Join us on a literary world trip!
Add this book to bookshelf
Grey
Write a new comment Default profile 50px
Grey
Subscribe to read the full book or read the first pages for free!
All characters reduced
The MLflow Handbook - End-to-End Machine Learning Lifecycle Management - cover

The MLflow Handbook - End-to-End Machine Learning Lifecycle Management

Robert Johnson

Publisher: HiTeX Press

  • 0
  • 0
  • 0

Summary

"The MLflow Handbook: End-to-End Machine Learning Lifecycle Management" is a definitive guide that equips data scientists and IT professionals with the tools and knowledge needed to effectively manage machine learning workflows. As machine learning continues to evolve, the complexity of managing models, experiments, and deployments demands robust solutions. This book provides a clear, structured approach to utilizing MLflow, an open-source platform designed to simplify and enhance every aspect of the machine learning lifecycle.Through detailed chapters, readers are introduced to setting up MLflow environments, tracking experiments, managing models, and deploying them in production. The book delves into advanced customization features, ensuring that users can tailor MLflow to meet their specific needs. Case studies across diverse industries—ranging from healthcare to retail—illustrate practical applications and underscore MLflow’s flexibility and impact. Whether a newcomer to machine learning or an experienced professional, this handbook serves as an invaluable resource to mastering MLflow and advancing machine learning capabilities efficiently and effectively.
Available since: 01/05/2025.
Print length: 316 pages.

Other books that might interest you

  • Robotics and Automation - Shaping the Future of Work - cover

    Robotics and Automation -...

    Craig Dames

    • 0
    • 0
    • 0
    Robotics and automation have rapidly evolved from niche technological concepts to central pillars of modern industry and society. What once belonged to the realm of science fiction is now an integral part of how we produce, communicate, transport, and even care for one another. Understanding the foundations of these technologies is essential to grasp how they are reshaping the future of work. 
    The journey of robotics dates back to ancient times with early mechanical inventions, but it wasn’t until the 20th century that programmable machines began to take shape. The term "robot" gained popularity in the early 1920s, yet the real development of industrial robotics didn’t gain momentum until the 1960s, when the first robotic arms were introduced into assembly lines. Since then, robotics has grown exponentially, encompassing everything from humanoid robots to autonomous drones and AI-driven service machines. 
    Automation, often linked closely with robotics, refers to the use of technology to perform tasks with minimal human intervention. While automation began with simple mechanical devices, today it incorporates advanced software, machine learning algorithms, and sensor networks. Modern automation extends beyond factories and is now seen in financial services, healthcare, logistics, agriculture, and even our homes. From smart thermostats to self-checkout systems, the influence of automation is becoming ever more visible in daily life.
    Show book
  • Understanding Artificial Intelligence - Principles and Practices - cover

    Understanding Artificial...

    Craig Dames

    • 0
    • 0
    • 0
    Artificial Intelligence, commonly known as AI, is one of the most transformative technologies of our time. It refers to the development of computer systems that can perform tasks typically requiring human intelligence. These tasks include problem-solving, learning, decision-making, understanding natural language, and even visual perception. While AI may seem like a recent innovation, its foundations were laid decades ago, and it has evolved through years of research, experimentation, and technological advancement. 
    The concept of AI dates back to the 1950s, when computer scientists such as Alan Turing and John McCarthy began exploring whether machines could simulate human intelligence. The term "Artificial Intelligence" was first coined in 1956 during the Dartmouth Conference, which is now recognized as the birthplace of AI as a field of study. Early AI systems were rule-based and could only perform specific tasks under limited conditions. However, as computing power increased and data became more accessible, AI models grew more sophisticated and capable. 
    Today, AI is not just a theoretical concept or something confined to laboratories. It is embedded in our daily lives in subtle and sometimes invisible ways. From voice assistants like Siri and Alexa to recommendation algorithms on streaming platforms and online shopping sites, AI is shaping how we interact with technology. Navigation apps use AI to suggest optimal routes, email services use it to filter spam, and social media platforms rely on AI to personalize content.
    Show book
  • Mammalogy - Mammals: Exploring Warm-Blooded Life on Earth - cover

    Mammalogy - Mammals: Exploring...

    Mike Crawford

    • 0
    • 0
    • 0
    Mammals, the dominant group of warm-blooded vertebrates on Earth today, have a deep evolutionary history that stretches back over 300 million years. Their origins can be traced to the synapsids, a group of amniotes that first appeared in the late Carboniferous period. These early synapsids were distinct from reptiles and birds, possessing a single temporal fenestra, an opening in the skull that allowed for stronger jaw muscles. Over millions of years, synapsids diversified into a variety of forms, some of which gave rise to the therapsids, the direct ancestors of modern mammals. 
    During the Permian period, therapsids became the dominant terrestrial vertebrates, developing more advanced characteristics such as differentiated teeth, a more upright posture, and improved metabolic efficiency. However, the Permian-Triassic extinction event, the most severe mass extinction in Earth's history, led to a significant decline in their diversity. Those that survived continued to evolve, giving rise to cynodonts, a subgroup of therapsids that displayed increasingly mammal-like features. Cynodonts had more complex teeth, enhanced jaw mechanics, and possibly even fur, adaptations that would later define true mammals.
    Show book
  • Mastering AI for Healthcare - Revolutionizing Patient Care and Outcomes Through Hands-on AI-Driven Solutions - cover

    Mastering AI for Healthcare -...

    Nilashis Roy

    • 0
    • 0
    • 0
    Harness AI-led Revolution to Deliver Smarter, Faster, and Better Healthcare.
    Book Description
    Artificial Intelligence is rapidly becoming indispensable in modern healthcare—reshaping how we diagnose, treat, and deliver care. Mastering AI for Healthcare offers a clear, structured journey through this transformation, helping readers understand the critical role AI plays in improving clinical outcomes and operational efficiency.
    The book begins with foundational AI concepts tailored for healthcare professionals, establishing a solid base in machine learning, neural networks, and data science. It then guides readers through practical applications across the care continuum—exploring how predictive analytics can forecast disease risks, how AI powers telemedicine and remote monitoring systems, and how it enhances clinical decision-making through smarter, data-driven EHR systems. Each chapter builds with real-world examples, case studies, and implementation frameworks, offering clarity on emerging tools like computer vision for diagnostics, personalized treatment algorithms, and intelligent automation in hospital workflows.
    Whether you're a healthcare professional, researcher, or policymaker, this book provides the insights you need to stay ahead in a tech-driven world. Don’t get left behind—embrace the tools shaping the future of medicine and lead the change with confidence.
    Table of Contents
    1. Introducing AI in Healthcare
    2. AI Fundamentals for Healthcare
    3. Predictive Analysis in Healthcare
    4. Artificial Intelligence in Telemedicine Remote Patient Monitoring
    5. AI in Clinical Decision Support and Electronic Health Record
    6. Imaging and Diagnosis Using AI
    7. Challenges and Limitations of AI in Healthcare
    8. Future of AI in Healthcare     
    
    Index
    Show book
  • Beginners guide to content marketing - cover

    Beginners guide to content...

    Asger Svendsen

    • 0
    • 0
    • 0
    Beginners Guide to Content Marketing is a practical audiobook designed to introduce newcomers to the fundamentals of content marketing. It covers essential topics like building a content strategy, creating engaging content, and using various platforms to reach target audiences. Packed with actionable tips and real-world examples, this guide helps listeners understand how to attract, engage, and convert customers through effective content. Whether you're starting a blog, managing social media, or creating digital campaigns, this audiobook is your first step toward mastering content marketing. Perfect for beginners looking to build their brand and grow their audience.
    Show book
  • Ultimate AWS Data Engineering - Design Implement and Optimize Scalable Data Solutions on AWS with Practical Workflows and Visual Aids for Unmatched Impact - cover

    Ultimate AWS Data Engineering -...

    Rathish Mohan

    • 0
    • 0
    • 0
    Unlock the Power of AWS Data Engineering and Build Smarter Pipelines for Data-Driven Success.
    Book Description
    In today’s data-driven era, mastering AWS data engineering is key to building scalable, secure pipelines that drive innovation and decision-making. Ultimate AWS Data Engineering is your comprehensive guide to mastering the art of building robust, cost-effective, and fault-tolerant data pipelines on AWS. Designed for data professionals and enthusiasts, this book begins with foundational concepts and progressively explores advanced techniques, equipping you with the skills to tackle real-world challenges.
    Throughout the chapters, you’ll dive deep into the core principles of data replication, partitioning, and load balancing, while gaining hands-on experience with AWS services like S3, DynamoDB, Redshift, and Glue. Learn to design resilient data architectures, optimize performance, and ensure seamless data transformation—all while adhering to best practices in cost-efficiency and security.
    Table of Contents
    1. Unveiling the Secrets of Data Engineering
    2. Architecting for Scalability: Data Replication Techniques
    3. Partitioning and Sharding: Optimizing Data Management
    4. Ensuring Consistency: Consensus Mechanisms and Models
    5. Balancing the Load: Achieving Performance and Efficiency
    6. Building Fault-Tolerant Architectures
    7. Exploring the Realm of AWS Data Storage Services
    8. Orchestrating Data Flow
    9. Advanced Data Pipelines and Transformation
    10. Data Warehousing Demystified
    11. Visualizing the Unseen
    12. AWS Machine Learning: Classic AI to Generative AI
    13. Advanced Data Engineering with AWS      
    
    Index
    Show book