Published Oct 29, 2020
Ines & Sofie — Building Industrial-Strength NLP Pipelines
Ines Montani and Sofie Van Landeghem delve into the intricacies of building robust NLP pipelines, discussing the critical role of data annotation and the integration of Prodigy with spaCy. They highlight advancements in spaCy’s configuration, efficiency, and multilingual capabilities, emphasizing their impact on real-world applicability and continuous model improvement.

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