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Fine-tuned on MS MARCO for efficient dense sentence embeddings, excelling in semantic search and retrieval. <metadata> gpu: T4 | collections:["Information Retrieval"] </metadata>

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MS-Marco-MiniLM-L-12-v2

This model was trained on the MS Marco Passage Ranking task. The model can be used for Information Retrieval: Given a query, encode the query will all possible passages (e.g. retrieved with ElasticSearch). Then sort the passages in a decreasing order. See SBERT.net Retrieve & Re-rank for more details. The training code is available here: SBERT.net Training MS Marco


Prerequisites

  • Git. You would need git installed on your system if you wish to customize the repo after forking.
  • Python>=3.8. You would need Python to customize the code in the app.py according to your needs.
  • Curl. You would need Curl if you want to make API calls from the terminal itself.

Quick Start

Here is a quick start to help you get up and running with this template on Inferless.

Fork the Repository

Get started by forking the repository. You can do this by clicking on the fork button in the top right corner of the repository page.

This will create a copy of the repository in your own GitHub account, allowing you to make changes and customize it according to your needs.

Create a Custom Runtime in Inferless

To access the custom runtime window in Inferless, simply navigate to the sidebar and click on the Create new Runtime button. A pop-up will appear.

Next, provide a suitable name for your custom runtime and proceed by uploading the config.yaml file given above. Finally, ensure you save your changes by clicking on the save button.

Import the Model in Inferless

Log in to your inferless account, select the workspace you want the model to be imported into and click the Add Model button.

Select the PyTorch as framework and choose Repo(custom code) as your model source and use the forked repo URL as the Model URL.

After the create model step, while setting the configuration for the model make sure to select the appropriate runtime.

Enter all the required details to Import your model. Refer this link for more information on model import.

The following is a sample Input and Output JSON for this model which you can use while importing this model on Inferless.


Curl Command

Following is an example of the curl command you can use to make inference. You can find the exact curl command in the Model's API page in Inferless.

curl --location 'http://localhost:8000/v2/models/MS-marco-MiniLM-L-12-v2/infer' \
--header 'Content-Type: application/json' \
--data '{
  "inputs": [
    {
      "name": "query",
      "shape": [1],
      "data": ["Can you provide information about the history of artificial intelligence?"],
      "datatype": "BYTES"
    },
    {
      "name": "paragraphs",
      "shape": [10],
      "data": [
        "Artificial intelligence (AI) is a branch of computer science that aims to create machines capable of intelligent behavior.",
        "The history of AI can be traced back to ancient civilizations",
        "In the 20th century, the formalization of the concepts behind AI began to take shape.",
        "Alan Turing proposed the Turing Test in 1950 as a way to evaluate a machines ability to exhibit intelligent behavior",
        "The field experienced significant ups and downs, known as AI winters, where funding and interest in AI research waned.",
        "However, breakthroughs in machine learning, particularly deep learning, have revitalized the field in recent years",
        "Today, AI is applied in various domains, including healthcare, finance, transportation, and entertainment.",
        "It powers virtual assistants, recommendation systems, autonomous vehicles, and much more.",
        "Looking ahead, AI holds the promise of revolutionizing industries and reshaping society.",
        "However, it also raises ethical and societal concerns that must be addressed"
      ],
      "datatype": "BYTES"
    }
  ]
}'

Customizing the Code

Open the app.py file. This contains the main code for inference. It has three main functions, initialize, infer and finalize.

Initialize - This function is executed during the cold start and is used to initialize the model. If you have any custom configurations or settings that need to be applied during the initialization, make sure to add them in this function.

Infer - This function is where the inference happens. The argument to this function inputs, is a dictionary containing all the input parameters. The keys are the same as the name given in inputs. Refer to input for more.

def infer(self, inputs):
    prompt = inputs["prompt"]

Finalize - This function is used to perform any cleanup activity for example you can unload the model from the gpu by setting self.pipe = None.

For more information refer to the Inferless docs.

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Fine-tuned on MS MARCO for efficient dense sentence embeddings, excelling in semantic search and retrieval. <metadata> gpu: T4 | collections:["Information Retrieval"] </metadata>

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