lambda-labs-gpu-cloud

Solid

Reserved and on-demand GPU cloud instances for ML training and inference. Use when you need dedicated GPU instances with simple SSH access, persistent filesystems, or high-performance multi-node clusters for large-scale training.

DevOps & Infrastructure 9,182 stars 697 forks Updated 1 months ago MIT

Install

View on GitHub

Quality Score: 94/100

Stars 20%
100
Recency 20%
75
Frontmatter 20%
70
Documentation 15%
100
Issue Health 10%
50
License 10%
100
Description 5%
100

Skill Content

# Lambda Labs GPU Cloud Comprehensive guide to running ML workloads on Lambda Labs GPU cloud with on-demand instances and 1-Click Clusters. ## When to use Lambda Labs **Use Lambda Labs when:** - Need dedicated GPU instances with full SSH access - Running long training jobs (hours to days) - Want simple pricing with no egress fees - Need persistent storage across sessions - Require high-performance multi-node clusters (16-512 GPUs) - Want pre-installed ML stack (Lambda Stack with PyTorch, CUDA, NCCL) **Key features:** - **GPU variety**: B200, H100, GH200, A100, A10, A6000, V100 - **Lambda Stack**: Pre-installed PyTorch, TensorFlow, CUDA, cuDNN, NCCL - **Persistent filesystems**: Keep data across instance restarts - **1-Click Clusters**: 16-512 GPU Slurm clusters with InfiniBand - **Simple pricing**: Pay-per-minute, no egress fees - **Global regions**: 12+ regions worldwide **Use alternatives instead:** - **Modal**: For serverless, auto-scaling workloads - **SkyPilot**: For multi-cloud orchestration and cost optimization - **RunPod**: For cheaper spot instances and serverless endpoints - **Vast.ai**: For GPU marketplace with lowest prices ## Quick start ### Account setup 1. Create account at https://lambda.ai 2. Add payment method 3. Generate API key from dashboard 4. Add SSH key (required before launching instances) ### Launch via console 1. Go to https://cloud.lambda.ai/instances 2. Click "Launch instance" 3. Select GPU type and region 4. Choose SSH key 5. Optionall...

Details

Author
Orchestra-Research
Repository
Orchestra-Research/AI-Research-SKILLs
Created
7 months ago
Last Updated
1 months ago
Language
TeX
License
MIT

Integrates with

Similar Skills

Semantically similar based on skill content — not just same category

DevOps & Infrastructure Featured

lambda-labs-gpu-cloud

Reserved and on-demand GPU cloud instances for ML training and inference. Use when you need dedicated GPU instances with simple SSH access, persistent filesystems, or high-performance multi-node clusters for large-scale training.

27,705 Updated today
davila7
AI & Automation Solid

lambda-labs-gpu-cloud

Reserved and on-demand GPU cloud instances for ML training and inference. Use when you need dedicated GPU instances with simple SSH access, persistent filesystems, or high-performance multi-node clusters for large-scale training.

175,435 Updated today
NousResearch
DevOps & Infrastructure Featured

modal-serverless-gpu

Serverless GPU cloud platform for running ML workloads. Use when you need on-demand GPU access without infrastructure management, deploying ML models as APIs, or running batch jobs with automatic scaling.

27,705 Updated today
davila7
DevOps & Infrastructure Solid

modal-serverless-gpu

Serverless GPU cloud platform for running ML workloads. Use when you need on-demand GPU access without infrastructure management, deploying ML models as APIs, or running batch jobs with automatic scaling.

175,435 Updated today
NousResearch
DevOps & Infrastructure Solid

modal-serverless-gpu

Serverless GPU cloud platform for running ML workloads. Use when you need on-demand GPU access without infrastructure management, deploying ML models as APIs, or running batch jobs with automatic scaling.

9,182 Updated 1 months ago
Orchestra-Research