ChatGPT: GUIDE TO WRITE A SCIENTIFIC RESEARCH PAPER FOR ENGINEERS, RESEARCHERS, AND SCIENTISTS


Book Description

"ChatGPT: Guide to Write a Scientific Research Paper for Engineers, Researchers, and Scientists" is a comprehensive book designed to assist engineers, researchers, and scientists in the process of writing research articles. Whether you are an experienced writer or new to the field, this book serves as a valuable resource to enhance your research writing skills and produce high-quality articles. Writing a research article requires not only technical expertise but also effective communication skills. Many researchers struggle with structuring their articles, choosing the right language, and presenting their findings clearly. That's where ChatGPT, an advanced language model developed by OpenAI, comes in. It acts as an AI Research Writing Assistant, providing suggestions, tips, and examples to improve the quality of your research articles. The book explores various aspects of research article writing, starting from structuring and preparing the manuscript to the final steps of language editing, proofreading, and publishing. Each section of the book focuses on a specific component of research article writing, providing practical insights and actionable advice to navigate through the complexities of the process. You'll learn about the importance of organization and coherence in the structure of a research work. The book provides an in-depth guide on crafting an effective abstract, introducing the topic, addressing research gaps, stating aims and methodologies, presenting findings, and discussing the future prospects of your work. The introduction section is thoroughly covered, helping you set the stage for your research by discussing the significance of the topic, reviewing previous studies, identifying research gaps, formulating research questions, and outlining the article's structure. The book also provides comprehensive guidance on writing a literature review, including referencing literature, analyzing previous studies, presenting supporting evidence, and critically evaluating existing work. Describing methods, reporting results, and discussing findings are crucial components covered in detail. You'll learn how to effectively describe research methods, justify their use, address limitations, and explain the implementation process. The book offers guidance on presenting and interpreting research results, including the use of tables and figures, and provides insights on discussing key findings and their implications. Throughout the book, you'll find practical examples, sample formats, and tips for enhancing the clarity, readability, and impact of your research articles. By following the guidelines and utilizing the assistance of ChatGPT, you'll be able to craft compelling and well-structured research articles that effectively communicate your findings and contribute to the scientific community. This book is a valuable resource for anyone on a research writing journey. Embrace the power of AI and leverage the insights provided by ChatGPT to elevate your research article writing skills. Join us on this enriching journey and produce impactful research articles that contribute to the advancement of knowledge in your field.










Temporal Networks


Book Description

The concept of temporal networks is an extension of complex networks as a modeling framework to include information on when interactions between nodes happen. Many studies of the last decade examine how the static network structure affect dynamic systems on the network. In this traditional approach the temporal aspects are pre-encoded in the dynamic system model. Temporal-network methods, on the other hand, lift the temporal information from the level of system dynamics to the mathematical representation of the contact network itself. This framework becomes particularly useful for cases where there is a lot of structure and heterogeneity both in the timings of interaction events and the network topology. The advantage compared to common static network approaches is the ability to design more accurate models in order to explain and predict large-scale dynamic phenomena (such as, e.g., epidemic outbreaks and other spreading phenomena). On the other hand, temporal network methods are mathematically and conceptually more challenging. This book is intended as a first introduction and state-of-the art overview of this rapidly emerging field.




Writing for Computer Science


Book Description

A complete update to a classic, respected resource Invaluable reference, supplying a comprehensive overview on how to undertake and present research




Artificial Intelligence in Medicine


Book Description

This book constitutes the refereed proceedings of the 17th Conference on Artificial Intelligence in Medicine, AIME 2019, held in Poznan, Poland, in June 2019. The 22 revised full and 31 short papers presented were carefully reviewed and selected from 134 submissions. The papers are organized in the following topical sections: deep learning; simulation; knowledge representation; probabilistic models; behavior monitoring; clustering, natural language processing, and decision support; feature selection; image processing; general machine learning; and unsupervised learning.




The Scientist's Guide to Writing


Book Description

A concise and accessible primer on the scientific writer's craft The ability to write clearly is critical to any scientific career. The Scientist's Guide to Writing provides practical advice to help scientists become more effective writers so that their ideas have the greatest possible impact. Drawing on his own experience as a scientist, graduate adviser, and editor, Stephen Heard emphasizes that the goal of all scientific writing should be absolute clarity; that good writing takes deliberate practice; and that what many scientists need are not long lists of prescriptive rules but rather direct engagement with their behaviors and attitudes when they write. He combines advice on such topics as how to generate and maintain writing momentum with practical tips on structuring a scientific paper, revising a first draft, handling citations, responding to peer reviews, managing coauthorships, and more. In an accessible, informal tone, The Scientist's Guide to Writing explains essential techniques that students, postdoctoral researchers, and early-career scientists need to write more clearly, efficiently, and easily. Emphasizes writing as a process, not just a product Encourages habits that improve motivation and productivity Explains the structure of the scientific paper and the function of each part Provides detailed guidance on submission, review, revision, and publication Addresses issues related to coauthorship, English as a second language, and more




Temporal Network Theory


Book Description

This book focuses on the theoretical side of temporal network research and gives an overview of the state of the art in the field. Curated by two pioneers in the field who have helped to shape it, the book contains contributions from many leading researchers. Temporal networks fill the border area between network science and time-series analysis and are relevant for epidemic modeling, optimization of transportation and logistics, as well as understanding biological phenomena. Over the past 20 years, network theory has proven to be one of the most powerful tools for studying and analyzing complex systems. Temporal network theory is perhaps the most recent significant development in the field in recent years, with direct applications to many of the “big data” sets. This book appeals to students, researchers, and professionals interested in theory and temporal networks—a field that has grown tremendously over the last decade. This second edition of Temporal Network Theory extends the first with three chapters highlighting recent developments in the interface with machine learning.







Analyzing Data with Power BI and Power Pivot for Excel


Book Description

Renowned DAX experts Alberto Ferrari and Marco Russo teach you how to design data models for maximum efficiency and effectiveness. How can you use Excel and Power BI to gain real insights into your information? As you examine your data, how do you write a formula that provides the numbers you need? The answers to both of these questions lie with the data model. This book introduces the basic techniques for shaping data models in Excel and Power BI. It’s meant for readers who are new to data modeling as well as for experienced data modelers looking for tips from the experts. If you want to use Power BI or Excel to analyze data, the many real-world examples in this book will help you look at your reports in a different way–like experienced data modelers do. As you’ll soon see, with the right data model, the correct answer is always a simple one! By reading this book, you will: • Gain an understanding of the basics of data modeling, including tables, relationships, and keys • Familiarize yourself with star schemas, snowflakes, and common modeling techniques • Learn the importance of granularity • Discover how to use multiple fact tables, like sales and purchases, in a complex data model • Manage calendar-related calculations by using date tables • Track historical attributes, like previous addresses of customers or manager assignments • Use snapshots to compute quantity on hand • Work with multiple currencies in the most efficient way • Analyze events that have durations, including overlapping durations • Learn what data model you need to answer your specific business questions About This Book • For Excel and Power BI users who want to exploit the full power of their favorite tools • For BI professionals seeking new ideas for modeling data