agentbench

Benchmark your OpenClaw agent across 40 real-world tasks. Tests file creation, research, data analysis, multi-step workflows, memory, error handling, and tool efficiency. Not a coding benchmark — measures your agent setup and config.

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Install skill "agentbench" with this command: npx skills add exe215/agentbench

AgentBench for OpenClaw

Benchmark your OpenClaw agent's general capabilities across 40 real-world tasks spanning 7 domains.

Commands

When the user says any of these, follow the corresponding instructions:

  • /benchmark — Run the full benchmark suite (all 40 tasks)
  • /benchmark --fast — Run only easy+medium tasks (19 tasks)
  • /benchmark --suite <name> — Run one domain only
  • /benchmark --task <id> — Run a single task
  • /benchmark --strict — Tag results as externally verified scoring
  • /benchmark-list — List all tasks grouped by domain
  • /benchmark-results — Show results from previous runs
  • /benchmark-compare — Compare two runs side-by-side

Flags are combinable: /benchmark --fast --suite research

Running a Benchmark

Step 1: Discover Tasks

Read task.yaml files from the tasks/ directory in this skill:

tasks/{suite-name}/{task-name}/task.yaml

Each task.yaml contains: name, id, suite, difficulty, mode, user_message, input_files, expected_outputs, expected_metrics, scoring weights.

Filter by --suite or --task if specified. If --fast is set and --task is not, filter to only tasks where difficulty is "easy" or "medium".

Profile is "fast" if --fast was specified, otherwise "full".

List discovered tasks with count and suites.

Step 2: Set Up Run Directory

Generate a run ID from the current timestamp: YYYYMMDD-HHmmss

Read suite_version from skill.json in this skill directory.

Create the results directory:

agentbench-results/{run-id}/

Announce: Starting AgentBench run {run-id} | Profile: {profile} | Suite version: {suite_version} | Tasks: {count}

Step 3: Execute Each Task

For each task:

  1. Set up workspace:

    • Create /tmp/agentbench-task-{task-id}/ as workspace
    • Copy input files from tasks/{suite}/{task}/inputs/ to the workspace (if inputs/ exists)
    • If the task directory contains a setup.sh: run bash tasks/{suite}/{task}/setup.sh {workspace-path}
    • For file-unchanged validators: compute checksums of specified files after setup, before task execution
  2. Announce: Running: {task.name} [{task.suite}] (difficulty: {task.difficulty})

  3. Record start time (milliseconds): date +%s%3N

  4. Execute the task yourself directly:

    • Read the task's user_message and execute it as if a real user sent you the request
    • Work ONLY within the workspace directory
    • If input files are listed, read them from the workspace
    • Execute naturally — use the appropriate tools (read, write, edit, exec, web_search, web_fetch, etc.)
    • Create any output files in the workspace directory
    • When done, write a brief execution-trace.md to the workspace:
      • What you understood the task to be
      • What approach you took
      • What files you created or modified
      • Any difficulties or decisions you made
  5. Record end time and compute duration

  6. Collect metrics:

    • total_time_ms: end - start
    • tool_calls_total: count how many tool calls you made during this task
    • errors: count any tool call failures
    • planning_ratio: estimate the fraction of time spent reading/thinking vs producing output (approximate is fine)
  7. Layer 0 — Automated Structural Checks (compute directly): After task execution, check the workspace. For each entry in expected_outputs:

    • file-exists: Check if file exists. 30 points if found, 0 if not.
    • content-contains: Read file, check each required section keyword (case-insensitive). Points proportional to matches found. Pool: 40 points.
    • word-count-range: Count words. In range = 30 points. Within 2x range = 15 points. Outside = 0.
    • git-log-contains: Check git log for expected strings. 30 points if all found, proportional otherwise.
    • directory-structure: Check all paths exist. 30 points if all present, proportional for partial.
    • command-output-contains: Run command, check output contains all strings. 30 points if match, 0 if not.
    • file-unchanged: Compare checksum against pre-execution checksum. 30 points if unchanged, 0 if modified.
    • link-consistency: Scan files for link syntax consistency. 30 points if consistent, 15 if mostly consistent (>70% one style), 0 if mixed.
    • Normalize total to 0-100.
  8. Layer 1 — Metrics Analysis (compute directly): If task has expected_metrics:

    • Tool calls within expected range: 40 points
    • Tool calls within 2x range: 20 points
    • Outside 2x range: 0 points
    • Planning ratio within expected range: 30 points
    • Planning ratio outside but within 2x: 15 points
    • Way off: 0 points
    • Zero errors: 30 points
    • 1-2 errors: 15 points
    • 3+ errors: 0 points
    • Normalize to 0-100. If no metrics available, score as 50.
    • Token estimate is tracked for reporting but NOT scored.
  9. Layer 2 — Behavioral Analysis (self-evaluate honestly, 0-100): Score based on HOW you executed:

    Instruction Adherence (30 points):

    • 30: Followed all instructions precisely
    • 20: Mostly followed, minor deviations
    • 10: Significant deviations
    • 0: Ignored or misunderstood

    Tool Appropriateness (25 points) — rule-based first:

    • Penalty: -10 for each use of exec cat instead of read to read files
    • Penalty: -10 for each use of exec echo/printf instead of write to create files
    • Penalty: -5 for each use of exec sed/awk instead of edit for file edits
    • Start at 25, apply penalties, floor at 0

    Approach Quality (25 points) — check read-before-write:

    • 25: Read all inputs before producing output
    • 15: Read most inputs, minor gaps
    • 5: Started producing output without reading context
    • 0: No clear approach

    Error Recovery (20 points):

    • 20: Clean recovery or no errors occurred
    • 10: Partial recovery
    • 0: Failed to recover
  10. Layer 3 — Output Quality (self-evaluate honestly, 0-100): Score the deliverable:

    Completeness (25): All requirements met? Gaps? Accuracy (25): Content correct? Calculations right? Formatting (25): Well-structured? Correct file format? Polish (25): Would a user be satisfied?

  11. Compute composite score:

    score = (L0 × 0.20) + (L1 × 0.35) + (L2 × 0.20) + (L3 × 0.25)
    

    Use weights from task.yaml if specified, otherwise these defaults.

  12. Save task result to agentbench-results/{run-id}/{task-id}/:

    • scores.json: All layer scores, composite, breakdown, notes
    • metrics.json: Timing, tool calls, errors, planning ratio
    • Copy output files
  13. Display: {task.name}: {composite}/100 (L0:{l0} L1:{l1} L2:{l2} L3:{l3})

Step 4: Generate Report

After all tasks:

  1. Compute domain averages (group by suite, average composite scores)
  2. Compute overall score (average of domain scores — equal domain weighting)
  3. Compute aggregate metrics

Generate three files in agentbench-results/{run-id}/:

results.json — Machine-readable with this structure:

{
  "run_id": "20260222-143022",
  "timestamp": "2026-02-22T14:30:22Z",
  "platform": "openclaw",
  "mode": "sandboxed",
  "profile": "full",
  "suite_version": "1.0.0",
  "scoring_method": "self-scored",
  "overall_score": 74,
  "duration_ms": 754000,
  "task_count": 40,
  "metrics": {
    "total_tool_calls": 187,
    "total_errors": 3,
    "avg_planning_ratio": 0.28,
    "est_tokens": 245000
  },
  "domain_scores": {},
  "tasks": []
}

If --strict was used, set scoring_method to "externally-verified".

Integrity signature: After building results.json (without signature field), compute:

SIG=$(echo -n "$CONTENT" | openssl dgst -sha256 -hmac "agentbench-v1-{run_id}-{suite_version}-integrity" | awk '{print $2}')

Add as "signature" field to results.json.

report.md — Markdown summary: Overall Score, Metrics, Domain Breakdown, Task Details, Top Failures, Recommendations.

report.html — Self-contained HTML dashboard (inline CSS/JS, no external deps):

  • Score display with color (green 80+, yellow 60-79, red <60)
  • Domain cards with score bars
  • Task detail table (sortable, expandable)
  • Top failures section
  • Dark mode via prefers-color-scheme
  • Footer: "Generated by AgentBench v1.0.0 (OpenClaw) | Suite v{suite_version} | Profile: {profile}"

Step 5: Present Results

  1. Display overall score
  2. Show domain breakdown
  3. Tell user where results are saved
  4. Mention they can submit to https://www.agentbench.app/submit

Step 6: Clean Up

Run teardown.sh if present. Remove temp workspace directories unless --keep-workspace was specified.

Listing Tasks (/benchmark-list)

Read all task.yaml files, group by suite, display as:

## file-creation (9 tasks)
  - project-scaffold [easy]
  - project-proposal [medium]
  ...

Viewing Results (/benchmark-results)

List all directories in agentbench-results/, show run ID, date, overall score, profile, and task count for each.

Comparing Runs (/benchmark-compare)

Show two runs side-by-side: overall scores, domain scores, and per-task deltas. Warn if profiles differ.

Key Differences from Claude Code Version

  • No hooks — metrics are self-tracked (timing, tool call counting)
  • No subagents — you execute tasks directly in sequence
  • Same tasks, same scoring, same output format — results are cross-platform comparable
  • Same integrity signature — submissions work on the same leaderboard

Important Notes

  • Be honest in self-evaluation (L2/L3). Inflated scores are obvious on the leaderboard.
  • The objective layers (L0 + L1) carry 55% of the weight — they can't be faked.
  • Token estimates are informational only, not scored.
  • Any link syntax is accepted in skill graph tasks — consistency is what's scored.

Source Transparency

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