* feat: C-Suite expansion — 8 new executive advisory roles Add COO, CPO, CMO, CFO, CRO, CISO, CHRO advisors and Executive Mentor. Expands C-level advisory from 2 to 10 roles with 74 total files. Each role includes: - SKILL.md (lean, <5KB, ~1200 tokens for context efficiency) - Reference docs (loaded on demand, not at startup) - Python analysis scripts (stdlib only, runnable CLI) Executive Mentor features /em: slash commands (challenge, board-prep, hard-call, stress-test, postmortem) with devil's advocate agent. 21 Python tools, 24 reference frameworks, 28,379 total lines. All SKILL.md files combined: ~17K tokens (8.5% of 200K context window). Badge: 88 → 116 skills * feat: C-Suite orchestration layer + 18 complementary skills ORCHESTRATION (new): - cs-onboard: Founder interview → company-context.md - chief-of-staff: Routing, synthesis, inter-agent orchestration - board-meeting: 6-phase multi-agent deliberation protocol - decision-logger: Two-layer memory (raw transcripts + approved decisions) - agent-protocol: Inter-agent invocation with loop prevention - context-engine: Company context loading + anonymization CROSS-CUTTING CAPABILITIES (new): - board-deck-builder: Board/investor update assembly - scenario-war-room: Cascading multi-variable what-if modeling - competitive-intel: Systematic competitor tracking + battlecards - org-health-diagnostic: Cross-functional health scoring (8 dimensions) - ma-playbook: M&A strategy (acquiring + being acquired) - intl-expansion: International market entry frameworks CULTURE & COLLABORATION (new): - culture-architect: Values → behaviors, culture code, health assessment - company-os: EOS/Scaling Up operating system selection + implementation - founder-coach: Founder development, delegation, blind spots - strategic-alignment: Strategy cascade, silo detection, alignment scoring - change-management: ADKAR-based change rollout framework - internal-narrative: One story across employees/investors/customers UPGRADES TO EXISTING ROLES: - All 10 roles get reasoning technique directives - All 10 roles get company-context.md integration - All 10 roles get board meeting isolation rules - CEO gets stage-adaptive temporal horizons (seed→C) Key design decisions: - Two-layer memory prevents hallucinated consensus from rejected ideas - Phase 2 isolation: agents think independently before cross-examination - Executive Mentor (The Critic) sees all perspectives, others don't - 25 Python tools total (stdlib only, no dependencies) 52 new files, 10 modified, 10,862 new lines. Total C-suite ecosystem: 134 files, 39,131 lines. * fix: connect all dots — Chief of Staff routes to all 28 skills - Added complementary skills registry to routing-matrix.md - Chief of Staff SKILL.md now lists all 28 skills in ecosystem - Added integration tables to scenario-war-room and competitive-intel - Badge: 116 → 134 skills - README: C-Level Advisory count 10 → 28 Quality audit passed: ✅ All 10 roles: company-context, reasoning, isolation, invocation ✅ All 6 phases in board meeting ✅ Two-layer memory with DO_NOT_RESURFACE ✅ Loop prevention (no self-invoke, max depth 2, no circular) ✅ All /em: commands present ✅ All complementary skills cross-reference roles ✅ Chief of Staff routes to every skill in ecosystem * refactor: CEO + CTO advisors upgraded to C-suite parity Both roles now match the structural standard of all new roles: - CEO: 11.7KB → 6.8KB SKILL.md (heavy content stays in references) - CTO: 10KB → 7.2KB SKILL.md (heavy content stays in references) Added to both: - Integration table (who they work with and when) - Key diagnostic questions - Structured metrics dashboard table - Consistent section ordering (Keywords → Quick Start → Responsibilities → Questions → Metrics → Red Flags → Integration → Reasoning → Context) CEO additions: - Stage-adaptive temporal horizons (seed=3m/6m/12m → B+=1y/3y/5y) - Cross-references to culture-architect and board-deck-builder CTO additions: - Key Questions section (7 diagnostic questions) - Structured metrics table (DORA + debt + team + architecture + cost) - Cross-references to all peer roles All 10 roles now pass structural parity: ✅ Keywords ✅ QuickStart ✅ Questions ✅ Metrics ✅ RedFlags ✅ Integration * feat: add proactive triggers + output artifacts to all 10 roles Every C-suite role now specifies: - Proactive Triggers: 'surface these without being asked' — context-driven early warnings that make advisors proactive, not reactive - Output Artifacts: concrete deliverables per request type (what you ask → what you get) CEO: runway alerts, board prep triggers, strategy review nudges CTO: deploy frequency monitoring, tech debt thresholds, bus factor flags COO: blocker detection, scaling threshold warnings, cadence gaps CPO: retention curve monitoring, portfolio dog detection, research gaps CMO: CAC trend monitoring, positioning gaps, budget staleness CFO: runway forecasting, burn multiple alerts, scenario planning gaps CRO: NRR monitoring, pipeline coverage, pricing review triggers CISO: audit overdue alerts, compliance gaps, vendor risk CHRO: retention risk, comp band gaps, org scaling thresholds Executive Mentor: board prep triggers, groupthink detection, hard call surfacing This transforms the C-suite from reactive advisors into proactive partners. * feat: User Communication Standard — structured output for all roles Defines 3 output formats in agent-protocol/SKILL.md: 1. Standard Output: Bottom Line → What → Why → How to Act → Risks → Your Decision 2. Proactive Alert: What I Noticed → Why It Matters → Action → Urgency (🔴🟡⚪) 3. Board Meeting: Decision Required → Perspectives → Agree/Disagree → Critic → Action Items 10 non-negotiable rules: - Bottom line first, always - Results and decisions only (no process narration) - What + Why + How for every finding - Actions have owners and deadlines ('we should consider' is banned) - Decisions framed as options with trade-offs - Founder is the highest authority — roles recommend, founder decides - Risks are concrete (if X → Y, costs $Z) - Max 5 bullets per section - No jargon without explanation - Silence over fabricated updates All 10 roles reference this standard. Chief of Staff enforces it as a quality gate. Board meeting Phase 4 uses the Board Meeting Output format. * feat: Internal Quality Loop — verification before delivery No role presents to the founder without passing verification: Step 1: Self-Verification (every role, every time) - Source attribution: where did each data point come from? - Assumption audit: [VERIFIED] vs [ASSUMED] tags on every finding - Confidence scoring: 🟢 high / 🟡 medium / 🔴 low per finding - Contradiction check against company-context + decision log - 'So what?' test: every finding needs a business consequence Step 2: Peer Verification (cross-functional) - Financial claims → CFO validates math - Revenue projections → CRO validates pipeline backing - Technical feasibility → CTO validates - People/hiring impact → CHRO validates - Skip for single-domain, low-stakes questions Step 3: Critic Pre-Screen (high-stakes only) - Irreversible decisions, >20% runway impact, strategy changes - Executive Mentor finds weakest point before founder sees it - Suspicious consensus triggers mandatory pre-screen Step 4: Course Correction (after founder feedback) - Approve → log + assign actions - Modify → re-verify changed parts - Reject → DO_NOT_RESURFACE + learn why - 30/60/90 day post-decision review Board meeting contributions now require self-verified format with confidence tags and source attribution on every finding. * fix: resolve PR review issues 1, 4, and minor observation Issue 1: c-level-advisor/CLAUDE.md — completely rewritten - Was: 2 skills (CEO, CTO only), dated Nov 2025 - Now: full 28-skill ecosystem map with architecture diagram, all roles/orchestration/cross-cutting/culture skills listed, design decisions, integration with other domains Issue 4: Root CLAUDE.md — updated all stale counts - 87 → 134 skills across all 3 references - C-Level: 2 → 33 (10 roles + 5 mentor commands + 18 complementary) - Tool count: 160+ → 185+ - Reference count: 200+ → 250+ Minor observation: Documented plugin.json convention - Explained in c-level-advisor/CLAUDE.md that only executive-mentor has plugin.json because only it has slash commands (/em: namespace) - Other skills are invoked by name through Chief of Staff or directly Also fixed: README.md 88+ → 134 in two places (first line + skills section) * fix: update all plugin/index registrations for 28-skill C-suite 1. c-level-advisor/.claude-plugin/plugin.json — v2.0.0 - Was: 2 skills, generic description - Now: all 28 skills listed with descriptions, all 25 scripts, namespace 'cs', full ecosystem description 2. .codex/skills-index.json — added 18 complementary skills - Was: 10 roles only - Now: 28 total c-level entries (10 roles + 6 orchestration + 6 cross-cutting + 6 culture) - Each with full description for skill discovery 3. .claude-plugin/marketplace.json — updated c-level-skills entry - Was: generic 2-skill description - Now: v2.0.0, full 28-skill ecosystem description, skills_count: 28, scripts_count: 25 * feat: add root SKILL.md for c-level-advisor ClawHub package --------- Co-authored-by: Leo <leo@openclaw.ai>
573 lines
24 KiB
Python
573 lines
24 KiB
Python
#!/usr/bin/env python3
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"""
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Hiring Plan Modeler
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===================
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Builds hiring plans from business goals with cost projections.
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Outputs quarterly headcount plan, cost model, and risk assessment.
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Usage:
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python hiring_plan_modeler.py # Run with built-in sample data
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python hiring_plan_modeler.py --config plan.json # Load from JSON config
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python hiring_plan_modeler.py --help
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"""
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import argparse
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import json
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import sys
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from dataclasses import dataclass, field, asdict
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from datetime import datetime, date
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from typing import Optional
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import csv
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import io
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# ---------------------------------------------------------------------------
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# Data structures
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# ---------------------------------------------------------------------------
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@dataclass
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class HireTarget:
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"""One planned hire."""
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role: str
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level: str # L1, L2, L3, L4, M1, M2, M3, VP, C-Suite
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function: str # Engineering, Sales, Product, G&A, Marketing, CS
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quarter: str # Q1-2025, Q2-2025, etc.
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base_salary: int # Annual, USD
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bonus_pct: float # % of base (e.g., 0.10 for 10%)
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equity_annual_usd: int # Annualized equity value at current 409A
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benefits_annual: int # Employer-paid benefits
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recruiter_fee_pct: float= 0.20 # Agency fee if used (0 for internal recruiter)
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ramp_months: int = 3 # Months to full productivity
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priority: str = "High" # High / Medium / Low
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business_case: str = ""
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open_to_internal: bool = False
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@dataclass
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class HiringPlan:
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company: str
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plan_period: str # e.g., "2025 Annual"
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current_headcount: int
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target_revenue: int # Annual target revenue ($)
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current_revenue: int # Current ARR ($)
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hires: list[HireTarget] = field(default_factory=list)
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# Cost overheads beyond comp
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overhead_rate: float = 0.25 # Workspace, software, onboarding overhead as % of base
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internal_recruiter_cost: int = 0 # If you have an internal recruiter, annual cost
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# ---------------------------------------------------------------------------
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# Computation
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# ---------------------------------------------------------------------------
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def quarter_to_sortkey(q: str) -> tuple[int, int]:
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"""Parse 'Q2-2025' → (2025, 2)"""
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parts = q.upper().split("-")
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if len(parts) == 2:
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q_num = int(parts[0].replace("Q", ""))
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year = int(parts[1])
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return (year, q_num)
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return (9999, 9)
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def get_quarters(hires: list[HireTarget]) -> list[str]:
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"""Return sorted unique quarters from hire list."""
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quarters = sorted(set(h.quarter for h in hires), key=quarter_to_sortkey)
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return quarters
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def compute_hire_costs(hire: HireTarget) -> dict:
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"""Compute total first-year cost for one hire."""
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total_comp = hire.base_salary + int(hire.base_salary * hire.bonus_pct) + hire.equity_annual_usd + hire.benefits_annual
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recruiter_fee = int(hire.base_salary * hire.recruiter_fee_pct)
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overhead = int(hire.base_salary * 0.25) # workspace, tools, onboarding
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ramp_productivity_cost = int(hire.base_salary * (hire.ramp_months / 12)) # cost during ramp
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return {
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"base_salary": hire.base_salary,
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"target_bonus": int(hire.base_salary * hire.bonus_pct),
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"equity_annual": hire.equity_annual_usd,
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"benefits": hire.benefits_annual,
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"total_comp": total_comp,
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"recruiter_fee": recruiter_fee,
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"overhead": overhead,
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"ramp_cost": ramp_productivity_cost,
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"first_year_total": total_comp + recruiter_fee + overhead,
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"fully_loaded_first_year": total_comp + recruiter_fee + overhead + ramp_productivity_cost,
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}
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def summarize_by_quarter(plan: HiringPlan) -> dict[str, dict]:
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"""Aggregate headcount and costs per quarter."""
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quarters = get_quarters(plan.hires)
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summary = {}
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running_headcount = plan.current_headcount
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for q in quarters:
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q_hires = [h for h in plan.hires if h.quarter == q]
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q_costs = [compute_hire_costs(h) for h in q_hires]
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total_comp = sum(c["total_comp"] for c in q_costs)
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total_first_year = sum(c["first_year_total"] for c in q_costs)
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recruiter_fees = sum(c["recruiter_fee"] for c in q_costs)
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running_headcount += len(q_hires)
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summary[q] = {
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"new_hires": len(q_hires),
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"headcount_eop": running_headcount,
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"total_annual_comp_added": total_comp,
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"total_first_year_cost": total_first_year,
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"recruiter_fees": recruiter_fees,
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"hires": q_hires,
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"costs": q_costs,
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}
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return summary
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def summarize_by_function(plan: HiringPlan) -> dict[str, dict]:
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"""Aggregate headcount and costs per function."""
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functions: dict[str, dict] = {}
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for hire in plan.hires:
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fn = hire.function
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if fn not in functions:
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functions[fn] = {"count": 0, "total_comp": 0, "total_first_year": 0, "roles": []}
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costs = compute_hire_costs(hire)
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functions[fn]["count"] += 1
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functions[fn]["total_comp"] += costs["total_comp"]
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functions[fn]["total_first_year"] += costs["first_year_total"]
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functions[fn]["roles"].append(hire.role)
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return functions
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def compute_totals(plan: HiringPlan) -> dict:
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all_costs = [compute_hire_costs(h) for h in plan.hires]
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total_hires = len(plan.hires)
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total_comp = sum(c["total_comp"] for c in all_costs)
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total_first_year = sum(c["first_year_total"] for c in all_costs)
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total_fully_loaded = sum(c["fully_loaded_first_year"] for c in all_costs)
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total_recruiter = sum(c["recruiter_fee"] for c in all_costs)
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final_headcount = plan.current_headcount + total_hires
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revenue_per_employee = plan.target_revenue / final_headcount if final_headcount > 0 else 0
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revenue_per_employee_current = plan.current_revenue / plan.current_headcount if plan.current_headcount > 0 else 0
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return {
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"total_hires": total_hires,
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"final_headcount": final_headcount,
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"headcount_growth_pct": ((final_headcount - plan.current_headcount) / plan.current_headcount * 100) if plan.current_headcount > 0 else 0,
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"total_annual_comp_added": total_comp,
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"total_first_year_cost": total_first_year,
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"total_fully_loaded_first_year": total_fully_loaded,
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"total_recruiter_fees": total_recruiter,
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"revenue_per_employee_target": revenue_per_employee,
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"revenue_per_employee_current": revenue_per_employee_current,
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"avg_comp_per_hire": total_comp // total_hires if total_hires > 0 else 0,
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}
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# ---------------------------------------------------------------------------
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# Risk assessment
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# ---------------------------------------------------------------------------
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def assess_risks(plan: HiringPlan, totals: dict) -> list[dict]:
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risks = []
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# Headcount growth too fast
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growth_pct = totals["headcount_growth_pct"]
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if growth_pct > 80:
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risks.append({
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"severity": "HIGH",
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"category": "Execution",
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"finding": f"Headcount growing {growth_pct:.0f}% this period. "
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"Culture and processes rarely scale this fast without breakage.",
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"recommendation": "Stagger Q3/Q4 hires. Validate Q1/Q2 cohort is onboarded before next wave."
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})
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elif growth_pct > 50:
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risks.append({
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"severity": "MEDIUM",
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"category": "Execution",
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"finding": f"Headcount growing {growth_pct:.0f}% — significant scaling challenge.",
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"recommendation": "Ensure onboarding infrastructure scales. Assign buddy/mentor to each hire."
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})
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# High concentration in one quarter
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quarters = get_quarters(plan.hires)
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q_counts = {q: sum(1 for h in plan.hires if h.quarter == q) for q in quarters}
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max_q = max(q_counts.values()) if q_counts else 0
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if max_q > len(plan.hires) * 0.5 and max_q > 4:
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heavy_q = [q for q, c in q_counts.items() if c == max_q][0]
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risks.append({
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"severity": "MEDIUM",
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"category": "Hiring Execution",
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"finding": f"More than 50% of hires planned in {heavy_q} ({max_q} hires). "
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"Recruiting capacity and onboarding bandwidth may be insufficient.",
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"recommendation": "Spread hires across quarters. Hiring pipeline needs to start 60–90 days before target start date."
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})
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# Revenue per employee declining
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if totals["revenue_per_employee_target"] < totals["revenue_per_employee_current"] * 0.7:
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risks.append({
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"severity": "HIGH",
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"category": "Financial",
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"finding": f"Revenue per employee declining from ${totals['revenue_per_employee_current']:,.0f} to "
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f"${totals['revenue_per_employee_target']:,.0f} — a {((totals['revenue_per_employee_target']/totals['revenue_per_employee_current'])-1)*100:.0f}% drop.",
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"recommendation": "Validate that revenue model supports this headcount. Is target revenue achievable with this team?"
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})
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# Low priority hires consuming budget
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low_priority_hires = [h for h in plan.hires if h.priority == "Low"]
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if low_priority_hires:
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lp_cost = sum(compute_hire_costs(h)["first_year_total"] for h in low_priority_hires)
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risks.append({
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"severity": "MEDIUM",
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"category": "Prioritization",
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"finding": f"{len(low_priority_hires)} 'Low' priority hires consuming ${lp_cost:,.0f} in first-year costs.",
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"recommendation": "Consider deferring Low priority hires to preserve runway. Cut these first if budget tightens."
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})
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# Hires without business cases
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no_case = [h for h in plan.hires if not h.business_case]
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if no_case:
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risks.append({
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"severity": "MEDIUM",
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"category": "Governance",
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"finding": f"{len(no_case)} hires have no documented business case: {', '.join(h.role for h in no_case[:5])}{'...' if len(no_case) > 5 else ''}",
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"recommendation": "Every hire over $80K should have a written business case. What revenue or risk does this role address?"
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})
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# High recruiter fee exposure
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if totals["total_recruiter_fees"] > 100_000:
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risks.append({
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"severity": "LOW",
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"category": "Cost",
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"finding": f"${totals['total_recruiter_fees']:,.0f} in recruiter fees. "
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"Consider whether internal recruiter investment would be cheaper at this hiring volume.",
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"recommendation": f"Internal recruiter at $120–150K fully loaded pays off at 3–4 hires/year vs. agency fees."
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})
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# No risks — that's itself a flag
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if not risks:
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risks.append({
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"severity": "INFO",
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"category": "General",
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"finding": "No major risks flagged. Plan appears well-structured.",
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"recommendation": "Validate assumptions: time-to-fill estimates, revenue model, and Q1 hiring pipeline status."
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})
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return risks
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# ---------------------------------------------------------------------------
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# Formatting / Output
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# ---------------------------------------------------------------------------
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def fmt(n: int) -> str:
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return f"${n:,.0f}"
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def pct(n: float) -> str:
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return f"{n:.1f}%"
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def print_report(plan: HiringPlan):
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WIDTH = 72
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SEP = "=" * WIDTH
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sep = "-" * WIDTH
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print(SEP)
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print(f" HIRING PLAN: {plan.company}")
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print(f" Period: {plan.plan_period} | Generated: {date.today().isoformat()}")
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print(SEP)
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totals = compute_totals(plan)
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q_summary = summarize_by_quarter(plan)
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fn_summary = summarize_by_function(plan)
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risks = assess_risks(plan, totals)
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# Executive summary
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print("\n[ EXECUTIVE SUMMARY ]")
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print(sep)
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print(f" Current headcount: {plan.current_headcount:>5}")
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print(f" Planned hires: {totals['total_hires']:>5}")
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print(f" Final headcount: {totals['final_headcount']:>5} (+{totals['headcount_growth_pct']:.0f}%)")
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print(f" Current ARR: {fmt(plan.current_revenue):>12}")
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print(f" Target revenue: {fmt(plan.target_revenue):>12}")
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print(f" Revenue/employee now: {fmt(int(totals['revenue_per_employee_current'])):>12}")
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print(f" Revenue/employee target: {fmt(int(totals['revenue_per_employee_target'])):>12}")
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print()
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print(f" Total annual comp added: {fmt(totals['total_annual_comp_added']):>12}")
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print(f" Total first-year cost: {fmt(totals['total_first_year_cost']):>12}")
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print(f" Fully loaded (w/ ramp): {fmt(totals['total_fully_loaded_first_year']):>12}")
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print(f" Recruiter fees: {fmt(totals['total_recruiter_fees']):>12}")
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print(f" Avg comp per hire: {fmt(totals['avg_comp_per_hire']):>12}")
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# Quarterly breakdown
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print(f"\n[ QUARTERLY HEADCOUNT PLAN ]")
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print(sep)
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print(f" {'Quarter':<10} {'New Hires':>10} {'HC (EOP)':>10} {'Comp Added':>14} {'1yr Cost':>14} {'Recruiter $':>12}")
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print(f" {'-'*10} {'-'*10} {'-'*10} {'-'*14} {'-'*14} {'-'*12}")
|
||
for q, data in q_summary.items():
|
||
print(f" {q:<10} {data['new_hires']:>10} {data['headcount_eop']:>10} "
|
||
f"{fmt(data['total_annual_comp_added']):>14} "
|
||
f"{fmt(data['total_first_year_cost']):>14} "
|
||
f"{fmt(data['recruiter_fees']):>12}")
|
||
|
||
# By function
|
||
print(f"\n[ HEADCOUNT BY FUNCTION ]")
|
||
print(sep)
|
||
print(f" {'Function':<18} {'Hires':>7} {'Annual Comp':>14} {'1yr Cost':>14}")
|
||
print(f" {'-'*18} {'-'*7} {'-'*14} {'-'*14}")
|
||
for fn, data in sorted(fn_summary.items(), key=lambda x: -x[1]["count"]):
|
||
print(f" {fn:<18} {data['count']:>7} {fmt(data['total_comp']):>14} {fmt(data['total_first_year']):>14}")
|
||
|
||
# Hire detail
|
||
print(f"\n[ HIRE DETAIL ]")
|
||
print(sep)
|
||
print(f" {'Role':<30} {'Fn':<14} {'Lvl':<6} {'Q':<8} {'Base':>10} {'Total Comp':>12} {'Priority':<8}")
|
||
print(f" {'-'*30} {'-'*14} {'-'*6} {'-'*8} {'-'*10} {'-'*12} {'-'*8}")
|
||
for h in sorted(plan.hires, key=lambda x: quarter_to_sortkey(x.quarter)):
|
||
costs = compute_hire_costs(h)
|
||
print(f" {h.role:<30} {h.function:<14} {h.level:<6} {h.quarter:<8} "
|
||
f"{fmt(h.base_salary):>10} {fmt(costs['total_comp']):>12} {h.priority:<8}")
|
||
if h.business_case:
|
||
bc = h.business_case[:60] + "..." if len(h.business_case) > 60 else h.business_case
|
||
print(f" {'':>30} ↳ {bc}")
|
||
|
||
# Risk assessment
|
||
print(f"\n[ RISK ASSESSMENT ]")
|
||
print(sep)
|
||
sev_order = {"HIGH": 0, "MEDIUM": 1, "LOW": 2, "INFO": 3}
|
||
for risk in sorted(risks, key=lambda r: sev_order.get(r["severity"], 99)):
|
||
sev = risk["severity"]
|
||
marker = {"HIGH": "⚠ HIGH", "MEDIUM": "◆ MED ", "LOW": "◇ LOW ", "INFO": "ℹ INFO"}[sev]
|
||
print(f"\n [{marker}] {risk['category']}")
|
||
# Wrap finding
|
||
finding = risk["finding"]
|
||
words = finding.split()
|
||
line = " Finding: "
|
||
for w in words:
|
||
if len(line) + len(w) + 1 > WIDTH - 2:
|
||
print(line)
|
||
line = " " + w + " "
|
||
else:
|
||
line += w + " "
|
||
if line.strip():
|
||
print(line)
|
||
reco = risk["recommendation"]
|
||
words = reco.split()
|
||
line = " Action: "
|
||
for w in words:
|
||
if len(line) + len(w) + 1 > WIDTH - 2:
|
||
print(line)
|
||
line = " " + w + " "
|
||
else:
|
||
line += w + " "
|
||
if line.strip():
|
||
print(line)
|
||
|
||
print(f"\n{SEP}\n")
|
||
|
||
|
||
def export_csv(plan: HiringPlan) -> str:
|
||
"""Return CSV of hire detail."""
|
||
output = io.StringIO()
|
||
writer = csv.writer(output)
|
||
writer.writerow(["Role", "Function", "Level", "Quarter", "Priority",
|
||
"Base Salary", "Bonus Target", "Equity Annual", "Benefits",
|
||
"Total Comp", "Recruiter Fee", "Overhead", "First Year Total",
|
||
"Ramp Months", "Open to Internal", "Business Case"])
|
||
for h in plan.hires:
|
||
c = compute_hire_costs(h)
|
||
writer.writerow([h.role, h.function, h.level, h.quarter, h.priority,
|
||
h.base_salary, c["target_bonus"], h.equity_annual_usd, h.benefits_annual,
|
||
c["total_comp"], c["recruiter_fee"], c["overhead"], c["first_year_total"],
|
||
h.ramp_months, h.open_to_internal, h.business_case])
|
||
return output.getvalue()
|
||
|
||
|
||
# ---------------------------------------------------------------------------
|
||
# Sample data
|
||
# ---------------------------------------------------------------------------
|
||
|
||
def build_sample_plan() -> HiringPlan:
|
||
"""Sample Series A → B hiring plan."""
|
||
plan = HiringPlan(
|
||
company="AcmeTech (Series A)",
|
||
plan_period="2025 Annual",
|
||
current_headcount=32,
|
||
current_revenue=3_500_000,
|
||
target_revenue=8_000_000,
|
||
overhead_rate=0.25,
|
||
internal_recruiter_cost=140_000,
|
||
)
|
||
|
||
plan.hires = [
|
||
# Q1 — Foundation hires
|
||
HireTarget(
|
||
role="Staff Software Engineer (Backend)",
|
||
level="L4", function="Engineering", quarter="Q1-2025",
|
||
base_salary=185_000, bonus_pct=0.0, equity_annual_usd=25_000,
|
||
benefits_annual=18_000, recruiter_fee_pct=0.0, ramp_months=2,
|
||
priority="High", open_to_internal=True,
|
||
business_case="Core API team is bottleneck for 3 roadmap items. Staff-level needed to lead architecture."
|
||
),
|
||
HireTarget(
|
||
role="Account Executive (Mid-Market)",
|
||
level="L3", function="Sales", quarter="Q1-2025",
|
||
base_salary=95_000, bonus_pct=0.50, equity_annual_usd=10_000,
|
||
benefits_annual=15_000, recruiter_fee_pct=0.18, ramp_months=4,
|
||
priority="High",
|
||
business_case="Pipeline coverage at 1.8x quota. Need 2.5x by Q2. AE adds $600K ARR/year at ramp."
|
||
),
|
||
HireTarget(
|
||
role="Product Designer (Senior)",
|
||
level="L3", function="Product", quarter="Q1-2025",
|
||
base_salary=145_000, bonus_pct=0.0, equity_annual_usd=18_000,
|
||
benefits_annual=18_000, recruiter_fee_pct=0.0, ramp_months=2,
|
||
priority="High",
|
||
business_case="Single designer for 4 squads. UX debt slowing enterprise deals requiring onboarding improvements."
|
||
),
|
||
|
||
# Q2 — Growth hires
|
||
HireTarget(
|
||
role="Engineering Manager (Frontend)",
|
||
level="M1", function="Engineering", quarter="Q2-2025",
|
||
base_salary=175_000, bonus_pct=0.10, equity_annual_usd=22_000,
|
||
benefits_annual=18_000, recruiter_fee_pct=0.20, ramp_months=3,
|
||
priority="High",
|
||
business_case="Frontend team at 7 ICs with no dedicated EM. Performance review debt is high; manager needed."
|
||
),
|
||
HireTarget(
|
||
role="Account Executive (Mid-Market)",
|
||
level="L2", function="Sales", quarter="Q2-2025",
|
||
base_salary=85_000, bonus_pct=0.50, equity_annual_usd=8_000,
|
||
benefits_annual=15_000, recruiter_fee_pct=0.18, ramp_months=4,
|
||
priority="High",
|
||
business_case="Second AE to reach 2.5x pipeline coverage target."
|
||
),
|
||
HireTarget(
|
||
role="Customer Success Manager",
|
||
level="L2", function="Customer Success", quarter="Q2-2025",
|
||
base_salary=90_000, bonus_pct=0.15, equity_annual_usd=8_000,
|
||
benefits_annual=15_000, recruiter_fee_pct=0.0, ramp_months=2,
|
||
priority="Medium",
|
||
business_case="CSM:account ratio at 1:60, industry standard 1:30. NRR has dipped 4pts in 2 quarters."
|
||
),
|
||
HireTarget(
|
||
role="Data Engineer",
|
||
level="L2", function="Engineering", quarter="Q2-2025",
|
||
base_salary=155_000, bonus_pct=0.0, equity_annual_usd=18_000,
|
||
benefits_annual=18_000, recruiter_fee_pct=0.0, ramp_months=3,
|
||
priority="Medium",
|
||
business_case="Analytics infrastructure blocking product analytics, customer dashboards, and board metrics."
|
||
),
|
||
|
||
# Q3 — Scale hires
|
||
HireTarget(
|
||
role="Senior Software Engineer (Backend)",
|
||
level="L3", function="Engineering", quarter="Q3-2025",
|
||
base_salary=165_000, bonus_pct=0.0, equity_annual_usd=20_000,
|
||
benefits_annual=18_000, recruiter_fee_pct=0.0, ramp_months=2,
|
||
priority="High",
|
||
business_case="Backend team needs capacity to deliver Q3 roadmap without delaying Q4 items."
|
||
),
|
||
HireTarget(
|
||
role="Head of Marketing",
|
||
level="M3", function="Marketing", quarter="Q3-2025",
|
||
base_salary=180_000, bonus_pct=0.15, equity_annual_usd=30_000,
|
||
benefits_annual=18_000, recruiter_fee_pct=0.20, ramp_months=3,
|
||
priority="High",
|
||
business_case="No marketing function. 100% of pipeline is outbound. Need inbound by Q1-2026 for Series B."
|
||
),
|
||
HireTarget(
|
||
role="People Operations Manager",
|
||
level="M1", function="G&A", quarter="Q3-2025",
|
||
base_salary=120_000, bonus_pct=0.10, equity_annual_usd=12_000,
|
||
benefits_annual=16_000, recruiter_fee_pct=0.0, ramp_months=2,
|
||
priority="Medium",
|
||
business_case="Founders spending 8hrs/week on HR ops at 40 employees. Unscalable. First dedicated HR hire."
|
||
),
|
||
|
||
# Q4 — Stretch hires (conditional on revenue milestone)
|
||
HireTarget(
|
||
role="Senior Software Engineer (Frontend)",
|
||
level="L3", function="Engineering", quarter="Q4-2025",
|
||
base_salary=160_000, bonus_pct=0.0, equity_annual_usd=18_000,
|
||
benefits_annual=18_000, recruiter_fee_pct=0.0, ramp_months=2,
|
||
priority="Medium",
|
||
business_case="Conditional on Q3 ARR exceeding $5.5M. Frontend team capacity planning for 2026 roadmap."
|
||
),
|
||
HireTarget(
|
||
role="Account Executive (Enterprise)",
|
||
level="L4", function="Sales", quarter="Q4-2025",
|
||
base_salary=120_000, bonus_pct=0.60, equity_annual_usd=15_000,
|
||
benefits_annual=15_000, recruiter_fee_pct=0.20, ramp_months=6,
|
||
priority="Low",
|
||
business_case="Enterprise motion exploratory. Requires ICP validation in Q2-Q3 before committing."
|
||
),
|
||
HireTarget(
|
||
role="DevOps / Platform Engineer",
|
||
level="L3", function="Engineering", quarter="Q4-2025",
|
||
base_salary=150_000, bonus_pct=0.0, equity_annual_usd=18_000,
|
||
benefits_annual=18_000, recruiter_fee_pct=0.0, ramp_months=3,
|
||
priority="Low",
|
||
business_case="Platform reliability becoming bottleneck. Conditional on uptime SLA breaches continuing in Q3."
|
||
),
|
||
]
|
||
|
||
return plan
|
||
|
||
|
||
# ---------------------------------------------------------------------------
|
||
# CLI
|
||
# ---------------------------------------------------------------------------
|
||
|
||
def load_plan_from_json(path: str) -> HiringPlan:
|
||
with open(path) as f:
|
||
data = json.load(f)
|
||
hires = [HireTarget(**h) for h in data.pop("hires", [])]
|
||
plan = HiringPlan(**data)
|
||
plan.hires = hires
|
||
return plan
|
||
|
||
|
||
def main():
|
||
parser = argparse.ArgumentParser(
|
||
description="Hiring Plan Modeler — build headcount plans with cost projections",
|
||
formatter_class=argparse.RawDescriptionHelpFormatter,
|
||
epilog="""
|
||
Examples:
|
||
python hiring_plan_modeler.py # Run sample plan
|
||
python hiring_plan_modeler.py --config plan.json # Load from JSON
|
||
python hiring_plan_modeler.py --export-csv # Output CSV of hires
|
||
python hiring_plan_modeler.py --export-json # Output plan as JSON template
|
||
"""
|
||
)
|
||
parser.add_argument("--config", help="Path to JSON plan file")
|
||
parser.add_argument("--export-csv", action="store_true", help="Export hire detail as CSV")
|
||
parser.add_argument("--export-json", action="store_true", help="Export sample plan as JSON template")
|
||
args = parser.parse_args()
|
||
|
||
if args.config:
|
||
plan = load_plan_from_json(args.config)
|
||
else:
|
||
plan = build_sample_plan()
|
||
|
||
if args.export_json:
|
||
data = asdict(plan)
|
||
print(json.dumps(data, indent=2))
|
||
return
|
||
|
||
if args.export_csv:
|
||
print(export_csv(plan))
|
||
return
|
||
|
||
print_report(plan)
|
||
|
||
|
||
if __name__ == "__main__":
|
||
main()
|