NestML is a domain specific language that supports the specification of neuron models in a precise and concise syntax, based on the syntax of Python. Model equations can either be given as a simple string of mathematical notation or as an algorithm written in the built-in procedural language. The equations are analyzed by NESTML to compute an exact solution if possible or use an appropriate numeric solver otherwise.
models
- Example neuron models in NestML format.
pynestml
- The source code of PyNestML.
tests
- A collection of tests for testing of the toolchain's behavior.
doc
- The documentation of the modeling language NestML as well as processing toolchain PyNestML.
extras
- Miscellaneous development tools, editor syntax highlighting rules, etc.
In order to execute the language tool-chain, Python in version 2 or 3 is required.
To ensure correct installation and resolving of dependencies, Python's package manager pip, the distribution tool setuptools as well as the python headers (python-dev
on Ubuntu/Debian, python-devel
on most other linux platforms) package are required and should be installed in advance. The setup file additionally installs the following components:
- SymPy in the version >= 1.1.1
- NumPy in the version >=1.8.2
- Antlr4 runtime environment in the version >= 4.7
In the case that no 'enum' package is found, additionally, enum34 has to be updated by
pip install --upgrade pip enum34
First of all, you should make sure that all required packages are installed.
Requirements are stored in requirements.txt
and can be installed in one step through pip by running
pip install -r requirements.txt
Once all requirements are installed, a setup file is provided and can be run on Python 2 via
python2 setup.py install --user
Or for Python 3:
python3 setup.py install --user
Correct installation can then be tested by
python2 setup.py test
\# respectively python3 setup.py test
After the installation, the toolchain can be executed by the following command.
python PyNestML.py ARGUMENTS
Command | Description |
---|---|
-h or --help | Print help message. |
--input_path | Path to the source file or directory containing the model. |
--target_path | (Optional) Path to target directory where models will be generated to. Default is target . |
--target | (Optional) The name of the target platform to generate code for. Default is NEST. |
--logging_level | (Optional) Sets the logging level, i.e., which level of messages should be printed. Default is ERROR, available are [INFO, WARNING, ERROR, NO] |
--module_name | (Optional) Sets the name of the module which shall be generated. Default is the name of the directory containing the models. The name has to end in "module". Default is nestmlmodule . |
--store_log | (Optional) Stores a log.txt containing all messages in JSON notation. Default is OFF. |
--dev | (Optional) Enable development mode: code generation is attempted even for models that contain errors, and extra information is rendered in the generated code. Default is OFF. |
Generated artifacts are copied to the selected target directory (default is target
). In order to install the models into NEST, the following commands have to be executed from within the target directory:
cmake -Dwith-nest=<nest_install_dir>/bin/nest-config .
make all
make install
where <nest_install_dir>
is the installation directory of NEST (e.g. /home/nest/work/nest-install
). Subsequently, the module can either be linked into NEST (see Writing an extension module), or loaded dynamically using the Install
API function. For example, to dynamically load a module with module_name
= nestmlmodule
in PyNEST:
nest.Install("nestmlmodule")
PyNestML is also available as a component and can therefore be used from within other Python tools and scripts. After PyNestML has been installed, the following modules have to be imported:
from pynestml.frontend.pynestml_frontend import to_nest, install_nest
Subsequently, it is possible to call PyNestML from other Python tools and scripts via:
to_nest(input_path, target_path, logging_level, module_name, store_log, dev)
This operation expects the same set of arguments as in the case of command line invocation. The following default values are used, corresponding to the command line defaults. Possible values for logging_level
are the same as before ('INFO', 'WARNING', 'ERROR', 'NO'). Note that only the path
argument is mandatory:
Argument | Type | Default |
---|---|---|
input_path | string | no default |
target_path | string | None |
logging_level | string | 'ERROR' |
module_name | string | nestmlmodule |
store_log | boolean | False |
dev | boolean | False |
If no errors occur, the output will be generated into the specified target directory. In order to avoid an execution of all required module-installation routines by hand, PyNestML features a function for an installation of NEST models directly into NEST:
install_nest(models_path, nest_path)
Here, models_path
should be set to the target
directory of to_nest()
, and nest_path
points to the directory where NEST is installed (e.g., /home/nest/work/nest-install
).
A typical script, therefore, could look like the following. For this example, we assume that the name of the generated module is nestmlmodule.
from pynestml.frontend.pynestml_frontend import to_nest, install_nest
to_nest(input_path="/home/nest/work/pynestml/models", target_path="/home/nest/work/pynestml/target")
install_nest("/home/nest/work/pynestml/target", "/home/nest/work/nest-install")
nest.Install("nestmlmodule")
...
nest.Simulate(400.0)
For an in-depth introduction to the underlying modeling language NestML, please refer to the NestML language documentation.
For those interested in the implementation of PyNestML or the general structure of a DSL-processing toolchain, please refer to the PyNestML documentation.
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Inga Blundell, Dimitri Plotnikov, Jochen Martin Eppler and Abigail Morrison (2018) Automatically selecting a suitable integration scheme for systems of differential equations in neuron models. Front. Neuroinform. doi:10.3389/fninf.2018.00050. Preprint available on Zenodo.
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Konstantin Perun, Bernhard Rumpe, Dimitri Plotnikov, Guido Trensch, Jochen Martin Eppler, Inga Blundell and Abigail Morrison (2018). Reengineering NestML with Python and MontiCore (Version 2.4). Zenodo. doi:10.5281/zenodo.1319653.
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Dimitri Plotnikov, Bernhard Rumpe, Inga Blundell, Tammo Ippen, Jochen Martin Eppler and Abigail Morrison (2016). NESTML: a modeling language for spiking neurons. In Modellierung 2016, March 2-4 2016, Karlsruhe, Germany. 93–108. doi:10.5281/zenodo.1412345.