Skip to main content

Agiflow Software Development Kit (SDK) for Python, support LLM APIs and Frameworks tracing with Opentelemetry and more.

Project description

agiflow-sdk Documentation

Overview

Welcome to the agiflow-sdk documentation. This guide will help you integrate with the Agiflow Python SDK quickly and easily. The SDK provides automatic and manual tracing capabilities for LLM apis and frameworks, as well as helpers to interact with backend APIs.

Installation

You can install the agiflow-sdk using either pip or poetry.

pip install agiflow-sdk

SDK Overview

The agiflow-sdk offers the following functionalities:

  • Automatic tracing with Open Telemetry.
  • Decorators for manual tracing.
  • Helpers to interact with backend APIs.

Setting Up the SDK

Initialize the agiflow-sdk client at the entry point of your application:

from agiflow import Agiflow

Agiflow.init(
  app_name="<YOUR_APP_NAME>",
  api_key="<AGIFLOW_API_KEY>" # Or set AGIFLOW_API_KEY environment variable
)

You can find the API key on the Environment > Settings > API Key page on the Agiflow Dashboard.

Once set up, if you run your backend application with supported LLM frameworks, traces should be logged on the Agiflow dashboard under Environment > Logs.

Environment Variables

  • AGIFLOW_BASE_URL: Set this to your self-hosted endpoint if using Agiflow with Docker Compose for local development or self-hosting.
  • AGIFLOW_API_KEY: Switch API keys per environment.

NOTE: Agiflow uses a separate global Open Telemetry trace provider to ensure all LLM traces are sent to support user feedback. To use the default Open Telemetry global trace provider, set the AGIFLOW_OTEL_PYTHON_TRACER_PROVIDER_GLOBAL environment variable to true.

Tracing

Traces are automatically logged when you set up Agiflow at the top of your application. By default, these traces are limited to backend applications and are not synchronized with frontend tracking.

Libraries with Automatic Tracing

  • Anthropic
  • Chromadb
  • Cohere
  • CrewAI
  • GROQ
  • Langchain
  • Langgraph
  • Llamaindex
  • Openai
  • Pinecone
  • Qdrant
  • Weaviate

Trace Association

Backend Only

If you haven't integrated with the frontend SDK, you can still associate Open Telemetry trace with user and session using the following method:

from agiflow import Agiflow

Agiflow.set_association_properties({
  "user_id": "<USER_ID>", # Optional
  "session_id": "<SESSION_ID>", # Optional
  "task_name": "<TASK_NAME>", # Optional, to label feedback task
});

Backend with @agiflow/js-sdk installed on frontend

If you have set up frontend tracing for Web, your backend should have access to x-agiflow-trace-id in the HTTP headers.

Use our header to associate frontend tracing with Open Telemetry tracing as follows:

from agiflow import Agiflow
from agiflow.opentelemetry import extract_association_properties_from_http_headers

Agiflow.set_association_properties(extract_association_properties_from_http_headers(request.headers))

Explanation of set_association_properties

  • This helper enhances the trace context by adding association properties metadata to the traces.
  • With manual tracing on the frontend, this will add action_id to the trace context.
  • With automatic tracing on the frontend, this will add action_id, task_id, and session_id to the trace context.

Trace Annotation and Grouping

You might want to log additional information that is important to your AI workflow or for tools that are not supported by Agiflow yet. In these cases, use manual tracing to add this information. These decorators support the following arguments:

  • name: Span label.
  • method_name: Method of the class to be decorated.
  • description: Add extra comments to make it easier for others to review the workflow and provide feedback.
  • prompt_settings: Associate LLM calls with a specific version of the prompt.
  • input_serializer: Format the input to make it easier for the end user to read.
  • output_serializer: Format the output to make it easier for the end user to read.
  • context_parser: Restore trace context from distributed messages.

Workflow

Trace the workflow with a unique name and extra information using the following methods:

from agiflow.opentelemetry import aworkflow

@aworkflow(name="<WORKFLOW_NAME>", method_name="bar")
class Foo:
    async def bar(self):
        ...

Task

Trace the task with a unique name and extra information using the following methods:

from agiflow.opentelemetry import atask

@atask(name="<TASK_NAME>", method_name="bar")
class Foo:
    async def bar(self):
        ...

Agent

Trace the agent with a unique name and extra information using the following methods:

from agiflow.opentelemetry import aagent

@aagent(name="<AGENT_NAME>", method_name="bar")
class Foo:
    async def bar(self):
        ...

Tool

Trace the tool with a unique name and extra information using the following methods:

from agiflow.opentelemetry import atool

@atool(name="<TOOL_NAME>", method_name="bar")
class Foo:
    async def bar(self):
        ...

Distributed Tracing

If you are using an event-driven architecture, additional steps are required to enable trace flow throughout the workflow.

Producer Side

Extract the current trace context and pass it to the message queue system as follows:

from agiflow.opentelemetry import get_carrier_from_trace_context

carrier = get_carrier_from_trace_context()
# Pass carrier information to the message queue
kafkaClient.produce({
  ...
  "otlp_carrier": carrier,
})

Consumer Side

Retrieve the carrier information from the message and restore the context from the carrier information:

from agiflow.opentelemetry import get_trace_context_from_carrier, get_tracer

carrier = message.get("otlp_carrier")
ctx = get_trace_context_from_carrier(carrier)
with get_tracer() as tracer:
    with tracer.start_as_current_span('job', ctx):
        ...

The children span uses the same context and parent span, so you don't need to pass context around. Traces from the consumer will use the same context as the producer.

For HTTP microservice architecture, OpenTelemetry will automatically pass the carrier via traceparent headers and restore the context.

Span Update

In an event-driven architecture, the parent span may not have the output on completion. This can make it difficult for reviewers to understand the workflow context. To address this, associate the span_id with your unique identifier (e.g., database row ID) using this method:

agiflow.associate_trace(
    id, # Unique ID linked to trace_id
    span_id # Unique ID linked to span_id
);

Then update the span using your database ID:

agiflow.update_span(
    id, # Unique ID linked to span_id
    {
    "output": "...',
    }
);

User Feedback

Agiflow supports adding user feedback via the backend API. Here is how to do it:

Inline Feedback

To provide feedback on past actions, you need to provide extra information, such as

message Id, to correctly associate user feedback with the right action.

agiflow.associate_trace(
  id, # Unique ID linked to trace_id
  span_id # Unique ID linked to span_id
);

Later, when a user provides feedback, you can simply do:

agiflow.report_score(
  id, # action_id or unique ID
  0.6 # Normalized score
);

Feedback Widget

You can asynchronously invoke the feedback widget on the frontend to collect user feedback.

Contribution

This comprehensive documentation provides an overview of setting up and using the agiflow-sdk, including installation, setup, tracing, and user feedback. If you would like to add additional libraries support, please see contribution guideline, we would love to have your support. Thanks!

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

agiflow_sdk-0.0.23.tar.gz (241.7 kB view details)

Uploaded Source

Built Distribution

agiflow_sdk-0.0.23-py3-none-any.whl (140.4 kB view details)

Uploaded Python 3

File details

Details for the file agiflow_sdk-0.0.23.tar.gz.

File metadata

  • Download URL: agiflow_sdk-0.0.23.tar.gz
  • Upload date:
  • Size: 241.7 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: poetry/1.8.2 CPython/3.11.6 Darwin/22.6.0

File hashes

Hashes for agiflow_sdk-0.0.23.tar.gz
Algorithm Hash digest
SHA256 6595cecfa7a1110d2dbc8d2a4184139f0e4dd9e119af53dd3f317371a22f68bb
MD5 db6a97d2d8e3d72e698b68fa16031bc6
BLAKE2b-256 a4dc8675f666832980fc603aecaa5a3359a5e8c7a7a58210a869f8b1e1cf452c

See more details on using hashes here.

File details

Details for the file agiflow_sdk-0.0.23-py3-none-any.whl.

File metadata

  • Download URL: agiflow_sdk-0.0.23-py3-none-any.whl
  • Upload date:
  • Size: 140.4 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: poetry/1.8.2 CPython/3.11.6 Darwin/22.6.0

File hashes

Hashes for agiflow_sdk-0.0.23-py3-none-any.whl
Algorithm Hash digest
SHA256 7734199a386614e561a5ff4e2d6c46a21144be0c9f3d9a2a056c851a04a3e6d9
MD5 599f4293e8dec83a739091b86d83cf29
BLAKE2b-256 a732c70f72e37f67eccbcec259eb61be17f83f48664ba24f06365006e52e67a5

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page