Instrument an existing codebase with LaunchDarkly config tracking. Walks the four-tier ladder (managed runner → provider package → custom extractor + trackMetricsOf → raw manual) and picks the lowest-ceremony option that still captures duration, tokens, and success/error.
You're using a skill that wires LaunchDarkly agent metrics around an existing provider call. Your job is to audit what's already there, pick the right tier from the ladder below, and implement it with the least ceremony that still captures the metrics the Monitoring tab needs (duration, input/output tokens, success/error, plus TTFT when streaming).
The single most important thing to get right: default to the highest tier that fits the shape of the call. Going lower ("just write the manual tracker calls") looks flexible but costs you drift, missed metrics, and legacy patterns the SDKs have moved past.
The four-tier ladder
This is the order the official SDK READMEs (Python core, Node core, and every provider package) recommend. Walk from the top and stop at the first tier that fits:
Tier
Pattern
Use when
Tracks automatically
1 — Managed runner
Python:
ai_client.create_model(...)
returning a
ManagedModel
, then
await model.run(...)
. <br>Node:
aiClient.createModel(...)
returning a
ManagedModel
, then
await model.run(...)
.
The call is conversational (chat history, turn-based). This is what the provider READMEs lead with.
Duration, tokens, success/error — all of it, zero tracker calls.
in Python. The extractor is the only thing that changes per provider: import
getAIMetricsFromResponse
from the matching
@launchdarkly/server-sdk-ai-<provider>
(or
ldai_<provider>
) package, or write a small custom function that returns
LDAIMetrics
. There are no provider-specific tracker methods.
Workflow
1. Explore the existing call site
Before picking a tier, find the provider call and answer these questions:
Shape? Is it a chat loop (history + turn-based), a one-shot completion, an agent step, or something else? → drives Tier 1 vs 2.
Framework? Raw provider SDK? LangChain / LangGraph? Vercel AI SDK? CrewAI? Strands? → drives which Tier-2 provider package (if any) applies.
Provider? OpenAI, Anthropic, Bedrock, Gemini, Azure, custom HTTP? → cross-reference with the package availability matrix below.
Streaming? If yes, you'll need TTFT tracking, which means Tier 4 for the TTFT part even if the rest is Tier 2.
Language? Python or Node? Provider-package coverage differs between them.
Already using a config? If not, route to
configs-create
first — tracking requires a tracker, which is obtained by calling
create_tracker()
/
createTracker()
on the config object returned by
completion_config()
/
completionConfig()
/
createModel()
.
On the current SDK API? If the call site uses
aiclient.config(...)
/
aiClient.config(...)
or constructs an
AIConfig(...)
/
LDAIConfig
default, it's on the pre-0.20 surface. Migrate it as part of this work before adding tracking:
aiclient.config(...)
→
aiclient.completion_config(...)
for one-shot/chat or
aiclient.agent_config(...)
for agent mode (mirror the call signature). Node is the same with camelCase.
AIConfig(...)
default →
AICompletionConfigDefault(...)
or
AIAgentConfigDefault(...)
(Node:
LDAICompletionConfigDefault
/
LDAIAgentConfigDefault
).
AIConfig
is the base class the SDK returns; it isn't a valid default-value constructor — the typed
*Default
variants are.
If the result was being tuple-unpacked (
config, tracker = aiclient.config(...)
), drop the unpack — the new methods return a single config object. Obtain the tracker via
config.create_tracker()
/
aiConfig.createTracker()
.
For deeper rewrites (call sites with hardcoded model/prompt as well), hand off to
migrate
instead of doing the full migration here.
2. Look up your Tier-2 option
Use this matrix to decide whether Tier 2 (provider package) is available for your situation. If it's not, drop to Tier 3 (custom extractor). If the shape is chat-loop, go to Tier 1 first regardless of what's in this matrix.
Framework / provider
Python provider package
Node provider package
Reference
OpenAI (direct SDK)
launchdarkly-server-sdk-ai-openai
@launchdarkly/server-sdk-ai-openai
openai-tracking.md
LangChain / LangGraph
launchdarkly-server-sdk-ai-langchain
@launchdarkly/server-sdk-ai-langchain
langchain-tracking.md
Vercel AI SDK
—
@launchdarkly/server-sdk-ai-vercel
(use the Vercel provider docs)
AWS Bedrock (Converse or InvokeModel)
— (use LangChain-aws or custom extractor)
— (use LangChain-aws or custom extractor)
bedrock-tracking.md
Anthropic direct SDK
—
—
anthropic-tracking.md
Gemini / Google GenAI
—
—
gemini-tracking.md
Strands Agents
— (Tier 3 custom extractor)
— (Tier 3 custom extractor)
strands-tracking.md
Cohere, Mistral, custom HTTP
—
—
Tier 3 custom extractor
Any provider, streaming + TTFT
— (Tier 4 only)
trackStreamMetricsOf
(no TTFT) + manual TTFT
streaming-tracking.md
3. Implement from the matching reference
Once you know the tier and the provider, open the reference file and follow the pattern. The references are written so Tier 1 is always the first example, Tier 2/3 next, and Tier 4 last. Stop at the first tier that matches the app's shape.
Guardrails that apply to every tier:
Always check
config.enabled
before making the tracked call. A disabled config means the user has flagged the feature off — you should short-circuit to whatever fallback the app uses (cached response, error, degraded path) rather than making the provider call at all.
Wrap the existing call, don't rewrite it. Tier 2 and Tier 3 are designed to slot around an unmodified provider call. If you find yourself rewriting the call to fit the tracker, you're at the wrong tier — drop down one.
Errors are handled inside
trackMetricsOf
. The wrapper catches exceptions, records
trackError()
internally, and re-raises — do not add
except: tracker.trackError()
on top, it's a noop that also trips the at-most-once guard. Tier 1 handles both paths automatically. At Tier 4 (manual, streaming,
track_duration_of
) the caller does own the error-tracking call.
Always flush before close. Call
ldClient.flush()
(Python:
ldclient.get().flush()
; Node:
await ldClient.flush()
) before closing the client. Trailing events are at risk of being lost otherwise — in short-lived scripts and long-running services alike. In Node,
ldClient.close()
returns a Promise; await it.
4. Verify
Confirm the Monitoring tab fills in:
Run one real request through the instrumented path.
Open the config in LaunchDarkly → Monitoring tab. Duration, token counts, and generation counts should appear within 1–2 minutes.
Force an error (bad API key, zero
max_tokens
, whatever) and confirm the error count increments.
If streaming: verify TTFT appears. If it doesn't, you probably wrapped the stream creation with
trackMetricsOf
but didn't add the manual
trackTimeToFirstToken
call — see streaming-tracking.md.
Quick reference: tracker methods
Obtain a tracker via the factory on the config object:
tracker = config.create_tracker()
(Python) or
const tracker = aiConfig.createTracker()
(Node). Call the factory once per execution and reuse the returned
tracker
for every call — each factory invocation mints a new
runId
that tags every tracking event emitted by that tracker so events from a single execution can be correlated together (via exported events / downstream systems). The Monitoring tab aggregates events rather than grouping them by run today — the
runId
is useful when events are exported or queried outside the UI, and is the identifier the SDK's at-most-once guards are keyed on. The methods below are the raw API surface — most of the time you should not call them individually; use
trackMetricsOf
or a Tier-1 managed runner. The list is here so you can recognize the methods in existing code and reach for the right one when you genuinely need Tier 4.
Method (Python ↔ Node)
Tier
What it does
track_metrics_of(extractor, fn)
/
trackMetricsOf(extractor, fn)
2 / 3
Wraps a provider call, captures duration + success/error, calls your extractor for tokens. This is the default generic tracker.
track_metrics_of_async(extractor, fn)
(Python)
2 / 3
Async variant of the above.
trackStreamMetricsOf(extractor, streamFn)
(Node only)
2 / 3
Streaming variant. Captures per-chunk usage when the extractor handles chunks. Does not auto-capture TTFT.
track_duration(ms)
/
trackDuration(ms)
4
Record latency in milliseconds.
track_duration_of(fn)
/
trackDurationOf(fn)
4
Wraps a callable and records duration automatically. Does not capture tokens or success — pair with explicit calls.
track_tokens(TokenUsage)
/
trackTokens({input, output, total})
4
Record token usage.
track_time_to_first_token(ms)
/
trackTimeToFirstToken(ms)
4
Record TTFT for streaming responses.
track_success()
/
trackSuccess()
4
Mark the generation as successful. Required for the Monitoring tab to count it.
track_error()
/
trackError()
4
Mark the generation as failed. Do not also call
trackSuccess()
in the same request.
track_feedback({kind})
/
trackFeedback({kind})
any
Record thumbs-up / thumbs-down from a feedback UI. Independent of the success/error path.
track_tool_call(name)
/
trackToolCall(name)
any
Record a single tool invocation by name. Available on both SDKs.
track_tool_calls([names])
/
trackToolCalls([names])
any
Batch variant — record a list of tool invocations in one call.
track_judge_result(result)
/
trackJudgeResult(result)
any
Record a programmatic judge evaluation.
result.sampled
indicates whether evaluation ran.
Related skills
configs-create
— prerequisite if the app doesn't have a config yet
custom-metrics
— business metrics (conversion, resolution, retention) layered on top of the agent metrics this skill captures
online-evals
— automatic quality scoring (LLM-as-judge) on sampled live requests; complementary to the metrics here
migrate
— Stage 4 of the hardcoded-to-AgentControl migration delegates to this skill