submit-to-cran
About
This Claude Skill provides a complete workflow for submitting R packages to CRAN, covering both initial releases and updates. It automates pre-submission checks on local, win-builder, and R-hub platforms, along with preparing the required `cran-comments.md` file. Developers should use it when a package is ready for its first CRAN release, for submitting updates, or when re-submitting after reviewer feedback.
Quick Install
Claude Code
Recommendednpx skills add pjt222/agent-almanac -a claude-code/plugin add https://github.com/pjt222/agent-almanacgit clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/submit-to-cranCopy and paste this command in Claude Code to install this skill
Documentation
Submit to CRAN
Execute the full CRAN submission workflow from pre-flight checks through submission.
When to Use
- Package is ready for initial CRAN release
- Submitting an updated version of an existing CRAN package
- Re-submitting after CRAN reviewer feedback
Inputs
- Required: R package passing local
R CMD checkwith 0 errors and 0 warnings - Required: Updated version number in DESCRIPTION
- Required: Updated NEWS.md with changes for this version
- Optional: Previous CRAN reviewer comments (for re-submissions)
Procedure
Step 1: Version and NEWS Check
Verify DESCRIPTION has the correct version:
desc::desc_get_version()
Verify NEWS.md has an entry for this version. The entry should summarize user-facing changes.
Got: Version follows semantic versioning. NEWS.md has a matching entry for this version.
If fail: Update version with usethis::use_version() (choose "major", "minor", or "patch"). Add a NEWS.md entry summarizing user-facing changes.
Step 2: Local R CMD Check
devtools::check()
Got: 0 errors, 0 warnings, 0 notes (1 note acceptable for new submissions: "New submission").
If fail: Fix all errors and warnings before proceeding. Read the check log at <pkg>.Rcheck/00check.log for details. Notes should be explained in cran-comments.md.
Step 3: Spell Check
devtools::spell_check()
Add legitimate words to inst/WORDLIST (one word per line, sorted alphabetically).
Got: No unexpected misspellings. All flagged words are either corrected or added to inst/WORDLIST.
If fail: Fix genuine misspellings. For legitimate technical terms, add them to inst/WORDLIST (one word per line, alphabetically sorted).
Step 4: URL Check
urlchecker::url_check()
Got: All URLs return HTTP 200. No broken or redirected links.
If fail: Replace broken URLs. Use \doi{} for DOI links instead of raw URLs. Remove links to resources that no longer exist.
Step 5: Win-Builder Checks
devtools::check_win_devel()
devtools::check_win_release()
Wait for email results (usually 15-30 minutes).
Got: 0 errors, 0 warnings on both Win-builder release and devel. Results arrive by email within 15-30 minutes.
If fail: Address platform-specific issues. Common causes: different compiler warnings, missing system dependencies, path separator differences. Fix locally and re-submit to Win-builder.
Step 6: R-hub Check
rhub::rhub_check()
This checks on multiple platforms (Ubuntu, Windows, macOS).
Got: All platforms pass with 0 errors and 0 warnings.
If fail: If a specific platform fails, check the R-hub build log for platform-specific errors. Use testthat::skip_on_os() or conditional code for platform-dependent behavior.
Step 7: Prepare cran-comments.md
Create or update cran-comments.md in the package root:
## R CMD check results
0 errors | 0 warnings | 1 note
* This is a new release.
## Test environments
* local: Windows 11, R 4.5.0
* win-builder: R-release, R-devel
* R-hub: ubuntu-latest (R-release), windows-latest (R-release), macos-latest (R-release)
## Downstream dependencies
There are currently no downstream dependencies for this package.
For updates, include:
- What changed (brief)
- Response to any previous reviewer feedback
- Reverse dependency check results if applicable
Got: cran-comments.md accurately summarizes check results across all test environments and explains any notes.
If fail: If check results differ across platforms, document all variations. CRAN reviewers will check these claims against their own tests.
Step 8: Final Pre-flight
# One last check
devtools::check()
# Verify the built tarball
devtools::build()
Got: Final devtools::check() passes cleanly. A .tar.gz tarball is built in the parent directory.
If fail: If a last-minute issue appears, fix it and re-run all checks from Step 2. Do not submit with known failures.
Step 9: Submit
devtools::release()
This runs interactive checks and submits. Answer all questions honestly.
Alternatively, submit manually at https://cran.r-project.org/submit.html by uploading the tarball.
Got: Confirmation email from CRAN arrives within minutes. Click the confirmation link to finalize the submission.
If fail: Check email for rejection reasons. Common issues: examples too slow, missing \value tags, non-portable code. Fix the issues and re-submit, noting in cran-comments.md what changed.
Step 10: Post-Submission
After acceptance:
# Tag the release
usethis::use_github_release()
# Bump to development version
usethis::use_dev_version()
Got: GitHub release is created with the accepted version tag. DESCRIPTION is bumped to the development version (x.y.z.9000).
If fail: If the GitHub release fails, create it manually with gh release create. If CRAN acceptance is delayed, wait for the confirmation email before tagging.
Validation
-
R CMD checkreturns 0 errors, 0 warnings on local machine - Win-builder passes (release + devel)
- R-hub passes on all tested platforms
-
cran-comments.mdaccurately describes check results - All URLs valid
- No spelling errors
- Version number is correct and incremented
- NEWS.md is current
- DESCRIPTION metadata is complete and accurate
Pitfalls
- Examples too slow: Wrap expensive examples in
\donttest{}. CRAN enforces time limits. - Non-standard file/directory names: Avoid files that trigger CRAN notes (check
.Rbuildignore) - Missing
\valuein docs: All exported functions need a@returntag - Vignette build failures: Ensure vignettes build in a clean environment without your
.Renviron - DESCRIPTION Title format: Must be Title Case, no period at end, no "A Package for..."
- Forgetting reverse dependency checks: For updates, run
revdepcheck::revdep_check()
Examples
# Full pre-submission workflow
devtools::spell_check()
urlchecker::url_check()
devtools::check()
devtools::check_win_devel()
rhub::rhub_check()
# Wait for results...
devtools::release()
Related Skills
release-package-version- version bumping and git taggingwrite-roxygen-docs- ensure documentation meets CRAN standardssetup-github-actions-ci- CI checks that mirror CRAN expectationsbuild-pkgdown-site- documentation site for accepted packages
GitHub Repository
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