Open main menu

CDOT Wiki β

DPS921/Intel Advisor

Intel Advisor

Intel Advisor is a design and analysis tool for optimizing performance. This is done by using the Advisor tools that will help to analyze and improve threading, vectorization, and memory use within the application.Advisor supports C, C++, Fortran, Python, and OpenMP. The Tools highlighted in this wiki page are the survey analysis, dependencies analysis, roof-line analysis, and memory access pattern analysis. Survey Analysis will identify points in your code where vectorization or parallelization is possible and improvement to make the execution faster. Dependencies Analysis will identify data Dependencies in your code. Roofline Analysis will find performance headroom against hardware limitations and get insights for an effective optimization roadmap. Memory Access Pattern Analysis can check for various memory issues, such as non-contiguous memory accesses and unit strides.

Group Members

saketepe

Anojan Sothilingam

Survey Analysis

A Survey analysis will create a Survey Report that outlines instances:

• Where vectorization or parallelization will be most effective

• Describe if vectorized loops are beneficial or not

• Un-vectorized loops and explain why they have been Un-vectorized

• Provide general performance issue

How to set up a Survey Analysis

Microsoft Visual Studio Integration

1. From the Tools menu, choose Intel Advisor > Start Survey Analysis

 

Intel Advisor GUI

1. Select new project

 

2. Enter the project name and select Create Project

 

3. Find and Select the executable file of your program and press OK

 

4. Select the collect button below Survey Target

 

 

Code Example

//==============================================================
//
// SAMPLE SOURCE CODE - SUBJECT TO THE TERMS OF SAMPLE CODE LICENSE AGREEMENT,
// http://software.intel.com/en-us/articles/intel-sample-source-code-license-agreement/
//
// Copyright 2017 Intel Corporation
//
// THIS FILE IS PROVIDED "AS IS" WITH NO WARRANTIES, EXPRESS OR IMPLIED, INCLUDING BUT
// NOT LIMITED TO ANY IMPLIED WARRANTY OF MERCHANTABILITY, FITNESS FOR A PARTICULAR
// PURPOSE, NON-INFRINGEMENT OF INTELLECTUAL PROPERTY RIGHTS.
//
// =============================================================

#include <iostream>			
#include <random>
#include <vector>
using namespace std;

#define REPEAT 3000
#define SIZE 70000

// Despite the name, the vector data type has nothing to do with SIMD vectors. 
// To avoid confusion, I'm renaming the data type to "dynamic_array".
typedef vector<double> dynamic_array;

int dummy = 0;

double doublesArray[SIZE * 2];
float floatsArray[SIZE];
dynamic_array firstDynamic(SIZE);
dynamic_array secondDynamic(SIZE);

int main()
{
	for (int i = 0; i < SIZE; i++)
	{
		firstDynamic[i] = doublesArray[i] = (rand() % 5000) + 1.0;
		secondDynamic[i] = doublesArray[i + SIZE] = (rand() % 5000) + 1.0;
		floatsArray[i] = (rand() % 5000) + 1.0f;
	}
	/****************** Normal Unit Stride Loop ******************/
	cout << "Normal Unit Stride Loop: ";
	for (int r = 0; r < REPEAT; r++)
	{
		for (int i = 0; i < SIZE; i++)
		{
			doublesArray[i] = i * 42.0 + 7;
		}
	}
	cout << "DONE\n";
	/****************** Vector Length Demo Loop ******************/
	cout << "Vector Length Demo Loop: ";
	for (int r = 0; r < REPEAT; r++)
	{
		for (int i = 0; i < SIZE; i++)
		{
			floatsArray[i] = i * 42.0f + 7;
		}
	}
	cout << "DONE\n";
	/******************** Constant Stride Loop *******************/
	cout << "Constant Stride Loop:    ";
	for (int r = 0; r < REPEAT; r++)
	{
		dummy++; // Prevents interchange. Too fast to contribute to loop time.
		for (int i = 0; i < SIZE; i++)
		{
			doublesArray[i * 2] = i * 42.0 + 7;
		}
	}
	cout << "DONE\n";
	/******************** Variable Stride Loop *******************/
	cout << "Variable Stride Loop:    ";
	for (int r = 0; r < REPEAT; r++)
	{
		for (int i = 0; i < SIZE; i++)
		{
			doublesArray[i + (i / 2)] = i * 42.0 + 7;
		}
	}
	cout << "DONE\n";
	/******************** True Dependency Loop *******************/
	cout << "True Dependency Loop:    ";
	for (int r = 0; r < REPEAT; r++)
	{
		for (int i = 1; i < SIZE; i++)
		{
			doublesArray[i] = i * 42.0 + doublesArray[i - 1];
		}
	}
	cout << "DONE\n";
	/****************** Assumed Dependency Loop ******************/
	cout << "Assumed Dependency Loop: ";
	for (int r = 0; r < REPEAT; r++)
	{
		for (int i = 0; i < SIZE; i++)
		{
			firstDynamic[i] = i * 42.0 + secondDynamic[i];
		}
	}
	cout << "DONE\n";
	return EXIT_SUCCESS;
}

Dependencies Analysis

The compiler will be unable to vectorize loops if there are potential data dependencies. The dependencies analysis will create a dependencies report that shows where possible data dependencies exist. The report will also have details about the type of dependency and how to solve the dependency.

How to set up a Dependencies Analysis

1.

 

 

Roof-line Analysis

The roofline tool creates a tool line model, to represent an application's performance in relation to hardware limitations, including memory bandwidth and computational peaks. To measure performance we use 2 axes with GFLOPs (Giga Floating point operations per second) on the y-axis, and AI(Arithmetic Intensity(FLOPs/Byte)) on the x-axis both in log scale, with this we can begin to build our roof-line. Now for any given machine, its CPU can only perform so many FLOPs so we can plot the CPU cap on our chart to represent this. Like the CPU a memory system can only supply so many gigabytes, we can represent this by a diagonal line(N GB/s * X FLOPs/Byte = Y GFLOPs/s). (pic) This chart represents the machine's hardware limitation, and it's best performance at a given AI

Every function, or loop, will have specific AI, when ran we can record its GFLOPs, Because we know Its AI won't change and any optimization we do will only change the performance, this is useful when we want to measure the performance of a given change or optimization.


 

How to set up a Roof-line Analysis

Microsoft Visual Studio Integration

1. select project

 

2. Go to Intel advisor and select roof-line tool

 

3. let roof-line tool analyze data

 

4. review data

 

Memory Access Pattern Analysis

We can use the MAP analysis tool to check for various memory issues, such as non-contiguous memory accesses and unit strides. Also we can get information about types of memory access in selected loops/functions, how you traverse your data, and how it affects your vector efficiency and cache bandwidth usage.

How to set up Memory Access Pattern Analysis

step 1 run roof-line tools

 

Step 2 run Map tool

 

Step 3 Review data

 

/* Copyright (C) 2010-2017 Intel Corporation. All Rights Reserved.
 *
 * The source code, information and material ("Material") 
 * contained herein is owned by Intel Corporation or its 
 * suppliers or licensors, and title to such Material remains 
 * with Intel Corporation or its suppliers or licensors.
 * The Material contains proprietary information of Intel or 
 * its suppliers and licensors. The Material is protected by 
 * worldwide copyright laws and treaty provisions.
 * No part of the Material may be used, copied, reproduced, 
 * modified, published, uploaded, posted, transmitted, distributed 
 * or disclosed in any way without Intel's prior express written 
 * permission. No license under any patent, copyright or other
 * intellectual property rights in the Material is granted to or 
 * conferred upon you, either expressly, by implication, inducement, 
 * estoppel or otherwise. Any license under such intellectual 
 * property rights must be express and approved by Intel in writing.
 * Third Party trademarks are the property of their respective owners.
 * Unless otherwise agreed by Intel in writing, you may not remove 
 * or alter this notice or any other notice embedded in Materials 
 * by Intel or Intel's suppliers or licensors in any way. 
 
 * This file is intended for use with the "Memory Access 101" tutorial.
 */
 
#include <iostream>				
#include <time.h>
using namespace std;

const int LOOPS = 1500000;
const int SIZE = 14992;
const int STEPS = SIZE / 2;

float floatArray[SIZE];
double doubleArray[SIZE];

time_t start;
time_t finish;

int main()
{
	// Contiguous data access, same number of iterations as the noncontiguous.
	start = time(NULL);
	#pragma nounroll
	for (float i = 0; i < LOOPS; i++)
	{
		#pragma nounroll
		for (int j = 0; j < STEPS; j += 1)
		{
			floatArray[j] = i;
		}
	}
	finish = time(NULL);
	cout << "Contiguous Float:    " << finish - start << "\n";

	// Contiguous data access on doubles, so that it should require roughly 
	// the same number of cache line loads as the 2-stride float loop.
	start = time(NULL);
	#pragma nounroll
	for (double i = 0; i < LOOPS; i++)
	{
		#pragma nounroll
		for (int j = 0; j < STEPS; j += 1)
		{
			doubleArray[j] = i;
		}
	}
	finish = time(NULL);
	cout << "Contiguous Double:   " << finish - start << "\n";

	// Stride-2 float. Same number of iterations as the contiguous version,
	// same number of cache line loads as the double loop. Slower than both.
	start = time(NULL);
	#pragma nounroll
	for (float i = 0; i < LOOPS; i++)
	{
		#pragma nounroll
		for (int j = 0; j < STEPS * 2; j += 2)
		{
			floatArray[j] = i;
		}
	}
	finish = time(NULL);
	cout << "Noncontiguous Float: " << finish - start << "\n";

	return EXIT_SUCCESS;
}

Sources