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<p align="center"> <a href="https://docs.jina.ai"><img src="https://github.com/jina-ai/jina/blob/master/docs/_static/logo-light.svg?raw=true" alt="Jina logo: Build multimodal AI services via cloud native technologies · Model Serving · Generative AI · Neural Search · Cloud Native" width="150px"></a> </p> <p align="center"> <b>Build multimodal AI applications with cloud-native technologies</b> </p> <p align=center> <a href="https://pypi.org/project/jina/"><img alt="PyPI" src="https://img.shields.io/pypi/v/jina?label=Release&style=flat-square"></a> <!--<a href="https://codecov.io/gh/jina-ai/jina"><img alt="Codecov branch" src="https://img.shields.io/codecov/c/github/jina-ai/jina/master?&logo=Codecov&logoColor=white&style=flat-square"></a>--> <a href="https://discord.jina.ai"><img src="https://img.shields.io/discord/1106542220112302130?logo=discord&logoColor=white&style=flat-square"></a> <a href="https://pypistats.org/packages/jina"><img alt="PyPI - Downloads from official pypistats" src="https://img.shields.io/pypi/dm/jina?style=flat-square"></a> <a href="https://github.com/jina-ai/jina/actions/workflows/cd.yml"><img alt="Github CD status" src="https://github.com/jina-ai/jina/actions/workflows/cd.yml/badge.svg"></a> </p> <!-- start jina-description -->

Jina lets you build multimodal AI services and pipelines that communicate via gRPC, HTTP and WebSockets, then scale them up and deploy to production. You can focus on your logic and algorithms, without worrying about the infrastructure complexity.

Jina provides a smooth Pythonic experience for serving ML models transitioning from local deployment to advanced orchestration frameworks like Docker-Compose, Kubernetes, or Jina AI Cloud. Jina makes advanced solution engineering and cloud-native technologies accessible to every developer.

<details> <summary><strong>Wait, how is Jina different from FastAPI?</strong></summary> Jina's value proposition may seem quite similar to that of FastAPI. However, there are several fundamental differences:

Data structure and communication protocols

Advanced orchestration and scaling capabilities

Journey to the cloud

</details> <!-- end jina-description -->

Documentation

Install

pip install jina

Find more install options on Apple Silicon/Windows.

Get Started

Basic Concepts

Jina has three fundamental layers:

The full glossary is explained here.

Serve AI models

<!-- start build-ai-services -->

Let's build a fast, reliable and scalable gRPC-based AI service. In Jina we call this an Executor. Our simple Executor will wrap the StableLM LLM from Stability AI. We'll then use a Deployment to serve it.

Note A Deployment serves just one Executor. To combine multiple Executors into a pipeline and serve that, use a Flow.

Let's implement the service's logic:

<table> <tr> <th><code>executor.py</code></th> <tr> <td>
from jina import Executor, requests
from docarray import DocList, BaseDoc

from transformers import pipeline


class Prompt(BaseDoc):
    text: str


class Generation(BaseDoc):
    prompt: str
    text: str


class StableLM(Executor):
    def __init__(self, **kwargs):
        super().__init__(**kwargs)
        self.generator = pipeline(
            'text-generation', model='stabilityai/stablelm-base-alpha-3b'
        )

    @requests
    def generate(self, docs: DocList[Prompt], **kwargs) -> DocList[Generation]:
        generations = DocList[Generation]()
        prompts = docs.text
        llm_outputs = self.generator(prompts)
        for prompt, output in zip(prompts, llm_outputs):
            generations.append(Generation(prompt=prompt, text=output))
        return generations
</td> </tr> </table>

Then we deploy it with either the Python API or YAML:

<div class="table-wrapper"> <table> <tr> <th> Python API: <code>deployment.py</code> </th> <th> YAML: <code>deployment.yml</code> </th> </tr> <tr> <td>
from jina import Deployment
from executor import StableLM

dep = Deployment(uses=StableLM, timeout_ready=-1, port=12345)

with dep:
    dep.block()
</td> <td>
jtype: Deployment
with:
  uses: StableLM
  py_modules:
    - executor.py
  timeout_ready: -1
  port: 12345

And run the YAML Deployment with the CLI: jina deployment --uses deployment.yml

</td> </tr> </table> </div>

Use Jina Client to make requests to the service:

from jina import Client
from docarray import DocList, BaseDoc


class Prompt(BaseDoc):
    text: str


class Generation(BaseDoc):
    prompt: str
    text: str


prompt = Prompt(
    text='suggest an interesting image generation prompt for a mona lisa variant'
)

client = Client(port=12345)  # use port from output above
response = client.post(on='/', inputs=[prompt], return_type=DocList[Generation])

print(response[0].text)
a steampunk version of the Mona Lisa, incorporating mechanical gears, brass elements, and Victorian era clothing details
<!-- end build-ai-services -->

Note In a notebook, you can't use deployment.block() and then make requests to the client. Please refer to the Colab link above for reproducible Jupyter Notebook code snippets.

Build a pipeline

<!-- start build-pipelines -->

Sometimes you want to chain microservices together into a pipeline. That's where a Flow comes in.

A Flow is a DAG pipeline, composed of a set of steps, It orchestrates a set of Executors and a Gateway to offer an end-to-end service.

Note If you just want to serve a single Executor, you can use a Deployment.

For instance, let's combine our StableLM language model with a Stable Diffusion image generation model. Chaining these services together into a Flow will give us a service that will generate images based on a prompt generated by the LLM.

<table> <tr> <th><code>text_to_image.py</code></th> <tr> <td>
import numpy as np
from jina import Executor, requests
from docarray import BaseDoc, DocList
from docarray.documents import ImageDoc


class Generation(BaseDoc):
    prompt: str
    text: str


class TextToImage(Executor):
    def __init__(self, **kwargs):
        super().__init__(**kwargs)
        from diffusers import StableDiffusionPipeline
        import torch

        self.pipe = StableDiffusionPipeline.from_pretrained(
            "CompVis/stable-diffusion-v1-4", torch_dtype=torch.float16
        ).to("cuda")

    @requests
    def generate_image(self, docs: DocList[Generation], **kwargs) -> DocList[ImageDoc]:
        result = DocList[ImageDoc]()
        images = self.pipe(
            docs.text
        ).images  # image here is in [PIL format](https://pillow.readthedocs.io/en/stable/)
        result.tensor = np.array(images)
        return result
</td> </tr> </table>

Build the Flow with either Python or YAML:

<div class="table-wrapper"> <table> <tr> <th> Python API: <code>flow.py</code> </th> <th> YAML: <code>flow.yml</code> </th> </tr> <tr> <td>
from jina import Flow
from executor import StableLM
from text_to_image import TextToImage

flow = (
    Flow(port=12345)
    .add(uses=StableLM, timeout_ready=-1)
    .add(uses=TextToImage, timeout_ready=-1)
)

with flow:
    flow.block()
</td> <td>
jtype: Flow
with:
    port: 12345
executors:
  - uses: StableLM
    timeout_ready: -1
    py_modules:
      - executor.py
  - uses: TextToImage
    timeout_ready: -1
    py_modules:
      - text_to_image.py

Then run the YAML Flow with the CLI: jina flow --uses flow.yml

</td> </tr> </table> </div>

Then, use Jina Client to make requests to the Flow:

from jina import Client
from docarray import DocList, BaseDoc
from docarray.documents import ImageDoc


class Prompt(BaseDoc):
    text: str


prompt = Prompt(
    text='suggest an interesting image generation prompt for a mona lisa variant'
)

client = Client(port=12345)  # use port from output above
response = client.post(on='/', inputs=[prompt], return_type=DocList[ImageDoc])

response[0].display()

<!-- end build-pipelines -->

Easy scalability and concurrency

Why not just use standard Python to build that service and pipeline? Jina accelerates time to market of your application by making it more scalable and cloud-native. Jina also handles the infrastructure complexity in production and other Day-2 operations so that you can focus on the data application itself.

Increase your application's throughput with scalability features out of the box, like replicas, shards and dynamic batching.

Let's scale a Stable Diffusion Executor deployment with replicas and dynamic batching:

<div class="table-wrapper"> <table> <tr> <th> Normal Deployment </th> <th> Scaled Deployment </th> </tr> <tr> <td>
jtype: Deployment
with:
  uses: TextToImage
  timeout_ready: -1
  py_modules:
    - text_to_image.py
</td> <td>
jtype: Deployment
with:
  uses: TextToImage
  timeout_ready: -1
  py_modules:
    - text_to_image.py
  env:
   CUDA_VISIBLE_DEVICES: RR
  replicas: 2
  uses_dynamic_batching: # configure dynamic batching
    /default:
      preferred_batch_size: 10
      timeout: 200
</td> </tr> </table> </div>

Assuming your machine has two GPUs, using the scaled deployment YAML will give better throughput compared to the normal deployment.

These features apply to both Deployment YAML and Flow YAML. Thanks to the YAML syntax, you can inject deployment configurations regardless of Executor code.

Deploy to the cloud

Containerize your Executor

In order to deploy your solutions to the cloud, you need to containerize your services. Jina provides the Executor Hub, the perfect tool to streamline this process taking a lot of the troubles with you. It also lets you share these Executors publicly or privately.

You just need to structure your Executor in a folder:

TextToImage/
├── executor.py
├── config.yml
├── requirements.txt
<div class="table-wrapper"> <table> <tr> <th> <code>config.yml</code> </th> <th> <code>requirements.txt</code> </th> </tr> <tr> <td>
jtype: TextToImage
py_modules:
  - executor.py
metas:
  name: TextToImage
  description: Text to Image generation Executor based on StableDiffusion
  url:
  keywords: []
</td> <td>
diffusers
accelerate
transformers
</td> </tr> </table> </div>

Then push the Executor to the Hub by doing: jina hub push TextToImage.

This will give you a URL that you can use in your Deployment and Flow to use the pushed Executors containers.

jtype: Flow
with:
    port: 12345
executors:
  - uses: jinai+docker://<user-id>/StableLM
  - uses: jinai+docker://<user-id>/TextToImage

Get on the fast lane to cloud-native

Using Kubernetes with Jina is easy:

jina export kubernetes flow.yml ./my-k8s
kubectl apply -R -f my-k8s

And so is Docker Compose:

jina export docker-compose flow.yml docker-compose.yml
docker-compose up

Note You can also export Deployment YAML to Kubernetes and Docker Compose.

That's not all. We also support OpenTelemetry, Prometheus, and Jaeger.

What cloud-native technology is still challenging to you? Tell us and we'll handle the complexity and make it easy for you.

Deploy to JCloud

You can also deploy a Flow to JCloud, where you can easily enjoy autoscaling, monitoring and more with a single command.

First, turn the flow.yml file into a JCloud-compatible YAML by specifying resource requirements and using containerized Hub Executors.

Then, use jina cloud deploy command to deploy to the cloud:

wget https://raw.githubusercontent.com/jina-ai/jina/master/.github/getting-started/jcloud-flow.yml
jina cloud deploy jcloud-flow.yml

Warning

Make sure to delete/clean up the Flow once you are done with this tutorial to save resources and credits.

Read more about deploying Flows to JCloud.

Streaming for LLMs

<!-- start llm-streaming-intro -->

Large Language Models can power a wide range of applications from chatbots to assistants and intelligent systems. However, these models can be heavy and slow and your users want systems that are both intelligent and fast!

Large language models work by turning your questions into tokens and then generating new token one at a time until it decides that generation should stop. This means you want to stream the output tokens generated by a large language model to the client. In this tutorial, we will discuss how to achieve this with Streaming Endpoints in Jina.

<!-- end llm-streaming-intro -->

Service Schemas

<!-- start llm-streaming-schemas -->

The first step is to define the streaming service schemas, as you would do in any other service framework. The input to the service is the prompt and the maximum number of tokens to generate, while the output is simply the token ID:

from docarray import BaseDoc


class PromptDocument(BaseDoc):
    prompt: str
    max_tokens: int


class ModelOutputDocument(BaseDoc):
    token_id: int
    generated_text: str
<!-- end llm-streaming-schemas -->

Service initialization

<!-- start llm-streaming-init -->

Our service depends on a large language model. As an example, we will use the gpt2 model. This is how you would load such a model in your executor

from jina import Executor, requests
from transformers import GPT2Tokenizer, GPT2LMHeadModel
import torch

tokenizer = GPT2Tokenizer.from_pretrained('gpt2')


class TokenStreamingExecutor(Executor):
    def __init__(self, **kwargs):
        super().__init__(**kwargs)
        self.model = GPT2LMHeadModel.from_pretrained('gpt2')
<!-- end llm-streaming-init -->

Implement the streaming endpoint

<!-- start llm-streaming-endpoint -->

Our streaming endpoint accepts a PromptDocument as input and streams ModelOutputDocuments. To stream a document back to the client, use the yield keyword in the endpoint implementation. Therefore, we use the model to generate up to max_tokens tokens and yield them until the generation stops:

class TokenStreamingExecutor(Executor):
    ...

    @requests(on='/stream')
    async def task(self, doc: PromptDocument, **kwargs) -> ModelOutputDocument:
        input = tokenizer(doc.prompt, return_tensors='pt')
        input_len = input['input_ids'].shape[1]
        for _ in range(doc.max_tokens):
            output = self.model.generate(**input, max_new_tokens=1)
            if output[0][-1] == tokenizer.eos_token_id:
                break
            yield ModelOutputDocument(
                token_id=output[0][-1],
                generated_text=tokenizer.decode(
                    output[0][input_len:], skip_special_tokens=True
                ),
            )
            input = {
                'input_ids': output,
                'attention_mask': torch.ones(1, len(output[0])),
            }

Learn more about streaming endpoints from the Executor documentation.

<!-- end llm-streaming-endpoint -->

Serve and send requests

<!-- start llm-streaming-serve -->

The final step is to serve the Executor and send requests using the client. To serve the Executor using gRPC:

from jina import Deployment

with Deployment(uses=TokenStreamingExecutor, port=12345, protocol='grpc') as dep:
    dep.block()

To send requests from a client:

import asyncio
from jina import Client


async def main():
    client = Client(port=12345, protocol='grpc', asyncio=True)
    async for doc in client.stream_doc(
        on='/stream',
        inputs=PromptDocument(prompt='what is the capital of France ?', max_tokens=10),
        return_type=ModelOutputDocument,
    ):
        print(doc.generated_text)


asyncio.run(main())
The
The capital
The capital of
The capital of France
The capital of France is
The capital of France is Paris
The capital of France is Paris.
<!-- end llm-streaming-serve --> <!-- start support-pitch -->

Support

Join Us

Jina is backed by Jina AI and licensed under Apache-2.0.

<!-- end support-pitch -->