Writing High-Performance .NET Code
by: Ben Watson
ISBN-10: 0990583457
ISBN-13: 9780990583455
Edition 版本: 2
Released: 2018-05-01
Pages: 519
Take performance to the next level!
This book does not just teach you how the CLR works—it teaches you exactly what you need to do now to obtain the best performance today. It will expertly guide you through the nuts and bolts of extreme performance optimization in .NET,complete with in-depth examinations of CLR functionality,free tool recommendations and tutorials,useful anecdotes,and step-by-step guides to measure and improve performance.
This second edition incorporates the advances and improvements in .NET over the last few years,as well as greatly expanded coverage of tools,more topics,more tutorials,more tips,and improvements throughout the entire book.
New in the 2nd Edition 版本:
50% increase in content!
New examples,code samples,and diagrams throughout entire book
More ways to analyze the heap and find memory problems
More tool coverage,including expanded usage of Visual Studio
More benchmarking
New GC configuration options
Code warmup techniques
New .NET features such as ref-returns,value tuples,SIMD,and more
More detailed analysis of LINQ
Tips for high-level feature areas such as ASP.NET,ADO.NET,and WPF
Also find expanded coverage and discover new tips and tricks for:
Profiling with multiple tools to quickly find problem areas
Detailed description of the garbage collector,how to optimize your code for it,and how to diagnose difficult memory-related issues
How to analyze JIT and diagnose warmup problems
Effective use of the Task Parallel Library to maximize throughput
Which .NET features and APIs to use and which to avoid
Instrument your program with performance counters and ETW events
Use the latest and greatest .NET features
Build a performance-minded team
…and so much more
Writing High-Performance .NET Code,2nd Edition
相关推荐
Web Performance Fundamentals: A Frontend Developer’s Guide to Profile and Optimize React Web Apps
Deep Learning in Modern C++: End-to-end development and implementation of deep learning algorithms
Software Performance Engineering: A comprehensive guide for high-performance development
High-performance Algorithmic Trading using Machine Learning: Building automated trading strategies with AutoML and feature engineering
AutoCAD 2026: A Power Guide for Beginners and Intermediate Users: With Video Tutorials
Quantum Programming in Depth: Solving problems with Q# and Qiskit