fusion-issue-solving

Handles GitHub issue resolution end-to-end for prompts like "solve #123", "lets solve #123", "work on #123", "work on…

INSTALLATION
npx skills add https://github.com/equinor/fusion-skills --skill fusion-issue-solving
Run in your project or agent environment. Adjust flags if your CLI version differs.

SKILL.md

$27

When not to use

  • Request is only issue drafting/authoring
  • No implementation changes expected
  • Repository write operations are disallowed

Required inputs

Collect before execution:

  • issue URL or owner/repo#number
  • repository and branch/worktree decision
  • acceptance criteria and out-of-scope constraints
  • required validation commands for the target repository

Optional:

  • related issues/PRs
  • risk areas to prioritize
  • requested commit/PR granularity

Instructions

-

Ask whether to use a dedicated git worktree

  • Ask this before any other workflow questions.
  • If yes, use/create the worktree and continue there.

-

Confirm issue context and success criteria

  • Read the issue body, labels, and linked discussions once, then reuse that context instead of refetching.
  • Restate the implementable scope and explicitly list out-of-scope items.

-

Confirm assignee intent for issue closure work

  • Check whether the current user is assigned to the primary issue.
  • If the current user is not assigned, ask whether they want to assign themselves before continuing.
  • For each sub-issue that will be resolved or closed by this workflow, check assignee status once and reuse the result for closure decisions.
  • If the current user is not assigned on a sub-issue, ask whether they want to assign themselves before resolving/closing it.

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Apply low-token GitHub strategy

  • Prefer MCP-backed tools over ad hoc gh api or GraphQL calls when equivalent tools exist.
  • Avoid duplicate lookups for labels, issue types, and duplicate detection.
  • Cache per-run context (issue metadata, duplicate matches, issue-type support, label sets, assignee candidates) and reuse it — do not re-fetch data that was already retrieved in this session.
  • When delegating to fusion-issue-authoring or its subordinate skills, the orchestrator's session-cache rules apply: labels and assignee candidates are fetched once per repository, issue types once per organization.
  • Use GraphQL fallback only when MCP coverage is unavailable and do not loop retries.
  • GraphQL mutations cost 5 secondary-limit points each (vs 1 for queries); batch fields into single calls and pause at least 1 second between mutation calls.
  • Budget awareness: a typical implementation session (read issue + duplicate check + 1–2 mutations + sub-issue links) should stay under ~20 MCP read calls and ~5 mutations. If the running total approaches 30+ calls, pause optional enrichment and proceed with local work.
  • Respect retry-after and x-ratelimit-reset headers; do not retry before the indicated wait.
  • If rate limits are hit, stop non-essential operations and continue with local implementation/PR preparation when possible.

-

Build and track a concrete plan

  • Create actionable todos ordered by dependencies.
  • Keep exactly one step in progress and update status as work completes.

-

Research before edits

  • Inspect relevant files, tests, and adjacent usage.
  • Prefer root-cause fixes over surface patches.

-

Implement in small scoped changes

  • Keep each change aligned to issue acceptance criteria.
  • Avoid unrelated refactors and generated release artifacts.

-

Validate incrementally

  • Run targeted checks first, then required project checks.
  • If checks fail, fix relevant issues and re-run before proceeding.

-

Prepare PR-ready output

  • Summarize what changed and why.
  • Include validation evidence and known follow-ups.
  • Draft the PR body in a .tmp/ file with an issue/context-specific name (for example, .tmp/pr-body-issue-123-scope-summary.md), not a shared .tmp/pr-body.md.
  • Base the draft on .github/pull_request_template.md and keep it updated as implementation evolves.
  • Ask which base branch to target and propose a likely default (typically main, or the branch the current branch was cut from).
  • Ask whether the PR should be opened as draft or ready for review.
  • Ask whether the PR should be assigned to the user and whether related issues should be linked.

-

Optional GitHub mutation steps

  • Before any GitHub mutation (create/edit/comment/close), ask for explicit user confirmation.
  • If requested, update issue status/comments with objective progress.
  • Prefer MCP tool mutations over ad hoc API calls when equivalent operations exist.
  • If GitHub API rate limits block mutation, report the failure clearly, stop retry loops, and propose a safe retry sequence.
  • If requested, create or update the PR using the repository PR template and the .tmp/ PR body draft file, using the confirmed base branch, draft/ready state, assignee choice, and related issue links.

Expected output

Return a concise delivery report with:

  • implemented scope vs original issue criteria,
  • files changed,
  • validation commands and outcomes,
  • assignment decisions for primary issue and affected sub-issues,
  • API usage strategy used (MCP-first/cache reuse/fallbacks),
  • open risks/blockers,
  • PR body summary (or .tmp/ draft file path when created).

Assets

Safety & constraints

  • This skill is mutation-capable. Repository-local workflow instructions take precedence over inline guidance when they conflict.
  • Never request or expose secrets/credentials.
  • Never run destructive commands without explicit confirmation.
  • Keep changes minimal and scoped to the issue.
  • Do not claim checks passed without running them.
  • Follow repository instructions and contribution rules.
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