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engsathiago

Agent Debugger

by engsathiago · GitHub ↗ · v1.0.0 · MIT-0
cross-platform ✓ Security Clean
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Install in OpenClaw
/install agent-debugger
Description
Debug AI agent issues systematically. Covers tool failures, infinite loops, context overflow, rate limits, and performance bottlenecks. Use when agents misbe...
README (SKILL.md)

Agent Debugger

Systematic debugging for AI agent issues. When your agent misbehaves, this skill helps identify and fix the problem.

Common Agent Problems

1. Infinite Loops

Symptoms:

  • Agent repeats same action
  • Gets stuck in a pattern
  • Never completes task

Diagnosis:

Agent log shows:
- Same tool called 10+ times
- Same output format repeated
- No progress between iterations

Fixes:

Add iteration limit:

{
  "maxIterations": 5,
  "onLimit": "ask_user"
}

Add explicit stop condition:

In your instructions, add:
"If you've tried the same approach 3 times without success, stop and ask the user for guidance."

2. Tool Failures

Symptoms:

  • Tool returns error
  • Tool times out
  • Tool not found

Diagnosis:

Check:
- Tool exists in available_tools
- Parameters match tool schema
- Tool has required permissions
- Rate limits not exceeded

Fixes:

Validate parameters first:

# Before calling tool
required_params = tool.get("required", [])
for param in required_params:
    if param not in args:
        raise ValueError(f"Missing required parameter: {param}")

Add retry logic:

{
  "retries": 3,
  "retryDelay": 1000,
  "retryOn": ["rate_limit", "timeout", "5xx"]
}

3. Context Overflow

Symptoms:

  • "Context length exceeded" error
  • Agent forgets earlier conversation
  • Truncated outputs

Diagnosis:

Check context window:
- Current tokens vs max tokens
- Number of messages in history
- Size of file contents loaded

Fixes:

Use memory efficiently:

- Load only relevant files
- Use offset/limit for large files
- Summarize long conversations
- Clear old context periodically

Compress context:

# Instead of full file
content = read("file.txt", offset=1, limit=100)

# Use memory_search for specific info
results = memory_search("important decision")

4. Rate Limiting

Symptoms:

  • "Rate limit exceeded" error
  • Requests blocked
  • 429 status codes

Diagnosis:

Check:
- API rate limits (requests per minute/hour)
- Token limits (tokens per minute)
- Concurrent request limits
- Time until reset

Fixes:

Add backoff:

import time
import random

def call_with_backoff(func, max_retries=5):
    for attempt in range(max_retries):
        try:
            return func()
        except RateLimitError as e:
            wait = (2 ** attempt) + random.random()
            time.sleep(wait)
    raise Exception("Max retries exceeded")

Queue requests:

from queue import Queue
from threading import Thread

request_queue = Queue()

def process_queue():
    while True:
        task = request_queue.get()
        result = execute(task)
        request_queue.task_done()
        time.sleep(0.1)  # Rate limit: 10 req/s

5. Memory Issues

Symptoms:

  • Agent doesn't remember previous context
  • MEMORY.md not loaded
  • Memory files not found

Diagnosis:

Check:
- MEMORY.md exists
- memory/ directory exists
- Files have correct permissions
- Memory loaded at startup

Fixes:

Verify memory setup:

ls -la ~/.openclaw/workspace/
# Should show:
# MEMORY.md
# memory/

Add memory to instructions:

Before answering anything about prior work, decisions, dates, people, or todos: 
run memory_search on MEMORY.md + memory/*.md

6. Permission Errors

Symptoms:

  • "Permission denied"
  • "Access denied"
  • Tools not working

Diagnosis:

Check:
- User permissions
- File permissions
- Tool policies
- Sandbox restrictions

Fixes:

Check file permissions:

ls -la /path/to/file
chmod 600 ~/.openclaw/workspace/sensitive.json

Review tool policies:

{
  "tools": {
    "exec": {
      "security": "ask",  // or "allowlist" or "full"
      "ask": "on-miss"    // or "always" or "off"
    }
  }
}

7. Performance Issues

Symptoms:

  • Slow responses
  • Timeouts
  • High resource usage

Diagnosis:

Profile the agent:
- Time each tool call
- Count tokens used
- Measure context growth
- Identify bottlenecks

Fixes:

Optimize context:

# Instead of loading entire file
content = read("large_file.txt", limit=50)

# Use targeted search
results = memory_search("specific topic")

Reduce tool calls:

# Bad: Multiple calls
file1 = read("file1.txt")
file2 = read("file2.txt")
file3 = read("file3.txt")

# Good: Parallel or combined
files = read(["file1.txt", "file2.txt", "file3.txt"])

Debugging Workflow

Step 1: Reproduce

1. Document exact steps to trigger issue
2. Note expected vs actual behavior
3. Check if issue is consistent or intermittent
4. Try with minimal example

Step 2: Isolate

1. Disable other skills
2. Reduce context to minimum
3. Simplify task
4. Test each component separately

Step 3: Diagnose

1. Check logs (if available)
2. Review tool outputs
3. Examine context window
4. Verify configuration

Step 4: Fix

1. Apply fix
2. Test fix
3. Document fix
4. Update instructions if needed

Step 5: Prevent

1. Add guardrails
2. Update error handling
3. Add logging
4. Document in memory

Debugging Tools

Check Agent Status

# If you have access to session tools
status = session_status()
print(f"Model: {status['model']}")
print(f"Tokens used: {status['usage']['total_tokens']}")
print(f"Reasoning: {status['reasoning']}")

Clear Context

If agent is stuck:
1. Start new session
2. Load only essential memory
3. Re-approach task fresh

Enable Verbose Mode

{
  "thinking": "verbose",
  "reasoning": "on"
}

This shows internal reasoning, helping identify where logic fails.

Common Error Messages

Error Cause Fix
context_length_exceeded Too much context Compress, summarize, limit
rate_limit_exceeded Too many requests Backoff, queue, wait
tool_not_found Wrong tool name Check spelling, install skill
permission_denied Insufficient access Check permissions, ask user
invalid_parameters Wrong params Validate against schema
timeout Slow response Increase timeout, optimize
memory_not_found No memory files Create MEMORY.md

Best Practices

1. Defensive Coding

# Always check before acting
if not os.path.exists(file):
    return "File not found"

try:
    result = risky_operation()
except ExpectedError:
    handle_error()

2. Progress Tracking

In agent instructions:
"Track your progress. After each major step, note what you've done and what's next."

3. Checkpointing

For long tasks:
- Save progress periodically
- Document current state
- Allow resuming from checkpoint

4. Logging

# Add to critical operations
log(f"Starting operation: {operation}")
log(f"Parameters: {params}")
log(f"Result: {result}")
log(f"Error: {error}")

When to Ask for Help

Ask the user when:

  • Multiple fix attempts failed
  • Issue is intermittent
  • Would require destructive actions
  • Need information only user has
  • Configuration changes needed

Prevention Tips

  1. Set limits early - max iterations, max tokens, max retries
  2. Validate inputs - check parameters before calling tools
  3. Handle errors gracefully - don't crash, report and adapt
  4. Log important events - helps debugging later
  5. Test edge cases - empty inputs, large files, special characters
  6. Monitor resources - tokens, time, memory usage
  7. Document quirks - save lessons in MEMORY.md
Usage Guidance
This is an instruction-only debugging guide and appears coherent for the stated purpose. Before using it: (1) review any file/path operations it suggests (it references ~/.openclaw/workspace/ and memory files) to avoid exposing sensitive data; (2) be cautious about applying chmod or policy changes—apply them manually after review; (3) remember the skill can be invoked autonomously by the agent (platform default) — if you don't want any automation, disable autonomous invocation for this skill. If the package contained code, external downloads, or requested API keys/credentials, that would change the assessment.
Capability Analysis
Type: OpenClaw Skill Name: agent-debugger Version: 1.0.0 The agent-debugger skill bundle consists of a metadata file and a comprehensive instructional guide (SKILL.md) for troubleshooting AI agent issues. The content focuses on legitimate debugging patterns such as implementing retry logic, managing context windows, and handling rate limits, with no evidence of malicious intent, data exfiltration, or unauthorized command execution.
Capability Assessment
Purpose & Capability
Name/description match the content: the SKILL.md provides step-by-step diagnostics and fixes for agent issues and does not require unrelated binaries, services, or credentials.
Instruction Scope
Instructions legitimately instruct inspecting logs, session_status, MEMORY.md, memory/*, and running local commands (ls, chmod, reading files). Those actions are expected for debugging, but the SKILL.md references local paths (~/.openclaw/workspace/) and suggests changing permissions and tool policies even though no config paths were declared — review before allowing any automated writes or permission changes.
Install Mechanism
No install spec and no code files — instruction-only skill (lowest install risk).
Credentials
The skill declares no environment variables, credentials, or config path requirements. It also does not request unrelated secrets; recommended caution when following instructions that read local files.
Persistence & Privilege
always is false and the skill doesn't request persistent privileges or claim it will modify other skills or system-wide settings. Snippets show recommended policy edits, but nothing in the package forces those changes.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install agent-debugger
  3. After installation, invoke the skill by name or use /agent-debugger
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v1.0.0
Initial release. Systematic debugging for AI agents. Covers infinite loops, tool failures, context overflow, rate limits, memory issues, and performance bottlenecks. Includes diagnosis, fixes, and prevention tips.
Metadata
Slug agent-debugger
Version 1.0.0
License MIT-0
All-time Installs 0
Active Installs 0
Total Versions 1
Frequently Asked Questions

What is Agent Debugger?

Debug AI agent issues systematically. Covers tool failures, infinite loops, context overflow, rate limits, and performance bottlenecks. Use when agents misbe... It is an AI Agent Skill for Claude Code / OpenClaw, with 199 downloads so far.

How do I install Agent Debugger?

Run "/install agent-debugger" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is Agent Debugger free?

Yes, Agent Debugger is completely free, licensed under MIT-0. You can download, install and use it at no cost.

Which platforms does Agent Debugger support?

Agent Debugger is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).

Who created Agent Debugger?

It is built and maintained by engsathiago (@engsathiago); the current version is v1.0.0.

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