Uncategorized Modules

nni.common.serializer

class nni.common.serializer.Traceable[源代码]

A traceable object have copy and dict. Copy and mutate are used to copy the object for further mutations. Dict returns a TraceDictType to enable serialization.

get()[源代码]

Get the original object. Usually used together with trace_copy.

property trace_args: List[Any]

List of positional arguments passed to symbol. Usually empty if kw_only is true, in which case all the positional arguments are converted into keyword arguments.

trace_copy()[源代码]

Perform a shallow copy. NOTE: NONE of the attributes will be preserved. This is the one that should be used when you want to "mutate" a serializable object.

property trace_kwargs: Dict[str, Any]

Dict of keyword arguments.

property trace_symbol: Any

Symbol object. Could be a class or a function. get_hybrid_cls_or_func_name and import_cls_or_func_from_hybrid_name is a pair to convert the symbol into a string and convert the string back to symbol.

class nni.common.serializer.Translatable[源代码]

Inherit this class and implement translate when the wrapped class needs a different parameter from the wrapper class in its init function.

nni.common.serializer.dump(obj, fp=None, *, use_trace=True, pickle_size_limit=4096, allow_nan=True, **json_tricks_kwargs)[源代码]

Convert a nested data structure to a json string. Save to file if fp is specified. Use json-tricks as main backend. For unhandled cases in json-tricks, use cloudpickle. The serializer is not designed for long-term storage use, but rather to copy data between processes. The format is also subject to change between NNI releases.

参数
  • obj (any) -- The object to dump.

  • fp (file handler or path) -- File to write to. Keep it none if you want to dump a string.

  • pickle_size_limit (int) -- This is set to avoid too long serialization result. Set to -1 to disable size check.

  • allow_nan (bool) -- Whether to allow nan to be serialized. Different from default value in json-tricks, our default value is true.

  • json_tricks_kwargs (dict) -- Other keyword arguments passed to json tricks (backend), e.g., indent=2.

返回

Normally str. Sometimes bytes (if compressed).

返回类型

str or bytes

nni.common.serializer.is_traceable(obj)[源代码]

Check whether an object is a traceable instance or type.

Note that an object is traceable only means that it implements the "Traceable" interface, and the properties have been implemented. It doesn't necessary mean that its type is wrapped with trace, because the properties could be added after the instance has been created.

nni.common.serializer.is_wrapped_with_trace(cls_or_func)[源代码]

Check whether a function or class is already wrapped with @nni.trace. If a class or function is already wrapped with trace, then the created object must be "traceable".

nni.common.serializer.load(string=None, *, fp=None, ignore_comments=True, **json_tricks_kwargs)[源代码]

Load the string or from file, and convert it to a complex data structure. At least one of string or fp has to be not none.

参数
  • string (str) -- JSON string to parse. Can be set to none if fp is used.

  • fp (str) -- File path to load JSON from. Can be set to none if string is used.

  • ignore_comments (bool) -- Remove comments (starting with # or //). Default is true.

返回

The loaded object.

返回类型

any

nni.common.serializer.trace(cls_or_func=None, *, kw_only=True, inheritable=False)[源代码]

Annotate a function or a class if you want to preserve where it comes from. This is usually used in the following scenarios:

  1. Care more about execution configuration rather than results, which is usually the case in AutoML. For example, you want to mutate the parameters of a function.

  2. Repeat execution is not an issue (e.g., reproducible, execution is fast without side effects).

When a class/function is annotated, all the instances/calls will return a object as it normally will. Although the object might act like a normal object, it's actually a different object with NNI-specific properties. One exception is that if your function returns None, it will return an empty traceable object instead, which should raise your attention when you want to check whether the None is None.

When parameters of functions are received, it is first stored, and then a shallow copy will be passed to wrapped function/class. This is to prevent mutable objects gets modified in the wrapped function/class. When the function finished execution, we also record extra information about where this object comes from. That's why it's called "trace". When call nni.dump, that information will be used, by default.

If kw_only is true, try to convert all parameters into kwargs type. This is done by inspecting the argument list and types. This can be useful to extract semantics, but can be tricky in some corner cases. Therefore, in some cases, some positional arguments will still be kept.

If inheritable is true, the trace information from superclass will also be available in subclass. This however, will make the subclass un-trace-able. Note that this argument has no effect when tracing functions.

警告

Generators will be first expanded into a list, and the resulting list will be further passed into the wrapped function/class. This might hang when generators produce an infinite sequence. We might introduce an API to control this behavior in future.

Example:

@nni.trace
def foo(bar):
    pass

nni.typehint

Types for static checking.

nni.typehint.Parameters

Return type of nni.get_next_parameter().

For built-in tuners, this is a dict whose content is defined by search space.

Customized tuners do not need to follow the constraint and can use anything serializable.

Dict[str, Any]的别名

nni.typehint.SearchSpace

Type of experiment.config.search_space.

For built-in tuners, the format is detailed in Search Space.

Customized tuners do not need to follow the constraint and can use anything serializable, except None.

Dict[str, nni.typehint._ParameterSearchSpace]的别名

nni.typehint.TrialMetric

Type of the metrics sent to nni.report_final_result() and nni.report_intermediate_result().

For built-in tuners it must be a number (float, int, numpy.float32, etc).

Customized tuners do not need to follow this constraint and can use anything serializable.