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Integration · Observe

Observe for Google ADK agents

Capture every event flowing through Google ADK's own Event Loop — the same message format the Runner uses between your agents, the LLM, and tools — as structured trace data.

TL;DR

Prefactor observes your Google ADK agents in real time — every LLM call, tool invocation, and custom span captured as structured trace data the moment it happens, with cost attributed per call and a tamper-evident audit trail of every run.

Observe
pillar
TS + Py
official SDKs
Spans
LLM · tools · agents
Tokens
usage captured

How to add observe to Google ADK

1

Install the SDK

Add prefactor-core to your environment.

2

Register & create spans

Register the agent instance and record spans around your Google ADK run.

3

Spans flow to Prefactor

Structured trace data lands in Prefactor as your agent runs.

# pip install prefactor-core
import os
from prefactor_core import PrefactorCoreClient, PrefactorCoreConfig
from prefactor_http import HttpClientConfig

config = PrefactorCoreConfig(
    http_config=HttpClientConfig(
        api_url="https://app.prefactorai.com",
        api_token=os.environ["PREFACTOR_API_TOKEN"],
    )
)

client = PrefactorCoreClient(config)
await client.initialize()

# then instrument your Google ADK run with spans — see docs.prefactor.ai

Shown with the Prefactor SDK — a first-class, working integration today.

How the Google ADK integration actually works

What Prefactor captures for Google ADK agents

LLM calls

Model, prompt, completion, and token usage recorded for every call — not batched, not sampled after the fact.

Tool invocations

Arguments, results, and errors for each tool the agent calls.

Agent spans

The run captured as nested spans you can inspect step by step — plus custom spans for whatever's specific to your own domain.

Cost per call

Token usage rolled up into cost, attributed to the agent, team, and task that spent it — the same span data, not a separate metering system.

Immutable audit trail

Every span and run written once, tamper-evident, full-text searchable, and exportable for compliance review.

Trace anything — not just LLM calls

The SDK captures LLM, tool, and agent spans automatically. With withSpan you wrap any operation in your own span type — an API call, a database query, a quality check, a business action — each with its own payload and schema. It all flows into the same Observe, Evaluate, and cost views.

research_competitorquality_checkpricing_lookuprefund_decisiondoc_retrieval …anything you define
import { withSpan } from "@prefactor/core";

// Wrap ANY operation in a span you define — an API call, a quality
// check, a business action — with its own spanType, inputs and schema
await withSpan(
  {
    name: "research competitor",
    spanType: "research_competitor",
    inputs: { competitor },
  },
  async () => {
    const results = await search(competitor); // your tool / API calls
    return summarize(results);                // captured as one span
  },
);

Nest spans to capture business-level actions, and start with permissive schemas you tighten over time. Instrumentation strategy →

An example run, span by span

Illustrative — a single Google ADK run as nested spans.

Trace · Google ADK run
1.84s6 spans1,210 tokensok
invoke_agent 1840
llm: plan 440
tool: search_kb 330
retriever: vector_search 210
llm: synthesize 700
tool: send_reply 320
agentllm calltool callretriever

Illustrative example.

Manual logging vs DIY vs Prefactor

CapabilityManualDIY OpenTelemetryPrefactor
LLM / tool / agent spansHand-rolled✓ build it✓ via the SDK
Token usage captured per callBuild it
Configurable capture & samplingPartial
Hosted Admin UI (agents, instances)
Risk profiles & audit trail

Google ADK observe — FAQ

What does Prefactor capture for Google ADK?+

LLM calls, tool invocations, and agent spans — with inputs, outputs, and token usage — sent to the Prefactor API as structured trace data the moment they happen, not reconstructed from a log afterward.

Is Prefactor in my Google ADK request path?+

No — the SDK instruments in-process and sends spans asynchronously. Your requests go straight to your model provider; Prefactor observes what happened alongside it.

How does cost tracking work for Google ADK?+

Cost is derived from the token usage captured on each LLM span and rolled up by agent, team, and task — a view over the same trace data, not a separate metering system, so a cost spike traces back to the run that caused it.

Can audit records for Google ADK runs be edited or deleted?+

No. Instances and spans are immutable once written, giving reviewers a real-time, queryable record of exactly what every agent did — the evidence a compliance review or an incident investigation actually needs.

Do I need a dedicated package for Google ADK?+

You can instrument Google ADK today with the framework-agnostic prefactor-core SDK; a dedicated package can be added on request.

What does Prefactor capture from Google ADK?+

Prefactor records agent-tree steps, tool invocations and LLM calls as structured, timestamped spans — so every Google ADK run is captured as trace data you can reconstruct, search and export end to end.

Does Prefactor add latency or change how Google ADK runs?+

No. Observability capture is designed to stay off your agent's critical path, so it doesn't alter your Google ADK logic or your users' responses. The only part that acts inline is the optional runtime guardrails you enable per agent — by design, so a high-risk or low-confidence action can be held for human approval before it executes.

Can I evaluate agents built with Google ADK and catch regressions?+

Yes. Once runs are captured, eval suites score quality and groundedness on real traffic, drift detection flags behaviour changes after deployment, and versioned eval history catches regressions before they ship — the observe → evaluate → improve loop applied to your Google ADK agents.

Keep going

See it on your Google ADK agents

Book a 15-minute setup and our team gets you observe in production.