SkillHub

daily-stock-analysis

v1.0.2

Deterministic daily stock analysis skill for global equities. Use when users need daily analysis, next-trading-day close prediction, prior forecast review, rolling accuracy, and reliable markdown report output.

Sourced from ClawHub, Authored by HeXavi8

Installation

Please help me install the skill `daily-stock-analysis` from SkillHub official store. npx skills add HeXavi8/daily-stock-analysis

Daily Stock Analysis

Perform market-aware, evidence-based daily stock analysis with prediction, next-run review, rolling accuracy tracking, and a structured self-evolution mechanism that updates future assumptions from observed forecast errors.

Hard Rules

  1. Read and write files only under working_directory.
  2. Save new reports only to:

  3. <working_directory>/daily-stock-analysis/reports/

  4. Use filename:

  5. YYYY-MM-DD-<TICKER>-analysis.md

  6. If same ticker/day file exists, ask user:

  7. overwrite or new_version (-v2, -v3, ...)

  8. For unattended runs, default to new_version

  9. Always review history before new prediction.

  10. Limit history read count to control token usage:

  11. Script mode: max 5 files (default)

  12. Compatibility mode: max 3 files

Required Scripts (Use First)

  1. Plan output path + collect history:
python3 {baseDir}/scripts/report_manager.py plan 
  --workdir <working_directory> 
  --ticker <TICKER> 
  --run-date <YYYY-MM-DD> 
  --versioning auto 
  --history-limit 5
  1. Compute rolling accuracy from existing reports:
python3 {baseDir}/scripts/calc_accuracy.py 
  --workdir <working_directory> 
  --ticker <TICKER> 
  --windows 1,3,7,30 
  --history-limit 60
  1. Optional: migrate legacy files after explicit user confirmation:
python3 {baseDir}/scripts/report_manager.py migrate 
  --workdir <working_directory> 
  --file <ABS_PATH_1> --file <ABS_PATH_2>

Compatibility Mode (No Python / Small Model)

If Python scripts are unavailable or model capability is limited, switch to minimal mode:

  1. Read at most 3 recent reports for the same ticker.
  2. Use only a minimal source set:

  3. one official disclosure source

  4. one reliable market data source (Yahoo Finance acceptable)

  5. Output concise result only:

  6. recommendation

  7. pred_close_t1
  8. prior review (prev_pred_close_t1, prev_actual_close_t1, AE, APE) if available
  9. one improvement_action

  10. Save report with same filename rules in canonical reports directory.

See references/minimal_mode.md.

Minimal Run Protocol

  1. Resolve ticker/exchange/market (ask if ambiguous).
  2. Run report_manager.py plan.
  3. Read history_files returned by script.
  4. If legacy_files exist, list all absolute paths and ask whether to migrate.
  5. Gather data using references/sources.md + references/search_queries.md.
  6. Run calc_accuracy.py for consistent metrics.
  7. Render report using references/report_template.md.
  8. Save to selected_output_file returned by report_manager.py.

Required Output Fields

Must include:

  • recommendation
  • pred_close_t1
  • prev_pred_close_t1
  • prev_actual_close_t1
  • AE, APE
  • rolling strict/loose accuracy fields
  • improvement_actions

Self-Improvement (Required)

Each run must include 1-3 concrete improvement_actions from recent misses and use them in the next run. Do not skip this step.

Scheduling Recommendation

Recommend users set this as a weekday recurring task (for example 10:00 local time) to keep prediction-review windows continuous.

References

Default:

  • references/workflow.md
  • references/report_template.md
  • references/metrics.md
  • references/search_queries.md
  • references/sources.md
  • references/minimal_mode.md
  • references/security.md

Deep-dive only (full_report mode):

  • references/fundamental-analysis.md
  • references/technical-analysis.md
  • references/financial-metrics.md

Compliance

Always append:

"This content is for research and informational purposes only and does not constitute investment advice or a return guarantee. Markets are risky; invest with caution."