@Discord-Server: Hugging Face https://discord.com/invite/feTf9x3ZSB
@Discord-Name : Luca Vivona
A web application with a backend in Flask and frontend in React, and React flow node base environment to stream both Gradio ( and later Streamlit ) interfaces, within a single application.
[ ] Node
Node Menu
+ button
for catching errors and wrong inputs+ button
now includes hugginface spaces, and gradio share
backend/src/resources
allowing you to append all your registered functions with only using the frontend.[ ] API Input and Output components
You will need: (Docker build ๐ณ Currently Only on: Linux/Windows/Mac)
(Running Without docker)
Starting up it's simple as every command is already within the Makefile.
make up
// command running: docker-compose up -d --remove-orphans;
// **Ubuntu** sudo make up
The React application will be running on http://localhost:3000
and the Flask will be running on http://localhost:2000
make environment
// command running: docker exec -it backend bash;
// **Ubuntu** sudo make environment
Now that you're within the docker backend container environment you can start adding gradio/streamlit nodes within the frontend. (Extra Note) You do not need to be within the container environment to append nodes there is a feature to just run your own gradio application and then append it within the frontend by using the + button.
> cd ./src/demo
> python demo.py -l 2000
//run example gradio application
./frontend
)npm install
./frontend
)npm start
./backend
)pip install -r requirements.txt
python app.py -p 2000
//**NOTE** -p 2000 just assignes it localhost port 2000 anyother port will not work
It is quite simple, and similar within the docker build, the first way you can append your gradio to the Gradio flow is through running your application at a reachable url that is provided ed when you run Gradio and appending it via + button
within the frontend, another way that is possible is that within the directory ./backend/src/resources
there is a code that you can use to convert your own class or functional base code into basic gradio tabular interface by using decorators, these decorators will send the nesarry information to the backend flask api and update the frontend menu state in which you'll will be able to interact with it within the front end creating a hub for gradio build functions(read more here or look at the code here ).
NOTE If you use the gradio decorator compiler for gradio flow you need to set a listen port to 2000 or else the api will never get the key and will throw you an error, I'll also provided an example below if this isn't clear.
# (functional base)
##########
from resources import register, tabularGradio
@register(["text"], ["text"], examples=[["Luca Vivona"]])
def Hello_World(name):
return f"๐ Hello {name}, and welcome to Gradio Flow ๐ค"
if __name__ == "__main__":
# run single gradio
tabularGradio([Hello_World]) # tabularGradio([Hello_World], ["Greeting"])
# run it within Gradio-Flow
# tabularGradio([Hello_World], listen=2000) # tabularGradio([Hello_World], ["Greeting"], listen=2000)
#(Class Base)
###########
from resources import GradioModule, register
@GradioModule
class Greeting:
@register(["text"], ["text"], examples=[["Luca Vivona"]])
def Hello_World(self, name):
return f"๐ Hello {name}, and welcome to Gradio Flow ๐ค"
if __name__ == "__main__":
# run just gradio
Greeting().launch()
# run it within Gradio-flow
# Greeting().launch(listen=2000)
Within the backend/src/demo
directory there are some demos
# type : class | function | load | None
# port : 2000 | None
# python demo.py -e [type] -l [port]
(e.g)
> python demo.py -e class -l 2000
> python demo.py -e class