Spox makes it easy to construct ONNX models through clean and idiomatic Python code.
A common application of ONNX is converting models from various frameworks. This requires replicating their runtime behaviour with ONNX operators. In the past this has been a major challenge. Based on our experience, we designed Spox from the ground up to make the process of writing converters (and ONNX models in general) as easy as possible.
Spox's features include:
- Eager operator validation and type inference
- Errors with Python tracebacks to offending operators
- First-class support for subgraphs (control flow)
- A lean and predictable API
Spox releases are available on PyPI:
pip install spox
There is also a package available on conda-forge:
conda install spox
In Spox, you primarily interact with Var
objects - variables - which are placeholders for runtime values.
The initial Var
objects, which represent the arguments of a model (the model inputs in ONNX nomenclature), are created with an explicit type using the argument(Type) -> Var
function. The possible types include Tensor
, Sequence
, and Optional
.
All further Var
objects are created by calling functions which take existing Var
objects as inputs and produce new Var
objects as outputs. Spox determines the Var.type
for these eagerly to allow validation.
Spox provides such functions for all operators in the standard. They are grouped by domain and version in the spox.opset
submodule.
The final onnx.ModelProto
object is built by passing input and output Var
s for the model to the spox.build
function.
Below is an example for defining an ONNX graph which computes the geometric mean of two inputs. Make sure to consult the Spox documentation to find more details and tutorials.
import onnx
from spox import argument, build, Tensor, Var
# Import operators from the ai.onnx domain at version 17
from spox.opset.ai.onnx import v17 as op
def geometric_mean(x: Var, y: Var) -> Var:
# use the standard Sqrt and Mul
return op.sqrt(op.mul(x, y))
# Create typed model inputs. Each tensor is of rank 1
# and has the runtime-determined length 'N'.
a = argument(Tensor(float, ('N',)))
b = argument(Tensor(float, ('N',)))
# Perform operations on `Var`s
c = geometric_mean(a, b)
# Build an `onnx.ModelProto` for the given inputs and outputs.
model: onnx.ModelProto = build(inputs={'a': a, 'b': b}, outputs={'c': c})
Original designed and developed by @jbachurski with the supervision of @cbourjau.