Search Results - (( (statement OR stat) python code analysis ) OR ( (statement OR state) python code analysis ))

Refine Results
  1. 1

    Python Data Analyst's Toolkit - Learn Python and Python-Based Libraries with Applications in Data Analysis and Statistics by Rajagopalan, Gayathri

    ISBN: 9781484263983, 1484263987, 9781484263990, 1484263995
    Published: Berkeley, CA Apress, an imprint of Springer Nature 2021
    “… The code is presented in Jupyter notebooks that can further be adapted and extended. This book is divided into three parts - programming with Python, data analysis and visualization, and statistics…”
    Get full text
    eBook Book
  2. 2

    Percolation theory using Python by Malthe-Sørenssen, Anders

    ISBN: 3031598997, 9783031598999, 3031599004, 9783031599002
    Published: Cham Springer 2024
    “… Readers will learn how to generate, analyze, and comprehend data and models, with detailed theoretical discussions complemented by accessible computer codes…”
    Get full text
    eBook Book
  3. 3

    Assessing code readability in Python programming courses using eye‐tracking by Segedinac, Milan, Savić, Goran, Zeljković, Ivana, Slivka, Jelena, Konjović, Zora

    ISSN: 1061-3773, 1099-0542
    Published: Hoboken Wiley Subscription Services, Inc 01.01.2024
    “… This paper assesses the readability of Python code statements commonly used in undergraduate programming courses…”
    Get full text
    Journal Article
  4. 4

    LiPydomics: A Python Package for Comprehensive Prediction of Lipid Collision Cross Sections and Retention Times and Analysis of Ion Mobility-Mass Spectrometry-Based Lipidomics Data by Ross, Dylan H, Cho, Jang Ho, Zhang, Rutan, Hines, Kelly M, Xu, Libin

    ISSN: 1520-6882
    Published: United States 17.11.2020
    Published in Analytical chemistry (Washington) (17.11.2020)
    “… Existing solutions for these data analysis challenges (i.e., multivariate statistics and lipid identification…”
    Get more information
    Journal Article
  5. 5

    Mitigating the Uncertainty and Imprecision of Log-Based Code Coverage Without Requiring Additional Logging Statements by Xu, Xiaoyan, Cogo, Filipe R., McIntosh, Shane

    ISSN: 0098-5589, 1939-3520
    Published: New York IEEE 01.09.2024
    Published in IEEE transactions on software engineering (01.09.2024)
    “…Understanding code coverage is an important precursor to software maintenance activities (e.g., better testing…”
    Get full text
    Journal Article
  6. 6

    Detecting Memory Errors in Python Native Code by Tracking Object Lifecycle with Reference Count by Ma, Xutong, Yan, Jiwei, Zhang, Hao, Yan, Jun, Zhang, Jian

    ISSN: 2643-1572
    Published: IEEE 11.09.2023
    “… To detect such problems, state-of-the-art approaches have made groundbreaking contributions to identifying inappropriate final refcount values before returning from native code to Python…”
    Get full text
    Conference Proceeding
  7. 7

    Evaluating Large Language Models in Class-Level Code Generation by Du, Xueying, Liu, Mingwei, Wang, Kaixin, Wang, Hanlin, Liu, Junwei, Chen, Yixuan, Feng, Jiayi, Sha, Chaofeng, Peng, Xin, Lou, Yiling

    ISSN: 1558-1225
    Published: ACM 14.04.2024
    “…, function-level or statement-level code generation), which mainly asks LLMs to generate one single code unit (e.g…”
    Get full text
    Conference Proceeding
  8. 8

    GraphPyRec: A novel graph-based approach for fine-grained Python code recommendation by Zong, Xing, Zheng, Shang, Zou, Haitao, Yu, Hualong, Gao, Shang

    ISSN: 0167-6423
    Published: Elsevier B.V 01.12.2024
    Published in Science of computer programming (01.12.2024)
    “… Significant progress has been made in code recommendation for static languages in recent years, but it remains challenging for dynamic languages like Python as accurately determining data flows…”
    Get full text
    Journal Article
  9. 9

    Stress-Constrained Topology Optimization for Commercial Software: A Python Implementation for ABAQUS by Fernandes, Pedro, Ferrer, Àlex, Gonçalves, Paulo, Parente, Marco, Pinto, Ricardo, Correia, Nuno

    ISSN: 2076-3417, 2076-3417
    Published: Basel MDPI AG 01.12.2023
    Published in Applied sciences (01.12.2023)
    “…, using validated FEM commercial software. The methodology was validated by comparing the sensitivity analysis with the results obtained through finite differences and solving two benchmark problems with the following optimizers…”
    Get full text
    Journal Article
  10. 10

    Decoding the JAK-STAT Axis in Colorectal Cancer with AI-HOPE-JAK-STAT: A Conversational Artificial Intelligence Approach to Clinical–Genomic Integration by Yang, Ei-Wen, Waldrup, Brigette, Velazquez-Villarreal, Enrique

    ISSN: 2072-6694, 2072-6694
    Published: Switzerland MDPI AG 17.07.2025
    Published in Cancers (17.07.2025)
    “…: AI-HOPE-JAK-STAT combines large language models (LLMs), a natural language-to-code engine, and harmonized public CRC datasets from cBioPortal…”
    Get full text
    Journal Article
  11. 11

    Quantifying the interpretation overhead of Python by Zhang, Qiang, Xu, Lei, Zhang, Xiangyu, Xu, Baowen

    ISSN: 0167-6423, 1872-7964
    Published: Elsevier B.V 01.03.2022
    Published in Science of computer programming (01.03.2022)
    “…•Quantitative overhead analysis for the Python interpreter based on sampling.•Overhead decomposition from both opcode and project composition perspectives…”
    Get full text
    Journal Article
  12. 12

    Python for Everyone: Learn and polish your coding skills in Python (English Edition) by Saurabh Chandrakar, Dr. Nilesh Bhaskarrao Bahadure

    ISBN: 9789355518170, 935551817X
    Published: Los Angeles BPB Publications 2023
    “…A hands-on guide that will help you to write clean and efficient code in Python Key Features…”
    Get full text
    eBook
  13. 13

    Data Science Fundamentals with R, Python, and Open Data by Cremonini, Marco

    ISBN: 9781394213245, 1394213247
    Published: Hoboken, New Jersey John Wiley & Sons 2024
    “…Introduction to essential concepts and techniques of the fundamentals of R and Python needed to start data science projectsOrganized with a strong focus on open data, This book discusses concepts…”
    Get full text
    eBook Book
  14. 14

    Robustness Analysis of Watermarking Techniques for LLM-Generated Code by Cao, Di, Liu, Shigang, Zhang, Jun, Xiang, Yang

    ISSN: 2576-3156, 2576-3156
    Published: IEEE 01.12.2025
    Published in IEEE networking letters (01.12.2025)
    “… This work systematically evaluates two state-of-the-art watermarking paradigms: SWEET, which embeds token-level statistical biases, and CodeMark, which leverages semantic-preserving transformations at the statement level…”
    Get full text
    Journal Article
  15. 15

    Statistics Using Python by Campesato, Oswald

    ISBN: 9781683928805, 1683928806
    Published: Berlin Mercury Learning and Information 2024
    “…This book is designed to offer a fast-paced yet thorough introduction to essential statistical concepts using Python code samples, and aims to assist data scientists in their daily endeavors…”
    Get full text
    eBook
  16. 16

    Visualization of Aqueous Geochemical Data Using Python and WQChartPy by Yang, Jing, Liu, Honghua, Tang, Zhonghua, Peeters, Luk, Ye, Ming

    ISSN: 0017-467X, 1745-6584, 1745-6584
    Published: Malden, US Blackwell Publishing Ltd 01.07.2022
    Published in Ground water (01.07.2022)
    “… This method note presents WQChartPy, an open‐source Python package developed to plot a total of 12 diagrams for analysis of aqueous geochemical data…”
    Get full text
    Journal Article
  17. 17

    Artificial intelligence programming with Python: from zero to hero by Xiao, Perry

    ISBN: 1119820863, 9781119820864, 1119820944, 9781119820949
    Published: Hoboken Wiley 2022
    “…A hands-on roadmap to using Python for artificial intelligence programming In Practical Artificial Intelligence Programming with Python…”
    Get full text
    eBook Book
  18. 18

    ProPy: Prolog-based Fault Localization Tool for Python by Morin, Janneke, Ghosh, Krishnendu

    Published: IEEE 01.03.2022
    “… By examining which statements of the program were executed in successful versus unsuccessful test cases, then extract insight into the "suspiciousness" of areas of the program…”
    Get full text
    Conference Proceeding
  19. 19

    The Python workshop: a practical, no-nonsense introduction to Python development by Andrew Bird, Bird, Dr Lau Cher Han, Han, Mario Corchero Jimenez, Jimenez, Graham Lee, Lee, Corey Wade, Wade

    Published: Packt Publishing 06.11.2019
    “…Cut through the noise and get real results with a step-by-step approach to learning Python 3…”
    Get full text
    eBook
  20. 20

    Understanding the Robustness of Transformer-Based Code Intelligence via Code Transformation: Challenges and Opportunities by Li, Yaoxian, Qi, Shiyi, Gao, Cuiyun, Peng, Yun, Lo, David, Lyu, Michael R., Xu, Zenglin

    ISSN: 0098-5589, 1939-3520
    Published: New York IEEE 01.02.2025
    Published in IEEE transactions on software engineering (01.02.2025)
    “…Transformer-based models have demonstrated state-of-the-art performance in various intelligent coding tasks such as code comment generation and code completion…”
    Get full text
    Journal Article