- 1
Install the PostHog SDK
RequiredSetting up analytics starts with installing the PostHog SDK for your language. LLM analytics works best with our Python and Node SDKs.
pip install posthog - 2
Install LangChain and OpenAI SDKs
RequiredInstall the LangChain and OpenAI Python SDKs:
pip install langchain openai langchain-openaiProxy noteThese SDKs do not proxy your calls. They only fire off an async call to PostHog in the background to send the data.
You can also use LLM analytics with other SDKs or our API, but you will need to capture the data in the right format. See the schema in the manual capture section for more details.
- 3
Initialize PostHog and LangChain
RequiredInitialize PostHog with your project API key and host from your project settings, then pass it to the LangChain
CallbackHandler
wrapper.Optionally, you can provide a user distinct ID, trace ID, PostHog properties, groups, and privacy mode.
from posthog.ai.langchain import CallbackHandlerfrom langchain_openai import ChatOpenAIfrom langchain_core.prompts import ChatPromptTemplatefrom posthog import Posthogposthog = Posthog("<ph_project_api_key>",host="https://us.i.posthog.com")callback_handler = CallbackHandler(client=posthog, # This is an optional parameter. If it is not provided, a default client will be used.distinct_id="user_123", # optionaltrace_id="trace_456", # optionalproperties={"conversation_id": "abc123"} # optionalgroups={"company": "company_id_in_your_db"} # optionalprivacy_mode=False # optional)Note: If you want to capture LLM events anonymously, don't pass a distinct ID to the
CallbackHandler
. See our docs on anonymous vs identified events to learn more. - 4
Call LangChain
RequiredWhen you invoke your chain, pass the
callback_handler
in theconfig
as part of yourcallbacks
:prompt = ChatPromptTemplate.from_messages([("system", "You are a helpful assistant."),("user", "{input}")])model = ChatOpenAI(openai_api_key="your_openai_api_key")chain = prompt | model# Execute the chain with the callback handlerresponse = chain.invoke({"input": "Tell me a joke about programming"},config={"callbacks": [callback_handler]})print(response.content)PostHog automatically captures an
$ai_generation
event along with these properties:Property Description $ai_model
The specific model, like gpt-5-mini
orclaude-4-sonnet
$ai_latency
The latency of the LLM call in seconds $ai_tools
Tools and functions available to the LLM $ai_input
List of messages sent to the LLM $ai_input_tokens
The number of tokens in the input (often found in response.usage) $ai_output_choices
List of response choices from the LLM $ai_output_tokens
The number of tokens in the output (often found in response.usage
)$ai_total_cost_usd
The total cost in USD (input + output) ... See full list of properties It also automatically creates a trace hierarchy based on how LangChain components are nested.
LangChain LLM analytics installation
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Vercel AI LLM analytics installation
Setting up analytics starts with installing the PostHog SDK. Install the Vercel AI SDK: Initialize PostHog with your project API key and host from your project settings , then pass the Vercel AI OpenAI client and the PostHog client to the withTracing wrapper. You can enrich LLM events with additional data by passing parameters such as the trace ID, distinct ID, custom properties, groups, and privacy mode options. Now, when you use the Vercel AI SDK to call LLMs, PostHog automatically…