Dr. Shahid Akbar | Computer Science | Best Researcher Award
Dr. Shahid Akbar, University of electronic science and technology of China, China
Dr. Shahid Akbar is a Postdoctoral Fellow at the University of Electronic Science and Technology of China. He holds a Ph.D. in Computer Science from Abdul Wali Khan University Mardan, Pakistan, where he developed an intelligent computational model for identifying anticancer peptides. Dr. Akbar has a strong background in bioinformatics, machine learning, deep learning, and neural networks. With extensive teaching experience as a lecturer in computer science, he has taught various undergraduate courses, including machine learning, artificial intelligence, and data mining. His research focuses on applying advanced computational techniques to solve complex biological problems. Dr. Akbar has also contributed as a reviewer for several esteemed journals in the fields of bioinformatics and medicine.
Educational Details
Postdoctoral Fellow
IFFS, University of Electronic Science and Technology of China
June 2023 – Present
Ph.D. in Computer Science
Abdul Wali Khan University Mardan, Pakistan
2017 – 2021
Dissertation Title: An Intelligent Computational Model for Identification of Anticancer Peptides
M.S. in Computer Science
Abdul Wali Khan University Mardan, Pakistan
2012 – 2016
Bachelor’s in Computer and Information Technology
Islamic University of Technology, Dhaka, Bangladesh
2008 – 2011
Professional Experience
Dr. Shahid Akbar currently serves as a Postdoctoral Fellow at the IFFS, University of Electronic Science and Technology of China, where he is engaged in advanced research in bioinformatics and artificial intelligence. Prior to this, he was a Lecturer in the Department of Computer Science at Abdul Wali Khan University Mardan, Pakistan, from August 2015 to June 2023, where he taught various undergraduate courses and contributed to the academic development of students in the field. Before that, he held a similar position at the Government College of Management Sciences in Swabi, Pakistan, from January 2012 to August 2015, where he began his academic career. Through these roles, Dr. Akbar has built a solid foundation in teaching and research, fostering a strong interest in the application of computational methods to solve complex scientific problems.
Research Interest
Dr. Shahid Akbar’s research interests lie at the intersection of bioinformatics and artificial intelligence. He specializes in machine learning, deep learning, pattern recognition, and neural networks, with a particular focus on developing intelligent computational models for identifying anticancer peptides.
Technical Skills
Dr. Akbar is proficient in various programming languages and tools, including Python, Keras, TensorFlow, SQL Server, R, MATLAB, Spark, and Hadoop. His expertise extends to data warehousing and advanced Java programming.
Awards and Distinctions
OIC Scholarship (3 years)
AWKUM Talented PhD Students Scholarship
Courses Taught
Dr. Akbar has taught a range of undergraduate courses, including:
Machine Learning
Data Structures and Algorithms
Introduction to Programming
Pattern Recognition
Object-Oriented Programming
Data Mining and Warehousing
Artificial Intelligence
Junior Project/Graduate Project
Top Notable Publications
Hybrid Residue Based Sequential Encoding Mechanism with XGBoost Improved Ensemble Model for Identifying 5-Hydroxymethylcytosine Modifications
Authors: Uddin, I., Awan, H.H., Khalid, M., Abdolrasol, M.G.M., Alghamdi, T.A.H.
Journal: Scientific Reports
Year: 2024
Volume: 14
Issue: 1
Article Number: 20819
Citations: 0
StackedEnC-AOP: Prediction of Antioxidant Proteins Using Transform Evolutionary and Sequential Features Based Multi-Scale Vector with Stacked Ensemble Learning
Authors: Rukh, G., Akbar, S., Rehman, G., Alarfaj, F.K., Zou, Q.
Journal: BMC Bioinformatics
Year: 2024
Volume: 25
Issue: 1
Article Number: 256
Citations: 0
Deepstacked-AVPs: Predicting Antiviral Peptides Using Tri-Segment Evolutionary Profile and Word Embedding Based Multi-Perspective Features with Deep Stacking Model
Authors: Akbar, S., Raza, A., Zou, Q.
Journal: BMC Bioinformatics
Year: 2024
Volume: 25
Issue: 1
Article Number: 102
Citations: 17
AIPs-DeepEnC-GA: Predicting Anti-Inflammatory Peptides Using Embedded Evolutionary and Sequential Feature Integration with Genetic Algorithm Based Deep Ensemble Model
Authors: Raza, A., Uddin, J., Zou, Q., Alghamdi, W., Liu, R.
Journal: Chemometrics and Intelligent Laboratory Systems
Year: 2024
Volume: 254
Article Number: 105239
Citations: 0
Comprehensive Analysis of Computational Methods for Predicting Anti-Inflammatory Peptides
Authors: Raza, A., Uddin, J., Akbar, S., Zou, Q., Ahmad, A.
Journal: Archives of Computational Methods in Engineering
Year: 2024
Volume: 31
Issue: 6
Pages: 3211–3229
Citations: 3
DeepAVP-TPPred: Identification of Antiviral Peptides Using Transformed Image-Based Localized Descriptors and Binary Tree Growth Algorithm
Authors: Ullah, M., Akbar, S., Raza, A., Zou, Q.
Journal: Bioinformatics
Year: 2024
Volume: 40
Issue: 5
Article Number: btae305
Citations: 9
iAFPs-Mv-BiTCN: Predicting Antifungal Peptides Using Self-Attention Transformer Embedding and Transform Evolutionary Based Multi-View Features with Bidirectional Temporal Convolutional Networks
Authors: Akbar, S., Zou, Q., Raza, A., Alarfaj, F.K.
Journal: Artificial Intelligence in Medicine
Year: 2024
Volume: 151
Article Number: 102860
Citations: 18
Blockchain-Based Logging to Defeat Malicious Insiders: The Case of Remote Health Monitoring Systems
Authors: Javed, H., Abaid, Z., Akbar, S., Alkahtani, H.K., Raza, A.
Journal: IEEE Access
Year: 2024
Volume: 12
Pages: 12062–12079
Citations: 2
Conclusion
In summary, Dr. Shahid Akbar’s diverse research interests, significant contributions to bioinformatics, robust technical skills, extensive educational background, and active participation in academia and professional development make him an exceptional candidate for the Best Researcher Award. His work not only advances the field of computer science but also contributes to addressing critical challenges in healthcare, particularly in cancer research.