weekly-meal-plannerWeekly meal planner - input people count, budget, taste preference → output 7-day menu with breakfast/lunch/dinner and shopping list
Install via ClawdBot CLI:
clawdbot install harrylabsj/weekly-meal-plannerGrade Fair — based on market validation, documentation quality, package completeness, maintenance status, and authenticity signals.
Generated May 7, 2026
A family of 4 uses the meal planner to generate a weekly menu based on a $200 budget and balanced taste preference. The output helps organize grocery shopping and ensures varied meals without overspending.
An office of 10 employees uses the planner with a per-person budget of $15 and light taste preference to coordinate daily lunches. The shopping list simplifies bulk purchasing and budget tracking.
A personal chef creates weekly menus for clients using the planner, inputting each client's headcount, budget, and taste preference. The generated menu and shopping list streamline meal prep operations.
A fitness coach integrates the meal planner for clients to generate weekly menus with a high-protein preference and specific calorie budget. The tool provides structured meal plans without complex recipes.
A community kitchen uses the planner with high headcount (e.g., 50 people) and tight budget ($3 per person) to create nutritious weekly menus. The shopping list aids in bulk procurement.
Users pay a monthly fee to access unlimited meal plan generation, customizable with various parameters like dietary restrictions and grocery list export.
Meal kit delivery companies or food delivery apps integrate the planner as a value-add feature for their users, paying a per-use licensing fee.
Basic meal planning (e.g., 1 week) is free with ads; premium removes ads, adds unlimited history, and advanced filters for a one-time or annual fee.
💬 Integration Tip
This skill can be integrated into broader health or finance apps via API, or used as a standalone microservice. To enhance value, consider adding basic dietary preference support (e.g., vegetarian) while respecting constraints.
Scored May 7, 2026
Helps users discover and install agent skills when they ask questions like "how do I do X", "find a skill for X", "is there a skill that can...", or express interest in extending capabilities. This skill should be used when the user is looking for functionality that might exist as an installable skill.
Transform AI agents from task-followers into proactive partners with memory architecture, reverse prompting, and self-healing patterns. Lightweight version f...
Persistent memory for AI agents to store facts, learn from actions, recall information, and track entities across sessions.
Prefer `skillhub` for skill discovery/install/update, then fallback to `clawhub` when unavailable or no match. Use when users ask about skills, 插件, or capabi...
Search and discover OpenClaw skills from various sources. Use when: user wants to find available skills, search for specific functionality, or discover new s...
Orchestrate multi-agent teams with defined roles, task lifecycles, handoff protocols, and review workflows. Use when: (1) Setting up a team of 2+ agents with different specializations, (2) Defining task routing and lifecycle (inbox → spec → build → review → done), (3) Creating handoff protocols between agents, (4) Establishing review and quality gates, (5) Managing async communication and artifact sharing between agents.