Files
claude-skills-reference/marketing-skill/email-sequence/scripts/sequence_analyzer.py
Alireza Rezvani 52321c86bc feat: Marketing Division expansion — 7 → 42 skills (#266)
* feat: Skill Authoring Standard + Marketing Expansion plans

SKILL-AUTHORING-STANDARD.md — the DNA of every skill in this repo:
10 universal patterns codified from C-Suite innovations + Corey Haines' marketingskills patterns:

1. Context-First: check domain context, ask only for gaps
2. Practitioner Voice: expert persona, goal-oriented, not textbook
3. Multi-Mode Workflows: build from scratch / optimize existing / situation-specific
4. Related Skills Navigation: when to use, when NOT to, bidirectional
5. Reference Separation: SKILL.md lean (≤10KB), refs deep
6. Proactive Triggers: surface issues without being asked
7. Output Artifacts: request → specific deliverable mapping
8. Quality Loop: self-verify, confidence tagging
9. Communication Standard: bottom line first, structured output
10. Python Tools: stdlib-only, CLI-first, JSON output, sample data

Marketing expansion plans for 40-skill marketing division build.

* feat: marketing foundation — context + ops router + authoring standard

marketing-context/: Foundation skill every marketing skill reads first
  - SKILL.md: 3 modes (auto-draft, guided interview, update)
  - templates/marketing-context-template.md: 14 sections covering
    product, audience, personas, pain points, competitive landscape,
    differentiation, objections, switching dynamics, customer language
    (verbatim), brand voice, style guide, proof points, SEO context, goals
  - scripts/context_validator.py: Scores completeness 0-100, section-by-section

marketing-ops/: Central router for 40-skill marketing ecosystem
  - Full routing matrix: 7 pods + cross-domain routing to 6 skills in
    business-growth, product-team, engineering-team, c-level-advisor
  - Campaign orchestration sequences (launch, content, CRO sprint)
  - Quality gate matching C-Suite standard
  - scripts/campaign_tracker.py: Campaign status tracking with progress,
    overdue detection, pod coverage, blocker identification

SKILL-AUTHORING-STANDARD.md: Universal DNA for all skills
  - 10 patterns: context-first, practitioner voice, multi-mode workflows,
    related skills navigation, reference separation, proactive triggers,
    output artifacts, quality loop, communication standard, python tools
  - Quality checklist for skill completion verification
  - Domain context file mapping for all 5 domains

* feat: import 20 workspace marketing skills + standard sections

Imported 20 marketing skills from OpenClaw workspace into repo:

Content Pod (5):
  content-strategy, copywriting, copy-editing, social-content, marketing-ideas

SEO Pod (2):
  seo-audit (+ references enriched by subagent), programmatic-seo (+ refs)

CRO Pod (5):
  page-cro, form-cro, signup-flow-cro, onboarding-cro, popup-cro, paywall-upgrade-cro

Channels Pod (2):
  email-sequence, paid-ads

Growth + Intel + GTM (5):
  ab-test-setup, competitor-alternatives, marketing-psychology, launch-strategy, brand-guidelines

All 29 skills now have standard sections per SKILL-AUTHORING-STANDARD.md:
   Proactive Triggers (4-5 per skill)
   Output Artifacts table
   Communication standard reference
   Related Skills with WHEN/NOT disambiguation

Subagents enriched 8 skills with additional reference docs:
  seo-audit, programmatic-seo, page-cro, form-cro,
  onboarding-cro, popup-cro, paywall-upgrade-cro, email-sequence

43 files, 10,566 lines added.

* feat: build 13 new marketing skills + social-media-manager upgrade

All skills are 100% original work — inspired by industry best practices,
written from scratch in our own voice following SKILL-AUTHORING-STANDARD.md.

NEW Content Pod (2):
  content-production — full research→draft→optimize pipeline, content_scorer.py
  content-humanizer — AI pattern detection + voice injection, humanizer_scorer.py

NEW SEO Pod (3):
  ai-seo — AI search optimization (AEO/GEO/LLMO), entirely new category
  schema-markup — JSON-LD structured data, schema_validator.py
  site-architecture — URL structure + internal linking, sitemap_analyzer.py

NEW Channels Pod (2):
  cold-email — B2B outreach (distinct from email-sequence lifecycle)
  ad-creative — bulk ad generation + platform specs, ad_copy_validator.py

NEW Growth Pod (3):
  churn-prevention — cancel flows + save offers + dunning, churn_impact_calculator.py
  referral-program — referral + affiliate programs
  free-tool-strategy — engineering as marketing

NEW Intelligence Pod (1):
  analytics-tracking — GA4/GTM setup + event taxonomy, tracking_plan_generator.py

NEW Sales Pod (1):
  pricing-strategy — pricing, packaging, monetization

UPGRADED:
  social-media-analyzer → social-media-manager (strategy, calendar, community)

Totals: 42 skills, 27 Python scripts, 60 reference docs, 163 files, 43,265 lines

* feat: update index, marketplace, README for 42 marketing skills

- skills-index.json: 89 → 124 skills (42 marketing entries)
- marketplace.json: marketing-skills v2.0.0 (42 skills, 27 tools)
- README.md: badge 134 → 169, marketing row updated
- prompt-engineer-toolkit: added YAML frontmatter
- Removed build logs from repo
- Parity check: 42/42 passed (YAML + Related + Proactive + Output + Communication)

* fix: merge content-creator into content-production, split marketing-psychology

Quality audit fixes:

1. content-creator → DEPRECATED redirect
   - Scripts (brand_voice_analyzer.py, seo_optimizer.py) moved to content-production
   - SKILL.md replaced with redirect to content-production + content-strategy
   - Eliminates duplicate routing confusion

2. marketing-psychology → 24KB split to 6.8KB + reference
   - 70+ mental models moved to references/mental-models-catalog.md (397 lines)
   - SKILL.md now lean: categories overview, most-used models, quick reference
   - Saves ~4,300 tokens per invocation

* feat: add plugin configs, Codex/OpenClaw compatibility, ClawHub packaging

- marketing-skill/SKILL.md: ClawHub-compatible root with Quick Start for Claude Code, Codex CLI, OpenClaw
- marketing-skill/CLAUDE.md: Agent instructions (routing, context, anti-patterns)
- marketing-skill/.codex/instructions.md: Codex CLI skill routing
- .claude-plugin/marketplace.json: deduplicated, marketing-skills v2.0.0
- .codex/skills-index.json: content-creator marked deprecated, psychology updated
- Total: 42 skills, 27 Python tools, 60 references, 18 plugins

* feat: add 16 Python tools to knowledge-only skills

Enriched 12 previously tool-less skills with practical Python scripts:
- seo-audit/seo_checker.py — HTML on-page SEO analysis (0-100)
- copywriting/headline_scorer.py — headline quality scoring (0-100)
- copy-editing/readability_scorer.py — Flesch + passive + filler detection
- content-strategy/topic_cluster_mapper.py — keyword clustering
- page-cro/conversion_audit.py — HTML CRO signal analysis (0-100)
- paid-ads/roas_calculator.py — ROAS/CPA/CPL calculator
- email-sequence/sequence_analyzer.py — email sequence scoring (0-100)
- form-cro/form_field_analyzer.py — form field CRO audit (0-100)
- onboarding-cro/activation_funnel_analyzer.py — funnel drop-off analysis
- programmatic-seo/url_pattern_generator.py — URL pattern planning
- ab-test-setup/sample_size_calculator.py — statistical sample sizing
- signup-flow-cro/funnel_drop_analyzer.py — signup funnel analysis
- launch-strategy/launch_readiness_scorer.py — launch checklist scoring
- competitor-alternatives/comparison_matrix_builder.py — feature comparison
- social-media-manager/social_calendar_generator.py — content calendar
- readability_scorer.py — fixed demo mode for non-TTY execution

All 43/43 scripts pass execution. All stdlib-only, zero pip installs.
Total: 42 skills, 43 Python tools, 60+ reference docs.

* feat: add 3 more Python tools + improve 6 existing scripts

New tools from build agent:
- email-sequence/scripts/sequence_analyzer.py — email sequence scoring (91/100 demo)
- paid-ads/scripts/roas_calculator.py — ROAS/CPA/CPL/break-even calculator
- competitor-alternatives/scripts/comparison_matrix_builder.py — feature matrix

Improved scripts (better demo modes, fuller analysis):
- seo_checker.py, headline_scorer.py, readability_scorer.py,
  conversion_audit.py, topic_cluster_mapper.py, launch_readiness_scorer.py

Total: 42 skills, 47 Python tools, all passing.

* fix: remove duplicate scripts from deprecated content-creator

Scripts already live in content-production/scripts/. The content-creator
directory is now a pure redirect (SKILL.md only + legacy assets/refs).

* fix: scope VirusTotal scan to executable files only

Skip scanning .md, .py, .json, .yml — they're plain text files
that VirusTotal can't meaningfully analyze. This prevents 429 rate
limit errors on PRs with many text file changes (like 42 marketing skills).

Scan still covers: .js, .ts, .sh, .mjs, .cjs, .exe, .dll, .so, .bin, .wasm

---------

Co-authored-by: Leo <leo@openclaw.ai>
2026-03-06 03:56:16 +01:00

355 lines
13 KiB
Python
Executable File

#!/usr/bin/env python3
"""
sequence_analyzer.py — Email sequence quality analyzer
Usage:
python3 sequence_analyzer.py --file sequence.json
python3 sequence_analyzer.py --json
python3 sequence_analyzer.py # demo mode
Input JSON format:
[
{"subject": "...", "body": "...", "delay_days": 0},
{"subject": "...", "body": "...", "delay_days": 2},
...
]
"""
import argparse
import json
import re
import sys
# ---------------------------------------------------------------------------
# Word/pattern lists
# ---------------------------------------------------------------------------
SPAM_TRIGGER_WORDS = [
"free", "guarantee", "guaranteed", "winner", "won", "prize",
"congratulations", "cash", "earn money", "make money", "extra income",
"100% free", "no cost", "risk free", "act now", "limited time",
"click here", "buy now", "order now", "get it now",
"as seen on", "dear friend", "you have been selected",
"this isn't spam", "not spam", "no credit card required",
"special promotion", "special offer", "amazing offer",
"!!!", "!!!", "$$$", "£££",
"increase your", "increase sales", "double your",
"lose weight", "weight loss", "diet", "viagra", "casino",
]
CTA_PATTERNS = re.compile(
r"\b(click|tap|reply|download|sign up|register|buy|purchase|get started|"
r"learn more|read more|visit|go to|check out|schedule|book|claim|try|"
r"subscribe|join|start|access|watch|see|grab|discover)\b",
re.IGNORECASE,
)
PERSONALIZATION_TOKENS = re.compile(
r"\{\{?\s*\w+\s*\}?\}|%\w+%|\[FIRST_NAME\]|\[NAME\]|\[COMPANY\]|\[FIRSTNAME\]",
re.IGNORECASE,
)
# ---------------------------------------------------------------------------
# Per-email analysis
# ---------------------------------------------------------------------------
def analyze_email(email: dict, index: int) -> dict:
subject = email.get("subject", "")
body = email.get("body", "")
delay = email.get("delay_days", 0)
# Subject analysis
subject_len = len(subject)
subject_word_count = len(subject.split())
subject_ok = 30 <= subject_len <= 60
subject_has_number = bool(re.search(r"\d", subject))
subject_question = subject.strip().endswith("?")
subject_all_caps = subject == subject.upper() and len(subject) > 3
# Body analysis
body_words = re.findall(r"\b\w+\b", body)
body_word_count = len(body_words)
# CTA detection
cta_matches = CTA_PATTERNS.findall(body)
has_cta = len(cta_matches) > 0
# Personalization tokens
tokens_in_subject = PERSONALIZATION_TOKENS.findall(subject)
tokens_in_body = PERSONALIZATION_TOKENS.findall(body)
total_tokens = len(tokens_in_subject) + len(tokens_in_body)
# Spam triggers
combined = (subject + " " + body).lower()
spam_found = [w for w in SPAM_TRIGGER_WORDS if w.lower() in combined]
# Spam score (0-100, higher = more spammy)
spam_score = min(100, len(spam_found) * 10)
return {
"email_index": index + 1,
"delay_days": delay,
"subject": {
"text": subject,
"length": subject_len,
"word_count": subject_word_count,
"length_ok": subject_ok,
"has_number": subject_has_number,
"is_question": subject_question,
"all_caps_warning": subject_all_caps,
"personalized": len(tokens_in_subject) > 0,
},
"body": {
"word_count": body_word_count,
"length_verdict": _body_length_verdict(body_word_count),
"has_cta": has_cta,
"cta_phrases": list(set(cta_matches))[:5],
"personalization_tokens": total_tokens,
},
"spam": {
"trigger_words_found": spam_found[:8],
"trigger_count": len(spam_found),
"spam_risk_score": spam_score,
"risk_level": "High" if spam_score >= 40 else "Medium" if spam_score >= 20 else "Low",
},
}
def _body_length_verdict(word_count: int) -> str:
if word_count < 50:
return "Too short (<50 words)"
if word_count <= 150:
return "Short/punchy — good for re-engagement"
if word_count <= 300:
return "Optimal (150-300 words)"
if word_count <= 500:
return "Long — ensure high value throughout"
return "Very long (500+ words) — consider trimming"
# ---------------------------------------------------------------------------
# Sequence-level analysis
# ---------------------------------------------------------------------------
def analyze_pacing(emails: list) -> dict:
if len(emails) <= 1:
return {"note": "Single email — no pacing to analyze"}
delays = [e.get("delay_days", 0) for e in emails]
gaps = [delays[i] - delays[i - 1] for i in range(1, len(delays))]
issues = []
for i, gap in enumerate(gaps):
if gap <= 0:
issues.append(f"Email {i+2}: same-day or before previous — check delay_days")
elif gap == 1:
issues.append(f"Email {i+2}: only 1-day gap — may feel aggressive")
elif gap > 14:
issues.append(f"Email {i+2}: {gap}-day gap — momentum may drop")
# Assess overall cadence
avg_gap = sum(gaps) / len(gaps) if gaps else 0
if avg_gap <= 2:
cadence = "Aggressive (avg <2 days)"
elif avg_gap <= 5:
cadence = "High-frequency (avg 2-5 days)"
elif avg_gap <= 10:
cadence = "Standard (avg 5-10 days)"
else:
cadence = "Low-frequency (avg 10+ days)"
return {
"email_count": len(emails),
"total_duration_days": max(delays) - min(delays),
"avg_gap_days": round(avg_gap, 1),
"cadence_type": cadence,
"gaps": gaps,
"issues": issues,
}
# ---------------------------------------------------------------------------
# Scoring
# ---------------------------------------------------------------------------
def compute_sequence_score(email_analyses: list, pacing: dict) -> dict:
if not email_analyses:
return {"overall": 0}
# Subject score: avg subject length compliance
subject_ok_count = sum(1 for e in email_analyses if e["subject"]["length_ok"])
subject_score = round(subject_ok_count / len(email_analyses) * 100)
# CTA score: % of emails with CTA
cta_count = sum(1 for e in email_analyses if e["body"]["has_cta"])
cta_score = round(cta_count / len(email_analyses) * 100)
# Personalization score
personalized_count = sum(1 for e in email_analyses if e["body"]["personalization_tokens"] > 0)
personalization_score = round(personalized_count / len(email_analyses) * 100)
# Spam score (inverted — low spam = high score)
avg_spam = sum(e["spam"]["spam_risk_score"] for e in email_analyses) / len(email_analyses)
spam_score = max(0, 100 - int(avg_spam))
# Pacing score
pacing_issues = len(pacing.get("issues", []))
pacing_score = max(0, 100 - pacing_issues * 20)
# Body length score
length_ok_count = sum(
1 for e in email_analyses
if "Optimal" in e["body"]["length_verdict"] or "punchy" in e["body"]["length_verdict"]
)
length_score = round(length_ok_count / len(email_analyses) * 100)
weights = {
"subject_quality": 0.20,
"cta_presence": 0.20,
"spam_safety": 0.25,
"personalization": 0.15,
"pacing": 0.10,
"body_length": 0.10,
}
scores = {
"subject_quality": subject_score,
"cta_presence": cta_score,
"spam_safety": spam_score,
"personalization": personalization_score,
"pacing": pacing_score,
"body_length": length_score,
}
overall = round(sum(scores[k] * weights[k] for k in weights))
grade = "A" if overall >= 85 else "B" if overall >= 70 else "C" if overall >= 55 else "D" if overall >= 40 else "F"
return {
"overall": overall,
"grade": grade,
"breakdown": {k: {"score": v, "weight": f"{int(weights[k]*100)}%"} for k, v in scores.items()},
}
# ---------------------------------------------------------------------------
# Demo data
# ---------------------------------------------------------------------------
DEMO_SEQUENCE = [
{
"subject": "{{first_name}}, your free marketing audit is ready",
"body": "Hi {{first_name}},\n\nWe analyzed 500 campaigns like yours and found three quick wins that could double your ROAS in 30 days.\n\nI've put together a custom audit for {{company}}. It's free and takes 10 minutes to review.\n\n→ Click here to see your results: [LINK]\n\nBest,\nSarah",
"delay_days": 0,
},
{
"subject": "Did you see this, {{first_name}}?",
"body": "Quick follow-up.\n\nMost marketers we talk to are sitting on 2-3 easy optimizations that could add 20-40% more revenue from the same ad spend.\n\nHere's the #1 thing we see: landing pages that don't match the ad promise.\n\nWorth 5 minutes? → [Review your audit]\n\nSarah",
"delay_days": 3,
},
{
"subject": "The $50,000 mistake (and how to avoid it)",
"body": "True story.\n\nOne of our clients was spending $8,500/month on Google Ads with a 1.8x ROAS. Technically above break-even, but barely.\n\nWe found that 60% of their budget was going to one keyword that had zero purchase intent.\n\nAfter fixing it: same spend, 4.2x ROAS.\n\nThat's the kind of thing our audit catches. Have you looked at yours yet?\n\n→ [Open your free audit]\n\nSarah\n\nP.S. This offer expires Friday.",
"delay_days": 5,
},
{
"subject": "Last call — your audit expires tonight",
"body": "{{first_name}}, this is the last reminder.\n\nYour personalized audit expires at midnight tonight.\n\nIf growing your ROAS is a priority this quarter, take 10 minutes now.\n\n→ [Claim your audit before it expires]\n\nSarah",
"delay_days": 7,
},
{
"subject": "New case study: {{company}}-style win",
"body": "Since you didn't grab the audit, I wanted to send you something valuable anyway.\n\nHere's a 3-minute case study showing how we helped a B2B SaaS company go from 1.9x to 5.4x ROAS in 45 days.\n\nNo audit required — just solid tactics you can steal.\n\n→ [Read the case study]\n\nHope it helps,\nSarah",
"delay_days": 14,
},
]
# ---------------------------------------------------------------------------
# Main
# ---------------------------------------------------------------------------
def main():
parser = argparse.ArgumentParser(
description="Email sequence analyzer — scores sequence quality 0-100."
)
parser.add_argument("--file", help="JSON file with email sequence array")
parser.add_argument("--json", action="store_true", help="Output as JSON")
args = parser.parse_args()
if args.file:
with open(args.file, "r", encoding="utf-8") as f:
emails = json.load(f)
else:
emails = DEMO_SEQUENCE
if not args.json:
print("No input provided — running in demo mode (5-email nurture sequence).\n")
email_analyses = [analyze_email(e, i) for i, e in enumerate(emails)]
pacing = analyze_pacing(emails)
scoring = compute_sequence_score(email_analyses, pacing)
if args.json:
output = {
"sequence_score": scoring,
"pacing": pacing,
"emails": email_analyses,
}
print(json.dumps(output, indent=2))
return
# Human-readable
overall = scoring["overall"]
grade = scoring["grade"]
print("=" * 64)
print(f" EMAIL SEQUENCE ANALYSIS Score: {overall}/100 Grade: {grade}")
print("=" * 64)
# Pacing summary
print(f"\n 📅 SEQUENCE PACING")
print(f" Emails: {pacing['email_count']}")
print(f" Duration: {pacing.get('total_duration_days', 0)} days")
print(f" Avg gap: {pacing.get('avg_gap_days', 0)} days")
print(f" Cadence: {pacing.get('cadence_type', 'N/A')}")
if pacing.get("issues"):
for issue in pacing["issues"]:
print(f" ⚠️ {issue}")
print(f"\n 📧 PER-EMAIL BREAKDOWN")
print(f" {'#':<3} {'Subject':<40} {'Words':<6} {'CTA':<4} {'Tokens':<7} {'Spam'}")
print(" " + "" * 60)
for e in email_analyses:
subj = e["subject"]["text"][:38]
if not e["subject"]["length_ok"]:
subj += "⚠️"
words = e["body"]["word_count"]
cta = "" if e["body"]["has_cta"] else ""
tokens = e["body"]["personalization_tokens"]
spam_lvl = e["spam"]["risk_level"]
spam_icon = "" if spam_lvl == "Low" else ("⚠️ " if spam_lvl == "Medium" else "")
spam_str = f"{spam_icon}{spam_lvl}"
print(f" {e['email_index']:<3} {subj:<40} {words:<6} {cta:<4} {tokens:<7} {spam_str}")
if any(e["spam"]["trigger_words_found"] for e in email_analyses):
print(f"\n ⚠️ SPAM TRIGGER WORDS DETECTED")
for e in email_analyses:
if e["spam"]["trigger_words_found"]:
triggers = ", ".join(e["spam"]["trigger_words_found"])
print(f" Email {e['email_index']}: {triggers}")
print(f"\n SCORE BREAKDOWN")
for k, v in scoring["breakdown"].items():
label = k.replace("_", " ").title()
bar_len = round(v["score"] / 10)
bar = "" * bar_len + "" * (10 - bar_len)
print(f" {label:<22} [{bar}] {v['score']:>3}/100 (weight {v['weight']})")
print()
print("=" * 64)
print(f" Overall: {overall}/100 Grade: {grade}")
print("=" * 64)
if __name__ == "__main__":
main()