PyNN 0.7 release notes¶
4th February 2011
This release sees a major extension of the API with the addition of the
PopulationView
and Assembly
classes, which aim to make
building large, structured networks much simpler and cleaner. A
PopulationView
allows a sub-set of the neurons from a
Population
to be encapsulated in an object. We call it a “view”, rather
than a “sub-population”, to emphasize the fact that the neurons are not copied:
they are the same neurons as in the parent Population
, and any
operations on either view or parent (setting parameter values, recording, etc.)
will be reflected in the other. An Assembly
is a list of
Population
and/or PopulationView
objects, enabling multiple
cell types to be encapsulated in a single object. PopulationView
and
Assembly
objects behave in most ways like Population
: you can
record them, connect them using a Projection
, you can have views of
views…
The “low-level API” (rechristened “procedural API”) has been reimplemented in in
terms of Population
and Projection
. For example,
create()
now returns a Population
object rather than a list of
IDs, and connect()
returns a Projection
object. This change
should be almost invisible to the user, since Population
now behaves
very much like a list of IDs (can be sliced, joined, etc.).
There has been a major change to cell addressing: Population
s now
always store cells in a one-dimensional array, which means cells no longer have
an address but just an index. To specify the spatial structure of a
Population
, pass a Structure
object to the constructor, e.g.:
p = Population((12,10), IF_cond_exp)
is now:
p = Population(120, IF_cond_exp, structure=Grid2D(1.2))
although the former syntax still works, for backwards compatibility. The reasons for doing this are:
we can now have more interesting structures than just grids
efficiency (less juggling addresses, flattening)
simplicity (less juggling addresses, less code).
The API for setting initial values has changed: this is now done via the
initialize()
function or the Population.initialize()
method,
rather than by having v_init and similar parameters for cell models.
Other API changes¶
simplification of the
record_X()
methods.With the addition of thePopulationView
class, the selection logic implemented by the record_from and rng arguments duplicated that inPopulation.__getitem__()
andPopulation.sample()
, and so these arguments have been removed, and therecord_X()
methods now record all neurons within aPopulation
,PopulationView
orAssembly
. Examples of syntax changes:pop.record_v([pop[0], pop[17]]) --> pop[(0, 17)].record_v() pop.record(10, rng=rng) --> pop.sample(10, rng).record()
enhanced
describe()
methods: can now use Jinja2 or Cheetah templating engines to produce much nicer, better formatted network descriptions.connections and neuron positions can now be saved to various binary formats as well as to text files.
added some new connectors:
SmallWorldConnector
andCSAConnector
(CSA = Connection Set Algebra)native neuron and synapse models are now supported using a
NativeModelType
subclass, rather than specified as strings. This simplifies the code internally and increases the range of PyNN functionality that can be used with native models (e.g. you can now record any variable from a native NEST or NEURON model). For NEST, there is a class factorynative_cell_type()
, for NEURON theNativeModelType
subclasses have to be written by hand.
Backend changes¶
the NEST backend has been updated to work with NEST version 2.0.0.
the Brian backend has seen extensive work on performance and on bringing it to feature parity with the other backends.
Details¶
Where
Population.initial_values()
contains arrays, these arrays now consistently contain only enough values for local cells. Before, there was some inconsistency about how this was handled. Still need more tests to be sure it’s really working as expected.Allow override of default_maxstep for NEURON backend as setup paramter. This is for the case that the user wants to add network connections across nodes after simulation start time.
Discovered that when using NEST with mpi4py, you must
import nest
first and let it do the MPI initialization. The only time this seems to be a problem with PyNN is if a user importspyNN.random
beforepyNN.nest
. It would be nice to handle this more gracefully, but for now I’ve just added a test that NEST and mpi4py agree on the rank, and a hopefully useful error message.Added a new
setup()
option forpyNN.nest
: recording_precision. By default, recording_precision is 3 for on-grid and 15 for off-grid.Partially fixed the
pyNN.nest
implementation ofTsodyksMarkramMechanism
(cf ticket:172). The ‘tsodyks_synapse’ model has a ‘tau_psc’ parameter, which should be set to the same value as the decay time constant of the post-synaptic current (which is a parameter of the neuron model). I consider this only a partial fix, because if ‘tau_syn_E’ or ‘tau_syn_I’ is changed after the creation of the Projection, ‘tau_psc’ will not be updated to match (unlike in thepyNN.neuron
implementation. I’m also not sure how well it will work with native neuron models.reverted
pyNN.nest
to reading/resetting the current time from the kernel rather than keeping track of it within PyNN. NEST warns that this is dangerous, but all the tests pass, so let’s wait and see.In
HH_cond_exp
, conductances are now in µS, as for all other conductances in PyNN, instead of nS.NEURON now supports Tsodyks-Markram synapses for current-based exponential synapses (before it was only for conductance-based).
NEURON backend now supports the
IF_cond_exp_gsfa_grr
model.Added a
sample()
method toPopulation
, which returns aPopulationView
of a random sample of the neurons in the parent population.Added the
EIF_cond_exp/alpha_isfa/ista
andHH_cond_exp
standard models in Brian.Added a gather option to the
Population.get()
method.brian.setup()
now accepts a number of additional arguments in extra_params, For example,extra_params={'useweave': True}
will lead to inline C++ code generationWrote a first draft of a developers’ guide.
Considerably extended the
core.LazyArray
class, as a basis for a possible rewrite of the connectors module.The
random
module now usesmpi4py
to determine the MPI rank and num_processes, rather than receiving these as arguments to the RNG constructor (see ticket:164).Many fixes and performance enhancements for the
brian
module, which now supports synaptic plasticity.No more GSL warning every time! Just raise an Exception if we attempt to use GSLRNG and pygsl is not available.
Added some more flexibility to
init_logging()
:logfile=None
-> stderr, format includes size & rank, user can override log-levelNEST
__init__.py
changed to query NEST for fillingNEST_SYNAPSE_TYPES
.Started to move synapse dynamics related stuff out of
Projection
and into the synapse dynamics-related classes, where it belongs.Added a new “spike_precision” option to
nest.setup()
(see http://neuralensemble.org/trac/PyNN/wiki/SimulatorSpecificOptions)Updated the NEST backend to work with version 2.0.0
Rewrote the test suite, making a much cleaner distinction between unit tests, which now make heavy use of mock objects to better-isolate components, and system tests. Test suite now runs with nose (https://nose.readthedocs.org/en/latest/), in order to facilitate continuous integration testing.
Changed the format of connection files, as written by
saveConnections()
and read byFromFileConnector
: files no longer contain the population label. Connections can now also be written toNumpyBinaryFile
orPickleFile
objects, instead of just text files. Same forPopulation.save_positions()
.Added CSAConnector, which wraps the Connection Set Algebra for use by PyNN. Requires the csa package: https://pypi.python.org/pypi/csa/
Enhanced distance expressions by allowing expressions such as
(d[0] < 0.1) & (d[1] < 0.2)
. Complex forms can therefore now be drawn, such as squares, ellipses, and so on.Added an n_connections flag to the
DistanceDependentProbabiblityConnector
in order to be able to constrain the total number of connections. Can be useful for normalizations.Added a simple
SmallWorldConnector
. Cells are connected within a certain degree d. Then, all the connections are rewired with a probability given by a rewiring parameter and new targets are uniformly selected among all the possible targets.Added a method to save cell positions to file.
Added a progress bar to connectors. Now, a verbose flag allows to display or not a progress bar indicating the percentage of connections established.
New implementation of the connector classes, with much improved performance and scaling with MPI, and extension of distance-dependent weights and delays to all connectors. In addition, a safe flag has been added to all connectors: on by default, a user can turn it off to avoid tests on weights and delays.
Added the ability to set the atol and rtol parameters of NEURON’s cvode solver in the extra_params argument of
setup()
(patch from Johannes Partzsch).Made
pyNN.nest
’s handling of the refractory period consistent with the other backends. Made the default refractory period 0.1 ms rather than 0.0 ms, since NEST appears not to handle zero refractory period.Moved standard model (cells and synapses) machinery, the
Space
class, andError
classes out ofcommon
into their own modules.
Release 0.7.1¶
This bug-fix release added copyright statements to all files, together with some minor bug fixes.