Jina Embeddings
Jina embeddings are vector representations of data, primarily text and images, designed to capture semantic meaning and relationships for improved information retrieval and downstream tasks. Current research focuses on enhancing embedding quality through novel loss functions (e.g., SimO loss for fine-grained contrastive learning), developing efficient architectures like decoupled embeddings for handling large datasets and multilingual contexts, and exploring non-Euclidean spaces (e.g., hyperbolic space) to better represent complex relationships. These advancements are improving performance in diverse applications, including recommendation systems, question answering, and even cybersecurity by enabling more accurate similarity searches and more effective model training.
Papers
Semi-automated extraction of research topics and trends from NCI funding in radiological sciences from 2000-2020
Mark Nguyen, Peter Beidler, Joseph Tsai, August Anderson, Daniel Chen, Paul Kinahan, John Kang
Vec2Vec: A Compact Neural Network Approach for Transforming Text Embeddings with High Fidelity
Andrew Kean Gao