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Unveiling the Power of Self-Attention for Shipping Cost Prediction: Referencesby@convolution

Unveiling the Power of Self-Attention for Shipping Cost Prediction: References

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New AI model (Rate Card Transformer) analyzes package details (size, carrier etc.) to predict shipping costs more accurately.
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Authors:

(1) P Aditya Sreekar, Amazon and these authors contributed equally to this work {[email protected]};

(2) Sahil Verm, Amazon and these authors contributed equally to this work {[email protected];}

(3) Varun Madhavan, Indian Institute of Technology, Kharagpur. Work done during internship at Amazon {[email protected]};

(4) Abhishek Persad, Amazon {[email protected]}.

References

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This paper is available on arxiv under CC BY-NC-ND 4.0 DEED license.