analyzing-regulatory-event-impacts
Evaluates regulatory decision impact with approval probability, timeline analysis, and outcome scenario modeling for event-driven positions. Use when analyzing regulatory events, evaluating FDA/FCC/DOJ decisions, or modeling regulatory outcomes.
Best use case
analyzing-regulatory-event-impacts is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Evaluates regulatory decision impact with approval probability, timeline analysis, and outcome scenario modeling for event-driven positions. Use when analyzing regulatory events, evaluating FDA/FCC/DOJ decisions, or modeling regulatory outcomes.
Teams using analyzing-regulatory-event-impacts should expect a more consistent output, faster repeated execution, less prompt rewriting.
When to use this skill
- You want a reusable workflow that can be run more than once with consistent structure.
When not to use this skill
- You only need a quick one-off answer and do not need a reusable workflow.
- You cannot install or maintain the underlying files, dependencies, or repository context.
Installation
Claude Code / Cursor / Codex
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/analyzing-regulatory-event-impacts/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How analyzing-regulatory-event-impacts Compares
| Feature / Agent | analyzing-regulatory-event-impacts | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
Evaluates regulatory decision impact with approval probability, timeline analysis, and outcome scenario modeling for event-driven positions. Use when analyzing regulatory events, evaluating FDA/FCC/DOJ decisions, or modeling regulatory outcomes.
Where can I find the source code?
You can find the source code on GitHub using the link provided at the top of the page.
SKILL.md Source
# Analyzing Regulatory Event Impacts ## When To Use - Sizing or adjusting positions ahead of binary regulatory decisions (FDA PDUFA dates, FCC spectrum auctions, DOJ/FTC merger reviews, EPA rule finalizations) - Evaluating whether the market is correctly pricing regulatory risk in an event-driven thesis - Modeling scenario-weighted outcomes for activist campaigns that hinge on regulatory clearance - Assessing second-order impacts of regulatory decisions on peers, suppliers, or adjacent sectors ## Inputs To Gather - **Regulatory event identification**: Agency, docket/application number, decision type (approval, denial, conditional approval, consent decree), statutory deadline or expected ruling date - **Precedent data**: Historical approval rates for the specific agency and decision category (e.g., FDA NDA approval rates by therapeutic area, FTC merger challenge rates by HHI threshold) - **Company/asset specifics**: Filing details, advisory committee votes, pre-decision communications (RTF letters, second requests, comment periods), management guidance on timing - **Market positioning data**: Current implied probability from options pricing, spread levels (for merger arb), short interest, analyst consensus - **Stakeholder map**: Key commissioners/reviewers, political dynamics, lobbying spend, public comment sentiment, Congressional interest or pressure ## Workflow 1. **Classify the regulatory event** - Identify the agency, decision framework, and statutory/procedural timeline - Determine if the event is binary (approve/deny) or multi-outcome (approve/conditional/delay/deny) - Note any accelerated review designations (FDA Breakthrough, Priority Review) or extended review triggers (second requests, Phase II investigations) [VERIFY against current agency procedures] 2. **Estimate base-rate approval probability** - Pull historical approval/clearance rates for the specific decision category and agency division - Adjust for case-specific factors: advisory committee recommendation, completeness of filing, prior agency interactions, political environment - Assign a probability to each outcome branch (e.g., full approval 55%, conditional approval 20%, CRL/delay 15%, denial 10%) 3. **Map the timeline and catalysts** - Identify the statutory decision deadline (PDUFA date, HSR waiting period expiry, comment period close) - Assess likelihood and triggers for timeline extensions (additional information requests, litigation risk, consent decree negotiations) - Flag intermediate catalysts that update probability (advisory committee votes, staff recommendations, intervenor filings) 4. **Model outcome scenarios and price impacts** - For each outcome branch, estimate the target price or spread movement based on comparable precedent events - Calculate the expected value: sum of (probability × payoff) across all branches - Compare the expected value to the current market-implied probability derived from options skew, merger spreads, or CDS levels - Identify the edge: where your estimated probability materially diverges from the market's implied probability 5. **Assess second-order and contagion effects** - Determine if the regulatory decision creates precedent affecting peer companies, competing applications, or industry regulation - Map supply-chain or partnership impacts (e.g., a drug approval affecting a CDMO, a merger block affecting a target's JV partners) - Evaluate whether the decision shifts the regulatory posture of the agency for future filings in the same category 6. **Synthesize position recommendations** - Recommend position sizing relative to the edge and the payoff asymmetry - Specify instrument selection: equity, options structures (risk reversals, straddles for timing uncertainty), CDS, or merger arb spread trades - Define stop-loss or hedge triggers tied to intermediate catalyst outcomes - Set the decision review calendar aligned to the regulatory timeline ## Output Deliver a structured regulatory event impact report containing: - **Event summary**: Agency, decision type, statutory deadline, current stage of review - **Probability matrix**: Table of outcomes with assigned probabilities and supporting rationale for each - **Timeline map**: Key dates, intermediate catalysts, and extension risk factors - **Scenario P&L table**: Price targets per outcome, expected value calculation, and comparison to market-implied probability - **Edge assessment**: Quantified divergence between estimated and market-implied probabilities with confidence level - **Trade recommendation**: Instrument, direction, sizing framework, and risk triggers - **Peer/sector impact**: Second-order effects on related positions or watchlist names ## Quality Checks - Verify that outcome probabilities sum to 100% and that no branch is omitted - Confirm the base-rate data source and date — historical approval rates shift over time [VERIFY that precedent data reflects the current regulatory administration's posture] - Cross-check the market-implied probability calculation (e.g., options-implied move vs. spread-implied probability) against at least two independent data sources - Ensure timeline assumptions account for agency-specific procedural rules and recent track record on meeting deadlines [VERIFY statutory deadlines against current agency guidance] - Flag any political or personnel changes at the agency (new commissioner, acting leadership, pending nominations) that could alter decision dynamics - Confirm that position sizing recommendations respect portfolio-level risk limits and liquidity constraints for the instruments recommended
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