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Decompose text into classified semantic units with authority, risk, attention scores, and entity extraction. No LLM. Deterministic. Works as MCP server or CLI.
Decompose text into classified semantic units with authority, risk, attention scores, and entity extraction. No LLM. Deterministic. Works as MCP server or CLI.
Stop prompting. Start decomposing.
Deterministic text classification for AI agents. Decompose turns any text into classified, structured semantic units — instantly. No LLM. No setup. One function call.
The contractor shall provide all materials per ASTM C150-20. Maximum load
shall not exceed 500 psf per ASCE 7-22. Notice to proceed within 14 calendar
days of contract execution. Retainage of 10% applies to all payments.
For general background, the project is located in Denver, CO...
[
{
"text": "The contractor shall provide all materials per ASTM C150-20.",
"authority": "mandatory",
"risk": "compliance",
"type": "requirement",
"irreducible": true,
"attention": 8.0,
"entities": ["ASTM C150-20"]
},
{
"text": "Maximum load shall not exceed 500 psf per ASCE 7-22.",
"authority": "prohibitive",
"risk": "safety_critical",
"type": "constraint",
"irreducible": true,
"attention": 10.0,
"entities": ["ASCE 7-22"]
}
]
Every unit classified. Every standard extracted. Every risk scored. Your agent knows what matters.
pip install decompose-mcp
Add to your agent's MCP config (Claude Code, Cursor, Windsurf, etc.):
{
"mcpServers": {
"decompose": {
"command": "uvx",
"args": ["decompose-mcp", "--serve"]
}
}
}
Your agent gets two tools:
decompose_text — decompose any textdecompose_url — fetch a URL and decompose its contentInstall the skill from ClawHub or configure directly:
{
"mcpServers": {
"decompose": {
"command": "python3",
"args": ["-m", "decompose", "--serve"]
}
}
}
Or install the skill: clawdhub install decompose-mcp
# Pipe text
cat spec.txt | decompose --pretty
# Inline
decompose --text "The contractor shall provide all materials per ASTM C150-20."
# Compact output (smaller JSON)
cat document.md | decompose --compact
from decompose import decompose_text, filter_for_llm
result = decompose_text("The contractor shall provide all materials per ASTM C150-20.")
for unit in result["units"]:
print(f"[{unit['authority']}] [{unit['risk']}] {unit['text'][:60]}...")
# Pre-filter for LLM context — keep only high-value units
filtered = filter_for_llm(result, max_tokens=4000)
print(f"{filtered['meta']['reduction_pct']}% token reduction")
llm_input = filtered["text"] # Ready for your LLM
| Field | Values | What It Tells Your Agent |
|---|---|---|
authority |
mandatory, prohibitive, directive, permissive, conditional, informational | Is this a hard requirement or background? |
risk |
safety_critical, security, compliance, financial, contractual, advisory, informational | How much does this matter? |
type |
requirement, definition, reference, constraint, narrative, data | What kind of content is this? |
irreducible |
true/false | Must this be preserved verbatim? |
attention |
0.0 - 10.0 | How much compute should the agent spend here? |
entities |
standards, codes, regulations | What formal references are cited? |
actionable |
true/false | Does someone need to do something? |
Decompose is not the destination. It's the step before the LLM that most developers skip — not because it's hard, but because nobody showed them it exists. Documents have structure. That structure is classifiable. And classification should happen before reasoning.
Without: document → chunk → embed → retrieve → LLM → answer (100% of tokens)
With: document → decompose → filter/route → LLM → answer (20-40% of tokens)
filter_for_llm() keeps mandatory, safety-critical, financial, and compliance units — drops boilerplate before it reaches your LLM or vector store.
from decompose import decompose_text, filter_for_llm
result = decompose_text(open("contract.md").read())
filtered = filter_for_llm(result, max_tokens=4000)
# filtered["text"] = high-value units only, ready for LLM
# filtered["meta"]["reduction_pct"] = how much was dropped (typically 60-80%)
# Or use the units directly for embedding
for unit in filtered["units"]:
embed_and_store(unit["text"], metadata={
"authority": unit["authority"],
"risk": unit["risk"],
"attention": unit["attention"],
})
Safety-critical content goes to one chain. Financial content goes to another. Boilerplate gets skipped.
from decompose import decompose_text
result = decompose_text(spec_text)
for unit in result["units"]:
if unit["risk"] == "safety_critical":
safety_chain.process(unit) # Full analysis + human review
elif unit["risk"] == "financial":
audit_chain.process(unit) # Flag for finance team
elif unit["attention"] < 0.5:
pass # Skip boilerplate
else:
general_chain.process(unit) # Standard LLM analysis
from decompose import decompose_text
result = decompose_text(spec_text)
total = len(result["units"])
high = [u for u in result["units"] if u["attention"] >= 1.0]
print(f"{len(high)}/{total} units need LLM analysis")
print(f"{100 - len(high) * 100 // total}% token reduction")
See examples/ for runnable scripts.
Decompose runs on pure regex and heuristics. No Ollama, no API key, no GPU, no inference cost.
This is intentional:
The LLM is what your agent uses. Decompose makes whatever model you're running work better.
Decompose is built by Echology and extracted from AECai, a document intelligence platform for Architecture, Engineering, and Construction firms. The classification patterns, entity extraction, and irreducibility detection are battle-tested against thousands of real AEC documents — specs, contracts, RFIs, inspection reports, pay applications.
Decompose earned its independence — it started as AECai's text classification module, proved general enough to work across domains (insurance, trading, regulatory), and was released standalone. Free, MIT-licensed.
The same chunking and entity extraction patterns that classify engineering specs also structure the Bible. Open Scripture Intelligence uses Decompose's Markdown-aware chunker and regex entity extraction to transform 31,100 verses into a knowledge graph with 344,799 cross-reference edges and semantic embeddings — proving the methodology is domain-agnostic.
License: MIT — Copyright (c) 2025-2026 Echology, Inc.
Добавь это в claude_desktop_config.json и перезапусти Claude Desktop.
{
"mcpServers": {
"echology-io-decompose": {
"command": "npx",
"args": []
}
}
}Web content fetching and conversion for efficient LLM usage.
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