PyRTL provides a collection of classes for Pythonic register-transfer level design, simulation, tracing, and testing suitable for teaching and research. Simplicity, usability, clarity, and extensibility rather than performance or optimization is the overarching goal. Features include:
- Elaboration-through-execution, meaning all of Python can be used including introspection
- Design, instantiate, and simulate all in one file and without leaving Python
- Export to, or import from, common HDLs (BLIF-in, Verilog-out currently supported)
- Examine execution with waveforms on the terminal or export to
.vcd
as projects scale - Elaboration, synthesis, and basic optimizations all included
- Small and well-defined internal core structure means writing new transforms is easier
- Batteries included means many useful components are already available and more are coming every week
What README would be complete without a screenshot? Below you can see the waveform rendered right on the terminal for a small state machine written in PyRTL.
- For users, more info and demo code is available on the PyRTL project web page.
- Try the examples in the
examples/
directory. You can also try the examples on MyBinder. - Full reference documentation is available at https://pyrtl.readthedocs.io/
If you are just getting started with PyRTL it is suggested that you start with
the examples/
first to get a sense of the "thinking with PyRTLs" required to
design hardware in this way. If you are looking for a deeper understanding,
dive into the code for the object Block
. It is the core data structure at the
heart of PyRTL and defines its semantics at a high level -- everything is
converted to or from the small, simple set of primitives defined there.
The package contains the following files and directories:
pyrtl/
The src directory for the modulepyrtl/rtllib/
Finished PyRTL libraries which are hopefully both useful and documentedexamples/
A set of hardware design examples that show the main idea behind pyrtltests/
A set of unit tests for PyRTL which you can run withpytest
docs/
Location of the sphinx documentation
Testing requires the Python packages tox
and pytest
. Once installed a
complete test of the system should be possible with the simple command tox
and nothing more.
Picking a first project
- One of the earliest things you should submit is a unit test that hits some
uncovered lines of code in
PyRTL. For
example, pick a
PyrtlError
that is not covered and add a unit test intests/
that will hit it. - After you have that down check in the PyRTL Issues list for a feature that is marked as "beginner friendly".
- Once you have that down, ask for access to the PyRTL-research repo where we keep a list of more advanced features and designs that could use more help!
Coding style
- All major functionality should have unit tests covering and documenting their use
- All public functions and methods should have useful docstrings
- All code needs to conform to PEP8 conventions
- No new root-level dependencies on external libs, import locally if required for special functions
Workflow
- A useful reference for working with Git is this Git tutorial
- A useful Git Fork workflow for working on this repo is found here
- The
development
branch is the primary stable working branch (everyone is invited to submit pull requests) - Bugs and minor enhancements tracked directly through the issue tracker
- When posting a bug please post a small chunk of code that captures the bug, e.g. Issue #56
- When pushing a fix to a bug or enhancement please reference issue number in commit message, e.g. Fix to Issue #56
Documentation
- All important functionality should have an executable example in
examples/
- All classes should have a block comment with high level description of the class
- All functions should follow the following (Sphinx parsable) docstring format:
"""One Line Summary (< 80 chars) of the function, followed by period. :param param_name : Description of this parameter. :param param_name : Longer parameter descriptions take up a newline with four leading spaces like this. :return: Description of function's return value. A long description of what this function does. Talk about what the user should expect from this function and also what the users needs to do to use the function (this part is optional). """ # Developer Notes (Optional): # # These would be anything that the user does not need to know in order to use # the functions. # These notes can include internal workings of the function, the logic behind # it, or how to extend it.
- Sphinx parses Python type annotations, so put type information into annotations instead of docstrings.
- The Sphinx-generated documentation is published to https://pyrtl.readthedocs.io/
- PyRTL's Sphinx build process is documented in
docs/README.md
. - PyRTL's release process is documented in
docs/release/README.md
.
We love to hear from users about their projects, and if there are issues we will try our best to push fixes quickly. You can read more about how we have been using it in our research at UCSB both in simulation and on FPGAs in our PyRTL paper at FPL.
It is always important to point out that PyRTL builds on the ideas of several other related projects as we all share the common goal of trying to make hardware design a better experience! You can read more about those relationships on our PyRTL project web page.