Quickstart | Install | Tutorial | 简体ä¸ć–‡
Jittor is a high-performance deep learning framework based on JIT compiling and meta-operators. The whole framework and meta-operators are compiled just-in-time. A powerful op compiler and tuner are integrated into Jittor. It allowed us to generate high-performance code with specialized for your model. Jittor also contains a wealth of high-performance model libraries, including: image recognition, detection, segmentation, generation, differentiable rendering, geometric learning, reinforcement learning, etc. .
The front-end language is Python. Module Design and Dynamic Graph Execution is used in the front-end, which is the most popular design for deeplearning framework interface. The back-end is implemented by high performance language, such as CUDA,C++.
Related Links:
- Jittor Website
- Jittor Tutorials
- Jittor Models
- Jittor Documents
- Github, GitLink, Gitee
- Jittor Forum
- Awesome Jittor List
- IM: QQ Group(761222083)
The following example shows how to model a two-layer neural network step by step and train from scratch In a few lines of Python code.
import jittor as jt
from jittor import Module
from jittor import nn
import numpy as np
class Model(Module):
def __init__(self):
self.layer1 = nn.Linear(1, 10)
self.relu = nn.Relu()
self.layer2 = nn.Linear(10, 1)
def execute (self,x) :
x = self.layer1(x)
x = self.relu(x)
x = self.layer2(x)
return x
def get_data(n): # generate random data for training test.
for i in range(n):
x = np.random.rand(batch_size, 1)
y = x*x
yield jt.float32(x), jt.float32(y)
learning_rate = 0.1
batch_size = 50
n = 1000
model = Model()
optim = nn.SGD(model.parameters(), learning_rate)
for i,(x,y) in enumerate(get_data(n)):
pred_y = model(x)
dy = pred_y - y
loss = dy * dy
loss_mean = loss.mean()
optim.step(loss_mean)
print(f"step {i}, loss = {loss_mean.data.sum()}")
We provide some jupyter notebooks to help you quick start with Jittor.
- Example: Model definition and training
- Basics: Op, Var
- Meta-operator: Implement your own convolution with Meta-operator
Jittor environment requirements:
OS | CPU | Python | Compiler | (Optional) GPU platform |
---|---|---|---|---|
Linux (Ubuntu, CentOS, Arch, UOS, KylinOS, ...) |
x86 x86_64 ARM loongson |
>= 3.7 | g++ >=5.4 | Nvidia CUDA >= 10.0, cuDNN or AMD ROCm >= 4.0 or Hygon DCU DTK >= 22.04 |
macOS (>= 10.14 Mojave) |
intel Apple Silicon |
>= 3.7 | clang >= 8.0 | - |
Windows 10 & 11 | x86_64 | >= 3.8 | - | Nvidia CUDA >= 10.2 cuDNN |
Jittor offers three ways to install: pip, docker, or manual.
sudo apt install python3.7-dev libomp-dev
python3.7 -m pip install jittor
# or install from github(latest version)
# python3.7 -m pip install git+https://github.com/Jittor/jittor.git
python3.7 -m jittor.test.test_example
Please first install additional dependencies with homebrew.
brew install libomp
Then you can install jittor through pip and run the example.
python3.7 -m pip install jittor
python3.7 -m jittor.test.test_example
Currently jittor only supports CPU on macOS.
# check your python version(>=3.8)
python --version
python -m pip install jittor
# if conda is used
conda install pywin32
In Windows, jittor will automatically detect and install CUDA, please make sure your NVIDIA driver support CUDA 10.2 or above, or you can manually let jittor install CUDA for you:
python -m jittor_utils.install_cuda
We provide a Docker installation method to save you from configuring the environment. The Docker installation method is as follows:
# CPU only(Linux)
docker run -it --network host jittor/jittor
# CPU and CUDA(Linux)
docker run -it --network host --gpus all jittor/jittor-cuda
# CPU only(Mac and Windows)
docker run -it -p 8888:8888 jittor/jittor
We will show how to install Jittor in Ubuntu 16.04 step by step, Other Linux distributions may have similar commands.
# g++
sudo apt install g++ build-essential libomp-dev
# OR clang++-8
wget -O - https://raw.githubusercontent.com/Jittor/jittor/master/script/install_llvm.sh > /tmp/llvm.sh
bash /tmp/llvm.sh 8
Jittor need python version >= 3.7.
sudo apt install python3.7 python3.7-dev
The whole framework is compiled Just-in-time. Let's install jittor via pip
git clone https://github.com/Jittor/jittor.git
sudo pip3.7 install ./jittor
export cc_path="clang++-8"
# if other compiler is used, change cc_path
# export cc_path="g++"
# export cc_path="icc"
# run a simple test
python3.7 -m jittor.test.test_example
if the test is passed, your Jittor is ready.
Using CUDA in Jittor is very simple, Just setup environment value nvcc_path
# replace this var with your nvcc location
export nvcc_path="/usr/local/cuda/bin/nvcc"
# run a simple cuda test
python3.7 -m jittor.test.test_cuda
if the test is passed, your can use Jittor with CUDA by setting use_cuda
flag.
import jittor as jt
jt.flags.use_cuda = 1
To check the integrity of Jittor, you can run Resnet18 training test. Note: 6G GPU RAM is requires in this test.
python3.7 -m jittor.test.test_resnet
if those tests are failed, please report bugs for us, and feel free to contribute ^_^
In the tutorial section, we will briefly explain the basic concept of Jittor.
To train your model with Jittor, there are only three main concepts you need to know:
- Var: basic data type of jittor
- Operations: Jittor'op is simular with numpy
First, let's get started with Var. Var is the basic data type of jittor. Computation process in Jittor is asynchronous for optimization. If you want to access the data, Var.data
can be used for synchronous data accessing.
import jittor as jt
a = jt.float32([1,2,3])
print (a)
print (a.data)
# Output: float32[3,]
# Output: [ 1. 2. 3.]
And we can give the variable a name.
a.name('a')
print(a.name())
# Output: a
Jittor'op is simular with numpy. Let's try some operations. We create Var a
and b
via operation jt.float32
, and add them. Printing those variables shows they have the same shape and dtype.
import jittor as jt
a = jt.float32([1,2,3])
b = jt.float32([4,5,6])
c = a*b
print(a,b,c)
print(type(a), type(b), type(c))
# Output: float32[3,] float32[3,] float32[3,]
# Output: <class 'jittor_core.Var'> <class 'jittor_core.Var'> <class 'jittor_core.Var'>
Beside that, All the operators we used jt.xxx(Var, ...)
have alias Var.xxx(...)
. For example:
c.max() # alias of jt.max(c)
c.add(a) # alias of jt.add(c, a)
c.min(keepdims=True) # alias of jt.min(c, keepdims=True)
if you want to know all the operation which Jittor supports. try help(jt.ops)
. All the operation you found in jt.ops.xxx
, can be used via alias jt.xxx
.
help(jt.ops)
# Output:
# abs(x: core.Var) -> core.Var
# add(x: core.Var, y: core.Var) -> core.Var
# array(data: array) -> core.Var
# binary(x: core.Var, y: core.Var, op: str) -> core.Var
# ......
If you want to know more about Jittor, please check out the notebooks below:
- Quickstart
- Advanced
- Custom Op: write your operator with C++ and CUDA and JIT compile it
- Profiler: Profiling your model
- Jtune: Tool for performance tuning
Those notebooks can be started in your own computer by python3.7 -m jittor.notebook
Jittor is still young. It may contain bugs and issues. Please report them in our bug track system. Contributions are welcome. Besides, if you have any ideas about Jittor, please let us know.
You can help Jittor in the following ways:
- Citing Jittor in your paper
- recommend Jittor to your friends
- Contributing code
- Contributed tutorials and documentation
- File an issue
- Answer jittor related questions
- Light up the stars
- Keep an eye on jittor
- ......
Website: http://cg.cs.tsinghua.edu.cn/jittor/
Email: [email protected]
File an issue: https://github.com/Jittor/jittor/issues
QQ Group: 761222083
Jittor is currently maintained by the Tsinghua CSCG Group. If you are also interested in Jittor and want to improve it, Please join us!
@article{hu2020jittor,
title={Jittor: a novel deep learning framework with meta-operators and unified graph execution},
author={Hu, Shi-Min and Liang, Dun and Yang, Guo-Ye and Yang, Guo-Wei and Zhou, Wen-Yang},
journal={Science China Information Sciences},
volume={63},
number={222103},
pages={1--21},
year={2020}
}
Jittor is Apache 2.0 licensed, as found in the LICENSE.txt file.