| name | adk-debug |
| description | Use when debugging ADK agents, inspecting sessions, testing agent behavior, troubleshooting tool calls, event flow issues, or diagnosing LLM/model problems. |
Debugging ADK Agents
Two debugging modes: adk web (browser UI + API) and adk run (CLI).
[!NOTE]
Preference: For most development and debugging tasks, adk run (CLI) is preferred as it is faster and more convenient. Within adk run, query mode is preferred over interactive mode because it requires less human intervention. However, adk web is still required for UI-specific issues, session management visualization, or debugging the API server itself.
Mode 1: adk web (Browser UI + REST API)
Best for: visual inspection, session management, multi-turn testing.
Dev server workflow
Before starting a server, ask the user:
- Is there already a running
adk web server? If yes, use it
(check with curl -s http://localhost:8000/health).
- If not, start one. Use
run_in_background so it doesn't
block. Remember to shut it down when debugging is done.
curl -s http://localhost:8000/health
adk web path/to/agents_dir
adk web -v path/to/agents_dir
adk web --reload_agents path/to/agents_dir
[!TIP]
Coding Agent Friendly Setup: To allow a coding agent to read the server logs, recommend the user to start the server and redirect output to a file in a location the agent can read (e.g., the conversation's artifact directory or a shared workspace folder):
adk web -v path/to/agents_dir 2>&1 | tee path/to/agent_readable_log.log
This ensures both the user and the agent can inspect the full debug logs.
Web UI: http://localhost:8000/dev-ui/
Session inspection via curl
curl -s http://localhost:8000/apps/{app_name}/users/{user_id}/sessions | python3 -m json.tool
curl -s http://localhost:8000/apps/{app_name}/users/{user_id}/sessions/{session_id} | python3 -m json.tool
Do NOT delete sessions after debugging — the user may want to
inspect them in the web UI.
Summarize events
Fetch the session JSON and write a Python script to summarize
it. Do NOT use hardcoded inline scripts — the JSON schema may
change. Instead, fetch the raw JSON first:
curl -s http://localhost:8000/apps/{app_name}/users/{user_id}/sessions/{session_id} | python3 -m json.tool
Then write a script based on the actual structure you see.
Key fields to look for in each event: author, branch,
content.parts (text, functionCall, functionResponse),
output, actions (transferToAgent, requestTask, finishTask),
nodeInfo.path.
Send test messages via curl
SESSION=$(curl -s -X POST http://localhost:8000/apps/{app_name}/users/test/sessions \
-H "Content-Type: application/json" -d '{}' | python3 -c "import sys,json; print(json.load(sys.stdin)['id'])")
curl -N -X POST http://localhost:8000/run_sse \
-H "Content-Type: application/json" \
-d "{\"app_name\":\"{app_name}\",\"user_id\":\"test\",\"session_id\":\"$SESSION\",
\"new_message\":{\"role\":\"user\",\"parts\":[{\"text\":\"your message here\"}]},
\"streaming\":false}"
Debug endpoints (traces)
curl -s http://localhost:8000/debug/trace/{event_id} | python3 -m json.tool
curl -s http://localhost:8000/debug/trace/session/{session_id} | python3 -m json.tool
curl -s http://localhost:8000/health
Extract LLM content history
Fetch trace data and inspect the call_llm spans. The LLM
request/response are in span attributes:
curl -s http://localhost:8000/debug/trace/session/{session_id} | python3 -m json.tool
Look for spans with name: "call_llm" and inspect their
attributes.gcp.vertex.agent.llm_request (JSON string of the
full request including contents, config, model).
Key span attributes
| Attribute | Description |
|---|
gcp.vertex.agent.llm_request | Full LLM request JSON (contents, config, model) |
gcp.vertex.agent.llm_response | Full LLM response JSON |
gcp.vertex.agent.event_id | Event ID — correlate with session events |
gen_ai.request.model | Model name |
gen_ai.usage.input_tokens | Input token count |
gen_ai.usage.output_tokens | Output token count |
gen_ai.response.finish_reasons | Stop reason |
Mode 2: adk run (CLI)
Best for: quick testing, scripting, CI/CD, headless debugging.
Run interactively
adk run path/to/my_agent
adk run -v path/to/my_agent
Run with query (automated)
adk run path/to/my_agent "query"
adk run --jsonl path/to/my_agent "query"
When to use automated query mode
- Fast & Lightweight: Run tests quickly without starting the
adk web dev server.
- Easy Automation: Perfect for CI/CD pipelines and regression scripts.
- Highly Composable: You can pipe the
--jsonl output to standard tools like jq, grep, or diff.
- Parallel Execution: Each run is an isolated process. You can run multiple tests concurrently without port conflicts.
- State Isolation: Use
--in_memory for fast, side-effect-free testing (no database updates).
- Multi-Turn Support: Remember to set a session ID if you need to maintain conversation state across turns.
[!TIP]
Always read the sample's README.md first to understand expected inputs and behaviors!
Unit Tests vs. Sample Agents (When to use which)
Choosing the right testing strategy is crucial for efficiency and coverage:
[!IMPORTANT]
AI Assistant Reminder: If you create a temporary sample agent for testing, you MUST delete it after verification is complete, unless the user explicitly asks to keep it.
Exit Codes & Details
- Exit Code 0: Success.
- Exit Code 1: Error (e.g., API key missing, agent load failure).
- Exit Code 2: Paused (Workflow is waiting for human input/HITL).
For more options and flags, run:
adk run --help
Event printing utility
from google.adk.utils._debug_output import print_event
print_event(event, verbose=False)
print_event(event, verbose=True)
Location: src/google/adk/utils/_debug_output.py
Programmatic debugging
from google.adk import Agent, Runner
from google.adk.sessions import InMemorySessionService
agent = Agent(name="test", model="gemini-2.5-flash", instruction="...")
runner = Runner(app_name="test", agent=agent, session_service=InMemorySessionService())
session = runner.session_service.create_session_sync(app_name="test", user_id="u")
for event in runner.run(user_id="u", session_id=session.id, new_message="hello"):
print(f"{event.author}: {event.content}")
if event.actions.transfer_to_agent:
print(f" -> transfer to {event.actions.transfer_to_agent}")
if event.output:
print(f" -> output: {event.output}")
Logging
Shared across both modes.
Set log level with --log_level (DEBUG, INFO, WARNING, ERROR, CRITICAL) or -v for DEBUG.
Logs write to /tmp/agents_log/. Tail latest: tail -F /tmp/agents_log/agent.latest.log
Logger name: google_adk. Setup: src/google/adk/cli/utils/logs.py
| Env Variable | Effect |
|---|
ADK_CAPTURE_MESSAGE_CONTENT_IN_SPANS | Include prompt/response in traces (default: true) |
OTEL_INSTRUMENTATION_GENAI_CAPTURE_MESSAGE_CONTENT | Enable prompt/response in OTEL spans |
GOOGLE_CLOUD_PROJECT | Required for --trace_to_cloud |
Common Issues
1. Agent outputs raw JSON instead of calling tools
Symptom: Agent with output_schema dumps JSON text instead of calling tools.
Cause: output_schema sets response_schema on the LLM config, activating controlled generation (JSON-only mode).
Check: Look for response_mime_type: "application/json" in the LLM request.
Location: src/google/adk/flows/llm_flows/basic.py
2. Events missing from session / not visible to plugins
Symptom: Events from sub-agents don't appear in plugin callbacks or runner event stream.
Cause: Direct append_event calls inside components bypass the runner's event loop.
Check: Only the runner (runners.py) should call append_event. Components should yield events.
3. NameError: name 'X' is not defined at runtime
Symptom: {"error": "name 'SomeClass' is not defined"}
Cause: Class imported under TYPE_CHECKING but used at runtime (e.g., isinstance()).
Fix: Move import outside TYPE_CHECKING or use a local import.
4. Sub-agent doesn't have context from parent conversation
Symptom: Sub-agent only sees its own input, not the parent's history.
Cause: Branch isolation — sub-agents on a branch only see events on that branch.
Fix: Write the sub-agent's description to prompt the parent to include context in delegation input.
5. Agent validation errors at startup
Symptom: ValueError on agent construction.
Common causes:
"All tools must be set via LlmAgent.tools." — Don't pass tools via generate_content_config
"System instruction must be set via LlmAgent.instruction." — Don't set via generate_content_config
"Response schema must be set via LlmAgent.output_schema." — Don't set via generate_content_config
Location: src/google/adk/agents/llm_agent.py — validate_generate_content_config
6. LLM calls exceeding limit
Symptom: LlmCallsLimitExceededError: Max number of llm calls limit of N exceeded
Cause: run_config.max_llm_calls limit reached.
Fix: Increase max_llm_calls in RunConfig, or investigate why the agent is looping.
Location: src/google/adk/agents/invocation_context.py
7. Tool errors silently swallowed
Symptom: Tool call fails but agent continues without expected result.
Cause: Errors are caught and returned as function response text. Set on_tool_error_callback to customize.
Check: Look for error text in function response events.
8. Agent not loading / not discovered
Symptom: adk web doesn't list the agent, or returns 404.
Cause: Agent directory must follow convention:
my_agent/
__init__.py # MUST contain: from . import agent
agent.py # MUST define: root_agent = Agent(...) OR app = App(...)
9. Sync tool blocking the event loop
Symptom: Agent hangs or becomes very slow.
Cause: Sync tools run in a thread pool (max 4 workers). All workers busy → new tool calls block.
Fix: Make tools async if they do I/O.
LLM Finish Reasons
STOP — normal completion
MAX_TOKENS — output truncated (increase max_output_tokens)
SAFETY — blocked by safety filters
RECITATION — blocked for recitation
Event Flow Architecture
User message
-> Runner.run_async()
-> Runner._exec_with_plugin() # persists events, runs plugins
-> agent.run_async() # yields events
-> LlmAgent._run_async_impl()
-> BaseLlmFlow.run_async() # Execution flow
-> _AutoFlow or _SingleFlow # Flow implementations
-> call_llm # LLM request + response
-> execute_tools # tool dispatch (functions.py)
Callback Chain
Before model call: PluginManager run_before_model_callback() → agent canonical_before_model_callbacks
After model call: PluginManager run_after_model_callback() → agent canonical_after_model_callbacks
Before/after tool call: PluginManager run_before_tool_callback() / run_after_tool_callback() → agent callbacks
Key Files for Debugging
| Area | File |
|---|
| Runner event loop | src/google/adk/runners.py |
| LLM request building | src/google/adk/flows/llm_flows/basic.py |
| Tool dispatch | src/google/adk/flows/llm_flows/functions.py |
| Multi-agent orchestration | src/google/adk/workflow/ |
| Content/context building | src/google/adk/flows/llm_flows/contents.py |
| Task support | src/google/adk/agents/llm/task/ |
| Agent config + validation | src/google/adk/agents/llm_agent.py |
| Event model | src/google/adk/events/event.py |
| Session services | src/google/adk/sessions/ |
| Invocation context | src/google/adk/agents/invocation_context.py |
| Web server + debug endpoints | src/google/adk/cli/adk_web_server.py |
| Debug output printer | src/google/adk/utils/_debug_output.py |
Debugging Checklist
- Start with logs —
-v flag, check /tmp/agents_log/agent.latest.log
- Inspect the session — curl endpoints (
adk web) or print events (adk run)
- Check event actions —
transfer_to_agent, request_task, finish_task, escalate
- Check event.output — single_turn and task agents set output here
- Check traces —
/debug/trace/session/{id} for model/token usage
- Verify agent structure —
__init__.py imports, root_agent or app defined
- Check tool responses — look for error text in function response events
- Check LLM finish reason —
STOP, MAX_TOKENS, SAFETY
- Test in isolation — create a minimal agent with just the problem tool/config