Turn your machine learning knowledge into real-world solutions with this comprehensive, project-based guide designed for data scientists, software engineers, and AI practitioners looking to transition from experimentation to production. This hands-on guide walks you through the development of 50 fully functional machine learning models, covering a wide range of industries and applications-including finance, healthcare, e-commerce, NLP, computer vision, recommendation systems, and time-series forecasting.
Each project is engineered to mirror real-world workflows, with an emphasis on scalability, performance, and deployment. You'll learn to integrate cutting-edge tools such as TensorFlow, Scikit-learn, FastAPI, Docker, Kubernetes, and MLflow into your pipelines, while mastering MLOps practices that ensure reliability, reproducibility, and maintainability of models in production environments. Key features include: End-to-end development of 50 machine learning projects Guidance on production-ready model design, training, testing, and deployment Step-by-step implementation using Python, with clean, reusable code Real-world datasets and scalable architectures Coverage of key MLOps tools and CI/CD automation strategies Whether you're aiming to build your portfolio, advance your career, or deploy robust machine learning systems, this book gives you the practical skills and tools to succeed.
Build smarter. Deploy faster. Master machine learning engineering-purchase your copy of Machine Learning Engineering today and start building production-grade models that deliver real impact.
Turn your machine learning knowledge into real-world solutions with this comprehensive, project-based guide designed for data scientists, software engineers, and AI practitioners looking to transition from experimentation to production. This hands-on guide walks you through the development of 50 fully functional machine learning models, covering a wide range of industries and applications-including finance, healthcare, e-commerce, NLP, computer vision, recommendation systems, and time-series forecasting.
Each project is engineered to mirror real-world workflows, with an emphasis on scalability, performance, and deployment. You'll learn to integrate cutting-edge tools such as TensorFlow, Scikit-learn, FastAPI, Docker, Kubernetes, and MLflow into your pipelines, while mastering MLOps practices that ensure reliability, reproducibility, and maintainability of models in production environments. Key features include: End-to-end development of 50 machine learning projects Guidance on production-ready model design, training, testing, and deployment Step-by-step implementation using Python, with clean, reusable code Real-world datasets and scalable architectures Coverage of key MLOps tools and CI/CD automation strategies Whether you're aiming to build your portfolio, advance your career, or deploy robust machine learning systems, this book gives you the practical skills and tools to succeed.
Build smarter. Deploy faster. Master machine learning engineering-purchase your copy of Machine Learning Engineering today and start building production-grade models that deliver real impact.