vastai-sdk-patterns

Apply production-ready Vast.ai SDK patterns for Python and REST API. Use when implementing Vast.ai integrations, refactoring SDK usage, or establishing coding standards for GPU cloud operations. Trigger with phrases like "vastai SDK patterns", "vastai best practices", "vastai code patterns", "idiomatic vastai".

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vastai-pack

Claude Code skill pack for Vast.ai (24 skills)

saas packs v1.0.0
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Installation

This skill is included in the vastai-pack plugin:

/plugin install vastai-pack@claude-code-plugins-plus

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Instructions

Vast.ai SDK Patterns

Overview

Production-ready patterns for the Vast.ai CLI, Python SDK, and REST API at cloud.vast.ai/api/v0. Covers typed search queries, instance lifecycle management, offer scoring, and error handling.

Prerequisites

  • Completed vastai-install-auth setup
  • Python 3.8+ with requests
  • Familiarity with the Vast.ai marketplace model

Instructions

Pattern 1: Typed Search Query Builder


from dataclasses import dataclass
from typing import Optional

@dataclass
class GPUQuery:
    num_gpus: int = 1
    gpu_name: Optional[str] = None
    gpu_ram_min: Optional[float] = None
    reliability_min: float = 0.95
    max_dph: Optional[float] = None

    def to_filter(self) -> dict:
        f = {"rentable": {"eq": True}, "num_gpus": {"eq": self.num_gpus},
             "reliability2": {"gte": self.reliability_min}}
        if self.gpu_name:
            f["gpu_name"] = {"eq": self.gpu_name}
        if self.gpu_ram_min:
            f["gpu_ram"] = {"gte": self.gpu_ram_min}
        if self.max_dph:
            f["dph_total"] = {"lte": self.max_dph}
        return f

Pattern 2: Context-Managed Instance Lifecycle


from contextlib import contextmanager

@contextmanager
def managed_instance(client, offer_id, image, disk_gb=20, timeout=300):
    """Auto-destroy instance on exit or exception."""
    inst = client.create_instance(offer_id, image, disk_gb)
    instance_id = inst["new_contract"]
    try:
        info = client.poll_until_running(instance_id, timeout)
        yield info
    finally:
        client.destroy_instance(instance_id)

# Usage
with managed_instance(client, offer["id"], "pytorch/pytorch:latest") as inst:
    ssh_exec(inst["ssh_host"], inst["ssh_port"], "python train.py")

Pattern 3: Offer Scoring


def score_offer(offer, weights=None):
    w = weights or {"cost": 0.4, "reliability": 0.3, "perf": 0.3}
    return (w["cost"] * (1.0 / max(offer["dph_total"], 0.01)) +
            w["reliability"] * offer.get("reliability2", 0) * 100 +
            w["perf"] * offer.get("dlperf", 0))

best = max(offers, key=score_offer)

Pattern 4: Retry with Backoff


import time
from functools import wraps

def retry(max_attempts=3, backoff=2):
    def decorator(func):
        @wraps(func)
        def wrapper(*args, **kwargs):
            for i in range(max_attempts):
                try:
                    return func(*args, **kwargs)
                except Exception as e:
                    if i == max_attempts - 1: raise
                    time.sleep(backoff ** i)
        return wrapper
    return decorator

Pattern 5: SSH Command Executor


import subprocess

def ssh_exec(host, port, cmd, timeout=300):
    r = subprocess.run(
        ["ssh", "-p", str(port), "-o", "StrictHostKeyChecking=no",
         f"root@{host}", cmd],
        capture_output=True, text=True, timeout=timeout)
    if r.returncode != 0:
        raise RuntimeError(f"SSH failed: {r.stderr}")
    return r.stdout

Output

  • Typed GPUQuery builder for search filters
  • Context-managed instance lifecycle with auto-destroy
  • Offer scoring algorithm (cost, reliability, performance)
  • Retry decorator with exponential backoff
  • SSH command executor for remote jobs

Error Handling

Error Cause Solution
Offer unavailable Already rented Re-search and pick next best
SSH key rejected Key not uploaded Upload at cloud.vast.ai > SSH Keys
Instance destroyed unexpectedly Spot preemption Use managed_instance with checkpoints
API timeout Network or server issue Apply retry decorator

Resources

Next Steps

See vastai-core-workflow-a for the complete provisioning workflow.

Examples

Cost-optimized scoring: Use weights {"cost": 0.7, "reliability": 0.2, "perf": 0.1} for batch jobs where price dominates. Use {"cost": 0.1, "reliability": 0.6, "perf": 0.3} for long training runs where uptime matters.

Auto-cleanup: Wrap any GPU job in managed_instance to guarantee destruction even on crash.

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