Choi, Jae-Woo
External Large Foundation Model: How to Efficiently Serve Trillions of Parameters for Online Ads Recommendation
Liang, Mingfu, Liu, Xi, Jin, Rong, Liu, Boyang, Suo, Qiuling, Zhou, Qinghai, Zhou, Song, Chen, Laming, Zheng, Hua, Li, Zhiyuan, Jiang, Shali, Yang, Jiyan, Xia, Xiaozhen, Yang, Fan, Badr, Yasmine, Wen, Ellie, Xu, Shuyu, Chen, Hansey, Zhang, Zhengyu, Nie, Jade, Yang, Chunzhi, Zeng, Zhichen, Zhang, Weilin, Huang, Xingliang, Li, Qianru, Wang, Shiquan, Lyu, Evelyn, Lu, Wenjing, Zhang, Rui, Wang, Wenjun, Rudy, Jason, Hang, Mengyue, Wang, Kai, Ma, Yinbin, Wang, Shuaiwen, Zeng, Sihan, Tang, Tongyi, Wei, Xiaohan, Jin, Longhao, Zhang, Jamey, Chen, Marcus, Zhang, Jiayi, Huang, Angie, Zhang, Chi, Zhao, Zhengli, Yang, Jared, Jin, Qiang, Chen, Xian, Amlesahwaram, Amit Anand, Song, Lexi, Luo, Liang, Hao, Yuchen, Xiao, Nan, Yetim, Yavuz, Pan, Luoshang, Liu, Gaoxiang, Hu, Yuxi, Huang, Yuzhen, Xu, Jackie, Zhu, Rich, Zhang, Xin, Liu, Yiqun, Yin, Hang, Chen, Yuxin, Zhang, Buyun, Liu, Xiaoyi, Wang, Xingyuan, Mao, Wenguang, Li, Zhijing, Huang, Qin, Sun, Chonglin, Yu, Nancy, Gu, Shuo, Mao, Shupin, Au, Benjamin, Qin, Jingzheng, Yao, Peggy, Choi, Jae-Woo, Gao, Bin, Wang, Ernest, Zhang, Lei, Chen, Wen-Yen, Lee, Ted, Zha, Jay, Meng, Yi, Gong, Alex, Gao, Edison, Vahdatpour, Alireza, Han, Yiping, Yao, Yantao, Kureha, Toshinari, Chang, Shuo, Sultan, Musharaf, Bocharov, John, Chordia, Sagar, Gan, Xiaorui, Sun, Peng, Liu, Rocky, Long, Bo, Chen, Wenlin, Kolay, Santanu, Li, Huayu
Ads recommendation is a prominent service of online advertising systems and has been actively studied. Recent studies indicate that scaling-up and advanced design of the recommendation model can bring significant performance improvement. However, with a larger model scale, such prior studies have a significantly increasing gap from industry as they often neglect two fundamental challenges in industrial-scale applications. First, training and inference budgets are restricted for the model to be served, exceeding which may incur latency and impair user experience. Second, large-volume data arrive in a streaming mode with data distributions dynamically shifting, as new users/ads join and existing users/ads leave the system. We propose the External Large Foundation Model (ExFM) framework to address the overlooked challenges. Specifically, we develop external distillation and a data augmentation system (DAS) to control the computational cost of training/inference while maintaining high performance. We design the teacher in a way like a foundation model (FM) that can serve multiple students as vertical models (VMs) to amortize its building cost. We propose Auxiliary Head and Student Adapter to mitigate the data distribution gap between FM and VMs caused by the streaming data issue. Comprehensive experiments on internal industrial-scale applications and public datasets demonstrate significant performance gain by ExFM.
LoTa-Bench: Benchmarking Language-oriented Task Planners for Embodied Agents
Choi, Jae-Woo, Yoon, Youngwoo, Ong, Hyobin, Kim, Jaehong, Jang, Minsu
Large language models (LLMs) have recently received considerable attention as alternative solutions for task planning. However, comparing the performance of language-oriented task planners becomes difficult, and there exists a dearth of detailed exploration regarding the effects of various factors such as pre-trained model selection and prompt construction. To address this, we propose a benchmark system for automatically quantifying performance of task planning for home-service embodied agents. Task planners are tested on two pairs of datasets and simulators: 1) ALFRED and AI2-THOR, 2) an extension of Watch-And-Help and VirtualHome. Using the proposed benchmark system, we perform extensive experiments with LLMs and prompts, and explore several enhancements of the baseline planner. We expect that the proposed benchmark tool would accelerate the development of language-oriented task planners.