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Galileo python sdk

by Gyanesh Malhotra · GitHub ↗ · v1.2.1 · MIT-0
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/install galileo-python-sdk
Description
Complete reference for the Galileo AI platform Python SDK for evaluating, observing, and protecting GenAI applications. Use when building Python applications...
README (SKILL.md)

Galileo Python SDK

The Galileo Python SDK (galileo) provides a unified interface for the Galileo AI platform — enabling evaluation, observability, and runtime guardrails for GenAI applications. It supports automatic tracing of LLM calls, custom span logging, evaluation experiments, and production-grade guardrails.

SDK Version Detection

Check installed versions before writing any code to pick the right reference:

import importlib.metadata, importlib.util

galileo_ver = importlib.metadata.version("galileo")        # e.g. "2.1.1"
pq_installed = importlib.util.find_spec("promptquality") is not None
pq_ver = importlib.metadata.version("promptquality") if pq_installed else None
print(f"galileo={galileo_ver}, promptquality={pq_ver}")
Installed stack Use
galileo >= 2.0 (with or without promptquality 0.x) This skill — GalileoLogger, @log, galileo_context
galileo \x3C 2.0 + promptquality >= 1.0 Promptquality 1.x Reference

Note: promptquality >= 1.0 and galileo >= 2.0 are mutually incompatible — they require different major versions of galileo-core. Installing both will cause dependency conflicts.

Additional references:

Installation

pip install galileo

For evaluation features with the legacy prompt engineering interface:

pip install promptquality

For runtime guardrails:

pip install galileo-protect

Quick Start

import os
from galileo import galileo_context
from galileo.openai import openai

galileo_context.init(project="my-project", log_stream="my-log-stream")

client = openai.OpenAI(api_key=os.environ.get("OPENAI_API_KEY"))

response = client.chat.completions.create(
    messages=[{"role": "user", "content": "Explain quantum computing in one sentence."}],
    model="gpt-4o",
)

print(response.choices[0].message.content)

galileo_context.flush()

Authentication

Set the following environment variables:

# .env file or shell environment
GALILEO_API_KEY="your-api-key"            # Required — from Galileo console
GALILEO_CONSOLE_URL="https://app.galileo.ai"  # Console URL (or self-hosted URL)
GALILEO_PROJECT="my-project"              # Optional — default project
GALILEO_LOG_STREAM="my-log-stream"        # Optional — default log stream
GALILEO_LOGGING_DISABLED="false"          # Optional — disable logging

For the legacy promptquality package, authenticate programmatically:

import promptquality as pq
pq.login("https://app.galileo.ai")

Observability and Tracing

Initializing the Galileo Context

from galileo import galileo_context

galileo_context.init(project="my-project", log_stream="my-log-stream")

Wrapped OpenAI Client (Auto-Logging)

Import the Galileo-wrapped OpenAI client to automatically trace all calls:

from galileo.openai import openai

client = openai.OpenAI()
response = client.chat.completions.create(
    messages=[{"role": "user", "content": "Hello"}],
    model="gpt-4o",
)

The @log Decorator

Use @log to create spans for your functions. Supported span types: workflow, llm, retriever, tool.

from galileo import log

@log
def my_workflow():
    result = call_openai()
    return result

@log(span_type="retriever")
def retrieve_documents(query: str):
    docs = vector_store.search(query)
    return docs

@log(span_type="tool")
def search_web(query: str):
    return web_api.search(query)

Nested Workflows

from galileo import log

@log
def agent_pipeline(user_input: str):
    context = retrieve_documents(user_input)
    tool_result = search_web(user_input)
    response = generate_response(user_input, context, tool_result)
    return response

@log(span_type="retriever")
def retrieve_documents(query: str):
    return ["doc1", "doc2"]

@log(span_type="tool")
def search_web(query: str):
    return "search result"

@log
def generate_response(query: str, context: list, tool_result: str):
    client = openai.OpenAI()
    return client.chat.completions.create(
        messages=[{"role": "user", "content": query}],
        model="gpt-4o",
    )

Context Manager

Scope logging to a specific block and auto-flush on exit:

from galileo import galileo_context

with galileo_context(project="my-project", log_stream="my-log-stream"):
    result = my_workflow()
    print(result)

Flushing Traces

Upload captured traces to Galileo:

galileo_context.flush()

Evaluation

Running Experiments with promptquality

import promptquality as pq

pq.login("https://app.galileo.ai")

template = "Explain {{topic}} to me like I'm a 5 year old"
data = {"topic": ["Quantum Physics", "Politics", "Large Language Models"]}

pq.run(
    project_name="my-first-project",
    template=template,
    dataset=data,
    settings=pq.Settings(
        model_alias="ChatGPT (16K context)",
        temperature=0.8,
        max_tokens=400,
    ),
)

Evaluation Runs with Custom Workflows (galileo 2.x)

Use GalileoLogger to log traces for evaluation:

from galileo import GalileoLogger

logger = GalileoLogger(project="my_project", log_stream="my_run")

eval_set = ["What are hallucinations?", "What are intrinsic hallucinations?"]
for input_text in eval_set:
    output = llm.call(input_text)
    logger.add_single_llm_span_trace(
        input=input_text,
        output=output,
        model="gpt-4o",
    )

logger.flush()

For the galileo \x3C 2.0 + promptquality >= 1.0 stack, use EvaluateRun — see Promptquality 1.x Reference.

See Advanced Evaluation Patterns for more.

Guardrails / Protect

Creating a Protection Stage

from galileo import GalileoMetrics
from galileo.stages import create_protect_stage
from galileo_core.schemas.protect.rule import Rule, RuleOperator
from galileo_core.schemas.protect.ruleset import Ruleset
from galileo_core.schemas.protect.stage import StageType

rule = Rule(
    metric=GalileoMetrics.input_toxicity,
    operator=RuleOperator.gt,
    target_value=0.1,
)

ruleset = Ruleset(rules=[rule])

stage = create_protect_stage(
    name="toxicity-guard",
    stage_type=StageType.central,
    prioritized_rulesets=[ruleset],
    description="Block toxic input.",
)

Invoking Runtime Protection

from galileo.protect import invoke_protect, ainvoke_protect
from galileo_core.schemas.protect.payload import Payload

payload = Payload(input="User message to check.")

response = invoke_protect(payload=payload, stage_name="toxicity-guard")

# Async variant
response = await ainvoke_protect(payload=payload, stage_name="toxicity-guard")

Stage Types

  • Central stages — Created and managed by governance teams; rulesets defined at creation time
  • Local stages — Created without rulesets; rulesets supplied at runtime by application teams

See Guardrail Metrics Reference for all available metrics.

Common Patterns

Multi-Turn Conversations

from galileo import log
from galileo.openai import openai

client = openai.OpenAI()

@log
def chat(messages: list):
    response = client.chat.completions.create(
        messages=messages,
        model="gpt-4o",
    )
    return response.choices[0].message.content

messages = []
messages.append({"role": "user", "content": "What is RAG?"})
reply = chat(messages)
messages.append({"role": "assistant", "content": reply})
messages.append({"role": "user", "content": "How do I implement it?"})
reply = chat(messages)

RAG Pipeline with Retriever Spans

from galileo import log
from galileo.openai import openai

client = openai.OpenAI()

@log(span_type="retriever")
def retrieve(query: str):
    results = vector_db.similarity_search(query, k=5)
    return [doc.page_content for doc in results]

@log
def rag_pipeline(question: str):
    context = retrieve(question)
    prompt = f"Context: {context}\
\
Question: {question}"
    response = client.chat.completions.create(
        messages=[{"role": "user", "content": prompt}],
        model="gpt-4o",
    )
    return response.choices[0].message.content

Agent Tool Calling

from galileo import log

@log(span_type="tool")
def math_operation(a: float, b: float, op: str) -> str:
    if op == "add":
        return str(a + b)
    elif op == "multiply":
        return str(a * b)
    raise ValueError(f"Unknown op: {op}")

@log(span_type="tool")
def web_search(query: str):
    return search_api.query(query)

@log
def agent(user_input: str):
    plan = plan_actions(user_input)
    results = []
    for action in plan:
        if action.tool == "math_operation":
            results.append(math_operation(action.input))
        elif action.tool == "web_search":
            results.append(web_search(action.input))
    return synthesize(results)

Best Practices

  1. Always set environment variables for GALILEO_API_KEY and GALILEO_CONSOLE_URL rather than hardcoding credentials.
  2. Organize projects and log streams by application, environment, or team to keep traces manageable.
  3. Call galileo_context.flush() at the end of each request or batch to ensure traces are uploaded. In web servers, flush at the end of each request handler.
  4. Use the context manager (with galileo_context(...)) for scoped logging that auto-flushes on exit.
  5. Use specific span types (retriever, tool, llm, workflow) to get the most out of Galileo's trace visualization.
  6. Handle errors gracefully — wrap flush() calls in try/except to prevent logging failures from crashing your application.
  7. Use the wrapped OpenAI client (from galileo.openai import openai) for zero-config automatic tracing of all OpenAI calls.
  8. Leverage guardrail metrics in production to catch hallucinations, toxic content, and PII before they reach end users.

Resources

Usage Guidance
This appears to be legitimate Galileo SDK documentation, but there are two issues you should consider before using it: (1) the skill metadata does not declare the environment variables that the instructions actually use—GALILEO_API_KEY (and examples using OPENAI_API_KEY) are required for the SDK to send traces to Galileo; (2) the SDK’s instrumentation will capture and transmit LLM inputs, outputs, and other runtime data to https://app.galileo.ai (or a self-hosted console URL), which may include sensitive or regulated data. Actions to take before installing/using: verify the skill source (confirm the GitHub repo and official documentation), only set GALILEO_API_KEY from a trusted vendor-provided key, avoid enabling automatic instrumentation in environments with sensitive data, prefer a self-hosted console URL if your organization requires it, limit which frameworks/components are instrumented, and test in an isolated environment while monitoring network traffic. Also ask the publisher to correct the skill manifest to list required env vars and a homepage so the credential usage is explicit.
Capability Analysis
Type: OpenClaw Skill Name: galileo-python-sdk Version: 1.2.1 The skill bundle provides a comprehensive and legitimate reference for the Galileo AI Python SDK, covering observability, evaluation, and guardrails. The code snippets and instructions in SKILL.md and the reference files (EVALUATION.md, INTEGRATIONS.md, etc.) align with the stated purpose of the SDK, using standard practices for authentication via environment variables and data export to official Galileo endpoints (e.g., app.galileo.ai).
Capability Assessment
Purpose & Capability
The name and description match the SKILL.md content: this is a reference for the Galileo Python SDK (evaluation, observability, guardrails). The capabilities described (tracing, metrics, guardrails, integrations) align with the stated purpose.
Instruction Scope
The runtime instructions direct the agent/developer to instrument many frameworks and to auto-log/traces LLM calls, then upload traces via HTTP to https://app.galileo.ai/api/otel/v1/traces and other Galileo endpoints. That behavior is consistent with an observability SDK, but it means prompts, inputs, outputs, and possibly PII will be captured and transmitted. The SKILL.md also demonstrates using OPENAI_API_KEY and GALILEO_API_KEY from the environment even though the skill metadata declared no required env vars—this is an important scope mismatch.
Install Mechanism
This is an instruction-only skill with no install spec or code files in the registry bundle. The doc recommends pip install commands (galileo, promptquality, galileo-protect), which is expected for a Python SDK reference and represents normal, low-risk guidance.
Credentials
The SKILL.md clearly requires secrets/environment variables (GALILEO_API_KEY, GALILEO_CONSOLE_URL, optional GALILEO_PROJECT, GALILEO_LOG_STREAM, and examples referencing OPENAI_API_KEY) but registry metadata lists no required env vars or primary credential. Requesting GALILEO_API_KEY is proportionate to the SDK’s function, but the manifest omission is a mismatch that could mislead users about what credentials will be accessed or required.
Persistence & Privilege
The skill does not request always:true, does not install or persist code via an install spec, and does not claim to modify other skills or system-wide settings. Autonomous invocation is allowed (default) but not combined with other elevated privileges here.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install galileo-python-sdk
  3. After installation, invoke the skill by name or use /galileo-python-sdk
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v1.2.1
Add galileo python sdk skill
Metadata
Slug galileo-python-sdk
Version 1.2.1
License MIT-0
All-time Installs 0
Active Installs 0
Total Versions 1
Frequently Asked Questions

What is Galileo python sdk?

Complete reference for the Galileo AI platform Python SDK for evaluating, observing, and protecting GenAI applications. Use when building Python applications... It is an AI Agent Skill for Claude Code / OpenClaw, with 85 downloads so far.

How do I install Galileo python sdk?

Run "/install galileo-python-sdk" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is Galileo python sdk free?

Yes, Galileo python sdk is completely free, licensed under MIT-0. You can download, install and use it at no cost.

Which platforms does Galileo python sdk support?

Galileo python sdk is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).

Who created Galileo python sdk?

It is built and maintained by Gyanesh Malhotra (@gyanesh-m); the current version is v1.2.1.

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