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Site Navigation

  • Get Started

  • Use Cases

  • Example Gallery

  • Library

    • Ray CoreScale general Python applications

    • Ray DataScale data ingest and preprocessing

    • Ray TrainScale machine learning training

    • Ray TuneScale hyperparameter tuning

    • Ray ServeScale model serving

    • Ray RLlibScale reinforcement learning

  • APIs

  • Resources

    • Discussion ForumGet your Ray questions answered

    • TrainingHands-on learning

    • BlogUpdates, best practices, user-stories

    • EventsWebinars, meetups, office hours

    • Success StoriesReal-world workload examples

    • EcosystemLibraries integrated with Ray

    • CommunityConnect with us

Try Managed Ray

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  • Ray APIs
  • Ray Data API
  • Dataset API
  • BlockAccessor
  • random_shuffle

random_shuffle#

BlockAccessor.random_shuffle(random_seed: int | None) → pyarrow.Table | pandas.DataFrame[source]#

Randomly shuffle this block.

previous

num_rows

next

rename_columns

On this page
  • BlockAccessor.random_shuffle()
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