Skill v1.0.1
currentAutomated scan100/100+7 new
version: "1.0.1" name: planning description: Discovers user intent and generates a structured, step-by-step plan for model customization workflows. This skill must always be activated alongside any other skill when the user's request relates to model customization — including fine-tuning, training, building, customizing, reviewing data, or getting advice on approach, regardless of domain. Do not skip this skill even if the immediate ask is narrow (e.g., reviewing data format or a single workflow step), because planning discovers the full scope of work needed. Also activate when the user wants to resume, continue, or modify an existing plan. metadata: version: "2.0.0"
Principles
- One question at a time. Each question should resolve a branching decision in the plan. Avoid generic or out-of-domain questions.
- Surface constraints early. If a user decision would constrain downstream options, flag it before the plan is finalized.
- Keep plans short. Only include tasks that are necessary for the user's stated goal.
- Don't ask what you already know. Check conversation history and project files before asking the user.
Phase 1: Brainstorming
Goal: Understand what the user wants to accomplish and identify which skills belong in the plan.
Read references/input-output-contracts.md, references/model-customization-plan.md, and references/evaluate-first-plan.md to:
- Identify which skills could be relevant to the user's stated goal.
- Check whether the user has the necessary input artifacts for each skill. If not, find the skills that generate those inputs and add them first.
- Order skills to allow a smooth transition from one to the next and avoid dead ends.
- Check if a recommended workflow matches the user's needs. If not, assess what modifications are needed and verify they are possible against the contracts table.
- Decide which skills in a matching workflow can be skipped.
- Surface limitations early — if a user decision (model choice, region, evaluation method) would constrain downstream options, mention it proactively, get user feedback, and adapt the plan accordingly.
During brainstorming:
- Workflow choice gate: Before generating any plan, determine whether the user wants the evaluate-first workflow or the direct fine-tuning workflow. If the user has explicitly chosen (e.g., "evaluate first", "skip evaluation", "already evaluated the base model"), proceed with their choice. Otherwise, present both options with brief pros/cons and ask the user to choose. Saying "fine-tune" or naming a technique alone is NOT an explicit choice to skip evaluation — the user may not know evaluate-first is an option. Do NOT present a plan until the user has chosen a path. After they choose, read ONLY the corresponding reference plan.
- Use the Restrictions column of the contracts table to flag constraints as soon as the relevant decision is made. Examples (non-comprehensive list, check contracts table for the full picture):
- User picks a Nova model → alert that deployment regions are limited.
- User picks a region → alert if it conflicts with model availability.
- If a restriction applies, check whether it requires changes to other steps in the plan.
- Do NOT ask the user about base model selection or preferences. Model selection is handled exclusively by the
model-selectionskill. - Move to Phase 2 as soon as you can determine which skills and tools the plan needs.
Phase 2: Plan Generation
Goal: Propose a structured plan for the user to review.
Generate a plan as a numbered list of tasks. Each task has:
- A short name
- A one-sentence description of what happens
- Which skill handles it (if applicable)
Format:
Based on what you've described, here's what I propose:1. ⬜ **[Task Name]** — [What happens]. *(Skill: [skill-name])*2. ⬜ **[Task Name]** — [What happens]. *(Skill: [skill-name])*3. ⬜ **[Task Name]** — [What happens]. *(Skill: [skill-name])*Does this plan look right, or would you like to change anything?
Rules for plan generation:
- Infer ordering from the Prerequisites column in the contracts table — a skill cannot appear before its prerequisites. If unsure, consult
references/skill-routing-constraints.md. - Only offer capabilities covered by an available skill. If the user needs something no skill supports, say so.
- Tailor the plan to the user's actual intent. Not every plan needs every skill.
- If the user already has input artifacts (e.g., a trained model), skip the steps that produce them.
When the user approves the plan, write it to PLAN.md and save it under the project directory structure defined by the directory-management skill.
# Plan1.⬜ **[Task Name]** — [Description]. _(Skill: [skill-name])_2.⬜ **[Task Name]** — [Description]. _(Skill: [skill-name])_3.⬜ **[Task Name]** — [Description]. _(Skill: [skill-name])_
Status indicators:
- ⬜ Not Started
- 🔄 In Progress
- ✅ Completed
Update PLAN.md whenever a task's status changes.
Phase 3: Plan Iteration
Goal: Refine the plan until the user approves it.
- If the user suggests changes, regenerate the plan incorporating their feedback.
- If the user approves, begin execution by handing off to the first task's skill.
Execution
Once the plan is approved:
- Before starting a task, update its status in
PLAN.mdto 🔄 (In Progress). - If the task maps to a skill, load that skill's full SKILL.md before doing any work. Do not attempt the task from general knowledge — always defer to the skill's instructions.
- Execute the task by following the loaded skill's workflow.
- When the task completes:
- Update its status in
PLAN.mdto ✅ (Completed). If the task generated output files (scripts, notebooks, manifests), record the file paths under the completed task:
```
- [x] Fine-tune model
- Output:
scripts/01_sft_finetuning.py - Output:
manifests/sft-llama-20260515.json
```
- Briefly confirm completion and move to the next task.
- If the user interrupts with a new request mid-execution:
- Completed tasks are immutable — do NOT modify them.
- Regenerate the remaining tasks to incorporate the user's new input.
- Present the updated remainder for approval before continuing.
Plan Completion
When all tasks in the plan are done: Present to the user:
"We've completed everything in the plan. What would you like to do next?"
This re-enters Phase 1 (Brainstorming) for a new goal. There is no terminal state — the conversation continues as long as the user wants.
References
Load the reference plan that matches the customer's intent, then adjust based on their needs.
references/evaluate-first-plan.md— The evaluate-first workflow: evaluate a base model before deciding whether to fine-tune.references/model-customization-plan.md— The direct fine-tuning plan. Use when the user has explicitly committed to fine-tuning.references/input-output-contracts.md- A table showing all skills, required inputs, produced outputs, prerequisites, and constraints.references/skill-routing-constraints.md— Optional supplemental resource about Mandatory inclusion rules, ordering constraints, and skill boundary rules.