saas-valuation-compression

Installation
SKILL.md

SaaS Valuation Compression Analyzer

What This Skill Does

For a given SaaS company, research its funding history and compute ARR-based valuation multiples at each round. Then explain the compression (or expansion) using a structured framework that covers macro rates, growth trajectory, narrative shifts, and comparables.

Always render the output as an inline visualization (using the Visualizer tool) plus a concise prose explanation. Do not just return a wall of numbers.


Step-by-Step Workflow

1. Gather Data via Web Search

Search for each of the following. Run searches in parallel where possible.

For the target company:

  • [company] funding rounds valuation ARR revenue
  • [company] Series [X] raised valuation for each round
  • [company] annual recurring revenue ARR [year] for each round date
  • [company] investors lead investor [round]

For macro context:

  • SaaS ARR valuation multiples [year] private market
  • Use the known benchmark table below as fallback if search is thin.

For narrative context:

  • [company] AI customers product announcement [year] — AI narrative premium?
  • [company] growth rate churn NRR [year] — fundamentals shift?

2. Build the Data Model

For each funding round, extract or estimate:

Field How to get it
Round name Direct from search
Date Direct from search
Amount raised Direct from search
Post-money valuation Direct or compute from ownership %; if unavailable, note as estimated
ARR at round date Search explicitly; if not found, estimate from customer count x ARPC or interpolate
ARR multiple valuation / ARR
Lead investor Direct

ARR estimation heuristics (when not public):

  • Seed/Series A: ARR often $500K–$3M
  • Series B: typically $5M–$20M
  • Series C: typically $20M–$60M
  • Cross-check against customer count x average deal size if available

3. Compute Compression Metrics

For each consecutive round pair (e.g., B → C):

multiple_compression_pct = (later_multiple - earlier_multiple) / earlier_multiple × 100
valuation_growth_pct = (later_val - earlier_val) / earlier_val × 100
arr_growth_pct = (later_arr - earlier_arr) / earlier_arr × 100

Key insight: valuation_growth = arr_growth + multiple_change If ARR grows faster than the multiple compresses, absolute valuation still rises.

4. Attribute Compression to Causes

Use this checklist. For each cause, rate it: Primary / Contributing / Not applicable.

Macro / Rate Environment

  • Was the earlier round during 2020–2021 ZIRP bubble? (adds ~2–5x artificial premium)
  • Was the later round during 2022–2023 rate hikes? (removes bubble premium)
  • Was the later round during or after the April 2026 Software Meltdown? (public SaaS down 40–86% from 52w highs; tariff/trade-war driven selloff crushed multiples sector-wide — even high-growth names like Figma -87%, monday.com -80%, HubSpot -70%, ServiceNow -58%)
  • Reference: SaaS private market median multiples by period:
Period Approx Median ARR Multiple (private) Context
2019 ~8–12x Pre-pandemic baseline
2020 ~12–18x ZIRP begins, multiple expansion
2021 Q1–Q3 peak ~35–45x Peak bubble
2022 H2 ~15–20x Rate hikes begin, first compression wave
2023 trough ~8–12x Rate plateau, valuation reset
2024 ~12–18x AI narrative recovery, selective re-rating
2025 H1 ~16–22x Continued AI-driven recovery
2025 H2–2026 Q1 ~10–16x Tariff shock / trade-war selloff begins
2026 Q2 (Apr meltdown) ~6–10x Software Meltdown — broad sector crash, public SaaS down 40–86% from 52w highs

(These are rough private market estimates. Public SaaS multiples are ~30–50% lower. The April 2026 figures reflect the acute selloff; private marks typically lag public by 1–2 quarters.)

Growth Deceleration

  • Did YoY ARR growth rate slow materially between rounds? (most common cause)
  • Did NRR/net retention drop?

Narrative Shift

  • Did the company lose a major product story (e.g., lost PLG thesis, missed category leadership)?
  • Did competitors emerge or incumbents catch up?

AI Premium (positive or negative)

  • Does the company serve AI-native companies (OpenAI, Anthropic, etc.) as customers? → premium
  • Did the company pivot to AI narrative credibly? → premium
  • Did the company fail to articulate AI story? → discount vs peers
  • Note: In the Apr 2026 meltdown, even strong AI narratives did not protect multiples — Snowflake (-53%), Datadog (-46%), MongoDB (-48%) all cratered despite AI tailwinds. AI premium may be necessary but not sufficient in a macro-driven selloff.

Competitive / Market

  • Market saturation signal (e.g., Okta pressure on WorkOS, Auth0 competition)
  • Customer concentration risk revealed

Investor Supply / Demand

  • Was the later round smaller and more selective? → price discipline
  • New tier of lead investor (e.g., Tier 1 growth fund vs seed fund)? → may signal higher or lower conviction

5. Build the Visualization

Use the Visualizer tool to render:

  1. Metric cards row — valuation at each round, ARR at each round, multiple at each round, compression %
  2. Line chart — ARR multiple over time for the company vs macro SaaS median
  3. Bar chart — valuation growth vs ARR growth vs multiple change (decomposition)
  4. Comparison bar — company compression vs 2–3 peer comparables (Vercel, Netlify, Fastly, or sector peers)
  5. Cause attribution table inline in prose (Primary / Contributing / N/A per factor)

See design guidance: use teal for positive/growth, coral for compression/negative, gray for macro baseline, blue for valuation figures. Follow the CSS variable system throughout.

6. Write the Prose Summary

Structure as:

  1. One-sentence verdict — e.g., "Multiple compressed 36% but ARR grew 5x, so absolute valuation rose 3.8x."
  2. Primary cause — the #1 factor explaining compression
  3. Narrative premium/discount — AI story, category leadership, or lack thereof
  4. Comparable context — how does this company's compression compare to peers?
  5. Forward implication — what would need to be true for the multiple to expand at next round?

Output Format

Always produce:

  • Inline visualization (Visualizer tool) — comes first
  • Prose summary (5–8 sentences) — follows the visualization
  • Optional: flag data confidence level if ARR had to be estimated

Known Benchmarks & Comparables (pre-loaded)

Use these as context when search results are thin or for the comparison chart.

Company Round pair Earlier multiple Later multiple Compression % Primary cause
Vercel D → E (2021→2024) ~140x ~32x -77% ZIRP unwind + growth decel
WorkOS B → C (2022→2026) ~105x ~67x -36% Partial ZIRP unwind; defended by AI narrative
Netlify B → stalled (2021→?) ~90x N/A N/A No new round; AI narrative absent
Fastly Public (2021 peak→2024) ~35x rev ~3x rev -91% No AI pivot, growth decel
Stripe Private; est. flat/compressed 2021→2023 down round
HashiCorp Acquired by IBM 2024 Acq at ~8x ARR vs ~40x peak

April 2026 Software Meltdown — Public SaaS Drawdowns

As of April 9, 2026, a broad tariff/trade-war driven selloff crushed public software valuations. Use these as reference for how private multiples will lag-compress over the following 1–2 quarters.

Ticker Company Δ from 52w High Sector relevance
FIG Figma -86.7% Design/dev tools — worst hit
MNDY monday.com -80.2% Work management SaaS
TEAM Atlassian -75.7% Dev tools / collaboration
HUBS HubSpot -69.9% Marketing/CRM SaaS
WIX WIX -65.1% Website builder
GTLB GitLab -63.6% DevOps
CVLT Commvault -61.7% Data protection
WDAY Workday -59.1% HR/Finance SaaS
NOW ServiceNow -57.8% Enterprise IT workflows
INTU Intuit -56.0% FinTech/SMB SaaS
SNOW Snowflake -52.8% Data cloud
KVYO Klaviyo -52.9% Marketing automation
DOCU DocuSign -52.3% eSignature
MDB MongoDB -47.9% Database
SAP SAP -47.6% Enterprise ERP
DDOG Datadog -45.7% Observability
APP AppLovin -47.6% AdTech/mobile
CRM Salesforce -42.5% CRM market leader
ADBE Adobe -34.6% Creative/doc SaaS
ZM Zoom -13.9% Video/collab (already de-rated)

Source: @speculator_io, April 9, 2026. Average drawdown across tracked software names: ~50–55%.


Edge Cases

  • Down round: Multiple and absolute valuation both dropped. Note dilution implications.
  • No public ARR: Use customer count x estimated ARPC, and label as estimate with +/- range.
  • Single round only: Compute multiple vs sector median for that date; can't do compression analysis. Explain this.
  • Pre-revenue: Use forward ARR or GMV multiple if applicable; note the different basis.
  • Acqui-hire / strategic acquisition: Acquisition price often reflects strategic premium or distress, not pure ARR multiple — flag this.
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First Seen
Apr 7, 2026