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-- 1. Enable the pgvector extension if you haven't already.
--    You only need to run this once per database.
CREATE EXTENSION IF NOT EXISTS vector;

-- 2. Create the table to store your data and embeddings.
CREATE TABLE IF NOT EXISTS documents (
    id BIGINT GENERATED BY DEFAULT AS IDENTITY PRIMARY KEY,
    content TEXT,
    metadata JSONB,
    embedding VECTOR(768) -- The vector dimension is 768 based on the actual data.
);

-- 3. Create similarity search functions
-- 3a. Create the single-parameter version that SupabaseVectorStore uses by default
CREATE OR REPLACE FUNCTION match_documents (
  query_embedding VECTOR(768)
)
RETURNS TABLE (
  id BIGINT,
  content TEXT,
  metadata JSONB,
  similarity FLOAT
)
LANGUAGE sql STABLE
AS $$
  SELECT
    documents.id,
    documents.content,
    documents.metadata,
    1 - (documents.embedding <=> query_embedding) AS similarity
  FROM documents
  ORDER BY similarity DESC
  LIMIT 5;  -- Default limit of 5 results
$$;

-- 3b. Create the three-parameter version for more control
CREATE OR REPLACE FUNCTION match_documents (
  query_embedding VECTOR(768),
  match_threshold FLOAT,
  match_count INT
)
RETURNS TABLE (
  id BIGINT,
  content TEXT,
  metadata JSONB,
  similarity FLOAT
)
LANGUAGE sql STABLE
AS $$
  SELECT
    documents.id,
    documents.content,
    documents.metadata,
    1 - (documents.embedding <=> query_embedding) AS similarity
  FROM documents
  WHERE 1 - (documents.embedding <=> query_embedding) > match_threshold
  ORDER BY similarity DESC
  LIMIT match_count;
$$;

-- 4. Create an index to speed up similarity searches.
--    An HNSW index is generally recommended for its balance of speed and accuracy.
CREATE INDEX IF NOT EXISTS documents_embedding_idx ON documents USING HNSW (embedding vector_cosine_ops);