Farzad Hosseinali | Artificial Intelligence | Best Researcher Award

Dr. Farzad Hosseinali | Artificial Intelligence | Best Researcher Award

Doctorate at The George Washington University, United States

Farzad Hosseianli is a Professional Lecturer in Data Science at The George Washington University, specializing in machine learning. He has extensive experience as a Remote Teaching Assistant for online Data Science boot-camps and worked as a Freelance Data Scientist in the Bay Area, focusing on ML/DS projects. His research background includes roles as a Research Assistant at Texas A&M University and Texas Tech University, where he studied correlations in cotton fiber properties.

Author Profile

Google Scholar Profile

Education

Farzad pursued his educational journey with a B.Sc. in Textile Engineering and Fiber Science from Azad University, Shahr Rey Branch, Tehran, Iran, followed by an M.Sc. in Crop Science at Texas Tech University, Lubbock, USA, and a Ph.D. in Biological and Agricultural Engineering at Texas A&M University, College Station, USA. His academic path provided a comprehensive foundation in engineering, agricultural sciences, and data science, essential for his current roles in teaching and research.

Research Focus

Farzad’s research focuses on applying statistical analysis, regression techniques, and computer vision to study physical properties of cotton fibers, particularly in relation to friction characteristics among different varieties. This work aims to enhance understanding and optimize agricultural practices related to cotton cultivation and processing, crucial for improving fiber quality and production efficiency in the textile industry.

Professional Journey

Farzad has held various roles in academia and industry, including:

  • Professional Lecturer in Data Science: Teaching Machine Learning I at The George Washington University.
  • Remote Teaching Assistant: Assisting students in statistics, programming, and machine learning at 2U, an online Data Science boot-camp.
  • Freelance Data Scientist: Developing innovative solutions like Selective Backpropagation and participating in Kaggle competitions in the Bay Area, CA.
  • Research Assistant: Conducting research on cotton fiber properties at Texas A&M University and Texas Tech University, investigating correlations and physical characteristics.

Honors & Awards

Farzad has been recognized for his contributions to research with publications in journals that have impact factors ranging from 4.1 to 8.5. His publications highlight significant findings in cotton fiber friction and related properties, contributing to advancements in agricultural engineering and data science.

Publications Noted & Contributions

Farzad’s research contributions are evident in his publications, such as those in Expert Systems with Applications, Tribology International, and Fibers. These publications delve into the variability and characteristics of cotton fiber friction, providing valuable insights for enhancing fiber quality and performance across various applications.

Variability of fiber friction among cotton varieties: Influence of salient fiber physical metrics
Published in Tribology International in 2018, this paper explores how different physical metrics of cotton fibers influence their frictional properties across various varieties.

Microencapsulation of disperse dye particles with nano film coating through layer by layer technique
Co-authored with M Zandi, SA Hashemi, and P Aminayi, published in the Journal of Applied Polymer Science in 2011. This study investigates the encapsulation of disperse dye particles using nano film coating techniques.

Investigation on the tensile properties of individual cotton (Gossypium hirsutum L.) fibers
This research, conducted during Farzad’s time at Texas Tech University in 2012, focuses on studying the tensile strength properties of individual cotton fibers.

Multiscale Frictional Properties of Cotton Fibers: A Review
Published in Fibers in 2018, this review paper, co-authored with JA Thomasson, summarizes the multiscale frictional properties of cotton fibers, providing an overview of research in the field.

Probing of Nanoscale Friction and Mechanical Characteristics of Cotton Fiber’s Surface
Also published in Fibers in 2019 with JA Thomasson, this study probes the nanoscale friction and mechanical characteristics of cotton fiber surfaces, contributing insights into the material’s properties at a microscopic level.

Research Timeline

Farzad’s research journey spans from his undergraduate studies through to his doctoral studies and professional roles. His progression includes foundational research at Texas Tech University and Texas A&M University, focusing on cotton fiber properties and advanced analytical techniques. This timeline underscores his commitment to addressing complex challenges in agricultural engineering and data science, bridging academic research with practical applications in industry.

Jeanfranco David Farfan Escobedo | Machine Learning | Young Scientist Award

Mr. Jeanfranco David Farfan Escobedo | Machine Learning | Young Scientist Award

Jeanfranco David Farfan at Escobedo State University of Campinas, Brazil

Jeanfranco David Farfan Escobedo is a PhD candidate in Computer Science at the University of Campinas (UNICAMP), Brazil, specializing in deep learning techniques for uncertainty reduction in oil reservoir simulations. He holds an M.Sc. in Computer Science from UNICAMP with a thesis in Conversational Systems and a B.Sc. in Computer and Systems Engineering from Universidad Nacional de San Antonio Abad del Cusco (UNSAAC), Peru, focusing on Computer Vision. Jeanfranco’s professional journey includes roles as a researcher at Shell Oil Company, Brazil, and teaching positions at UNICAMP and UTEC, Peru. He has received prestigious awards such as the Shell Oil Company Industry Research Scholarship and has contributed to significant publications in applied computing and artificial intelligence journals. His research timeline demonstrates continuous engagement in advancing deep learning, natural language processing, and computer vision fields.

Author Profile

Google Scholar Profile

Education

Jeanfranco David Farfan Escobedo is currently pursuing a PhD in Computer Science at the University of Campinas (UNICAMP), Brazil. He earned his Master of Science degree in Computer Science from UNICAMP, focusing on Conversational Systems. Previously, he obtained a Bachelor of Science in Computer and Systems Engineering from Universidad Nacional de San Antonio Abad del Cusco (UNSAAC), Peru, with a thesis in Computer Vision.

Research Focus

Jeanfranco’s research primarily revolves around applying deep learning techniques to reduce uncertainty in oil reservoir simulations. Additionally, he explores topics in natural language processing, focusing on conversational systems, and computer vision for tasks like image recognition.

Professional Journey

Jeanfranco has accumulated diverse professional experiences. He currently works as a researcher at Shell Oil Company in Brazil, specializing in utilizing deep learning for improving oil reservoir simulations. He has also served as a Teaching Assistant at UNICAMP, where he supported courses in Algorithms and Computer Programming. Furthermore, he has taught Machine/Deep Learning at the Artificial Intelligence University of Engineering and Technology (UTEC) in Peru.

Honors & Awards

Jeanfranco has received several notable awards, including the Shell Oil Company Industry Research Scholarship in 2021, the Sinch Latin America Industry Research Scholarship in 2019, and first place in the AgroHack hackathon for developing a plant disease monitoring app in 2018.

Publications Noted & Contributions

Jeanfranco has contributed significantly to academic publications, including:

Research Timeline

Jeanfranco’s research journey spans from his undergraduate studies through to his current doctoral research. He has consistently explored cutting-edge topics in deep learning, natural language processing, and computer vision, contributing to advancements in these fields.