关于
The Modal skill enables serverless Python execution on cloud GPUs for AI/ML workloads. Use it for deploying models, serving inference endpoints, and scaling batch jobs beyond local machines. It supports on-demand GPU instances like H100s/A100s and automatically scales web APIs.
快速安装
Claude Code
推荐npx skills add K-Dense-AI/claude-scientific-skills -a claude-code/plugin add https://github.com/K-Dense-AI/claude-scientific-skillsgit clone https://github.com/K-Dense-AI/claude-scientific-skills.git ~/.claude/skills/modal在 Claude Code 中复制并粘贴此命令以安装该技能
技能文档
Modal
Overview
Modal is a cloud platform for running Python code serverlessly, with a focus on AI/ML workloads. Key capabilities:
- GPU compute on demand (T4, L4, A10, L40S, A100, H100, H200, B200)
- Serverless functions with autoscaling from zero to thousands of containers
- Custom container images built entirely in Python code
- Persistent storage via Volumes for model weights and datasets
- Web endpoints for serving models and APIs
- Scheduled jobs via cron or fixed intervals
- Sub-second cold starts for low-latency inference
Everything in Modal is defined as code — no YAML, no Dockerfiles required (though both are supported).
When to Use This Skill
Use this skill when:
- Deploy or serve AI/ML models in the cloud
- Run GPU-accelerated computations (training, inference, fine-tuning)
- Create serverless web APIs or endpoints
- Scale batch processing jobs in parallel
- Schedule recurring tasks (data pipelines, retraining, scraping)
- Need persistent cloud storage for model weights or datasets
- Want to run code in custom container environments
- Build job queues or async task processing systems
Installation and Authentication
Install
uv pip install modal
Authenticate
Prefer existing credentials before creating new ones:
- Check whether
MODAL_TOKEN_IDandMODAL_TOKEN_SECRETare already present in the current environment. - If not, check for those values in a local
.envfile and load them if appropriate for the workflow. - Only fall back to interactive
modal setupor generating fresh tokens if neither source already provides credentials.
modal setup
This opens a browser for authentication. For CI/CD or headless environments, use environment variables:
export MODAL_TOKEN_ID=<your-token-id>
export MODAL_TOKEN_SECRET=<your-token-secret>
If tokens are not already available in the environment or .env, generate them at https://modal.com/settings
Modal offers a free tier with $30/month in credits.
Reference: See references/getting-started.md for detailed setup and first app walkthrough.
Core Concepts
App and Functions
A Modal App groups related functions. Functions decorated with @app.function() run remotely in the cloud:
import modal
app = modal.App("my-app")
@app.function()
def square(x):
return x ** 2
@app.local_entrypoint()
def main():
# .remote() runs in the cloud
print(square.remote(42))
Run with modal run script.py. Deploy with modal deploy script.py.
Reference: See references/functions.md for lifecycle hooks, classes, .map(), .spawn(), and more.
Container Images
Modal builds container images from Python code. The recommended package installer is uv:
image = (
modal.Image.debian_slim(python_version="3.11")
.uv_pip_install("torch==2.8.0", "transformers", "accelerate")
.apt_install("git")
)
@app.function(image=image)
def inference(prompt):
from transformers import pipeline
pipe = pipeline("text-generation", model="meta-llama/Llama-3-8B")
return pipe(prompt)
Key image methods:
.uv_pip_install()— Install Python packages with uv (recommended).pip_install()— Install with pip (fallback).apt_install()— Install system packages.run_commands()— Run shell commands during build.run_function()— Run Python during build (e.g., download model weights).add_local_python_source()— Add local modules.env()— Set environment variables
Reference: See references/images.md for Dockerfiles, micromamba, caching, GPU build steps.
GPU Compute
Request GPUs via the gpu parameter:
@app.function(gpu="H100")
def train_model():
import torch
device = torch.device("cuda")
# GPU training code here
# Multiple GPUs
@app.function(gpu="H100:4")
def distributed_training():
...
# GPU fallback chain
@app.function(gpu=["H100", "A100-80GB", "A100-40GB"])
def flexible_inference():
...
Available GPUs: T4, L4, A10, L40S, A100-40GB, A100-80GB, H100, H200, B200, B200+
- Up to 8 GPUs per container (except A10: up to 4)
- L40S is recommended for inference (cost/performance balance, 48 GB VRAM)
- H100/A100 can be auto-upgraded to H200/A100-80GB at no extra cost
- Use
gpu="H100!"to prevent auto-upgrade
Reference: See references/gpu.md for GPU selection guidance and multi-GPU training.
Volumes (Persistent Storage)
Volumes provide distributed, persistent file storage:
vol = modal.Volume.from_name("model-weights", create_if_missing=True)
@app.function(volumes={"/data": vol})
def save_model():
# Write to the mounted path
with open("/data/model.pt", "wb") as f:
torch.save(model.state_dict(), f)
@app.function(volumes={"/data": vol})
def load_model():
model.load_state_dict(torch.load("/data/model.pt"))
- Optimized for write-once, read-many workloads (model weights, datasets)
- CLI access:
modal volume ls,modal volume put,modal volume get - Background auto-commits every few seconds
Reference: See references/volumes.md for v2 volumes, concurrent writes, and best practices.
Secrets
Securely pass credentials to functions:
@app.function(secrets=[modal.Secret.from_name("my-api-keys")])
def call_api():
import os
api_key = os.environ["API_KEY"]
# Use the key
Create secrets via CLI: modal secret create my-api-keys API_KEY=sk-xxx
Or from a .env file: modal.Secret.from_dotenv()
Reference: See references/secrets.md for dashboard setup, multiple secrets, and templates.
Web Endpoints
Serve models and APIs as web endpoints:
@app.function()
@modal.fastapi_endpoint()
def predict(text: str):
return {"result": model.predict(text)}
modal serve script.py— Development with hot reload and temporary URLmodal deploy script.py— Production deployment with permanent URL- Supports FastAPI, ASGI (Starlette, FastHTML), WSGI (Flask, Django), WebSockets
- Request bodies up to 4 GiB, unlimited response size
Reference: See references/web-endpoints.md for ASGI/WSGI apps, streaming, auth, and WebSockets.
Scheduled Jobs
Run functions on a schedule:
@app.function(schedule=modal.Cron("0 9 * * *")) # Daily at 9 AM UTC
def daily_pipeline():
# ETL, retraining, scraping, etc.
...
@app.function(schedule=modal.Period(hours=6))
def periodic_check():
...
Deploy with modal deploy script.py to activate the schedule.
modal.Cron("...")— Standard cron syntax, stable across deploysmodal.Period(hours=N)— Fixed interval, resets on redeploy- Monitor runs in the Modal dashboard
Reference: See references/scheduled-jobs.md for cron syntax and management.
Scaling and Concurrency
Modal autoscales containers automatically. Configure limits:
@app.function(
max_containers=100, # Upper limit
min_containers=2, # Keep warm for low latency
buffer_containers=5, # Reserve capacity
scaledown_window=300, # Idle seconds before shutdown
)
def process(data):
...
Process inputs in parallel with .map():
results = list(process.map([item1, item2, item3, ...]))
Enable concurrent request handling per container:
@app.function()
@modal.concurrent(max_inputs=10)
async def handle_request(req):
...
Reference: See references/scaling.md for .map(), .starmap(), .spawn(), and limits.
Resource Configuration
@app.function(
cpu=4.0, # Physical cores (not vCPUs)
memory=16384, # MiB
ephemeral_disk=51200, # MiB (up to 3 TiB)
timeout=3600, # Seconds
)
def heavy_computation():
...
Defaults: 0.125 CPU cores, 128 MiB memory. Billed on max(request, usage).
Reference: See references/resources.md for limits and billing details.
Classes with Lifecycle Hooks
For stateful workloads (e.g., loading a model once and serving many requests):
@app.cls(gpu="L40S", image=image)
class Predictor:
@modal.enter()
def load_model(self):
self.model = load_heavy_model() # Runs once on container start
@modal.method()
def predict(self, text: str):
return self.model(text)
@modal.exit()
def cleanup(self):
... # Runs on container shutdown
Call with: Predictor().predict.remote("hello")
Common Workflow Patterns
GPU Model Inference Service
import modal
app = modal.App("llm-service")
image = (
modal.Image.debian_slim(python_version="3.11")
.uv_pip_install("vllm")
)
@app.cls(gpu="H100", image=image, min_containers=1)
class LLMService:
@modal.enter()
def load(self):
from vllm import LLM
self.llm = LLM(model="meta-llama/Llama-3-70B")
@modal.method()
@modal.fastapi_endpoint(method="POST")
def generate(self, prompt: str, max_tokens: int = 256):
outputs = self.llm.generate([prompt], max_tokens=max_tokens)
return {"text": outputs[0].outputs[0].text}
Batch Processing Pipeline
app = modal.App("batch-pipeline")
vol = modal.Volume.from_name("pipeline-data", create_if_missing=True)
@app.function(volumes={"/data": vol}, cpu=4.0, memory=8192)
def process_chunk(chunk_id: int):
import pandas as pd
df = pd.read_parquet(f"/data/input/chunk_{chunk_id}.parquet")
result = heavy_transform(df)
result.to_parquet(f"/data/output/chunk_{chunk_id}.parquet")
return len(result)
@app.local_entrypoint()
def main():
chunk_ids = list(range(100))
results = list(process_chunk.map(chunk_ids))
print(f"Processed {sum(results)} total rows")
Scheduled Data Pipeline
app = modal.App("etl-pipeline")
@app.function(
schedule=modal.Cron("0 */6 * * *"), # Every 6 hours
secrets=[modal.Secret.from_name("db-credentials")],
)
def etl_job():
import os
db_url = os.environ["DATABASE_URL"]
# Extract, transform, load
...
CLI Reference
| Command | Description |
|---|---|
modal setup | Authenticate with Modal |
modal run script.py | Run a script's local entrypoint |
modal serve script.py | Dev server with hot reload |
modal deploy script.py | Deploy to production |
modal volume ls <name> | List files in a volume |
modal volume put <name> <file> | Upload file to volume |
modal volume get <name> <file> | Download file from volume |
modal secret create <name> K=V | Create a secret |
modal secret list | List secrets |
modal app list | List deployed apps |
modal app stop <name> | Stop a deployed app |
Reference Files
Detailed documentation for each topic:
references/getting-started.md— Installation, authentication, first appreferences/functions.md— Functions, classes, lifecycle hooks, remote executionreferences/images.md— Container images, package installation, cachingreferences/gpu.md— GPU types, selection, multi-GPU, trainingreferences/volumes.md— Persistent storage, file management, v2 volumesreferences/secrets.md— Credentials, environment variables, dotenvreferences/web-endpoints.md— FastAPI, ASGI/WSGI, streaming, auth, WebSocketsreferences/scheduled-jobs.md— Cron, periodic schedules, managementreferences/scaling.md— Autoscaling, concurrency, .map(), limitsreferences/resources.md— CPU, memory, disk, timeout configurationreferences/examples.md— Common use cases and patternsreferences/api_reference.md— Key API classes and methods
Read these files when detailed information is needed beyond this overview.
GitHub 仓库
Frequently asked questions
What is the modal skill?
modal is a Claude Skill by K-Dense-AI. Skills package instructions and resources that Claude loads on demand, so Claude can perform modal-related tasks without extra prompting.
How do I install modal?
Use the install commands on this page: add modal to Claude Code as a plugin, or clone its repository into your skills directory, then restart Claude so it picks up the skill.
What category does modal belong to?
modal is in the Meta category, tagged ai and api.
Is modal free to use?
Yes. modal is listed on AIMCP and free to install. It runs inside Claude, so no separate service account is required to use the skill itself.
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