* chore: update gitignore for audit reports and playwright cache * fix: add YAML frontmatter (name + description) to all SKILL.md files - Added frontmatter to 34 skills that were missing it entirely (0% Tessl score) - Fixed name field format to kebab-case across all 169 skills - Resolves #284 * chore: sync codex skills symlinks [automated] * fix: optimize 14 low-scoring skills via Tessl review (#290) Tessl optimization: 14 skills improved from ≤69% to 85%+. Closes #285, #286. * chore: sync codex skills symlinks [automated] * fix: optimize 18 skills via Tessl review + compliance fix (closes #287) (#291) Phase 1: 18 skills optimized via Tessl (avg 77% → 95%). Closes #287. * feat: add scripts and references to 4 prompt-only skills + Tessl optimization (#292) Phase 2: 3 new scripts + 2 reference files for prompt-only skills. Tessl 45-55% → 94-100%. * feat: add 6 agents + 5 slash commands for full coverage (v2.7.0) (#293) Phase 3: 6 new agents (all 9 categories covered) + 5 slash commands. * fix: Phase 5 verification fixes + docs update (#294) Phase 5 verification fixes * chore: sync codex skills symlinks [automated] * fix: marketplace audit — all 11 plugins validated by Claude Code (#295) Marketplace audit: all 11 plugins validated + installed + tested in Claude Code * fix: restore 7 removed plugins + revert playwright-pro name to pw Reverts two overly aggressive audit changes: - Restored content-creator, demand-gen, fullstack-engineer, aws-architect, product-manager, scrum-master, skill-security-auditor to marketplace - Reverted playwright-pro plugin.json name back to 'pw' (intentional short name) * refactor: split 21 over-500-line skills into SKILL.md + references (#296) * chore: sync codex skills symlinks [automated] * docs: update all documentation with accurate counts and regenerated skill pages - Update skill count to 170, Python tools to 213, references to 314 across all docs - Regenerate all 170 skill doc pages from latest SKILL.md sources - Update CLAUDE.md with v2.1.1 highlights, accurate architecture tree, and roadmap - Update README.md badges and overview table - Update marketplace.json metadata description and version - Update mkdocs.yml, index.md, getting-started.md with correct numbers * fix: add root-level SKILL.md and .codex/instructions.md to all domains (#301) Root cause: CLI tools (ai-agent-skills, agent-skills-cli) look for SKILL.md at the specified install path. 7 of 9 domain directories were missing this file, causing "Skill not found" errors for bundle installs like: npx ai-agent-skills install alirezarezvani/claude-skills/engineering-team Fix: - Add root-level SKILL.md with YAML frontmatter to 7 domains - Add .codex/instructions.md to 8 domains (for Codex CLI discovery) - Update INSTALLATION.md with accurate skill counts (53→170) - Add troubleshooting entry for "Skill not found" error All 9 domains now have: SKILL.md + .codex/instructions.md + plugin.json Closes #301 Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com> * feat: add Gemini CLI + OpenClaw support, fix Codex missing 25 skills Gemini CLI: - Add GEMINI.md with activation instructions - Add scripts/gemini-install.sh setup script - Add scripts/sync-gemini-skills.py (194 skills indexed) - Add .gemini/skills/ with symlinks for all skills, agents, commands - Remove phantom medium-content-pro entries from sync script - Add top-level folder filter to prevent gitignored dirs from leaking Codex CLI: - Fix sync-codex-skills.py missing "engineering" domain (25 POWERFUL skills) - Regenerate .codex/skills-index.json: 124 → 149 skills - Add 25 new symlinks in .codex/skills/ OpenClaw: - Add OpenClaw installation section to INSTALLATION.md - Add ClawHub install + manual install + YAML frontmatter docs Documentation: - Update INSTALLATION.md with all 4 platforms + accurate counts - Update README.md: "three platforms" → "four platforms" + Gemini quick start - Update CLAUDE.md with Gemini CLI support in v2.1.1 highlights - Update SKILL-AUTHORING-STANDARD.md + SKILL_PIPELINE.md with Gemini steps - Add OpenClaw + Gemini to installation locations reference table Marketplace: all 18 plugins validated — sources exist, SKILL.md present Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com> * feat(product,pm): world-class product & PM skills audit — 6 scripts, 5 agents, 7 commands, 23 references/assets Phase 1 — Agent & Command Foundation: - Rewrite cs-project-manager agent (55→515 lines, 4 workflows, 6 skill integrations) - Expand cs-product-manager agent (408→684 lines, orchestrates all 8 product skills) - Add 7 slash commands: /rice, /okr, /persona, /user-story, /sprint-health, /project-health, /retro Phase 2 — Script Gap Closure (2,779 lines): - jira-expert: jql_query_builder.py (22 patterns), workflow_validator.py - confluence-expert: space_structure_generator.py, content_audit_analyzer.py - atlassian-admin: permission_audit_tool.py - atlassian-templates: template_scaffolder.py (Confluence XHTML generation) Phase 3 — Reference & Asset Enrichment: - 9 product references (competitive-teardown, landing-page-generator, saas-scaffolder) - 6 PM references (confluence-expert, atlassian-admin, atlassian-templates) - 7 product assets (templates for PRD, RICE, sprint, stories, OKR, research, design system) - 1 PM asset (permission_scheme_template.json) Phase 4 — New Agents: - cs-agile-product-owner, cs-product-strategist, cs-ux-researcher Phase 5 — Integration & Polish: - Related Skills cross-references in 8 SKILL.md files - Updated product-team/CLAUDE.md (5→8 skills, 6→9 tools, 4 agents, 5 commands) - Updated project-management/CLAUDE.md (0→12 scripts, 3 commands) - Regenerated docs site (177 pages), updated homepage and getting-started Quality audit: 31 files reviewed, 29 PASS, 2 fixed (copy-frameworks.md, governance-framework.md) Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com> * fix: audit and repair all plugins, agents, and commands - Fix 12 command files: correct CLI arg syntax, script paths, and usage docs - Fix 3 agents with broken script/reference paths (cs-content-creator, cs-demand-gen-specialist, cs-financial-analyst) - Add complete YAML frontmatter to 5 agents (cs-growth-strategist, cs-engineering-lead, cs-senior-engineer, cs-financial-analyst, cs-quality-regulatory) - Fix cs-ceo-advisor related agent path - Update marketplace.json metadata counts (224 tools, 341 refs, 14 agents, 12 commands) Verified: all 19 scripts pass --help, all 14 agent paths resolve, mkdocs builds clean. Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com> * fix: repair 25 Python scripts failing --help across all domains - Fix Python 3.10+ syntax (float | None → Optional[float]) in 2 scripts - Add argparse CLI handling to 9 marketing scripts using raw sys.argv - Fix 10 scripts crashing at module level (wrap in __main__, add argparse) - Make yaml/prefect/mcp imports conditional with stdlib fallbacks (4 scripts) - Fix f-string backslash syntax in project_bootstrapper.py - Fix -h flag conflict in pr_analyzer.py - Fix tech-debt.md description (score → prioritize) All 237 scripts now pass python3 --help verification. Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com> * fix(product-team): close 3 verified gaps in product skills - Fix competitive-teardown/SKILL.md: replace broken references DATA_COLLECTION.md → references/data-collection-guide.md and TEMPLATES.md → references/analysis-templates.md (workflow was broken at steps 2 and 4) - Upgrade landing_page_scaffolder.py: add TSX + Tailwind output format (--format tsx) matching SKILL.md promise of Next.js/React components. 4 design styles (dark-saas, clean-minimal, bold-startup, enterprise). TSX is now default; HTML preserved via --format html - Rewrite README.md: fix stale counts (was 5 skills/15+ tools, now accurately shows 8 skills/9 tools), remove 7 ghost scripts that never existed (sprint_planner.py, velocity_tracker.py, etc.) - Fix tech-debt.md description (score → prioritize) Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com> * release: v2.1.2 — landing page TSX output, brand voice integration, docs update - Landing page generator defaults to Next.js TSX + Tailwind CSS (4 design styles) - Brand voice analyzer integrated into landing page generation workflow - CHANGELOG, CLAUDE.md, README.md updated for v2.1.2 - All 13 plugin.json + marketplace.json bumped to 2.1.2 - Gemini/Codex skill indexes re-synced - Backward compatible: --format html preserved, no breaking changes Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com> --------- Co-authored-by: alirezarezvani <5697919+alirezarezvani@users.noreply.github.com> Co-authored-by: Leo <leo@openclaw.ai> Co-authored-by: Claude Opus 4.6 <noreply@anthropic.com>
220 lines
8.9 KiB
Python
220 lines
8.9 KiB
Python
#!/usr/bin/env python3
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"""Validate marketing context completeness — scores 0-100."""
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import json
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import re
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import sys
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from pathlib import Path
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SECTIONS = {
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"Product Overview": {"required": True, "weight": 10, "markers": ["one-liner", "what it does", "product category", "business model"]},
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"Target Audience": {"required": True, "weight": 12, "markers": ["target compan", "decision-maker", "use case", "jobs to be done"]},
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"Personas": {"required": False, "weight": 5, "markers": ["persona", "champion", "decision maker"]},
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"Problems & Pain Points": {"required": True, "weight": 10, "markers": ["core problem", "fall short", "cost", "tension"]},
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"Competitive Landscape": {"required": True, "weight": 10, "markers": ["direct", "competitor", "secondary"]},
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"Differentiation": {"required": True, "weight": 10, "markers": ["differentiator", "differently", "why customers choose"]},
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"Objections": {"required": False, "weight": 5, "markers": ["objection", "response", "anti-persona"]},
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"Switching Dynamics": {"required": False, "weight": 5, "markers": ["push", "pull", "habit", "anxiety"]},
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"Customer Language": {"required": True, "weight": 10, "markers": ["verbatim", "words to use", "words to avoid"]},
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"Brand Voice": {"required": True, "weight": 8, "markers": ["tone", "style", "personality"]},
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"Style Guide": {"required": False, "weight": 3, "markers": ["grammar", "capitalization", "formatting"]},
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"Proof Points": {"required": True, "weight": 7, "markers": ["metric", "customer", "testimonial"]},
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"Content & SEO": {"required": False, "weight": 3, "markers": ["keyword", "internal link"]},
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"Goals": {"required": True, "weight": 2, "markers": ["business goal", "conversion"]}
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}
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def validate_context(content: str) -> dict:
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"""Validate marketing context file and return score."""
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content_lower = content.lower()
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results = {"sections": {}, "score": 0, "max_score": 100, "missing_required": [], "missing_optional": [], "warnings": []}
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total_weight = sum(s["weight"] for s in SECTIONS.values())
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earned = 0
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for name, config in SECTIONS.items():
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section_present = name.lower().replace("& ", "").replace(" ", " ") in content_lower or any(
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m in content_lower for m in config["markers"][:2]
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)
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markers_found = sum(1 for m in config["markers"] if m in content_lower)
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markers_total = len(config["markers"])
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has_placeholder = bool(re.search(r'\[.*?\]', content[content_lower.find(name.lower()):content_lower.find(name.lower()) + 500] if name.lower() in content_lower else ""))
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if section_present and markers_found > 0:
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completeness = markers_found / markers_total
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if has_placeholder and completeness < 0.5:
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completeness *= 0.5 # Penalize unfilled templates
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section_score = round(config["weight"] * completeness)
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earned += section_score
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status = "complete" if completeness >= 0.75 else "partial"
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else:
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section_score = 0
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status = "missing"
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if config["required"]:
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results["missing_required"].append(name)
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else:
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results["missing_optional"].append(name)
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results["sections"][name] = {
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"status": status,
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"markers_found": markers_found,
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"markers_total": markers_total,
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"score": section_score,
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"max_score": config["weight"],
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"required": config["required"]
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}
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results["score"] = round((earned / total_weight) * 100)
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# Warnings
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if "verbatim" not in content_lower and '"' not in content:
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results["warnings"].append("No verbatim customer quotes found — copy will sound generic")
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if not re.search(r'\d+%|\$\d+|\d+ customer', content_lower):
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results["warnings"].append("No metrics or proof points with numbers found")
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if "last updated" in content_lower:
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date_match = re.search(r'last updated:?\s*(\d{4}-\d{2}-\d{2})', content_lower)
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if date_match:
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from datetime import datetime
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try:
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updated = datetime.strptime(date_match.group(1), "%Y-%m-%d")
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age_days = (datetime.now() - updated).days
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if age_days > 180:
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results["warnings"].append(f"Context is {age_days} days old — review recommended (>180 days)")
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except ValueError:
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pass
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return results
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def print_report(results: dict):
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"""Print human-readable validation report."""
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print(f"\n{'='*50}")
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print(f"MARKETING CONTEXT VALIDATION")
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print(f"{'='*50}")
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print(f"\nOverall Score: {results['score']}/100")
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print(f"{'🟢 Strong' if results['score'] >= 80 else '🟡 Needs Work' if results['score'] >= 50 else '🔴 Incomplete'}")
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print(f"\n{'─'*50}")
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print(f"{'Section':<25} {'Status':<10} {'Score':<10}")
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print(f"{'─'*50}")
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for name, data in results["sections"].items():
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icon = {"complete": "✅", "partial": "⚠️", "missing": "❌"}[data["status"]]
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req = " *" if data["required"] else ""
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print(f"{icon} {name:<23} {data['status']:<10} {data['score']}/{data['max_score']}{req}")
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if results["missing_required"]:
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print(f"\n🔴 Missing Required Sections:")
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for s in results["missing_required"]:
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print(f" → {s}")
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if results["missing_optional"]:
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print(f"\n🟡 Missing Optional Sections:")
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for s in results["missing_optional"]:
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print(f" → {s}")
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if results["warnings"]:
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print(f"\n⚠️ Warnings:")
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for w in results["warnings"]:
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print(f" → {w}")
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print(f"\n* = required section")
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print(f"{'='*50}")
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def main():
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import argparse
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parser = argparse.ArgumentParser(
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description="Validates marketing context completeness. "
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"Scores 0-100 based on required and optional section coverage."
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)
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parser.add_argument(
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"file", nargs="?", default=None,
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help="Path to a marketing context markdown file. "
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"If omitted, runs demo with embedded sample data."
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)
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parser.add_argument(
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"--json", action="store_true",
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help="Also output results as JSON."
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)
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args = parser.parse_args()
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if args.file:
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filepath = Path(args.file)
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if not filepath.exists():
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print(f"Error: File not found: {filepath}", file=sys.stderr)
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sys.exit(1)
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content = filepath.read_text()
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else:
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# Demo with sample data
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content = """# Marketing Context
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*Last updated: 2026-01-15*
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## Product Overview
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**One-liner:** AI-powered mobility analysis for elderly care
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**What it does:** Smartphone-based fall risk assessment using computer vision
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**Product category:** HealthTech / Digital Health
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**Business model:** SaaS, per-facility licensing
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## Target Audience
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**Target companies:** Care facilities, nursing homes, 50+ beds
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**Decision-makers:** Facility directors, quality managers
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**Primary use case:** Automated fall risk assessment replacing manual observation
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**Jobs to be done:**
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- Reduce fall incidents by identifying high-risk residents
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- Meet regulatory documentation requirements efficiently
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- Give care staff actionable mobility insights
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## Problems & Pain Points
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**Core problem:** Manual fall risk assessment is subjective, time-consuming, and inconsistent
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**Why alternatives fall short:**
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- Manual observation takes 30+ minutes per resident
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- Paper-based assessments are completed once per quarter at best
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**What it costs them:** Falls cost €8,000-12,000 per incident, plus liability
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**Emotional tension:** Staff fear missing warning signs, blame after incidents
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## Competitive Landscape
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**Direct:** Traditional gait labs — $50K+ hardware, need trained staff
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**Secondary:** Wearable sensors — low compliance, residents remove them
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**Indirect:** Manual observation — subjective, inconsistent
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## Differentiation
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**Key differentiators:**
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- Uses standard smartphone (no special hardware)
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- AI-powered analysis (objective, repeatable)
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**Why customers choose us:** Fast, affordable, no hardware investment
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## Customer Language
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**How they describe the problem:**
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- "We never know who's going to fall next"
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- "The documentation takes forever"
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**Words to use:** mobility analysis, fall prevention, care quality
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**Words to avoid:** surveillance, monitoring, tracking
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## Brand Voice
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**Tone:** Professional, empathetic, evidence-based
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**Personality:** Trustworthy, innovative, caring
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## Proof Points
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**Metrics:**
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- 80+ care facilities served
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- 30% reduction in fall incidents (pilot data)
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**Customers:** Major care facility chains in Germany
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## Goals
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**Business goal:** Expand to 200+ facilities, enter Spain and Netherlands
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**Conversion action:** Book a demo
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"""
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print("[Using embedded sample data — pass a file path for real validation]")
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results = validate_context(content)
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print_report(results)
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if args.json:
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print(f"\n{json.dumps(results, indent=2)}")
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if __name__ == "__main__":
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main()
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