-scale data applications.
- Easy-to-understand explanations with rich illustrations.
- Covers probabilistic, streaming, and external storage data structures.
- Ideal for readers with basic programming and data structure knowledge.
- Explains traditional solutions and their limitations in large-scale contexts.
- Build scalable applications effectively with proven algorithms.






