Stop Wrangling Data and Start Engineering It
Behind every viral AI model, every real-time dashboard, and every seamless digital experience lies a silent, powerful engine: the data pipeline. But for many, that engine is built on fragile scripts and manual patches that break at the first sign of scale. Practical Data Engineering: Python and SQL in Action is your field manual for moving past "just getting it to work" and mastering the art of building resilient, automated, and professional-grade data systems.
In the information age, data is the raw material, but engineering is the forge. This book strips away the academic fluff and hands you the actual tools used by elite teams to architect the "invisible infrastructure" that powers modern business. From the foundational logic of SQL to the automation power of Python, you will learn how to design systems that don't just store data—they transform it into a strategic asset.
What You Will Find Inside
This book is a deep dive into the practical reality of modern data work. You will learn to:
The Benefits of This Approach
Who Is This Book For?
This is not a "hello world" tutorial. It is built for:
Don't just witness the data revolution—build the systems that lead it. The difference between a data-heavy mess and a data-driven masterpiece is the engineering behind it.
Secure your copy of Practical Data Engineering today and start architecting the future.
Les informations fournies dans la section « Synopsis » peuvent faire référence à une autre édition de ce titre.
Vendeur : Grand Eagle Retail, Bensenville, IL, Etats-Unis
Paperback. Etat : new. Paperback. Stop Wrangling Data and Start Engineering ItBehind every viral AI model, every real-time dashboard, and every seamless digital experience lies a silent, powerful engine: the data pipeline. But for many, that engine is built on fragile scripts and manual patches that break at the first sign of scale. Practical Data Engineering: Python and SQL in Action is your field manual for moving past "just getting it to work" and mastering the art of building resilient, automated, and professional-grade data systems.In the information age, data is the raw material, but engineering is the forge. This book strips away the academic fluff and hands you the actual tools used by elite teams to architect the "invisible infrastructure" that powers modern business. From the foundational logic of SQL to the automation power of Python, you will learn how to design systems that don't just store data-they transform it into a strategic asset.What You Will Find InsideThis book is a deep dive into the practical reality of modern data work. You will learn to: Build Bulletproof Pipelines: Move from fragile ETL scripts to robust, self-healing pipelines using Pythonand Apache Airflow.Master Advanced SQL: Go beyond simple queries to implement window functions, recursive CTEs, and query optimization for massive datasets.Architect the "Lakehouse" Design unified storage systems that combine the flexibility of Data Lakes with the performance of Data Warehouses.Automate Data Quality: Implement Data Contracts and automated testing to catch "bad data" before it ever hits your production tables.Scale for AI: Build the infrastructure required for high-performance machine learning, including feature stores and vector database integration.Implement Modern DataOps: Use Git, CI/CD, and Infrastructure as Code to treat your data systems like high-end software.The Benefits of This ApproachFuture-Proof Your Career: Data engineering demand is skyrocketing; these skills are the bedrock of the 2026 tech economy.Reduce "Firefighting" Stop spending your weekends fixing broken jobs and start building systems that monitor and repair themselves.Enterprise-Ready Skills: Learn the exact stack used by industry leaders, from Snowflake and BigQuery to dbt and Kubernetes.Who Is This Book For?This is not a "hello world" tutorial. It is built for: Data Analysts ready to move from reporting to building the systems they rely on.Software Engineers looking to specialize in the high-demand world of data infrastructure.Data Scientists who want to stop cleaning data manually and start automating their workflows.Don't just witness the data revolution-build the systems that lead it. The difference between a data-heavy mess and a data-driven masterpiece is the engineering behind it.Secure your copy of Practical Data Engineering today and start architecting the future. This item is printed on demand. Shipping may be from multiple locations in the US or from the UK, depending on stock availability. N° de réf. du vendeur 9798244321937
Quantité disponible : 1 disponible(s)
Vendeur : PBShop.store US, Wood Dale, IL, Etats-Unis
PAP. Etat : New. New Book. Shipped from UK. Established seller since 2000. N° de réf. du vendeur L2-9798244321937
Quantité disponible : Plus de 20 disponibles
Vendeur : PBShop.store UK, Fairford, GLOS, Royaume-Uni
PAP. Etat : New. New Book. Shipped from UK. Established seller since 2000. N° de réf. du vendeur L2-9798244321937
Quantité disponible : Plus de 20 disponibles
Vendeur : CitiRetail, Stevenage, Royaume-Uni
Paperback. Etat : new. Paperback. Stop Wrangling Data and Start Engineering ItBehind every viral AI model, every real-time dashboard, and every seamless digital experience lies a silent, powerful engine: the data pipeline. But for many, that engine is built on fragile scripts and manual patches that break at the first sign of scale. Practical Data Engineering: Python and SQL in Action is your field manual for moving past "just getting it to work" and mastering the art of building resilient, automated, and professional-grade data systems.In the information age, data is the raw material, but engineering is the forge. This book strips away the academic fluff and hands you the actual tools used by elite teams to architect the "invisible infrastructure" that powers modern business. From the foundational logic of SQL to the automation power of Python, you will learn how to design systems that don't just store data-they transform it into a strategic asset.What You Will Find InsideThis book is a deep dive into the practical reality of modern data work. You will learn to: Build Bulletproof Pipelines: Move from fragile ETL scripts to robust, self-healing pipelines using Pythonand Apache Airflow.Master Advanced SQL: Go beyond simple queries to implement window functions, recursive CTEs, and query optimization for massive datasets.Architect the "Lakehouse" Design unified storage systems that combine the flexibility of Data Lakes with the performance of Data Warehouses.Automate Data Quality: Implement Data Contracts and automated testing to catch "bad data" before it ever hits your production tables.Scale for AI: Build the infrastructure required for high-performance machine learning, including feature stores and vector database integration.Implement Modern DataOps: Use Git, CI/CD, and Infrastructure as Code to treat your data systems like high-end software.The Benefits of This ApproachFuture-Proof Your Career: Data engineering demand is skyrocketing; these skills are the bedrock of the 2026 tech economy.Reduce "Firefighting" Stop spending your weekends fixing broken jobs and start building systems that monitor and repair themselves.Enterprise-Ready Skills: Learn the exact stack used by industry leaders, from Snowflake and BigQuery to dbt and Kubernetes.Who Is This Book For?This is not a "hello world" tutorial. It is built for: Data Analysts ready to move from reporting to building the systems they rely on.Software Engineers looking to specialize in the high-demand world of data infrastructure.Data Scientists who want to stop cleaning data manually and start automating their workflows.Don't just witness the data revolution-build the systems that lead it. The difference between a data-heavy mess and a data-driven masterpiece is the engineering behind it.Secure your copy of Practical Data Engineering today and start architecting the future. This item is printed on demand. Shipping may be from our UK warehouse or from our Australian or US warehouses, depending on stock availability. N° de réf. du vendeur 9798244321937
Quantité disponible : 1 disponible(s)