Recent Releases of nengo
nengo - 4.0.0 release
Added
Changed
- Made NengoCore available under the GPLv2 license. (#1693)
Fixed
- Fixed an issue where
nengo.LinearFilterand subclasses (e.g.Lowpass,Alpha) would fail when running on tensors with dimension >= 3. (#1687)
- Python
Published by tbekolay over 2 years ago
nengo - 3.2.0 release
Added
- Added official support for Python 3.9. (#1660)
- Added
ChannelShape.from_space_and_channelsto easily construct aChannelShapefrom a spatial shape and number of channels. (#1648) - Added the
ConvolutionTransposetransform to perform transposed convolution. It is commonly used for various forms of upsampling in deep networks. (#1648) - Added
ConvandConvTransposealiases forConvolutionandConvolutionTranspose. (#1648)
Changed
- The minimum supported NumPy version is now 1.19, as earlier versions are no longer officially supported. (NEP-29, #1683)
Removed
- Removed support for Python 3.5 (which reached its end of life in September 2020). (#1649)
- Removed
nengo.utils.graphs.graph(this was a small utility function for building graphs that was only used in tests). (#1654) - Removed
simulator.ProbeDictalias; this was previously renamed tosimulator.SimulationData. (#1649)
Fixed
- Fixed a bug with a problematic cache index breaking decoder solvers. The solver now avoids using the cache, rather than crashing. (#1649)
- Operator graph step order will now be deterministic. (#1654)
- Fixed an issue in which some simulators could not be reset due to signals not being marked as readonly. (#1676)
- Fixed an inconsistency in which normal
Nodeoutput functions would receive a copy of the input signal, whileProcessstep functions would not.Processstep functions now also receive copies. (#1679) - Duplicate keys in
Neurons.probeablehave been removed. (#1681)
- Python
Published by tbekolay about 4 years ago
nengo - 3.1.0 release
Added
- Added a new example notebook for Legendre Memory Units. (#1589)
- Added the
step_orderattribute tonengo.Simulator, which contains an ordered list of the operations run on each timestep. (#1615) - Added the
make_statemethod toNeuronType, which initializes the neuron type's state variables. (#1609) - Added the
spikingattribute toNeuronType, which exposes whether a neuron type is spiking or non-spiking. (#1609) - Added the
negativeattribute toNeuronType, which indicates whether the neuron type can have negative outputs. (#1609) - Added the
Tanhneuron type to simulate hyperbolic tangent neurons. (#1609) - Added the
RatesToSpikesNeuronType, which is a base class for neuron types that convert a rate-based type to a spiking one. (#1609) - Added the
RegularSpikingneuron type, which emits regularly-spaced spikes at the rate specified by its base type. (#1609) - Added the
StochasticSpikingneuron type, which emits spikes based on stochastic rounding to roughly match the rate specified by its base type. (#1609) - Added the
PoissonSpikingneuron type, which emits Poisson-distributed spikes, as are commonly used to match biological spiking statistics. (#1609) - Added the
PositiveNeuronTypetest argument to run tests on all neuron types for whichnegativeis notTrue. (#1609) - Added the
QuasirandomSequencedistribution, which is similar toUniformbut spreads points across the space evenly. (#1611) - Added the
ScatteredHyperspheredistribution, which is similar toUniformHyperspherebut spreads points across the space more evenly. (#1611) - Added the
RLS(recursive least-squares) learning rule, which is an online version of the least-squares method typically used for offline decoder-solving. (#1611, example) - Added the
SimProbeoperator, which marks a signal as being probed. (#1653)
Changed
- Nengo is now compatible with Python 3.8. (#1628)
- The default Connection transform is now
None, meaning that there will be no transform applied. This only changes behavior when learning on a neuron-neuron connection with the default scalar transform. In that situation there are now no weights to apply learning to, so this will result in an error. The old behaviour can be obtained by settingtransform=1. (#1591) - Network list attributes (e.g.
.ensembles,.connections,.probes) are now read-only, to prevent users from accidentally overwriting them with their own data. (#1545, #1608) - The
NeuronType.step_mathmethod has been renamed toNeuronType.step. (#1609) - Neuron types can now create arbitrary state variables without needing to register a new build function. The
stateclass attribute declares the neuron type's state variables and their default initial values. All__init__methods accept aninitial_statedictionary for users to override the default initial state values. (#1609) - The
nlandnl_nodirecttest arguments have been renamed toAnyNeuronTypeandNonDirectNeuronType. (#1609) - Weight solvers (i.e. those with
weights=True) are now allowed on all connections. For connections that are not betweenEnsembles, though, weight solvers have the same effects as solvers withweights=False, and a warning will be raised. (#1626) - Various improvements to simulation speed. (#1629)
EnsembleArraynow raises an error ifadd_outputwould overwrite an existing attribute. (#1611)- The
encodersandeval_pointsofEnsembleare now sampled fromScatteredHypersphereby default. (#1611)
Deprecated
NeuronType.stepreplaces theNeuronType.step_mathmethod, which will be removed in Nengo 4.0.0. (#1609)Connection.is_decodedis deprecated, as the definition of whether a Connection is decoded or not was ambiguous. Instead we recommend directly checking the pre/post objects for the properties of interest. (#1640)
Fixed
- Fixed a bug when comparing equality with
Ensemble.neuronsorConnection.learning_ruleobjects. (#1588) - Fixed a bug preventing unpickling an
Ensemble. (#1598) - Fixed a bug in which unpickling a
Simulatorwould rerun the optimizer. (#1598) - Fixed a bug where the
LstsqDropsolver errored when solving for zero weights. (#1541, #1607) - Fixed a bug in the validation of
Choicedistributions. (#1630) - Fixed a bug where a
Signaldid not register as sharing memory with itself. (#1627) - Fixed a shape error when applying PES learning to a neuron-to-neuron connection with a slice on the post-synaptic neurons. (#1640)
- Fixed a shape error when applying PES learning to a neuron->ensemble connection with a weight solver. (#1640)
- Fixed a shape error when applying PES learning to an ensemble->neuron connection. (#1640)
- Fixed a shape error when applying PES learning with a slice on the pre-synaptic object. (#1640)
- Python
Published by tbekolay over 5 years ago
nengo - 3.0.0 release
Added
- Added progress bar support for Jupyter Lab >=0.32. (#1428, #1087)
- We now warn that the progress bar is not supported in Jupyter Notebook <5. (#1428, #1426)
- Added support for convolutional connections. (#1481)
- Added version tracking to documentation, so that documentation from old versions remains available. (#1488)
- Added support for sparse connections. (#1532)
- Added a
fail_fastsetting to test operators when they are first added to the model. See configuration options for details. (#1532) - Added a
--memoryoption for pytest that prints the total memory consumed by the tests when they complete (Linux and Mac OS X only). (#640) - Added a bit precision setting to change the number of bits allocated to each value tracked by Nengo. (#640)
- Added a
Simulator.clear_probesmethod to clear probe data. This method can be used before pickling to reduce the pickle file size. (#1387) - Nengo tests now use the
allclosefixture frompytest-allclose, which makes it possible for backends to change test tolerances. (#1563) - Nengo tests now use the
rngandseedfixtures frompytest-rng. (#1566) - Nengo tests now use the
pltfixture frompytest-plt. (#1566) - Added a
nengo_simloaderpytest option for specifying a callable that takes a pytestrequestand returns a callable to be used asSimulatorin the Nengo test suite. (#1566) - Added more content to the API reference documentation. (#1578)
Changed
- Python 2 is no longer supported. The oldest supported Python version is 3.5. (#1520, python3statement.org)
- Nengo no longer supports Python 3.4. Official 3.4 support ended in March 2019. (PEP-429, #1514)
- Replaced the
dtargument toSimulator.trangewithsample_everybecausedtwould return values that the simulator had not simulated.dtis now an alias forsample_everyand will be removed in the future. (#1368, #1384) - Dense connection transforms (this includes all previously supported values for
Connection.transform) will now be represented internally asnengo.Denseobjects. Arrays/scalars can still be passed astransformvalues, and they will be automatically converted to the equivalentnengo.Denseobject. Retrieving the value ofmy_conn.transformwill return thatDenseobject. The original input array can be retrieved throughmy_conn.transform.init. (#1481) nengo.solvers.NoSolver(w, weights=True)now expectswto have shape(pre.n_neurons, function_d), rather thanpre.n_neurons, post.n_neurons). That is, withNoSolveryou are always specifying the values for the decoders, and encoders/transform will be applied automatically to those decoders (as occurs with all other solvers). Note that this does not affectNoSolver(..., weights=False)(the default). (#1481)- Increased minimum NumPy version to 1.11.0. See our instructions for installing NumPy if you need to upgrade. (#1481)
- Solvers are now explicitly marked as compositional or non-compositional depending on whether they must act on full connection weight matrices when solving for weights. (#1507)
- Solvers no longer take encoders as an argument. Instead, encoders will be applied to the targets before the solve function for non-compositional solvers and applied by the Transform builder for compositional solvers. (#1507)
- Example Jupyter notebooks have been upgraded to notebook format 4. (#1440)
- Switched documentation to new nengo-sphinx-theme. (#1489)
- The
settled_firingratefunction has been moved fromnengo.utils.neuronstonengo.neurons. (#1187) - Added new pytest config option,
nengo_test_unsupported(replacing the previousSimulator.unsupportedfunctionality). (#1521) - Switched to nengo-bones templating system for TravisCI config/scripts. (#1514)
- The
NeuronType.currentandNeuronType.ratesmethods now document the supported shapes of parameters and return values. (#1437) - PES learning updates are now applied on the next timestep rather than the current one. (#1398)
- The
NdarrayParamnow accepts adtypeargument to check that data assigned to that parameter matches the given Numpydtype.DistOrArrayParamaccepts an analogoussample_dtypeargument. (#1532) - We no longer test operators when they are initially added to the model, which speed up build times slightly. To re-enable this testing, enable the
fail_fastRC setting. (#1532) LinearFilternow uses state space representations internally, which is faster and potentially more accurate. (#1535)- The default value of
y0inSynapse.filtis now 0 instead of the initial value of the input signal. This allows unstable filters (e.g., integrators) to be used withfilt. (#1535) LinearFilternow accepts the discretization method as an argument, rather than having it specified inmake_step. (#1535)- The
synapse_kwargsargument toFilteredNoisehas been removed. (#1535) - Processes with internal state now declare that state by defining a
make_statemethod and accepting astateparameter inmake_step. (#1387) Simulatoris now pickleable, allowing its state to be saved and loaded. (#1387)- Renamed
utils.testing.allclosetoutils.testing.signals_allclose, to differentiate it from theallclosefixture. (#1563) - The default
interceptsvalue has been changed toUniform(-1, 0.9)to avoid high gains when intercepts are close to 1. (#1534, #1561) - The
--simulatorand--neuronspytest command line arguments are now specified bynengo_simulatorandnengo_neuronsentries in the pytest config file instead. (#1566) - The
nengo_test_unsupportedoption now uses pytest nodeids for the test names (the main change is that this means a double::between file and function names). (#1566) Signalswill now raise an error if their initial value contains NaNs. (#1571)- The builder will now raise an error if any encoders are NaN, which can occur if an encoder has length zero. (#1571)
- Renamed
simulator.ProbeDicttosimulator.SimulationData. (#1574) - Increased minimum numpy version to 1.13. (#1577)
- Documentation pages that had underscores in their filenames have been renamed to have hyphens instead. (#1585)
Deprecated
- Deprecated the
nengo.spamodule. Use the Nengo SPA project instead. (#1465) - The
AandBinputs to theProductandCircularConvolutionnetworks are officially deprecated. Useinput_aandinput_binstead. (#887, #1179) nengo.utils.compatwill be removed in the next minor release. (#1520)- Deprecated
utils.numpy.rmse. Callutils.numpy.rmson the difference between two arrays instead. (#1563)
Removed
- Networks no longer accept the
netargument. To set network arguments likelabel, pass them as keyword arguments instead. (#1179) - Removed
generate_graphvizutility function. It can now be found in nengo_extras. (#1187) - Removed functions for estimating firing rates from spikes. They can now be found in nengo_extras. (#1187)
- Removed the
probe_allfunction. It can now be found in nengo_extras. (#1187) PES.correctionis no longer probeable. (#1398)- The internal
rngandseedfixtures have been removed. Use the external pytest-rng package instead. (#1566) - The internal
pltfixture has been removed. Use the external pytest-plt package instead. (#1566) - The internal
loggerfixture has been removed. Use pytest's log capturing instead. (#1566) - Removed
nengo.logandnengo.utils.logging. Use the standard Python and pytest logging modules instead. (#1566) - The internal
analyticsandanalytics_datafixtures have been removed. Use pytest's cache fixture instead. (#1566) - The
RefSimulatorfixture has been removed. Use theSimulatorfixture and thenengo_test_unsupportedconfiguration option instead. (#1566) - Removed
find_modulesandload_functionsfromnengo.utils.testing. Backends wanting to run Nengo test should usepytest --pyargs nengoinstead. (#1566) - Removed
nengo.tests.options. It is no longer necessary to use-p nengo.tests.optionswhen running Nengo tests. (#1566) - Removed
nengo.conftest. Use pytest configuration options instead. (#1566) - Removed support for legacy cache files. (#1577)
- Removed the nengo ipynb progress bar extension. This is no longer needed in more recent ipynb versions. (#1577)
- Removed the deprecated
*_tau(e.g.pre_tau) parameters from learning rules. Use*_synapseinstead. (#1577) - Removed the deprecated
neuron_nodesargument fromnetworks.EnsembleArray. UseEnsembleArray.add_neuron_input/add_neuron_outputinstead. (#1577) - Removed the deprecated
progress.updaterconfig option. Useprogress.progress_barinstead. (#1577) - Removed the deprecated
nengo.synapses.filt/filtfiltfunctions. Use theSynapse.filt/filtfiltmethods instead. (#1577) - Removed the Python 2 compatibility code from
utils.compat. (#1577) - Removed
utils.connection.target_function. Target points can be passed directly to theConnection.functionargument instead. (#1577) - Removed
utils.functions.piecewise. Usenengo.processes.Piecewiseinstead. (#1577) - Removed
utils.testing.Mock. (#1578)
Fixed
FrozenObjectscan control parameter initialization order when copying, which fixed a bug encountered when copying convolutional connections. (#1493)- Fixed an issue in which reshaped signals were not having their offset values preserved, causing issues with some node functions. (#1474)
- Better error message when Node output function does not match the given
size_in/size_out. (#1452, #1434) - Several objects had elements missing from their string representations. These strings are now automatically generated and tested to be complete. (#1472)
- Fixed the progress bar in recent Jupyter Lab versions. (#1499, #1500)
- Some higher-order
LinearFiltersynapses had unnecessary delays that have now been removed. (#1535) - Models using the
SpikingRectifiedLinearneuron type now have their decoders cached. (#1550) - Optional
ShapeParam/TupleParamcan now be set toNone. (#1569) - Fixed error when using advanced indexing to connect to an
Ensemble.neuronsobject. (#1582, #1583)
- Python
Published by tbekolay over 6 years ago
nengo - 2.8.0 release
Added
- Added a warning when setting
gainandbiasalong with either ofmax_ratesorintercepts, as the latter two parameters are ignored. (#1431, #1433)
Changed
Learning rules can now be sliced when providing error input. (#1365, #1385)
The order of parameters in learning rules has changed such that
learning_ratealways comes first. (#1095)Learning rules take
pre_synapse,post_synapse, andtheta_synapseinstead ofpre_tau,post_tau, andtheta_taurespectively. This allows arbitrarySynapseobjects to be used as filters on learning signals. (#1095)
Deprecated
- The
nengo.ipynbIPython extension and theIPython2ProgressBarhave been deprecated and replaced by theIPython5ProgressBar. This progress bar will be automatically activated in IPython and Jupyter notebooks from IPython version 5.0 onwards. (#1087, #1375) - The
pre_tau,post_tau, andtheta_tauparameters for learning rules are deprecated. Instead, usepre_synapse,post_synapse, andtheta_synapserespectively. (#1095)
Removed
- Python
Published by tbekolay over 7 years ago
nengo - 2.7.0 release
Added
- Added
amplitudeparameter toLIF,LIFRate, andRectifiedLinearwhich scale the output amplitude. (#1325, #1391) - Added the
SpikingRectifiedLinearneuron model. (#1391)
Changed
- Default values can no longer be set for
Ensemble.n_neuronsorEnsemble.dimensions. (#1372) - If the simulator seed is not specified, it will now be set from the network seed if a network seed is specified. (#980, #1386)
Fixed
- Fixed an issue in which signals could not be pickled, making it impossible to pickle
Modelinstances. (#1135) - Better error message for invalid return values in
nengo.Nodefunctions. (#1317) - Fixed an issue in which accepting and passing
(*args, **kwargs)could not be used in custom solvers. (#1358, #1359) - Fixed an issue in which the cache would not release its index lock on abnormal termination of the Nengo process. (#1364)
- Fixed validation checks that prevented the default from being set on certain parameters. (#1372)
- Fixed an issue with repeated elements in slices in which a positive and negative index referred to the same dimension. (#1395)
- The
Simulator.n_stepsandSimulator.timeproperties now return scalars, as was stated in the documentation. (#1406) - Fixed the
--seed-offsetoption of the test suite. (#1409)
- Python
Published by tbekolay almost 8 years ago
nengo - 2.6.0 release
Added
- Added a
NoSolversolver that can be used to manually pass in a predefined set of decoders or weights to a connection. (#1352) - Added a
Piecewiseprocess, which replaces the now deprecatedpiecewisefunction. (#1036, #1100, #1355, #1362)
Changed
- The minimum required version of NumPy has been raised to 1.8. (#947)
- Learning rules can now have a learning rate of 0. (#1356)
- Running the simulator for zero timesteps will now issue a warning, and running for negative time will error. (#1354, #1357)
Fixed
- Fixed an issue in which the PES learning rule could not be used on connections to an
ObjViewwhen using a weight solver. (#1317) - The progress bar that can appear when building a large model will now appear earlier in the build process. (#1340)
- Fixed an issue in which
ShapeParamwould always storeNone. (#1342) - Fixed an issue in which multiple identical indices in a slice were ignored. (#947, #1361)
Deprecated
- The
piecewisefunction innengo.utils.functionshas been deprecated. Please use thePiecewiseprocess instead. (#1100)
- Python
Published by tbekolay over 8 years ago
nengo - 2.5.0 release
Added
- Added a
n_neuronsproperty toNetwork, which gives the number of neurons in the network, including all subnetworks. (#435, #1186) - Added a new example showing how adjusting ensemble tuning curves can improve function approximation. (#1129)
- Added a minimum magnitude option to
UniformHypersphere. (#799) - Added documentation on RC settings. (#1130)
- Added documentation on improving performance. (#1119, #1130)
- Added
LinearFilter.combinemethod to combine twoLinearFilterinstances. (#1312) - Added a method to all neuron types to compute ensemble
max_ratesandinterceptsgivengainandbias. (#1334)
Changed
- Learning rules now have a
size_inparameter and attribute, allowing both integers and strings to define the dimensionality of the learning rule. This replaces theerror_typeattribute. (#1307, #1310) -
EnsembleArray.n_neuronsnow gives the total number of neurons in all ensembles, including those in subnetworks. To get the number of neurons in each ensemble, useEnsembleArray.n_neurons_per_ensemble. (#1186) - The Nengo modelling API document now has summaries to help navigate the page. (#1304)
- The error raised when a
Connectionfunction returnsNoneis now more clear. (#1319) - We now raise an error when a
Connectiontransform is set toNone. (#1326)
Fixed
- Probe cache is now cleared on simulator reset. (#1324)
- Neural gains are now always applied after the synapse model. Previously, this was the case for decoded connections but not neuron-to-neuron connections. (#1330)
- Fixed a crash when a lock cannot be acquired while shrinking the cache. (#1335, #1336)
- Python
Published by tbekolay over 8 years ago
nengo - 2.4.0 release
Added
- Added an optimizer that reduces simulation time for common types of models. The optimizer can be turned off by passing
optimize=FalsetoSimulator. (#1035) - Added the option to not normalize encoders by setting
Ensemble.normalize_encoderstoFalse. (#1191, #1267) - Added the
Samplesdistribution to allow raw NumPy arrays to be passed in situations where a distribution is required. (#1233)
Changed
- We now raise an error when an ensemble is assigned a negative gain. This can occur when solving for gains with intercepts greater than 1. (#1212, #1231, #1248)
- We now raise an error when a
NodeorDirectensemble produces a non-finite value. (#1178, #1280, #1286) - We now enforce that the
labelof a network must be a string orNone, and that theseedof a network must be an int orNone. This helps avoid situations where the seed would mistakenly be passed as the label. (#1277, #1275) - It is now possible to pass NumPy arrays in the
ens_kwargsargument ofEnsembleArray. Arrays are wrapped in aSamplesdistribution internally. (#691, #766, #1233) - The default refractory period (
tau_ref) for theSigmoidneuron type has changed to 2.5 ms (from 2 ms) for better compatibility with the default maximum firing rates of 200-400 Hz. (#1248) - Inputs to the
ProductandCircularConvolutionnetworks have been renamed fromAandBtoinput_aandinput_bfor consistency. The old names are still available, but should be considered deprecated. (#887, #1296)
Fixed
Deprecated
- The
netargument to networks has been deprecated. This argument existed so that network components could be added to an existing network instead of constructing a new network. However, this feature is rarely used, and makes the code more complicated for complex networks. (#1296)
- Python
Published by tbekolay almost 9 years ago
nengo - 2.3.1 release
Added
- Added documentation on config system quirks. (#1224)
- Added nengo.utils.network.activate_direct_mode function to make it easier to activate direct mode in networks where some parts require neurons. (#1111, #1168)
Fixed - The matrix multiplication example will now work with matrices of any size and uses the product network for clarity. (#1159) - Fixed instances in which passing a callable class as a function could fail. (#1245) - Fixed an issue in which probing some attributes would be one timestep faster than other attributes. (#1234, #1245) - Fixed an issue in which SPA models could not be copied. (#1266, #1271) - Fixed an issue in which Nengo would crash if other programs had locks on Nengo cache files in Windows. (#1200, #1235)
Changed
- Integer indexing of Nengo objects out of range raises an IndexError now to be consistent with standard Python behaviour. (#1176, #1183)
- Documentation that applies to all Nengo projects has been moved to https://nengo.github.io/. (#1251)
- Python
Published by tbekolay about 9 years ago
nengo - 2.3.0 release
Added
- It is now possible to probe scaled_encoders on ensembles. (#1167, #1117)
- Added copy method to Nengo objects. Nengo objects can now be pickled. (#977, #984)
- A progress bar now tracks the build process in the terminal and Jupyter notebook. (#937, #1151)
- Added nengo.dists.get_samples function for convenience when working with distributions or samples. (#1181, docs)
Changed
- Access to probe data via nengo.Simulator.data is now cached, making repeated access much faster. (#1076, #1175)
- Python
Published by tbekolay about 9 years ago
nengo - 2.2.0 release
API changes
- It is now possible to pass a NumPy array to the function argument of nengo.Connection. The values in the array are taken to be the targets in the decoder solving process, which means that the eval_points must also be set on the connection. (#1010)
- nengo.utils.connection.target_function is now deprecated, and will be removed in Nengo 3.0. Instead, pass the targets directly to the connection through the function argument. (#1010)
Behavioural changes - Dropped support for NumPy 1.6. Oldest supported NumPy version is now 1.7. (#1147)
Improvements
- Added a nengo.backends entry point to make the reference simulator discoverable for other Python packages. In the future all backends should declare an entry point accordingly. (#1127)
- Added ShapeParam to store array shapes. (#1045)
- Added ThresholdingPreset to configure ensembles for thresholding. (#1058, #1077, #1148)
- Tweaked rasterplot so that spikes from different neurons don’t overlap. (#1121)
Documentation - Added a page explaining the config system and preset configs. (#1150)
Bug fixes
- Fixed some situations where the cache index becomes corrupt by writing the updated cache index atomically (in most cases). (#1097, #1107)
- The synapse methods filt and filtfilt now support lists as input. (#1123)
- Added a registry system so that only stable objects are cached. (#1054, #1068)
- Python
Published by tbekolay over 9 years ago
nengo - 2.1.2 release
Bug fixes - The DecoderCache is now more robust when used improperly, and no longer requires changes to backends in order to use properly. (#1112)
- Python
Published by tbekolay over 9 years ago
nengo - 2.1.1 release
Improvements
- Improved the default LIF neuron model to spike at the same rate as
the LIFRate neuron model for constant inputs. The older model has
been moved to nengo_extras under the name FastLIF. (#975)
- Added y0 attribute to WhiteSignal, which adjusts the phase of
each dimension to begin with absolute value closest to y0.
(#1064)
- Allow the AssociativeMemory to accept Semantic Pointer expressions
as input_keys and output_keys. (#982)
Bug fixes
- The DecoderCache is used as context manager instead of relying on
the __del__ method for cleanup. This should solve problems with
the cache’s file lock not being removed. It might be necessary to
manually remove the index.lock file in the cache directory after
upgrading from an older Nengo version. (#1053, #1041,
#1048)
- If the cache index is corrupted, we now fail gracefully by
invalidating the cache and continuing rather than raising an
exception. (#1110, #1097)
- The Nnls solver now works for weights. The NnlsL2 solver is
improved since we clip values to be non-negative before forming the
Gram system. (#1027, #1019)
- Eliminate memory leak in the parameter system. (#1089, #1090)
- Allow recurrence of the form a=b, b=a in basal ganglia SPA
actions. (#1098, #1099)
- Support a greater range of Jupyter notebook and ipywidgets versions
with the the ipynb extensions. (#1088, #1085)
- Python
Published by tbekolay over 9 years ago
nengo - 2.1.0 release
API changes
- A new class for representing stateful functions called Process has
been added. Node objects are now process-aware, meaning that a
process can be used as a node's output. Unlike non-process
callables, processes are properly reset when a simulator is reset.
See the processes.ipynb example notebook, or the API documentation
for more details. (#590,
#652,
#945,
#955)
- Spiking LIF neuron models now accept an additional argument,
min_voltage. Voltages are clipped such that they do not drop below
this value (previously, this was fixed at 0).
(#666)
- The PES learning rule no longer accepts a connection as an
argument. Instead, error information is transmitted by making a
connection to the learning rule object (e.g.,
nengo.Connection(error_ensemble, connection.learning_rule).
(#344,
#642)
- The modulatory attribute has been removed from nengo.Connection.
This was only used for learning rules to this point, and has been
removed in favor of connecting directly to the learning rule.
(#642)
- Connection weights can now be probed with
nengo.Probe(conn, 'weights'), and these are always the weights
that will change with learning regardless of the type of connection.
Previously, either decoders or transform may have changed
depending on the type of connection; it is now no longer possible to
probe decoders or transform.
(#729)
- A version of the AssociativeMemory SPA module is now available as a
stand-alone network in nengo.networks. The AssociativeMemory SPA
module also has an updated argument list.
(#702)
- The Product and InputGatedMemory networks no longer accept a
config argument.
(#814)
- The EnsembleArray network's neuron_nodes argument is deprecated.
Instead, call the new add_neuron_input or add_neuron_output
methods. (#868)
- The nengo.log utility function now takes a string level
parameter to specify any logging level, instead of the old binary
debug parameter. Cache messages are logged at DEBUG instead of
INFO level. (#883)
- Reorganised the Associative Memory code, including removing many
extra parameters from nengo.networks.assoc_mem.AssociativeMemory
and modifying the defaults of others.
(#797)
- Add close method to Simulator. Simulator can now be used used
as a context manager.
(#857,
#739,
#859)
- Most exceptions that Nengo can raise are now custom exception
classes that can be found in the nengo.exceptions module.
(#781)
- All Nengo objects (Connection, Ensemble, Node, and Probe)
now accept a label and seed argument if they didn't previously.
(#958)
- In nengo.synapses, filt and filtfilt are deprecated. Every
synapse type now has filt and filtfilt methods that filter using
the synapse. (#945)
- Connection objects can now accept a Distribution for the
transform argument; the transform matrix will be sampled from that
distribution when the model is built.
(#979).
Behavioural changes
- The sign on the PES learning rule's error has been flipped to
conform with most learning rules, in which error is minimized. The
error should be actual - target.
(#642)
- The PES rule's learning rate is invariant to the number of neurons
in the presynaptic population. The effective speed of learning
should now be unaffected by changes in the size of the presynaptic
population. Existing learning networks may need to be updated; to
achieve identical behavior, scale the learning rate by
pre.n_neurons / 100.
(#643)
- The probeable attribute of all Nengo objects is now implemented as
a property, rather than a configurable parameter.
(#671)
- Node functions receive x as a copied NumPy array (instead of a
readonly view). (#716,
#722)
- The SPA Compare module produces a scalar output (instead of a
specific vector).
(#775,
#782)
- Bias nodes in spa.Cortical, and gate ensembles and connections in
spa.Thalamus are now stored in the target modules.
(#894,
#906)
- The filt and filtfilt functions on Synapse now use the initial
value of the input signal to initialize the filter output
by default. This provides more accurate filtering at the beginning
of the signal, for signals that do not start at zero.
(#945)
Improvements
- Added Ensemble.noise attribute, which injects noise directly into
neurons according to a stochastic Process.
(#590)
- Added a randomized_svd subsolver for the L2 solvers. This can be
much quicker for large numbers of neurons or evaluation points.
(#803)
- Added PES.pre_tau attribute, which sets the time constant on a
lowpass filter of the presynaptic activity.
(#643)
- EnsembleArray.add_output now accepts a list of functions to be
computed by each ensemble.
(#562,
#580)
- LinearFilter now has an analog argument which can be set through
its constructor. Linear filters with digital coefficients can be
specified by setting analog to False.
(#819)
- Added SqrtBeta distribution, which describes the distribution of
semantic pointer elements.
(#414,
#430)
- Added Triangle synapse, which filters with a triangular FIR
filter. (#660)
- Added utils.connection.eval_point_decoding function, which
provides a connection's static decoding of a list of evaluation
points. (#700)
- Resetting the Simulator now resets all Processes, meaning the
injected random signals and noise are identical between runs, unless
the seed is changed (which can be done through Simulator.reset).
(#582,
#616,
#652)
- An exception is raised if SPA modules are not properly assigned to
an SPA attribute.
(#730,
#791)
- The Product network is now more accurate.
(#651)
- Numpy arrays can now be used as indices for slicing objects.
(#754)
- Config.configures now accepts multiple classes rather than
just one. (#842)
- Added add method to spa.Actions, which allows actions to be
added after module has been initialized.
(#861,
#862)
- Added SPA wrapper for circular convolution networks, spa.Bind
(#849)
- Added the Voja (Vector Oja) learning rule type, which updates an
ensemble's encoders to fire selectively for its inputs. (see
examples/learning/learn_associations.ipynb).
(#727)
- Added a clipped exponential distribution useful for thresholding, in
particular in the AssociativeMemory.
(#779)
- Added a cosine similarity distribution, which is the distribution of
the cosine of the angle between two random vectors. It is useful for
setting intercepts, in particular when using the Voja learning
rule. (#768)
- nengo.synapses.LinearFilter now has an evaluate method to
evaluate the filter response to sine waves of given frequencies.
This can be used to create Bode plots, for example.
(#945)
- nengo.spa.Vocabulary objects now have a readonly attribute that
can be used to disallow adding new semantic pointers. Vocabulary
subsets are read-only by default.
(#699)
- Improved performance of the decoder cache by writing all decoders of
a network into a single file.
(#946)
Bug fixes
- Fixed issue where setting Connection.seed through the constructor
had no effect. (#724)
- Fixed issue in which learning connections could not be sliced.
(#632)
- Fixed issue when probing scalar transforms.
(#667,
#671)
- Fix for SPA actions that route to a module with multiple inputs.
(#714)
- Corrected the rmses values in BuiltConnection.solver_info when
using NNls and Nnl2sL2 solvers, and the reg argument for
Nnl2sL2. (#839)
- spa.Vocabulary.create_pointer now respects the specified number of
creation attempts, and returns the most dissimilar pointer if none
can be found below the similarity threshold.
(#817)
- Probing a Connection's output now returns the output of that
individual Connection, rather than the input to the Connection's
post Ensemble. (#973,
#974)
- Fixed thread-safety of using networks and config in with
statements. (#989)
- The decoder cache will only be used when a seed is specified.
(#946)
- Python
Published by tbekolay almost 10 years ago
nengo - 2.0.4 release
Bug fixes
- Cache now fails gracefully if the legacy.txt file cannot be read.
This can occur if a later version of Nengo is used.
- Python
Published by tbekolay almost 10 years ago
nengo - 2.0.3 release
API changes
- The spa.State object replaces the old spa.Memory and
spa.Buffer. These old modules are deprecated and will be removed
in 2.2. (#796)
- Python
Published by tbekolay about 10 years ago
nengo - 2.0.2 release
2.0.2 is a bug fix release to ensure that Nengo continues to work with more recent versions of Jupyter (formerly known as the IPython notebook).
Behavioural changes
- The IPython notebook progress bar has to be activated with
%load_ext nengo.ipynb. (#693)
Improvements
- Added [progress] section to nengorc which allows setting
progress_bar and updater. (#693)
Bug fixes - Fix compatibility issues with newer versions of IPython, and Jupyter. (#693)
- Python
Published by tbekolay over 10 years ago
nengo - 2.0.1 release
Behavioural changes
- Node functions receive t as a float (instead of a NumPy scalar)
and x as a readonly NumPy array (instead of a writeable array).
(#626, #628)
Improvements
- rasterplot works with 0 neurons, and generates much smaller PDFs.
(#601)
Bug fixes - Fix compatibility with NumPy 1.6. (#627)
- Python
Published by tbekolay about 11 years ago
nengo - 2.0.0 release
Initial release of Nengo 2.0! Supports Python 2.6+ and 3.3+. Thanks to all of the contributors for making this possible!
- Python
Published by tbekolay about 11 years ago
nengo - 2.0.0 release candidate 1
First release candidate of Nengo 2.0.0.
- Python
Published by tbekolay about 11 years ago