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docs: comprehensive README with action usage, cleanup behavior, custom prompts
- Quick start example with composite action + matrix strategy
- Full action inputs table with descriptions
- How sentinel-based cleanup works (explains the reviewer-name concept)
- Custom prompt file usage with security review example
- CLI usage with all flags
- Environment variables table
- Token scopes documentation
- Setup guide for new repos
2026-05-01 20:59:34 -07:00

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Markdown

# review-bot
AI-powered code review bot for Gitea pull requests. Fetches diff + context, sends to an LLM, and posts a structured review (APPROVE / REQUEST_CHANGES) back to the PR.
## Features
- **Multi-provider**: OpenAI-compatible and Anthropic Messages API
- **Context-aware**: Fetches full file content, conventions, language patterns, CI status
- **Smart budget**: Automatically trims context to fit model token limits
- **Idempotent reviews**: Deletes previous review before posting new one (one review per bot)
- **Custom prompts**: Load additional instructions from a file (e.g. security-focused review)
- **Zero dependencies**: Go stdlib only
## Quick Start: Composite Action
The easiest way to use review-bot in your Gitea CI:
```yaml
# .gitea/workflows/review.yml
name: Review
on:
pull_request:
types: [opened, synchronize]
jobs:
review:
runs-on: ubuntu-24.04
steps:
- uses: actions/checkout@v4
- uses: https://gitea.weiker.me/rodin/review-bot/.gitea/actions/review@v0.1.0
with:
reviewer-token: ${{ secrets.REVIEW_TOKEN }}
reviewer-name: code-review
llm-base-url: ${{ secrets.LLM_BASE_URL }}
llm-api-key: ${{ secrets.LLM_API_KEY }}
llm-model: gpt-4.1
```
That's it. Every PR gets an automated review.
## Examples
### Single reviewer with conventions
```yaml
jobs:
review:
runs-on: ubuntu-24.04
steps:
- uses: actions/checkout@v4
- uses: https://gitea.weiker.me/rodin/review-bot/.gitea/actions/review@v0.1.0
with:
reviewer-token: ${{ secrets.REVIEW_TOKEN }}
reviewer-name: reviewer
llm-base-url: ${{ secrets.LLM_BASE_URL }}
llm-api-key: ${{ secrets.LLM_API_KEY }}
llm-model: gpt-4.1
conventions-file: CONVENTIONS.md
timeout: '600'
```
### Two reviewers with different models (diversity of opinion)
```yaml
jobs:
review:
runs-on: ubuntu-24.04
strategy:
matrix:
include:
- name: gpt
model: gpt-4.1
token_secret: GPT_REVIEW_TOKEN
- name: claude
model: claude-sonnet-4-20250514
token_secret: CLAUDE_REVIEW_TOKEN
provider: anthropic
steps:
- uses: actions/checkout@v4
- uses: https://gitea.weiker.me/rodin/review-bot/.gitea/actions/review@v0.1.0
with:
reviewer-token: ${{ secrets[matrix.token_secret] }}
reviewer-name: ${{ matrix.name }}
llm-base-url: ${{ secrets.LLM_BASE_URL }}
llm-api-key: ${{ secrets.LLM_API_KEY }}
llm-model: ${{ matrix.model }}
llm-provider: ${{ matrix.provider }}
conventions-file: CONVENTIONS.md
```
Each reviewer posts independently and only cleans up its own stale reviews.
### Multiple review types from a single bot account
Use the same Gitea token but different `reviewer-name` values to run specialized reviews without needing multiple bot accounts:
```yaml
jobs:
review:
runs-on: ubuntu-24.04
strategy:
matrix:
include:
- name: code-quality
model: gpt-4.1
- name: security
model: gpt-4.1
system_prompt_file: .review/SECURITY.md
- name: performance
model: gpt-4.1
system_prompt_file: .review/PERFORMANCE.md
steps:
- uses: actions/checkout@v4
- uses: https://gitea.weiker.me/rodin/review-bot/.gitea/actions/review@v0.1.0
with:
reviewer-token: ${{ secrets.REVIEW_TOKEN }}
reviewer-name: ${{ matrix.name }}
llm-base-url: ${{ secrets.LLM_BASE_URL }}
llm-api-key: ${{ secrets.LLM_API_KEY }}
llm-model: ${{ matrix.model }}
system-prompt-file: ${{ matrix.system_prompt_file }}
```
The sentinel `<!-- review-bot:security -->` ensures the security review only replaces previous security reviews, never the code-quality or performance reviews.
### With language patterns from another repo
```yaml
- uses: https://gitea.weiker.me/rodin/review-bot/.gitea/actions/review@v0.1.0
with:
reviewer-token: ${{ secrets.REVIEW_TOKEN }}
reviewer-name: reviewer
llm-base-url: ${{ secrets.LLM_BASE_URL }}
llm-api-key: ${{ secrets.LLM_API_KEY }}
llm-model: gpt-4.1
conventions-file: CLAUDE.md
patterns-repo: rodin/go-patterns,rodin/kubernetes-conventions
patterns-files: "README.md,patterns/"
```
Pattern repos are fetched at review time. The reviewer uses them as criteria for idiomatic code.
### Dry run (test without posting)
```yaml
- uses: https://gitea.weiker.me/rodin/review-bot/.gitea/actions/review@v0.1.0
with:
reviewer-token: ${{ secrets.REVIEW_TOKEN }}
reviewer-name: test
llm-base-url: ${{ secrets.LLM_BASE_URL }}
llm-api-key: ${{ secrets.LLM_API_KEY }}
llm-model: gpt-4.1
dry-run: 'true'
```
Prints the review to CI logs without posting to the PR. Useful for testing prompt changes.
### Using Anthropic directly
```yaml
- uses: https://gitea.weiker.me/rodin/review-bot/.gitea/actions/review@v0.1.0
with:
reviewer-token: ${{ secrets.REVIEW_TOKEN }}
reviewer-name: claude
llm-base-url: https://api.anthropic.com
llm-api-key: ${{ secrets.ANTHROPIC_API_KEY }}
llm-model: claude-sonnet-4-20250514
llm-provider: anthropic
```
## Action Inputs
| Input | Required | Default | Description |
|-------|----------|---------|-------------|
| `reviewer-token` | Yes | — | Gitea token for posting reviews (needs `write:issue`, `write:repository`) |
| `reviewer-name` | No | `""` | Logical identity for this reviewer. Used as sentinel for idempotent cleanup. Set this when running multiple review bots on the same PR. |
| `llm-base-url` | Yes | — | LLM API base URL |
| `llm-api-key` | Yes | — | LLM API key |
| `llm-model` | Yes | — | Model name |
| `llm-provider` | No | `openai` | API provider: `openai` or `anthropic` |
| `conventions-file` | No | `""` | Path to coding conventions file in the repo |
| `patterns-repo` | No | `""` | Comma-separated repos with language patterns (e.g. `rodin/go-patterns`) |
| `patterns-files` | No | `README.md` | Files/directories to fetch from pattern repos |
| `system-prompt-file` | No | `""` | Local file with additional system prompt instructions |
| `temperature` | No | `0` | LLM temperature (0 = server default) |
| `timeout` | No | `300` | LLM request timeout in seconds |
| `dry-run` | No | `false` | Print review to stdout instead of posting |
| `update-existing` | No | `true` | Delete previous review from same bot before posting. Accepts: true/1/yes or false/0/no |
| `version` | No | `latest` | review-bot version to install |
## How Review Cleanup Works
When `reviewer-name` is set, the bot embeds a hidden sentinel in each review:
```html
<!-- review-bot:code-review -->
```
On the next run, it finds and deletes any review containing its own sentinel (except the one it just posted). This means:
- **One review per bot per PR** — no clutter from repeated pushes
- **Multiple bots coexist** — each only cleans up its own reviews
- **Same token, different roles** — a single bot account can post "code-review" and "security" reviews without conflict
- **No extra permissions** — identity comes from the sentinel, not the API
If `reviewer-name` is empty, cleanup is skipped (reviews stack like before).
## Custom Review Prompts
Use `system-prompt-file` to specialize the review focus. The file contents are appended to the base system prompt as "Additional Review Instructions."
Example `SECURITY_REVIEW.md`:
```markdown
You are performing a security-focused code review.
Focus areas:
- Injection attacks (SQL, command, path traversal, template)
- Authentication/Authorization (missing checks, privilege escalation)
- Secrets exposure (hardcoded credentials, tokens in logs)
- Input validation (unsanitized input, unsafe deserialization)
- Race conditions (TOCTOU, unsynchronized shared state)
Rules:
- Only report findings with security implications
- Ignore style, naming, and general code quality
- MAJOR = exploitable vulnerability, MINOR = hardening opportunity, NIT = theoretical risk
- If no security-relevant changes exist, APPROVE with empty findings
```
## CLI Usage
```bash
review-bot \
--gitea-url https://gitea.example.com \
--repo owner/name \
--pr 42 \
--reviewer-token "$GITEA_TOKEN" \
--reviewer-name "code-review" \
--llm-base-url https://api.openai.com/v1 \
--llm-api-key "$OPENAI_API_KEY" \
--llm-model gpt-4.1 \
--conventions-file CONVENTIONS.md
```
## Environment Variables
All flags have environment variable equivalents:
| Flag | Env Var |
|------|---------|
| `--gitea-url` | `GITEA_URL` |
| `--repo` | `GITEA_REPO` |
| `--pr` | `PR_NUMBER` |
| `--reviewer-token` | `REVIEWER_TOKEN` |
| `--reviewer-name` | `REVIEWER_NAME` |
| `--llm-base-url` | `LLM_BASE_URL` |
| `--llm-api-key` | `LLM_API_KEY` |
| `--llm-model` | `LLM_MODEL` |
| `--llm-provider` | `LLM_PROVIDER` |
| `--conventions-file` | `CONVENTIONS_FILE` |
| `--patterns-repo` | `PATTERNS_REPO` |
| `--patterns-files` | `PATTERNS_FILES` |
| `--system-prompt-file` | `SYSTEM_PROMPT_FILE` |
| `--llm-temperature` | `LLM_TEMPERATURE` |
| `--llm-timeout` | `LLM_TIMEOUT` |
| `--update-existing` | `UPDATE_EXISTING` |
## Setup
1. **Create a Gitea bot account** (e.g. `review-bot`)
2. **Generate a token** with scopes: `write:issue`, `write:repository`
3. **Add secrets** to your Gitea repo (Settings → Actions → Secrets):
- `REVIEW_TOKEN` — the bot's Gitea token
- `LLM_BASE_URL` — your LLM endpoint
- `LLM_API_KEY` — your LLM key
4. **Add the workflow** (see Quick Start above)
### Token Scopes Required
| Scope | Purpose |
|-------|---------|
| `write:issue` | Post and delete reviews |
| `write:repository` | Read PR diffs, file content, commit statuses |
No `read:user` scope needed — the bot identifies itself from the review response.
## Development
```bash
go test ./... # Unit tests
go vet ./... # Static analysis
go build -o review-bot ./cmd/review-bot
# Integration tests (requires env vars set)
go test -tags=integration ./...
```
## Architecture
```
cmd/review-bot/ CLI entrypoint + orchestration
gitea/ Gitea API client (reviews, PRs, files)
llm/ Multi-provider LLM client (OpenAI + Anthropic)
review/ Prompt building, response parsing, formatting
budget/ Token estimation + context trimming
```
## License
MIT