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''Code'': [https://github.com/DhruvaG2000/gsoc-application gsoc-application]<br>
''Code'': [https://github.com/DhruvaG2000/gsoc-application gsoc-application]<br>
''Wiki'': http://elinux.org/BeagleBoard/GSoC/ProposalTemplate<br>
''Wiki'': http://elinux.org/BeagleBoard/GSoC/ProposalTemplate<br>
''GSoC'': [https://elinux.org/BeagleBoard/GSoC/Ideas-2021#Blynk_support_for_BeagleBone_Boards GSoC entry]<br>
''GSoC'': [https://elinux.org/BeagleBoard/GSoC/Ideas-2021#librobotcontrol_support_for_BeagleBone_AI_and_Robotics_Cape GSoC entry]<br>
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Revision as of 04:52, 1 April 2021

Proposal for Librobotcontrol Lib support for Beagleboard AI

About Student: Dhruva Gole
Mentors: Jason Kridner
Code: gsoc-application
Wiki: http://elinux.org/BeagleBoard/GSoC/ProposalTemplate
GSoC: GSoC entry


This project is currently just a proposal.


Completed all the requirements listed on the ideas page. The code for the cross-compilation task can be found here submitted through the pull request #149.

About you

IRC: dhruvag2000
Github: https://github.com/DhruvaG2000
School: Veermata Jijabai Technological Inst.
Country: India
Primary language : English, Marathi, Hindi
Typical work hours: 10AM - 7PM Indian Standard Time
Previous GSoC participation: I find embedded and IOT pretty interesting, given I have experience with ESP32, SIMCOM, ESP8266, Arduino UNO I think I will be able to excel in this project. This is the first time i am participating in GSoC.

About your project

Project name: librobotcontrol support for BeagleBone AI



BeagleBone gets used a lot in automation tasks, be they in industrial, building, home or otherwise. Software that helps enable individual hobbyists, but can bridge into professional automation tasks, is strongly desired.
The Robot Control Library package contains the C library and example/testing programs for the Robot Control project. This project began as a hardware interface for the Robotics Cape and later the BeagleBone Blue and was originally called Robotics_Cape_Installer. It grew to include an extensive math library for discrete time feedback control, as well as a plethora of POSIX-compliant functions for timing, threads, program flow, and lots more, all aimed at developing robot control software on embedded computers.

This project will enable the control of the Beaglebone's PRUs using remoteproc and rpmsg driver rather than using uio drivers. The PRU is a dual core micro-controller system present on the AM335x SoC which powers the BeagleBone. It is meant to be used for high speed jitter free IO control. Being independent from the linux scheduler and having direct access to the IO pins of the BeagleBone Black, the PRU is ideal for offloading IO intensive tasks.

The library and example programs are primarily written in C, and has been well tested on the BeagleBone Blue.

Why to port it to the BeagleBone AI?
Built on the proven BeagleBoard.org® open source Linux approach, BeagleBone® AI fills the gap between small SBCs and more powerful industrial computers. Based on the Texas Instruments AM5729, developers have access to the powerful SoC with the ease of BeagleBone® Black header and mechanical compatibility. BeagleBone® AI makes it easy to explore how artificial intelligence (AI) can be used in everyday life via the TI C66x digital-signal-processor (DSP) cores and embedded-vision-engine (EVE) cores supported through an optimized TIDL machine learning OpenCL API with pre-installed tools. Focused on everyday automation in industrial, commercial and home applications.
It uses the Dual Arm® Cortex®-A15 microprocessor subsystem and further specs can be found on the official website

What I like most about librobotcontrol, is that it allows new users to get a very intuitive hardware interface for the board it is being used on. Currently it only supports Robotics Cape and the BeagleBone Blue and Black. But with the evolution of AI on the edge, porting this library to be used onboard the BeagleBone® AI will prove to be very useful to a lot of hardware enthusiasts, AI/ML developers and hobbyists to deploy edge computing solutions along with easy to program hardware.

Features to be implemented
  1. Port this package to support the BeagleBone® AI.
  2. Port all the existing examples to run on BeagleBone® AI.
  3. Fill out the TODOs on the official System Reference Manual of the beaglebone AI
  4. Add the necessary docs on librobotcontrol website .

Details of implementation

Port this library to support the BeagleBone® AI.
The BeagleBone® Blue lacks TI C66x digital-signal-processor (DSP) cores and embedded-vision-engine (EVE) cores which the AI board has. This enables machine learning tools to be integrted with a device capable of programmable hardware IOs. However it still lacks a proper hardware interface which is where the need to provide librobotcontrol support comes in.
The beaglebone AI has many programmable PRU General-Purpose Output and Input pins as give on https://github.com/beagleboard/beaglebone-ai/wiki/System-Reference-Manual#detailed-hardware-design device docs page]
Implement a library to simplify tasks like writing to a pin, reading from a pin, delay, accessing memory.
Port all the existing examples to work on beagle AI.
Reimplement stock examples in librobotcontrol repository
  1. bare_minimum
  2. blink
  3. read and write operation of UART buses
  4. test_adc
I intend to port as many examples as the board can support using it's hardware to the examples directory.


May 17 Proposal accepted or rejected Community Bonding Period and discussion on the project and resources available.
Jun 07 Pre-work complete Coding officially begins!
June 17 Milestone #1
  • Introductory YouTube video
  • Setting up beaglebone-ai i.e flashing up to date Linux image and connect to local area network (LAN) via either Ethernet or WiFi.
  • Try to run bare_minimum code from this repository
  • Making the button.h and led.h libraries compatible with the AI board.


June 24 Milestone #2
  • Implementing rc_led_set, rc_led_cleanup, rc_button_cleanup and the rc_set_state functions specific to beagle AI.
  • Testing the above functions
  • Writing documentation for same
June 30 Milestone #3
  • Implementing rc/time.h library and it's functions rc_nanos_since_epoch(), rc_nanos_since_boot, rc_nanos_thread_time.
  • Testing the above functions
  • Writing documentation for same
July 12 -July 16 18:00 UTC Milestone #4 (Phase 1 evaluations)
  • Demonstrating use of implemented functions by creating and executing an example program to demonstrate use of LEDs and button handlers.
  • Finalizing and documenting everything done till now, submitting first report for evaluation.
July 23 Milestone #5
  • Porting the uart library
  • Testing the functions like rc_uart_write, rc_uart_read_bytes , etc.
  • Writing documentation
July 30 Milestone #6
  • Adding Linux I2C driver support on the Beagle AI
  • Adding examples for using I2C protocol to pair with external devices like an ADS1115.
Aug 06 Milestone #7
  • Add spi support.
  • Writing examples and documentation for above implemented protocols
August 10 August 16 - 26 18:00 UTC Milestone #8 (Phase 2 evaluations)
  • Demonstrating use of UART, I2c and SPI to communicate with an external MCU.
  • Finalizing and documenting everything done till now, submitting second report for evaluation
August 23 - 30 18:00 UTC Mentors submit final student evaluations

Experience and approach

I have decent experience in C++, C and Python. I have done several projects involving embedded systems like ESP32, Arduino UNO, ESP8266 and am well-versed with freeRTOS. I recently did a project using ESP32, in which I used the DHT11 sensor to display humidity and temperature on a local HTML server . Other than that I have developed firmware for a 3 DOF arm based on an ESP32 custom board. I also interned at an embedded device startup where I

  1. Interfaced ADS1115 ADC with the ESP32 and used it to read battery voltage.
  2. Used UART for ESP32 and SIMCOM SIM 7600IE communication to gain LTE support.
  3. Published local sensor data to the cloud via LTE.

I actively contribute to open source and do a lot of mini projects throughout the year, you can find my several more interesting projects at my github page


I believe that if I get stuck on my project and my mentor isn’t around, I will use the resources that are available to me. this includes looking on online forums for support, trying approaches that have worked from previous experience and also getting in touch with professionals via IRC/other media for support.


Complete implementation of librobotcontrol on BeagleBone AI is necessary.
-Jason Kridner