Model Loading¶
forge.frontend¶
The loaders for Forge are light wrappers around TVM's frontend ingestors. Each framework has its own ingestor with varying type-signatures and function parameters that are unique to each framework-ingestor.
Incorrect "Defaults"
The "Defaults" column of each function's parameters in the documentation is incorrect in asserting that all parameters are required. Please reference the type-hints and descriptions for correct details.
PyTorch¶
Automatic ONNX
If the PyTorch loading fails, Forge will automatically attempt an ONNX ingestion.
forge.from_torch(*args, **kwargs) -> IRModule
¶
Load PyTorch model in the form of a scripted PyTorch model and convert into relay. The companion parameters will be handled automatically.
Parameters:
Name | Type | Description | Default |
---|---|---|---|
script_module
|
TopLevelTracedModule object
|
TorchScripted PyTorch graph Note: We currently only support traces (ie: torch.jit.trace(model, input)) |
required |
input_infos
|
List of tuples
|
Can be (input name, input shape) or (input name, (input shape, input types)) Graph level input shape and type list The same input names need to be used for deployment, so choose easy to remember names (such as: input0, input1) e.g. [('input0', (1, 2)), ('input1', (3, 4))] or [('input0', ((1, 2), 'int')), ('input1', ((3, 4), 'float'))] |
required |
custom_convert_map
|
Dictionary of str to Relay op
|
A custom op conversion map in the same format as _convert_map above |
required |
default_type
|
str
|
The default dtype to use when type information is not provided by PyTorch. |
required |
use_parser_friendly_name
|
bool
|
When True, replace '.' with `_' in a original parameter name. The Relay text parser treats a variable name followed by a period as a tuple element access, so a variable name like "dense.weight" cannot be parsed correctly. Use this option when you want to run the AnnotateSpans pass on the imported module. |
required |
keep_quantized_weight
|
bool
|
Return quantized weights and bias, rather than float ones. PyTorch stores quantized weights in a custom format, so we cannot directly access 8 bit weights as Numpy arrays. We use a PyTorch function to unpack quantized weights into float32 arrays and quantization parameters. By default, we return float32 weights and rely on the QNN lowering and the Relay constant folding pass to quantize weights at compile time. In BYOC use cases, however, we cannot apply the constant folding pass on a QNN graph. If keep_quantized_weight is True, we quantize weights in the frontend using a function that is equivalent to qnn.op.quantize(...) operating on Numpy arrays. |
required |
Returns:
Type | Description |
---|---|
IRModule
|
Forge IRModule object |
ONNX¶
forge.from_onnx(*args, **kwargs) -> IRModule
¶
Convert a ONNX model into an equivalent Relay Function.
ONNX graphs are represented as Python Protobuf objects.
The companion parameters will be handled automatically.
However, the input names from onnx graph is vague, mixing inputs and
network weights/bias such as "1", "2"...
For convenience, we rename the real
input names to "input_0",
"input_1"... And renaming parameters to "param_0", "param_1"...
By default, ONNX defines models in terms of dynamic shapes. The ONNX importer retains that dynamism upon import, and the compiler attempts to convert the model into a static shapes at compile time. If this fails, there may still be dynamic operations in the model. Not all TVM kernels currently support dynamic shapes, please file an issue on discuss.tvm.apache.org if you hit an error with dynamic kernels.
Parameters:
Name | Type | Description | Default |
---|---|---|---|
model
|
protobuf object
|
ONNX ModelProto after ONNX v1.1.0 |
required |
shape
|
dict of str to tuple
|
The input shape to the graph |
required |
dtype
|
str or dict of str to str
|
The input types to the graph |
required |
opset
|
int
|
Override to autodetected opset. This can be helpful for some testing. |
required |
freeze_params
|
bool
|
If this parameter is true, the importer will take any provided onnx input values (weights, shapes, etc) and embed them into the relay model as Constants instead of variables. This allows more aggressive optimizations at compile time and helps in making models static if certain inputs represent attributes relay would traditionally consider compile-time constants. |
required |
convert_config
|
Optional[Dict[str, Any]]
|
Default config:
use_nt_batch_matmul : bool = True
True to convert qualified onnx |
required |
export_node_renamed_model_path
|
str
|
Export the node renamed onnx model to the path. Some models do not contain names in their nodes. During the conversion, if names of nodes are empty, new names will be assigned based on their op types. The exported model can be the reference to spans. |
required |
Returns:
Type | Description |
---|---|
IRModule
|
Forge IRModule object |
TensorFlow¶
forge.from_tensorflow(*args, **kwargs) -> IRModule
¶
Load tensorflow graph which is a python tensorflow graph object into relay. The companion parameters will be handled automatically.
Parameters:
Name | Type | Description | Default |
---|---|---|---|
graph
|
GraphDef object
|
Tensorflow GraphDef |
required |
layout
|
target layout to be used (Optional
|
NCHW only supported now to enable NHWC models on GPU. |
required |
shape
|
Dictionary of input dimensions (Optional
|
Graph level input shape dictionary. |
required |
outputs
|
List of output tensor names (Optional
|
if not specified then the last node is assumed as graph output. |
required |
convert_config
|
Optional[Dict[str, Any]]
|
Default config:
use_dense : bool = True
Ture to convert |
required |
Returns:
Type | Description |
---|---|
IRModule
|
Forge IRModule object |
Keras¶
forge.from_keras(*args, **kwargs) -> IRModule
¶
Convert keras model to relay Function.
Parameters:
Name | Type | Description | Default |
---|---|---|---|
model
|
Model or Model
|
The keras model to be converted. |
required |
shape
|
dict of str to int list/tuple
|
Input shapes of the model, optional |
required |
layout
|
str
|
One of 'NCHW' or 'NHWC', indicates how data should be arranged in the output model. Default layout is 'NCHW' as it in general performs better across TVM. |
required |
Returns:
Type | Description |
---|---|
IRModule
|
Forge IRModule object |
TFLite¶
forge.from_tflite(*args, **kwargs) -> IRModule
¶
Convert from tflite model into compatible relay Function.
Parameters:
Name | Type | Description | Default |
---|---|---|---|
model
|
Model or Model
|
tflite.Model or tflite.Model.Model (depending on tflite version) |
required |
shape_dict
|
dict of str to int list/tuple
|
Input shapes of the model. |
required |
dtype_dict
|
dict of str to str
|
Input types of the model. |
required |
Returns:
Type | Description |
---|---|
IRModule
|
Forge IRModule object |