screening-deal-flow-pipeline
SKILL.md
Screening Deal Flow Pipeline
Filters inbound deal flow against fund thesis, stage, sector, and return requirements with structured pass/advance decisions.
When To Use
- Triaging a batch of inbound pitch decks, intros, or cold outreach against fund mandate
- Running weekly/monthly pipeline reviews to move deals from sourcing to first meeting
- Evaluating whether a specific opportunity clears hard filters before spending partner time
- Building a ranked shortlist from an accelerator demo day, conference, or sourcing sprint
- Auditing pipeline consistency to ensure screening criteria are applied uniformly across the team
Inputs To Gather
- Fund thesis parameters: target sectors, stage (pre-seed / seed / Series A / growth), geography, check size range, ownership targets
- Return requirements: target fund multiple (e.g., 3x net), implied deal-level return bar (e.g., 10x+ potential for seed), follow-on reserve assumptions
- Deal batch: list of companies with available data — deck, memo, CRM record, or intro email
- Per-deal data points (as available):
- Company name, one-line description, sector/vertical
- Stage and current raise (amount, valuation/cap, instrument)
- Revenue or traction metrics (ARR, MRR, GMV, users, growth rate)
- Founder background (domain expertise, prior exits, technical depth)
- Existing investors and cap table highlights
- Competitive landscape notes
- Pass/advance history (optional): prior screening decisions for pattern calibration
Workflow
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Establish hard filters — Set binary pass/fail gates derived from fund mandate:
- Stage match (e.g., only pre-seed and seed)
- Sector match (e.g., B2B SaaS, fintech, climate — per thesis)
- Geography match [VERIFY fund LP restrictions or regulatory limits on geography]
- Check size fit (requested raise allows fund to deploy within check range)
- Instrument compatibility (SAFE, priced equity, convertible note — per fund policy)
- Flag any deal that fails a hard filter as PASS (out of scope) with the specific reason
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Apply soft scoring criteria — For deals surviving hard filters, evaluate on a 1–5 scale across:
- Market: TAM credibility, timing, tailwinds, regulatory clarity [VERIFY sector-specific regulatory status]
- Team: founder-market fit, relevant experience, technical capability, coachability signals
- Traction: revenue trajectory, engagement metrics, or credible pre-revenue milestones relative to stage
- Product: differentiation, defensibility (IP, network effects, data moats), demo or prototype quality
- Deal terms: valuation reasonableness for stage, pro-rata rights, investor-friendly governance
- Return potential: plausible path to fund-returning outcome at entry valuation
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Classify each deal — Assign a disposition:
- Advance to partner review: scores ≥ 4 average or exceptional strength in 2+ dimensions with no dimension below 3
- Hold / request more info: borderline scores (3–3.5 average) or missing critical data points — specify what is needed
- Pass: scores < 3 average or fatal flaw in any single dimension (e.g., tiny market, no differentiation)
- Flag for co-invest / refer out: strong company but outside fund scope — note which fund in network might fit
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Rank the advance list — Order advanced deals by composite score, breaking ties by:
- Urgency (round closing timeline, competitive dynamics)
- Strategic fit to portfolio gaps
- Likelihood of winning allocation
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Document rationale — For every deal, record:
- Disposition and one-sentence rationale
- Key data points that drove the decision
- Any [VERIFY] flags for data that was estimated or unavailable
- Recommended next action and owner (for advances and holds)
Output
Produce a Screening Report containing:
- Summary statistics: total deals reviewed, breakdown by disposition (advance / hold / pass / refer), sector distribution
- Advance list (ranked): company name, one-liner, stage, raise details, composite score, top strengths, key risks, recommended next step
- Hold list: company name, missing info or open question, deadline to resolve
- Pass log: company name, one-sentence pass reason (maintains institutional memory and avoids re-screening)
- Refer-out list: company name, suggested fund/contact, brief rationale
- Screening criteria applied: explicit statement of hard filters and soft scoring rubric used for this batch (supports auditability)
Quality Checks
- Every deal in the batch has a recorded disposition — no deal is left unclassified
- Hard filter pass reasons cite the specific criterion failed, not a vague "not a fit"
- Soft scores are grounded in stated evidence, not gut feel — each score references a data point
- Valuations and metrics are stage-benchmarked (e.g., a $30M cap at pre-seed is flagged differently than at Series A) [VERIFY current market benchmarks for target stage/sector]
- No deal is advanced solely on founder pedigree without evaluating market and product dimensions
- Round timing and competitive urgency are noted so the advance list can be actioned in priority order
- [VERIFY] flags appear wherever a data point was inferred, estimated, or sourced from a single unverified channel
- Report is structured for quick partner consumption — a GP should be able to review the advance list in under 5 minutes
Weekly Installs
1
Source
www.modelscope.…pipelineFirst Seen
2 days ago
Installed on
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