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"""Classes and helper functions for PTA and other automata."""
from functions import AnalyticFunction
import itertools
def _dict_to_list(input_dict: dict) -> list:
return [input_dict[x] for x in sorted(input_dict.keys())]
def _attribute_to_json(static_value: float, param_function: AnalyticFunction) -> dict:
ret = {
'static' : static_value
}
if param_function:
ret['function'] = {
'raw' : param_function._model_str,
'regression_args' : list(param_function._regression_args)
}
return ret
class State:
"""A single PTA state."""
def __init__(self, name: str, power: float = 0,
power_function: AnalyticFunction = None):
u"""
Create a new PTA state.
arguments:
name -- state name
power -- static state power in µW
power_function -- parameterized state power in µW
"""
self.name = name
self.power = power
self.power_function = power_function
self.outgoing_transitions = {}
def add_outgoing_transition(self, new_transition: object):
"""Add a new outgoing transition."""
self.outgoing_transitions[new_transition.name] = new_transition
def get_energy(self, duration: float, param_dict: dict = {}) -> float:
u"""
Return energy spent in state in pJ.
arguments:
duration -- duration in µs
param_dict -- current parameters
"""
if self.power_function:
return self.power_function.eval(_dict_to_list(param_dict)) * duration
return self.power * duration
def get_transition(self, transition_name: str) -> object:
"""Return Transition object for outgoing transtion transition_name."""
return self.outgoing_transitions[transition_name]
def has_interrupt_transitions(self) -> bool:
"""Check whether this state has any outgoing interrupt transitions."""
for trans in self.outgoing_transitions.values():
if trans.is_interrupt:
return True
return False
def get_next_interrupt(self, parameters: dict) -> object:
"""
Return the outgoing interrupt transition with the lowet timeout.
Must only be called if has_interrupt_transitions returned true.
arguments:
parameters -- current parameter values
"""
interrupts = filter(lambda x: x.is_interrupt, self.outgoing_transitions.values())
interrupts = sorted(interrupts, key = lambda x: x.get_timeout(parameters))
return interrupts[0]
def dfs(self, depth: int, with_arguments: bool = False):
"""
Return a generator object for depth-first search over all outgoing transitions.
arguments:
depth -- search depth
with_arguments -- perform dfs with function+argument transitions instead of just function transitions.
"""
if depth == 0:
for trans in self.outgoing_transitions.values():
if with_arguments:
if trans.argument_combination == 'cartesian':
for args in itertools.product(*trans.argument_values):
yield [(trans.name, args)]
else:
for args in zip(*trans.argument_values):
yield [(trans.name, args)]
else:
yield [trans.name]
else:
for trans in self.outgoing_transitions.values():
for suffix in trans.destination.dfs(depth - 1, with_arguments = with_arguments):
if with_arguments:
if trans.argument_combination == 'cartesian':
for args in itertools.product(*trans.argument_values):
new_suffix = [(trans.name, args)]
new_suffix.extend(suffix)
yield new_suffix
else:
if len(trans.argument_values):
arg_values = zip(*trans.argument_values)
else:
arg_values = [tuple()]
for args in arg_values:
new_suffix = [(trans.name, args)]
new_suffix.extend(suffix)
yield new_suffix
else:
new_suffix = [trans.name]
new_suffix.extend(suffix)
yield new_suffix
def to_json(self) -> dict:
"""Return JSON encoding of this state object."""
ret = {
'name' : self.name,
'power' : _attribute_to_json(self.power, self.power_function)
}
return ret
class Transition:
"""A single PTA transition with one origin and one destination state."""
def __init__(self, orig_state: State, dest_state: State, name: str,
energy: float = 0, energy_function: AnalyticFunction = None,
duration: float = 0, duration_function: AnalyticFunction = None,
timeout: float = 0, timeout_function: AnalyticFunction = None,
is_interrupt: bool = False,
arguments: list = [],
argument_values: list = [],
argument_combination: str = 'cartesian', # or 'zip'
param_update_function = None,
arg_to_param_map: dict = None,
set_param = None):
"""
Create a new transition between two PTA states.
arguments:
orig_state -- origin state
dest_state -- destination state
name -- transition name, typically the same as a driver/library function name
"""
self.name = name
self.origin = orig_state
self.destination = dest_state
self.energy = energy
self.energy_function = energy_function
self.duration = duration
self.duration_function = duration_function
self.timeout = timeout
self.timeout_function = timeout_function
self.is_interrupt = is_interrupt
self.arguments = arguments.copy()
self.argument_values = argument_values.copy()
self.argument_combination = argument_combination
self.param_update_function = param_update_function
self.arg_to_param_map = arg_to_param_map
self.set_param = set_param
def get_duration(self, param_dict: dict = {}, args: list = []) -> float:
u"""
Return transition duration in µs.
arguments:
param_dict -- current parameter values
args -- function arguments
"""
if self.duration_function:
return self.duration_function.eval(_dict_to_list(param_dict), args)
return self.duration
def get_energy(self, param_dict: dict = {}, args: list = []) -> float:
u"""
Return transition energy cost in pJ.
arguments:
param_dict -- current parameter values
args -- function arguments
"""
if self.energy_function:
return self.energy_function.eval(_dict_to_list(param_dict), args)
return self.energy
def get_timeout(self, param_dict: dict = {}) -> float:
u"""
Return transition timeout in µs.
Returns 0 if the transition does not have a timeout.
arguments:
param_dict -- current parameter values
args -- function arguments
"""
if self.timeout_function:
return self.timeout_function.eval(_dict_to_list(param_dict))
return self.timeout
def get_params_after_transition(self, param_dict: dict, args: list = []) -> dict:
"""
Return the new parameter dict after taking this transition.
parameter values may be affected by this transition's update function,
it's argument-to-param map, and its set_param settings.
"""
if self.param_update_function:
return self.param_update_function(param_dict, args)
ret = param_dict.copy()
if self.arg_to_param_map:
for k, v in self.arg_to_param_map.items():
ret[k] = args[v]
if self.set_param:
for k, v in self.set_param.items():
ret[k] = v
return ret
def to_json(self) -> dict:
"""Return JSON encoding of this transition object."""
ret = {
'name' : self.name,
'origin' : self.origin.name,
'destination' : self.destination.name,
'is_interrupt' : self.is_interrupt,
'arguments' : self.arguments,
'argument_values' : self.argument_values,
'argument_combination' : self.argument_combination,
'arg_to_param_map' : self.arg_to_param_map,
'set_param' : self.set_param,
'duration' : _attribute_to_json(self.duration, self.duration_function),
'energy' : _attribute_to_json(self.energy, self.energy_function),
'timeout' : _attribute_to_json(self.timeout, self.timeout_function),
}
return ret
def _json_function_to_analytic_function(base, attribute: str, parameters: list):
if attribute in base and 'function' in base[attribute]:
base = base[attribute]['function']
return AnalyticFunction(base['raw'], parameters, 0, regression_args = base['regression_args'])
return None
def _json_get_static(base, attribute: str):
if attribute in base:
return base[attribute]['static']
return 0
class PTA:
"""
A parameterized priced timed automaton. All states are accepting.
Suitable for simulation, model storage, and (soon) benchmark generation.
"""
def __init__(self, state_names: list = [],
parameters: list = [], initial_param_values: list = None):
"""
Return a new PTA object.
arguments:
state_names -- names of PTA states. Note that the PTA always contains
an initial UNINITIALIZED state, regardless of the content of state_names.
parameters -- names of PTA parameters
initial_param_values -- initial value for each parameter
"""
self.state = dict([[state_name, State(state_name)] for state_name in state_names])
self.parameters = parameters.copy()
if initial_param_values:
self.initial_param_values = initial_param_values.copy()
else:
self.initial_param_values = [None for x in self.parameters]
self.transitions = []
if not 'UNINITIALIZED' in state_names:
self.state['UNINITIALIZED'] = State('UNINITIALIZED')
@classmethod
def from_json(cls, json_input: dict):
"""
Return a PTA created from the provided JSON data.
Compatible with the to_json method.
"""
if 'transition' in json_input:
return cls.from_legacy_json(json_input)
kwargs = dict()
for key in ('state_names', 'parameters', 'initial_param_values'):
if key in json_input:
kwargs[key] = json_input[key]
pta = cls(**kwargs)
for name, state in json_input['state'].items():
power_function = _json_function_to_analytic_function(state, 'power', pta.parameters)
pta.add_state(name, power = _json_get_static(state, 'power'), power_function = power_function)
for transition in json_input['transitions']:
duration_function = _json_function_to_analytic_function(transition, 'duration', pta.parameters)
energy_function = _json_function_to_analytic_function(transition, 'energy', pta.parameters)
timeout_function = _json_function_to_analytic_function(transition, 'timeout', pta.parameters)
kwargs = dict()
for key in ['arg_to_param_map', 'argument_values', 'argument_combination']:
if key in transition:
kwargs[key] = transition[key]
origins = transition['origin']
if type(origins) != list:
origins = [origins]
for origin in origins:
pta.add_transition(origin, transition['destination'],
transition['name'],
duration = _json_get_static(transition, 'duration'),
duration_function = duration_function,
energy = _json_get_static(transition, 'energy'),
energy_function = energy_function,
timeout = _json_get_static(transition, 'timeout'),
timeout_function = timeout_function,
**kwargs
)
return pta
@classmethod
def from_legacy_json(cls, json_input: dict):
"""
Return a PTA created from the provided JSON data.
Compatible with the legacy dfatool/perl format.
"""
kwargs = {
'parameters' : list(),
'initial_param_values': list(),
}
for param in sorted(json_input['parameter'].keys()):
kwargs['parameters'].append(param)
kwargs['initial_param_values'].append(json_input['parameter'][param]['default'])
pta = cls(**kwargs)
for name, state in json_input['state'].items():
pta.add_state(name, power = float(state['power']['static']))
for trans_name in sorted(json_input['transition'].keys()):
transition = json_input['transition'][trans_name]
destination = transition['destination']
arguments = list()
argument_values = list()
if type(destination) == list:
destination = destination[0]
for arg in transition['parameters']:
arguments.append(arg['name'])
argument_values.append(arg['values'])
for origin in transition['origins']:
pta.add_transition(origin, destination, trans_name,
arguments = arguments, argument_values = argument_values)
return pta
def to_json(self) -> dict:
"""
Return JSON encoding of this PTA.
Compatible with the from_json method.
"""
ret = {
'parameters' : self.parameters,
'initial_param_values' : self.initial_param_values,
'state' : dict([[state.name, state.to_json()] for state in self.state.values()]),
'transitions' : [trans.to_json() for trans in self.transitions]
}
return ret
def add_state(self, state_name: str, **kwargs):
"""
Add a new state.
See the State() documentation for acceptable arguments.
"""
if 'power_function' in kwargs and type(kwargs['power_function']) != AnalyticFunction:
kwargs['power_function'] = AnalyticFunction(kwargs['power_function'],
self.parameters, 0)
self.state[state_name] = State(state_name, **kwargs)
def add_transition(self, orig_state: str, dest_state: str, function_name: str, **kwargs):
"""
Add function_name as new transition from orig_state to dest_state.
arguments:
orig_state -- origin state name. Must be known to PTA
dest_state -- destination state name. Must be known to PTA.
function_name -- function name
kwargs -- see Transition() documentation
"""
orig_state = self.state[orig_state]
dest_state = self.state[dest_state]
for key in ('duration_function', 'energy_function', 'timeout_function'):
if key in kwargs and type(kwargs[key]) != AnalyticFunction:
kwargs[key] = AnalyticFunction(kwargs[key], self.parameters, 0)
new_transition = Transition(orig_state, dest_state, function_name, **kwargs)
self.transitions.append(new_transition)
orig_state.add_outgoing_transition(new_transition)
def dfs(self, depth: int = 10, orig_state: str = 'UNINITIALIZED', **kwargs):
"""
Return a generator object for depth-first search starting at orig_state.
arguments:
depth -- search depth
orig_state -- initial state for depth-first search
"""
return self.state[orig_state].dfs(depth, **kwargs)
def simulate(self, trace: list, orig_state: str = 'UNINITIALIZED'):
total_duration = 0.
total_energy = 0.
state = self.state[orig_state]
param_dict = dict([[self.parameters[i], self.initial_param_values[i]] for i in range(len(self.parameters))])
for function in trace:
function_name = function[0]
function_args = function[1 : ]
if function_name == 'sleep':
duration = function_args[0]
total_energy += state.get_energy(duration, param_dict)
total_duration += duration
else:
transition = state.get_transition(function_name)
total_duration += transition.get_duration(param_dict, function_args)
total_energy += transition.get_energy(param_dict, function_args)
param_dict = transition.get_params_after_transition(param_dict, function_args)
state = transition.destination
while (state.has_interrupt_transitions()):
transition = state.get_next_interrupt(param_dict)
duration = transition.get_timeout(param_dict)
total_duration += duration
total_energy += state.get_energy(duration, param_dict)
param_dict = transition.get_params_after_transition(param_dict)
state = transition.destination
return total_energy, total_duration, state, param_dict
def update(self, static_model, param_model):
for state in self.state.values():
if state.name != 'UNINITIALIZED':
state.power = static_model(state.name, 'power')
if param_model(state.name, 'power'):
state.power_function = param_model(state.name, 'power')['function']
print(state.name, state.power, state.power_function.__dict__)
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