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  • What is a record?
  • Using records
  • Types of records
  • Record
  • SequenceRecord

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  1. Datavec

Records

How to use data records in DataVec.

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Last updated 5 years ago

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What is a record?

In the DataVec world a Record represents a single entry in a dataset. DataVec differentiates types of records to make data manipulation easier with built-in APIs. Sequences and 2D records are distinguishable.

Using records

Most of the time you do not need to interact with the record classes directly, unless you are manually iterating records for the purpose of forwarding through a neural network.

Types of records

Record

A standard implementation of the Record interface

SequenceRecord

A standard implementation of the SequenceRecord interface.

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