Engineering AI Excellence
Azhar ul Haque Sario
* Affiliatelinks/Werbelinks
Links auf reinlesen.de sind sogenannte Affiliate-Links. Wenn du auf so einen Affiliate-Link klickst und über diesen Link einkaufst, bekommt reinlesen.de von dem betreffenden Online-Shop oder Anbieter eine Provision. Für dich verändert sich der Preis nicht.
Naturwissenschaften, Medizin, Informatik, Technik / Allgemeines, Lexika
Beschreibung
Engineering AI Excellence: A Practical Guide to Building and Deploying Resilient AI Systems The world of AI is evolving at an electrifying pace. Keeping up with the latest tools and techniques can feel like a Herculean task. This book, Engineering AI Excellence, cuts through the noise and provides a clear, concise, and practical roadmap for building and deploying AI systems that are not just functional, but truly exceptional. This isn't just about creating AI that works—it's about engineering AI that thrives in the real world. AI that's efficient, scalable, respects privacy, and promotes fairness. Inside these pages, you'll discover hands-on advice and actionable strategies to achieve exactly that. Here's a glimpse of what you'll learn: Optimize your AI infrastructure: Maximize GPU usage: Uncover advanced techniques to squeeze every ounce of performance from your hardware, accelerating training and reducing costs. (Chapter 1) Embrace the power of Kubernetes: Master the art of orchestrating complex AI workloads, scaling your systems seamlessly with this industry-standard tool. (Chapter 2) Control costs with serverless GPUs: Deploy AI inference cost-effectively using serverless technologies, paying only for what you use. (Chapter 4) Streamline your AI pipeline: Implement Infrastructure-as-Code principles with tools like Terraform to automate deployment and management. (Chapter 6) Build AI that respects privacy: Deploy federated learning: Train models on decentralized data without compromising sensitive information, unlocking the potential of collaborative AI while preserving privacy. (Chapter 3) Enhance AI performance: Compress your models: Explore powerful techniques like quantization and pruning to shrink your models without sacrificing accuracy, leading to faster inference and reduced resource consumption. (Chapter 5) Ensure AI reliability and fairness: Monitor and debug effectively: Gain hands-on experience with observability tools to identify and resolve issues proactively, ensuring your AI systems run smoothly. (Chapter 7) Mitigate bias: Delve into the causes of bias in AI and learn practical strategies to build fair and equitable AI systems. (Chapter 8) Optimize AI through experimentation: Leverage A/B testing: Systematically experiment with different model versions to identify the best performers and continually improve your AI solutions. (Chapter 9) Embrace chaos engineering: Stress-test your AI systems to uncover vulnerabilities and build resilience in the face of real-world challenges. (Chapter 10) "Engineering AI Excellence" is your comprehensive guide to navigating the complexities of AI engineering. Whether you're a seasoned AI engineer or just starting your journey, this book equips you with the knowledge and skills to build AI that's not just good, but truly exceptional. Join the movement towards building a future of AI that's fast, efficient, private, and fair.
Kundenbewertungen
AI Bias, Model Compression, MLOps, AI Infrastructure, GPU Optimization, Serverless AI, Federated Learning, Chaos Engineering, AI Engineering, Kubernetes