SlideShare uma empresa Scribd logo
1 de 43
Baixar para ler offline
State of the
.NET Performance
Adam Sitnik
About myself
Work:
• Energy trading (.NET Core)
• Energy Production Optimization
• Balance Settlement
• Critical Events Detection
Open Source:
• BenchmarkDotNet (.NET Core)
• Core CLR (Spans)
• corefxlab (optimizations)
• & more
2
Agenda
• C# 7
• ValueTuple
• ref returns and locals
• .NET Core
• Span (Slice)
• ArrayPool
• ValueTask
• Pipelines (Channels)
• Unsafe
• Supported frameworks
• Questions
3
ValueTuple: sample
4
(double min, double max, double avg, double sum) GetStats(double[] numbers)
{
double min = double.MaxValue, max = double.MinValue, sum = 0;
for (int i = 0; i < numbers.Length; i++)
{
if (numbers[i] > max) max = numbers[i];
if (numbers[i] < min) min = numbers[i];
sum += numbers[i];
}
double avg = numbers.Length != 0 ? sum / numbers.Length : double.NaN;
return (min, max, avg, sum);
}
ValueTuple
5
• Tuple which is Value Type:
• less space
• better data locality
• NO GC
• deterministic deallocation for stack-allocated Value Types
You need reference to System.ValueTuple.dll
Value Types: the disadvantages?!
• Are expensive to copy!
• You need to study CIL and profiles to find out when it happens!
int result = readOnlyStructField.Method();
is converted to:
var copy = readOnlyStruct;
int result = copy.Method();
6
ref returns and locals: sample
7
ref int Max(
ref int first, ref int second, ref int third)
{
ref int max = ref first;
if (first < second) max = second;
if (second < third) max = third;
return ref max;
}
ref locals: Benchmarks: initialization
public void ByValue() {
for (int i = 0; i < array.Length; i++) {
BigStruct value = array[i];
value.Int1 = 1;
value.Int2 = 2;
value.Int3 = 3;
value.Int4 = 4;
value.Int5 = 5;
array[i] = value;
}
}
public void ByReference(){
for (int i = 0; i < array.Length; i++) {
ref BigStruct reference = ref array[i];
reference.Int1 = 1;
reference.Int2 = 2;
reference.Int3 = 3;
reference.Int4 = 4;
reference.Int5 = 5;
}
}
8
struct BigStruct { public int Int1, Int2, Int3, Int4, Int5; }
Benchmark
results
9
How can old JITs
support it?
What about unsafe?!
void ByReferenceUnsafeExplicitExtraMethod()
{
unsafe
{
fixed (BigStruct* pinned = array)
{
for (int i = 0;
i < array.Length; i++)
{
Init(&pinned[i]);
}
}
}
}
unsafe void Init(BigStruct* pointer)
{
(*pointer).Int1 = 1;
(*pointer).Int2 = 2;
(*pointer).Int3 = 3;
(*pointer).Int4 = 4;
(*pointer).Int5 = 5;
}
10
Safe vs Unsafe with RyuJit
Method Jit Mean Scaled
ByValue RyuJit 742.4910 ns 4.56
ByReference RyuJit 162.8368 ns 1.00
ByReferenceOldWay RyuJit 170.0255 ns 1.04
ByReferenceUnsafeImplicit RyuJit 201.4584 ns 1.24
ByReferenceUnsafeExplicit RyuJit 200.7698 ns 1.23
ByReferenceUnsafeExplicitExtraMethod RyuJit 171.3973 ns 1.05
11
Executing Unsafe code requires full trust. It can be a „no go” for Cloud!
No need for pinning!
Stackalloc is
the fastest
way to
allocate small
chunks of
memory in
.NET
12
13
Allocation Deallocation Usage
Managed < 85 KB Very cheap
(NextObjPtr)
• non-deterministic
• Expensive!
• GC: stop the world • Very easy
• Common
• Safe
Managed: LOH Acceptable cost
(free list
management)
The same as above &:
• Fragmentation (LOH)
• LOH = Gen 2 = Full GC
Native:
Stackalloc
Very cheap • Deterministic
• Very cheap • Unsafe
• Not
common
• Limited
Native: Marshal Acceptable cost
(free list
management)
• Deterministic
• Very cheap
• On demand
Span (Slice)
It provides a uniform API for working with:
• Unmanaged memory buffers
• Arrays and subarrays
• Strings and substrings
It’s fully type-safe and memory-safe.
Almost no overhead.
It’s a Value Type.
15
Supports any memory
byte* pointerToStack = stackalloc byte[256];
Span<byte> stackMemory = new Span<byte>(pointerToStack, 256);
Span<byte> stackMemory = stackalloc byte[256]; // C# 8.0?
IntPtr unmanagedHandle = Marshal.AllocHGlobal(256);
Span<byte> unmanaged = new Span<byte>(unmanagedHandle.ToPointer(), 256);
Span<byte> unmanaged = Marshal.AllocHGlobal(256); // C# 8.0?
char[] array = new char[] { 'D', 'O', 'T', ' ', 'N', 'E', 'X', 'T' };
Span<char> fromArray = new Span<char>(array);
16
Single method in the API is enough
unsafe void Handle(byte* buffer, int length) { }
void Handle(byte[] buffer) { }
void Handle(Span<T> buffer) { }
17
Uniform access to any kind of contiguous memory
public void Enumeration<T>(Span<T> buffer)
{
for (int i = 0; i < buffer.Length; i++)
{
Use(buffer[i]);
}
foreach (T item in buffer)
{
Use(item);
}
}
18
Span for new runtimes
• CoreCLR 1.2
• CLR 4.6.3? 4.6.4?
19
Span for existing runtimes
20
.NET 4.5+, .NET Standard 1.0
Make subslices without allocations
ReadOnlySpan<char> subslice =
".NET Core: Performance Storm!"
.Slice(start: 0, length: 9);
21
22
Subslice
benchmarks
Possible usages
• Formatting
• Base64/Unicode encoding
• HTTP Parsing/Writing
• Compression/Decompression
• XML/JSON parsing/writing
• Binary reading/writing
• & more!!
23
GC Pauses
24
.NET Managed Heap*
25
G
e
n
0
G
e
n
1
Gen 2 LOH
* - simplified, Workstation mode or view per logical processor in Server mode
FULL GC
ArrayPool
• System.Buffers package
• Provides a resource pool that enables reusing instances of T[]
• Arrays allocated on managed heap with new operator
• The default maximum length of each array in the pool is 2^20
(1024*1024 = 1 048 576)
26
ArrayPool: Sample
var pool = ArrayPool<byte>.Shared;
byte[] buffer = pool.Rent(minLength);
try
{
Use(buffer);
}
finally
{
pool.Return(buffer);
}
27
10 KB
29
1 MB
30
1 MB
31
Method Median StdDev Scaled Delta Gen 0 Gen 1 Gen 2
stackalloc 51,689.8611 ns 3,343.26 ns 3.76 275.9% - - -
New 13,750.9839 ns 974.0229 ns 1.00 Baseline - - 23 935
NativePool.Shared 186.1173 ns 12.6833 ns 0.01 -98.6% - - -
ArrayPool.Shared 61.4539 ns 3.4862 ns 0.00 -99.6% - - -
SizeAware 54.5332 ns 2.1022 ns 0.00 -99.6% - - -
32
10 MB
Async on hotpath
Task<T> SmallMethodExecutedVeryVeryOften()
{
if(CanRunSynchronously()) // true most of the time
{
return Task.FromResult(ExecuteSynchronous());
}
return ExecuteAsync();
}
33
Async on hotpath: consuming method
while (true)
{
var result = await SmallMethodExecutedVeryVeryOften();
Use(result);
}
34
ValueTask<T>: the idea
• Wraps a TResult and Task<TResult>, only one of which is used
• It should not replace Task, but help in some scenarios when:
• method returns Task<TResult>
• and very frequently returns synchronously (fast)
• and is invoked so often that cost of allocation of
Task<TResult> is a problem
37
Sample implementation of ValueTask usage
ValueTask<T> SampleUsage()
{
if (IsFastSynchronousExecutionPossible())
{
return ExecuteSynchronous(); // INLINEABLE!!!
}
return new ValueTask<T>(ExecuteAsync());
}
T ExecuteSynchronous() { }
Task<T> ExecuteAsync() { }
38
How to consume ValueTask
var valueTask = SampleUsage(); // INLINEABLE
if(valueTask.IsCompleted)
{
Use(valueTask.Result);
}
else
{
Use(await valueTask.AsTask()); // NO INLINING
}
39
ValueTask<T>: usage && gains
• Sample usage:
• Sockets (already used in ASP.NET Core)
• File Streams
• ADO.NET Data readers
• Gains:
• Less heap allocations
• Method inlining is possible!
• Facts
• Skynet 146ns for Task, 16ns for ValueTask
• Tech Empower (Plaintext) +2.6%
40
ValueTask
vs
Task:
Creation
41
Web Request
42
Pipelines (Channels)
• „ high performance zero-copy buffer-pool-managed asynchronous message
pipes” – Marc Gravell from Stack Overflow
• Pipeline pushes data to you rather than having you pull.
• When writing to a pipeline, the caller allocates memory from the pipeline
directly.
• No new memory is allocated. Only pooled memory buffer is used.
43
Simplified Flow
Asks for a memory buffer.
Writes the data to the buffer.
Returns pooled memory.
Starts awaiting for the data.
Reads the data from buffer.
Uses low-allocating Span based
apis (parsing etc).
Returns the memory to the pool
when done.
44
System.Runtime.CompilerServices.Unsafe
T As<T>(object o) where T : class;
void* AsPointer<T>(ref T value);
void Copy<T>(void* destination, ref T source);
void Copy<T>(ref T destination, void* source);
void CopyBlock(void* destination, void* source, uint byteCount);
void InitBlock(void* startAddress, byte value, uint byteCount);
T Read<T>(void* source);
int SizeOf<T>();
void Write<T>(void* destination, T value);
45
Supported frameworks
46
Package name .NET
Standard
.NET
Framework
Release Nuget feed
System.Slices 1.0 4.5 1.2? Clr/fxlab
System.Buffers 1.1 4.5.1 1.0 nuget.org
System.Threading.Task.Extensions 1.0 4.5 1.0 nuget.org
System.Runtime.CompilerServices.Unsafe 1.0 4.5 1.0 corefx
Questions?
Contact:
@SitnikAdam
Adam.Sitnik@gmail.com
You can find the benchmarks at
https://github.com/adamsitnik/DotNetCorePerformance
https://github.com/adamsitnik/CSharpSevenBenchmarks

Mais conteúdo relacionado

Mais procurados

Конверсия управляемых языков в неуправляемые
Конверсия управляемых языков в неуправляемыеКонверсия управляемых языков в неуправляемые
Конверсия управляемых языков в неуправляемыеPlatonov Sergey
 
Engineering fast indexes
Engineering fast indexesEngineering fast indexes
Engineering fast indexesDaniel Lemire
 
A closure ekon16
A closure ekon16A closure ekon16
A closure ekon16Max Kleiner
 
20140531 serebryany lecture01_fantastic_cpp_bugs
20140531 serebryany lecture01_fantastic_cpp_bugs20140531 serebryany lecture01_fantastic_cpp_bugs
20140531 serebryany lecture01_fantastic_cpp_bugsComputer Science Club
 
20140531 serebryany lecture02_find_scary_cpp_bugs
20140531 serebryany lecture02_find_scary_cpp_bugs20140531 serebryany lecture02_find_scary_cpp_bugs
20140531 serebryany lecture02_find_scary_cpp_bugsComputer Science Club
 
Arduino C maXbox web of things slide show
Arduino C maXbox web of things slide showArduino C maXbox web of things slide show
Arduino C maXbox web of things slide showMax Kleiner
 
Adam Sitnik "State of the .NET Performance"
Adam Sitnik "State of the .NET Performance"Adam Sitnik "State of the .NET Performance"
Adam Sitnik "State of the .NET Performance"Yulia Tsisyk
 
Porting and optimizing UniFrac for GPUs
Porting and optimizing UniFrac for GPUsPorting and optimizing UniFrac for GPUs
Porting and optimizing UniFrac for GPUsIgor Sfiligoi
 
Exploiting Concurrency with Dynamic Languages
Exploiting Concurrency with Dynamic LanguagesExploiting Concurrency with Dynamic Languages
Exploiting Concurrency with Dynamic LanguagesTobias Lindaaker
 
"PyTorch Deep Learning Framework: Status and Directions," a Presentation from...
"PyTorch Deep Learning Framework: Status and Directions," a Presentation from..."PyTorch Deep Learning Framework: Status and Directions," a Presentation from...
"PyTorch Deep Learning Framework: Status and Directions," a Presentation from...Edge AI and Vision Alliance
 
Intel IPP Samples for Windows - error correction
Intel IPP Samples for Windows - error correctionIntel IPP Samples for Windows - error correction
Intel IPP Samples for Windows - error correctionAndrey Karpov
 
Intel IPP Samples for Windows - error correction
Intel IPP Samples for Windows - error correctionIntel IPP Samples for Windows - error correction
Intel IPP Samples for Windows - error correctionPVS-Studio
 
Machine learning with py torch
Machine learning with py torchMachine learning with py torch
Machine learning with py torchRiza Fahmi
 
Use of an Oscilloscope - maXbox Starter33
Use of an Oscilloscope - maXbox Starter33Use of an Oscilloscope - maXbox Starter33
Use of an Oscilloscope - maXbox Starter33Max Kleiner
 
C++ & Java JIT Optimizations: Finding Prime Numbers
C++ & Java JIT Optimizations: Finding Prime NumbersC++ & Java JIT Optimizations: Finding Prime Numbers
C++ & Java JIT Optimizations: Finding Prime NumbersAdam Feldscher
 
Pune-Cocoa: Blocks and GCD
Pune-Cocoa: Blocks and GCDPune-Cocoa: Blocks and GCD
Pune-Cocoa: Blocks and GCDPrashant Rane
 
Story of static code analyzer development
Story of static code analyzer developmentStory of static code analyzer development
Story of static code analyzer developmentAndrey Karpov
 
A peek on numerical programming in perl and python e christopher dyken 2005
A peek on numerical programming in perl and python  e christopher dyken  2005A peek on numerical programming in perl and python  e christopher dyken  2005
A peek on numerical programming in perl and python e christopher dyken 2005Jules Krdenas
 

Mais procurados (20)

Конверсия управляемых языков в неуправляемые
Конверсия управляемых языков в неуправляемыеКонверсия управляемых языков в неуправляемые
Конверсия управляемых языков в неуправляемые
 
Engineering fast indexes
Engineering fast indexesEngineering fast indexes
Engineering fast indexes
 
A closure ekon16
A closure ekon16A closure ekon16
A closure ekon16
 
20140531 serebryany lecture01_fantastic_cpp_bugs
20140531 serebryany lecture01_fantastic_cpp_bugs20140531 serebryany lecture01_fantastic_cpp_bugs
20140531 serebryany lecture01_fantastic_cpp_bugs
 
20140531 serebryany lecture02_find_scary_cpp_bugs
20140531 serebryany lecture02_find_scary_cpp_bugs20140531 serebryany lecture02_find_scary_cpp_bugs
20140531 serebryany lecture02_find_scary_cpp_bugs
 
Arduino C maXbox web of things slide show
Arduino C maXbox web of things slide showArduino C maXbox web of things slide show
Arduino C maXbox web of things slide show
 
Adam Sitnik "State of the .NET Performance"
Adam Sitnik "State of the .NET Performance"Adam Sitnik "State of the .NET Performance"
Adam Sitnik "State of the .NET Performance"
 
Porting and optimizing UniFrac for GPUs
Porting and optimizing UniFrac for GPUsPorting and optimizing UniFrac for GPUs
Porting and optimizing UniFrac for GPUs
 
Exploiting Concurrency with Dynamic Languages
Exploiting Concurrency with Dynamic LanguagesExploiting Concurrency with Dynamic Languages
Exploiting Concurrency with Dynamic Languages
 
"PyTorch Deep Learning Framework: Status and Directions," a Presentation from...
"PyTorch Deep Learning Framework: Status and Directions," a Presentation from..."PyTorch Deep Learning Framework: Status and Directions," a Presentation from...
"PyTorch Deep Learning Framework: Status and Directions," a Presentation from...
 
Lec09 nbody-optimization
Lec09 nbody-optimizationLec09 nbody-optimization
Lec09 nbody-optimization
 
Intel IPP Samples for Windows - error correction
Intel IPP Samples for Windows - error correctionIntel IPP Samples for Windows - error correction
Intel IPP Samples for Windows - error correction
 
Intel IPP Samples for Windows - error correction
Intel IPP Samples for Windows - error correctionIntel IPP Samples for Windows - error correction
Intel IPP Samples for Windows - error correction
 
Lec05 buffers basic_examples
Lec05 buffers basic_examplesLec05 buffers basic_examples
Lec05 buffers basic_examples
 
Machine learning with py torch
Machine learning with py torchMachine learning with py torch
Machine learning with py torch
 
Use of an Oscilloscope - maXbox Starter33
Use of an Oscilloscope - maXbox Starter33Use of an Oscilloscope - maXbox Starter33
Use of an Oscilloscope - maXbox Starter33
 
C++ & Java JIT Optimizations: Finding Prime Numbers
C++ & Java JIT Optimizations: Finding Prime NumbersC++ & Java JIT Optimizations: Finding Prime Numbers
C++ & Java JIT Optimizations: Finding Prime Numbers
 
Pune-Cocoa: Blocks and GCD
Pune-Cocoa: Blocks and GCDPune-Cocoa: Blocks and GCD
Pune-Cocoa: Blocks and GCD
 
Story of static code analyzer development
Story of static code analyzer developmentStory of static code analyzer development
Story of static code analyzer development
 
A peek on numerical programming in perl and python e christopher dyken 2005
A peek on numerical programming in perl and python  e christopher dyken  2005A peek on numerical programming in perl and python  e christopher dyken  2005
A peek on numerical programming in perl and python e christopher dyken 2005
 

Destaque

Опыт построения микросервисной архитектуры в цифровом банке
Опыт построения микросервисной архитектуры в цифровом банкеОпыт построения микросервисной архитектуры в цифровом банке
Опыт построения микросервисной архитектуры в цифровом банкеCUSTIS
 
Agile и управление знаниями в ИТ-проектах
Agile и управление знаниями в ИТ-проектахAgile и управление знаниями в ИТ-проектах
Agile и управление знаниями в ИТ-проектахCUSTIS
 
Золотая лихорадка MSA: почему нам не подошли микросервисы?
Золотая лихорадка MSA: почему нам не подошли микросервисы?Золотая лихорадка MSA: почему нам не подошли микросервисы?
Золотая лихорадка MSA: почему нам не подошли микросервисы?CUSTIS
 
Три истории микросервисов
Три истории микросервисовТри истории микросервисов
Три истории микросервисовCUSTIS
 
Будущее omni-channel маркетинга: инструменты, кейсы и цифры
Будущее omni-channel маркетинга: инструменты, кейсы и цифрыБудущее omni-channel маркетинга: инструменты, кейсы и цифры
Будущее omni-channel маркетинга: инструменты, кейсы и цифрыCUSTIS
 
Барьеры микросервисной архитектуры
Барьеры микросервисной архитектурыБарьеры микросервисной архитектуры
Барьеры микросервисной архитектурыCUSTIS
 

Destaque (6)

Опыт построения микросервисной архитектуры в цифровом банке
Опыт построения микросервисной архитектуры в цифровом банкеОпыт построения микросервисной архитектуры в цифровом банке
Опыт построения микросервисной архитектуры в цифровом банке
 
Agile и управление знаниями в ИТ-проектах
Agile и управление знаниями в ИТ-проектахAgile и управление знаниями в ИТ-проектах
Agile и управление знаниями в ИТ-проектах
 
Золотая лихорадка MSA: почему нам не подошли микросервисы?
Золотая лихорадка MSA: почему нам не подошли микросервисы?Золотая лихорадка MSA: почему нам не подошли микросервисы?
Золотая лихорадка MSA: почему нам не подошли микросервисы?
 
Три истории микросервисов
Три истории микросервисовТри истории микросервисов
Три истории микросервисов
 
Будущее omni-channel маркетинга: инструменты, кейсы и цифры
Будущее omni-channel маркетинга: инструменты, кейсы и цифрыБудущее omni-channel маркетинга: инструменты, кейсы и цифры
Будущее omni-channel маркетинга: инструменты, кейсы и цифры
 
Барьеры микросервисной архитектуры
Барьеры микросервисной архитектурыБарьеры микросервисной архитектуры
Барьеры микросервисной архитектуры
 

Semelhante a State of the .Net Performance

A (brief) overview of Span<T>
A (brief) overview of Span<T>A (brief) overview of Span<T>
A (brief) overview of Span<T>David Wengier
 
Where the wild things are - Benchmarking and Micro-Optimisations
Where the wild things are - Benchmarking and Micro-OptimisationsWhere the wild things are - Benchmarking and Micro-Optimisations
Where the wild things are - Benchmarking and Micro-OptimisationsMatt Warren
 
"Optimization of a .NET application- is it simple ! / ?", Yevhen Tatarynov
"Optimization of a .NET application- is it simple ! / ?",  Yevhen Tatarynov"Optimization of a .NET application- is it simple ! / ?",  Yevhen Tatarynov
"Optimization of a .NET application- is it simple ! / ?", Yevhen TatarynovFwdays
 
Look Mommy, No GC! (TechDays NL 2017)
Look Mommy, No GC! (TechDays NL 2017)Look Mommy, No GC! (TechDays NL 2017)
Look Mommy, No GC! (TechDays NL 2017)Dina Goldshtein
 
Qt multi threads
Qt multi threadsQt multi threads
Qt multi threadsYnon Perek
 
LSFMM 2019 BPF Observability
LSFMM 2019 BPF ObservabilityLSFMM 2019 BPF Observability
LSFMM 2019 BPF ObservabilityBrendan Gregg
 
.NET Multithreading/Multitasking
.NET Multithreading/Multitasking.NET Multithreading/Multitasking
.NET Multithreading/MultitaskingSasha Kravchuk
 
App secforum2014 andrivet-cplusplus11-metaprogramming_applied_to_software_obf...
App secforum2014 andrivet-cplusplus11-metaprogramming_applied_to_software_obf...App secforum2014 andrivet-cplusplus11-metaprogramming_applied_to_software_obf...
App secforum2014 andrivet-cplusplus11-metaprogramming_applied_to_software_obf...Cyber Security Alliance
 
C# 7.x What's new and what's coming with C# 8
C# 7.x What's new and what's coming with C# 8C# 7.x What's new and what's coming with C# 8
C# 7.x What's new and what's coming with C# 8Christian Nagel
 
Kapacitor - Real Time Data Processing Engine
Kapacitor - Real Time Data Processing EngineKapacitor - Real Time Data Processing Engine
Kapacitor - Real Time Data Processing EnginePrashant Vats
 
Workshop "Can my .NET application use less CPU / RAM?", Yevhen Tatarynov
Workshop "Can my .NET application use less CPU / RAM?", Yevhen TatarynovWorkshop "Can my .NET application use less CPU / RAM?", Yevhen Tatarynov
Workshop "Can my .NET application use less CPU / RAM?", Yevhen TatarynovFwdays
 
Getting started cpp full
Getting started cpp   fullGetting started cpp   full
Getting started cpp fullVõ Hòa
 
Tamir Dresher - DotNet 7 What's new.pptx
Tamir Dresher - DotNet 7 What's new.pptxTamir Dresher - DotNet 7 What's new.pptx
Tamir Dresher - DotNet 7 What's new.pptxTamir Dresher
 
Tools and Techniques for Understanding Threading Behavior in Android
Tools and Techniques for Understanding Threading Behavior in AndroidTools and Techniques for Understanding Threading Behavior in Android
Tools and Techniques for Understanding Threading Behavior in AndroidIntel® Software
 
Golang in TiDB (GopherChina 2017)
Golang in TiDB  (GopherChina 2017)Golang in TiDB  (GopherChina 2017)
Golang in TiDB (GopherChina 2017)PingCAP
 
Node.js behind: V8 and its optimizations
Node.js behind: V8 and its optimizationsNode.js behind: V8 and its optimizations
Node.js behind: V8 and its optimizationsDawid Rusnak
 

Semelhante a State of the .Net Performance (20)

A (brief) overview of Span<T>
A (brief) overview of Span<T>A (brief) overview of Span<T>
A (brief) overview of Span<T>
 
C# - What's next
C# - What's nextC# - What's next
C# - What's next
 
Where the wild things are - Benchmarking and Micro-Optimisations
Where the wild things are - Benchmarking and Micro-OptimisationsWhere the wild things are - Benchmarking and Micro-Optimisations
Where the wild things are - Benchmarking and Micro-Optimisations
 
"Optimization of a .NET application- is it simple ! / ?", Yevhen Tatarynov
"Optimization of a .NET application- is it simple ! / ?",  Yevhen Tatarynov"Optimization of a .NET application- is it simple ! / ?",  Yevhen Tatarynov
"Optimization of a .NET application- is it simple ! / ?", Yevhen Tatarynov
 
Look Mommy, No GC! (TechDays NL 2017)
Look Mommy, No GC! (TechDays NL 2017)Look Mommy, No GC! (TechDays NL 2017)
Look Mommy, No GC! (TechDays NL 2017)
 
Qt multi threads
Qt multi threadsQt multi threads
Qt multi threads
 
LSFMM 2019 BPF Observability
LSFMM 2019 BPF ObservabilityLSFMM 2019 BPF Observability
LSFMM 2019 BPF Observability
 
.NET Multithreading/Multitasking
.NET Multithreading/Multitasking.NET Multithreading/Multitasking
.NET Multithreading/Multitasking
 
App secforum2014 andrivet-cplusplus11-metaprogramming_applied_to_software_obf...
App secforum2014 andrivet-cplusplus11-metaprogramming_applied_to_software_obf...App secforum2014 andrivet-cplusplus11-metaprogramming_applied_to_software_obf...
App secforum2014 andrivet-cplusplus11-metaprogramming_applied_to_software_obf...
 
Fedor Polyakov - Optimizing computer vision problems on mobile platforms
Fedor Polyakov - Optimizing computer vision problems on mobile platforms Fedor Polyakov - Optimizing computer vision problems on mobile platforms
Fedor Polyakov - Optimizing computer vision problems on mobile platforms
 
C# 7.x What's new and what's coming with C# 8
C# 7.x What's new and what's coming with C# 8C# 7.x What's new and what's coming with C# 8
C# 7.x What's new and what's coming with C# 8
 
Kapacitor - Real Time Data Processing Engine
Kapacitor - Real Time Data Processing EngineKapacitor - Real Time Data Processing Engine
Kapacitor - Real Time Data Processing Engine
 
Workshop "Can my .NET application use less CPU / RAM?", Yevhen Tatarynov
Workshop "Can my .NET application use less CPU / RAM?", Yevhen TatarynovWorkshop "Can my .NET application use less CPU / RAM?", Yevhen Tatarynov
Workshop "Can my .NET application use less CPU / RAM?", Yevhen Tatarynov
 
Getting started cpp full
Getting started cpp   fullGetting started cpp   full
Getting started cpp full
 
Golang dot-testing-lite
Golang dot-testing-liteGolang dot-testing-lite
Golang dot-testing-lite
 
Tamir Dresher - DotNet 7 What's new.pptx
Tamir Dresher - DotNet 7 What's new.pptxTamir Dresher - DotNet 7 What's new.pptx
Tamir Dresher - DotNet 7 What's new.pptx
 
Blazing Fast Windows 8 Apps using Visual C++
Blazing Fast Windows 8 Apps using Visual C++Blazing Fast Windows 8 Apps using Visual C++
Blazing Fast Windows 8 Apps using Visual C++
 
Tools and Techniques for Understanding Threading Behavior in Android
Tools and Techniques for Understanding Threading Behavior in AndroidTools and Techniques for Understanding Threading Behavior in Android
Tools and Techniques for Understanding Threading Behavior in Android
 
Golang in TiDB (GopherChina 2017)
Golang in TiDB  (GopherChina 2017)Golang in TiDB  (GopherChina 2017)
Golang in TiDB (GopherChina 2017)
 
Node.js behind: V8 and its optimizations
Node.js behind: V8 and its optimizationsNode.js behind: V8 and its optimizations
Node.js behind: V8 and its optimizations
 

Mais de CUSTIS

Три истории микросервисов, или MSA для Enterprise
Три истории микросервисов, или MSA для EnterpriseТри истории микросервисов, или MSA для Enterprise
Три истории микросервисов, или MSA для EnterpriseCUSTIS
 
Долгоживущие ИТ в динамичном ритейле
Долгоживущие ИТ в динамичном ритейлеДолгоживущие ИТ в динамичном ритейле
Долгоживущие ИТ в динамичном ритейлеCUSTIS
 
Будущее уже наступило: от Agile к бирюзовым организациям
Будущее уже наступило: от Agile к бирюзовым организациямБудущее уже наступило: от Agile к бирюзовым организациям
Будущее уже наступило: от Agile к бирюзовым организациямCUSTIS
 
Как выбрать для проекта практики проектирования и работы с требованиями
Как выбрать для проекта практики проектирования и работы с требованиямиКак выбрать для проекта практики проектирования и работы с требованиями
Как выбрать для проекта практики проектирования и работы с требованиямиCUSTIS
 
Диаграммы учета как средство для наглядного и целостного отображения правил у...
Диаграммы учета как средство для наглядного и целостного отображения правил у...Диаграммы учета как средство для наглядного и целостного отображения правил у...
Диаграммы учета как средство для наглядного и целостного отображения правил у...CUSTIS
 
Сотрудничество с корпорациями: рецепты из практики
Сотрудничество с корпорациями: рецепты из практикиСотрудничество с корпорациями: рецепты из практики
Сотрудничество с корпорациями: рецепты из практикиCUSTIS
 
Agile — ответ на вызовы третьей промышленной революции
Agile — ответ на вызовы третьей промышленной революцииAgile — ответ на вызовы третьей промышленной революции
Agile — ответ на вызовы третьей промышленной революцииCUSTIS
 
От монолитных моделей предметной области — к модульным
От монолитных моделей предметной области — к модульнымОт монолитных моделей предметной области — к модульным
От монолитных моделей предметной области — к модульнымCUSTIS
 
Проблемы управления правами доступа к информационным системам крупной торгово...
Проблемы управления правами доступа к информационным системам крупной торгово...Проблемы управления правами доступа к информационным системам крупной торгово...
Проблемы управления правами доступа к информационным системам крупной торгово...CUSTIS
 
Ответственность за качество в разных ИТ-проектах: в чем она и как ее разделять
Ответственность за качество в разных ИТ-проектах: в чем она и как ее разделятьОтветственность за качество в разных ИТ-проектах: в чем она и как ее разделять
Ответственность за качество в разных ИТ-проектах: в чем она и как ее разделятьCUSTIS
 
Опыт применения метода ATAM для оценки архитектуры
Опыт применения метода ATAM для оценки архитектурыОпыт применения метода ATAM для оценки архитектуры
Опыт применения метода ATAM для оценки архитектурыCUSTIS
 
Гибридный подход к управлению правами доступа: когда стандартного IDM не хватает
Гибридный подход к управлению правами доступа: когда стандартного IDM не хватаетГибридный подход к управлению правами доступа: когда стандартного IDM не хватает
Гибридный подход к управлению правами доступа: когда стандартного IDM не хватаетCUSTIS
 
Собираем кубик Рубика: восстановление архитектурного описания корпоративной р...
Собираем кубик Рубика: восстановление архитектурного описания корпоративной р...Собираем кубик Рубика: восстановление архитектурного описания корпоративной р...
Собираем кубик Рубика: восстановление архитектурного описания корпоративной р...CUSTIS
 
Process и Case Management в информационной системе: от автоматизации As Is к ...
Process и Case Management в информационной системе: от автоматизации As Is к ...Process и Case Management в информационной системе: от автоматизации As Is к ...
Process и Case Management в информационной системе: от автоматизации As Is к ...CUSTIS
 
RBAC & ABAC: гибридное решение для управления правами доступа
RBAC & ABAC: гибридное решение для управления правами доступаRBAC & ABAC: гибридное решение для управления правами доступа
RBAC & ABAC: гибридное решение для управления правами доступаCUSTIS
 
Омниканальная модель в ритейле: решения и кейсы
Омниканальная модель в ритейле: решения и кейсыОмниканальная модель в ритейле: решения и кейсы
Омниканальная модель в ритейле: решения и кейсыCUSTIS
 
WinDbg со товарищи
WinDbg со товарищиWinDbg со товарищи
WinDbg со товарищиCUSTIS
 
Akka.NET
Akka.NETAkka.NET
Akka.NETCUSTIS
 
Process & Case Management: совмещай и властвуй!
Process & Case Management: совмещай и властвуй!Process & Case Management: совмещай и властвуй!
Process & Case Management: совмещай и властвуй!CUSTIS
 
Программы лояльности в эпоху omni
Программы лояльности в эпоху omniПрограммы лояльности в эпоху omni
Программы лояльности в эпоху omniCUSTIS
 

Mais de CUSTIS (20)

Три истории микросервисов, или MSA для Enterprise
Три истории микросервисов, или MSA для EnterpriseТри истории микросервисов, или MSA для Enterprise
Три истории микросервисов, или MSA для Enterprise
 
Долгоживущие ИТ в динамичном ритейле
Долгоживущие ИТ в динамичном ритейлеДолгоживущие ИТ в динамичном ритейле
Долгоживущие ИТ в динамичном ритейле
 
Будущее уже наступило: от Agile к бирюзовым организациям
Будущее уже наступило: от Agile к бирюзовым организациямБудущее уже наступило: от Agile к бирюзовым организациям
Будущее уже наступило: от Agile к бирюзовым организациям
 
Как выбрать для проекта практики проектирования и работы с требованиями
Как выбрать для проекта практики проектирования и работы с требованиямиКак выбрать для проекта практики проектирования и работы с требованиями
Как выбрать для проекта практики проектирования и работы с требованиями
 
Диаграммы учета как средство для наглядного и целостного отображения правил у...
Диаграммы учета как средство для наглядного и целостного отображения правил у...Диаграммы учета как средство для наглядного и целостного отображения правил у...
Диаграммы учета как средство для наглядного и целостного отображения правил у...
 
Сотрудничество с корпорациями: рецепты из практики
Сотрудничество с корпорациями: рецепты из практикиСотрудничество с корпорациями: рецепты из практики
Сотрудничество с корпорациями: рецепты из практики
 
Agile — ответ на вызовы третьей промышленной революции
Agile — ответ на вызовы третьей промышленной революцииAgile — ответ на вызовы третьей промышленной революции
Agile — ответ на вызовы третьей промышленной революции
 
От монолитных моделей предметной области — к модульным
От монолитных моделей предметной области — к модульнымОт монолитных моделей предметной области — к модульным
От монолитных моделей предметной области — к модульным
 
Проблемы управления правами доступа к информационным системам крупной торгово...
Проблемы управления правами доступа к информационным системам крупной торгово...Проблемы управления правами доступа к информационным системам крупной торгово...
Проблемы управления правами доступа к информационным системам крупной торгово...
 
Ответственность за качество в разных ИТ-проектах: в чем она и как ее разделять
Ответственность за качество в разных ИТ-проектах: в чем она и как ее разделятьОтветственность за качество в разных ИТ-проектах: в чем она и как ее разделять
Ответственность за качество в разных ИТ-проектах: в чем она и как ее разделять
 
Опыт применения метода ATAM для оценки архитектуры
Опыт применения метода ATAM для оценки архитектурыОпыт применения метода ATAM для оценки архитектуры
Опыт применения метода ATAM для оценки архитектуры
 
Гибридный подход к управлению правами доступа: когда стандартного IDM не хватает
Гибридный подход к управлению правами доступа: когда стандартного IDM не хватаетГибридный подход к управлению правами доступа: когда стандартного IDM не хватает
Гибридный подход к управлению правами доступа: когда стандартного IDM не хватает
 
Собираем кубик Рубика: восстановление архитектурного описания корпоративной р...
Собираем кубик Рубика: восстановление архитектурного описания корпоративной р...Собираем кубик Рубика: восстановление архитектурного описания корпоративной р...
Собираем кубик Рубика: восстановление архитектурного описания корпоративной р...
 
Process и Case Management в информационной системе: от автоматизации As Is к ...
Process и Case Management в информационной системе: от автоматизации As Is к ...Process и Case Management в информационной системе: от автоматизации As Is к ...
Process и Case Management в информационной системе: от автоматизации As Is к ...
 
RBAC & ABAC: гибридное решение для управления правами доступа
RBAC & ABAC: гибридное решение для управления правами доступаRBAC & ABAC: гибридное решение для управления правами доступа
RBAC & ABAC: гибридное решение для управления правами доступа
 
Омниканальная модель в ритейле: решения и кейсы
Омниканальная модель в ритейле: решения и кейсыОмниканальная модель в ритейле: решения и кейсы
Омниканальная модель в ритейле: решения и кейсы
 
WinDbg со товарищи
WinDbg со товарищиWinDbg со товарищи
WinDbg со товарищи
 
Akka.NET
Akka.NETAkka.NET
Akka.NET
 
Process & Case Management: совмещай и властвуй!
Process & Case Management: совмещай и властвуй!Process & Case Management: совмещай и властвуй!
Process & Case Management: совмещай и властвуй!
 
Программы лояльности в эпоху omni
Программы лояльности в эпоху omniПрограммы лояльности в эпоху omni
Программы лояльности в эпоху omni
 

Último

Presentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreterPresentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreternaman860154
 
The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024Rafal Los
 
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...apidays
 
Unblocking The Main Thread Solving ANRs and Frozen Frames
Unblocking The Main Thread Solving ANRs and Frozen FramesUnblocking The Main Thread Solving ANRs and Frozen Frames
Unblocking The Main Thread Solving ANRs and Frozen FramesSinan KOZAK
 
Boost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityBoost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityPrincipled Technologies
 
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time AutomationFrom Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time AutomationSafe Software
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerThousandEyes
 
Developing An App To Navigate The Roads of Brazil
Developing An App To Navigate The Roads of BrazilDeveloping An App To Navigate The Roads of Brazil
Developing An App To Navigate The Roads of BrazilV3cube
 
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Drew Madelung
 
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...Neo4j
 
08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking Men08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking MenDelhi Call girls
 
Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024The Digital Insurer
 
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdfThe Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdfEnterprise Knowledge
 
Top 5 Benefits OF Using Muvi Live Paywall For Live Streams
Top 5 Benefits OF Using Muvi Live Paywall For Live StreamsTop 5 Benefits OF Using Muvi Live Paywall For Live Streams
Top 5 Benefits OF Using Muvi Live Paywall For Live StreamsRoshan Dwivedi
 
Partners Life - Insurer Innovation Award 2024
Partners Life - Insurer Innovation Award 2024Partners Life - Insurer Innovation Award 2024
Partners Life - Insurer Innovation Award 2024The Digital Insurer
 
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Miguel Araújo
 
08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking MenDelhi Call girls
 
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure serviceWhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure servicePooja Nehwal
 
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law DevelopmentsTrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law DevelopmentsTrustArc
 
2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...Martijn de Jong
 

Último (20)

Presentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreterPresentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreter
 
The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024
 
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
 
Unblocking The Main Thread Solving ANRs and Frozen Frames
Unblocking The Main Thread Solving ANRs and Frozen FramesUnblocking The Main Thread Solving ANRs and Frozen Frames
Unblocking The Main Thread Solving ANRs and Frozen Frames
 
Boost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityBoost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivity
 
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time AutomationFrom Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
 
Developing An App To Navigate The Roads of Brazil
Developing An App To Navigate The Roads of BrazilDeveloping An App To Navigate The Roads of Brazil
Developing An App To Navigate The Roads of Brazil
 
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
 
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
 
08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking Men08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking Men
 
Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024
 
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdfThe Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
 
Top 5 Benefits OF Using Muvi Live Paywall For Live Streams
Top 5 Benefits OF Using Muvi Live Paywall For Live StreamsTop 5 Benefits OF Using Muvi Live Paywall For Live Streams
Top 5 Benefits OF Using Muvi Live Paywall For Live Streams
 
Partners Life - Insurer Innovation Award 2024
Partners Life - Insurer Innovation Award 2024Partners Life - Insurer Innovation Award 2024
Partners Life - Insurer Innovation Award 2024
 
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
 
08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men
 
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure serviceWhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
 
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law DevelopmentsTrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
 
2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...
 

State of the .Net Performance

  • 1. State of the .NET Performance Adam Sitnik
  • 2. About myself Work: • Energy trading (.NET Core) • Energy Production Optimization • Balance Settlement • Critical Events Detection Open Source: • BenchmarkDotNet (.NET Core) • Core CLR (Spans) • corefxlab (optimizations) • & more 2
  • 3. Agenda • C# 7 • ValueTuple • ref returns and locals • .NET Core • Span (Slice) • ArrayPool • ValueTask • Pipelines (Channels) • Unsafe • Supported frameworks • Questions 3
  • 4. ValueTuple: sample 4 (double min, double max, double avg, double sum) GetStats(double[] numbers) { double min = double.MaxValue, max = double.MinValue, sum = 0; for (int i = 0; i < numbers.Length; i++) { if (numbers[i] > max) max = numbers[i]; if (numbers[i] < min) min = numbers[i]; sum += numbers[i]; } double avg = numbers.Length != 0 ? sum / numbers.Length : double.NaN; return (min, max, avg, sum); }
  • 5. ValueTuple 5 • Tuple which is Value Type: • less space • better data locality • NO GC • deterministic deallocation for stack-allocated Value Types You need reference to System.ValueTuple.dll
  • 6. Value Types: the disadvantages?! • Are expensive to copy! • You need to study CIL and profiles to find out when it happens! int result = readOnlyStructField.Method(); is converted to: var copy = readOnlyStruct; int result = copy.Method(); 6
  • 7. ref returns and locals: sample 7 ref int Max( ref int first, ref int second, ref int third) { ref int max = ref first; if (first < second) max = second; if (second < third) max = third; return ref max; }
  • 8. ref locals: Benchmarks: initialization public void ByValue() { for (int i = 0; i < array.Length; i++) { BigStruct value = array[i]; value.Int1 = 1; value.Int2 = 2; value.Int3 = 3; value.Int4 = 4; value.Int5 = 5; array[i] = value; } } public void ByReference(){ for (int i = 0; i < array.Length; i++) { ref BigStruct reference = ref array[i]; reference.Int1 = 1; reference.Int2 = 2; reference.Int3 = 3; reference.Int4 = 4; reference.Int5 = 5; } } 8 struct BigStruct { public int Int1, Int2, Int3, Int4, Int5; }
  • 10. What about unsafe?! void ByReferenceUnsafeExplicitExtraMethod() { unsafe { fixed (BigStruct* pinned = array) { for (int i = 0; i < array.Length; i++) { Init(&pinned[i]); } } } } unsafe void Init(BigStruct* pointer) { (*pointer).Int1 = 1; (*pointer).Int2 = 2; (*pointer).Int3 = 3; (*pointer).Int4 = 4; (*pointer).Int5 = 5; } 10
  • 11. Safe vs Unsafe with RyuJit Method Jit Mean Scaled ByValue RyuJit 742.4910 ns 4.56 ByReference RyuJit 162.8368 ns 1.00 ByReferenceOldWay RyuJit 170.0255 ns 1.04 ByReferenceUnsafeImplicit RyuJit 201.4584 ns 1.24 ByReferenceUnsafeExplicit RyuJit 200.7698 ns 1.23 ByReferenceUnsafeExplicitExtraMethod RyuJit 171.3973 ns 1.05 11 Executing Unsafe code requires full trust. It can be a „no go” for Cloud! No need for pinning!
  • 12. Stackalloc is the fastest way to allocate small chunks of memory in .NET 12
  • 13. 13 Allocation Deallocation Usage Managed < 85 KB Very cheap (NextObjPtr) • non-deterministic • Expensive! • GC: stop the world • Very easy • Common • Safe Managed: LOH Acceptable cost (free list management) The same as above &: • Fragmentation (LOH) • LOH = Gen 2 = Full GC Native: Stackalloc Very cheap • Deterministic • Very cheap • Unsafe • Not common • Limited Native: Marshal Acceptable cost (free list management) • Deterministic • Very cheap • On demand
  • 14. Span (Slice) It provides a uniform API for working with: • Unmanaged memory buffers • Arrays and subarrays • Strings and substrings It’s fully type-safe and memory-safe. Almost no overhead. It’s a Value Type. 15
  • 15. Supports any memory byte* pointerToStack = stackalloc byte[256]; Span<byte> stackMemory = new Span<byte>(pointerToStack, 256); Span<byte> stackMemory = stackalloc byte[256]; // C# 8.0? IntPtr unmanagedHandle = Marshal.AllocHGlobal(256); Span<byte> unmanaged = new Span<byte>(unmanagedHandle.ToPointer(), 256); Span<byte> unmanaged = Marshal.AllocHGlobal(256); // C# 8.0? char[] array = new char[] { 'D', 'O', 'T', ' ', 'N', 'E', 'X', 'T' }; Span<char> fromArray = new Span<char>(array); 16
  • 16. Single method in the API is enough unsafe void Handle(byte* buffer, int length) { } void Handle(byte[] buffer) { } void Handle(Span<T> buffer) { } 17
  • 17. Uniform access to any kind of contiguous memory public void Enumeration<T>(Span<T> buffer) { for (int i = 0; i < buffer.Length; i++) { Use(buffer[i]); } foreach (T item in buffer) { Use(item); } } 18
  • 18. Span for new runtimes • CoreCLR 1.2 • CLR 4.6.3? 4.6.4? 19
  • 19. Span for existing runtimes 20 .NET 4.5+, .NET Standard 1.0
  • 20. Make subslices without allocations ReadOnlySpan<char> subslice = ".NET Core: Performance Storm!" .Slice(start: 0, length: 9); 21
  • 22. Possible usages • Formatting • Base64/Unicode encoding • HTTP Parsing/Writing • Compression/Decompression • XML/JSON parsing/writing • Binary reading/writing • & more!! 23
  • 24. .NET Managed Heap* 25 G e n 0 G e n 1 Gen 2 LOH * - simplified, Workstation mode or view per logical processor in Server mode FULL GC
  • 25. ArrayPool • System.Buffers package • Provides a resource pool that enables reusing instances of T[] • Arrays allocated on managed heap with new operator • The default maximum length of each array in the pool is 2^20 (1024*1024 = 1 048 576) 26
  • 26. ArrayPool: Sample var pool = ArrayPool<byte>.Shared; byte[] buffer = pool.Rent(minLength); try { Use(buffer); } finally { pool.Return(buffer); } 27
  • 29. 1 MB 31 Method Median StdDev Scaled Delta Gen 0 Gen 1 Gen 2 stackalloc 51,689.8611 ns 3,343.26 ns 3.76 275.9% - - - New 13,750.9839 ns 974.0229 ns 1.00 Baseline - - 23 935 NativePool.Shared 186.1173 ns 12.6833 ns 0.01 -98.6% - - - ArrayPool.Shared 61.4539 ns 3.4862 ns 0.00 -99.6% - - - SizeAware 54.5332 ns 2.1022 ns 0.00 -99.6% - - -
  • 31. Async on hotpath Task<T> SmallMethodExecutedVeryVeryOften() { if(CanRunSynchronously()) // true most of the time { return Task.FromResult(ExecuteSynchronous()); } return ExecuteAsync(); } 33
  • 32. Async on hotpath: consuming method while (true) { var result = await SmallMethodExecutedVeryVeryOften(); Use(result); } 34
  • 33. ValueTask<T>: the idea • Wraps a TResult and Task<TResult>, only one of which is used • It should not replace Task, but help in some scenarios when: • method returns Task<TResult> • and very frequently returns synchronously (fast) • and is invoked so often that cost of allocation of Task<TResult> is a problem 37
  • 34. Sample implementation of ValueTask usage ValueTask<T> SampleUsage() { if (IsFastSynchronousExecutionPossible()) { return ExecuteSynchronous(); // INLINEABLE!!! } return new ValueTask<T>(ExecuteAsync()); } T ExecuteSynchronous() { } Task<T> ExecuteAsync() { } 38
  • 35. How to consume ValueTask var valueTask = SampleUsage(); // INLINEABLE if(valueTask.IsCompleted) { Use(valueTask.Result); } else { Use(await valueTask.AsTask()); // NO INLINING } 39
  • 36. ValueTask<T>: usage && gains • Sample usage: • Sockets (already used in ASP.NET Core) • File Streams • ADO.NET Data readers • Gains: • Less heap allocations • Method inlining is possible! • Facts • Skynet 146ns for Task, 16ns for ValueTask • Tech Empower (Plaintext) +2.6% 40
  • 39. Pipelines (Channels) • „ high performance zero-copy buffer-pool-managed asynchronous message pipes” – Marc Gravell from Stack Overflow • Pipeline pushes data to you rather than having you pull. • When writing to a pipeline, the caller allocates memory from the pipeline directly. • No new memory is allocated. Only pooled memory buffer is used. 43
  • 40. Simplified Flow Asks for a memory buffer. Writes the data to the buffer. Returns pooled memory. Starts awaiting for the data. Reads the data from buffer. Uses low-allocating Span based apis (parsing etc). Returns the memory to the pool when done. 44
  • 41. System.Runtime.CompilerServices.Unsafe T As<T>(object o) where T : class; void* AsPointer<T>(ref T value); void Copy<T>(void* destination, ref T source); void Copy<T>(ref T destination, void* source); void CopyBlock(void* destination, void* source, uint byteCount); void InitBlock(void* startAddress, byte value, uint byteCount); T Read<T>(void* source); int SizeOf<T>(); void Write<T>(void* destination, T value); 45
  • 42. Supported frameworks 46 Package name .NET Standard .NET Framework Release Nuget feed System.Slices 1.0 4.5 1.2? Clr/fxlab System.Buffers 1.1 4.5.1 1.0 nuget.org System.Threading.Task.Extensions 1.0 4.5 1.0 nuget.org System.Runtime.CompilerServices.Unsafe 1.0 4.5 1.0 corefx
  • 43. Questions? Contact: @SitnikAdam Adam.Sitnik@gmail.com You can find the benchmarks at https://github.com/adamsitnik/DotNetCorePerformance https://github.com/adamsitnik/CSharpSevenBenchmarks