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.. _gsoc-project-ideas:
Ideas
######
.. image:: ../_static/images/ideas-below.webp
:align: center
.. admonition:: How to participate?
Contributors are expected to go through the list of ideas dropdown below and join the discussion by clicking on the
``Discuss on forum`` button. All ideas have colorful badges for ``Complexity`` and
``Size`` for making the selection process easier for contributors. Anyone is welcome to
introduce new ideas via the `forum gsoc-ideas tag `_.
Only ideas with sufficiently experienced mentor backing as deemed by the administrators will
be added here.
+------------------------------------+-------------------------------+
| Complexity | Size |
+====================================+===============================+
| :bdg-danger:`High complexity` | :bdg-danger-line:`350 hours` |
+------------------------------------+-------------------------------+
| :bdg-success:`Medium complexity` | :bdg-success-line:`175 hours` |
+------------------------------------+-------------------------------+
| :bdg-info:`Low complexity` | :bdg-info-line:`90 hours` |
+------------------------------------+-------------------------------+
.. card:: Low-latency I/O RISC-V CPU core in FPGA fabric
:fas:`microchip;pst-color-primary` FPGA gateware improvements :bdg-success:`Medium complexity` :bdg-success-line:`175 hours`
^^^^
BeagleV-Fire features RISC-V 64-bit CPU cores and FPGA fabric. In that FPGA fabric, we'd like to
implement a RISC-V 32-bit CPU core with operations optimized for low-latency GPIO. This is similar
to the programmable real-time unit (PRU) RISC cores popularized on BeagleBone Black.
| **Goal:** RISC-V-based CPU on BeagleV-Fire FPGA fabric with GPIO
| **Hardware Skills:** Verilog, Verification, FPGA
| **Software Skills:** RISC-V ISA, assembly, `Linux`_
| **Possible Mentors:** `Cyril Jean `_, `Jason Kridner `_
++++
.. button-link:: https://forum.beagleboard.org/t/low-latency-risc-v-i-o-cpu-core/37156
:color: danger
:expand:
:fab:`discourse;pst-color-light` Discuss on forum
.. card:: Update beagle-tester for mainline testing
:fab:`linux;pst-color-primary` Linux kernel improvements :bdg-success:`Medium complexity` :bdg-danger-line:`350 hours`
^^^^
Utilize the ``beagle-tester`` application and ``Buildroot`` along with device-tree and udev symlink concepts within
the OpenBeagle continuous integration server context to create a regression test suite for the Linux kernel
and device-tree overlays on various Beagle computers.
| **Goal:** Execution on Beagle test farm with over 30 mikroBUS boards testing all mikroBUS enabled cape interfaces (PWM, ADC, UART, I2C, SPI, GPIO and interrupt) performing weekly mainline Linux regression verification
| **Hardware Skills:** basic wiring, familiarity with embedded serial interfaces
| **Software Skills:** device-tree, `Linux`_, `C`_, continuous integration with GitLab, Buildroot
| **Possible Mentors:** `Deepak Khatri `_, `Anuj Deshpande `_, `Dhruva Gole `_
++++
.. button-link:: https://forum.beagleboard.org/t/update-beagle-tester-for-cape-mikrobus-new-board-and-upstream-testing/37279
:color: danger
:expand:
:fab:`discourse;pst-color-light` Discuss on forum
.. card:: Upstream wpanusb and bcfserial
:fab:`linux;pst-color-primary` Linux kernel improvements :bdg-success:`Medium complexity` :bdg-success-line:`175 hours`
^^^^
These are the drivers that are used to enable Linux to use a BeagleConnect Freedom as a SubGHz IEEE802.15.4 radio (gateway).
They need to be part of upstream Linux to simplify on-going support. There are several gaps that are known before they are
acceptable upstream.
| **Goal:** Add functional gaps, submit upstream patches for these drivers and respond to feedback
| **Hardware Skills:** Familiarity with wireless communication
| **Software Skills:** `C`_, `Linux`_
| **Possible Mentors:** `Ayush Singh `_, `Jason Kridner `_
++++
.. button-link:: https://forum.beagleboard.org/t/upstream-wpanusb-and-bcfserial/37186
:color: danger
:expand:
:fab:`discourse;pst-color-light` Discuss on forum
.. card:: ``librobotcontrol`` support for newer boards
:fas:`wand-sparkles;pst-color-danger` Automation and industrial I/O :bdg-success:`Medium complexity` :bdg-success-line:`175 hours`
^^^^
Preliminary librobotcontrol support for BeagleBone AI, BeagleBone AI-64 and BeagleV-Fire has been drafted, but it
needs to be cleaned up. We can also work on support for Raspberry Pi if UCSD releases their Hat for it.
| **Goal:** Update librobotcontrol for Robotics Cape on BeagleBone AI, BeagleBone AI-64 and BeagleV-Fire
| **Hardware Skills:** Basic wiring, some DC motor familiarity
| **Software Skills:** `C`_, `Linux`_
| **Possible Mentors:** `Deepak Khatri `_, `Jason Kridner `_
++++
.. button-link:: https://forum.beagleboard.org/t/librobotcontrol-support-for-newer-boards/37187
:color: danger
:expand:
:fab:`discourse;pst-color-light` Discuss on forum
.. card:: Upstream Zephyr Support on BBAI-64 R5
:fas:`timeline;pst-color-secondary` RTOS/microkernel imporvements :bdg-success:`Medium complexity` :bdg-success-line:`350 hours`
^^^^
Incorporating Zephyr RTOS support onto the Cortex-R5 cores of the TDA4VM SoC along with Linux operation on the A72 core. The objective is to harness the combined capabilities of both systems
to support BeagleBone AI-64.
| **Goal:** submit upstream patches to support BeagleBone AI-64 and respond to feedback
| **Hardware Skills:** Familiarity with ARM Cortex R5
| **Software Skills:** `C`_, `RTOS `_
| **Possible Mentors:** `Dhruva Gole `_, `Nishanth Menon `_
| **Upstream Repository:** `The primary repository for Zephyr Project `_
++++
.. button-link:: https://forum.beagleboard.org/t/upstream-zephyr-support-on-bbai-64-r5/37294/1
:color: danger
:expand:
:fab:`discourse;pst-color-light` Discuss on forum
.. card:: Enhanced Media Experience with AI-Powered Commercial Detection and Replacement
:fas:`brain;pst-color-secondary` Deep Learning :bdg-success:`Medium complexity` :bdg-success-line:`350 hours`
^^^^
Leveraging the capabilities of BeagleBoard’s powerful processing units, the project will focus on creating a real-time, efficient solution that enhances media consumption experiences by seamlessly integrating custom audio streams during commercial breaks.
| **Goal:** Build a deep learning model, training data set, training scripts, and a runtime for detection and modification of the video stream.
| **Hardware Skills:** Ability to capture and display video streams using `Beagleboard ai-64 `_
| **Software Skills:** `Python `_, `TensorFlow `_, `TFlite `_, `Keras `_, `GStreamer `_, `OpenCV `_
| **Possible Mentors:** `Jason Kridner `_, `Deepak Khatri `_
++++
.. card:: Embedded differentiable logic gate networks for real-time interactive and creative applications
:fas:`brain;pst-color-secondary` Creative AI :bdg-success:`Medium complexity` :bdg-success-line:`350 hours`
^^^^
This project seeks to explore the potential of creative embedded AI, specifically using `Differentiable Logic (DiffLogic) `_, by creating a system that can perform tasks like machine listening, sensor processing, sound and gesture classification, and generative AI.
| **Goal:** Develop an embedded machine learning system on BeagleBone that leverages `Differentiable Logic (DiffLogic) `_ for real-time interactive music creation and environment sensing.
| **Hardware Skills:** Audio and sensor IO with `Bela.io `_
| **Software Skills:** Machine learning, deep learning, BeagleBone Programmable Real Time Unit (PRU) programming (see `PRU Cookbook `_).
| **Possible Mentors:** `Jack Armitage `_, `Chris Kiefer `_
++++
.. button-link:: https://forum.beagleboard.org/t/enhanced-media-experience-with-ai-powered-commercial-detection-and-replacement/37358
:color: danger
:expand:
:fab:`discourse;pst-color-light` Discuss on forum
.. button-link:: https://forum.beagleboard.org/tag/gsoc-ideas
:color: danger
:expand:
:outline:
:fab:`discourse;pst-color-light` Visit our forum to see newer ideas being discussed!
.. tip::
You can also check our our :ref:`gsoc-old-ideas` and :ref:`Past_Projects` for inspiration.
.. _Linux:
https://docs.beagleboard.org/latest/intro/beagle101/linux.html
.. _C:
https://jkridner.beagleboard.io/docs/latest/intro/beagle101/learning-c.html