Epistemic Graph RAG with Spreading Activation — retrieval that understands how knowledge relates, not just what it says
Project description
PRISM — Epistemic Graph RAG with Spreading Activation
Propagation & Retrieval via Informed Semantic Mapping
PRISM layers a typed epistemic knowledge graph over your existing vector store, then uses spreading activation to surface knowledge structured by how it relates — not just how similar it is.
The Problem with Standard RAG
Standard RAG returns a flat ranked list. Every chunk gets a similarity score and nothing else:
query → embed → similarity → [chunk, chunk, chunk, ...] ← no structure
Chunk B may refute Chunk A. Chunk C may specialise a principle in Chunk D. An older document may have been superseded. Standard RAG can't express any of this.
What PRISM Does
PRISM builds a graph where edges carry epistemic type:
Doc A ──[supports]──▶ Doc B
Doc C ──[refutes]───▶ Doc D
Doc E ──[supersedes]▶ Doc F
Retrieval uses spreading activation: a query fires seed nodes via vector search, activation propagates through typed edges, and nodes reached by multiple independent paths (convergence) rank highest.
The result is a structured epistemic answer with five buckets:
| Bucket | Contents |
|---|---|
| PRIMARY | Core relevant chunks, highest convergence |
| SUPPORTING | Chunks that reinforce or extend the primary answer |
| CONTRASTING | Chunks that challenge or take a different position |
| QUALIFYING | Chunks that add conditions, exceptions, or nuances |
| SUPERSEDED | Historically relevant context now replaced by newer work |
Installation
pip install prism-rag
Requires Python 3.11+, an existing LanceDB vector store, and an embedding provider.
Quick Start
1. Build the epistemic graph (one-time)
from prism import PRISM
# Ollama embeddings (local)
p = PRISM(
lancedb_path = "/path/to/your/lancedb",
graph_path = "/path/to/prism_graph.json.gz",
ollama_url = "http://localhost:11434",
embed_model = "nomic-embed-text",
llm_base_url = "https://api.openai.com",
llm_model = "gpt-4o-mini",
llm_api_key = "sk-...",
)
# Or OpenAI-compatible API embeddings
p = PRISM(
lancedb_path = "/path/to/your/lancedb",
graph_path = "/path/to/prism_graph.json.gz",
embed_api_url = "https://api.openai.com/v1/embeddings",
embed_api_key = "sk-...",
embed_model = "text-embedding-3-small",
llm_base_url = "https://api.openai.com",
llm_model = "gpt-4o-mini",
llm_api_key = "sk-...",
)
p.build(k_neighbors=8, cross_source_only=True)
Or via the CLI:
prism-build \
--lancedb-path /path/to/lancedb \
--graph-path /path/to/prism_graph.json.gz \
--llm-api-key $OPENAI_API_KEY
2. Retrieve
p.load_graph()
result = p.retrieve("your question here", top_k=5)
print(result.format_for_llm())
Output:
PRISM retrieval for: "your question here"
────────────────────────────────────────────────────────────
## PRIMARY
[1] source-a p.14 § 2.1 (score: 0.923)
The core relevant passage...
## SUPPORTING EVIDENCE
[1] source-c p.201 § 8.2 (score: 0.841 [via: specializes])
A passage that extends the primary answer...
## QUALIFICATIONS & NUANCES
[1] source-d p.38 § 3.1 (score: 0.712 [via: qualifies])
A passage adding conditions or exceptions...
─ 1 primary · 1 supporting · 0 contrasting · 1 qualifying · 0 superseded ─
3. Access results programmatically
for chunk in result.primary:
print(chunk.source, chunk.page, chunk.final_score, chunk.text)
for chunk in result.contrasting:
print("Contrasting view:", chunk.text[:200])
# Feed structured context directly into your LLM
context = result.format_for_llm()
Epistemic Edge Types
supports — A provides evidence reinforcing B
refutes — A directly contradicts B
supersedes — A replaces or updates B
derives_from — A is logically derived from B
specializes — A is a specific instance of B
contrasts_with — A and B take different, non-exclusive positions
implements — A is a concrete method putting B into practice
generalizes — A is a broader abstraction of which B is a case
exemplifies — A is a concrete example illustrating B
qualifies — A adds conditions, exceptions, or nuances to B
Each edge carries a propagation weight (0.40–0.90) and a valence that determines which result bucket its target lands in.
No Re-embedding Required
PRISM works on top of your existing vector store. If you have a LanceDB corpus with embeddings, you don't need to re-index anything.
- Existing vectors → used as-is for seed activation
- Epistemic graph → built from text via LLM, stored as a separate
.json.gzfile - Fallback → if no graph exists, PRISM automatically falls back to pure vector search
Embedding Providers
Ollama (local):
PRISM(ollama_url="http://localhost:11434", embed_model="nomic-embed-text", ...)
OpenAI-compatible API (OpenAI, Azure, Together, Jina, Mistral, etc.):
PRISM(embed_api_url="https://api.openai.com/v1/embeddings", embed_api_key="sk-...", ...)
Links
- Full documentation & architecture: github.com/MadMando/prism
- Issues: github.com/MadMando/prism/issues
License
MIT
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