AI Engineering Design Pattern
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Narrado por:
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Virtual Voice
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De:
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Ajit Singh
Este título utiliza narración de voz virtual
Voz Virtual es una narración generada por computadora para audiolibros..
Philosophy
The central philosophy of this book is "Systems First, Models Second." While the machine learning model is the "brain" of an AI application, it is the surrounding engineering system—the "body"—that allows it to function effectively in the real world. A high-accuracy model is useless if it cannot access data, serve predictions reliably at scale, or adapt to changing conditions.
Key Features
1. Strictly Implementation-Focused: Over 70% of the content is dedicated to practical, hands-on implementation, code walkthroughs, and end-to-end examples.
2. Industry-Standard Technology Stack: Examples utilize Python, TensorFlow/PyTorch, Scikit-learn, Docker, Kubernetes, Flask/FastAPI, and other technologies prevalent in the industry.
3. End-to-End System Perspective: The book covers the entire AI application lifecycle, from data acquisition and preparation patterns to MLOps and responsible AI patterns.
4. Simplified Algorithms: Complex theoretical concepts are abstracted away. The focus is on the engineering application, with algorithms presented as simple, numbered steps.
5. Capstone Project: The final chapter integrates multiple patterns into a single, comprehensive DIY project building a live, deployable AI application from scratch with full code provided.
6. University Syllabus Compatibility: The content is carefully curated to align with advanced undergraduate and graduate courses in AI/ML, Software Engineering, and MLOps at major universities globally.
Key Takeaways
Upon completing this book, you will be able to:
1. Design and Architect robust, scalable, and maintainable end-to-end AI systems.
2. Identify and Apply the correct design pattern for common challenges in data management, model training, deployment, and operations.
3. Implement MLOps pipelines for continuous integration, continuous delivery, and continuous training (CI/CD/CT) of machine learning models.
4. Build and Deploy AI applications as containerized microservices using tools like Docker and Flask.
5. Incorporate principles of Responsible AI, including monitoring, explainability, and security, into your projects.
6. Confidently Transition from building standalone ML models to engineering complete, industry-grade AI solutions.
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!
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