spynnaker.pyNN.models.common package¶
Submodules¶
spynnaker.pyNN.models.common.local_only_2d_common module¶
- spynnaker.pyNN.models.common.local_only_2d_common.BITS_PER_BYTE = 8¶
The number of bits in a byte value
- spynnaker.pyNN.models.common.local_only_2d_common.BITS_PER_SHORT = 16¶
The number of bits in a short value
- spynnaker.pyNN.models.common.local_only_2d_common.KEY_INFO_SIZE = 16¶
Key info size in bytes
- spynnaker.pyNN.models.common.local_only_2d_common.N_COLOUR_BITS_BITS = 3¶
The number of bits to represent n_colour_bits
- class spynnaker.pyNN.models.common.local_only_2d_common.Source(projection, local_delay, delay_stage)¶
Bases:
tupleA source
- delay_stage¶
Alias for field number 2
- local_delay¶
Alias for field number 1
- projection¶
Alias for field number 0
- spynnaker.pyNN.models.common.local_only_2d_common.get_delay_for_source(incoming: Projection) Tuple[ColouredApplicationVertex, int, int, str][source]¶
- Get the vertex which will send data from a given source projection,
along with the delay stage and locally-handled delay value
- Parameters:
incoming – The incoming projection to get the delay from
- Returns:
The vertex, the local delay, the delay stage, the partition id
- spynnaker.pyNN.models.common.local_only_2d_common.get_div_const(value: int) int[source]¶
Get the values used to perform fast division by an integer constant
- Parameters:
value – The value to be divided by
- Returns:
The values required encoded as fields of a 32-bit integer
- spynnaker.pyNN.models.common.local_only_2d_common.get_first_and_last_slice(pre_vertex: ApplicationVertex) Tuple[Slice, Slice] | Tuple[MDSlice, MDSlice][source]¶
- Parameters:
pre_vertex – The source vertex
- Returns:
The first and last slice of an application vertex.
- spynnaker.pyNN.models.common.local_only_2d_common.get_rinfo_for_spike_source(pre_vertex: ApplicationVertex, partition_id: str) Tuple[AppVertexRoutingInfo, int, int][source]¶
Get the routing information for the source of a projection in the given partition.
- Parameters:
pre_vertex – The source of incoming data
partition_id – The partition ID to get the routing info from
- Returns:
Routing information, core mask, core mask shift
- spynnaker.pyNN.models.common.local_only_2d_common.get_sources_for_target(app_vertex: PopulationVertex) Dict[Tuple[ColouredApplicationVertex, str], List[Source]][source]¶
Get all the application vertex sources that will hit the given application vertex.
- Parameters:
app_vertex – The vertex being targeted
- Returns:
A dict of source ApplicationVertex to list of source information
spynnaker.pyNN.models.common.param_generator_data module¶
- spynnaker.pyNN.models.common.param_generator_data.MAX_PARAMS_BYTES = 16¶
At most, there are 4 words as param generator parameters
- spynnaker.pyNN.models.common.param_generator_data.PARAM_TYPE_BY_NAME = {'exponential': 5, 'exponential_clipped': 6, 'normal': 2, 'normal_clipped': 3, 'normal_clipped_to_boundary': 4, 'uniform': 1, 'uniform_int': 1}¶
IDs of the random parameter generators supported by the synapse expander.
- spynnaker.pyNN.models.common.param_generator_data.PARAM_TYPE_CONSTANT_ID = 0¶
ID of the constant parameter generator.
- spynnaker.pyNN.models.common.param_generator_data.get_generator_type(data_type: DataType) int[source]¶
- Parameters:
data_type
- Returns:
The generator parameter type code for the given data type.
- Raises:
TypeError – If an unsupported data type is given
- spynnaker.pyNN.models.common.param_generator_data.is_param_generatable(value: Any) bool[source]¶
- Parameters:
value – The value to examine the type of.
- Returns:
Whether the value is of a type that can be generated on chip.
- spynnaker.pyNN.models.common.param_generator_data.param_generator_id(value: int | float | RandomDistribution) int[source]¶
- Parameters:
value – The value to examine the type of.
- Returns:
The ID of the on-chip generator that handles the value.
- Raises:
TypeError – If an value of an unsupported data type is given
- spynnaker.pyNN.models.common.param_generator_data.param_generator_params(values: int | float | RandomDistribution) ndarray[tuple[Any, ...], dtype[uint32]][source]¶
- Parameters:
values
- Returns:
The parameter generator parameters as a numpy array.
spynnaker.pyNN.models.common.recording_utils module¶
spynnaker.pyNN.models.common.types module¶
- spynnaker.pyNN.models.common.types.Names¶
Type of names of parameters and state variables.
Module contents¶
- class spynnaker.pyNN.models.common.EIEIOSpikeRecorder¶
Bases:
objectRecords spikes using EIEIO format.
- class spynnaker.pyNN.models.common.MultiSpikeRecorder¶
Bases:
objectSupport for recording more than one spike per timestep.
- class spynnaker.pyNN.models.common.NeuronRecorder(allowed_variables: List[str], data_types: Mapping[str, DataType], bitfield_variables: Sequence[str], n_neurons: int, per_timestep_variables: Sequence[str], per_timestep_datatypes: Mapping[str, DataType], events_per_core_variables: Sequence[str], events_per_core_datatypes: Mapping[str, DataType])¶
Bases:
objectMethods related to recording of neuron data.
- Parameters:
allowed_variables
data_types
bitfield_variables
n_neurons
per_timestep_variables
per_timestep_datatypes
events_per_core_variables
events_per_core_datatypes
- MAX_REWIRES = 'max_rewires'¶
- PACKETS = 'packets-per-timestep'¶
- PACKETS_TYPE = 2¶
- REWIRING = 'rewiring'¶
- REWIRING_TYPE = 2¶
- SPIKES = 'spikes'¶
- add_region_offset(offset: int) None[source]¶
Add an offset to the regions. Used when there are multiple recorders on a single core.
- Parameters:
offset – The offset to add
- get_buffer_data_type(variable: str) BufferDataType[source]¶
- Parameters:
variable – Name of variable to get type for
- Returns:
Type of data for this variable. Defaults to MATRIX even if the variable in unknown
- get_buffered_sdram(variable: str, vertex_slice: Slice) int[source]¶
Returns the SDRAM used for this many time steps for a variable.
If required the total is rounded up so the space will always fit.
- Parameters:
variable – The PyNN variable name to get buffered SDRAM of
vertex_slice
- Returns:
data size
- get_buffered_sdram_per_record(variable: str, vertex_slice: Slice) int[source]¶
Return the SDRAM used per record.
- Parameters:
variable – PyNN variable name
vertex_slice
- Returns:
usage
- get_buffered_sdram_per_timestep(variable: str, vertex_slice: Slice) int[source]¶
Return the SDRAM used per timestep.
In the case where sampling is used it returns the average for recording and none recording based on the recording rate
- Parameters:
variable – PyNN variable name
vertex_slice
- Returns:
usage
- get_data_type(variable: str) DataType | None[source]¶
- Parameters:
variable
- Returns:
Type of the Data for this variable or None if unknown
- get_event_recordable_variables() List[str][source]¶
- Returns:
Names of event variables being recorded
- get_generator_data(vertex_slice: Slice | None = None) ndarray[tuple[Any, ...], dtype[uint32]][source]¶
- Parameters:
vertex_slice – The slice to generate the data for, or None to generate for all neurons (assuming all the same, otherwise error)
- Returns:
The recorded data as a generatable data set.
- get_generator_sdram_usage_in_bytes(n_atoms: int) int[source]¶
- Parameters:
n_atoms – The number of atoms to be recorded
- Returns:
The SDRAM usage of the generator data for recording metadata.
- get_max_buffered_sdram_per_record(variable: str, n_atoms: int) int[source]¶
Return the SDRAM used per record.
- Parameters:
variable – PyNN variable name
n_atoms – number of atoms recording
- Returns:
usage
- get_max_variable_sdram_usage(n_atoms: int) AbstractSDRAM[source]¶
- Parameters:
n_atoms
- Returns:
SDRAM cost EXCLUDING fix cost for saving the recordings
- get_metadata_sdram_usage_in_bytes(n_atoms: int) int[source]¶
- Parameters:
n_atoms – The number of atoms to record
- Returns:
The SDRAM usage of the metadata for recording.
- get_recorded_indices(application_vertex: ApplicationVertex, variable: str) Iterable[int][source]¶
- Parameters:
application_vertex – The vertex being recorded
variable – The name of the variable to get the indices of
- Returns:
The indices being recorded for a given variable.
- get_region(variable: str) int[source]¶
- Parameters:
variable – The variable to get the region of
- Returns:
The region of a variable.
- get_region_sizes(vertex_slice: Slice) List[int][source]¶
Get the sizes of the regions for the variables, whether they are recorded or not, with those that are not having a size of 0.
- Parameters:
vertex_slice
- Returns:
List of size of each region including ones not recoding
- get_sampling_interval_ms(variable: str) float[source]¶
Get the sampling interval of a variable.
- Parameters:
variable – The variable to get the sampling interval of
- Returns:
Sampling interval in microseconds
- get_sampling_overflow_sdram(vertex_slice: Slice) int[source]¶
Get the extra SDRAM that should be reserved if using per_timestep.
This is the extra that must be reserved if per_timestep is an average rather than fixed for every timestep.
When sampling the average * time_steps may not be quite enough. This returns the extra space in the worst case where time_steps is a multiple of sampling rate + 1, and recording is done in the first and last time_step
- Parameters:
vertex_slice
- Returns:
Highest possible overflow needed
- get_variable_sdram_usage(vertex_slice: Slice) AbstractSDRAM[source]¶
- Parameters:
vertex_slice
- Returns:
SDRAM cost including fix cost for saving the recordings
- property is_global_generatable: bool¶
Whether the data for all neurons the same, i.e., all or none of the neurons are recorded for all variables.
- is_recordable(variable: str) bool[source]¶
- Parameters:
variable – The variable to check for
- Returns:
True if the given variable can be recorded, regardless if it is actually recording or not.
- is_recording(variable: str) bool[source]¶
- Parameters:
variable
- Returns:
True if the variable is being recorded, False if the variable is not being recorded or not recordable
- neurons_recording(variable: str, vertex_slice: Slice) Collection[int] | None[source]¶
- Parameters:
variable
vertex_slice
- Returns:
The indexes of the neurons recording or None if the variable is unknown
- recorded_ids_by_slice(vertex_slice: Slice) List[int][source]¶
- Parameters:
vertex_slice
- Returns:
list of the IDs of the variables actually recording. Editing this list will not change recording settings.
- property recorded_region_ids: Iterable[int]¶
The ids of the regions for each variable being recorded.
- set_max_rewires_per_ts(max_rewires_per_ts: int) None[source]¶
Sets the the maximum rewires per timestep
- Parameters:
max_rewires_per_ts – the maximum rewires per timestep
- class spynnaker.pyNN.models.common.ParameterHolder(data_items_to_return: str | Iterable[str], get_call: Callable[[str, None | int | integer | SupportsInt | slice | Sequence[bool | bool] | Sequence[int | integer | SupportsInt]], List[float] | RandomDistribution], selector: None | int | integer | SupportsInt | slice | Sequence[bool | bool] | Sequence[int | integer | SupportsInt] = None)¶
Bases:
objectHolds a set of parameters and state variables to be returned in a PyNN-specific format.
- Parameters:
data_items_to_return – A list of data fields to be returned
get_call – A function to call to read a value
selector – a description of the subrange to accept, or None for all. See:
selector_to_ids()
- class spynnaker.pyNN.models.common.PopulationApplicationVertex(label: str | None = None, max_atoms_per_core: int | Tuple[int, ...] | None = None, splitter: AbstractSplitterCommon | None = None)¶
Bases:
ColouredApplicationVertex,HasCustomAtomKeyMapA vertex that can be used in a Population.
Provides some default functions that can be overridden if the vertex supports these.
- Parameters:
label – The optional name of the vertex.
max_atoms_per_core – The max number of atoms that can be placed on a core for each dimension, used in partitioning. If the vertex is n-dimensional, with n > 1, the value must be a tuple with a value for each dimension. If it is single-dimensional the value can be a 1-tuple or an int.
splitter – The splitter object needed for this vertex. Leave as None to delegate the choice of splitter to the selector.
- property conductance_based: bool¶
Whether the vertex models post-synaptic inputs as currents or conductance.
By default this is False; override if the model accepts conductance based input.
- get_atom_key_map(pre_vertex: MachineVertex, partition_id: str, routing_info: RoutingInfo) Iterable[Tuple[int, int]][source]¶
Get the mapping between atoms and keys for the given partition id, and for the given machine pre-vertex.
- Parameters:
pre_vertex – The machine vertex to get the map for
partition_id – The partition to get the map for
routing_info – Routing information
- Returns:
A list of (atom_id, key)
- get_buffer_data_type(name: str) BufferDataType[source]¶
Get the type of data recorded by the buffer manager.
The buffer data type controls how data returned by the cores is handled in NeoBufferDatabase.
- Parameters:
name – The name of the variable recorded
- Raises:
KeyError – if the variable isn’t being recorded
- Returns:
Data type in the Buffer Database
- get_current_state_values(names: str | List[str] | Tuple[str, ...], selector: None | int | integer | SupportsInt | slice | Sequence[bool | bool] | Sequence[int | integer | SupportsInt] = None) ParameterHolder[source]¶
- Parameters:
names – The name or names of the variable to get
selector – a description of the subrange to accept, or
Nonefor all. See: :py:meth:`~spinn_utilities.ranged.AbstractSized.selector_to_ids
- Returns:
The current values of a state variable for the whole Population or a subset if the selector is used.
- Raises:
KeyError – if the variable is not something that can be read
- get_data_type(name: str) DataType | None[source]¶
Get the type data returned by a recording of the variable.
This is the type of data the C code is returning. For instance data such as spikes this will be None.
- Parameters:
name – The name of the variable to get the type of
- Returns:
The data type used by the C code
- Raises:
KeyError – If the variable isn’t recordable
- get_initial_state_values(names: str | List[str] | Tuple[str, ...], selector: None | int | integer | SupportsInt | slice | Sequence[bool | bool] | Sequence[int | integer | SupportsInt] = None) ParameterHolder[source]¶
- Parameters:
names – The name or names of the variable to get
selector – a description of the subrange to accept, or
Nonefor all. See:selector_to_ids()
- Returns:
The initial values of a state variable for the whole Population or a subset if the selector is used.
- Raises:
KeyError – if the variable is not something that can be read
- get_neurons_recording(name: str, vertex_slice: Slice) Collection[int] | None[source]¶
Gets the neurons being recorded on the core with this slice.
Typically vertex_slice.get_raster_ids(atoms_shape) but may be a sublist if doing selective recording.
- Parameters:
name – The name of the variable to get the region of
vertex_slice
- Returns:
A list of the global raster IDs of the atoms in recording named variable within this slice
- get_parameter_values(names: str | List[str] | Tuple[str, ...], selector: None | int | integer | SupportsInt | slice | Sequence[bool | bool] | Sequence[int | integer | SupportsInt] = None) ParameterHolder[source]¶
- Parameters:
names – The name or names of the parameter to get
selector – a description of the subrange to accept, or
Nonefor all. See:selector_to_ids()
- Returns:
The values of a parameter or parameters for the whole Population or a subset if the selector is used.
- Raises:
KeyError – if the parameter is not something that can be read
- get_recordable_variables() List[str][source]¶
Get a list of the names of things that can be recorded.
This methods list the variable recorded via the Population.
Includes both neuron and synapse recordable things
- Returns:
List of variable names
- get_recording_region(name: str) int[source]¶
- Parameters:
name – The name of the variable to get the region of
- Returns:
The recording region for the named variable.
- Raises:
KeyError – If the variable isn’t being recorded
- get_recording_variables() List[str][source]¶
- Returns:
A list of variables that are currently being recorded.
- get_sampling_interval_ms(name: str) float[source]¶
Get the sampling interval of the recording for the given variable.
The values is in ms and unless selective recording is used will be SpynnakerDataView.get_simulation_time_step_us()
- Parameters:
name – The name of the variable
- Returns:
Sampling rate in milliseconds for this variable
- Raises:
KeyError – If the variable isn’t being recorded
- get_units(name: str) str[source]¶
Get the units of the given parameter or state variable.
- Parameters:
name – the name of the parameter to get the units of
- Returns:
The unit or this variable. For example ‘mV’ or ‘uS’. Will be an empty string for things like spikes and probability
- Raises:
KeyError – if the name isn’t recognised or the units cannot be identified
- inject(current_source: AbstractCurrentSource, selector: None | int | integer | SupportsInt | slice | Sequence[bool | bool] | Sequence[int | integer | SupportsInt] = None) None[source]¶
Inject a current source into this population.
- Parameters:
current_source – the current source to be injected
selector – a description of the subrange to accept, or
Nonefor all. See:selector_to_ids()
- Raises:
ConfigurationException – if the population doesn’t support injection
- property n_colour_bits: int¶
The number of colour bits sent by this vertex.
Assumed 0 unless overridden
- set_current_state_values(name: str, value: float | Sequence[float] | ndarray[tuple[Any, ...], dtype[floating]] | RandomDistribution, selector: None | int | integer | SupportsInt | slice | Sequence[bool | bool] | Sequence[int | integer | SupportsInt] = None) None[source]¶
Set the current values of a state variable for the whole Population or a subset if the selector is used.
- Parameters:
name – The name of the variable to set
value – The new value
selector – a description of the subrange to accept, or
Nonefor all. See:selector_to_ids()
- Raises:
KeyError – if the variable is not something that can be changed
- set_initial_state_values(name: str, value: float | Sequence[float] | ndarray[tuple[Any, ...], dtype[floating]] | RandomDistribution, selector: None | int | integer | SupportsInt | slice | Sequence[bool | bool] | Sequence[int | integer | SupportsInt] = None) None[source]¶
Set the initial values of a state variable for the whole Population or a subset if the selector is used.
- Parameters:
name – The name of the variable to set
value – The new value
selector – a description of the subrange to accept, or
Nonefor all. See:selector_to_ids()
- Raises:
KeyError – if the variable is not something that can be changed
- set_not_recording(name: str, indices: Collection[int] | None = None) None[source]¶
Set a variable not recording.
- Parameters:
name – The name of the variable to not record
indices – The list of neuron indices to not record or None for all
- Raises:
KeyError – if the variable cannot be stopped from recording
- set_parameter_values(name: str, value: float | Sequence[float] | ndarray[tuple[Any, ...], dtype[floating]] | RandomDistribution, selector: None | int | integer | SupportsInt | slice | Sequence[bool | bool] | Sequence[int | integer | SupportsInt] = None) None[source]¶
Set the values of a parameter for the whole Population or a subset if the selector is used.
- Parameters:
name – The name of the parameter to set
value – The new value
selector – a description of the subrange to accept, or
Nonefor all. See:selector_to_ids()
- Raises:
KeyError – if the parameter is not something that can be changed
- set_recording(name: str, sampling_interval: float | None = None, indices: Collection[int] | None = None) None[source]¶
Set a variable recording.
- Parameters:
name – The name of the variable to set the status of
sampling_interval – How often the variable should be recorded or None for every time step, in milliseconds
indices – The list of neuron indices to record or None for all
- Raises:
KeyError – if the variable cannot be recorded