에너지경제연구원 전자도서관

로그인

에너지경제연구원 전자도서관

자료검색

  1. 메인
  2. 자료검색
  3. 통합검색

통합검색

단행본

Python High Performance: Build high-performing, concurrent, and distributed applications

판사항
2nd Edition
발행사항
Birmingham, UK : Packt Publishing, 2017
형태사항
ⅳ, 256p. : illustrations ; 24cm
소장정보
위치등록번호청구기호 / 출력상태반납예정일
이용 가능 (1)
자료실E207221대출가능-
이용 가능 (1)
  • 등록번호
    E207221
    상태/반납예정일
    대출가능
    -
    위치/청구기호(출력)
    자료실
책 소개

Key Features

  • Identify the bottlenecks in your applications and solve them using the best profiling techniques
  • Write efficient numerical code in NumPy, Cython, and Pandas
  • Adapt your programs to run on multiple processors and machines with parallel programming

Book Description

Python is a versatile language that has found applications in many industries. The clean syntax, rich standard library, and vast selection of third-party libraries make Python a wildly popular language.

Python High Performance is a practical guide that shows how to leverage the power of both native and third-party Python libraries to build robust applications.

The book explains how to use various profilers to find performance bottlenecks and apply the correct algorithm to fix them. The reader will learn how to effectively use NumPy and Cython to speed up numerical code. The book explains concepts of concurrent programming and how to implement robust and responsive applications using Reactive programming. Readers will learn how to write code for parallel architectures using Tensorflow and Theano, and use a cluster of computers for large-scale computations using technologies such as Dask and PySpark.

By the end of the book, readers will have learned to achieve performance and scale from their Python applications.

What you will learn

  • Write efficient numerical code with the NumPy and Pandas libraries
  • Use Cython and Numba to achieve native performance
  • Find bottlenecks in your Python code using profilers
  • Write asynchronous code using Asyncio and RxPy
  • Use Tensorflow and Theano for automatic parallelism in Python
  • Set up and run distributed algorithms on a cluster using Dask and PySpark
목차
Chapter 1: Benchmarking and Profiling Chapter 2: Pure Python Optimizations Chapter 3: Fast Array Operations with NumPy and Pandas Chapter 4: C Performance with Cython Compiling Cython extensions Chapter 5: Exploring Compilers Chapter 6: Implementing Concurrency Chapter 7: Parallel Processing Chapter 8: Distributed Processing Chapter 9: Designing for High Performance