Skip to main content

Prime Intellect Sandboxes SDK - Manage remote code execution environments

Project description

Prime Sandboxes SDK

Lightweight Python SDK for managing Prime Intellect sandboxes - secure remote code execution environments.

Features

  • Synchronous and async clients - Use with sync or async/await code
  • Full sandbox lifecycle - Create, list, execute commands, upload/download files, delete
  • Type-safe - Full type hints and Pydantic models
  • Authentication caching - Automatic token management
  • Bulk operations - Create and manage multiple sandboxes efficiently
  • No CLI dependencies - Pure SDK, ~50KB installed

Installation

uv pip install prime-sandboxes

Or with pip:

pip install prime-sandboxes

Quick Start

from prime_sandboxes import APIClient, SandboxClient, CreateSandboxRequest

# Initialize
client = APIClient(api_key="your-api-key")
sandbox_client = SandboxClient(client)

# Create a sandbox
request = CreateSandboxRequest(
    name="my-sandbox",
    docker_image="python:3.11-slim",
    cpu_cores=2,
    memory_gb=4,
)

sandbox = sandbox_client.create(request)
print(f"Created: {sandbox.id}")

# Wait for it to be ready
sandbox_client.wait_for_creation(sandbox.id)

# Execute commands
result = sandbox_client.execute_command(sandbox.id, "python --version")
print(result.stdout)

# Clean up
sandbox_client.delete(sandbox.id)

Async Usage

import asyncio
from prime_sandboxes import AsyncSandboxClient, CreateSandboxRequest

async def main():
    async with AsyncSandboxClient(api_key="your-api-key") as client:
        # Create sandbox
        sandbox = await client.create(CreateSandboxRequest(
            name="async-sandbox",
            docker_image="python:3.11-slim",
        ))

        # Wait and execute
        await client.wait_for_creation(sandbox.id)
        result = await client.execute_command(sandbox.id, "echo 'Hello from async!'")
        print(result.stdout)

        # Clean up
        await client.delete(sandbox.id)

asyncio.run(main())

Authentication

The SDK looks for credentials in this order:

  1. Direct parameter: APIClient(api_key="sk-...")
  2. Environment variable: export PRIME_API_KEY="sk-..."
  3. Config file: ~/.prime/config.json (created by prime login CLI command)

Advanced Features

Environment Variables and Secrets

# Create sandbox with environment variables and secrets
request = CreateSandboxRequest(
    name="my-sandbox",
    docker_image="python:3.11-slim",
    environment_vars={
        "DEBUG": "true",
        "LOG_LEVEL": "info"
    },
    secrets={
        "API_KEY": "sk-secret-key-here",
        "DATABASE_PASSWORD": "super-secret-password"
    }
)

sandbox = sandbox_client.create(request)

Note: Secrets are never displayed in logs or outputs. When retrieving sandbox details, only the secret keys are shown with values masked as ***.

File Operations

# Upload a file
sandbox_client.upload_file(
    sandbox_id=sandbox.id,
    file_path="/app/script.py",
    local_file_path="./local_script.py"
)

# Download a file
sandbox_client.download_file(
    sandbox_id=sandbox.id,
    file_path="/app/output.txt",
    local_file_path="./output.txt"
)

Bulk Operations

# Create multiple sandboxes
sandbox_ids = []
for i in range(5):
    sandbox = sandbox_client.create(CreateSandboxRequest(
        name=f"sandbox-{i}",
        docker_image="python:3.11-slim",
    ))
    sandbox_ids.append(sandbox.id)

# Wait for all to be ready
statuses = sandbox_client.bulk_wait_for_creation(sandbox_ids)

# Delete by IDs or labels
sandbox_client.bulk_delete(sandbox_ids=sandbox_ids)
# OR by labels
sandbox_client.bulk_delete(labels=["experiment-1"])

Labels & Filtering

# Create with labels
sandbox = sandbox_client.create(CreateSandboxRequest(
    name="labeled-sandbox",
    docker_image="python:3.11-slim",
    labels=["experiment", "ml-training"],
))

# List with filters
sandboxes = sandbox_client.list(
    status="RUNNING",
    labels=["experiment"],
    page=1,
    per_page=50,
)

for s in sandboxes.sandboxes:
    print(f"{s.name}: {s.status}")

Long-Running Tasks

Use start_background_job to run long-running tasks that continue after the API call returns. Poll for completion with get_background_job.

from prime_sandboxes import SandboxClient, CreateSandboxRequest

sandbox_client = SandboxClient()

# Create sandbox with extended timeout
sandbox = sandbox_client.create(CreateSandboxRequest(
    name="training-job",
    docker_image="python:3.11-slim",
    timeout_minutes=1440,  # 24 hours
    cpu_cores=4,
    memory_gb=16,
))
sandbox_client.wait_for_creation(sandbox.id)

# Start a long-running job in the background
job = sandbox_client.start_background_job(
    sandbox.id,
    "python train.py --epochs 100"
)
print(f"Job started: {job.job_id}")

# Poll for completion
import time
while True:
    status = sandbox_client.get_background_job(sandbox.id, job)
    if status.completed:
        print(f"Job finished with exit code: {status.exit_code}")
        print(status.stdout)
        break
    print("Still running...")
    time.sleep(30)

# Download results
sandbox_client.download_file(sandbox.id, "/app/model.pt", "./model.pt")

Async version

import asyncio
from prime_sandboxes import AsyncSandboxClient, CreateSandboxRequest

async def run_training():
    async with AsyncSandboxClient() as client:
        sandbox = await client.create(CreateSandboxRequest(
            name="async-training",
            docker_image="python:3.11-slim",
            timeout_minutes=720,
        ))
        await client.wait_for_creation(sandbox.id)

        # Start background job
        job = await client.start_background_job(
            sandbox.id,
            "python train.py"
        )

        # Poll until done
        while True:
            status = await client.get_background_job(sandbox.id, job)
            if status.completed:
                print(status.stdout)
                break
            await asyncio.sleep(30)

        await client.delete(sandbox.id)

asyncio.run(run_training())

Documentation

Full API reference: https://github.com/PrimeIntellect-ai/prime-cli/tree/main/packages/prime-sandboxes

Related Packages

  • prime - Full CLI + SDK with pods, inference, and more (includes this package)

License

MIT License - see LICENSE file for details

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

prime_sandboxes-0.2.13.tar.gz (47.5 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

prime_sandboxes-0.2.13-py3-none-any.whl (20.8 kB view details)

Uploaded Python 3

File details

Details for the file prime_sandboxes-0.2.13.tar.gz.

File metadata

  • Download URL: prime_sandboxes-0.2.13.tar.gz
  • Upload date:
  • Size: 47.5 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.11.14

File hashes

Hashes for prime_sandboxes-0.2.13.tar.gz
Algorithm Hash digest
SHA256 3ba2456108f1f6e41a6803ef58e26bd92ee411fcbd2929e5aa254d071577cebf
MD5 5878b12ec6e44f106f0221d9238b26b1
BLAKE2b-256 74c2273bfe91336b55940de081ddb08e05b31a1abd1051e0958f634f43ebcd13

See more details on using hashes here.

File details

Details for the file prime_sandboxes-0.2.13-py3-none-any.whl.

File metadata

File hashes

Hashes for prime_sandboxes-0.2.13-py3-none-any.whl
Algorithm Hash digest
SHA256 6d822db5c8a7b67ad3d70d289057301c4850cbb0cbce2cba53774da9bdcbe1d7
MD5 a57d96ad279b596bc80a562a63382b41
BLAKE2b-256 25430cb4d2f27ef77af72a2c0567c5f451db98c29fe8a260af109b5ebd31790c

See more details on using hashes here.

Supported by

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