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Main Authors: Deotte, Chris, Sorokin, Ivan, Erdem, Ahmet, Schifferer, Benedikt, Titericz Jr, Gilberto, Jegou, Simon
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2408.04658
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author Deotte, Chris
Sorokin, Ivan
Erdem, Ahmet
Schifferer, Benedikt
Titericz Jr, Gilberto
Jegou, Simon
author_facet Deotte, Chris
Sorokin, Ivan
Erdem, Ahmet
Schifferer, Benedikt
Titericz Jr, Gilberto
Jegou, Simon
contents This paper describes the winning solution of all 5 tasks for the Amazon KDD Cup 2024 Multi Task Online Shopping Challenge for LLMs. The challenge was to build a useful assistant, answering questions in the domain of online shopping. The competition contained 57 diverse tasks, covering 5 different task types (e.g. multiple choice) and across 4 different tracks (e.g. multi-lingual). Our solution is a single model per track. We fine-tune Qwen2-72B-Instruct on our own training dataset. As the competition released only 96 example questions, we developed our own training dataset by processing multiple public datasets or using Large Language Models for data augmentation and synthetic data generation. We apply wise-ft to account for distribution shifts and ensemble multiple LoRA adapters in one model. We employed Logits Processors to constrain the model output on relevant tokens for the tasks. AWQ 4-bit Quantization and vLLM are used during inference to predict the test dataset in the time constraints of 20 to 140 minutes depending on the track. Our solution achieved the first place in each individual track and is the first place overall of Amazons KDD Cup 2024.
format Preprint
id arxiv_https___arxiv_org_abs_2408_04658
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Winning Amazon KDD Cup'24
Deotte, Chris
Sorokin, Ivan
Erdem, Ahmet
Schifferer, Benedikt
Titericz Jr, Gilberto
Jegou, Simon
Computation and Language
Artificial Intelligence
Machine Learning
This paper describes the winning solution of all 5 tasks for the Amazon KDD Cup 2024 Multi Task Online Shopping Challenge for LLMs. The challenge was to build a useful assistant, answering questions in the domain of online shopping. The competition contained 57 diverse tasks, covering 5 different task types (e.g. multiple choice) and across 4 different tracks (e.g. multi-lingual). Our solution is a single model per track. We fine-tune Qwen2-72B-Instruct on our own training dataset. As the competition released only 96 example questions, we developed our own training dataset by processing multiple public datasets or using Large Language Models for data augmentation and synthetic data generation. We apply wise-ft to account for distribution shifts and ensemble multiple LoRA adapters in one model. We employed Logits Processors to constrain the model output on relevant tokens for the tasks. AWQ 4-bit Quantization and vLLM are used during inference to predict the test dataset in the time constraints of 20 to 140 minutes depending on the track. Our solution achieved the first place in each individual track and is the first place overall of Amazons KDD Cup 2024.
title Winning Amazon KDD Cup'24
topic Computation and Language
Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2408.04658