Skip to main content

Access Gemini Android SDK in Python

Project description

Gemini (Firebase-Vertex-AI)

Access Gemini Android SDK in Python

Usage

Note: NO NEED FOR THREAD OR ASYNC.

For autocompletion in IDE

pip install sjgeminifvai

Set up your firebase project for Android

Read more here

Add SDK to buildozer.spec file

requirements=sjgeminifvai,simplejnius

android.gradle_dependencies=com.google.guava:guava:32.0.1-android,
  org.reactivestreams:reactive-streams:1.0.4,com.google.firebase:firebase-vertexai:16.0.0-beta04

Interact with Vertex Gemini API Without Streaming

Wait for the entire result instead of streaming; the result is only returned after the model completes the entire generation process.

from sjgeminifvai.jclass import (
    FirebaseVertexAI,
    ContentBuilder,
    GenerativeModelFutures
)
from simplejnius.guava.jclass import Futures
from simplejnius.guava.jinterface import FutureCallback
from kivy.app import App
from kivy.uix.boxlayout import BoxLayout
from kivy.uix.label import Label
from kivy.uix.textinput import TextInput


class GeminiApp(App):
    def __init__(self, **kwargs):
        super().__init__(**kwargs)
        self.future_callback = None
        self.response = None
        self.prompt = None
        self.textinput = None
        self.label = None

        # Initialize the Vertex AI service and the generative model
        # Specify a model that supports your use case
        # Gemini 1.5 models are versatile and can be used with all API capabilities
        vertex = FirebaseVertexAI.getInstance()
        self.gm = vertex.generativeModel("gemini-1.5-flash")

        # Use the GenerativeModelFutures Java compatibility layer which offers
        # support for ListenableFuture and Publisher APIs
        self.model = GenerativeModelFutures.from_(self.gm)

    def build(self):
        self.label = Label()
        self.textinput = TextInput(
            size_hint_y=.1,
            hint_text="Chat with gemini",
            on_text_validate=self.chat_gemini
        )
        box = BoxLayout(orientation="vertical")
        box.add_widget(self.label)
        box.add_widget(self.textinput)
        return box

    def chat_gemini(self, instance):
        # Provide a prompt that contains text
        self.prompt = (
            ContentBuilder()
            .addText(instance.text)
            .build()
        )

        # To generate text output, call generateContent with the text input
        self.response = self.model.generateContentResponse(self.prompt)

        self.future_callback = FutureCallback(
            callback=dict(
                on_success=self.get_gemin_reply,
                on_failure=print
            )
        )
        Futures.addCallback(self.response, self.future_callback)

    def get_gemini_reply(self, result):
        self.label.text = result.getText()


if __name__ == "__main__":
    GeminiApp().run()

# report any bug or error if the above code does not work as expected

Interact with Vertex Gemini API With Streaming

You can achieve faster interactions by not waiting for the entire result from the model generation, and instead use streaming to handle partial results.

This example shows how to use generateContentStream to stream generated text from a prompt request that includes only text:

from sjgeminifvai.jclass import (
    FirebaseVertexAI,
    ContentBuilder,
    GenerativeModelFutures
)
from simplejnius.reactivestreams.jinterface import Subscriber
from kivy.app import App
from kivy.uix.boxlayout import BoxLayout
from kivy.uix.label import Label
from kivy.uix.textinput import TextInput
from kivy.clock import Clock


class GeminiApp(App):
    def __init__(self, **kwargs):
        super().__init__(**kwargs)
        self.subscriber = None
        self.gcr = None
        self.streaming_response = None
        self.prompt = None
        self.textinput = None
        self.label = None

        # Initialize the Vertex AI service and the generative model
        # Specify a model that supports your use case
        # Gemini 1.5 models are versatile and can be used with all API capabilities
        vertex = FirebaseVertexAI.getInstance()
        self.gm = vertex.generativeModel("gemini-1.5-flash")

        # Use the GenerativeModelFutures Java compatibility layer which offers
        # support for ListenableFuture and Publisher APIs
        self.model = GenerativeModelFutures.from_(self.gm)

    def build(self):
        self.label = Label()
        self.textinput = TextInput(
            size_hint_y=.1,
            hint_text="Chat with gemini",
            on_text_validate=self.chat_gemini
        )
        box = BoxLayout(orientation="vertical")
        box.add_widget(self.label)
        box.add_widget(self.textinput)
        return box

    def chat_gemini(self, instance):
        # Provide a prompt that contains text
        self.prompt = (
            ContentBuilder()
            .addText(instance.text)
            .build()
        )

        # To stream generated text output, call generateContentStream with the text input
        self.streaming_response = self.model.generateContentStream(self.prompt)

        self.subscriber = Subscriber(
            callback=dict(
                on_next=self.get_gemini_reply,
                on_complete=lambda result: setattr(self.label, "text", result.getText()),
                on_error=print,
                on_subscribe=print
            )
        )
        self.streaming_response.subscribe(self.subscriber)

    def get_gemini_reply(self, result):
        chunk = result.getText()

        def add_chunk_to_label(_):
            self.label.text += chunk

        Clock.schedule_once(add_chunk_to_label)


if __name__ == "__main__":
    GeminiApp().run()

# report any bug or error if the above code does not work as expected

Examples to interact with images and videos coming soon

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

sjgeminifvai-0.1.0.tar.gz (5.9 kB view hashes)

Uploaded Source

Built Distribution

sjgeminifvai-0.1.0-py3-none-any.whl (7.6 kB view hashes)

Uploaded Python 3

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page