Junte-se a nós em uma viagem ao mundo dos livros!
Adicionar este livro à prateleira
Grey
Deixe um novo comentário Default profile 50px
Grey
Assine para ler o livro completo ou leia as primeiras páginas de graça!
All characters reduced
Data Engineering Best Practices - Architect robust and cost-effective data solutions in the cloud era - cover
LER

Data Engineering Best Practices - Architect robust and cost-effective data solutions in the cloud era

David Larochelle, Richard J. Schiller

Editora: Packt Publishing

  • 0
  • 0
  • 0

Sinopse

Revolutionize your approach to data processing in the fast-paced business landscape with this essential guide to data engineering. Discover the power of scalable, efficient, and secure data solutions through expert guidance on data engineering principles and techniques. Written by two industry experts with over 60 years of combined experience, it offers deep insights into best practices, architecture, agile processes, and cloud-based pipelines. 
You’ll start by defining the challenges data engineers face and understand how this agile and future-proof comprehensive data solution architecture addresses them. As you explore the extensive toolkit, mastering the capabilities of various instruments, you’ll gain the knowledge needed for independent research. Covering everything you need, right from data engineering fundamentals, the guide uses real-world examples to illustrate potential solutions. It elevates your skills to architect scalable data systems, implement agile development processes, and design cloud-based data pipelines. The book further equips you with the knowledge to harness serverless computing and microservices to build resilient data applications.
By the end, you'll be armed with the expertise to design and deliver high-performance data engineering solutions that are not only robust, efficient, and secure but also future-ready.
Disponível desde: 11/10/2024.
Comprimento de impressão: 550 páginas.

Outros livros que poderiam interessá-lo

  • Time Series Data Analysis - 2 in 1 Guide - cover

    Time Series Data Analysis - 2 in...

    Brian Paul

    • 0
    • 0
    • 0
    From the fundamentals of time series components to the complexities of modern forecasting models, the book navigates through the nuances of stationarity, seasonality, and autocorrelation, equipping readers with the tools to identify and leverage patterns within time-dependent data. Through detailed exploration of data preparation, exploratory data analysis, and a variety of forecasting methods, from classical approaches like ARIMA to cutting-edge deep learning techniques, this book lays a solid foundation for predictive modeling. 
    Key Features:In-depth Coverage: From basic concepts to advanced analysis techniques, the book provides comprehensive insights into time series analysis.Practical Case Studies: Real-world applications in finance, weather forecasting, energy demand, and retail sales offer hands-on learning experiences.Cutting-edge Techniques: Explore the latest in machine learning and deep learning, tailored specifically for time series forecasting.Evaluation Strategies: Learn how to effectively evaluate and optimize forecasting models, ensuring accuracy and reliability in predictions.Tools and Software: An overview of essential tools, including Python and R code snippets, for applying time series analysis in practical settings. 
    Time Series Data Analysis: A Comprehensive Guide for Very Beginner is your key to unlocking the predictive power of time-dependent data. Embrace the opportunity to transform raw data into insightful forecasts that can drive decision-making and innovation in any field. 
     
    Ver livro
  • Machine Readable Me - The Hidden Ways Tech Shapes our Identities - cover

    Machine Readable Me - The Hidden...

    Zara Rahman

    • 0
    • 0
    • 0
    As we go about our day-to-day lives, digital information about who we are is gathered from all angles via biometric scans, passport applications, and, of course, social media. This data can never fully capture our complex, fluid identities over decades of our lives. Yet, this data populates numerous databases we may not even be aware of that can make life-or-death decisions such as who is allowed access to welfare benefits or who is granted food parcels as they pass war-torn borders.
    Machine Readable Me considers how and why data that is gathered about us is increasingly limiting what we can and can't do in our lives and, crucially, what the alternatives are.
    Ver livro
  • Whispers in the Wilderness - cover

    Whispers in the Wilderness

    Erik Stensland

    • 0
    • 0
    • 0
    Many of us spend a great deal of our time dreaming about our next trip to the mountains, whether for a weekend getaway or our yearly vacation. We hear within that deep inexplicable pull toward the wilderness and would agree with John Muir, who said: "The mountains are calling and I must go." We sense that in the wild we are touching the edge of something that is both wonderful and mysterious. 
    In this book Erik Stensland, a professional landscape photographer based in Estes Park, Colorado, explores this longing we have for the wilderness and suggests that it is the trailhead for a journey to wholeness. Through short daily reflections on the natural world paired with his gorgeous photos from Rocky Mountain National Park, he encourages us to go deeper within ourselves and discover the healing that nature is offering.
    Ver livro
  • Agile Project Management with Kanban - A Proven Framework for Managing Projects Teams and Deliveries - cover

    Agile Project Management with...

    Ben Stephen

    • 0
    • 0
    • 0
    "Agile Project Management with Kanban: A Proven Framework for Managing Projects, Teams and Deliveries" is a comprehensive guide to implementing the Kanban method in any organization. Originally developed in the manufacturing industry, Kanban is a powerful tool for managing and improving workflows, and it is now widely used in a variety of industries. This book provides a clear and detailed explanation of the Kanban method and its key principles, as well as practical guidance for introducing Kanban to your team and organization. 
    The book begins by defining Kanban and its origins in Lean manufacturing, and comparing it to other Agile methodologies. It then goes on to explain the Kanban board and its components, and the role of Work In Progress (WIP) limits in Kanban. The author provides step-by-step instructions for introducing Kanban to your team and organization, including tips for creating a Kanban board and setting up WIP limits. The book also covers strategies for overcoming resistance to change and managing the flow of work. 
    In addition, the author provides techniques for visualizing and managing the flow of work, discussion of the role of metrics in Kanban, and strategies for identifying and addressing bottlenecks. The book also covers tips for effective communication and collaboration with team members and stakeholders, and strategies for ensuring buy-in and alignment with organizational goals. The author also discusses the role of leadership in Kanban, including the Kanban leadership style and practices that are most effective in a Kanban environment. 
    This book is ideal for project managers, team leaders, product managers, and anyone looking to improve their project management and delivery process. With its clear explanations and practical guidance, this book is an essential resource for anyone looking to implement Kanban in their organization. 
     
    Ver livro
  • Data Miner - Clear Introduction to the Fundamentals of Data Mining - cover

    Data Miner - Clear Introduction...

    Chuck Sherman

    • 0
    • 0
    • 0
    Data mining is the art of discovering patterns, trends, and relationships buried deep within complex data. With the exponential growth of data in today's digital age, mastering data mining has become a critical skill for individuals and organizations alike. This book serves as your essential roadmap, providing a clear and accessible introduction to the core principles, techniques, and applications of data mining. 
    Starting with the basics, you will learn about the historical context and evolution of data mining, grasping the foundational concepts and terminology. You'll explore the various types of data and understand the crucial steps of data preprocessing, including data cleaning, transformation, and normalization, ensuring your data is primed for analysis. 
    Delving into the heart of data mining, the book showcases powerful tools for data exploration and visualization. You'll discover how to unleash the full potential of your data by identifying meaningful patterns and trends, enabling you to make data-driven decisions with confidence. 
    No data mining journey would be complete without exploring the realm of machine learning. "Data Miner" demystifies the realm of supervised and unsupervised learning techniques, arming you with the knowledge to build predictive models and discover hidden clusters within your data. Embracing the world of ensemble methods, you'll learn to boost the accuracy of your models and master the art of model evaluation. 
    Looking ahead, the book explores the exciting future trends in data mining, from advancements in machine learning to interdisciplinary collaborations, emphasizing the ever-growing importance of data mining in shaping the world of tomorrow. 
     
    Ver livro
  • Programming with GitHub Copilot - Write Better Code--Faster! - cover

    Programming with GitHub Copilot...

    Kurt Dowswell

    • 0
    • 0
    • 0
    In Programming with GitHub Copilot: Write Better Code—Faster, veteran software developer and GitHub community hero Kurt Dowswell delivers an insightful and hands-on exploration of GitHub's powerful, new AI coding assistant, Copilot. In the book, you'll discover how to use the tool's capabilities to push the boundaries of what you thought was possible in programming. 
     
     
     
    Even if you've used autocomplete tools—like VS Code's TabNine extension—before, you'll be floored by GitHub Copilot's potential to transform the way you code. You'll learn how to install, configure, and use the software, from employing it's most common and widely used features to deploying business and enterprise functionality. You'll even discover how to fix runtime and compilation bugs and write unit, integration, and end-to-end tests. 
     
     
     
    You'll also find: 
     
     
     
    ● Prompt strategies to get GitHub Copilot to help you brainstorm new code solutions 
     
     
     
    ● What the future looks like for AI-assisted coding, including discussions of issues like code licensing and ethics 
     
     
     
    ● Directions for chatting with Copilot, including common commands and prompts to help you guide the conversation to where you want it to go
    Ver livro