GCP Document AI Warehouse

From GM-RKB
(Redirected from Document AI Warehouse)
Jump to navigation Jump to search

A GCP Document AI Warehouse is a cloud-based document warehousing platform offered by Google's GCP.

  • Context:
    • It can unify searching, storing, governing, and managing documents (including AI-extracted data).
    • It can have GCP Document AI Warehouse Features, such as:
      • Unified APIs to manage documents, properties, and workflows.
      • Hierarchical folders for document organization.
      • Full text, semantic, and faceted search capabilities.
      • Fine-grained access controls for governance.
      • High throughput pipelines to ingest external documents.
      • Elastic infrastructure to scale on demand.
      • Integrations with GCP identity management.
      • Document state tracking and conditional notifications.
    • It can (typically) support GCP Document AI Warehouse Use Cases, such as:
      • Finding documents faster via semantic search.
      • Streamlining document handling workflows.
      • Applying Document AI for classification and data extraction.
      • Maintaining strong access governance over documents.
      • Scaling up enterprise document repositories.
      • Centralizing distributed document silos.
      • Building document-based applications.
    • It can integrate various Google Cloud services into one tailored platform for documents.
    • It can provide key capabilities like semantic search, workflows, access controls, external storage integration, and elastic scaling.
    • It can help organizations find, organize, and govern documents faster while streamlining document workflows.
    • It can have consumption-based pricing that charges only for documents indexed and API calls made.
    • It can aim to reduce costs and risks of managing large document repositories.
    • It can leverage GCP Document AI services for document classification, data extraction, and metadata enrichment.
  • Counter-Example(s):
  • See: GCP Document AI, Enterprise Document Management, Document Database, Document Classification, Information Retrieval.


References

2023