Introducing Gradio ClientsJoin us on Thursday, 9am PST
LivestreamIntroducing Gradio ClientsJoin us on Thursday, 9am PST
LivestreamThe Gradio Python client makes it very easy to use any Gradio app as an API. As an example, consider this Hugging Face Space that transcribes audio files that are recorded from the microphone.
Using the gradio_client
library, we can easily use the Gradio as an API to transcribe audio files programmatically.
Here's the entire code to do it:
from gradio_client import Client, file
client = Client("abidlabs/whisper")
client.predict(
audio=file("audio_sample.wav")
)
>> "This is a test of the whisper speech recognition model."
The Gradio client works with any hosted Gradio app! Although the Client is mostly used with apps hosted on Hugging Face Spaces, your app can be hosted anywhere, such as your own server.
Prerequisites: To use the Gradio client, you do not need to know the gradio
library in great detail. However, it is helpful to have general familiarity with Gradio's concepts of input and output components.
If you already have a recent version of gradio
, then the gradio_client
is included as a dependency. But note that this documentation reflects the latest version of the gradio_client
, so upgrade if you're not sure!
The lightweight gradio_client
package can be installed from pip (or pip3) and is tested to work with Python versions 3.9 or higher:
$ pip install --upgrade gradio_client
Start by connecting instantiating a Client
object and connecting it to a Gradio app that is running on Hugging Face Spaces.
from gradio_client import Client
client = Client("abidlabs/en2fr") # a Space that translates from English to French
You can also connect to private Spaces by passing in your HF token with the hf_token
parameter. You can get your HF token here: https://huggingface.co/settings/tokens
from gradio_client import Client
client = Client("abidlabs/my-private-space", hf_token="...")
While you can use any public Space as an API, you may get rate limited by Hugging Face if you make too many requests. For unlimited usage of a Space, simply duplicate the Space to create a private Space, and then use it to make as many requests as you'd like!
The gradio_client
includes a class method: Client.duplicate()
to make this process simple (you'll need to pass in your Hugging Face token or be logged in using the Hugging Face CLI):
import os
from gradio_client import Client, file
HF_TOKEN = os.environ.get("HF_TOKEN")
client = Client.duplicate("abidlabs/whisper", hf_token=HF_TOKEN)
client.predict(file("audio_sample.wav"))
>> "This is a test of the whisper speech recognition model."
If you have previously duplicated a Space, re-running duplicate()
will not create a new Space. Instead, the Client will attach to the previously-created Space. So it is safe to re-run the Client.duplicate()
method multiple times.
Note: if the original Space uses GPUs, your private Space will as well, and your Hugging Face account will get billed based on the price of the GPU. To minimize charges, your Space will automatically go to sleep after 1 hour of inactivity. You can also set the hardware using the hardware
parameter of duplicate()
.
If your app is running somewhere else, just provide the full URL instead, including the "http://" or "https://". Here's an example of making predictions to a Gradio app that is running on a share URL:
from gradio_client import Client
client = Client("https://bec81a83-5b5c-471e.gradio.live")
Once you have connected to a Gradio app, you can view the APIs that are available to you by calling the Client.view_api()
method. For the Whisper Space, we see the following:
Client.predict() Usage Info
---------------------------
Named API endpoints: 1
- predict(audio, api_name="/predict") -> output
Parameters:
- [Audio] audio: filepath (required)
Returns:
- [Textbox] output: str
We see that we have 1 API endpoint in this space, and shows us how to use the API endpoint to make a prediction: we should call the .predict()
method (which we will explore below), providing a parameter input_audio
of type str
, which is a filepath or URL
.
We should also provide the api_name='/predict'
argument to the predict()
method. Although this isn't necessary if a Gradio app has only 1 named endpoint, it does allow us to call different endpoints in a single app if they are available.
As an alternative to running the .view_api()
method, you can click on the "Use via API" link in the footer of the Gradio app, which shows us the same information, along with example usage.
The View API page also includes an "API Recorder" that lets you interact with the Gradio UI normally and converts your interactions into the corresponding code to run with the Python Client.
The simplest way to make a prediction is simply to call the .predict()
function with the appropriate arguments:
from gradio_client import Client
client = Client("abidlabs/en2fr", api_name='/predict')
client.predict("Hello")
>> Bonjour
If there are multiple parameters, then you should pass them as separate arguments to .predict()
, like this:
from gradio_client import Client
client = Client("gradio/calculator")
client.predict(4, "add", 5)
>> 9.0
It is recommended to provide key-word arguments instead of positional arguments:
from gradio_client import Client
client = Client("gradio/calculator")
client.predict(num1=4, operation="add", num2=5)
>> 9.0
This allows you to take advantage of default arguments. For example, this Space includes the default value for the Slider component so you do not need to provide it when accessing it with the client.
from gradio_client import Client
client = Client("abidlabs/image_generator")
client.predict(text="an astronaut riding a camel")
The default value is the initial value of the corresponding Gradio component. If the component does not have an initial value, but if the corresponding argument in the predict function has a default value of None
, then that parameter is also optional in the client. Of course, if you'd like to override it, you can include it as well:
from gradio_client import Client
client = Client("abidlabs/image_generator")
client.predict(text="an astronaut riding a camel", steps=25)
For providing files or URLs as inputs, you should pass in the filepath or URL to the file enclosed within gradio_client.file()
. This takes care of uploading the file to the Gradio server and ensures that the file is preprocessed correctly:
from gradio_client import Client, file
client = Client("abidlabs/whisper")
client.predict(
audio=file("https://audio-samples.github.io/samples/mp3/blizzard_unconditional/sample-0.mp3")
)
>> "My thought I have nobody by a beauty and will as you poured. Mr. Rochester is serve in that so don't find simpus, and devoted abode, to at might in a r—"
Oe should note that .predict()
is a blocking operation as it waits for the operation to complete before returning the prediction.
In many cases, you may be better off letting the job run in the background until you need the results of the prediction. You can do this by creating a Job
instance using the .submit()
method, and then later calling .result()
on the job to get the result. For example:
from gradio_client import Client
client = Client(space="abidlabs/en2fr")
job = client.submit("Hello", api_name="/predict") # This is not blocking
# Do something else
job.result() # This is blocking
>> Bonjour
Alternatively, one can add one or more callbacks to perform actions after the job has completed running, like this:
from gradio_client import Client
def print_result(x):
print("The translated result is: {x}")
client = Client(space="abidlabs/en2fr")
job = client.submit("Hello", api_name="/predict", result_callbacks=[print_result])
# Do something else
>> The translated result is: Bonjour
The Job
object also allows you to get the status of the running job by calling the .status()
method. This returns a StatusUpdate
object with the following attributes: code
(the status code, one of a set of defined strings representing the status. See the utils.Status
class), rank
(the current position of this job in the queue), queue_size
(the total queue size), eta
(estimated time this job will complete), success
(a boolean representing whether the job completed successfully), and time
(the time that the status was generated).
from gradio_client import Client
client = Client(src="gradio/calculator")
job = client.submit(5, "add", 4, api_name="/predict")
job.status()
>> <Status.STARTING: 'STARTING'>
Note: The Job
class also has a .done()
instance method which returns a boolean indicating whether the job has completed.
The Job
class also has a .cancel()
instance method that cancels jobs that have been queued but not started. For example, if you run:
client = Client("abidlabs/whisper")
job1 = client.submit(file("audio_sample1.wav"))
job2 = client.submit(file("audio_sample2.wav"))
job1.cancel() # will return False, assuming the job has started
job2.cancel() # will return True, indicating that the job has been canceled
If the first job has started processing, then it will not be canceled. If the second job has not yet started, it will be successfully canceled and removed from the queue.
Some Gradio API endpoints do not return a single value, rather they return a series of values. You can get the series of values that have been returned at any time from such a generator endpoint by running job.outputs()
:
from gradio_client import Client
client = Client(src="gradio/count_generator")
job = client.submit(3, api_name="/count")
while not job.done():
time.sleep(0.1)
job.outputs()
>> ['0', '1', '2']
Note that running job.result()
on a generator endpoint only gives you the first value returned by the endpoint.
The Job
object is also iterable, which means you can use it to display the results of a generator function as they are returned from the endpoint. Here's the equivalent example using the Job
as a generator:
from gradio_client import Client
client = Client(src="gradio/count_generator")
job = client.submit(3, api_name="/count")
for o in job:
print(o)
>> 0
>> 1
>> 2
You can also cancel jobs that that have iterative outputs, in which case the job will finish as soon as the current iteration finishes running.
from gradio_client import Client
import time
client = Client("abidlabs/test-yield")
job = client.submit("abcdef")
time.sleep(3)
job.cancel() # job cancels after 2 iterations
Gradio demos can include session state, which provides a way for demos to persist information from user interactions within a page session.
For example, consider the following demo, which maintains a list of words that a user has submitted in a gr.State
component. When a user submits a new word, it is added to the state, and the number of previous occurrences of that word is displayed:
import gradio as gr
def count(word, list_of_words):
return list_of_words.count(word), list_of_words + [word]
with gr.Blocks() as demo:
words = gr.State([])
textbox = gr.Textbox()
number = gr.Number()
textbox.submit(count, inputs=[textbox, words], outputs=[number, words])
demo.launch()
If you were to connect this this Gradio app using the Python Client, you would notice that the API information only shows a single input and output:
Client.predict() Usage Info
---------------------------
Named API endpoints: 1
- predict(word, api_name="/count") -> value_31
Parameters:
- [Textbox] word: str (required)
Returns:
- [Number] value_31: float
That is because the Python client handles state automatically for you -- as you make a series of requests, the returned state from one request is stored internally and automatically supplied for the subsequent request. If you'd like to reset the state, you can do that by calling Client.reset_session()
.