# Python Operator The Python Operator provides the capability to easily invoke any custom Python code within a single node of an ONNX graph using ONNX Runtime. This can be useful for quicker experimentation when a model requires operators that are not officially supported in ONNX and ONNX Runtime, particularly if there is already a Python implementation for the required functionality. This should be used with discretion in production scenarios, and all security or other risks should be considered. ## Design Overview The feature can be found under [onnxruntime/core/language_interop_ops](../onnxruntime/core/language_interop_ops). All Python C API dependent code are compiled into a dynamic linked library named pywrapper. Before calling into Python script, pywrapper will convert onnxruntime tensor(s) to numpy(s), which is converted back when completed.
Here is a chart illustrating the calling sequence:
onnxruntime pywrapper script
| | |
| ------------------------------> | |
| call with tensor(s) | ------------------------------> |
| | call with numpy(s) |
| | | compute
| | <------------------------------ |
| <------------------------------ | return numpys(s) |
| return tensor(s) | |
## How to Use
### Step 1
Build onnxruntime with `--config Release --enable_language_interop_ops --build_shared_lib` and override the existing onnxruntime binary with the latest. Then, copy onnxruntime_pywrapper.dll, libonnxruntime_pywrapper.so, or libonnxruntime_pywrapper.dylib to the path where the onnxruntime binary is located.
**Notes:**
* It is recommended to compile within the Python environment where inferencing will happen. For example, if inferencing will happen in a conda env named myconda1, please compile the binary within that environment as well
* If `--numpy_version=...` is specified, the Python operator will build with that version.
### Step 2
Create an onnx model containing Python operator nodes:
```python
ad1_node = helper.make_node('Add', ['A','B'], ['S'])
mul_node = helper.make_node('Mul', ['C','D'], ['P'])
py1_node = helper.make_node(op_type = 'PyOp', #required, must be 'PyOp'
inputs = ['S','P'], #required
outputs = ['L','M','N'], #required
domain = 'pyopmulti_1', #required, must be unique
input_types = [TensorProto.FLOAT, TensorProto.FLOAT], #required
output_types = [TensorProto.FLOAT, TensorProto.FLOAT, TensorProto.FLOAT], #required
module = 'mymodule', #required
class_name = 'Multi_1', #required
compute = 'compute', #optional, 'compute' by default
W1 = '5', W2 = '7', W3 = '9') #optional, must all be strings
ad2_node = helper.make_node('Add', ['L','M'], ['H'])
py2_node = helper.make_node('PyOp',['H','N','E'],['O','W'], domain = 'pyopmulti_2',
input_types = [TensorProto.FLOAT, TensorProto.FLOAT, TensorProto.FLOAT],
output_types = [TensorProto.FLOAT, TensorProto.FLOAT],
module = 'mymodule', class_name = 'Multi_2')
sub_node = helper.make_node('Sub', ['O','W'], ['F'])
graph = helper.make_graph([ad1_node,mul_node,py1_node,ad2_node,py2_node,sub_node], 'multi_pyop_graph', [A,B,C,D,E], [F])
model = helper.make_model(graph, producer_name = 'pyop_model')
onnx.save(model, './model.onnx')
```
### Step 3
Implement mymodule.py:
```python
class Multi_1:
def __init__(self, W1, W2, W3):
self.W1 = int(W1)
self.W2 = int(W2)
self.W3 = int(W3)
def compute(self, S, P):
ret = S + P
return ret + self.W1, ret + self.W2, ret + self.W3
class Multi_2:
def compute(self, H, N, E):
r1, r2 = H + N, N + E
return r1, r2
```
### Step 4
Copy mymodule.py into Python sys.path, then reference with onnxruntime. On Windows, please set PYTHONHOME beforehand. It should point to directory where the python is installed, such as C:\Python37 or C:\ProgramData\Anaconda3\envs\myconda1 if it is in conda.
## Supported Data Types
* TensorProto.BOOL
* TensorProto.UINT8
* TensorProto.UINT16
* TensorProto.UINT32
* TensorProto.INT16
* TensorProto.INT32
* TensorProto.FLOAT
* TensorProto.DOUBLE
## Limitations
* On Windows, `--config Debug` has known issues. Please build with `--config RelWithDebInfo` if debugging symbols are needed.
* Due to Python C API restrictions, multi-threading is disabled so Python operators will run sequentially.
## Test Coverage
The operator has been tested on multiple platforms, with or without conda:
Platform | Python 3.5 | Python 3.6 | Python 3.7
----------- | ------------| ----------- | -----------
Windows | (conda) passed | (conda) passed | passed
Linux | (conda) passed | (conda) passed | passed
Mac | (conda) passed | (conda) passed | (conda) passed
## Example
Developers could resort to PyOp during model conversion for missing operators:
```python
import os
import numpy as np
from onnx import *
from skl2onnx import convert_sklearn
from skl2onnx.common.data_types import FloatTensorType
from skl2onnx.common.utils import check_input_and_output_numbers
X = np.array([[1, 1], [2, 1], [3, 1.2], [4, 1], [5, 0.8], [6, 1]],dtype=np.single)
nmf = NMF(n_components=2, init='random', random_state=0)
W = np.array(nmf.fit_transform(X), dtype=np.single)
def calculate_sklearn_nmf_output_shapes(operator):
check_input_and_output_numbers(operator, output_count_range=1, input_count_range=1)
operator.outputs[0].type.shape = operator.inputs[0].type.shape
def convert_nmf(scope, operator, container):
ws = [str(w) for w in W.flatten()]
attrs = {'W':'|'.join(ws)}
container.add_node(op_type='PyOp', name='nmf', inputs=['X'], outputs=['variable'],
op_version=10, op_domain='MyDomain', module='mymodule', class_name='MyNmf',
input_types=[TensorProto.FLOAT], output_types=[TensorProto.FLOAT], **attrs)
custom_shape_calculators = {type(nmf): calculate_sklearn_nmf_output_shapes}
custom_conversion_functions = {type(nmf): convert_nmf}
initial_types = [('X', FloatTensorType([6,2]))]
onx = convert_sklearn(nmf, '', initial_types, '', None, custom_conversion_functions, custom_shape_calculators)
with th open("model.onnx", "wb") as f:
f.write(onx.SerializeToString())
```
mymodule.py:
```python
import numpy as np
class MyNmf:
def __init__(self,W):
A = []
for w in W.split('|'):
A.append(float(w))
self.__W = np.array(A,dtype=np.single).reshape(6,2)
def compute(self,X):
return self.__W
```