Introducing Gradio 5.0
Read MoreIntroducing Gradio 5.0
Read MoreNew to Gradio? Start here: Getting Started
See the Release History
To install Gradio from main, run the following command:
pip install https://gradio-builds.s3.amazonaws.com/ac9bf5ec9208b92579f36ee94a247ae3e676c02f/gradio-5.6.0-py3-none-any.whl
*Note: Setting share=True
in
launch()
will not work.
gradio.Examples(ยทยทยท)
examples: list[Any] | list[list[Any]] | str
example inputs that can be clicked to populate specific components. Should be nested list, in which the outer list consists of samples and each inner list consists of an input corresponding to each input component. A string path to a directory of examples can also be provided but it should be within the directory with the python file running the gradio app. If there are multiple input components and a directory is provided, a log.csv file must be present in the directory to link corresponding inputs.
inputs: Component | list[Component]
the component or list of components corresponding to the examples
outputs: Component | list[Component] | None
= None
optionally, provide the component or list of components corresponding to the output of the examples. Required if `cache_examples` is not False.
fn: Callable | None
= None
optionally, provide the function to run to generate the outputs corresponding to the examples. Required if `cache_examples` is not False. Also required if `run_on_click` is True.
cache_examples: bool | None
= None
If True, caches examples in the server for fast runtime in examples. If "lazy", then examples are cached (for all users of the app) after their first use (by any user of the app). If None, will use the GRADIO_CACHE_EXAMPLES environment variable, which should be either "true" or "false". In HuggingFace Spaces, this parameter is True (as long as `fn` and `outputs` are also provided). The default option otherwise is False.
cache_mode: Literal['eager', 'lazy'] | None
= None
if "lazy", examples are cached after their first use. If "eager", all examples are cached at app launch. If None, will use the GRADIO_CACHE_MODE environment variable if defined, or default to "eager".
examples_per_page: int
= 10
how many examples to show per page.
label: str | None
= "Examples"
the label to use for the examples component (by default, "Examples")
elem_id: str | None
= None
an optional string that is assigned as the id of this component in the HTML DOM.
run_on_click: bool
= False
if cache_examples is False, clicking on an example does not run the function when an example is clicked. Set this to True to run the function when an example is clicked. Has no effect if cache_examples is True.
preprocess: bool
= True
if True, preprocesses the example input before running the prediction function and caching the output. Only applies if `cache_examples` is not False.
postprocess: bool
= True
if True, postprocesses the example output after running the prediction function and before caching. Only applies if `cache_examples` is not False.
api_name: str | Literal[False]
= "load_example"
Defines how the event associated with clicking on the examples appears in the API docs. Can be a string or False. If set to a string, the endpoint will be exposed in the API docs with the given name. If False, the endpoint will not be exposed in the API docs and downstream apps (including those that `gr.load` this app) will not be able to use the example function.
batch: bool
= False
If True, then the function should process a batch of inputs, meaning that it should accept a list of input values for each parameter. Used only if cache_examples is not False.
example_labels: list[str] | None
= None
A list of labels for each example. If provided, the length of this list should be the same as the number of examples, and these labels will be used in the UI instead of rendering the example values.
visible: bool
= True
If False, the examples component will be hidden in the UI.
dataset: gradio.Dataset
The `gr.Dataset` component corresponding to this Examples object.
load_input_event: gradio.events.Dependency
The Gradio event that populates the input values when the examples are clicked. You can attach a `.then()` or a `.success()` to this event to trigger subsequent events to fire after this event.
cache_event: gradio.events.Dependency | None
The Gradio event that populates the cached output values when the examples are clicked. You can attach a `.then()` or a `.success()` to this event to trigger subsequent events to fire after this event. This event is `None` if `cache_examples` if False, and is the same as `load_input_event` if `cache_examples` is `'lazy'`.
Updating Examples
In this demo, we show how to update the examples by updating the samples of the underlying dataset. Note that this only works if cache_examples=False
as updating the underlying dataset does not update the cache.
import gradio as gr
def update_examples(country):
if country == "USA":
return gr.Dataset(samples=[["Chicago"], ["Little Rock"], ["San Francisco"]])
else:
return gr.Dataset(samples=[["Islamabad"], ["Karachi"], ["Lahore"]])
with gr.Blocks() as demo:
dropdown = gr.Dropdown(label="Country", choices=["USA", "Pakistan"], value="USA")
textbox = gr.Textbox()
examples = gr.Examples([["Chicago"], ["Little Rock"], ["San Francisco"]], textbox)
dropdown.change(update_examples, dropdown, examples.dataset)
demo.launch()
import gradio as gr
def calculator(num1, operation, num2):
if operation == "add":
return num1 + num2
elif operation == "subtract":
return num1 - num2
elif operation == "multiply":
return num1 * num2
elif operation == "divide":
return num1 / num2
with gr.Blocks() as demo:
with gr.Row():
with gr.Column():
num_1 = gr.Number(value=4)
operation = gr.Radio(["add", "subtract", "multiply", "divide"])
num_2 = gr.Number(value=0)
submit_btn = gr.Button(value="Calculate")
with gr.Column():
result = gr.Number()
submit_btn.click(
calculator, inputs=[num_1, operation, num_2], outputs=[result], api_name=False
)
examples = gr.Examples(
examples=[
[5, "add", 3],
[4, "divide", 2],
[-4, "multiply", 2.5],
[0, "subtract", 1.2],
],
inputs=[num_1, operation, num_2],
)
if __name__ == "__main__":
demo.launch(show_api=False)