python-sdk
Focuses on backend Python SDK development, providing API interfaces that enable Agents to easily integrate and call Python functionalities.
npx skills add inferen-sh/skills --skill python-sdkBefore / After Comparison
1 组Integrating Python functions into agents requires manually writing a large amount of low-level code, which is time-consuming, laborious, prone to errors, and difficult to maintain and extend.
With the Python SDK, agents can conveniently and efficiently call Python functions, significantly simplifying the integration process and improving development efficiency and system scalability.
python-sdk
Python SDK
Build AI applications with the inference.sh Python SDK.
Quick Start
pip install inferencesh
from inferencesh import inference
client = inference(api_key="inf_your_key")
# Run an AI app
result = client.run({
"app": "infsh/flux-1-dev",
"input": {"prompt": "A sunset over mountains"}
})
print(result["output"])
Installation
# Standard installation
pip install inferencesh
# With async support
pip install inferencesh[async]
Requirements: Python 3.8+
Authentication
import os
from inferencesh import inference
# Direct API key
client = inference(api_key="inf_your_key")
# From environment variable (recommended)
client = inference(api_key=os.environ["INFERENCE_API_KEY"])
Get your API key: Settings → API Keys → Create API Key
Running Apps
Basic Execution
result = client.run({
"app": "infsh/flux-1-dev",
"input": {"prompt": "A cat astronaut"}
})
print(result["status"]) # "completed"
print(result["output"]) # Output data
Fire and Forget
task = client.run({
"app": "google/veo-3-1-fast",
"input": {"prompt": "Drone flying over mountains"}
}, wait=False)
print(f"Task ID: {task['id']}")
# Check later with client.get_task(task['id'])
Streaming Progress
for update in client.run({
"app": "google/veo-3-1-fast",
"input": {"prompt": "Ocean waves at sunset"}
}, stream=True):
print(f"Status: {update['status']}")
if update.get("logs"):
print(update["logs"][-1])
Run Parameters
Parameter Type Description
app
string
App ID (namespace/name@version)
input
dict
Input matching app schema
setup
dict
Hidden setup configuration
infra
string
'cloud' or 'private'
session
string
Session ID for stateful execution
session_timeout
int
Idle timeout (1-3600 seconds)
File Handling
Automatic Upload
result = client.run({
"app": "image-processor",
"input": {
"image": "/path/to/image.png" # Auto-uploaded
}
})
Manual Upload
from inferencesh import UploadFileOptions
# Basic upload
file = client.upload_file("/path/to/image.png")
# With options
file = client.upload_file(
"/path/to/image.png",
UploadFileOptions(
filename="custom_name.png",
content_type="image/png",
public=True
)
)
result = client.run({
"app": "image-processor",
"input": {"image": file["uri"]}
})
Sessions (Stateful Execution)
Keep workers warm across multiple calls:
# Start new session
result = client.run({
"app": "my-app",
"input": {"action": "init"},
"session": "new",
"session_timeout": 300 # 5 minutes
})
session_id = result["session_id"]
# Continue in same session
result = client.run({
"app": "my-app",
"input": {"action": "process"},
"session": session_id
})
Agent SDK
Template Agents
Use pre-built agents from your workspace:
agent = client.agent("my-team/support-agent@latest")
# Send message
response = agent.send_message("Hello!")
print(response.text)
# Multi-turn conversation
response = agent.send_message("Tell me more")
# Reset conversation
agent.reset()
# Get chat history
chat = agent.get_chat()
Ad-hoc Agents
Create custom agents programmatically:
from inferencesh import tool, string, number, app_tool
# Define tools
calculator = (
tool("calculate")
.describe("Perform a calculation")
.param("expression", string("Math expression"))
.build()
)
image_gen = (
app_tool("generate_image", "infsh/flux-1-dev@latest")
.describe("Generate an image")
.param("prompt", string("Image description"))
.build()
)
# Create agent
agent = client.agent({
"core_app": {"ref": "infsh/claude-sonnet-4@latest"},
"system_prompt": "You are a helpful assistant.",
"tools": [calculator, image_gen],
"temperature": 0.7,
"max_tokens": 4096
})
response = agent.send_message("What is 25 * 4?")
Available Core Apps
Model App Reference
Claude Sonnet 4
infsh/claude-sonnet-4@latest
Claude 3.5 Haiku
infsh/claude-haiku-35@latest
GPT-4o
infsh/gpt-4o@latest
GPT-4o Mini
infsh/gpt-4o-mini@latest
Tool Builder API
Parameter Types
from inferencesh import (
string, number, integer, boolean,
enum_of, array, obj, optional
)
name = string("User's name")
age = integer("Age in years")
score = number("Score 0-1")
active = boolean("Is active")
priority = enum_of(["low", "medium", "high"], "Priority")
tags = array(string("Tag"), "List of tags")
address = obj({
"street": string("Street"),
"city": string("City"),
"zip": optional(string("ZIP"))
}, "Address")
Client Tools (Run in Your Code)
greet = (
tool("greet")
.display("Greet User")
.describe("Greets a user by name")
.param("name", string("Name to greet"))
.require_approval()
.build()
)
App Tools (Call AI Apps)
generate = (
app_tool("generate_image", "infsh/flux-1-dev@latest")
.describe("Generate an image from text")
.param("prompt", string("Image description"))
.setup({"model": "schnell"})
.input({"steps": 20})
.require_approval()
.build()
)
Agent Tools (Delegate to Sub-agents)
from inferencesh import agent_tool
researcher = (
agent_tool("research", "my-org/researcher@v1")
.describe("Research a topic")
.param("topic", string("Topic to research"))
.build()
)
Webhook Tools (Call External APIs)
from inferencesh import webhook_tool
notify = (
webhook_tool("slack", "https://hooks.slack.com/...")
.describe("Send Slack notification")
.secret("SLACK_SECRET")
.param("channel", string("Channel"))
.param("message", string("Message"))
.build()
)
Internal Tools (Built-in Capabilities)
from inferencesh import internal_tools
config = (
internal_tools()
.plan()
.memory()
.web_search(True)
.code_execution(True)
.image_generation({
"enabled": True,
"app_ref": "infsh/flux@latest"
})
.build()
)
agent = client.agent({
"core_app": {"ref": "infsh/claude-sonnet-4@latest"},
"internal_tools": config
})
Streaming Agent Responses
def handle_message(msg):
if msg.get("content"):
print(msg["content"], end="", flush=True)
def handle_tool(call):
print(f"\n[Tool: {call.name}]")
result = execute_tool(call.name, call.args)
agent.submit_tool_result(call.id, result)
response = agent.send_message(
"Explain quantum computing",
on_message=handle_message,
on_tool_call=handle_tool
)
File Attachments
# From file path
with open("image.png", "rb") as f:
response = agent.send_message(
"What's in this image?",
files=[f.read()]
)
# From base64
response = agent.send_message(
"Analyze this",
files=["data:image/png;base64,iVBORw0KGgo..."]
)
Skills (Reusable Context)
agent = client.agent({
"core_app": {"ref": "infsh/claude-sonnet-4@latest"},
"skills": [
{
"name": "code-review",
"description": "Code review guidelines",
"content": "# Code Review\n\n1. Check security\n2. Check performance..."
},
{
"name": "api-docs",
"description": "API documentation",
"url": "https://example.com/skills/api-docs.md"
}
]
})
Async Support
from inferencesh import async_inference
import asyncio
async def main():
client = async_inference(api_key="inf_...")
# Async app execution
result = await client.run({
"app": "infsh/flux-1-dev",
"input": {"prompt": "A galaxy"}
})
# Async agent
agent = client.agent("my-org/assistant@latest")
response = await agent.send_message("Hello!")
# Async streaming
async for msg in agent.stream_messages():
print(msg)
asyncio.run(main())
Error Handling
from inferencesh import RequirementsNotMetException
try:
result = client.run({"app": "my-app", "input": {...}})
except RequirementsNotMetException as e:
print(f"Missing requirements:")
for err in e.errors:
print(f" - {err['type']}: {err['key']}")
except RuntimeError as e:
print(f"Error: {e}")
Human Approval Workflows
def handle_tool(call):
if call.requires_approval:
# Show to user, get confirmation
approved = prompt_user(f"Allow {call.name}?")
if approved:
result = execute_tool(call.name, call.args)
agent.submit_tool_result(call.id, result)
else:
agent.submit_tool_result(call.id, {"error": "Denied by user"})
response = agent.send_message(
"Delete all temp files",
on_tool_call=handle_tool
)
Reference Files
-
Agent Patterns - Multi-agent, RAG, human-in-the-loop patterns
-
Tool Builder - Complete tool builder API reference
-
Streaming - Real-time progress updates and SSE handling
-
File Handling - Upload, download, and manage files
-
Sessions - Stateful execution with warm workers
-
Async Patterns - Parallel processing and async/await
Related Skills
# JavaScript SDK
npx skills add inference-sh/skills@javascript-sdk
# Full platform skill (all 150+ apps via CLI)
npx skills add inference-sh/skills@infsh-cli
# LLM models
npx skills add inference-sh/skills@llm-models
# Image generation
npx skills add inference-sh/skills@ai-image-generation
Documentation
-
Python SDK Reference - Full API documentation
-
Agent SDK Overview - Building agents
-
Tool Builder Reference - Creating tools
-
Authentication - API key setup
-
Streaming - Real-time updates
-
File Uploads - File handling
Weekly Installs8.6KRepositoryinferen-sh/skillsGitHub Stars159First Seen6 days agoSecurity AuditsGen Agent Trust HubWarnSocketPassSnykFailInstalled onclaude-code6.9Kgemini-cli6.0Kcodex6.0Kamp6.0Kkimi-cli6.0Kgithub-copilot6.0K
User Reviews (0)
Write a Review
No reviews yet
Statistics
User Rating
Rate this Skill