devices.xylo.syns65302.XyloMonitor
- class devices.xylo.syns65302.XyloMonitor(*args, **kwargs)[source]
Bases:
Module
A spiking neuron
Module
backed by the XyloAudio 3 hardware, viasamna
.XyloMonitor
operates continuously in real-time, receiving and processing data from a microphone with the deployed SNN. Results are continuously output from the HDK and buffered.On evolution,
XyloMonitor
returns a chunk of buffered processed time of a specified duration.Use
config_from_specification()
to build and validate a configuration for Xylo.Attributes overview
Class name of
self
The full name of this module (class plus module name)
The name of this module, or an empty string if
None
The shape of this module
(DEPRECATED) The output size of this module
The input size of this module
The output size of this module
If
True
, this module receives spiking input.If
True
, this module sends spiking output.Simulation time-step of the module, in seconds
Methods overview
__init__
(device[, config, output_mode, dt, ...])Instantiate a Module with XyloAudio 3 dev-kit backend.
apply_configuration
(new_config)as_graph
()Convert this module to a computational graph
attributes_named
(name)Search for attributes of this or submodules by time
evolve
([record, record_power, read_timeout])Evolve a network on the Xylo HDK in Real-time mode.
modules
()Return a dictionary of all sub-modules of this module
parameters
([family])Return a nested dictionary of module and submodule Parameters
Reset all parameters in this module
Reset the state of this module
set_attributes
(new_attributes)Set the attributes and sub-module attributes from a dictionary
simulation_parameters
([family])Return a nested dictionary of module and submodule SimulationParameters
state
([family])Return a nested dictionary of module and submodule States
timed
([output_num, dt, add_events])Convert this module to a
TimedModule
- __init__(device: XyloAudio3TestBoard, config: XyloConfiguration | None = None, output_mode: str = 'Spike', dt: float = 0.001, main_clk_rate: float = 50.0, hibernation_mode: bool = False, power_frequency: float = 5.0, dn_active: bool = True, digital_microphone=True, *args, **kwargs)[source]
Instantiate a Module with XyloAudio 3 dev-kit backend.
- Parameters:
device (XyloAudio3HDK) – An opened
samna
device to a XyloAudio 3 dev kitconfig (XyloConfiguraration) – A Xylo configuration from
samna
output_mode (str) – The readout mode for the Xylo device. This must be one of
["Spike", "Vmem"]
. Default: “Spike”, return events from the output layer.dt (float) – The timewindow duration, in seconds. Default: 0.001
main_clk_rate (float) – The main clock rate of Xylo, in MHz
hibernation_mode (bool) – If True, hibernation mode will be switched on, which only outputs events if it receives inputs above a threshold.
power_frequency (float) – The frequency of power measurement, in Hz. Default: 5.0
dn_active (bool) – If True, divisive normalization will be used. Defaults to True.
digital_microphone (bool) – If True, configure XyloAudio 3 to use the digital microphone, otherwise, analog microphone. Defaults to True.
- Raises:
ValueError – If
device
is not set.device
must be aXyloAudio3HDK
.TimeoutError – If
output_mode
is notSpike
orVmem
.ValueError – If
operation_mode
is not set toRealTime
. For other opeartion modes please useXyloSamna
.
- _abc_impl = <_abc._abc_data object>
- _auto_batch(data: ndarray, states: Tuple = (), target_shapes: Tuple | None = None) Tuple[ndarray, Tuple[ndarray]]
Automatically replicate states over batches and verify input dimensions
Examples
>>> data, (state0, state1, state2) = self._auto_batch(data, (self.state0, self.state1, self.state2))
This will verify that
data
has the correct final dimension (i.e.self.size_in
).If
data
has only two dimensions(T, Nin)
, then it will be augmented to(1, T, Nin)
. The individual states will be replicated out from shape(a, b, c, ...)
to(n_batches, a, b, c, ...)
and returned.If
data
has only a single dimension(T,)
, it will be expanded to(1, T, self.size_in)
.state0
,state1
,state2
will be replicated out along the batch dimension.>>> data, (state0,) = self._auto_batch(data, (self.state0,), ((10, -1, self.size_in),))
Attempt to replicate
state0
to a specified size(10, -1, self.size_in)
.- Parameters:
data (np.ndarray) – Input data tensor. Either
(batches, T, Nin)
or(T, Nin)
states (Tuple) – Tuple of state variables. Each will be replicated out over batches by prepending a batch dimension
target_shapes (Tuple) – A tuple of target size tuples, each corresponding to each state argument. The individual states will be replicated out to match the corresponding target sizes. If not provided (the default), then states will be only replicated along batches.
- Returns:
(np.ndarray, Tuple[np.ndarray]) data, states
- _config: XyloConfiguration | SimulationParameter
The HDK configuration applied to the Xylo module
- Type:
XyloConfiguration
- _device: XyloAudio3TestBoard
The Xylo HDK used by this module
- Type:
XyloHDK
- _evolve
Track if evolve function was called
- _force_set_attributes
(bool) If
True
, do not sanity-check attributes when setting.
- _get_attribute_family(type_name: str, family: Tuple | List | str | None = None) dict
Search for attributes of this module and submodules that match a given family
This method can be used to conveniently get all weights for a network; or all time constants; or any other family of parameters. Parameter families are defined simply by a string:
"weights"
for weights;"taus"
for time constants, etc. These strings are arbitrary, but if you follow the conventions then future developers will thank you (that includes you in six month’s time).- Parameters:
type_name (str) – The class of parameters to search for. Must be one of
["Parameter", "SimulationParameter", "State"]
or another future subclass ofParameterBase
family (Union[str, Tuple[str]]) – A string or list or tuple of strings, that define one or more attribute families to search for
- Returns:
A nested dictionary of attributes that match the provided
type_name
andfamily
- Return type:
dict
- _get_attribute_registry() Tuple[Dict, Dict]
Return or initialise the attribute registry for this module
- Returns:
registered_attributes, registered_modules
- Return type:
(tuple)
- _get_tr_wrap(ts, main_clk_freq_in_mhz)[source]
Calculate the value of tr wrap
- Parameters:
ts – time windown in seconds
main_clk_freq_in_mhz – main clock frequency in mhz
- _has_registered_attribute(name: str) bool
Check if the module has a registered attribute
- Parameters:
name (str) – The name of the attribute to check
- Returns:
True
if the attributename
is in the attribute registry,False
otherwise.- Return type:
bool
- _in_Module_init
(bool) If exists and
True
, indicates that the module is in the__init__
chain.
- _name: str | None
Name of this module, if assigned
- _power_monitor
Power monitor for Xylo
- _register_attribute(name: str, val: ParameterBase)
Record an attribute in the attribute registry
- Parameters:
name (str) – The name of the attribute to register
val (ParameterBase) – The
ParameterBase
subclass object to register. e.g.Parameter
,SimulationParameter
orState
.
- _register_module(name: str, mod: ModuleBase)
Register a sub-module in the module registry
- Parameters:
name (str) – The name of the module to register
mod (ModuleBase) – The
ModuleBase
object to register
- _reset_attribute(name: str) ModuleBase
Reset an attribute to its initialisation value
- Parameters:
name (str) – The name of the attribute to reset
- Returns:
For compatibility with the functional API
- Return type:
self (
Module
)
- _shape
The shape of this module
- _spiking_input: bool
Whether this module receives spiking input
- _spiking_output: bool
Whether this module produces spiking output
- _submodulenames: List[str]
Registry of sub-module names
- _wrap_recorded_state(recorded_dict: dict, t_start: float) Dict[str, TimeSeries]
Convert a recorded dictionary to a
TimeSeries
representationThis method is optional, and is provided to make the
timed()
conversion to aTimedModule
work better. You should override this method in your customModule
, to wrap each element of your recorded state dictionary as aTimeSeries
- Parameters:
state_dict (dict) – A recorded state dictionary as returned by
evolve()
t_start (float) – The initial time of the recorded state, to use as the starting point of the time series
- Returns:
The mapped recorded state dictionary, wrapped as
TimeSeries
objects- Return type:
Dict[str, TimeSeries]
- as_graph() GraphModuleBase
Convert this module to a computational graph
- Returns:
The computational graph corresponding to this module
- Return type:
- Raises:
NotImplementedError – If
as_graph()
is not implemented for this subclass
- attributes_named(name: Tuple[str] | List[str] | str) dict
Search for attributes of this or submodules by time
- Parameters:
name (Union[str, Tuple[str]) – The name of the attribute to search for
- Returns:
A nested dictionary of attributes that match
name
- Return type:
dict
- property class_name: str
Class name of
self
- Type:
str
- property config
- dt: float | SimulationParameter
Simulation time-step of the module, in seconds
- Type:
float
- evolve(record: bool = False, record_power: bool = False, read_timeout: float | None = 1) Tuple[ndarray, dict, dict] [source]
Evolve a network on the Xylo HDK in Real-time mode.
- Parameters:
record (bool) –
False
, do not return a recording dictionary. Recording internal state is not supported byXyloAudio3Monitor
record_power (bool) – If
True
, record the power consumption during each evolve.read_timeout (float) – A duration in seconds for a read timeout.
- Returns:
Tuple[np.ndarray, dict, dict] output_events, {}, rec_dict output_events is an array that stores the output events of T time-steps rec_dict is a dictionary that stores the power measurements of T time-steps
- property full_name: str
The full name of this module (class plus module name)
- Type:
str
- modules() Dict
Return a dictionary of all sub-modules of this module
- Returns:
A dictionary containing all sub-modules. Each item will be named with the sub-module name.
- Return type:
dict
- property name: str
The name of this module, or an empty string if
None
- Type:
str
- parameters(family: Tuple | List | str | None = None) Dict
Return a nested dictionary of module and submodule Parameters
Use this method to inspect the Parameters from this and all submodules. The optional argument
family
allows you to search for Parameters in a particular family — for example"weights"
for all weights of this module and nested submodules.Although the
family
argument is an arbitrary string, reasonable choises are"weights"
,"taus"
for time constants,"biases"
for biases…Examples
Obtain a dictionary of all Parameters for this module (including submodules):
>>> mod.parameters() dict{ ... }
Obtain a dictionary of Parameters from a particular family:
>>> mod.parameters("weights") dict{ ... }
- Parameters:
family (str) – The family of Parameters to search for. Default:
None
; return all parameters.- Returns:
A nested dictionary of Parameters of this module and all submodules
- Return type:
dict
- reset_parameters()
Reset all parameters in this module
- Returns:
The updated module is returned for compatibility with the functional API
- Return type:
- reset_state() ModuleBase
Reset the state of this module
- Returns:
The updated module is returned for compatibility with the functional API
- Return type:
- set_attributes(new_attributes: dict) ModuleBase
Set the attributes and sub-module attributes from a dictionary
This method can be used with the dictionary returned from module evolution to set the new state of the module. It can also be used to set multiple parameters of a module and submodules.
Examples
Use the functional API to evolve, obtain new states, and set those states:
>>> _, new_state, _ = mod(input) >>> mod = mod.set_attributes(new_state)
Obtain a parameter dictionary, modify it, then set the parameters back:
>>> params = mod.parameters() >>> params['w_input'] *= 0. >>> mod.set_attributes(params)
- Parameters:
new_attributes (dict) – A nested dictionary containing parameters of this module and sub-modules.
- property shape: tuple
The shape of this module
- Type:
tuple
- simulation_parameters(family: Tuple | List | str | None = None) Dict
Return a nested dictionary of module and submodule SimulationParameters
Use this method to inspect the SimulationParameters from this and all submodules. The optional argument
family
allows you to search for SimulationParameters in a particular family.Examples
Obtain a dictionary of all SimulationParameters for this module (including submodules):
>>> mod.simulation_parameters() dict{ ... }
- Parameters:
family (str) – The family of SimulationParameters to search for. Default:
None
; return all SimulationParameter attributes.- Returns:
A nested dictionary of SimulationParameters of this module and all submodules
- Return type:
dict
- property size: int
(DEPRECATED) The output size of this module
- Type:
int
- property size_in: int
The input size of this module
- Type:
int
- property size_out: int
The output size of this module
- Type:
int
- property spiking_input: bool
If
True
, this module receives spiking input. IfFalse
, this module expects continuous input.- Type:
bool
- property spiking_output
If
True
, this module sends spiking output. IfFalse
, this module sends continuous output.- Type:
bool
- state(family: Tuple | List | str | None = None) Dict
Return a nested dictionary of module and submodule States
Use this method to inspect the States from this and all submodules. The optional argument
family
allows you to search for States in a particular family.Examples
Obtain a dictionary of all States for this module (including submodules):
>>> mod.state() dict{ ... }
- Parameters:
family (str) – The family of States to search for. Default:
None
; return all State attributes.- Returns:
A nested dictionary of States of this module and all submodules
- Return type:
dict
- timed(output_num: int = 0, dt: float | None = None, add_events: bool = False)
Convert this module to a
TimedModule
- Parameters:
output_num (int) – Specify which output of the module to take, if the module returns multiple output series. Default:
0
, take the first (or only) output.dt (float) – Used to provide a time-step for this module, if the module does not already have one. If
self
already defines a time-step, thenself.dt
will be used. Default:None
add_events (bool) – Iff
True
, theTimedModule
will add events occurring on a single timestep on input and output. Default:False
, don’t add time steps.
Returns:
TimedModule
: A timed module that wraps this module