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Semantic Parsing in Context (SParC) Dataset

Created by Yu et al. at 2019, the Semantic Parsing in Context (SParC) Dataset consists of 4,298 coherent question sequences (12k+ unique individual questions annotated with SQL queries annotated byt. It is the context-dependent/multi-turn version of the Spider task., in English language. Containing 4,298 in JSON, SQL file format.

Dataset Sources

Here you can download the Semantic Parsing in Context (SParC) dataset in JSON, SQL format.

Download Semantic Parsing in Context (SParC) dataset JSON, SQL files

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Paper

Read full original Semantic Parsing in Context (SParC) paper.

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