Many organizations now have machine learning experts and teams building infrastructure, tools, and abstracted layers so that developers and data scientists can iterate and execute simply and effectively on their machine learning (ML) workloads.
But with the variety of ML use, both internal and external, comes the difficulty of building ML platforms that can meet the needs of different and sometimes conflicting requirements. What’s needed are flexible and scalable machine learning platforms that can handle:
- Disparate inputs
- Unique data types
- Varied dependencies
- And complex integrations
Develop on your laptop and then scale the same Python code elastically across hundreds of ndes or GPUs on any cloud — with no changes.
Train, test, deploy, serve, and monitor machine learning models efficiently and with speed with Ray and Anyscale.
Rely on a robust infrastructure that can scale up machine learning workflows as needed. Scale everything from XGBoost to Python to TensorFlow to Scikit-learn on top of Ray.
Gain to the most up-to-date technologies and their communities, don’t limit what libraries or packages you can use for your models. Load data from Snowflake, Databricks, or S3. Track your experiments with Weights & Balances or MLFlow. Or monitor your production services with Grafana. Don’t limit yourself.
Reduce friction and increase productivity by eliminating the gap between prototyping and production. Use the same tech stack regardless of environment.
Explore how thousands of engineers from companies of all sizes and across all verticals are tackling real-world workloads with Ray and Anyscale.