Skip to main content

No project description provided

Project description

Github Banner

Relevance AI - The ML Platform for Unstructured Data Analysis

Documentation Status License

🌎 80% of data in the world is unstructured in the form of text, image, audio, videos, and more.

🔥 Use Relevance to unlock the value of your unstructured data:

  • ⚡ Quickly analyze unstructured data with pre-trained machine learning models in a few lines of code.
  • ✨ Visualize your unstructured data. Text highlights from Named entity recognition, Word cloud from keywords, Bounding box from images.
  • 📊 Create charts for both structured and unstructured.
  • 🔎 Drilldown with filters and similarity search to explore and find insights.
  • 🚀 Share data apps with your team.

Sign up for a free account ->

Relevance AI also acts as a platform for:

  • 🔑 Vectors, storing and querying vectors with flexible vector similarity search, that can be combined with multiple vectors, aggregates and filters.
  • 🔮 ML Dataset Evaluation, for debugging dataset labels, model outputs and surfacing edge cases.

🧠 Documentation

Type Link
Python API Documentation
Python Reference Documentation
Cloud Dashboard Documentation

🛠️ Installation

Using pip:

pip install -U relevanceai

Using conda:

conda install -c relevance relevanceai

⏩ Quickstart

Open In Colab

Login to relevanceai:

from relevanceai import Client

client = Client()

Prepare your documents for insertion by following the below format:

  • Each document should be a dictionary
  • Include a field _id as a primary key, otherwise it's automatically generated
  • Suffix vector fields with _vector_
docs = [
    {"_id": "1", "example_vector_": [0.1, 0.1, 0.1], "data": "Documentation"},
    {"_id": "2", "example_vector_": [0.2, 0.2, 0.2], "data": "Best document!"},
    {"_id": "3", "example_vector_": [0.3, 0.3, 0.3], "data": "document example"},
    {"_id": "4", "example_vector_": [0.4, 0.4, 0.4], "data": "this is another doc"},
    {"_id": "5", "example_vector_": [0.5, 0.5, 0.5], "data": "this is a doc"},
]

Insert data into a dataset

Create a dataset object with the name of the dataset you'd like to use. If it doesn't exist, it'll be created for you.

ds = client.Dataset("quickstart")
ds.insert_documents(docs)

Quick tip! Our Dataset object is compatible with common dataframes methods like .head(), .shape() and .info().

Perform vector search

query = [
    {"vector": [0.2, 0.2, 0.2], "field": "example_vector_"}
]
results = ds.search(
    vector_search_query=query,
    page_size=3,
)

Learn more about how to flexibly configure your vector search ->

Perform clustering

Generate clusters

clusterop = ds.cluster(vector_fields=["example_vector_"])
clusterop.list_closest()

Generate clusters with sklearn

from sklearn.cluster import AgglomerativeClustering

cluster_model = AgglomerativeClustering()
clusterop = ds.cluster(vector_fields=["example_vector_"], model=cluster_model, alias="agglomerative")
clusterop.list_closest()

Learn more about how to flexibly configure your clustering ->

🧰 Config

The config object contains the adjustable global settings for the SDK. For a description of all the settings, see here.

To view setting options, run the following:

client.config.options

The syntax for selecting an option is section.key. For example, to disable logging, run the following to modify logging.enable_logging:

client.config.set_option('logging.enable_logging', False)

To restore all options to their default, run the following:

Changing the base URL

You can change the base URL as such:

client.base_url = "https://.../latest"

🚧 Development

Getting Started

To get started with development, ensure you have pytest and mypy installed. These will help ensure typechecking and testing.

python -m pip install pytest mypy

Then run testing using:

Don't forget to set your test credentials!

export TEST_PROJECT = xxx
export TEST_API_KEY = xxx

python -m pytest
mypy relevanceai

Set up precommit

pip install precommit
pre-commit install

Release history Release notifications | RSS feed

Download files

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

Source Distribution

RelevanceAI-dev-3.2.1.2022.9.13.2.6.18.136572.tar.gz (300.2 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

File details

Details for the file RelevanceAI-dev-3.2.1.2022.9.13.2.6.18.136572.tar.gz.

File metadata

File hashes

Hashes for RelevanceAI-dev-3.2.1.2022.9.13.2.6.18.136572.tar.gz
Algorithm Hash digest
SHA256 d320ee67d10df3648ae9ee88538a14478912c874cace62a1699af3b1e337dec6
MD5 074216a68a92c8c066f90f4cbfcd54ca
BLAKE2b-256 766df7d21d52ccd1bc589a2e5333908ea14a1d93f972e60af002091f5e6365e7

See more details on using hashes here.

File details

Details for the file RelevanceAI_dev-3.2.1.2022.9.13.2.6.18.136572-py3-none-any.whl.

File metadata

File hashes

Hashes for RelevanceAI_dev-3.2.1.2022.9.13.2.6.18.136572-py3-none-any.whl
Algorithm Hash digest
SHA256 f7b3436a0fd97308967422a324a2b92daab83adb9ec7c40a3649f966b747862a
MD5 e965ae50b7ea19637ea197726f308048
BLAKE2b-256 20af812d21d2c746726dc3d768df4dfad8ca82d7cb7aaa510181ebfeaf7f8921

See more details on using hashes here.

Supported by

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