Update docs/tech_docs/llm/ai_over_view.md
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@@ -175,4 +175,90 @@ Explainable AI focuses on developing techniques to make AI models more transpare
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- Causal Inference for Explanations
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- Causal Inference for Explanations
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- Interpretable Deep Learning
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- Interpretable Deep Learning
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- Adversarial Attacks on Explanations
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- Adversarial Attacks on Explanations
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- Human-Centered Explainable AI
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- Human-Centered Explainable AI
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---
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Certainly! Here's a framework for each distinct type of document you'll likely create as you build out your AI fundamentals documentation:
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1. Overview Document:
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- Purpose: Provide a high-level overview of the entire AI fundamentals documentation.
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- Outline:
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- Introduction to AI and its importance
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- Brief description of each module and its focus
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- Target audience and prerequisites
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- Learning objectives and outcomes
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- Navigation guide and how to use the documentation effectively
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2. Module Introduction Document (for each module):
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- Purpose: Introduce the specific AI topic covered in the module and set the context.
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- Outline:
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- Definition and scope of the AI topic
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- Importance and relevance of the topic
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- Key concepts and terminology
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- Real-world applications and impact
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- Prerequisites and recommended background knowledge
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- Learning objectives and outcomes for the module
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3. Concept Explanation Document (for each subtopic within a module):
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- Purpose: Provide a detailed explanation of a specific concept, technique, or algorithm.
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- Outline:
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- Introduction and definition of the concept
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- Theoretical background and underlying principles
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- Mathematical formulations or algorithmic steps (if applicable)
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- Illustrative examples or visualizations
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- Advantages, limitations, and trade-offs
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- Practical considerations and implementation details
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- Code snippets or pseudocode (if applicable)
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- Related concepts and references for further reading
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4. Tutorial or Walkthrough Document (for hands-on exercises or projects):
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- Purpose: Guide readers through a step-by-step practical implementation of a specific technique or project.
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- Outline:
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- Introduction and objectives of the tutorial
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- Prerequisites and setup instructions
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- Step-by-step guide with code explanations
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- Data preparation and preprocessing
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- Model training and evaluation
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- Results interpretation and analysis
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- Variations and extensions
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- Troubleshooting and common pitfalls
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- Conclusion and further exploration
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5. Case Study Document (for real-world applications and success stories):
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- Purpose: Showcase real-world examples and success stories of AI applications in various domains.
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- Outline:
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- Introduction and background of the case study
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- Problem statement and challenges faced
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- AI techniques and approaches applied
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- Data sources and preprocessing steps
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- Model architecture and training process
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- Evaluation metrics and results achieved
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- Lessons learned and best practices
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- Impact and benefits of the AI solution
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- Future prospects and scalability
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6. Resource Collection Document (for each module or topic):
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- Purpose: Curate a list of valuable resources, references, and learning materials.
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- Outline:
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- Books and research papers
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- Online courses and tutorials
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- Videos and webinars
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- Blogs and articles
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- Open-source libraries and tools
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- Datasets and benchmarks
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- Community forums and discussion groups
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- Conferences and workshops
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7. Glossary Document:
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- Purpose: Define and explain key terms, acronyms, and concepts used throughout the documentation.
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- Outline:
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- Alphabetical listing of terms
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- Clear and concise definitions
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- Cross-references to related terms
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- Examples or illustrations (if applicable)
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- Acronym expansions and abbreviations
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These distinct document types serve different purposes and cater to various aspects of learning and understanding AI fundamentals. They range from high-level overviews to detailed concept explanations, practical tutorials, real-world case studies, curated resources, and a comprehensive glossary.
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By creating these different types of documents, you can provide a holistic and multi-faceted learning experience for your readers. They can choose the documents that align with their learning style, goals, and level of expertise, allowing for a personalized and effective learning journey.
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