ObserverBase¶
- class torch.ao.quantization.observer.ObserverBase(dtype, is_dynamic=False)[source][source]¶
Base observer Module. Any observer implementation should derive from this class.
Concrete observers should follow the same API. In forward, they will update the statistics of the observed Tensor. And they should provide a calculate_qparams function that computes the quantization parameters given the collected statistics.
- Parameters
dtype – dtype argument to the quantize node needed to implement the reference model spec.
is_dynamic (bool) – indicator for whether the observer is a placeholder for dynamic quantization
quantization (or static) –
- classmethod with_args(**kwargs)[source]¶
Wrapper that allows creation of class factories.
This can be useful when there is a need to create classes with the same constructor arguments, but different instances. Can be used in conjunction with _callable_args
Example:
>>> Foo.with_args = classmethod(_with_args) >>> foo_builder = Foo.with_args(a=3, b=4).with_args(answer=42) >>> foo_instance1 = foo_builder() >>> foo_instance2 = foo_builder() >>> id(foo_instance1) == id(foo_instance2) False
- classmethod with_callable_args(**kwargs)[source]¶
Wrapper that allows creation of class factories args that need to be called at construction time.
This can be useful when there is a need to create classes with the same constructor arguments, but different instances and those arguments should only be calculated at construction time. Can be used in conjunction with _with_args
Example:
>>> Foo.with_callable_args = classmethod(_with_callable_args) >>> Foo.with_args = classmethod(_with_args) >>> foo_builder = Foo.with_callable_args(cur_time=get_time_func).with_args(name="dan") >>> foo_instance1 = foo_builder() >>> # wait 50 >>> foo_instance2 = foo_builder() >>> id(foo_instance1.creation_time) == id(foo_instance2.creation_time) False