# Copyright (c) 2023 Amphion. # # This source code is licensed under the MIT license found in the # LICENSE file in the root directory of this source tree. # This code is modified from https://github.com/tensorflow/tensorflow/blob/master/tensorflow/contrib/training/python/training/hparam.py pylint: disable=line-too-long """Hyperparameter values.""" from __future__ import absolute_import from __future__ import division from __future__ import print_function import json import numbers import re import six # Define the regular expression for parsing a single clause of the input # (delimited by commas). A legal clause looks like: # []? = # where is either a single token or [] enclosed list of tokens. # For example: "var[1] = a" or "x = [1,2,3]" PARAM_RE = re.compile( r""" (?P[a-zA-Z][\w\.]*) # variable name: "var" or "x" (\[\s*(?P\d+)\s*\])? # (optional) index: "1" or None \s*=\s* ((?P[^,\[]*) # single value: "a" or None | \[(?P[^\]]*)\]) # list of values: None or "1,2,3" ($|,\s*)""", re.VERBOSE, ) def _parse_fail(name, var_type, value, values): """Helper function for raising a value error for bad assignment.""" raise ValueError( "Could not parse hparam '%s' of type '%s' with value '%s' in %s" % (name, var_type.__name__, value, values) ) def _reuse_fail(name, values): """Helper function for raising a value error for reuse of name.""" raise ValueError("Multiple assignments to variable '%s' in %s" % (name, values)) def _process_scalar_value(name, parse_fn, var_type, m_dict, values, results_dictionary): """Update results_dictionary with a scalar value. Used to update the results_dictionary to be returned by parse_values when encountering a clause with a scalar RHS (e.g. "s=5" or "arr[0]=5".) Mutates results_dictionary. Args: name: Name of variable in assignment ("s" or "arr"). parse_fn: Function for parsing the actual value. var_type: Type of named variable. m_dict: Dictionary constructed from regex parsing. m_dict['val']: RHS value (scalar) m_dict['index']: List index value (or None) values: Full expression being parsed results_dictionary: The dictionary being updated for return by the parsing function. Raises: ValueError: If the name has already been used. """ try: parsed_value = parse_fn(m_dict["val"]) except ValueError: _parse_fail(name, var_type, m_dict["val"], values) # If no index is provided if not m_dict["index"]: if name in results_dictionary: _reuse_fail(name, values) results_dictionary[name] = parsed_value else: if name in results_dictionary: # The name has already been used as a scalar, then it # will be in this dictionary and map to a non-dictionary. if not isinstance(results_dictionary.get(name), dict): _reuse_fail(name, values) else: results_dictionary[name] = {} index = int(m_dict["index"]) # Make sure the index position hasn't already been assigned a value. if index in results_dictionary[name]: _reuse_fail("{}[{}]".format(name, index), values) results_dictionary[name][index] = parsed_value def _process_list_value(name, parse_fn, var_type, m_dict, values, results_dictionary): """Update results_dictionary from a list of values. Used to update results_dictionary to be returned by parse_values when encountering a clause with a list RHS (e.g. "arr=[1,2,3]".) Mutates results_dictionary. Args: name: Name of variable in assignment ("arr"). parse_fn: Function for parsing individual values. var_type: Type of named variable. m_dict: Dictionary constructed from regex parsing. m_dict['val']: RHS value (scalar) values: Full expression being parsed results_dictionary: The dictionary being updated for return by the parsing function. Raises: ValueError: If the name has an index or the values cannot be parsed. """ if m_dict["index"] is not None: raise ValueError("Assignment of a list to a list index.") elements = filter(None, re.split("[ ,]", m_dict["vals"])) # Make sure the name hasn't already been assigned a value if name in results_dictionary: raise _reuse_fail(name, values) try: results_dictionary[name] = [parse_fn(e) for e in elements] except ValueError: _parse_fail(name, var_type, m_dict["vals"], values) def _cast_to_type_if_compatible(name, param_type, value): """Cast hparam to the provided type, if compatible. Args: name: Name of the hparam to be cast. param_type: The type of the hparam. value: The value to be cast, if compatible. Returns: The result of casting `value` to `param_type`. Raises: ValueError: If the type of `value` is not compatible with param_type. * If `param_type` is a string type, but `value` is not. * If `param_type` is a boolean, but `value` is not, or vice versa. * If `param_type` is an integer type, but `value` is not. * If `param_type` is a float type, but `value` is not a numeric type. """ fail_msg = "Could not cast hparam '%s' of type '%s' from value %r" % ( name, param_type, value, ) # Some callers use None, for which we can't do any casting/checking. :( if issubclass(param_type, type(None)): return value # Avoid converting a non-string type to a string. if issubclass(param_type, (six.string_types, six.binary_type)) and not isinstance( value, (six.string_types, six.binary_type) ): raise ValueError(fail_msg) # Avoid converting a number or string type to a boolean or vice versa. if issubclass(param_type, bool) != isinstance(value, bool): raise ValueError(fail_msg) # Avoid converting float to an integer (the reverse is fine). if issubclass(param_type, numbers.Integral) and not isinstance( value, numbers.Integral ): raise ValueError(fail_msg) # Avoid converting a non-numeric type to a numeric type. if issubclass(param_type, numbers.Number) and not isinstance(value, numbers.Number): raise ValueError(fail_msg) return param_type(value) def parse_values(values, type_map, ignore_unknown=False): """Parses hyperparameter values from a string into a python map. `values` is a string containing comma-separated `name=value` pairs. For each pair, the value of the hyperparameter named `name` is set to `value`. If a hyperparameter name appears multiple times in `values`, a ValueError is raised (e.g. 'a=1,a=2', 'a[1]=1,a[1]=2'). If a hyperparameter name in both an index assignment and scalar assignment, a ValueError is raised. (e.g. 'a=[1,2,3],a[0] = 1'). The hyperparameter name may contain '.' symbols, which will result in an attribute name that is only accessible through the getattr and setattr functions. (And must be first explicit added through add_hparam.) WARNING: Use of '.' in your variable names is allowed, but is not well supported and not recommended. The `value` in `name=value` must follows the syntax according to the type of the parameter: * Scalar integer: A Python-parsable integer point value. E.g.: 1, 100, -12. * Scalar float: A Python-parsable floating point value. E.g.: 1.0, -.54e89. * Boolean: Either true or false. * Scalar string: A non-empty sequence of characters, excluding comma, spaces, and square brackets. E.g.: foo, bar_1. * List: A comma separated list of scalar values of the parameter type enclosed in square brackets. E.g.: [1,2,3], [1.0,1e-12], [high,low]. When index assignment is used, the corresponding type_map key should be the list name. E.g. for "arr[1]=0" the type_map must have the key "arr" (not "arr[1]"). Args: values: String. Comma separated list of `name=value` pairs where 'value' must follow the syntax described above. type_map: A dictionary mapping hyperparameter names to types. Note every parameter name in values must be a key in type_map. The values must conform to the types indicated, where a value V is said to conform to a type T if either V has type T, or V is a list of elements of type T. Hence, for a multidimensional parameter 'x' taking float values, 'x=[0.1,0.2]' will parse successfully if type_map['x'] = float. ignore_unknown: Bool. Whether values that are missing a type in type_map should be ignored. If set to True, a ValueError will not be raised for unknown hyperparameter type. Returns: A python map mapping each name to either: * A scalar value. * A list of scalar values. * A dictionary mapping index numbers to scalar values. (e.g. "x=5,L=[1,2],arr[1]=3" results in {'x':5,'L':[1,2],'arr':{1:3}}") Raises: ValueError: If there is a problem with input. * If `values` cannot be parsed. * If a list is assigned to a list index (e.g. 'a[1] = [1,2,3]'). * If the same rvalue is assigned two different values (e.g. 'a=1,a=2', 'a[1]=1,a[1]=2', or 'a=1,a=[1]') """ results_dictionary = {} pos = 0 while pos < len(values): m = PARAM_RE.match(values, pos) if not m: raise ValueError("Malformed hyperparameter value: %s" % values[pos:]) # Check that there is a comma between parameters and move past it. pos = m.end() # Parse the values. m_dict = m.groupdict() name = m_dict["name"] if name not in type_map: if ignore_unknown: continue raise ValueError("Unknown hyperparameter type for %s" % name) type_ = type_map[name] # Set up correct parsing function (depending on whether type_ is a bool) if type_ == bool: def parse_bool(value): if value in ["true", "True"]: return True elif value in ["false", "False"]: return False else: try: return bool(int(value)) except ValueError: _parse_fail(name, type_, value, values) parse = parse_bool else: parse = type_ # If a singe value is provided if m_dict["val"] is not None: _process_scalar_value( name, parse, type_, m_dict, values, results_dictionary ) # If the assigned value is a list: elif m_dict["vals"] is not None: _process_list_value(name, parse, type_, m_dict, values, results_dictionary) else: # Not assigned a list or value _parse_fail(name, type_, "", values) return results_dictionary class HParams(object): """Class to hold a set of hyperparameters as name-value pairs. A `HParams` object holds hyperparameters used to build and train a model, such as the number of hidden units in a neural net layer or the learning rate to use when training. You first create a `HParams` object by specifying the names and values of the hyperparameters. To make them easily accessible the parameter names are added as direct attributes of the class. A typical usage is as follows: ```python # Create a HParams object specifying names and values of the model # hyperparameters: hparams = HParams(learning_rate=0.1, num_hidden_units=100) # The hyperparameter are available as attributes of the HParams object: hparams.learning_rate ==> 0.1 hparams.num_hidden_units ==> 100 ``` Hyperparameters have type, which is inferred from the type of their value passed at construction type. The currently supported types are: integer, float, boolean, string, and list of integer, float, boolean, or string. You can override hyperparameter values by calling the [`parse()`](#HParams.parse) method, passing a string of comma separated `name=value` pairs. This is intended to make it possible to override any hyperparameter values from a single command-line flag to which the user passes 'hyper-param=value' pairs. It avoids having to define one flag for each hyperparameter. The syntax expected for each value depends on the type of the parameter. See `parse()` for a description of the syntax. Example: ```python # Define a command line flag to pass name=value pairs. # For example using argparse: import argparse parser = argparse.ArgumentParser(description='Train my model.') parser.add_argument('--hparams', type=str, help='Comma separated list of "name=value" pairs.') args = parser.parse_args() ... def my_program(): # Create a HParams object specifying the names and values of the # model hyperparameters: hparams = tf.HParams(learning_rate=0.1, num_hidden_units=100, activations=['relu', 'tanh']) # Override hyperparameters values by parsing the command line hparams.parse(args.hparams) # If the user passed `--hparams=learning_rate=0.3` on the command line # then 'hparams' has the following attributes: hparams.learning_rate ==> 0.3 hparams.num_hidden_units ==> 100 hparams.activations ==> ['relu', 'tanh'] # If the hyperparameters are in json format use parse_json: hparams.parse_json('{"learning_rate": 0.3, "activations": "relu"}') ``` """ _HAS_DYNAMIC_ATTRIBUTES = True # Required for pytype checks. def __init__(self, model_structure=None, **kwargs): """Create an instance of `HParams` from keyword arguments. The keyword arguments specify name-values pairs for the hyperparameters. The parameter types are inferred from the type of the values passed. The parameter names are added as attributes of `HParams` object, so they can be accessed directly with the dot notation `hparams._name_`. Example: ```python # Define 3 hyperparameters: 'learning_rate' is a float parameter, # 'num_hidden_units' an integer parameter, and 'activation' a string # parameter. hparams = tf.HParams( learning_rate=0.1, num_hidden_units=100, activation='relu') hparams.activation ==> 'relu' ``` Note that a few names are reserved and cannot be used as hyperparameter names. If you use one of the reserved name the constructor raises a `ValueError`. Args: model_structure: An instance of ModelStructure, defining the feature crosses to be used in the Trial. **kwargs: Key-value pairs where the key is the hyperparameter name and the value is the value for the parameter. Raises: ValueError: If both `hparam_def` and initialization values are provided, or if one of the arguments is invalid. """ # Register the hyperparameters and their type in _hparam_types. # This simplifies the implementation of parse(). # _hparam_types maps the parameter name to a tuple (type, bool). # The type value is the type of the parameter for scalar hyperparameters, # or the type of the list elements for multidimensional hyperparameters. # The bool value is True if the value is a list, False otherwise. self._hparam_types = {} self._model_structure = model_structure for name, value in six.iteritems(kwargs): self.add_hparam(name, value) def add_hparam(self, name, value): """Adds {name, value} pair to hyperparameters. Args: name: Name of the hyperparameter. value: Value of the hyperparameter. Can be one of the following types: int, float, string, int list, float list, or string list. Raises: ValueError: if one of the arguments is invalid. """ # Keys in kwargs are unique, but 'name' could the name of a pre-existing # attribute of this object. In that case we refuse to use it as a # hyperparameter name. if getattr(self, name, None) is not None: raise ValueError("Hyperparameter name is reserved: %s" % name) if isinstance(value, (list, tuple)): if not value: raise ValueError( "Multi-valued hyperparameters cannot be empty: %s" % name ) self._hparam_types[name] = (type(value[0]), True) else: self._hparam_types[name] = (type(value), False) setattr(self, name, value) def set_hparam(self, name, value): """Set the value of an existing hyperparameter. This function verifies that the type of the value matches the type of the existing hyperparameter. Args: name: Name of the hyperparameter. value: New value of the hyperparameter. Raises: KeyError: If the hyperparameter doesn't exist. ValueError: If there is a type mismatch. """ param_type, is_list = self._hparam_types[name] if isinstance(value, list): if not is_list: raise ValueError( "Must not pass a list for single-valued parameter: %s" % name ) setattr( self, name, [_cast_to_type_if_compatible(name, param_type, v) for v in value], ) else: if is_list: raise ValueError( "Must pass a list for multi-valued parameter: %s." % name ) setattr(self, name, _cast_to_type_if_compatible(name, param_type, value)) def del_hparam(self, name): """Removes the hyperparameter with key 'name'. Does nothing if it isn't present. Args: name: Name of the hyperparameter. """ if hasattr(self, name): delattr(self, name) del self._hparam_types[name] def parse(self, values): """Override existing hyperparameter values, parsing new values from a string. See parse_values for more detail on the allowed format for values. Args: values: String. Comma separated list of `name=value` pairs where 'value' must follow the syntax described above. Returns: The `HParams` instance. Raises: ValueError: If `values` cannot be parsed or a hyperparameter in `values` doesn't exist. """ type_map = {} for name, t in self._hparam_types.items(): param_type, _ = t type_map[name] = param_type values_map = parse_values(values, type_map) return self.override_from_dict(values_map) def override_from_dict(self, values_dict): """Override existing hyperparameter values, parsing new values from a dictionary. Args: values_dict: Dictionary of name:value pairs. Returns: The `HParams` instance. Raises: KeyError: If a hyperparameter in `values_dict` doesn't exist. ValueError: If `values_dict` cannot be parsed. """ for name, value in values_dict.items(): self.set_hparam(name, value) return self def set_model_structure(self, model_structure): self._model_structure = model_structure def get_model_structure(self): return self._model_structure def to_json(self, indent=None, separators=None, sort_keys=False): """Serializes the hyperparameters into JSON. Args: indent: If a non-negative integer, JSON array elements and object members will be pretty-printed with that indent level. An indent level of 0, or negative, will only insert newlines. `None` (the default) selects the most compact representation. separators: Optional `(item_separator, key_separator)` tuple. Default is `(', ', ': ')`. sort_keys: If `True`, the output dictionaries will be sorted by key. Returns: A JSON string. """ def remove_callables(x): """Omit callable elements from input with arbitrary nesting.""" if isinstance(x, dict): return { k: remove_callables(v) for k, v in six.iteritems(x) if not callable(v) } elif isinstance(x, list): return [remove_callables(i) for i in x if not callable(i)] return x return json.dumps( remove_callables(self.values()), indent=indent, separators=separators, sort_keys=sort_keys, ) def parse_json(self, values_json): """Override existing hyperparameter values, parsing new values from a json object. Args: values_json: String containing a json object of name:value pairs. Returns: The `HParams` instance. Raises: KeyError: If a hyperparameter in `values_json` doesn't exist. ValueError: If `values_json` cannot be parsed. """ values_map = json.loads(values_json) return self.override_from_dict(values_map) def values(self): """Return the hyperparameter values as a Python dictionary. Returns: A dictionary with hyperparameter names as keys. The values are the hyperparameter values. """ return {n: getattr(self, n) for n in self._hparam_types.keys()} def get(self, key, default=None): """Returns the value of `key` if it exists, else `default`.""" if key in self._hparam_types: # Ensure that default is compatible with the parameter type. if default is not None: param_type, is_param_list = self._hparam_types[key] type_str = "list<%s>" % param_type if is_param_list else str(param_type) fail_msg = ( "Hparam '%s' of type '%s' is incompatible with " "default=%s" % (key, type_str, default) ) is_default_list = isinstance(default, list) if is_param_list != is_default_list: raise ValueError(fail_msg) try: if is_default_list: for value in default: _cast_to_type_if_compatible(key, param_type, value) else: _cast_to_type_if_compatible(key, param_type, default) except ValueError as e: raise ValueError("%s. %s" % (fail_msg, e)) return getattr(self, key) return default def __contains__(self, key): return key in self._hparam_types def __str__(self): return str(sorted(self.values().items())) def __repr__(self): return "%s(%s)" % (type(self).__name__, self.__str__()) @staticmethod def _get_kind_name(param_type, is_list): """Returns the field name given parameter type and is_list. Args: param_type: Data type of the hparam. is_list: Whether this is a list. Returns: A string representation of the field name. Raises: ValueError: If parameter type is not recognized. """ if issubclass(param_type, bool): # This check must happen before issubclass(param_type, six.integer_types), # since Python considers bool to be a subclass of int. typename = "bool" elif issubclass(param_type, six.integer_types): # Setting 'int' and 'long' types to be 'int64' to ensure the type is # compatible with both Python2 and Python3. typename = "int64" elif issubclass(param_type, (six.string_types, six.binary_type)): # Setting 'string' and 'bytes' types to be 'bytes' to ensure the type is # compatible with both Python2 and Python3. typename = "bytes" elif issubclass(param_type, float): typename = "float" else: raise ValueError("Unsupported parameter type: %s" % str(param_type)) suffix = "list" if is_list else "value" return "_".join([typename, suffix])