Skip to content

Roadmap: data prep and portability backlog #52

@daniel-thom

Description

@daniel-thom

Summary

Track the initial data prep and portability roadmap for datasight.

This backlog focuses on helping users move from raw files to analysis-ready, portable, and shareable datasight projects.

Proposed sequence

Why this order

  1. Import modes are immediately useful and improve performance/portability with relatively low implementation risk.
  2. Export bundles and session export/import make analyses easier to share, archive, and reproduce.
  3. Untidy-data detection opens the door to guided preparation workflows.
  4. A prep recipe engine provides the inspectable execution model needed for AI-assisted reshaping and cleaning.
  5. Shortcut expansion is independent polish that can ship whenever convenient.

Outcome

Completing this roadmap should give datasight a more coherent flow from:

  • raw CSV/Parquet inputs,
  • to managed and portable project state,
  • to reproducible outputs,
  • to guided data preparation for messy real-world datasets.

Metadata

Metadata

Assignees

No one assigned

    Labels

    enhancementNew feature or request

    Type

    No type
    No fields configured for issues without a type.

    Projects

    No projects

    Milestone

    No milestone

    Relationships

    None yet

    Development

    No branches or pull requests

    Issue actions