一键导入
earnings-deep-dive
Use when analyzing public-company earnings after results, guidance, transcript, or call commentary. Do not use for pre-print previews.
用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。
菜单
Use when analyzing public-company earnings after results, guidance, transcript, or call commentary. Do not use for pre-print previews.
用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。
基于 SOC 职业分类
| name | earnings-deep-dive |
| description | Use when analyzing public-company earnings after results, guidance, transcript, or call commentary. Do not use for pre-print previews. |
Before searching connectors, retrieving evidence, or drafting output, run python3 skills/user-context/scripts/user_context_preflight.py with the shell working directory set to this plugin's root, and follow the returned saved_context, source_category_plan, and next_action. Set the working directory before the first attempt; do not probe alternate relative paths. Missing context must not block the requested workflow. Do not initialize state or run onboarding during ordinary workflow work.
If next_action.id = "offer_orientation" and the parent router has not already handled it, complete the requested work first and append its one-line optional setup offer once.
Load ../../shared/workflow-source-resolution.md. Use source_category_plan lazily and attempt only the categories needed for this workflow: company_filings_ir, earnings_transcripts_presentations, internal_research, portfolio_models_trackers, and market_data_estimates.
When this workflow needs rendering, evidence/data preparation, style, or sector context, route support through the visible public-equity-investing router and its bundled internal playbooks. Route workbook or model QA through the visible model-audit-tieout workflow.
Apply the presentation-surface precedence in ../../shared/deliverable-intake-policy.md. This workflow's natural artifact is a polished standalone HTML post-earnings report. Do not choose chat-only output unless the user explicitly requests a lightweight response.
Before source gathering or analysis for a new standalone reader-facing hero deliverable, load ../../shared/deliverable-intake-policy.md and use its adaptive request_user_input preflight for materially unresolved format, depth, audience/use, or focus choices. For an explicit deep dive, full report, or reusable/source-heavy post-print package, resolve presentation to a polished standalone HTML post-earnings report unless the user requests another format, an explicitly quick/no-file answer, or workbook/model-update output. In interactive runs, ask only remaining material questions such as depth, audience/use, or focus. Reuse resolved preferences in downstream steps; when acting only as input to an owning workflow, do not re-prompt.
Produce a decision-grade, audit-ready post-print package after results are available.
Default to the full post-print package. A new standalone reader-facing post-print output should be a polished standalone HTML post-earnings report following ../../shared/html-artifact-standard.md; use chat only when the user explicitly requests a lightweight response. Use dashboard-builder only for the optional standardized-dashboard route below. Use deterministic file mode only when the user supplies plan.json, normalized CSVs, model-update inputs, or explicitly asks for files.
full deep dive: default analytical route for post-earnings deep dives, earnings-print analysis, and investor-facing post-print questions. An explicit deep dive, full report, or reusable/source-heavy package defaults to polished standalone HTML.one-page tear sheet: use only when the user explicitly asks for a summary, one-pager, quick read, brief, or TL;DR.audit-ready model update: use only when the user supplies or references a model/workbook, driver registry, output registry, normalized CSVs, model-update inputs, or explicit data to update a model.quote and debate map: standalone only when the user asks only for transcript quotes/debate; otherwise include it inside the full deep dive.standardized dashboard: only when the user explicitly asks for a standardized dashboard, reusable dashboard template, PM cockpit, tabbed dashboard, or structured payload-driven render, keep this skill as the analysis owner and hand the resulting public_equity_investing_dashboard.v1 payload to dashboard-builder. Use references/DASHBOARD_PACK.md for module mapping.deterministic file mode: validate inputs, run shipped scripts, fail QA on unresolved user-facing placeholders, and disclose packet versus workbook-apply path.Load references/REFERENCE_ROUTER.md first, then only the route-specific reference needed for the selected artifact.
transcript not provided or transcript source not found and list the exact missing artifact; do not render an empty Q&A table.financial_trend_chart.data.margin_metric, margin_label, and margin_rationale whenever the line is not plain net margin.not guided, not disclosed, not provided, source not provided, or MISSING: <dependency> only where appropriate.TODO, or authoring placeholders.Default sections for full deep dive: setup/source posture, dense executive summary, PM bottom line, granular beat/miss or guide-versus-bar, EPS quality screen, quarterly key metrics, growth trajectory, guidance delta/deep dive, what changed, revision/stock setup, load-bearing drivers, transcript quote/Q&A and debate map, read-throughs, major news and market events, model/thesis impact, catalysts/watch list/falsifiers, source limitations, and open questions. For investor-facing prompts add thesis change, likely estimate revision, stock/valuation skew, and next catalyst.
Use the evidence pack that supports the selected artifact without shrinking the user-facing analysis:
For a substantive HTML deep dive, load ../../shared/html-artifact-standard.md and let the company-specific investment debate determine the layout.
Company release reviewed; filing and transcript confirmation pending. Avoid internal-sounding quality labels such as research-grade in the visible artifact.For complex medium/large requests, use sub-agents where available; otherwise emulate the split as named workstreams. Suggested lanes: release and filing numbers, transcript/Q&A, estimates and guidance, model/thesis impact, and source QA. Keep this skill as the lead: reconcile conflicts, source labels, assumptions, open items, final QA, and the user-facing answer.
Use only when requested or file/model inputs are supplied:
scripts/validate_plan.pyscripts/validate_normalized_inputs.pyscripts/run_plan.pyscripts/apply_model_updates.pyscripts/model_diff.pyscripts/verify_tearsheet.pyIf workbook apply fails or is unsafe, deliver a driver update packet and explain the limitation. The bundled plan defaults to packet/dry-run mode and writes outside the skill tree.
Use dashboard-builder only when the user explicitly selects the standardized dashboard, reusable dashboard-template, or structured payload-driven rendering path. This skill still owns the analysis and maps it into references/DASHBOARD_PACK.md; prefer layout: "single_page" with sticky contents for full PM diligence dashboards unless the user explicitly asks for tabs. Ordinary standalone HTML deep dives use the flexible HTML guidance above rather than a fixed module inventory.
For substantial post-print work, load shared/pm-judgment-heuristics.md before finalizing. Audience modes: long_only_pm, long_short_hf, sell_side_research, etf_index_diligence, public_equity_diligence.
Default PM question: did the quarter change the thesis, estimates, valuation support, or sizing?
Required PM judgment:
Start onboarding, initialize, inspect, save, update, forget, export, or explicitly reset the Public Equity Investing plugin's local user context, source setup, or optional automation setup. Use when the user explicitly asks to get started, orient, or manage Public Equity Investing saved preferences, source pointers, context storage, or recurring automation.
Run scheduled or manual Sales check-ins that summarize recent Sales work and recommend one next Sales workflow to try.
Load or manage the Sales plugin's durable user context, onboarding logic, setup progress, automation metadata, saved preferences, non-obvious CRM conventions, source-of-truth pointers, book-of-business sources, internal team resources, account channels, approval trackers, trusted examples, approved Sales Company Research saves, "please remember" requests, and broad future-facing instructions such as always/never/prefer/next-time feedback after a Sales draft.
Load or manage the Data Analytics plugin's durable source-routing preferences, onboarding logic, setup progress, and semantic-layer registry.
Assess whether tables, query results, files, or dataframes are trustworthy enough for analysis, modeling, dashboards, experiments, or pipelines. Use for grain, freshness, nulls, duplicates, schema drift, broken joins, referential integrity, distribution shifts, leakage, backfills, source mismatches, automated quality checks, and data-quality regressions.
Build source-backed analytical dashboards that help teams monitor performance, explore drivers, and act on product or business metrics. Use when the user needs a dashboard, scorecard, monitoring view, BI dashboard, MCP artifact dashboard, or Streamlit dashboard with clear metrics, filters, validation, and handoff.