graphify

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Knowledge graph engine for B2B sales intelligence. Builds queryable graphs from product catalogs, customer conversations, and market research. Powered by graphify.

iPythoning By iPythoning schedule Updated 4/8/2026

name: graphify description: "Knowledge graph engine for B2B sales intelligence. Builds queryable graphs from product catalogs, customer conversations, and market research. Powered by graphify."

Graphify — Sales Intelligence Knowledge Graph

Build knowledge graphs from your product catalog, customer conversations, and market research to surface hidden connections, cross-sell opportunities, and competitive insights.

Based on graphify — adapted for B2B SDR context.

Triggers

  • Manual: "Build a knowledge graph of our products"
  • Manual: "Map customer relationships"
  • Manual: "Analyze competitive landscape"
  • Cron (optional): Weekly rebuild after lead-discovery updates

Prerequisites

# Ensure graphify is installed
python3 -c "import graphify" 2>/dev/null || pip install graphifyy -q --break-system-packages 2>&1 | tail -3

Use Cases

1. Product Catalog Graph

Build a graph from product-kb/ to understand product relationships, shared certifications, overlapping target markets, and cross-sell paths.

When to use: Before quotation, during BANT qualification, when customer asks about related products.

python3 -c "
import json
from graphify.extract import collect_files, extract
from graphify.build import build
from graphify.cluster import cluster, score_all
from graphify.analyze import god_nodes, surprising_connections
from pathlib import Path

# Extract from product catalog
files = collect_files(Path('product-kb'))
ast_result = extract(files)

# Build and analyze
G = build([ast_result])
communities, labels = cluster(G)
cohesion = score_all(G, communities)

gods = god_nodes(G, top_n=5)
surprises = surprising_connections(G, communities, top_n=5)

print('=== Core Products (God Nodes) ===')
for g in gods:
    print(f'  {g[\"label\"]} — {g[\"edges\"]} connections')

print('=== Surprising Connections ===')
for s in surprises:
    print(f'  {s[\"source\"]} ↔ {s[\"target\"]} [{s[\"confidence\"]}]')
"

Sales actions from graph insights:

  • God nodes = your anchor products → lead with these in cold outreach
  • Surprising connections = non-obvious cross-sell paths → "customers who buy X often need Y"
  • Communities = product families → bundle pricing opportunities

2. Customer Intelligence Graph

Build a graph from conversation histories and CRM data to map customer relationships, identify buying patterns, and find warm introduction paths.

Input sources:

  • ChromaDB conversation history (chroma:recall)
  • CRM records (Google Sheets)
  • Supermemory research notes (memory:search)

What to extract (semantic, not AST):

  • Companies → employees (decision makers, influencers)
  • Companies → products they bought or inquired about
  • Companies → companies (same industry, same region, competitors)
  • People → people (referrals, shared contacts)
  • Deals → products, timelines, objections

Sales actions from graph insights:

  • Cluster customers by behavior → tailor nurture campaigns per cluster
  • Find bridge nodes (customers who connect segments) → referral candidates
  • Detect isolated nodes (customers with no follow-up) → stalled lead recovery

3. Market Research Graph

Build a graph from lead-discovery research, competitor intel, and market signals stored in Supermemory.

What to extract:

  • Competitors → products, pricing, markets
  • Markets → trends, regulations, trade shows
  • Customers → competitors they also buy from
  • Regions → seasonal demand patterns

Sales actions from graph insights:

  • Surprising connections between markets → expansion opportunities
  • Competitor clusters → differentiation strategy
  • Market god nodes → priority regions for lead-discovery rotation

Graph Query (runtime)

After building a graph, query it for specific sales intelligence:

# BFS — broad context around a topic
python3 -m graphify query "hydraulic excavator certification" --budget 1500

# DFS — trace a specific relationship chain
python3 -m graphify query "Dubai customer fleet" --dfs --budget 1000

Use before:

  • Responding to product questions → query product graph for specs and relationships
  • Preparing quotations → find cross-sell opportunities in graph
  • Cold outreach → understand prospect's market context from research graph

Graph Export

python3 -c "
from graphify.export import to_json, to_html
from graphify.build import build_from_json
from pathlib import Path
import json

data = json.loads(Path('graphify-out/graph.json').read_text())
G = build_from_json(data)

# Interactive HTML for owner dashboard
to_html(G, Path('graphify-out/graph.html'))

# JSON for programmatic access
to_json(G, Path('graphify-out/graph.json'))
"
  • HTML: Interactive vis.js graph — share with owner for pipeline visibility
  • JSON: Machine-readable — feed into reporting or CRM enrichment
  • Report: graphify-out/GRAPH_REPORT.md — god nodes, communities, knowledge gaps

Output Format (report to owner)

Product Knowledge Graph:
- X nodes · Y edges · Z communities
- Core products: [god nodes list]
- Cross-sell opportunities: [surprising connections]
- Knowledge gaps: [isolated products with missing specs]

Recommendation: Update product-kb for [gap products] to improve graph coverage.

Integration with Other Skills

Skill How Graphify Helps
lead-discovery Query market graph before searching → better targeting
quotation-generator Query product graph → include related products in quote
chroma-memory Feed conversation data → build customer intelligence graph
supermemory Feed research notes → build market research graph
sdr-humanizer Graph context → more relevant, personalized conversations

Rebuild Strategy

  • Product graph: Rebuild when product-kb/ changes (new products, updated specs)
  • Customer graph: Rebuild weekly from ChromaDB + CRM snapshots
  • Market graph: Rebuild after lead-discovery runs (daily 10:00 output)

Store graphs in graphify-out/ — survives across sessions, queryable anytime.

Install via CLI
npx skills add https://github.com/iPythoning/b2b-sdr-agent-template --skill graphify
Repository Details
star Stars 120
call_split Forks 41
navigation Branch main
article Path SKILL.md
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