from .quantize import * # noqa: F403 from .observer import * # noqa: F403 from .qconfig import * # noqa: F403 from .fake_quantize import * # noqa: F403 from .fuse_modules import fuse_modules from .stubs import * # noqa: F403 from .quant_type import * # noqa: F403 from .quantize_jit import * # noqa: F403 # from .quantize_fx import * from .quantization_mappings import * # noqa: F403 from .fuser_method_mappings import * # noqa: F403 def default_eval_fn(model, calib_data): r""" Default evaluation function takes a torch.utils.data.Dataset or a list of input Tensors and run the model on the dataset """ for data, target in calib_data: model(data) __all__ = [ 'QuantWrapper', 'QuantStub', 'DeQuantStub', # Top level API for eager mode quantization 'quantize', 'quantize_dynamic', 'quantize_qat', 'prepare', 'convert', 'prepare_qat', # Top level API for graph mode quantization on TorchScript 'quantize_jit', 'quantize_dynamic_jit', '_prepare_ondevice_dynamic_jit', '_convert_ondevice_dynamic_jit', '_quantize_ondevice_dynamic_jit', # Top level API for graph mode quantization on GraphModule(torch.fx) # 'fuse_fx', 'quantize_fx', # TODO: add quantize_dynamic_fx # 'prepare_fx', 'prepare_dynamic_fx', 'convert_fx', 'QuantType', # quantization type # custom module APIs 'get_default_static_quant_module_mappings', 'get_static_quant_module_class', 'get_default_dynamic_quant_module_mappings', 'get_default_qat_module_mappings', 'get_default_qconfig_propagation_list', 'get_default_compare_output_module_list', 'get_quantized_operator', 'get_fuser_method', # Sub functions for `prepare` and `swap_module` 'propagate_qconfig_', 'add_quant_dequant', 'swap_module', 'default_eval_fn', # Observers 'ObserverBase', 'WeightObserver', 'HistogramObserver', 'observer', 'default_observer', 'default_weight_observer', 'default_placeholder_observer', 'default_per_channel_weight_observer', # FakeQuantize (for qat) 'default_fake_quant', 'default_weight_fake_quant', 'default_fixed_qparams_range_neg1to1_fake_quant', 'default_fixed_qparams_range_0to1_fake_quant', 'default_per_channel_weight_fake_quant', 'default_histogram_fake_quant', # QConfig 'QConfig', 'default_qconfig', 'default_dynamic_qconfig', 'float16_dynamic_qconfig', 'float_qparams_weight_only_qconfig', # QAT utilities 'default_qat_qconfig', 'prepare_qat', 'quantize_qat', # module transformations 'fuse_modules', ]