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Vector search for Django models with graph relations, optional LangGraph pipeline, conversational search, smart indexing and streaming.

Project description

Django Graph Search

PyPI version Python Version License: MIT Django Vector Search

Production-ready semantic vector search for Django — searches across FK, M2M, and reverse relations by traversing your model graph. Pluggable backends: ChromaDB, FAISS, Qdrant.

pip install django-graph-search[chromadb]

Why Django Graph Search?

Most Django search solutions (Haystack, Elasticsearch, full-text) treat each model in isolation. Django Graph Search builds rich search context by traversing the ORM relation graph before indexing:

  • A Product becomes searchable by its category__name, tags__name, brand__description, etc. — automatically
  • Uses sentence-transformers embeddings for multilingual semantic similarity
  • Delta indexing — only re-index what changed
  • Admin UI — semantic search inside /admin/ out of the box
  • REST API — ready-to-use search endpoint

Installation

# ChromaDB backend (recommended for local/dev)
pip install django-graph-search[chromadb]

# FAISS backend (fast CPU similarity, no server needed)
pip install django-graph-search[faiss]

# Qdrant backend (production, scalable)
pip install django-graph-search[qdrant]

# pgvector (PostgreSQL extension)
pip install django-graph-search[pgvector]

# OpenAI / Cohere cloud embeddings (no local PyTorch model)
pip install django-graph-search[openai]
pip install django-graph-search[cohere]

# All backends + LangGraph
pip install django-graph-search[all]

What's new in 0.3.3

Stable 0.3 line. Install with:

pip install django-graph-search==0.3.3

Highlights vs 0.2.0 (full detail in CHANGELOG.md):

Area Change
REST hits Each result includes score (0.0–1.0) and text. Optional min_score query parameter filters weak matches; responses may include min_score_applied.
Indexing weight_fields is always honored, including with fields: "__all__"; weight 0.0 drops a field from indexed text.
Async / non-blocking signals ASYNC_INDEXING (Celery, thread, django-q) or default AUTO_INDEX_NON_BLOCKING (daemon thread for local SentenceTransformer). AUTO_INDEX_SKIP_UPDATE_FIELDS / per-model skip_update_fields skip noisy saves (last_login, etc.).
Admin Sidebar Поиск and Статус индексации; index coverage page; min_score on admin search.
Backends / embeddings Pgvector ([pgvector]). OpenAI / Cohere ([openai], [cohere]). Shared component registry per worker.
Scores ChromaDB / FAISS / Qdrant normalize distances to 0–1; Chroma respects collection metric (L2 / cosine / IP).
Security / API Optional GRAPH_SEARCH["API"]: permissions, throttling, REQUIRE_AUTHENTICATION (defaults stay open).
Validation Invalid limit400; values above 1000 clamped with a log warning.
Fixes LangGraph empty final_results; Chroma metadata; delta cache TTL; conversational memory registry warning.

Quick Start (5 minutes)

1. Add to INSTALLED_APPS

INSTALLED_APPS = [
    ...,
    "django_graph_search",
]

2. Configure GRAPH_SEARCH

# settings.py
GRAPH_SEARCH = {
    "MODELS": [
        {
            "model": "shop.Product",
            # Index local fields + traverse relations with __ notation
            "fields": ["name", "description", "category__name", "tags__name"],
            "follow_relations": True,
            "relation_depth": 2,
        },
        # Or index all concrete fields (weight_fields still apply by field name):
        # {"model": "shop.Review", "fields": "__all__",
        #  "weight_fields": {"title": 2.0, "body": 1.0, "internal_note": 0.0}},
    ],
    "VECTOR_STORE": {
        "BACKEND": "django_graph_search.backends.ChromaDBBackend",
        "OPTIONS": {
            "persist_directory": "vector_db",
            "collection_name": "django_search",
        },
    },
    "EMBEDDINGS": {
        "default": {
            "BACKEND": "django_graph_search.embeddings.SentenceTransformerBackend",
            # Multilingual model — works with Russian, English, etc.
            "MODEL_NAME": "sentence-transformers/paraphrase-multilingual-MiniLM-L12-v2",
        },
        "fast": {
            "BACKEND": "django_graph_search.embeddings.SentenceTransformerBackend",
            "MODEL_NAME": "sentence-transformers/all-MiniLM-L6-v2",
        },
    },
    "DEFAULT_EMBEDDING": "default",
    "DEFAULT_RESULTS_LIMIT": 20,
    "DELTA_INDEXING": True,
    "CACHE": {
        "BACKEND": "file",   # Options: file | redis | db
        "OPTIONS": {"path": "graph_search_cache"},
        "TTL": 86400,
    },
    # Optional REST hardening — permissions / throttling (see "Securing the REST API"):
    # "API": { ... },
}

To restrict access to the main search, streaming, and conversational HTTP endpoints, add an "API" block as described below.

Search relevance (semantic noise). Vector search scores the full string built for indexing (all configured fields plus related rows when follow_relations is true). If results feel noisy or scores look flat, narrow fields to the attributes users actually query (e.g. username, email), set follow_relations / relation_depth lower, then rebuild the index. Admin Graph Search shows a text preview of indexed text per hit and supports optional min_score (same semantics as the REST API).

3. Add URLs

# urls.py
from django.urls import path, include

urlpatterns = [
    ...,
    path("api/search/", include("django_graph_search.urls")),
]

4. Build the index

python manage.py build_search_index

5. Search

# REST API
GET /api/search/?q=wireless+headphones&models=shop.Product&limit=5&min_score=0.75

# Find similar items
GET /api/search/similar/shop.Product/42/?limit=5

How It Works

Django ORM Model Graph
        │
        ▼
  Relation Traversal    <- FK, M2M, reverse relations up to depth N
        │
        ▼
  Text Concatenation    <- fields + related fields merged into one document
        │
        ▼
  Sentence Transformer  <- multilingual embeddings (768-dim vectors)
        │
        ▼
  Vector Store          <- ChromaDB / FAISS / Qdrant
        │
        ▼
  Semantic Search       <- cosine similarity, top-K results

Python API

from django_graph_search import search, index, get_similar

# Semantic search across models
results = search("red smartphone", models=["shop.Product"], limit=5)

# Index a single instance (e.g. in a signal)
index(product_instance)

# Find similar objects
similar = get_similar(product_instance, limit=5)

REST API

Endpoint Method Description
/api/search/?q=...&models=...&limit=...&min_score=... GET Semantic search; optional min_score (0.0–1.0) drops weaker hits
/api/search/similar/{app}.{Model}/{id}/ GET Find similar objects
/api/search/conversation/ POST Session-aware conversational search (optional, see below)
/api/search/conversation/?conversation_id=... DELETE Clear a conversation history
/api/search/stream/ GET, POST Streaming search events (optional)

Each result object includes model, pk, score (0.0–1.0 similarity), and text (the indexed document string). When min_score is used, the response also contains min_score_applied.

Query parameters (limit)

The limit parameter controls how many results are returned (where supported):

Where Parameter
/api/search/ Query string limit
/api/search/ Query string min_score (optional, float 0.0–1.0)
/api/search/similar/.../ Query string limit
/api/search/stream/ Query string or JSON/form body limit
/api/search/conversation/ JSON/form field limit

Rules:

  • Must be a positive integer in the range 1–1000. Values greater than 1000 are clamped to 1000 and a warning is logged.
  • Invalid values (non-numeric strings, negative numbers, booleans, etc.) produce HTTP 400 with JSON {"error": "'limit' must be a positive integer."}.
  • If min_score is set on /api/search/, only results with score >= min_score are returned. The JSON body includes min_score_applied with the threshold used. Invalid values return HTTP 400.

Optional embedding backends (OpenAI / Cohere)

Instead of downloading a sentence-transformers model, you can point EMBEDDINGS at django_graph_search.embeddings.OpenAIEmbeddingBackend or django_graph_search.embeddings.CohereEmbeddingBackend (extras [openai] / [cohere]). Cohere uses asymmetric input_type: indexing uses document mode and search uses query mode (embed_batch(..., is_query=False) vs embed(..., is_query=True)).

Async indexing from signals (optional)

When AUTO_INDEX is on, saves can block on large graphs. Enable ASYNC_INDEXING to offload work:

"ASYNC_INDEXING": {
    "ENABLED": True,
    "BACKEND": "celery",  # or "thread" | "django_q"
    "CELERY_QUEUE": "search_indexing",
    "CELERY_TASK_PATH": "django_graph_search.tasks.index_instance_task",
    "CELERY_DELETE_TASK_PATH": "django_graph_search.tasks.delete_instance_task",
},

With thread, indexing runs in a daemon thread (no retries). With celery, install Celery and register tasks; if Celery is missing, the task module falls back to synchronous execution with a warning.

Production: zero impact on unrelated requests

AUTO_INDEX hooks every post_save for models listed in MODELS. A login that updates auth.User.last_login, or any frequent save on an indexed model, can load a local sentence-transformers model and block the request thread for seconds.

Recommended for production web workers:

Setting Recommendation
AUTO_INDEX False if you rebuild with build_search_index or a Celery beat job
ASYNC_INDEXING ENABLED: True with thread or celery when AUTO_INDEX stays on
MODELS Do not index auth.User (or similar) unless you need user search; login saves are noisy
EMBEDDINGS Prefer OpenAIEmbeddingBackend / CohereEmbeddingBackend in Gunicorn workers to avoid PyTorch in-process
AUTO_INDEX_SKIP_UPDATE_FIELDS Default ["last_login"] — skips indexing when save(update_fields=...) touches only those fields
AUTO_INDEX_NON_BLOCKING Default True — with local SentenceTransformer, signal indexing runs in a daemon thread so login/API are not blocked (model may still load in background)

Example minimal fix for login latency:

GRAPH_SEARCH = {
    "AUTO_INDEX": False,
    # or keep AUTO_INDEX and offload:
    # "ASYNC_INDEXING": {"ENABLED": True, "BACKEND": "thread"},
    # "AUTO_INDEX_SKIP_UPDATE_FIELDS": ["last_login"],
    "MODELS": [
        # avoid auth.User unless required
        {"model": "shop.Product", "fields": ["name", "description"]},
    ],
}

Heavy components (vector store client, embedding backend, graph resolver) are cached once per worker process after the first search or index operation. Restart workers after changing GRAPH_SEARCH backends or embedding models.

For local sentence-transformers, run indexing in a dedicated Celery worker if web workers must stay lean.

Securing the REST API (optional)

Scope: Settings under GRAPH_SEARCH["API"] apply only to GET /api/search/, /api/search/stream/, POST and DELETE /api/search/conversation/. They do not apply to /api/search/similar/.../ — protect that route separately (e.g. Django middleware, URL-level decorators, nginx, or wrapping in your own authenticated view).

By default the search endpoints remain public (backward compatible). Configure GRAPH_SEARCH["API"] to add authentication, permissions, and throttling:

GRAPH_SEARCH = {
    # ... existing keys ...
    "API": {
        "REQUIRE_AUTHENTICATION": True,
        "PERMISSION_CLASSES": [
            # "rest_framework.permissions.IsAuthenticated",  # if DRF is installed
            # or a dotted path to a callable(request) -> bool
        ],
        "THROTTLE_CLASSES": [
            "django_graph_search.permissions.SimpleScopedRateThrottle",
        ],
        "THROTTLE_RATES": {
            "search": "60/minute",
            "search_authenticated": "300/minute",
        },
    },
}

SimpleScopedRateThrottle applies in-process limits (per Gunicorn worker). For accurate global limits across workers, use DRF cache-backed throttles or a reverse-proxy rate limit.

Management Commands

python manage.py build_search_index                  # Index all configured models
python manage.py build_search_index --model shop.Product  # Index one model
python manage.py clear_search_index                  # Remove all vectors
python manage.py search_index_status                 # Show index statistics
python manage.py purge_search_cache                  # Remove expired file delta cache (CACHE.BACKEND=file)
python manage.py purge_search_cache --dry-run        # Count expired entries without deleting

Admin UI

With django.contrib.admin installed, the app adds a Django Graph Search section on the admin index (/admin/) with Поиск and Статус индексации entries. The legacy URL /admin/graph-search/ still works for bookmarks and docs.

Disable the admin section and custom URLs with:

GRAPH_SEARCH = {
    # ...
    "ADMIN_SEARCH_ENABLED": False,
}

Supported Backends

Backend Best for Server required
ChromaDB Development, small-medium datasets No
FAISS High-speed CPU search, offline No
Qdrant Production, large datasets, filtering Yes
pgvector (django_graph_search.backends.PgvectorBackend) Same PostgreSQL as Django, no separate vector server PostgreSQL + vector extension

Install: pip install django-graph-search[pgvector]. Table is created automatically on first use (see backend docstring for VECTOR_STORE.OPTIONS).

Delta Indexing & Cache

Enable DELTA_INDEXING: True to skip objects that haven’t changed since last index run. Choose a cache backend:

Backend Config Use case
file OPTIONS.path Local dev
redis OPTIONS.alias Production
db OPTIONS.alias Simple setup

With CACHE.BACKEND: "file", each delta entry stores an expires_at timestamp derived from CACHE.TTL. Expired entries are removed lazily when read; the directory can still grow if keys are never re-read — run python manage.py purge_search_cache periodically (or via cron), or use --dry-run to count stale files without deleting. Redis/db backends use Django’s cache TTL and do not require this command; purge_search_cache only affects the file backend.

LangGraph-powered search pipeline (optional)

Starting with this version, django-graph-search ships with an optional orchestration layer built on top of LangGraph. It is disabled by default; the public API (Searcher.search, Searcher.find_similar, REST endpoints) is fully backwards-compatible.

When enabled, the pipeline runs as a small graph:

analyze_query → [expand_query] → vector_search → [rerank] → postprocess

Steps in [brackets] are toggled via settings, and each one degrades gracefully: if the LLM backend fails or is not configured, the pipeline keeps working using the deterministic vector search.

GRAPH_SEARCH = {
    # ... your existing config ...
    "LANGGRAPH": {
        "ENABLED": True,                # Master switch.
        "QUERY_EXPANSION": True,        # Generate semantic reformulations.
        "RERANKING": True,              # Rerank top-K candidates.
        "MAX_EXPANDED_QUERIES": 3,
        "RERANK_TOP_K": 20,
        "TIMEOUT_SECONDS": 15,
        "MAX_QUERY_LENGTH": 1024,
        "FALLBACK_ON_ERROR": True,      # Fall back to legacy search on graph errors.
        "USE_FOR_SIMILAR": False,       # Route find_similar through the graph.
        "LLM": {
            # Leave BACKEND=None to use the deterministic dummy backend.
            "BACKEND": None,
            "MODEL": None,
            "OPTIONS": {},
        },
    },
}

Bring your own LLM backend

Implement django_graph_search.llm.BaseLLMBackend and point LANGGRAPH.LLM.BACKEND at the dotted path. The contract is intentionally tiny — expand_query(query, models, max_variants) and rerank(query, candidates, top_k) — so you can wrap any provider (OpenAI, Ollama, vLLM, your in-house service) in a few lines.

Why optional?

The library refuses to add hard dependencies on langgraph or any LLM SDK. If langgraph is not installed, the pipeline transparently uses an in-tree sequential runner with the same node structure, so behaviour and tests stay identical.

Conversational search (optional)

For session-aware semantic search (follow-ups like "more", "only products", "similar") enable the conversational endpoint. It is a thin search-first shell on top of Searcher and never invents user intent: ambiguous follow-ups are surfaced as a structured clarification_needed flag instead of a hallucinated query.

GRAPH_SEARCH = {
    # ... existing config ...
    "CONVERSATIONAL": {
        "ENABLED": True,
        "MEMORY_BACKEND": "redis",
        "MEMORY_OPTIONS": {
            "alias": "default",        # Django CACHES alias
            "key_prefix": "dgs_conv",
            "ttl": 3600,
        },
        "MAX_HISTORY_ITEMS": 10,
        "ALLOW_CLARIFICATIONS": True,
    },
}

For local development and tests, MEMORY_BACKEND: "inmemory" is fine. With DEBUG=False (typical production), the library emits a RuntimeWarning if in-memory mode is left enabled — switch to redis (Django cache → Redis) so every Gunicorn worker shares the same conversation state.

Endpoint: POST /api/search/conversation/

// Request
{
  "query": "only products",
  "conversation_id": "abc-123",
  "models": ["shop.Product"],
  "limit": 5
}

// Response
{
  "conversation_id": "abc-123",
  "query": "only products",
  "interpreted_query": "red phone",
  "clarification_needed": false,
  "results": [...],
  "total": 5
}

Use DELETE /api/search/conversation/?conversation_id=abc-123 to clear a conversation.

Built-in memory backends:

Alias Class Best for
inmemory InMemoryBackend Tests, single-worker dev
cache / redis DjangoCacheBackend Production via Django cache (Redis, memcached)

Bring your own by subclassing BaseMemoryBackend and pointing MEMORY_BACKEND at the dotted path.

Smart indexing (optional)

The classic indexer joins selected fields with whitespace. That works, but the embedding model loses the role of each value: a category name and a body paragraph become indistinguishable tokens. The optional SmartIndexer builds structured documents with labelled sections so the embedder sees something closer to:

Title: Pixel 8
Description:
Camera-first Android phone with Tensor G3.
Category: Phones

Enable it from settings — your existing index, signals, and management command keep working because the resolver and get_indexer() factory pick the new implementation transparently:

GRAPH_SEARCH = {
    # ... your existing config ...
    "SMART_INDEXING": {
        "ENABLED": True,
        # Optional per-model templates; the indexer falls back to a heuristic
        # template based on your MODELS config when one is missing.
        "TEMPLATES": {
            "shop.Product": {
                "title_field": "name",
                "sections": [
                    {"label": "Description", "field": "description", "multiline": True},
                    {"label": "Category", "field": "category__name"},
                ],
            }
        },
    },
}

The original deterministic text is always appended as a safety net so smart indexing never produces less searchable content than the legacy pipeline. Disable the flag to fall back instantly — no reindex required to switch back.

Streaming search endpoint (optional)

Long-running pipelines (query expansion, vector search, reranking) can stream lifecycle events to the client so users see progress instead of staring at a spinner. Two transports are supported:

  • ndjson (default): one JSON object per line, ideal for fetch + ReadableStream and CLI tools like jq.
  • sse: Server-Sent Events for EventSource clients.

Enable from settings:

GRAPH_SEARCH = {
    # ... your existing config ...
    "STREAMING": {
        "ENABLED": True,
        "FORMAT": "ndjson",  # or "sse"
        "INCLUDE_INTERNAL_EVENTS": True,
    },
}

The endpoint is registered at /<API_URL_PREFIX>/stream/ (default /api/search/stream/) and returns HTTP 404 when disabled, so it is safe to leave the URL config untouched.

Quick test:

curl -N "http://localhost:8000/api/search/stream/?q=phone"

Example event sequence (NDJSON):

{"type": "query_received", "query": "phone"}
{"type": "vector_search_completed", "candidate_count": 12}
{"type": "completed", "total": 5}
{"type": "results", "results": [...], "total": 5}
{"type": "end"}

Under the hood the view subscribes a queue.Queue to a per-request EventHub, runs the search in a worker thread, and yields events as soon as the nodes publish them. The hub also powers structured logging and any custom subscribers you register from your own apps.

Comparison

Feature django-graph-search Haystack django-elasticsearch-dsl
Relation traversal ✅ Auto ❌ Manual ❌ Manual
Semantic / vector search Partial
No external server (local) ✅ ChromaDB/FAISS
Multilingual out of box
Admin UI Partial
Delta indexing

Contributing

Pull requests are welcome! Please open an issue first to discuss significant changes.

  1. Fork the repo
  2. git checkout -b feature/my-feature
  3. Commit and open a PR

License

MIT — see LICENSE

Author

Alexander ValenchitsGitHub

Links

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