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Blueprint for a Production-Ready Information Retrieval System based on Multi-Modal Embeddings

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2021

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Gesellschaft für Informatik, Bonn

Zusammenfassung

Deep Learning models for mapping documents from different domains, e.g., text, images, and audio, into a common vector space, enable a seamless information retrieval between the different domains and, thus, significantly improve the user experience of many expert tools. Despite various models for multi-modal mappings presented in scientific literature, the implementation and integration remain a challenge within the industry, especially for small or medium-sized companies. Reasons are, that developing such retrieval systems for production use-cases is a non-trivial task, requiring scalable, reliable, and cost-efficient infrastructure, services as well as adequate Deep Learning models. We present a generic and flexible blueprint architecture, targeting the development of a production-ready image-text retrieval search system using Kubernetes, MLflow, Elasticsearch, and integrating state-of-the-art Deep Learning models.

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Ebert, André; Apel, Anika; Chodyko, Piotr; Hiroyasu, Kyle; Ismali, Festina; Koo, Hyein; Kronburger, Julia; Pesch, Robert (2021): Blueprint for a Production-Ready Information Retrieval System based on Multi-Modal Embeddings. INFORMATIK 2021. DOI: 10.18420/informatik2021-095. Gesellschaft für Informatik, Bonn. PISSN: 1617-5468. ISBN: 978-3-88579-708-1. pp. 1165-1175. Workshop: Künstliche Intelligenz für kleine und mittlere Unternehmen (KI-KMU 2021). Berlin. 27. September - 1. Oktober 2021

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