Skip to content

Ruby client for Pinecone Vector DB

Notifications You must be signed in to change notification settings

retailzipline/pinecone

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

40 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Pinecone Ruby Client

This is the complete Pinecone API and fully tested. Bug reports and contributions are welcome! Also, if you're interested in being a fellow maintainer, let me know.

Installation

gem install pinecone

Configuration

require "dotenv/load"
require 'pinecone'

Pinecone.configure do |config|
  config.api_key  = ENV.fetch('PINECONE_API_KEY')
  config.environment = ENV.fetch('PINECONE_ENVIRONMENT')
end

Index Operations

Listing Indexes

pinecone = Pinecone::Client.new
pinecone.list_indexes

Describe Index

pinecone.describe_index("example-index")

Create Index

pinecone.create_index({
  "metric": "dotproduct",
  "name": "example-index",
  "dimension": 3,
})

Delete Index

pinecone.delete_index("example-index")

Scale replicas

new_number_of_replicas = 4
pinecone.configure_index("example-index", {
  replicas: new_number_of_replicas
  pod_type: "s1.x1"
})

Vector Operations

Adding vectors to an existing index

pinecone = Pinecone::Client.new
index = pinecone.index("example-index")

index.upsert(
  namespace: "example-namespace",
  vectors: [{
    id: "1",
    metadata: {
      key: value
    },
    values: [
      0.1,
      0.2,
      0.0
    ]
  }]
)

Querying index with a vector

pinecone = Pinecone::Client.new
index = pinecone.index("example-index")
embedding = [0.0, -0.2, 0.4]
response = index.query(vector: embedding)

Querying index with options

pinecone = Pinecone::Client.new
index = pinecone.index("example-index")
embedding = [0.0, -0.2, 0.4]
response = index.query(vector: embedding, 
                        namespace: "example-namespace",
                        top_k: 10,
                        include_values: false,
                        include_metadata: true)

Fetching a vector from an index

pinecone = Pinecone::Client.new
index = pinecone.index("example-index")
index.fetch(
  ids: ["1"], 
  namespace: "example-namespace"
)

Updating a vector in an index

pinecone = Pinecone::Client.new
index = pinecone.index("example-index")
index.update(
  id: "1", 
  values: [0.1, -0.2, 0.0],
  set_metadata: { genre: "drama" },
  namespace: "example-namespace"
)

Deleting a vector from an index

pinecone = Pinecone::Client.new
index = pinecone.index("example-index")
index.delete(
  ids: ["1"], 
  namespace: "example-namespace", 
  delete_all: false
)

Describe index statistics. Can be filtered - see Filtering queries

pinecone = Pinecone::Client.new
index = pinecone.index("example-index")
index.describe_index_stats(
  filter: {
    "genre": { "$eq": "comedy" }
  }
)

Filtering queries

Add a filter option to apply filters to your query. You can use vector metadata to limit your search. See metadata filtering in Pinecode documentation.

pinecone = Pinecone::Client.new
index = pinecone.index("example-index")
embedding = [0.0, -0.2, 0.4]
response = index.query(
  vector: embedding,
  filter: {
    "genre": { "$eq": "comedy" }
  }
)

Metadata filters can be combined with AND and OR. Other operators are also supported.

{ "$and": [{ "genre": "comedy" }, { "actor": "Brad Pitt" }] } # Genre is 'comedy' and actor is 'Brad Pitt'
{ "$or": [{ "genre": "comedy" }, { "genre": "action" }] } # Genre is 'comedy' or 'action'
{ "genre": { "$eq": "comedy" }} # Genre is 'comedy'
{ "favorite": { "$eq": true }} # Is a favorite
{ "genre": { "$ne": "comedy" }} # Genre is not 'comedy'
{ "favorite": { "$ne": true }} # Is not a favorite
{ "genre": { "$in": ["comedy", "action"] }} # Genre is in the specified values
{ "genre": { "$nin": ["comedy", "action"] }} # Genre is not in the specified values
{ "$gt": 1 }
{ "$gte": 0.5 }
{ "$lt": -0.5 }
{ "$lte": -1 }

Specifying an invalid filter raises ArgumentError with an error message.

Sparse Vectors

pinecone = Pinecone::Client.new
index = pinecone.index("example-index")
embedding = [0.0, -0.2, 0.4]
response = index.query(
  vector: embedding,
  sparse_vector: {
    indices: [10, 20, 30],
    values: [0, 0.5, -1]
  }
)

The length of indices and values must match.

Query by ID

pinecone = Pinecone::Client.new
index = pinecone.index("example-index")
embedding = [0.0, -0.2, 0.4]
response = index.query(
  id: "vector1"
)

Either vector or id can be supplied as a query parameter, not both. This constraint is validated.

Collection Operations

Creating a collection

pinecone = Pinecone::Client.new
pinecone.create_collection({
  name: "example-collection", 
  source: "example-index"
})

List collections

pinecone.list_collections

Describe a collection

pinecone.describe_collection("example-collection")

Delete a collection

pinecone.delete_collection("example-collection")

Contributing

Contributions welcome!

  • Clone the repo locally
  • bundle to install gems
  • run tests with rspec
  • mv .env.copy .env and add Pinecone API Key if developing a new endpoint or modifying existing ones
    • to disable VCR and hit real endpoints, NO_VCR=true rspec
  • To setup cloud indexes when writing new tests ruby spec/support/setup.rb start and stop to delete them

License

The gem is available as open source under the terms of the MIT License.

About

Ruby client for Pinecone Vector DB

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Ruby 100.0%