About This Course
“AI-Powered Academic Research: From Discovery to Ethics” is a 3-week international course designed to introduce participants to a curated ecosystem of AI-driven tools that enhance academic research. This workshop caters to both early-stage researchers and experienced academicians, providing insights into how AI can support every phase of the research process—from literature mapping to manuscript preparation, and from statistical modeling to qualitative analysis.
Participants will explore a wide range of AI tools, including summarizers, citation managers, writing assistants, statistical modelers, and NLP-based coding tools. This course promotes ethical AI use while improving productivity, creativity, and publication readiness.
Aim
The aim of this course is to empower researchers, scholars, and students with practical knowledge of AI-powered tools that enhance the efficiency, quality, and impact of academic literature review, scientific writing, and data analysis across disciplines.
Course Objectives
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Bridge traditional academic processes with modern AI tools
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Reduce research time while enhancing analytical depth and clarity
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Encourage critical thinking about tool selection and ethical AI use
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Promote reproducibility, traceability, and scholarly impact
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Empower cross-disciplinary knowledge building and publishing efficiency
Course Structure
📅 Module 1: Introduction to AI in Academia
Theme: Understanding the Role of AI in the Research Lifecycle
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The Role of AI in the Research Lifecycle
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How AI supports research from literature discovery to manuscript writing
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Challenges AI helps solve: literature overload, writing, data analysis
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Discussion:
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Exploring the potential of AI tools to assist researchers at various stages of their work
📅 Module 2: Literature Discovery with AI
Theme: Efficient Literature Search and Citation Network Visualization
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AI Tools for Literature Discovery
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Tools: Research Rabbit, Connected Papers, Elicit
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Skills: Finding key papers, visualizing citation networks
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Hands-On Activity:
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Identify 2–3 relevant papers on your research topic using AI tools
📅 Module 3: Summarizing & Comparing Research
Theme: Extracting Key Insights from Academic Papers
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AI Tools for Summarizing and Comparing Research
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Tools: ChatGPT, SciSpace, Elicit
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Skills: Summarizing papers, extracting insights, comparing research findings
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Hands-On Activity:
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Summarize a research paper using AI tools
📅 Module 4: Academic Writing & Citations
Theme: Enhancing the Quality and Clarity of Academic Writing
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AI Tools for Academic Writing
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Tools: Scite.ai, Grammarly AI, PaperPal
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Skills: Improving clarity, adding citations, avoiding plagiarism
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Hands-On Activity:
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Refine an abstract and add smart citations to your work
📅 Module 5: AI for Data Analysis
Theme: AI in Data Cleaning, Analysis, and Visualization
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AI Tools for Data Analysis
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Tools: Google Colab + ChatGPT, Excel AI
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Skills: Cleaning, analyzing, and visualizing research data
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Hands-On Activity:
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Analyze a dataset and generate insights using AI tools
📅 Module 6: Build a Personal Research Assistant
Theme: Creating Your Own AI-powered Research Assistant
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Tools for Personal Research Assistance
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Tools: ChatPDF, ChatDOC, GPT with RAG
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Skills: Create Q&A bots from PDFs for quick research insights
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Hands-On Activity:
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Upload a research paper and use AI tools to ask research-specific questions
📅 Module 7: Ethics in AI-Driven Research
Theme: Responsible Use and AI Ethics
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Ethical Considerations in AI Use
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Topics: AI bias, responsible use, UNESCO/IEEE guidelines
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Discussion:
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Understanding the ethical implications of AI in research and how to mitigate bias
Who Should Enrol?
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PhD students, faculty, and researchers in any discipline









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