scientific-skills/Others/task-reminder/SKILL.md
Organize scattered tasks into actionable lists and generate daily/weekly/deadline reminder plans when you need a structured schedule and exportable outputs (MD/CSV), with optional system notifications.
npx skillsauth add aipoch/medical-research-skills task-reminderInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Run this minimal command first to verify the supported execution path:
python scripts/task_reminder.py --help
daily, weekly, deadline, or all (default).reminders.md (human-readable actionable list + plan)reminders.csv (tabular plan for spreadsheets/tools)python scripts/task_reminder.py
Create input.json:
{
"start_date": "2026-03-01",
"end_date": "2026-03-10",
"reminder_mode": "all",
"weekly_day": 0,
"tasks": [
{
"title": "Write lab report",
"deadline": "2026-03-05",
"priority": 3,
"estimate_hours": 2,
"tags": ["Course", "Lab"]
},
{
"title": "Prepare slides for meeting",
"deadline": "2026-03-08",
"priority": 2,
"estimate_hours": 1.5,
"tags": ["Work"]
}
]
}
Run:
python scripts/task_reminder.py --json input.json
Expected outputs in the working directory:
reminders.mdreminders.csvMinimum required fields
tasks: array of task objectsstart_date: string in YYYY-MM-DDend_date: string in YYYY-MM-DDOptional fields
reminder_mode: one of daily / weekly / deadline / all (default: all)weekly_day: integer 0..6 where 0=Monday and 6=Sunday (default: 0)Task object fields (recommended)
title (string): task namedeadline (string, YYYY-MM-DD): due date used for deadline-based reminderspriority (number/int): higher value indicates higher priority (as provided by the user)estimate_hours (number): effort estimate used for planning contexttags (array of strings): categorization for filtering/grouping in outputs[start_date, end_date].weekly_day within the date range.reminders.md: includes an actionable task list and the generated reminder plan in Markdown format.reminders.csv: includes a structured reminder plan table suitable for spreadsheets and imports.reminders.md, reminders.csv) in the specified/working directory.task_reminder_result.md unless the skill documentation defines a better convention.Run this minimal verification path before full execution when possible:
python scripts/task_reminder.py --help
Expected output format:
Result file: task_reminder_result.md
Validation summary: PASS/FAIL with brief notes
Assumptions: explicit list if any
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