Self-Improving Recursive AI
No se pudo agregar al carrito
Solo puedes tener X títulos en el carrito para realizar el pago.
Add to Cart failed.
Por favor prueba de nuevo más tarde
Error al Agregar a Lista de Deseos.
Por favor prueba de nuevo más tarde
Error al eliminar de la lista de deseos.
Por favor prueba de nuevo más tarde
Error al añadir a tu biblioteca
Por favor intenta de nuevo
Error al seguir el podcast
Intenta nuevamente
Error al dejar de seguir el podcast
Intenta nuevamente
Prueba gratis de 30 días de Audible Standard
Selecciona 1 audiolibro al mes de nuestra colección completa de más de 1 millón de títulos.
Es tuyo mientras seas miembro.
Obtén acceso ilimitado a los podcasts con mayor demanda.
Plan Standard se renueva automáticamente por $8.99 al mes después de 30 días. Cancela en cualquier momento.
Compra ahora por $7.50
-
Narrado por:
-
Virtual Voice
-
De:
-
Ajit Singh
Este título utiliza narración de voz virtual
Voz Virtual es una narración generada por computadora para audiolibros..
Philosophy: Intuition Through Construction
The core philosophy of this book is "learning by doing." I operate on the principle that true understanding of AI systems comes not from abstract theory alone, but from the tangible process of creation. The term "recursive" in the title is central to my approach: it signifies a cyclical process where a system's output and performance metrics are fed back as input for its next iteration of learning. This creates a closed-loop system capable of continuous self-refinement. My focus is relentlessly practical, prioritizing the "how-to" of implementation over dense mathematical proofs, making advanced concepts accessible and actionable.
Key Features
1. Application-Centric Approach: Over 70% of the content is dedicated to practical implementation, code examples, case studies, and deployment strategies.
2. Simplified Algorithms: Complex algorithms are broken down into simple, understandable steps, making them accessible to students who are new to the field.
2. Step-by-Step Code Walkthroughs: All code is presented in Python using popular libraries like TensorFlow, PyTorch, and Scikit-learn, with detailed explanations for each line and block.
3. Architectural Blueprints: Clear explanations of models, architectures, and frameworks provide a visual and conceptual map for building robust systems.
4. Hands-On Case Studies: Two dedicated chapters explore the end-to-end development of practical applications—a Self-Tuning Recommendation Engine and an Adaptive Spam Filter.
5. Comprehensive Capstone Project: The final chapter guides the reader through building a complete, working "Autonomous Content Moderator," including full source code and deployment instructions.
6. Globally Compliant Syllabus: The content is carefully curated to align with the AI and Machine Learning syllibus of international universities, making it an ideal textbook for B.Tech and M.Tech courses.
Key Takeaways
Upon completing this book, the reader will be able to:
1. Design the architecture for a self-improving AI system.
2. Implement recursive feedback loops that enable continuous learning.
3. Apply suitable algorithms like online learning and basic reinforcement learning for iterative model refinement.
4. Develop end-to-end AI applications that adapt to new data in real-time.
5. Deploy and monitor these dynamic systems in a simulated production environment.
6. Understand the practical challenges and ethical considerations associated with autonomous, self-modifying AI.
Disclaimer: Earnest request from the Author.
Kindly go through the table of contents and refer kindle edition for a glance on the related contents.
Thank you for your kind consideration!
Todavía no hay opiniones