Devpost
Participate in our public hackathons
Devpost for Teams
Access your company's private hackathons
Grow your developer ecosystem and promote your platform
Drive innovation, collaboration, and retention within your organization
By use case
Blog
Insights into hackathon planning and participation
Customer stories
Inspiration from peers and other industry leaders
Planning guides
Best practices for planning online and in-person hackathons
Webinars & events
Upcoming events and on-demand recordings
Help desk
Common questions and support documentation
The goal of the project is to develop graph neural networks to predict the permeability of molecules through the blood-brain barrier.
Summarize large videos and texts into slides
Keep your side effects aside: doctors and patients can leverage the power of being able to predict the likely side effects a drug would have on the patient!
Farmers waste hours scouring fields to find weeds, our model helps them drastically reduce this time. Weed Detech helps farmer detect the position of weed on a field with a single photo click.
Monitor your ML Training, Evaluation, and Prediction from Mobile Devices!
We worked on creating a Jekyll Portfolio website template adding quite a few features and allowing anyone to easily start using this template
Use Postman Visualizer to better understand and visualize the inner workings of a TensorFlow Deep Learning Model
This is a web application🌐 that could help easily diagnose diseases in plants 🌱 for crop-growers using Machine Learning all on the web, powered by TensorFlow JS
🌱This hack by me allows one to identify between 38 plant diseases from plant leaf images using Machine Learning all on the web open for anyone to try out!
Identify Plant Diseases using Computer Vision with TensorFlow
I tried creating my own Kandan styled GitHub Project
A Twitter bot to keep you updated about new updates or tweets about TensorFlow
This project is capable of enhancing low-light images up to a great extent with the MIRNet model now possible all on the web!
My first try to write some Go code