Skip to content

Using Cake for XGBoost

XGBoost is a scalable and efficient gradient boosting library widely used for structured data and tabular ML tasks.
Book a demo
testimonial-bg

Cake cut a year off our product development cycle. That's the difference between life and death for small companies

Dan Doe
President, Altis Labs

testimonial-bg

Cake cut a year off our product development cycle. That's the difference between life and death for small companies

Jane Doe
CEO, AMD

testimonial-bg

Cake cut a year off our product development cycle. That's the difference between life and death for small companies

Michael Doe
Vice President, Test Company

How it works

Train gradient boosting models at scale with Cake

Cake integrates XGBoost for high-performance training and serving, supporting experimentation, retraining, and policy-compliant pipelines.

git-graph

Boosted trees for structured data

Use XGBoost for classification, regression, and ranking on tabular datasets.

git-graph

Scalable and fast

Train on distributed infrastructure with GPU acceleration and data parallelism.

git-graph

Trackable and governed

Enforce compliance, monitor performance, and manage experiments with full visibility.

Frequently asked questions about Cake and XGBoost

What is XGBoost?
XGBoost is a fast and scalable gradient boosting algorithm widely used for structured data modeling tasks.
How does Cake support XGBoost?
Cake deploys XGBoost models as part of secure, reproducible pipelines with version control and governance.
Why choose XGBoost over other algorithms?
XGBoost offers excellent accuracy, regularization, and performance on tabular datasets.
Can XGBoost models be accelerated with GPUs?
Yes—XGBoost supports GPU training, and Cake helps manage compute allocation and scaling.
Is XGBoost suitable for production inference?
Absolutely—Cake enables model serving, monitoring, and retraining with full observability.
Key XGBoost links