‹ 首页

lambda-labs-gpu-cloud

@orchestra-research · 收录于 1 周前 · 上游提交 1 个月前

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.

适合你,如果需要按需或预留GPU实例进行大规模ML训练

/ 下载安装
lambda-labs-gpu-cloud.skill双击,或拖进 Claude 桌面版 / Cowork,即完成安装↓ .skill↓ .zip
用别的 agent?下载 .zip 解压,把文件夹放进它的技能目录
Claude Code~/.claude/skills/(项目级 .claude/skills/)
Codex CLI~/.codex/skills/
Cursor自动读取上面两处目录
其他工具见其文档的「skills」目录;两个下载是同一份文件,只是名字不同
/ 通过 npx 安装 校验哈希
npx oh-my-skill add orchestra-research/ai-research-skills/lambda-labs-gpu-cloud
/ 通过 bash 安装
curl -fsSL https://oh-my-skill.com/install.sh | bash -s -- orchestra-research/ai-research-skills/lambda-labs-gpu-cloud
/ 已经装过?验证本机副本,不用重装
npx oh-my-skill verify orchestra-research/ai-research-skills/lambda-labs-gpu-cloud
安装目标可用 --agent / --scope 或 --to 明确指定;省略时只会在唯一已存在的 agent 目录上自动选择,零命中或多命中会停止并提示。content_hash 缺失或不一致均拒装。
10567GitHub stars
~2.5K最小装载
~7.6K含声明引用
~7.6K文本包总量
镜像托管

怎么用

商店整理自技能原文 · 版本 773a529 · 表述以原文为准
它做什么

Claude 可以帮你管理 Lambda Labs 的 GPU 云实例,包括查看可用 GPU 类型、启动/终止实例、管理 SSH 密钥和持久化文件系统,以及运行训练或推理任务。

什么时候触发

当你需要为机器学习训练或推理获取 GPU 云实例,例如需要 SSH 访问、持久化存储或多节点集群时触发。

装好后可以这样说
返回 GPU 型号、价格等信息。
技能原文 SKILL.md作者撰写 · MIT · 773a529

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. Optionally attach filesystem
  6. Launch and wait 3-15 minutes
Connect via SSH
# Get instance IP from console
ssh ubuntu@<INSTANCE-IP>

# Or with specific key
ssh -i ~/.ssh/lambda_key ubuntu@<INSTANCE-IP>
GPU instances
Available GPUs

| GPU | VRAM | Price/GPU/hr | Best For | |-----|------|--------------|----------| | B200 SXM6 | 180 GB | $4.99 | Largest models, fastest training | | H100 SXM | 80 GB | $2.99-3.29 | Large model training | | H100 PCIe | 80 GB | $2.49 | Cost-effective H100 | | GH200 | 96 GB | $1.49 | Single-GPU large models | | A100 80GB | 80 GB | $1.79 | Production training | | A100 40GB | 40 GB | $1.29 | Standard training | | A10 | 24 GB | $0.75 | Inference, fine-tuning | | A6000 | 48 GB | $0.80 | Good VRAM/price ratio | | V100 | 16 GB | $0.55 | Budget training |

Instance configurations
8x GPU: Best for distributed training (DDP, FSDP)
4x GPU: Large models, multi-GPU training
2x GPU: Medium workloads
1x GPU: Fine-tuning, inference, development
Launch times
  • Single-GPU: 3-5 minutes
  • Multi-GPU: 10-15 minutes
Lambda Stack

All instances come with Lambda Stack pre-installed:

# Included software
- Ubuntu 22.04 LTS
- NVIDIA drivers (latest)
- CUDA 12.x
- cuDNN 8.x
- NCCL (for multi-GPU)
- PyTorch (latest)
- TensorFlow (latest)
- JAX
- JupyterLab
Verify installation
# Check GPU
nvidia-smi

# Check PyTorch
python -c "import torch; print(torch.cuda.is_available())"

# Check CUDA version
nvcc --version
Python API
Installation
pip install lambda-cloud-client
Authentication
import os
import lambda_cloud_client

# Configure with API key
configuration = lambda_cloud_client.Configuration(
    host="https://cloud.lambdalabs.com/api/v1",
    access_token=os.environ["LAMBDA_API_KEY"]
)
List available instances
with lambda_cloud_client.ApiClient(configuration) as api_client:
    api = lambda_cloud_client.DefaultApi(api_client)

    # Get available instance types
    types = api.instance_types()
    for name, info in types.data.items():
        print(f"{name}: {info.instance_type.description}")
Launch instance
from lambda_cloud_client.models import LaunchInstanceRequest

request = LaunchInstanceRequest(
    region_name="us-west-1",
    instance_type_name="gpu_1x_h100_sxm5",
    ssh_key_names=["my-ssh-key"],
    file_system_names=["my-filesystem"],  # Optional
    name="training-job"
)

response = api.launch_instance(request)
instance_id = response.data.instance_ids[0]
print(f"Launched: {instance_id}")
List running instances
instances = api.list_instances()
for instance in instances.data:
    print(f"{instance.name}: {instance.ip} ({instance.status})")
Terminate instance
from lambda_cloud_client.models import TerminateInstanceRequest

request = TerminateInstanceRequest(
    instance_ids=[instance_id]
)
api.terminate_instance(request)
SSH key management
from lambda_cloud_client.models import AddSshKeyRequest

# Add SSH key
request = AddSshKeyRequest(
    name="my-key",
    public_key="ssh-rsa AAAA..."
)
api.add_ssh_key(request)

# List keys
keys = api.list_ssh_keys()

# Delete key
api.delete_ssh_key(key_id)
CLI with curl
List instance types
curl -u $LAMBDA_API_KEY: \
  https://cloud.lambdalabs.com/api/v1/instance-types | jq
Launch instance
curl -u $LAMBDA_API_KEY: \
  -X POST https://cloud.lambdalabs.com/api/v1/instance-operations/launch \
  -H "Content-Type: application/json" \
  -d '{
    "region_name": "us-west-1",
    "instance_type_name": "gpu_1x_h100_sxm5",
    "ssh_key_names": ["my-key"]
  }' | jq
Terminate instance
curl -u $LAMBDA_API_KEY: \
  -X POST https://cloud.lambdalabs.com/api/v1/instance-operations/terminate \
  -H "Content-Type: application/json" \
  -d '{"instance_ids": ["<INSTANCE-ID>"]}' | jq
Persistent storage
Filesystems

Filesystems persist data across instance restarts:

# Mount location
/lambda/nfs/<FILESYSTEM_NAME>

# Example: save checkpoints
python train.py --checkpoint-dir /lambda/nfs/my-storage/checkpoints
Create filesystem
  1. Go to Storage in Lambda console
  2. Click "Create filesystem"
  3. Select region (must match instance region)
  4. Name and create
Attach to instance

Filesystems must be attached at instance launch time:

  • Via console: Select filesystem when launching
  • Via API: Include file_system_names in launch request
Best practices
# Store on filesystem (persists)
/lambda/nfs/storage/
  ├── datasets/
  ├── checkpoints/
  ├── models/
  └── outputs/

# Local SSD (faster, ephemeral)
/home/ubuntu/
  └── working/  # Temporary files
SSH configuration
Add SSH key
# Generate key locally
ssh-keygen -t ed25519 -f ~/.ssh/lambda_key

# Add public key to Lambda console
# Or via API
Multiple keys
# On instance, add more keys
echo 'ssh-rsa AAAA...' >> ~/.ssh/authorized_keys
Import from GitHub
# On instance
ssh-import-id gh:username
SSH tunneling
# Forward Jupyter
ssh -L 8888:localhost:8888 ubuntu@<IP>

# Forward TensorBoard
ssh -L 6006:localhost:6006 ubuntu@<IP>

# Multiple ports
ssh -L 8888:localhost:8888 -L 6006:localhost:6006 ubuntu@<IP>
JupyterLab
Launch from console
  1. Go to Instances page
  2. Click "Launch" in Cloud IDE column
  3. JupyterLab opens in browser
Manual access
# On instance
jupyter lab --ip=0.0.0.0 --port=8888

# From local machine with tunnel
ssh -L 8888:localhost:8888 ubuntu@<IP>
# Open http://localhost:8888
Training workflows
Single-GPU training
# SSH to instance
ssh ubuntu@<IP>

# Clone repo
git clone https://github.com/user/project
cd project

# Install dependencies
pip install -r requirements.txt

# Train
python train.py --epochs 100 --checkpoint-dir /lambda/nfs/storage/checkpoints
Multi-GPU training (single node)
# train_ddp.py
import torch
import torch.distributed as dist
from torch.nn.parallel import DistributedDataParallel as DDP

def main():
    dist.init_process_group("nccl")
    rank = dist.get_rank()
    device = rank % torch.cuda.device_count()

    model = MyModel().to(device)
    model = DDP(model, device_ids=[device])

    # Training loop...

if __name__ == "__main__":
    main()
# Launch with torchrun (8 GPUs)
torchrun --nproc_per_node=8 train_ddp.py
Checkpoint to filesystem
import os

checkpoint_dir = "/lambda/nfs/my-storage/checkpoints"
os.makedirs(checkpoint_dir, exist_ok=True)

# Save checkpoint
torch.save({
    'epoch': epoch,
    'model_state_dict': model.state_dict(),
    'optimizer_state_dict': optimizer.state_dict(),
    'loss': loss,
}, f"{checkpoint_dir}/checkpoint_{epoch}.pt")
1-Click Clusters
Overview

High-performance Slurm clusters with:

  • 16-512 NVIDIA H100 or B200 GPUs
  • NVIDIA Quantum-2 400 Gb/s InfiniBand
  • GPUDirect RDMA at 3200 Gb/s
  • Pre-installed distributed ML stack
Included software
  • Ubuntu 22.04 LTS + Lambda Stack
  • NCCL, Open MPI
  • PyTorch with DDP and FSDP
  • TensorFlow
  • OFED drivers
Storage
  • 24 TB NVMe per compute node (ephemeral)
  • Lambda filesystems for persistent data
Multi-node training
# On Slurm cluster
srun --nodes=4 --ntasks-per-node=8 --gpus-per-node=8 \
  torchrun --nnodes=4 --nproc_per_node=8 \
  --rdzv_backend=c10d --rdzv_endpoint=$MASTER_ADDR:29500 \
  train.py
Networking
Bandwidth
  • Inter-instance (same region): up to 200 Gbps
  • Internet outbound: 20 Gbps max
Firewall
  • Default: Only port 22 (SSH) open
  • Configure additional ports in Lambda console
  • ICMP traffic allowed by default
Private IPs
# Find private IP
ip addr show | grep 'inet '
Common workflows
Workflow 1: Fine-tuning LLM
# 1. Launch 8x H100 instance with filesystem

# 2. SSH and setup
ssh ubuntu@<IP>
pip install transformers accelerate peft

# 3. Download model to filesystem
python -c "
from transformers import AutoModelForCausalLM
model = AutoModelForCausalLM.from_pretrained('meta-llama/Llama-2-7b-hf')
model.save_pretrained('/lambda/nfs/storage/models/llama-2-7b')
"

# 4. Fine-tune with checkpoints on filesystem
accelerate launch --num_processes 8 train.py \
  --model_path /lambda/nfs/storage/models/llama-2-7b \
  --output_dir /lambda/nfs/storage/outputs \
  --checkpoint_dir /lambda/nfs/storage/checkpoints
Workflow 2: Batch inference
# 1. Launch A10 instance (cost-effective for inference)

# 2. Run inference
python inference.py \
  --model /lambda/nfs/storage/models/fine-tuned \
  --input /lambda/nfs/storage/data/inputs.jsonl \
  --output /lambda/nfs/storage/data/outputs.jsonl
Cost optimization
Choose right GPU

| Task | Recommended GPU | |------|-----------------| | LLM fine-tuning (7B) | A100 40GB | | LLM fine-tuning (70B) | 8x H100 | | Inference | A10, A6000 | | Development | V100, A10 | | Maximum performance | B200 |

Reduce costs
  1. Use filesystems: Avoid re-downloading data
  2. Checkpoint frequently: Resume interrupted training
  3. Right-size: Don't over-provision GPUs
  4. Terminate idle: No auto-stop, manually terminate
Monitor usage
  • Dashboard shows real-time GPU utilization
  • API for programmatic monitoring
Common issues

| Issue | Solution | |-------|----------| | Instance won't launch | Check region availability, try different GPU | | SSH connection refused | Wait for instance to initialize (3-15 min) | | Data lost after terminate | Use persistent filesystems | | Slow data transfer | Use filesystem in same region | | GPU not detected | Reboot instance, check drivers |

References
  • [Advanced Usage](references/advanced-usage.md) - Multi-node training, API automation
  • [Troubleshooting](references/troubleshooting.md) - Common issues and solutions
Resources
  • Documentation: https://docs.lambda.ai
  • Console: https://cloud.lambda.ai
  • Pricing: https://lambda.ai/instances
  • Support: https://support.lambdalabs.com
  • Blog: https://lambda.ai/blog
按 MIT 许可原样转载,未经改动 · 在 GitHub 查看 →

评论

登录即可评论;带「已验证安装」的,是发布者名下有本店的安装或持有记录。