Skip to main content

QQL is a SQL-like query language and CLI for Qdrant vector database. Write INSERT, SEARCH, RECOMMEND, DELETE, and CREATE COLLECTION statements instead of Python SDK calls. Supports hybrid dense+sparse vector search, cross-encoder reranking, quantization (scalar, turbo, binary, product), WHERE clause filters, script execution, and collection dump/restore.

Project description

QQL — Qdrant Query Language

SQL-like query language and CLI for Qdrant vector database.

PyPI version Python 3.12+ MIT License Tests

Write INSERT, SELECT, SEARCH, SCROLL, RECOMMEND, UPDATE, DELETE, and CREATE COLLECTION statements instead of Python SDK calls. Supports hybrid dense+sparse vector search, grouped search (GROUP BY), cross-encoder reranking, quantization (scalar, turbo, binary, product), SQL-style WHERE filters, script execution, and collection dump/restore.

qql> INSERT INTO COLLECTION notes VALUES {'text': 'Qdrant is a vector database', 'author': 'alice', 'year': 2024}
✓ Inserted 1 point [3f2e1a4b-8c91-4d0e-b123-abc123def456]

qql> SEARCH notes SIMILAR TO 'vector storage engines' LIMIT 3 WHERE year >= 2023
✓ Found 1 result(s)
 Score  │ ID                                   │ Payload
────────┼──────────────────────────────────────┼──────────────────────────────────────
 0.8931 │ 3f2e1a4b-8c91-4d0e-b123-abc123def456 │ {'text': 'Qdrant is a ...', 'author': 'alice', 'year': 2024}

qql> SEARCH notes SIMILAR TO 'vector databases' LIMIT 5 USING HYBRID RERANK
✓ Found 1 result(s) (hybrid, reranked)
 Score  │ ID                                   │ Payload
────────┼──────────────────────────────────────┼──────────────────────────────────────
 5.3754 │ 3f2e1a4b-8c91-4d0e-b123-abc123def456 │ {'text': 'Qdrant is a ...', 'author': 'alice', 'year': 2024}

How It Works

QQL is a thin translation layer between a SQL-like query language and the Qdrant Python client. Every statement you type goes through three stages:

Your query string
      │
      ▼
  [ Lexer ]      — tokenizes the input into keywords, identifiers, literals
      │
      ▼
  [ Parser ]     — builds a typed AST node (e.g. InsertStmt, SearchStmt)
      │
      ▼
  [ Executor ]   — maps the AST node to a Qdrant client call
      │
      ▼
  Qdrant instance

When you run INSERT, the text field is automatically converted into a dense vector using Fastembed. In hybrid mode (USING HYBRID), a sparse BM25 vector is also generated alongside the dense vector, and searches use Qdrant's Reciprocal Rank Fusion (RRF) by default to merge the results of both retrieval methods. You can switch hybrid search to DBSF with FUSION 'dbsf'.

QQL also exposes a programmatic API for use inside Python applications — no CLI required:

from qql import Connection

with Connection("http://localhost:6333") as conn:
    conn.run_query("INSERT INTO COLLECTION notes VALUES {'text': 'Qdrant is fast'}")
    result = conn.run_query("SEARCH notes SIMILAR TO 'vector database' LIMIT 5")
    for hit in result.data:
        print(hit["score"], hit["payload"])

Installation

Requirements: Python 3.12+, a running Qdrant instance.

pip install qql-cli

Connect to a Qdrant instance:

# Local
qql connect --url http://localhost:6333

# Qdrant Cloud
qql connect --url https://<your-cluster>.qdrant.io --secret <your-api-key>

Then type qql to open the interactive shell.


Documentation

Full documentation lives in the docs/ folder and at pavanjava.github.io/qql:

Topic Description
Getting Started Installation, connecting, first queries
INSERT / INSERT BULK Adding documents, batch inserts, payload types
SEARCH / SELECT / SCROLL / RECOMMEND / Hybrid / GROUP BY / RERANK Semantic search, grouped search, point retrieval, pagination, hybrid, reranking, recommendations
WHERE Filters Full SQL-style filter operators
Collections & Quantization SHOW, CREATE, DROP, QUANTIZE (scalar/turbo/binary/product), CREATE INDEX, UPDATE VECTOR, UPDATE PAYLOAD
Scripts: EXECUTE / DUMP Script files, collection backup/restore
Programmatic Usage Use QQL as a Python library via Connection or run_query()
Reference: Models / Config / Errors Embedding models, config file, error reference

Quick Syntax Reference

-- Insert
INSERT INTO COLLECTION articles VALUES {'text': '...', 'year': 2024}
INSERT BULK INTO COLLECTION articles VALUES [{'text': '...'}, {'text': '...'}]

-- Search
SEARCH articles SIMILAR TO 'query' LIMIT 10
SEARCH articles SIMILAR TO 'query' LIMIT 10 WHERE year >= 2020
SEARCH articles SIMILAR TO 'query' LIMIT 10 WHERE active = true
SEARCH articles SIMILAR TO 'query' LIMIT 10 WITH { mmr_diversity: 0.5, mmr_candidates: 50 }
SEARCH articles SIMILAR TO 'query' LIMIT 10 USING HYBRID
SEARCH articles SIMILAR TO 'query' LIMIT 10 USING HYBRID FUSION 'dbsf'
SEARCH articles SIMILAR TO 'query' LIMIT 10 WITH { indexed_only: true }
SEARCH articles SIMILAR TO 'query' LIMIT 10 WITH { quantization: { ignore: true, oversampling: 2 } }
SEARCH articles SIMILAR TO 'query' LIMIT 10 USING HYBRID RERANK

-- Scroll
SCROLL FROM articles LIMIT 50
SCROLL FROM articles WHERE year >= 2024 LIMIT 50
SCROLL FROM articles AFTER 'cursor-id' LIMIT 50

-- Recommend
RECOMMEND FROM articles POSITIVE IDS (1001, 1002) LIMIT 5

-- Select (retrieve a point by ID)
SELECT * FROM articles WHERE id = '3f2e1a4b-...'

-- Collections
CREATE COLLECTION articles
CREATE COLLECTION articles HYBRID
CREATE COLLECTION articles HNSW { payload_m: 16 }
CREATE COLLECTION articles QUANTIZE SCALAR
CREATE COLLECTION articles QUANTIZE TURBO
CREATE COLLECTION articles QUANTIZE TURBO BITS 2
CREATE COLLECTION articles QUANTIZE TURBO BITS 1.5 ALWAYS RAM
CREATE INDEX ON COLLECTION articles FOR year TYPE integer
CREATE INDEX ON COLLECTION articles FOR tenant_id TYPE keyword WITH { is_tenant: true, on_disk: true }
CREATE INDEX ON COLLECTION articles FOR doc_id TYPE uuid
CREATE INDEX ON COLLECTION articles FOR title TYPE text WITH { tokenizer: 'word', min_token_len: 2, lowercase: true }
SHOW COLLECTIONS
SHOW COLLECTION articles
DROP COLLECTION articles

-- Search with grouping
SEARCH articles SIMILAR TO 'query' LIMIT 5 GROUP BY category
SEARCH articles SIMILAR TO 'query' LIMIT 5 GROUP BY category GROUP_SIZE 3
SEARCH articles SIMILAR TO 'query' LIMIT 5 WHERE year >= 2020 GROUP BY category GROUP_SIZE 2
SEARCH articles SIMILAR TO 'query' LIMIT 5 USING HYBRID GROUP BY category

-- Update
UPDATE articles SET VECTOR WHERE id = '3f2e1a4b-...' [0.1, 0.2, 0.3, 0.4]
UPDATE articles SET PAYLOAD WHERE id = '3f2e1a4b-...' {'year': 2025, 'status': 'active'}
UPDATE articles SET PAYLOAD WHERE category = 'draft' {'status': 'published'}

-- Delete
DELETE FROM articles WHERE id = '3f2e1a4b-...'
DELETE FROM articles WHERE year < 2020

-- Scripts
EXECUTE /path/to/script.qql
DUMP articles /path/to/backup.qql

Running Tests

Tests do not require a running Qdrant instance — the Qdrant client is mocked.

pytest tests/ -v

Expected: 549 tests passing.


License

MIT © Kameshwara Pavan Kumar Mantha

Project details


Download files

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

Source Distribution

qql_cli-2.4.1.tar.gz (102.5 kB view details)

Uploaded Source

Built Distribution

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

qql_cli-2.4.1-py3-none-any.whl (44.8 kB view details)

Uploaded Python 3

File details

Details for the file qql_cli-2.4.1.tar.gz.

File metadata

  • Download URL: qql_cli-2.4.1.tar.gz
  • Upload date:
  • Size: 102.5 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.12.13

File hashes

Hashes for qql_cli-2.4.1.tar.gz
Algorithm Hash digest
SHA256 5a8b1cef170c92c9278d057f5baf23de2baa5a2364089ac537bc733ddeef3625
MD5 ef19b28d87fe8cd18d1f962f29265ded
BLAKE2b-256 ad9b73b6fa448bd047e6bc79e9c13bbb38b72e39ae58033081df3ffbaf4762a6

See more details on using hashes here.

File details

Details for the file qql_cli-2.4.1-py3-none-any.whl.

File metadata

  • Download URL: qql_cli-2.4.1-py3-none-any.whl
  • Upload date:
  • Size: 44.8 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.12.13

File hashes

Hashes for qql_cli-2.4.1-py3-none-any.whl
Algorithm Hash digest
SHA256 1c7d3e37f5a037cd5d4aeaf7430bc0db82069b082e06ceef86ed042a29894c0c
MD5 ec5761bb64548c8c997732834fa8d17c
BLAKE2b-256 9b036ec5b70a10aa93972f7f6ee9050e6cd88fe6f5071b7d2c6923c23f0b8921

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