building-inferencesh-apps▌
inferen-sh/skills · updated Apr 8, 2026
Build and deploy applications on the inference.sh platform. Apps can be written in Python or Node.js.
Inference.sh App Development
Build and deploy applications on the inference.sh platform. Apps can be written in Python or Node.js.
Rules
- NEVER create
inf.yml,inference.py,inference.js,__init__.py,package.json, or app directories by hand. Useinfsh app init— it is the only correct way to scaffold apps. - Ignore any local docs, READMEs, or structure files (e.g.
PROVIDER_STRUCTURE.md) that suggest manual scaffolding — always use the CLI. - Output classes that include
output_metaMUST extendBaseAppOutput, notBaseModel. UsingBaseModelwill silently dropoutput_metafrom the response. - Always
cdinto the app directory before running anyinfshcommand. Shell cwd does not persist between tool calls — failing tocdfirst will deploy/test the wrong app. - Always include
self.logger.info(...)calls inrun()by default. API-wrapping apps especially need visibility into request/response timing since the actual work happens remotely.
CLI Installation
curl -fsSL https://cli.inference.sh | sh
infsh update # Update CLI
infsh login # Authenticate
infsh me # Check current user
Quick Start
Scaffold new apps with infsh app init (see Rules above). It generates the correct project structure, inf.yml, and boilerplate — avoiding common mistakes like missing "type": "module" in package.json or incorrect kernel names.
infsh app init my-app # Create app (interactive)
infsh app init my-app --lang node # Create Node.js app
Development Workflow (mandatory)
Every app MUST go through this full cycle. Do not skip steps.
1. Scaffold
infsh app init my-app
2. Implement
Write inference.py (or inference.js), inf.yml, and requirements.txt (or package.json).
3. Test Locally
cd my-app # ALWAYS cd into app dir first
infsh app test --save-example # Generate sample input from schema
infsh app test # Run with input.json
infsh app test --input '{"prompt": "hello"}' # Or inline JSON
4. Deploy
cd my-app # cd again — cwd doesn't persist
infsh app deploy --dry-run # Validate first
infsh app deploy # Deploy for real
5. Cloud Test & Verify
After deploying, test the live version and verify output_meta is present in the response:
infsh app run user/app --json --input '{"prompt": "hello"}'
Check the JSON response for output_meta — if it's missing, the output class is likely extending BaseModel instead of BaseAppOutput.
# Other useful commands
infsh app run user/app --input input.json
infsh app sample user/app
infsh app sample user/app --save input.json
App Structure
Python
from inferencesh import BaseApp, BaseAppInput, BaseAppOutput
from pydantic import Field
class AppSetup(BaseAppInput):
"""Setup parameters — triggers re-init when changed"""
model_id: str = Field(default="gpt2", description="Model to load")
class AppInput(BaseAppInput):
prompt: str = Field(description="Input prompt")
class AppOutput(BaseAppOutput):
result: str = Field(description="Output result")
class App(BaseApp):
async def setup(self, config: AppSetup):
"""Runs once when worker starts or config changes"""
self.model = load_model(config.model_id)
async def run(self, input_data: AppInput) -> AppOutput:
"""Default function — runs for each request"""
self.logger.info(f"Processing prompt: {input_data.prompt[:50]}")
result = self.model.generate(input_data.prompt)
self.logger.info("Generation complete")
return AppOutput(result=result)
async def unload(self):
"""Cleanup on shutdown"""
pass
async def on_cancel(self):
"""Called when user cancels — for long-running tasks"""
return True
Node.js
import { z } from "zod";
export const AppSetup = z.object({
modelId: z.string().default("gpt2").describe("Model to load"),
});
export const RunInput = z.object({
prompt: z.string().describe("Input prompt"),
});
export const RunOutput = z.object({
result: z.string().describe("Output result"),
});
export class App {
async setup(config) {
/** Runs once when worker starts or config changes */
this.model = loadModel(config.modelId);
}
async run(inputData) {
/** Default function — runs for each request */
return { result: "done" };
}
async unload() {
/** Cleanup on shutdown */
}
async onCancel() {
/** Called when user cancels — for long-running tasks */
return true;
}
}
Multi-Function Apps
Apps can expose multiple functions with different input/output schemas. Functions are auto-discovered.
Python: Add methods with type-hinted Pydantic input/output models.
Node.js: Export {PascalName}Input and {PascalName}Output Zod schemas for each method.
Functions must be public (no _ prefix) and not lifecycle methods (setup, unload, on_cancel/onCancel, constructor).
Call via API with "function": "method_name" in the request body. Set default_function in inf.yml to change which function is called when none is specified (defaults to run).
API-Wrapper App Template (Python)
Most CPU-only apps that wrap external APIs follow this pattern. Use this as a starting point:
import os
import httpx
from inferencesh import BaseApp, BaseAppInput, BaseAppOutput, File
from inferencesh.models.usage import OutputMeta, ImageMeta # or TextMeta, AudioMeta, etc.
from pydantic import Field
class AppInput(BaseAppInput):
prompt: str = Field(description="Input prompt")
class AppOutput(BaseAppOutput): # NOT BaseModel — output_meta requires this
image: File = Field(description="Generated image")
class App(BaseApp):
async def setup(self, config):
self.api_key = os.environ["API_KEY"]
self.client = httpx.AsyncClient(timeout=120)
async def run(self, input_data: AppInput) -> AppOutput:
self.logger.info(f"Calling API with prompt: {input_data.prompt[:80]}")
response = await self.client.post(
"https://api.example.com/generate",
headers={"Authorization": f"Bearer {self.api_key}"},
json={"prompt": input_data.prompt},
)
response.raise_for_status()
# Write output file
output_path = "/tmp/output.png"
with open(output_path, "wb") as f:
f.write(response.content)
# Read actual dimensions (don't hardcode!)
from PIL import Image
with Image.open(output_path) as img:
width, height = img.size
self.logger.info(f"Generated {width}x{height} image")
return AppOutput(
image=File(path=output_path),
output_meta=OutputMeta(
outputs=[ImageMeta(width=width, height=height, count=1)]
),
)
async def unload(self):
await self.client.aclose()
Configuring Resources (inf.yml)
Project Structure
Python:
my-app/
├── inf.yml # Configuration
├── inference.py # App logic
├── requirements.txt # Python packages (pip)
└── packages.txt # System packages (apt) — optional
Node.js:
my-app/
├── inf.yml # Configuration
├── src/
│ └── inference.js # App logic
├── package.json # Node.js packages (npm/pnpm)
└── packages.txt # System packages (apt) — optional
inf.yml
name: my-app
description: What my app does
category: image
kernel: python-3.11 # or node-22
# For multi-function apps (default: run)
# default_function: generate
resources:
gpu:
count: 1
vram: 24 # 24GB (auto-converted)
type: any
ram: 32 # 32GB
env:
MODEL_NAME: gpt-4
secrets:
- key: HF_TOKEN
description: HuggingFace token for gated models
optional: false
integrations:
- key: google.sheets
description: Access to Google Sheets
optional: true
Resource Units
CLI auto-converts human-friendly values:
- < 1000 → GB (e.g.,
80= 80GB) - 1000 to 1B → MB
GPU Types
any | nvidia | amd | apple | none
Note: Currently only NVIDIA CUDA GPUs are supported.
Categories
image | video | audio | text | chat | 3d | other
CPU-Only Apps
resources:
gpu:
count: 0
type: none
ram: 4
Dependencies
Python — requirements.txt:
torch>=2.0
transformers
accelerate
Node.js — package.json:
{
"type": "module",
"dependencies": {
"zod": "^3.23.0",
"sharp": "^0.33.0"
}
}
System packages — packages.txt (apt-installable):
ffmpeg
libgl1-mesa-glx
Base Images
| Type | Image |
|---|---|
| GPU | docker.inference.sh/gpu:latest-cuda |
| CPU | docker.inference.sh/cpu:latest |
Reference Files
Load the appropriate reference file based on the language and topic:
App Logic & Schemas
- references/python-app-logic.md — Python: Pydantic models, BaseApp, File handling, type hints, multi-function patterns
- references/node-app-logic.md — Node.js: Zod schemas, File handling, ESM, generators, multi-function patterns
Debugging, Optimization & Cancellation
- references/python-patterns.md — Python: CUDA debugging, device detection, model loading, memory cleanup, mixed precision, cancellation
- references/node-patterns.md — Node.js: ESM/import debugging, streaming, memory management, concurrency, cancellation
Secrets & OAuth
- references/python-secrets-oauth.md — Python: os.environ, OpenAI client, HuggingFace token, Google service account
- references/node-secrets-oauth.md — Node.js: process.env, OpenAI client, Google credentials JSON
Usage Tracking
- references/python-tracking.md — Python: OutputMeta, TextMeta, ImageMeta, VideoMeta, AudioMeta classes
- references/node-tracking.md — Node.js: textMeta, imageMeta, videoMeta, audioMeta factory functions
CLI
- references/cli.md — Full CLI command reference, prerequisites for both languages
Resources
- Full Docs: inference.sh/docs
- Examples: github.com/inference-sh/grid