Intel Software (@IntelSoftware)

Top repositories

1

ue4-parallel

Demo of parallel-for flocking algorithm on Unreal4
C++
63
star
2

AIGamedevToolkit

Foundation layer for AI Gamedev Toolkit which can be built upon by dev community
C#
61
star
3

OpenGLBestPracticesfor6thGenIntelProcessor

Game developers often use OpenGL to handle the rendering chores for graphics-intensive games. OpenGL is an application programming interface for efficiently rendering two- and three-dimensional vector graphics. The code samples are a series from Grahics API developer guide for for 6th generation Intelยฎ Coreโ„ข processor (https://software.intel.com/en-us/articles/6th-gen-graphics-api-dev-guide) that demonstrates how to get the most out of OpenGL 4.4 and higher.
C++
57
star
4

Machine-Learning-using-oneAPI

Machine Learning using oneAPI. Explores Intel Extensions for scikit-learn* and NumPy, SciPy, Pandas powered by oneAPI
HTML
35
star
5

Tutorial-Password-Manager-with-Intel-SGX

This sample code demonstrates a password manager utilizing Intel SGX.
C++
34
star
6

unity-parallel-gpu

C#
24
star
7

Jurassic

Jurassic
Jupyter Notebook
24
star
8

ForestFirePrediction

Forest fire prediction using finetuning on CPU with MODIS and NAIP aerial photos and resnet with acceleration using Intel Extensions for PyTorch
Jupyter Notebook
17
star
9

Intel-Extensions-for-Scikit-learn-Essentials-for-Machine-Learning

Jupyter Notebook
15
star
10

aigamedevtoolkit-starter-demos

Demos intended to be run with AI GameDev Toolkit (separate download)
C#
11
star
11

Python-Loop-Replacement-with-NumPy-and-PyTorch

Python Loop Replacement with NumPy and PyTorch - Fancy Slicing, UFuncs and equivalent, Aggregations, Sorting and more
Jupyter Notebook
11
star
12

unity-parallel-cpu

C#
10
star
13

particle_fountain_vulkan_gpu

C++
9
star
14

PC-Skills-Framework

C#
7
star
15

Numba_DPPY_Essentials

Data Parallel Python
HTML
6
star
16

Introduction_to_Machine_Learning

Introduction to Machine Learning with focus on Scikit-learn* algorithms and how to accelerate those algorithms with a couple of line of code on CPU using Intel Extensions for Scikit-learn
Jupyter Notebook
5
star
17

particle_fountain_vulkan_cpu

C++
5
star
18

NumPy_Optimizations

Exercises to replace loops with NumPy function equivalents to gain 10X to 100sX acceleration over simple minded python loop access
Jupyter Notebook
5
star
19

scikit-learn_essentials

Course demonstrating how to using SYCL context and Intel(R) Extensions for scikit-learn* to optimize selected sklearn algorithms and target them for gpu
Jupyter Notebook
4
star
20

PyTorch_Optimizations

Describe how Intel SIMD and Cache optimization provided by Intel oneMKL-DNN as well as the Intel Extensions for PyTorch can accelerate your pytorch workloads especially prior to training loop or during post processing. Also explore how to use Intel Extensions to PyTorch and how to access Intel GPU for PyTorch
Jupyter Notebook
4
star
21

DL-using-oneAPI

Focus will be on Deep Learning optimizations using oneAPI
Jupyter Notebook
2
star
22

Finetuning

Use Finetuning in PyTorch to derive GIS based model predictors using CPU with few iterations
Jupyter Notebook
2
star
23

Intel_oneAPI_MKL_Training

This is a series of sample exercises demonstrating how to use oneMKL
Jupyter Notebook
1
star
24

Intel_AI_2022_Webinar_Series

1
star
25

sd_ws

Material for the Diffusers Workshop on ITDC
Jupyter Notebook
1
star
26

AI-PC_Notebooks

Jupyter Notebook
1
star
27

SYCL_101

From zero to oneAPI Hero
HTML
1
star
28

GPU-Occupancy-Calculator

Intel GPU Occupancy Calculator for HPC Application Development
1
star