Vast.ai vs Lambda Labs
A detailed comparison to help you choose between Vast.ai and Lambda Labs.
Vast.ai Rent GPUs from individuals for 2-10x cheaper compute | Lambda Labs On-demand GPU cloud for ML training and inference | |
|---|---|---|
| Overview | ||
| Rating | 4.2 (65 reviews)✓ | 4.0 (158 reviews) |
| Pricing model | usage-based | usage-based |
| Starting price | Free tier available | Free tier available |
| Best for | Machine learning researchers, indie game developers, and budget-conscious teams running non-critical batch workloads who can tolerate occasional interruptions. | ML researchers and engineers who need affordable, powerful GPU compute for training and experimentation without lock-in to larger cloud platforms. |
| Specifications (entry plan) | ||
| CPU cores | 0 vCPU | 0 vCPU |
| RAM | 0 GB | 0 GB |
| Storage | 0 GB | 0 GB |
| Bandwidth | 0 TB/mo | 0 TB/mo |
| SLA uptime | — | 99.9%✓ |
| Data-center count | 0 | 3✓ |
| Features | ||
| IPv6 | ||
| DDoS protection | ||
| Automated backups | ||
| Snapshots | ||
| Managed option | ||
| Bare metal | ||
| GPU available | ||
| S3-compatible | ||
| Hourly billing | ||
| Free tier | ||
| Data-center locations | ||
| Regions | Global — distributed hosts | United States |
| Tags | ||
| Tags | hourly billinggpu availableeu datacenterus datacenterapac datacenter | hourly billinggpu availableus datacenterapi access |
| Visit Vast.ai → | Visit Lambda Labs → | |
Vast.ai
Pros
- + Achieve significant cost savings compared to major cloud providers
- + Access diverse GPU types without long-term commitments
- + Deploy instances in seconds with minimal setup
- + Bid competitively to secure even lower rates
Cons
- - Provider uptime and reliability vary; some instances may disconnect unexpectedly
- - Network speeds and hardware quality inconsistent across providers
- - Limited enterprise support and SLAs compared to traditional cloud
Lambda Labs
Pros
- + Access high-end GPUs (A100, H100) at competitive hourly rates
- + Run bare-metal instances with minimal virtualization overhead
- + Get transparent, simple pricing without hidden fees
- + Deploy pre-configured ML environments in minutes
- + Benefit from high-speed GPU interconnects for multi-GPU training
Cons
- - Limited geographic availability compared to major cloud providers
- - Smaller ecosystem and fewer integrated services (databases, storage) than AWS/GCP
- - Less mature support and documentation than established competitors
Stay in the loop
Get weekly updates on the best new AI tools, deals, and comparisons.
No spam. Unsubscribe anytime.