Steve Gordon
Turbocharged: Writing High-Performance C# and .NET Code
#1about 2 minutes
Defining performance metrics for .NET applications
Performance is defined by three key metrics: execution time, throughput, and memory allocations, which influence garbage collection frequency.
#2about 1 minute
Adopting a scientific approach to code optimization
Follow a simple, iterative cycle of measuring with data, optimizing a small part of the code, and then measuring again to validate improvements.
#3about 2 minutes
Choosing the right tools for performance measurement
Use tools like Visual Studio diagnostic tools for profiling and Benchmark.NET for precise micro-benchmarking of specific code paths.
#4about 2 minutes
Getting started with Benchmark.NET for micro-benchmarking
Benchmark.NET is an open-source library that provides high-precision measurements for small units of code by handling warm-up and statistical analysis.
#5about 3 minutes
Understanding Span<T> for efficient memory operations
Span<T> provides a type-safe, read/write view over a contiguous region of memory, such as arrays or stack-allocated memory, without new allocations.
#6about 4 minutes
Using Span<T> slicing to optimize array operations
Slicing a span creates a new view over a portion of the original data in constant time, avoiding the overhead of creating new arrays and copying data.
#7about 2 minutes
Parsing strings without allocations using ReadOnlySpan<char>
Create a `ReadOnlySpan<char>` from a string to parse it by slicing, which avoids creating new substring allocations and reduces memory pressure.
#8about 3 minutes
Navigating Span<T> limitations with Memory<T>
Since `Span<T>` is a stack-only `ref struct`, use the `Memory<T>` type in heap-based scenarios like async methods, then get a span from it when needed.
#9about 4 minutes
Case study: Optimizing S3 object key generation
A practical example shows how replacing string arrays and regex with `Span<T>` and stack allocation dramatically reduced memory allocations from 1KB to 192 bytes per operation.
#10about 2 minutes
Reusing temporary buffers with ArrayPool
Use `ArrayPool<T>` to rent and return temporary arrays, which reduces garbage collection pressure by reusing buffers instead of allocating new ones repeatedly.
#11about 2 minutes
Implementing high-performance I/O with System.IO.Pipelines
System.IO.Pipelines simplifies efficient stream processing by managing buffers from an `ArrayPool`, allowing you to work with data as it becomes available.
#12about 4 minutes
Case study: Parsing large files with pipelines
By replacing a library that loaded an entire file into memory with a pipeline-based parser, allocations were reduced from over 7.2 GB to 242 MB.
#13about 2 minutes
Making the business case for performance optimization
Translate performance gains like reduced allocations and increased throughput into monetary value, such as lower infrastructure costs, to get buy-in from stakeholders.
#14about 3 minutes
Summary of key principles for high-performance code
Always measure your code, focus on hot paths, avoid memory copies by using `Span<T>`, and consider `ArrayPool` and `Pipelines` for I/O-heavy scenarios.
#15about 4 minutes
Q&A: Span to array costs and using ValueTasks
The Q&A covers the cost of converting a span back to an array and discusses when to use `ValueTask` over `Task` to avoid allocations in synchronous completion paths.
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Matching moments
01:00 MIN
Using micro-benchmarking for performance hotspots
What you can learn from an open-source project with 500 million downloads
04:40 MIN
Core strategies for achieving high performance
The Design and Evolution of C++
05:18 MIN
Advanced performance tuning with AOT and dependencies
In-depth .NET Azure Functions: Flex plan, Isolated mode and performance
07:45 MIN
Q&A on production code analysis and performance bottlenecks
Data Science on Software Data
02:35 MIN
The critical need for performance in modern applications
In-Memory Computing - The Big Picture
02:04 MIN
Balancing performance metrics beyond raw speed
Things I learned while writing high-performance JavaScript applications
06:05 MIN
Optimizing code by understanding the V8 runtime
Things I learned while writing high-performance JavaScript applications
03:12 MIN
The performance benefits of legacy programming languages
Fireside Chat with Lea
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