quivr/scripts/tables.sql
2023-06-14 16:41:55 +01:00

117 lines
2.7 KiB
PL/PgSQL

-- Create users table
CREATE TABLE IF NOT EXISTS users(
user_id UUID DEFAULT gen_random_uuid() PRIMARY KEY,
email TEXT,
date TEXT,
requests_count INT
);
-- Create chats table
CREATE TABLE IF NOT EXISTS chats(
chat_id UUID DEFAULT uuid_generate_v4() PRIMARY KEY,
user_id UUID REFERENCES users(user_id),
creation_time TIMESTAMP DEFAULT current_timestamp,
history JSONB,
chat_name TEXT
);
-- Create vector extension
CREATE EXTENSION IF NOT EXISTS vector;
-- Create vectors table
CREATE TABLE IF NOT EXISTS vectors (
id BIGSERIAL PRIMARY KEY,
user_id TEXT,
content TEXT,
metadata JSONB,
embedding VECTOR(1536)
);
-- Create function to match vectors
CREATE OR REPLACE FUNCTION match_vectors(query_embedding VECTOR(1536), match_count INT, p_user_id TEXT)
RETURNS TABLE(
id BIGINT,
user_id TEXT,
content TEXT,
metadata JSONB,
embedding VECTOR(1536),
similarity FLOAT
) LANGUAGE plpgsql AS $$
#variable_conflict use_column
BEGIN
RETURN QUERY
SELECT
id,
user_id,
content,
metadata,
embedding,
1 - (vectors.embedding <=> query_embedding) AS similarity
FROM
vectors
WHERE vectors.user_id = p_user_id
ORDER BY
vectors.embedding <=> query_embedding
LIMIT match_count;
END;
$$;
-- Create stats table
CREATE TABLE IF NOT EXISTS stats (
time TIMESTAMP,
chat BOOLEAN,
embedding BOOLEAN,
details TEXT,
metadata JSONB,
id INTEGER PRIMARY KEY GENERATED ALWAYS AS IDENTITY
);
-- Create summaries table
CREATE TABLE IF NOT EXISTS summaries (
id BIGSERIAL PRIMARY KEY,
document_id BIGINT REFERENCES vectors(id),
content TEXT,
metadata JSONB,
embedding VECTOR(1536)
);
-- Create function to match summaries
CREATE OR REPLACE FUNCTION match_summaries(query_embedding VECTOR(1536), match_count INT, match_threshold FLOAT)
RETURNS TABLE(
id BIGINT,
document_id BIGINT,
content TEXT,
metadata JSONB,
embedding VECTOR(1536),
similarity FLOAT
) LANGUAGE plpgsql AS $$
#variable_conflict use_column
BEGIN
RETURN QUERY
SELECT
id,
document_id,
content,
metadata,
embedding,
1 - (summaries.embedding <=> query_embedding) AS similarity
FROM
summaries
WHERE 1 - (summaries.embedding <=> query_embedding) > match_threshold
ORDER BY
summaries.embedding <=> query_embedding
LIMIT match_count;
END;
$$;
-- Create api_keys table
CREATE TABLE IF NOT EXISTS api_keys(
key_id UUID DEFAULT gen_random_uuid() PRIMARY KEY,
user_id UUID REFERENCES users(user_id),
api_key TEXT UNIQUE,
creation_time TIMESTAMP DEFAULT current_timestamp,
deleted_time TIMESTAMP,
is_active BOOLEAN DEFAULT true
);