GPT as GPT Generative Pre-trained Transformer as General-Purpose Technology, Ioannis Patias | Йоаннис Патиас, УИ „Св. Климент Охридски”, 2026 - Български книжици
 
Български книжици
гр. София, ул. Аксаков 10
 
Раздели

Полезни връзки
Национална Библиотека "Св. Св. Кирил и Методий"
Дюкян Меломан
Фондация "Елизабет Костова"
Списание "Култура"
Вестник "Литературен вестник"
НАБИС
Facebook - Български книжици
Площад Славейков
Книгите на Милко Гърчев

 


Нашата препоръка
Отпътуване
Автор: Джулиан Барнс
Раздел: Английска литература
Издателство: Обсидиан
Цена: 23,47 лв (12.00 €)
Повече за книгата
Банкерът анархист и други истории. Избрана проза
Автобиографията на Алис Б. Токлас
 
GPT as GPT Generative Pre-trained Transformer as General-Purpose Technology 
Автор: Ioannis Patias | Йоаннис Патиас
Раздел: Точни науки, техника
Издателство: УИ „Св. Климент Охридски”
Народност: българска
ISBN: 9789540762937
първо издание, 2026 год.
меки корици, 192 стр.
Цена: 27,38 лв (14.00 €)  
Readers will not only encounter a wide array of leading?edge technologies; they will also glimpse their future trajectories. This volume is not a just specialist monograph but a work of general education and a practical guide for readers across many fields. I sincerely hope that many people will pick up this book and successfully build good relationships with this new kind of partner.

Prof. Koutaro Hachiya, Teikyo Heisei University, Japan


***
CONTENTS

FOREWORD
MOTIVATION FOR GPT AS GPT
A Definition of General-Purpose Technology and Its Relevance to AI
Historical and Economic Context of GPTs
Overview of Foundational Models, LLMs, and Generative AI
Guiding the Future of AI
Previous works and results of the author used in the monograph
1. AI AS GENERAL-PURPOSE TECHNOLOGY – BASIC CONCEPTS AND DEFINITIONS
1.1. Technology Background of LLMs and Foundational Models
1.2. Large language models
1.3. A Brief History of the Development of LLM
1.4. Key Generative AI Models
1.5. What are Prompts?
1.6. Characteristics of an Effective Prompt
1.7. Terms Used in Prompt Engineering
1.8. Use Cases of Prompt Engineering
1.9. Chapter 1: Additional Readings
2. CREATING EFFECTIVE PROMPTS
2.1. Problem Formulation and Prompt Engineering
2.2. Improving Problem Formulation
2.3. General Tips and Best Practices for Prompt Engineering
2.4. Elements of a Prompt
2.5. Examples
2.6. Chapter 2: Additional Readings
3. LANGUAGE MODEL SETTINGS AND ADAPTATION
3.1. Downstream tasks
3.2. Fundamentals of LLM Adaptation
3.3. Examples
3.4. Models Parametrization
3.5. Chapter 3: Additional Readings
4. REASONING AND CONTEXTUAL UNDERSTANDING IN PROMPT ENGINEERING
4.1. Historical Context of Reasoning in AI
4.2. Evolution of Contextual Understanding in Language Models
4.3. How LLMs Process and Generate Contextually Relevant Responses
4.4. The Importance of Context in Prompt Engineering
4.5. Strategies for Effectively Incorporating Context Indications
4.6. Guiding Models to Reason and Make Inferences Based on Context
4.7. Chapter 4: Additional Readings
5. ADVANCED PROMPT ENGINEERING TECHNIQUES AND APPLICATIONS
5.1. Zero-Shot
5.2. Few-Shot
5.3. Chain-of-Thought (CoT)
5.4. Automatic Chain-of-Thought (Auto-CoT)
5.5. Self-Consistency
5.6. Logical Chain-of-Thought (LogiCoT)
5.7. Chain-of-Symbol (CoS)
5.8. Tree-of-Thoughts (ToT)
5.9. Graph-of-Thoughts (GoT)
5.10. System 2 Attention (S2A)
5.11. Thread of Thought (ThoT)
5.12. Chain-of-Table
5.13. Retrieval Augmented Generation (RAG)
5.14. ReAct
5.15. Chain-of-Verification (CoVe)
5.16. Chain-of-Note (CoN)
5.17. Chain-of-Knowledge (CoK)
5.18. Active Prompting
5.19. Automatic Prompt Engineer (APE)
5.20. Automatic Reasoning and Tool-use (ART)
5.21. Contrastive Chain-of-Thought (CCoT)
5.22. Emotion Prompting
5.23. Scratchpad Prompting
5.24. Program of Thoughts (PoT)
5.25. Structured Chain-of-Thought (SCoT)
5.26. Chain-of-Code (CoC)
5.27. Optimization by Prompting (OPRO)
5.28. Rephrase and Respond (RaR)
5.29. Take a Step Back Prompting
5.30. Verification Methods
5.31 Chapter 5: Additional Readings
6. APPLICATIONS OF PROMPT ENGINEERING IN CODE GENERATION
6.1. Prompt Engineering in Software Development
6.2. Practical Applications of Prompt Engineering in Code Generation
6.3. Chapter 6: Additional Readings
7. APPLICATIONS OF PROMPT ENGINEERING IN DATA AUGMENTATION
7.1. Data Augmentation
7.2. The data augmentation process
7.3. Techniques of Data Augmentation
7.4. Chapter 7: Additional Readings
8. XAI
8.1. XAI Significance
8.2. History of XAI
8.3. The main goals of XAI
8.4. Techniques in XAI
8.5. Metrics for XAI
8.6. Benefits of XAI
8.7. Challenges in XAI
8.8. Applications of XAI
8.9. Case Studies of XAI Implementation
8.10. Challenges and Future Directions
8.11. Chapter 8: Additional Readings
9. ETHICAL CONSIDERATIONS
9.1. Ethical Implications in Prompt Engineering
9.2. Mitigating Undesired Consequences
9.3. Principles of Responsible AI
9.4. Best Practices for Responsible AI
9.5. Chapter 9: Additional Readings
FIGURES
EQUATIONS
TABLES
REFERENCES

Търсене     
 
Важни Новини
Класация 50-те най-продавани книги в „Български книжици” за 2025 г.
Още...
Регистрирани потребители
Име:

Парола:


>> Регистрация
Новини
Класация 50-те най-продавани книги в „Български книжици” за 2025 г.
ВАЖНО! РАБОТИМ ДО 15 Ч. НА 31 ДЕКЕМВРИ, А 1-4 ЯНУАРИ СА ПОЧИВНИ ДНИ
Нашата витрина
Новият юбилеен брой на списание "Ах, Мария" вече е в "Български книжици!"
ФУНКЦИЯТА ЗА СЕЛЕКТИРАНЕ НА НАЙ-НОВИТЕ КНИГИ В РАЗДЕЛИТЕ НА САЙТА ОТНОВО РАБОТИ!
Още новини...
10 най-продавани книги за месеца
1. Прозвища и термини: Недовършени ръкописи. Интревюта. Бележки
2. Автобиографията на Алис Б. Токлас
3. Феноменология на възприятието
4. Пилигрим от края на света • Приписка
5. Борис Делчев. Дневник, том 2 (1962-1965)
6. Държавен преврат: практическо ръководство
7. Банкерът анархист и други истории. Избрана проза
8. Тайната школа, книга 14: В диалог с Махатмите от Шамбала. Писмата на махатмите продължават в символите на житните кръгове т1+т2
9. Лес в къщата
10. Хигин. Митове

    © 2003 - 2012 Български книжици, office@knigabg.com