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Abdur Rasool
PeerJ Author & Reviewer
115 Points

Contributions by role

Author 100
Reviewer 15

Contributions by subject area

Data Mining and Machine Learning
Natural Language and Speech
Network Science and Online Social Networks
Social Computing
Bioinformatics
Artificial Intelligence
Computational Linguistics
Data Science

Abdur Rasool

PeerJ Author & Reviewer

Summary

Abdur Rasool, an excellent international student of the University of Chinese Academy of Sciences (UCAS) and winner of various contests, received a PhD from Shenzhen Institute of Advanced Technology, Chinese Academy of Sciences (SIAT-CAS), Shenzhen, China, in 2023. He has authored over 24 publications in international journals and academic conferences in the data mining domain, particularly in DNA data storage, security, and text mining.

He was born in Rahim Yar Khan, Punjab, Pakistan, in 1993. He received a master's degree in Computer Science and Technology from Donghua University, Shanghai, China, in 2020 and a BS (Hons.) degree in software engineering from Government College University, Faisalabad, Pakistan, in 2015. His interests are in multidisciplinary computer science and technology, mainly in DNA data storage, deep learning, data mining, machine learning, and sentiment analysis.

Bioinformatics Data Mining & Machine Learning Data Science Natural Language & Speech Network Science & Online Social Networks Neural Networks Sentiment Analysis Social Computing

Past or current institution affiliations

University of Hawaii at Manoa

Work details

Shenzhen Institute of Advanced Technology, Chinese Academy of Sciences, Shenzhen, 518055, China

Websites

  • Google Scholar
  • ORCID
  • Google Scholar

PeerJ Contributions

  • Articles 2
November 22, 2024
SH-SDS: a new static-dynamic strategy for substation host security detection
Yang Diao, Hui Chen, Wei Liu, Abdur Rasool
https://doi.org/10.7717/peerj-cs.2512
March 17, 2022
ACR-SA: attention-based deep model through two-channel CNN and Bi-RNN for sentiment analysis
Marjan Kamyab, Guohua Liu, Abdur Rasool, Michael Adjeisah
https://doi.org/10.7717/peerj-cs.877