kanchi-dividend-us-tax-accounting by tradermonty/claude-trading-skills
npx skills add https://github.com/tradermonty/claude-trading-skills --skill kanchi-dividend-us-tax-accounting为股息投资者应用实用的美国税务工作流程,同时保持决策的可审计性。重点关注账户配置和分类,而非替代法律/税务建议。
当用户需要以下功能时使用此技能:
准备持仓级别的输入:
tickerinstrument_typeaccount_typehold_days_in_window(如果可用){
"holdings": [
{
"ticker": "JNJ",
"instrument_type": "stock",
"account_type": "taxable",
"security_type": "common",
"hold_days_in_window": 75
},
{
"ticker": "O",
"instrument_type": "reit",
"account_type": "ira",
"hold_days_in_window": 100
}
]
}
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为了获得确定性的输出产物,请提供 JSON 输入并运行:
python3 skills/kanchi-dividend-us-tax-accounting/scripts/build_tax_planning_sheet.py \
--input /path/to/tax_input.json \
--output-dir reports/
始终明确声明:税务结果取决于个人具体情况和司法管辖区。将此技能视为规划支持工具,最终的报税决策应提交给税务专业人士处理。
针对每项持仓,将预期的现金流分类为:
使用 references/qualified-dividend-checklist.md 进行持股期和分类检查。
对于潜在的合格股息处理:
如果数据不完整,将状态标记为 ASSUMPTION-REQUIRED。
将规划假设映射到预期的税表类别:
一致地使用税表术语,以便年终对账清晰明了。
使用 references/account-location-matrix.md 根据税务特征配置资产:
当约束条件发生冲突(流动性、策略、集中度)时,需明确解释权衡取舍。
使用 references/annual-tax-memo-template.md 并包含:
始终输出:
skills/kanchi-dividend-us-tax-accounting/scripts/build_tax_planning_sheet.py 的生成产物。遵循以下最低频率:
kanchi-dividend-review-monitor 的触发审查后重新运行。kanchi-dividend-sop 接收候选持仓和持仓列表。kanchi-dividend-review-monitor 接收风险事件上下文(WARN/REVIEW)。kanchi-dividend-sop。skills/kanchi-dividend-us-tax-accounting/scripts/build_tax_planning_sheet.py:税务规划表生成器。skills/kanchi-dividend-us-tax-accounting/scripts/tests/test_build_tax_planning_sheet.py:税务规划输出测试。references/qualified-dividend-checklist.md:分类和持股期检查清单。references/account-location-matrix.md:按账户类型和工具划分的配置矩阵。references/annual-tax-memo-template.md:可复用的备忘录结构。每周安装数
90
代码仓库
GitHub 星标数
412
首次出现
2026 年 2 月 23 日
安全审计
安装于
cursor87
gemini-cli86
github-copilot86
amp86
codex86
kimi-cli86
Apply a practical US-tax workflow for dividend investors while keeping decisions auditable. Focus on account placement and classification, not legal/tax advice replacement.
Use this skill when the user needs:
Prepare holding-level inputs:
tickerinstrument_typeaccount_typehold_days_in_window (if available){
"holdings": [
{
"ticker": "JNJ",
"instrument_type": "stock",
"account_type": "taxable",
"security_type": "common",
"hold_days_in_window": 75
},
{
"ticker": "O",
"instrument_type": "reit",
"account_type": "ira",
"hold_days_in_window": 100
}
]
}
For deterministic output artifacts, provide JSON input and run:
python3 skills/kanchi-dividend-us-tax-accounting/scripts/build_tax_planning_sheet.py \
--input /path/to/tax_input.json \
--output-dir reports/
Always state this clearly: tax outcomes depend on individual facts and jurisdiction. Treat this skill as planning support, then escalate final filing decisions to a tax professional.
For each holding, classify expected cash flow into:
Use references/qualified-dividend-checklist.md for holding-period and classification checks.
For potential qualified treatment:
If data is incomplete, mark status as ASSUMPTION-REQUIRED.
Map planning assumptions to expected tax-form buckets:
Use form terminology consistently so year-end reconciliation is straightforward.
Use references/account-location-matrix.md to place assets by tax profile:
When constraints conflict (liquidity, strategy, concentration), explain the tradeoff explicitly.
Use references/annual-tax-memo-template.md and include:
Always output:
skills/kanchi-dividend-us-tax-accounting/scripts/build_tax_planning_sheet.py.Use this minimum rhythm:
kanchi-dividend-review-monitor.kanchi-dividend-sop.WARN/REVIEW) from kanchi-dividend-review-monitor.kanchi-dividend-sop before new entries.skills/kanchi-dividend-us-tax-accounting/scripts/build_tax_planning_sheet.py: tax planning sheet generator.skills/kanchi-dividend-us-tax-accounting/scripts/tests/test_build_tax_planning_sheet.py: tests for tax planning outputs.references/qualified-dividend-checklist.md: classification and holding-period checks.references/account-location-matrix.md: placement matrix by account type and instrument.references/annual-tax-memo-template.md: reusable memo structure.Weekly Installs
90
Repository
GitHub Stars
412
First Seen
Feb 23, 2026
Security Audits
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Installed on
cursor87
gemini-cli86
github-copilot86
amp86
codex86
kimi-cli86
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