NLP Service APIs and Models for Efficient Registration of New Clients

Shah, Sahil ; Piratla, Vihari ; Chakrabarti, Soumen ; Sarawagi, Sunita (2020) NLP Service APIs and Models for Efficient Registration of New Clients In: Association for Computational Linguistics: EMNLP 2020.

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Abstract

State-of-the-art NLP inference uses enormous neural architectures and models trained for GPU-months, well beyond the reach of most consumers of NLP. This has led to one-size-fits-all public API-based NLP service models by major AI companies, serving large numbers of clients. Neither (hardware deficient) clients nor (heavily subscribed) servers can afford traditional fine tuning. Many clients own little or no labeled data. We initiate a study of adaptation of centralized NLP services to clients, and present one practical and lightweight approach. Each client uses an unsupervised, corpus-based sketch to register to the service. The server uses an auxiliary network to map the sketch to an abstract vector representation, which then informs the main labeling network. When a new client registers with its sketch, it gets immediate accuracy benefits. We demonstrate the success of the proposed architecture using sentiment labeling, NER, and predictive language modeling

Item Type:Conference or Workshop Item (Paper)
Source:Copyright of this article belongs to ResearchGate GmbH
ID Code:128280
Deposited On:19 Oct 2022 05:06
Last Modified:15 Nov 2022 08:56

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