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Using Cake for LambdaLabs

LambdaLabs offers high-performance cloud GPUs designed for AI training and inference at scale. It’s a popular alternative to mainstream clouds for teams needing fast, cost-effective access to NVIDIA hardware. With Cake, LambdaLabs becomes part of a composable AI platform, making it easy to run training jobs, inference endpoints, or agent workloads on GPU-backed infrastructure without managing low-level configuration.
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How it works

Run high-performance GPU workloads on LambdaLabs with Cake

Cake integrates LambdaLabs into your AI stack with declarative provisioning, autoscaling, and workload orchestration—so you can focus on performance, not infrastructure.

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GPU-first orchestration

Use Cake to deploy training, fine-tuning, or inference pipelines on LambdaLabs GPUs using Git-based workflows.

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Optimized for cost and speed

Run high-throughput jobs on Lambda’s powerful GPU machines, while Cake handles provisioning, scaling, and runtime monitoring.

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Composable with the rest of your stack

Combine LambdaLabs compute with other Cake-supported tools like Ray, Hugging Face, or LangGraph for end-to-end AI workflows.

Frequently asked questions about Cake and LambdaLabs

What is LambdaLabs?
LambdaLabs is a cloud platform offering powerful GPU compute for AI training, inference, and scientific workloads.
Why use LambdaLabs with Cake?
Cake automates infrastructure provisioning and orchestration on LambdaLabs, enabling scalable, reproducible AI workloads without manual setup.
Can I train and serve models on LambdaLabs through Cake?
Yes. Cake supports training, fine-tuning, and inference jobs on LambdaLabs, with integrations for PyTorch, Ray, and other frameworks.
Is LambdaLabs cheaper than AWS or GCP for GPU workloads?
Often, yes. LambdaLabs provides competitive GPU pricing, and Cake helps optimize usage with autoscaling and cost-aware orchestration.
Can I use LambdaLabs alongside other clouds?
Absolutely. Cake lets you mix LambdaLabs GPU compute with storage, orchestration, or services running on AWS, GCP, or on-prem.
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