PengboLiu/Slot-Filling
Spoken Language Understanding(SLU)/Slot Filling(语义槽填充) in PyTorch
This tool helps organize unstructured spoken requests, like those given to a virtual assistant, by identifying key pieces of information. It takes a sentence or spoken phrase as input and extracts specific details, such as departure cities, destinations, and dates, labeling each part. This is ideal for someone building a system that needs to understand and act on user commands related to tasks like travel booking.
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Use this if you need to automatically extract specific details from user's spoken or typed requests to power conversational AI or information retrieval systems.
Not ideal if you need to understand the overall sentiment or general topic of a conversation, rather than extracting precise data points.
Stars
14
Forks
9
Language
Perl
License
—
Category
Last pushed
May 22, 2018
Commits (30d)
0
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