vastai-local-dev-loop
Configure Vast.ai local development with testing and fast iteration. Use when setting up a development environment, testing instance provisioning, or building a fast iteration cycle for GPU workloads. Trigger with phrases like "vastai dev setup", "vastai local development", "vastai dev environment", "develop with vastai".
Best use case
vastai-local-dev-loop is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Configure Vast.ai local development with testing and fast iteration. Use when setting up a development environment, testing instance provisioning, or building a fast iteration cycle for GPU workloads. Trigger with phrases like "vastai dev setup", "vastai local development", "vastai dev environment", "develop with vastai".
Teams using vastai-local-dev-loop should expect a more consistent output, faster repeated execution, less prompt rewriting.
When to use this skill
- You want a reusable workflow that can be run more than once with consistent structure.
When not to use this skill
- You only need a quick one-off answer and do not need a reusable workflow.
- You cannot install or maintain the underlying files, dependencies, or repository context.
Installation
Claude Code / Cursor / Codex
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/vastai-local-dev-loop/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How vastai-local-dev-loop Compares
| Feature / Agent | vastai-local-dev-loop | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
Configure Vast.ai local development with testing and fast iteration. Use when setting up a development environment, testing instance provisioning, or building a fast iteration cycle for GPU workloads. Trigger with phrases like "vastai dev setup", "vastai local development", "vastai dev environment", "develop with vastai".
Where can I find the source code?
You can find the source code on GitHub using the link provided at the top of the page.
Related Guides
AI Agents for Coding
Browse AI agent skills for coding, debugging, testing, refactoring, code review, and developer workflows across Claude, Cursor, and Codex.
Cursor vs Codex for AI Workflows
Compare Cursor and Codex for AI coding workflows, repository assistance, debugging, refactoring, and reusable developer skills.
Best AI Skills for Claude
Explore the best AI skills for Claude and Claude Code across coding, research, workflow automation, documentation, and agent operations.
SKILL.md Source
# Vast.ai Local Dev Loop
## Overview
Set up a fast, reproducible local development workflow for Vast.ai GPU workloads. Test Docker images locally, mock API responses for CI, and minimize cloud GPU costs during development.
## Prerequisites
- Completed `vastai-install-auth` setup
- Docker installed locally
- Python 3.8+ with pytest
## Instructions
### Step 1: Project Structure
```
vastai-project/
src/
vastai_client.py # API client wrapper
job_runner.py # Job orchestration logic
instance_manager.py # Instance lifecycle management
docker/
Dockerfile # GPU workload image
requirements.txt # Python dependencies for GPU job
tests/
test_client.py # Unit tests with mocked API
test_job_runner.py # Integration tests
conftest.py # Shared fixtures and mocks
scripts/
test-connection.sh # Quick API verification
benchmark-gpu.py # GPU benchmark script
.env.development # Dev API key (low spending limit)
.env.production # Prod API key (gitignored)
```
### Step 2: Mock the Vast.ai API for Testing
```python
# tests/conftest.py
import pytest
from unittest.mock import MagicMock
@pytest.fixture
def mock_vast_client():
client = MagicMock()
client.search_offers.return_value = {
"offers": [
{"id": 12345, "gpu_name": "RTX_4090", "gpu_ram": 24,
"dph_total": 0.22, "reliability2": 0.99,
"inet_down": 500, "ssh_host": "test.host", "ssh_port": 22},
]
}
client.create_instance.return_value = {"new_contract": 67890}
client.show_instances.return_value = [
{"id": 67890, "actual_status": "running",
"ssh_host": "test.host", "ssh_port": 22}
]
return client
```
### Step 3: Test Docker Images Locally
```bash
# Build and test your GPU image locally (CPU mode)
docker build -t my-training:dev -f docker/Dockerfile .
docker run --rm my-training:dev python -c "import torch; print('OK')"
# Test training script in CPU mode
docker run --rm -v $(pwd)/data:/workspace/data my-training:dev \
python train.py --epochs 1 --batch-size 4 --device cpu --dry-run
```
### Step 4: Quick Connection Test Script
```bash
#!/bin/bash
set -euo pipefail
echo "Testing Vast.ai connection..."
vastai show user 2>/dev/null && echo " CLI auth: OK" || echo " CLI auth: FAIL"
BALANCE=$(vastai show user --raw 2>/dev/null | python3 -c "import sys,json; print(json.load(sys.stdin).get('balance',0))")
echo " Balance: \$$BALANCE"
echo "Connection verified."
```
### Step 5: Development Workflow
```bash
# 1. Edit Docker image and training code locally
# 2. Test locally with CPU mode
docker build -t my-training:dev . && docker run --rm my-training:dev python train.py --dry-run
# 3. Push image to registry
docker tag my-training:dev ghcr.io/yourorg/training:dev && docker push ghcr.io/yourorg/training:dev
# 4. Rent cheapest GPU for real test
vastai create instance OFFER_ID --image ghcr.io/yourorg/training:dev --disk 20
# 5. Monitor, verify, destroy
vastai show instances && vastai destroy instance INSTANCE_ID
```
## Output
- Project structure with client, tests, and Docker setup
- Mocked Vast.ai client for unit tests (no API calls)
- Local Docker testing workflow (CPU mode)
- Connection verification script
## Error Handling
| Error | Cause | Solution |
|-------|-------|----------|
| Docker build fails | Missing CUDA locally | Use CPU-compatible base image for local testing |
| Mock assertions fail | API interface changed | Update mock return values to match current API |
| Balance too low for testing | Dev account underfunded | Add $5 credits for dev testing |
| Image push rejected | Registry auth missing | Run `docker login ghcr.io` first |
## Resources
- [Vast.ai CLI](https://docs.vast.ai/cli/get-started)
- [vast-cli GitHub](https://github.com/vast-ai/vast-cli)
## Next Steps
Proceed to `vastai-sdk-patterns` for production-ready API patterns.
## Examples
**TDD workflow**: Write tests that mock `search_offers` and `create_instance`, implement the job runner to pass tests, then run one real integration test against the API.
**Cost-controlled dev**: Set `dph_total<=0.10` in search queries and auto-destroy after 30 minutes to keep testing costs under $0.05.Related Skills
workhuman-local-dev-loop
Workhuman local dev loop for employee recognition and rewards API. Use when integrating Workhuman Social Recognition, or building recognition workflows with HRIS systems. Trigger: "workhuman local dev loop".
wispr-local-dev-loop
Wispr Flow local dev loop for voice-to-text API integration. Use when integrating Wispr Flow dictation, WebSocket streaming, or building voice-powered applications. Trigger: "wispr local dev loop".
windsurf-local-dev-loop
Configure Windsurf local development workflow with Cascade, Previews, and terminal integration. Use when setting up a development environment, configuring Turbo mode, or establishing a fast iteration cycle with Windsurf AI. Trigger with phrases like "windsurf dev setup", "windsurf local development", "windsurf dev environment", "windsurf workflow", "develop with windsurf".
webflow-local-dev-loop
Configure a Webflow local development workflow with TypeScript, hot reload, mocked API tests, and webhook tunneling via ngrok. Use when setting up a development environment, configuring test workflows, or establishing a fast iteration cycle with the Webflow Data API. Trigger with phrases like "webflow dev setup", "webflow local development", "webflow dev environment", "develop with webflow".
vercel-local-dev-loop
Configure Vercel local development with vercel dev, environment variables, and hot reload. Use when setting up a development environment, testing serverless functions locally, or establishing a fast iteration cycle with Vercel. Trigger with phrases like "vercel dev setup", "vercel local development", "vercel dev environment", "develop with vercel locally".
veeva-local-dev-loop
Veeva Vault local dev loop for REST API and clinical operations. Use when working with Veeva Vault document management and CRM. Trigger: "veeva local dev loop".
vastai-webhooks-events
Build event-driven workflows around Vast.ai instance lifecycle events. Use when monitoring instance status changes, implementing auto-recovery, or building event-driven GPU orchestration. Trigger with phrases like "vastai events", "vastai instance monitoring", "vastai status changes", "vastai lifecycle events".
vastai-upgrade-migration
Upgrade Vast.ai CLI, migrate API versions, and handle breaking changes. Use when upgrading vastai CLI, detecting deprecations, or migrating between API versions. Trigger with phrases like "upgrade vastai", "vastai migration", "vastai breaking changes", "update vastai CLI".
vastai-security-basics
Apply Vast.ai security best practices for API keys and instance access. Use when securing API keys, hardening SSH access to GPU instances, or auditing Vast.ai security configuration. Trigger with phrases like "vastai security", "vastai secrets", "secure vastai", "vastai API key security", "vastai ssh security".
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".
vastai-reference-architecture
Implement Vast.ai reference architecture for GPU compute workflows. Use when designing ML training pipelines, structuring GPU orchestration, or establishing architecture patterns for Vast.ai applications. Trigger with phrases like "vastai architecture", "vastai design pattern", "vastai project structure", "vastai ml pipeline".
vastai-rate-limits
Handle Vast.ai API rate limits with backoff and request optimization. Use when encountering 429 errors, implementing retry logic, or optimizing API request throughput. Trigger with phrases like "vastai rate limit", "vastai throttling", "vastai 429", "vastai retry", "vastai backoff".