Arctic-Embed: Scalable, Efficient, and Accurate Text Embedding Models
About
This report describes the training dataset creation and recipe behind the family of \texttt{arctic-embed} text embedding models (a set of five models ranging from 22 to 334 million parameters with weights open-sourced under an Apache-2 license). At the time of their release, each model achieved state-of-the-art retrieval accuracy for models of their size on the MTEB Retrieval leaderboard, with the largest model, arctic-embed-l outperforming closed source embedding models such as Cohere's embed-v3 and Open AI's text-embed-3-large. In addition to the details of our training recipe, we have provided several informative ablation studies, which we believe are the cause of our model performance.
Luke Merrick, Danmei Xu, Gaurav Nuti, Daniel Campos• 2024
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Information Retrieval | BEIR | SciFact0.716 | 120 | |
| Text Embedding | MTEB English v2 | Mean Score56.1 | 107 | |
| Triplet Accuracy | Deliberation Evaluation Suite GSC, Remesh, Polis (test) | AbG56.4 | 26 |
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