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A quantized version of multilingual-e5-small. Quantization was performed per-layer under the same conditions as our ELSERv2 model, as described here.

Text Embeddings by Weakly-Supervised Contrastive Pre-training. Liang Wang, Nan Yang, Xiaolong Huang, Binxing Jiao, Linjun Yang, Daxin Jiang, Rangan Majumder, Furu Wei, arXiv 2022

Benchmarks

We performed a number of small benchmarks to assess both the changes in quality as well as inference latency against the baseline original model.

Quality

Measuring NDCG@10 using the dev split of the MIRACL datasets for select languages, we see mostly a marginal change in quality of the quantized model.

de yo ru ar es th
multilingual-e5-small 0.75862 0.56193 0.80309 0.82778 0.81672 0.85072
multilingual-e5-small-optimized 0.75992 0.48934 0.79668 0.82017 0.8135 0.84316

To test the English out-of-domain performance, we used the test split of various datasets in the BEIR evaluation. Measuring NDCG@10, we see a larger change in SCIFACT, but marginal in the other datasets evaluated.

FIQA SCIFACT nfcorpus
multilingual-e5-small 0.33126 0.677 0.31004
multilingual-e5-small-optimized 0.31734 0.65484 0.30126

Performance

Using a PyTorch model traced for Linux and Intel CPUs, we performed performance benchmarking with various lengths of input. Overall, we see on average a 50-20% performance improvement with the optimized model.

input length (characters) multilingual-e5-small multilingual-e5-small-optimized speedup
0 - 50 0.0181 0.00826 54.36%
50 - 100 0.0275 0.0164 40.36%
100 - 150 0.0366 0.0237 35.25%
150 - 200 0.0435 0.0301 30.80%
200 - 250 0.0514 0.0379 26.26%
250 - 300 0.0569 0.043 24.43%
300 - 350 0.0663 0.0513 22.62%
350 - 400 0.0737 0.0576 21.85%

Disclaimer

This e5 model, as defined, hosted, integrated and used in conjunction with our other Elastic Software is covered by our standard warranty.

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