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#!/usr/bin/env python3
"""
Utilities for analytic description of parameter-dependent model attributes.
This module provides classes and helper functions useful for least-squares
regression and general handling of model functions.
"""
from itertools import chain, combinations
import logging
import numpy as np
import re
from scipy import optimize
from .utils import is_numeric
arg_support_enabled = True
logger = logging.getLogger(__name__)
def powerset(iterable):
"""
Return powerset of `iterable` elements.
Example: `powerset([1, 2])` -> `[(), (1), (2), (1, 2)]`
"""
s = list(iterable)
return chain.from_iterable(combinations(s, r) for r in range(len(s) + 1))
def gplearn_to_function(function_str: str):
"""
Convert gplearn-style function string to Python function.
Takes a function string like "mul(add(X0, X1), X2)" and returns
a Python function implementing the specified behaviour,
e.g. "lambda x, y, z: (x + y) * z".
Supported functions:
add -- x + y
sub -- x - y
mul -- x * y
div -- x / y if |y| > 0.001, otherwise 1
sqrt -- sqrt(|x|)
log -- log(|x|) if |x| > 0.001, otherwise 0
inv -- 1 / x if |x| > 0.001, otherwise 0
"""
eval_globals = {
"add": lambda x, y: x + y,
"sub": lambda x, y: x - y,
"mul": lambda x, y: x * y,
"div": lambda x, y: np.divide(x, y) if np.abs(y) > 0.001 else 1.0,
"sqrt": lambda x: np.sqrt(np.abs(x)),
"log": lambda x: np.log(np.abs(x)) if np.abs(x) > 0.001 else 0.0,
"inv": lambda x: 1.0 / x if np.abs(x) > 0.001 else 0.0,
}
last_arg_index = 0
for i in range(0, 100):
if function_str.find("X{:d}".format(i)) >= 0:
last_arg_index = i
arg_list = []
for i in range(0, last_arg_index + 1):
arg_list.append("X{:d}".format(i))
eval_str = "lambda {}, *whatever: {}".format(",".join(arg_list), function_str)
logger.debug(eval_str)
return eval(eval_str, eval_globals)
class ParamFunction:
"""
A one-dimensional model function, ready for least squares optimization and similar.
Supports validity checks (e.g. if it is undefined for x <= 0) and an
error measure.
"""
def __init__(self, param_function, validation_function, num_vars):
"""
Create function object suitable for regression analysis.
This documentation assumes that 1-dimensional functions
(-> single float as model input) are used. However, n-dimensional
functions (-> list of float as model input) are also supported.
:param param_function: regression function (reg_param, model_param) -> float.
reg_param is a list of regression variable values,
model_param is the model input value (float).
Example: `lambda rp, mp: rp[0] + rp[1] * mp`
:param validation_function: function used to check whether param_function
is defined for a given model_param. Signature:
model_param -> bool
Example: `lambda mp: mp > 0`
:param num_vars: How many regression variables are used by this function,
i.e., the length of param_function's reg_param argument.
"""
self._param_function = param_function
self._validation_function = validation_function
self._num_variables = num_vars
def is_valid(self, arg: float) -> bool:
"""
Check whether the regression function is defined for the given argument.
:param arg: argument (e.g. model parameter) to check for
:returns: True iff the function is defined for `arg`
"""
return self._validation_function(arg)
def eval(self, param: list, arg: float) -> float:
"""
Evaluate regression function.
:param param: regression variable values (list of float)
:param arg: model input (float)
:returns: regression function output (float)
"""
return self._param_function(param, arg)
def error_function(self, P: list, X: float, y: float) -> float:
"""
Calculate model error.
:param P: regression variables as returned by optimization (list of float)
:param X: model input (float)
:param y: expected model output / ground truth for model input (float)
:returns: Deviation between model output and ground truth (float)
"""
return self._param_function(P, X) - y
class NormalizationFunction:
"""
Wrapper for parameter normalization functions used in YAML PTA/DFA models.
"""
def __init__(self, function_str: str):
"""
Create a new normalization function from `function_str`.
:param function_str: Function string. Must use the single argument
`param` and return a float.
"""
self._function_str = function_str
self._function = eval("lambda param: " + function_str)
def eval(self, param_value: float) -> float:
"""
Evaluate the normalization function and return its output.
:param param_value: Parameter value
"""
return self._function(param_value)
class ModelFunction:
def __init__(self, value):
# a model always has a static (median/mean) value. For StaticFunction, it's the only data point.
# For more complex models, it's usede both as fallback in case the model cannot predict the current
# parameter combination, and for use cases requiring static models
self.value = value
# A ModelFunction may track its own accuracy, both of the static value and of the eval() method.
# However, it does not specify how the accuracy was calculated (e.g. which data was used and whether cross-validation was performed)
self.value_error = None
self.function_error = None
def is_predictable(self, param_list):
raise NotImplementedError
def eval(self, param_list):
raise NotImplementedError
def eval_mae(self, param_list):
if self.is_predictable(param_list):
return self.function_error["mae"]
return self.value_error["mae"]
def to_json(self):
ret = {
"value": self.value,
"valueError": self.value_error,
"functionError": self.function_error,
}
return ret
@classmethod
def from_json(cls, data):
if data["type"] == "static":
mf = StaticFunction.from_json(data)
elif data["type"] == "split":
mf = SplitFunction.from_json(data)
elif data["type"] == "analytic":
mf = AnalyticFunction.from_json(data)
else:
raise ValueError("Unknown ModelFunction type: " + data["type"])
if "valueError" in data:
mf.value_error = data["valueError"]
if "functionError" in data:
mf.function_error = data["functionError"]
return mf
@classmethod
def from_json_maybe(cls, json_wrapped: dict, attribute: str):
# Legacy Code for PTA / tests. Do not use.
if type(json_wrapped) is dict and attribute in json_wrapped:
# benchmark data obtained before 2021-03-04 uses {"attr": {"static": 0}}
# benchmark data obtained after 2021-03-04 uses {"attr": {"type": "static", "value": 0}} or {"attr": None}
# from_json expects the latter.
if json_wrapped[attribute] is None:
return None
if (
"static" in json_wrapped[attribute]
and "type" not in json_wrapped[attribute]
):
json_wrapped[attribute]["type"] = "static"
json_wrapped[attribute]["value"] = json_wrapped[attribute]["static"]
json_wrapped[attribute].pop("static")
return cls.from_json(json_wrapped[attribute])
return StaticFunction(0)
class StaticFunction(ModelFunction):
def is_predictable(self, param_list=None):
"""
Return whether the model function can be evaluated on the given parameter values.
For a StaticFunction, this is always the case (i.e., this function always returns true).
"""
return True
def eval(self, param_list=None):
"""
Evaluate model function with specified param/arg values.
Far a Staticfunction, this is just the static value
"""
return self.value
def to_json(self):
ret = super().to_json()
ret.update({"type": "static", "value": self.value})
return ret
@classmethod
def from_json(cls, data):
assert data["type"] == "static"
return cls(data["value"])
def __repr__(self):
return f"StaticFunction({self.value})"
class SplitFunction(ModelFunction):
def __init__(self, value, param_index, child):
super().__init__(value)
self.param_index = param_index
self.child = child
def is_predictable(self, param_list):
"""
Return whether the model function can be evaluated on the given parameter values.
The first value corresponds to the lexically first model parameter, etc.
All parameters must be set, not just the ones this function depends on.
Returns False iff a parameter the function depends on is not numeric
(e.g. None).
"""
param_value = param_list[self.param_index]
if param_value not in self.child:
return False
return self.child[param_value].is_predictable(param_list)
def eval(self, param_list):
param_value = param_list[self.param_index]
return self.child[param_value].eval(param_list)
def to_json(self):
ret = super().to_json()
ret.update(
{
"type": "split",
"value": self.value,
"paramIndex": self.param_index,
"child": dict([[k, v.to_json()] for k, v in self.child.items()]),
}
)
return ret
@classmethod
def from_json(cls, data):
assert data["type"] == "split"
self = cls(data["value"], data["paramIndex"], dict())
for k, v in data["child"].items():
self.child[k] = ModelFunction.from_json(v)
def __repr__(self):
return f"SplitFunction<{self.value}, param_index={self.param_index}>"
class AnalyticFunction(ModelFunction):
"""
A multi-dimensional model function, generated from a string, which can be optimized using regression.
The function describes a single model attribute (e.g. TX duration or send(...) energy)
and how it is influenced by model parameters such as configured bit rate or
packet length.
"""
def __init__(
self,
value,
function_str,
parameters,
num_args=0,
regression_args=None,
fit_by_param=None,
):
"""
Create a new AnalyticFunction object from a function string.
:param function_str: the function.
Refer to regression variables using regression_arg(123),
to parameters using parameter(name),
and to function arguments (if any) using function_arg(123).
Example: "regression_arg(0) + regression_arg(1) * parameter(txbytes)"
:param parameters: list containing the names of all model parameters,
including those not used in function_str, sorted lexically.
Sorting is mandatory, as parameter indexes (and not names) are used internally.
:param num_args: number of local function arguments, if any. Set to 0 if
the model attribute does not belong to a function or if function
arguments are not included in the model.
:param regression_args: Initial regression variable values,
both for function usage and least squares optimization.
If unset, defaults to [1, 1, 1, ...]
"""
super().__init__(value)
self._parameter_names = parameters
self._num_args = num_args
self.model_function = function_str
rawfunction = function_str
self._dependson = [False] * (len(parameters) + num_args)
self.fit_success = False
self.fit_by_param = fit_by_param
if type(function_str) == str:
num_vars_re = re.compile(r"regression_arg\(([0-9]+)\)")
num_vars = max(map(int, num_vars_re.findall(function_str))) + 1
for i in range(len(parameters)):
if rawfunction.find("parameter({})".format(parameters[i])) >= 0:
self._dependson[i] = True
rawfunction = rawfunction.replace(
"parameter({})".format(parameters[i]),
"model_param[{:d}]".format(i),
)
for i in range(0, num_args):
if rawfunction.find("function_arg({:d})".format(i)) >= 0:
self._dependson[len(parameters) + i] = True
rawfunction = rawfunction.replace(
"function_arg({:d})".format(i),
"model_param[{:d}]".format(len(parameters) + i),
)
for i in range(num_vars):
rawfunction = rawfunction.replace(
"regression_arg({:d})".format(i), "reg_param[{:d}]".format(i)
)
self._function_str = rawfunction
self._function = eval("lambda reg_param, model_param: " + rawfunction)
else:
self._function_str = "raise ValueError"
self._function = function_str
if regression_args:
self.model_args = regression_args.copy()
self._fit_success = True
elif type(function_str) == str:
self.model_args = list(np.ones((num_vars)))
else:
self.model_args = []
def get_fit_data(self, by_param):
"""
Return training data suitable for scipy.optimize.least_squares.
:param by_param: measurement data, partitioned by parameter/arg values.
by_param[*] must be a list or 1-D NumPy array containing the ground truth.
The parameter values (dict keys) must be numeric for
all parameters this function depends on -- otherwise, the
corresponding data will be left out. Parameter values must be
ordered according to the order of parameter names used in
the ParamFunction constructor. Argument values (if any) always come after
parameters, in the order of their index in the function signature.
:return: (X, Y, num_valid, num_total):
X -- 2-D NumPy array of parameter combinations (model input).
First dimension is the parameter/argument index, the second
dimension contains its values.
Example: X[0] contains the first parameter's values.
Y -- 1-D NumPy array of training data (desired model output).
num_valid -- amount of distinct parameter values suitable for optimization
num_total -- total amount of distinct parameter values
"""
dimension = len(self._parameter_names) + self._num_args
X = [[] for i in range(dimension)]
Y = []
num_valid = 0
num_total = 0
for key, val in by_param.items():
if len(key) == dimension:
valid = True
num_total += 1
for i in range(dimension):
if self._dependson[i] and not is_numeric(key[i]):
valid = False
if valid:
num_valid += 1
Y.extend(val)
for i in range(dimension):
if self._dependson[i]:
X[i].extend([float(key[i])] * len(val))
else:
X[i].extend([np.nan] * len(val))
else:
logger.warning(
"Invalid parameter key length while gathering fit data. is {}, want {}.".format(
len(key), dimension
)
)
X = np.array(X)
Y = np.array(Y)
return X, Y, num_valid, num_total
def fit(self, by_param):
"""
Fit the function on measurements via least squares regression.
:param by_param: measurement data, partitioned by parameter/arg values
The ground truth is read from by_param[*],
which must be a list or 1-D NumPy array. Parameter values must be
ordered according to the parameter names in the constructor. If
argument values are present, they must come after parameter values
in the order of their appearance in the function signature.
"""
X, Y, num_valid, num_total = self.get_fit_data(by_param)
if num_valid > 2:
error_function = lambda P, X, y: self._function(P, X) - y
try:
res = optimize.least_squares(
error_function, self.model_args, args=(X, Y), xtol=2e-15
)
except ValueError as err:
logger.warning(f"Fit failed: {err} (function: {self.model_function})")
return
if res.status > 0:
self.model_args = res.x
self.fit_success = True
else:
logger.warning(
f"Fit failed: {res.message} (function: {self.model_function})"
)
else:
logger.warning("Insufficient amount of valid parameter keys, cannot fit")
def is_predictable(self, param_list):
"""
Return whether the model function can be evaluated on the given parameter values.
The first value corresponds to the lexically first model parameter, etc.
All parameters must be set, not just the ones this function depends on.
Returns False iff a parameter the function depends on is not numeric
(e.g. None).
"""
for i, param in enumerate(param_list):
if self._dependson[i] and not is_numeric(param):
return False
return True
def eval(self, param_list):
"""
Evaluate model function with specified param/arg values.
:param param_list: parameter values (list of float). First item
corresponds to lexically first parameter, etc.
:param arg_list: argument values (list of float), if arguments are used.
"""
return self._function(self.model_args, param_list)
def to_json(self):
ret = super().to_json()
ret.update(
{
"type": "analytic",
"value": self.value,
"functionStr": self.model_function,
"argCount": self._num_args,
"parameterNames": self._parameter_names,
"regressionModel": list(self.model_args),
}
)
return ret
@classmethod
def from_json(cls, data):
assert data["type"] == "analytic"
return cls(
data["value"],
data["functionStr"],
data["parameterNames"],
data["argCount"],
data["regressionModel"],
)
def __repr__(self):
return f"AnalyticFunction<{self.value}, {self.model_function}>"
class analytic:
"""
Utilities for analytic description of parameter-dependent model attributes and regression analysis.
provided functions:
functions -- retrieve pre-defined set of regression function candidates
function_powerset -- combine several per-parameter functions into a single AnalyticFunction
"""
_num0_8 = np.vectorize(lambda x: 8 - bin(int(x)).count("1"))
_num0_16 = np.vectorize(lambda x: 16 - bin(int(x)).count("1"))
_num1 = np.vectorize(lambda x: bin(int(x)).count("1"))
_safe_log = np.vectorize(lambda x: np.log(np.abs(x)) if np.abs(x) > 0.001 else 1.0)
_safe_inv = np.vectorize(lambda x: 1 / x if np.abs(x) > 0.001 else 1.0)
_safe_sqrt = np.vectorize(lambda x: np.sqrt(np.abs(x)))
_function_map = {
"linear": lambda x: x,
"logarithmic": np.log,
"logarithmic1": lambda x: np.log(x + 1),
"exponential": np.exp,
"square": lambda x: x ** 2,
"inverse": lambda x: 1 / x,
"sqrt": lambda x: np.sqrt(np.abs(x)),
"num0_8": _num0_8,
"num0_16": _num0_16,
"num1": _num1,
"safe_log": lambda x: np.log(np.abs(x)) if np.abs(x) > 0.001 else 1.0,
"safe_inv": lambda x: 1 / x if np.abs(x) > 0.001 else 1.0,
"safe_sqrt": lambda x: np.sqrt(np.abs(x)),
}
@staticmethod
def functions(safe_functions_enabled=False):
"""
Retrieve pre-defined set of regression function candidates.
:param safe_functions_enabled: Include "safe" variants of functions with
limited argument range, e.g. a safe
inverse which returns 1 when dividing by 0.
Returns a dict of functions which are typical for energy/timing
behaviour of embedded hardware, e.g. linear, exponential or inverse
dependency on a configuration setting/runtime variable.
Each function is a ParamFunction object. In most cases, two regression
variables are expected.
"""
functions = {
"linear": ParamFunction(
lambda reg_param, model_param: reg_param[0]
+ reg_param[1] * model_param,
lambda model_param: True,
2,
),
"logarithmic": ParamFunction(
lambda reg_param, model_param: reg_param[0]
+ reg_param[1] * np.log(model_param),
lambda model_param: model_param > 0,
2,
),
"logarithmic1": ParamFunction(
lambda reg_param, model_param: reg_param[0]
+ reg_param[1] * np.log(model_param + 1),
lambda model_param: model_param > -1,
2,
),
"exponential": ParamFunction(
lambda reg_param, model_param: reg_param[0]
+ reg_param[1] * np.exp(model_param),
lambda model_param: model_param <= 64,
2,
),
#'polynomial' : lambda reg_param, model_param: reg_param[0] + reg_param[1] * model_param + reg_param[2] * model_param ** 2,
"square": ParamFunction(
lambda reg_param, model_param: reg_param[0]
+ reg_param[1] * model_param ** 2,
lambda model_param: True,
2,
),
"inverse": ParamFunction(
lambda reg_param, model_param: reg_param[0]
+ reg_param[1] / model_param,
lambda model_param: model_param != 0,
2,
),
"sqrt": ParamFunction(
lambda reg_param, model_param: reg_param[0]
+ reg_param[1] * np.sqrt(model_param),
lambda model_param: model_param >= 0,
2,
),
"num0_8": ParamFunction(
lambda reg_param, model_param: reg_param[0]
+ reg_param[1] * analytic._num0_8(model_param),
lambda model_param: True,
2,
),
"num0_16": ParamFunction(
lambda reg_param, model_param: reg_param[0]
+ reg_param[1] * analytic._num0_16(model_param),
lambda model_param: True,
2,
),
"num1": ParamFunction(
lambda reg_param, model_param: reg_param[0]
+ reg_param[1] * analytic._num1(model_param),
lambda model_param: True,
2,
),
}
if safe_functions_enabled:
functions["safe_log"] = ParamFunction(
lambda reg_param, model_param: reg_param[0]
+ reg_param[1] * analytic._safe_log(model_param),
lambda model_param: True,
2,
)
functions["safe_inv"] = ParamFunction(
lambda reg_param, model_param: reg_param[0]
+ reg_param[1] * analytic._safe_inv(model_param),
lambda model_param: True,
2,
)
functions["safe_sqrt"] = ParamFunction(
lambda reg_param, model_param: reg_param[0]
+ reg_param[1] * analytic._safe_sqrt(model_param),
lambda model_param: True,
2,
)
return functions
@staticmethod
def _fmap(reference_type, reference_name, function_type):
"""Map arg/parameter name and best-fit function name to function text suitable for AnalyticFunction."""
ref_str = "{}({})".format(reference_type, reference_name)
if function_type == "linear":
return ref_str
if function_type == "logarithmic":
return "np.log({})".format(ref_str)
if function_type == "logarithmic1":
return "np.log({} + 1)".format(ref_str)
if function_type == "exponential":
return "np.exp({})".format(ref_str)
if function_type == "exponential":
return "np.exp({})".format(ref_str)
if function_type == "square":
return "({})**2".format(ref_str)
if function_type == "inverse":
return "1/({})".format(ref_str)
if function_type == "sqrt":
return "np.sqrt({})".format(ref_str)
return "analytic._{}({})".format(function_type, ref_str)
@staticmethod
def function_powerset(fit_results, parameter_names, num_args=0):
"""
Combine per-parameter regression results into a single multi-dimensional function.
:param fit_results: results dict. One element per parameter, each containing
a dict of the form {'best' : name of function with best fit}.
Must not include parameters which do not influence the model attribute.
Example: {'txpower' : {'best': 'exponential'}}
:param parameter_names: Parameter names, including those left
out in fit_results because they do not influence the model attribute.
Must be sorted lexically.
Example: ['bitrate', 'txpower']
:param num_args: number of local function arguments, if any. Set to 0 if
the model attribute does not belong to a function or if function
arguments are not included in the model.
Returns an AnalyticFunction instantce corresponding to the combined
function.
"""
buf = "0"
arg_idx = 0
for combination in powerset(fit_results.items()):
buf += " + regression_arg({:d})".format(arg_idx)
arg_idx += 1
for function_item in combination:
if arg_support_enabled and is_numeric(function_item[0]):
buf += " * {}".format(
analytic._fmap(
"function_arg", function_item[0], function_item[1]["best"]
)
)
else:
buf += " * {}".format(
analytic._fmap(
"parameter", function_item[0], function_item[1]["best"]
)
)
return AnalyticFunction(
None, buf, parameter_names, num_args, fit_by_param=fit_results
)
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