kanchi-dividend-sop

安装量: 65
排名: #11585

安装

npx skills add https://github.com/tradermonty/claude-trading-skills --skill kanchi-dividend-sop
Kanchi Dividend Sop
Overview
Implement Kanchi's 5-step method as a deterministic workflow for US dividend investing.
Prioritize safety and repeatability over aggressive yield chasing.
When to Use
Use this skill when the user needs:
Kanchi-style dividend stock selection adapted for US equities.
A repeatable screening and pullback-entry process instead of ad-hoc picks.
One-page underwriting memos with explicit invalidation conditions.
A handoff package for monitoring and tax/account-location workflows.
Prerequisites
API Key Setup
The entry signal script requires FMP API access:
export
FMP_API_KEY
=
your_api_key_here
Input Sources
Prepare one of the following inputs before running the workflow:
Output from
skills/value-dividend-screener/scripts/screen_dividend_stocks.py
.
Output from
skills/dividend-growth-pullback-screener/scripts/screen_dividend_growth.py
.
User-provided ticker list (broker export or manual list).
Expected JSON Input Format
When using
--input
, provide JSON in one of these formats:
{
"profile"
:
"balanced"
,
"candidates"
:
[
{
"ticker"
:
"JNJ"
,
"bucket"
:
"core"
}
,
{
"ticker"
:
"O"
,
"bucket"
:
"satellite"
}
]
}
Or simplified:
{
"tickers"
:
[
"JNJ"
,
"PG"
,
"KO"
]
}
For deterministic artifact generation, provide tickers to:
python3 skills/kanchi-dividend-sop/scripts/build_sop_plan.py
\
--tickers
"JNJ,PG,KO"
\
--output-dir reports/
For Step 5 entry timing artifacts:
python3 skills/kanchi-dividend-sop/scripts/build_entry_signals.py
\
--tickers
"JNJ,PG,KO"
\
--alpha-pp
0.5
\
--output-dir reports/
Workflow
1) Define mandate before screening
Collect and lock the parameters first:
Objective: current cash income vs dividend growth.
Max positions and position-size cap.
Allowed instruments: stock only, or include REIT/BDC/ETF.
Preferred account type context: taxable vs IRA-like accounts.
Load
references/default-thresholds.md
and apply baseline
settings unless the user overrides.
2) Build the investable universe
Start with a quality-biased universe:
Core bucket: long dividend growth names (for example, Dividend Aristocrats style quality set).
Satellite bucket: higher-yield sectors (utilities, telecom, REITs) in a separate risk bucket.
Use explicit source priority for ticker collection:
skills/value-dividend-screener/scripts/screen_dividend_stocks.py
output (FMP/FINVIZ).
skills/dividend-growth-pullback-screener/scripts/screen_dividend_growth_rsi.py
output.
User-provided broker export or manual ticker list when APIs are unavailable.
Return a ticker list grouped by bucket before moving forward.
3) Apply Kanchi Step 1 (yield filter with trap flag)
Primary rule:
forward_dividend_yield >= 3.5%
Trap controls:
Flag extreme yield (
>= 8%
) as
deep-dive-required
.
Flag sudden jump in payout as potential special dividend artifact.
Output:
PASS
or
FAIL
per ticker.
deep-dive-required
flag for potential yield traps.
4) Apply Kanchi Step 2 (growth and safety)
Require:
Revenue and EPS trend positive on multi-year horizon.
Dividend trend non-declining over the review period.
Add safety checks:
Payout ratio and FCF payout ratio in reasonable range.
Debt burden and interest coverage not deteriorating.
When trend is mixed but not broken, classify as
HOLD-FOR-REVIEW
instead of hard reject.
5) Apply Kanchi Step 3 (valuation) with US sector mapping
Use
references/valuation-and-one-off-checks.md
and apply
sector-specific valuation logic:
Financials:
PER x PBR
can remain primary.
REITs: use
P/FFO
or
P/AFFO
instead of plain
P/E
.
Asset-light sectors: combine forward
P/E
,
P/FCF
, and historical range.
Always report which valuation method was used for each ticker.
6) Apply Kanchi Step 4 (one-off event filter)
Reject or downgrade names where recent profits rely on one-time effects:
Asset sale gains, litigation settlement, tax effect spikes.
Margin spike unsupported by sales trend.
Repeated "one-time/non-recurring" adjustments.
Record one-line evidence for each
FAIL
to keep auditability.
7) Apply Kanchi Step 5 (buy on weakness with rules)
Set entry triggers mechanically:
Yield trigger: current yield above 5y average yield + alpha (default
+0.5pp
).
Valuation trigger: target multiple reached (
P/E
,
P/FFO
, or
P/FCF
).
Execution pattern:
Split orders:
40% -> 30% -> 30%
.
Require one-sentence sanity check before each add: "thesis intact vs structural break".
8) Produce standardized outputs
Always produce three artifacts:
Screening table (
PASS
,
HOLD-FOR-REVIEW
,
FAIL
with evidence).
One-page stock memo (use
references/stock-note-template.md
).
Limit-order plan with split sizing and invalidation condition.
Output
Return and/or generate:
SOP screening summary in markdown.
Underwriting memo set based on
references/stock-note-template.md
.
Optional plan artifact file generated by
skills/kanchi-dividend-sop/scripts/build_sop_plan.py
in
reports/
.
Optional Step 5 entry-signal artifacts generated by
skills/kanchi-dividend-sop/scripts/build_entry_signals.py
in
reports/
.
Cadence
Use this minimum rhythm:
Weekly (15 min): check dividend and business-news changes only.
Monthly (30 min): rerun screening and refresh order levels.
Quarterly (60 min): deep safety review using latest filings/earnings.
Multi-Skill Handoff
Run this skill first, then hand off outputs:
To
kanchi-dividend-review-monitor
for daily/weekly/quarterly anomaly detection.
To
kanchi-dividend-us-tax-accounting
for account-location and tax classification planning.
Guardrails
Do not issue blind buy calls without Step 4 and safety checks.
Do not treat high yield as value before validating coverage quality.
Keep assumptions explicit when data is missing.
Resources
skills/kanchi-dividend-sop/scripts/build_sop_plan.py
deterministic SOP plan generator.
skills/kanchi-dividend-sop/scripts/tests/test_build_sop_plan.py
tests for plan generation.
skills/kanchi-dividend-sop/scripts/build_entry_signals.py
Step 5 target-buy calculator (
5y avg yield + alpha
).
skills/kanchi-dividend-sop/scripts/tests/test_build_entry_signals.py
tests for signal calculations.
references/default-thresholds.md
baseline thresholds and profile tuning.
references/valuation-and-one-off-checks.md
sector valuation map and one-off checklist.
references/stock-note-template.md
one-page memo template for each candidate.
返回排行榜