Unified storage framework for machine learning datasets
Project description
Space: Unified Storage for Machine Learning
Unify data in your entire machine learning lifecycle with Space, a comprehensive storage solution that seamlessly handles data from ingestion to training.
Key Features:
- Ground Truth Database
- Store and manage multimodal data in open source file formats, row or columnar, local or in cloud.
- Ingest from various sources, including ML datasets, files, and labeling tools.
- Support data manipulation (append, insert, update, delete) and version control.
- OLAP Database and Lakehouse
- Iceberg style open table format.
- Optimized for unstructued data via reference operations.
- Quickly analyze data using SQL engines like DuckDB.
- Distributed Data Processing Pipelines
- Integrate with processing frameworks like Ray for efficient data transformation.
- Store processed results as Materialized Views (MVs); incrementally update MVs when the source is changed.
- Seamless Training Framework Integration
- Access Space datasets and MVs directly via random access interfaces.
- Convert to popular ML dataset formats (e.g., TFDS, HuggingFace, Ray).
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