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  1. 1

    Structured Learning with Parsimony in Measurements and Computations: Theory, Algorithms, and Applications by Li, Xingguo

    ISBN: 9780438353886, 0438353889
    Published: ProQuest Dissertations & Theses 01.01.2018
    “…In modern “Big Data” applications, structured learning is the most widely employed methodology…”
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    Dissertation
  2. 2

    Multi-Label Active Learning Algorithms for Image Classification: Overview and Future Promise by Wu, Jian, Sheng, Victor S, Zhang, Jing, Li, Hua, Dadakova, Tetiana, Swisher, Christine Leon, Cui, Zhiming, Zhao, Pengpeng

    ISSN: 0360-0300
    Published: United States 01.06.2020
    Published in ACM computing surveys (01.06.2020)
    “… Accordingly, multi-label active learning is becoming an important research direction. In this work, we first review existing multi-label active learning algorithms for image classification…”
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    Journal Article
  3. 3

    Multi-Structural Games and Number of Quantifiers by Fagin, Ronald, Lenchner, Jonathan, Regan, Kenneth W., Vyas, Nikhil

    Published: IEEE 29.06.2021
    “… to distinguish linear orders of different sizes, and develop machinery for analyzing structures beyond linear orders…”
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    Conference Proceeding
  4. 4

    SLIM: a Scalable and Interpretable Light-weight Fault Localization Algorithm for Imbalanced Data in Microservice by Ren, Rui, Yang, Jingbang, Yang, Linxiao, Gu, Xinyue, Sun, Liang

    ISSN: 2643-1572
    Published: ACM 27.10.2024
    “…) approach to select rules iteratively, maximizing a non-monotone submodular lower bound. Compared with existing fault localization algorithms, our algorithm can adapt…”
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    Conference Proceeding
  5. 5

    Accelerating Decision-Tree-Based Inference Through Adaptive Parallelization by Van Lunteren, Jan

    Published: IEEE 21.10.2023
    “…Gradient-boosted trees and random forests are among the most popular machine learning algorithms…”
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    Conference Proceeding
  6. 6

    AutoDW: Automatic Data Wrangling Leveraging Large Language Models by Liu, Lei, Hasegawa, So, Sampat, Shailaja Keyur, Xenochristou, Maria, Chen, Wei-Peng, Kato, Takashi, Kakibuchi, Taisei, Asai, Tatsuya

    ISSN: 2643-1572
    Published: ACM 27.10.2024
    “…Data wrangling is a critical yet often labor-intensive process, essential for transforming raw data into formats suitable for downstream tasks such as machine learning or data analysis…”
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    Conference Proceeding
  7. 7

    Activation Sequence Caching: High-Throughput and Memory-Efficient Generative Inference with a Single GPU by Kim, Sowoong, Sim, Eunyeong, Shin, Youngsam, Cho, YeonGon, Baek, Woongki

    Published: ACM 13.10.2024
    “… To bridge this gap, this work presents an in-depth characterization study of KVC, which demonstrates that KVC makes a suboptimal trade-off between computations and communications…”
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    Conference Proceeding
  8. 8

    Self-Supervised Representation Learning and Temporal-Spectral Feature Fusion for Bed Occupancy Detection by Song, Yingjian, Pitafi, Zaid Farooq, Dou, Fei, Sun, Jin, Zhang, Xiang, Phillips, Bradley G, Song, Wenzhan

    ISSN: 2474-9567, 2474-9567
    Published: United States 01.09.2024
    “… This paper introduces SeismoDot, which consists of a self-supervised learning module and a spectral-temporal feature fusion module for bed occupancy detection…”
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    Journal Article
  9. 9

    MDLoader: A Hybrid Model-Driven Data Loader for Distributed Graph Neural Network Training by Bae, Jonghyun, Choi, Jong Youl, Pasini, Massimiliano Lupo, Mehta, Kshitij, Zhang, Pei, Ibrahim, Khaled Z.

    Published: IEEE 17.11.2024
    “…Scalable data management is essential for processing large scientific dataset on HPC platforms for distributed deep learning…”
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    Conference Proceeding
  10. 10

    ALISE: Accelerating Large Language Model Serving with Speculative Scheduling by Zhao, Youpeng, Wang, Jun

    ISSN: 1558-2434
    Published: ACM 27.10.2024
    “…). As exemplified by ChatGPT, LLM-based applications necessitate minimal response latency and maximal throughput for inference serving…”
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    Conference Proceeding
  11. 11

    Bayesian synthesis of probabilistic programs for automatic data modeling by Saad, Feras A., Cusumano-Towner, Marco F., Schaechtle, Ulrich, Rinard, Martin C., Mansinghka, Vikash K.

    ISSN: 2475-1421, 2475-1421
    Published: New York, NY, USA ACM 02.01.2019
    “… We also derive a general class of synthesis algorithms for domain-specific languages specified by probabilistic context-free grammars and establish the soundness of our approach for these languages…”
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    Journal Article
  12. 12

    Local Higher-Order Graph Clustering by Yin, Hao, Benson, Austin R, Leskovec, Jure, Gleich, David F

    ISSN: 2154-817X
    Published: United States 01.08.2017
    “…Local graph clustering methods aim to find a cluster of nodes by exploring a small region of the graph. These methods are attractive because they enable…”
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    Journal Article
  13. 13

    Distinguishing Hidden Markov Chains by Kiefer, Stefan, Sistla, A. Prasad

    ISBN: 9781450343916, 1450343910
    Published: New York, NY, USA ACM 05.07.2016
    “… Motivated by applications in stochastic runtime verification, we consider the problem of distinguishing two given HMCs based on a single observation sequence that one of the HMCs generates…”
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    Conference Proceeding
  14. 14

    Improving Fairness in AI Models on Electronic Health Records: The Case for Federated Learning Methods by Poulain, Raphael, Tarek, Mirza Farhan Bin, Beheshti, Rahmatollah

    Published: 12.06.2023
    “…Developing AI tools that preserve fairness is of critical importance, specifically in high-stakes applications such as those in healthcare…”
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    Journal Article
  15. 15

    Linear Scheduling of Big Data Streams on Multiprocessor Sets in the Cloud by Tantalaki, Nicoleta, Souravlas, Stavros, Roumeliotis, Manos, Katsavounis, Stefanos

    ISBN: 1450369340, 9781450369343
    Published: New York, NY, USA ACM 14.10.2019
    “… (dynamically or not) and route streaming data between them. Efficient scheduling of processing tasks of data flows can reduce application latencies and eliminate network congestion…”
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    Conference Proceeding
  16. 16

    A Memory-Efficient Markov Decision Process Computation Framework Using BDD-based Sampling Representation by Zhou, He, Hu, Jiang, Khatri, Sunil P., Liu, Frank

    Published: ACM 01.06.2019
    “…* Theory of computation \rightarrow Data compression; Parallel algorithms; Sequential decision making; * Mathematics of computing \rightarrowBayesian computation;…”
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    Conference Proceeding
  17. 17

    RL-Fill: Timing-Aware Fill Insertion Using Reinforcement Learning by Cho, Jinoh, Park, Seonghyeon, Lee, Jakang, Lee, Sung-Yun, Ahn, Jinmo, Kang, Seokhyeong

    ISSN: 1558-2434
    Published: ACM 27.10.2024
    “…We introduce RL-Fill, a novel reinforcement learning framework for timing-aware fill insertion…”
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    Conference Proceeding
  18. 18

    Robust Implementation of Retrieval-Augmented Generation on Edge-Based Computing-in-Memory Architectures by Qin, Ruiyang, Yan, Zheyu, Zeng, Dewen, Jia, Zhenge, Liu, Dancheng, Liu, Jianbo, Abbasi, Ahmed, Zheng, Zhi, Cao, Ningyuan, Ni, Kai, Xiong, Jinjun, Shi, Yiyu

    ISSN: 1558-2434
    Published: ACM 27.10.2024
    “… Although such learning methods can be optimized to reduce resource utilization, the overall required resources remain a heavy burden on edge devices…”
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    Conference Proceeding
  19. 19

    Laminar 2.0: Serverless Stream Processing with Enhanced Code Search and Recommendations by Rotchford, Daniel, Evans, Samuel, Filgueira, Rosa

    Published: IEEE 17.11.2024
    “… Building on Laminar 1.0, this version introduces improved dependency management, client-server functionality, and advanced deep learning models for semantic search…”
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    Conference Proceeding
  20. 20

    MelissaDL x Breed: Towards Data-Efficient On-line Supervised Training of Multi-parametric Surrogates with Active Learning by Dymchenko, Sofya, Purandare, Abhishek, Raffin, Bruno

    Published: IEEE 17.11.2024
    “… In this paper we introduce a new active learning method to enhance data-efficiency for on-line surrogate training…”
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    Conference Proceeding