Files
ANSLibs/OpenVINO/python/openvino/tools/ovc/utils.pyi

57 lines
2.5 KiB
Python

# type: ignore
from __future__ import annotations
from collections.abc import Iterable
from importlib import metadata as importlib_metadata
from openvino.tools.ovc.error import Error
from openvino_telemetry.backend import backend_ga4
import importlib as importlib
import logging as log
import numpy
import numpy as np
import numpy.ma.core
import openvino_telemetry as tm
import os as os
import sys as sys
__all__ = ['Error', 'Iterable', 'backend_ga4', 'bool_cast', 'check_values_equal', 'dynamic_dimension', 'get_ir_version', 'get_mo_root_dir', 'import_openvino_tokenizers', 'importlib', 'importlib_metadata', 'log', 'mo_array', 'np', 'np_map_cast', 'os', 'refer_to_faq_msg', 'sys', 'tm', 'validate_batch_in_shape']
def bool_cast(x):
...
def check_values_equal(val1, val2):
...
def get_ir_version():
"""
Default IR version.
:return: the IR version
"""
def get_mo_root_dir():
"""
Return the absolute path to the Model Conversion API root directory (where mo folder is located)
:return: path to the MO root directory
"""
def import_openvino_tokenizers():
...
def mo_array(value: typing.Union[collections.abc.Iterable[typing.Union[float, int]], float, int], dtype = None) -> numpy.ndarray:
"""
This function acts in a same way as np.array except for the case when dtype is not provided
and np.array return fp64 array this function returns fp32 array
"""
def refer_to_faq_msg(question_num: int):
...
def validate_batch_in_shape(shape, layer_name: str):
"""
Raises Error #39 if shape is not valid for setting batch size
Parameters
----------
shape: current shape of layer under validation
layer_name: name of layer under validation
"""
dynamic_dimension: numpy.ma.core.MaskedConstant # value = masked
np_map_cast: dict # value = {bool: <function <lambda> at memory_address>, numpy.int8: <function <lambda> at memory_address>, numpy.int16: <function <lambda> at memory_address>, numpy.int32: <function <lambda> at memory_address>, numpy.int64: <function <lambda> at memory_address>, numpy.uint8: <function <lambda> at memory_address>, numpy.uint16: <function <lambda> at memory_address>, numpy.uint32: <function <lambda> at memory_address>, numpy.uint64: <function <lambda> at memory_address>, numpy.float16: <function <lambda> at memory_address>, numpy.float32: <function <lambda> at memory_address>, numpy.float64: <function <lambda> at memory_address>, str: <function <lambda> at memory_address>}