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  1. Coffee-Intake-and-PAD-Association Coffee-Intake-and-PAD-Association Public

    Analyzing the association between coffee intake (caffeinated and decaffeinated) and the presence of Peripheral Arterial Disease (PAD) using data from NHANES (1999-2004). The study focuses on logist…

    R 1 1

  2. qcc-function-adaptation qcc-function-adaptation Public

    The control chart in this work is based on Luca Scrucca’s R package for statistical quality control but adapted for queueing systems. Key modifications include the ability to differentiate between …

    R

  3. ARL-unbiased-Xn-chart ARL-unbiased-Xn-chart Public

    This R code implements ARL-unbiased Xn control charts for monitoring M/Ek/1 queueing systems. It provides functions to compute ARL with and without randomization, allowing for precise control limit…

    R

  4. ARL-unbiased-Xhatn-chart ARL-unbiased-Xhatn-chart Public

    This R code implements ARL-unbiased X^n control charts for monitoring Ek/M/1 queueing systems. It provides functions to compute ARL with and without randomization, allowing for precise control limi…

    R

  5. ARL-unbiased-Wn-chart ARL-unbiased-Wn-chart Public

    This R code implements ARL-unbiased Wn control charts (in 3 scenarios) for monitoring Ek/M/1 and M/Ek/1 queueing systems. It provides functions to compute ARL with and without randomization, allowi…

    R

  6. Attention-vs-LSTM-ASR Attention-vs-LSTM-ASR Public

    Comparative analysis of Attention-based and LSTM-based encoder-decoder architectures for Automatic Speech Recognition.

    Jupyter Notebook