Data systems outlive applications, frameworks, and infrastructure. They encode decisions that shape what a system can become-and what it can never safely change. Designing Modern Data Systems is a deep, decision-driven guide to building data systems that are reliable, scalable, and adaptable over time. Rather than focusing on tools or trends, this book teaches how to reason about architecture itself: how guarantees are chosen, where authority lives, how failures manifest, and how systems evolve under real-world pressure. Written for experienced engineers and architects, the book treats data systems as long-lived sociotechnical systems-not just databases or pipelines. It focuses on clarity of responsibility, explicit trade-offs, and preserving meaning as data moves, changes, and ages. This book takes a structured journey through modern data system design:How to define data systems as distinct from applications and infrastructure How non-functional requirements like reliability, availability, latency, and cost shape architecture long before technology choices How to design data models, storage engines, and indexing strategies that survive product evolution How to reason about replication, partitioning, coordination, and distributed transactions without accidental complexity How batch and stream processing fit into a unified view of data over time How logs, history, and derived data enable recovery, reprocessing, and safe change How to operate systems in production with observability, backpressure, and failure isolation How to design data systems that support machine learning and large language model platforms, including feature pipelines and embeddings How to migrate, evolve, and decommission systems without outages or loss of trust Throughout the book, ideas are grounded in a single evolving reference system, allowing readers to see how architectural decisions accumulate and interact as requirements change. What Makes This Book DifferentDecision-focused, not tool-driven The book avoids product comparisons and instead teaches how to evaluate any technology within clear architectural constraints. Explicit trade-offs, not recipes Every design choice is examined in terms of what it enables, what it forbids, and what it costs. Modern, without being trendy AI and LLM systems are addressed where they introduce real architectural pressure-without hype or speculation. Written for longevity The principles in this book are designed to remain relevant as tools, platforms, and organizational structures change. This book is written for:Software engineers designing backend and platform systems Data engineers responsible for storage, processing, and pipelines Staff, principal, and senior engineers shaping architectural direction Architects and technical leaders responsible for long-term system evolution Practitioners preparing for system design interviews who want judgment, not templates This is not:A beginner's introduction to databases A step-by-step tutorial for specific tools A catalog of technologies or patterns Instead, it is a book about how to think clearly about data systems, and how to design them so they remain understandable, trustworthy, and changeable over time. If you are responsible for making architectural decisions-and living with their consequences-Designing Modern Data Systems is written for you.
Die Inhaltsangabe kann sich auf eine andere Ausgabe dieses Titels beziehen.
Anbieter: California Books, Miami, FL, USA
Zustand: New. Bestandsnummer des Verkäufers I-9798233501340
Anzahl: Mehr als 20 verfügbar
Anbieter: PBShop.store UK, Fairford, GLOS, Vereinigtes Königreich
PAP. Zustand: New. New Book. Delivered from our UK warehouse in 4 to 14 business days. THIS BOOK IS PRINTED ON DEMAND. Established seller since 2000. Bestandsnummer des Verkäufers L0-9798233501340
Anzahl: Mehr als 20 verfügbar
Anbieter: Rarewaves.com USA, London, LONDO, Vereinigtes Königreich
Paperback. Zustand: New. Bestandsnummer des Verkäufers LU-9798233501340
Anzahl: Mehr als 20 verfügbar
Anbieter: Grand Eagle Retail, Bensenville, IL, USA
Paperback. Zustand: new. Paperback. Data systems outlive applications, frameworks, and infrastructure.They encode decisions that shape what a system can become-and what it can never safely change.Designing Modern Data Systems is a deep, decision-driven guide to building data systems that are reliable, scalable, and adaptable over time. Rather than focusing on tools or trends, this book teaches how to reason about architecture itself: how guarantees are chosen, where authority lives, how failures manifest, and how systems evolve under real-world pressure.Written for experienced engineers and architects, the book treats data systems as long-lived sociotechnical systems-not just databases or pipelines. It focuses on clarity of responsibility, explicit trade-offs, and preserving meaning as data moves, changes, and ages.This book takes a structured journey through modern data system design: How to define data systems as distinct from applications and infrastructureHow non-functional requirements like reliability, availability, latency, and cost shape architecture long before technology choicesHow to design data models, storage engines, and indexing strategies that survive product evolutionHow to reason about replication, partitioning, coordination, and distributed transactions without accidental complexityHow batch and stream processing fit into a unified view of data over timeHow logs, history, and derived data enable recovery, reprocessing, and safe changeHow to operate systems in production with observability, backpressure, and failure isolationHow to design data systems that support machine learning and large language model platforms, including feature pipelines and embeddingsHow to migrate, evolve, and decommission systems without outages or loss of trustThroughout the book, ideas are grounded in a single evolving reference system, allowing readers to see how architectural decisions accumulate and interact as requirements change.What Makes This Book DifferentDecision-focused, not tool-drivenThe book avoids product comparisons and instead teaches how to evaluate any technology within clear architectural constraints.Explicit trade-offs, not recipesEvery design choice is examined in terms of what it enables, what it forbids, and what it costs.Modern, without being trendyAI and LLM systems are addressed where they introduce real architectural pressure-without hype or speculation.Written for longevityThe principles in this book are designed to remain relevant as tools, platforms, and organizational structures change.This book is written for: Software engineers designing backend and platform systemsData engineers responsible for storage, processing, and pipelinesStaff, principal, and senior engineers shaping architectural directionArchitects and technical leaders responsible for long-term system evolutionPractitioners preparing for system design interviews who want judgment, not templatesThis is not: A beginner's introduction to databasesA step-by-step tutorial for specific toolsA catalog of technologies or patternsInstead, it is a book about how to think clearly about data systems, and how to design them so they remain understandable, trustworthy, and changeable over time.If you are responsible for making architectural decisions-and living with their consequences-Designing Modern Data Systems is written for you. This item is printed on dema Shipping may be from multiple locations in the US or from the UK, depending on stock availability. Bestandsnummer des Verkäufers 9798233501340
Anbieter: CitiRetail, Stevenage, Vereinigtes Königreich
Paperback. Zustand: new. Paperback. Data systems outlive applications, frameworks, and infrastructure.They encode decisions that shape what a system can become-and what it can never safely change.Designing Modern Data Systems is a deep, decision-driven guide to building data systems that are reliable, scalable, and adaptable over time. Rather than focusing on tools or trends, this book teaches how to reason about architecture itself: how guarantees are chosen, where authority lives, how failures manifest, and how systems evolve under real-world pressure.Written for experienced engineers and architects, the book treats data systems as long-lived sociotechnical systems-not just databases or pipelines. It focuses on clarity of responsibility, explicit trade-offs, and preserving meaning as data moves, changes, and ages.This book takes a structured journey through modern data system design: How to define data systems as distinct from applications and infrastructureHow non-functional requirements like reliability, availability, latency, and cost shape architecture long before technology choicesHow to design data models, storage engines, and indexing strategies that survive product evolutionHow to reason about replication, partitioning, coordination, and distributed transactions without accidental complexityHow batch and stream processing fit into a unified view of data over timeHow logs, history, and derived data enable recovery, reprocessing, and safe changeHow to operate systems in production with observability, backpressure, and failure isolationHow to design data systems that support machine learning and large language model platforms, including feature pipelines and embeddingsHow to migrate, evolve, and decommission systems without outages or loss of trustThroughout the book, ideas are grounded in a single evolving reference system, allowing readers to see how architectural decisions accumulate and interact as requirements change.What Makes This Book DifferentDecision-focused, not tool-drivenThe book avoids product comparisons and instead teaches how to evaluate any technology within clear architectural constraints.Explicit trade-offs, not recipesEvery design choice is examined in terms of what it enables, what it forbids, and what it costs.Modern, without being trendyAI and LLM systems are addressed where they introduce real architectural pressure-without hype or speculation.Written for longevityThe principles in this book are designed to remain relevant as tools, platforms, and organizational structures change.This book is written for: Software engineers designing backend and platform systemsData engineers responsible for storage, processing, and pipelinesStaff, principal, and senior engineers shaping architectural directionArchitects and technical leaders responsible for long-term system evolutionPractitioners preparing for system design interviews who want judgment, not templatesThis is not: A beginner's introduction to databasesA step-by-step tutorial for specific toolsA catalog of technologies or patternsInstead, it is a book about how to think clearly about data systems, and how to design them so they remain understandable, trustworthy, and changeable over time.If you are responsible for making architectural decisions-and living with their consequences-Designing Modern Data Systems is written for you. This item is pr Shipping may be from our UK warehouse or from our Australian or US warehouses, depending on stock availability. Bestandsnummer des Verkäufers 9798233501340
Anzahl: 1 verfügbar
Anbieter: AussieBookSeller, Truganina, VIC, Australien
Paperback. Zustand: new. Paperback. Data systems outlive applications, frameworks, and infrastructure.They encode decisions that shape what a system can become-and what it can never safely change.Designing Modern Data Systems is a deep, decision-driven guide to building data systems that are reliable, scalable, and adaptable over time. Rather than focusing on tools or trends, this book teaches how to reason about architecture itself: how guarantees are chosen, where authority lives, how failures manifest, and how systems evolve under real-world pressure.Written for experienced engineers and architects, the book treats data systems as long-lived sociotechnical systems-not just databases or pipelines. It focuses on clarity of responsibility, explicit trade-offs, and preserving meaning as data moves, changes, and ages.This book takes a structured journey through modern data system design: How to define data systems as distinct from applications and infrastructureHow non-functional requirements like reliability, availability, latency, and cost shape architecture long before technology choicesHow to design data models, storage engines, and indexing strategies that survive product evolutionHow to reason about replication, partitioning, coordination, and distributed transactions without accidental complexityHow batch and stream processing fit into a unified view of data over timeHow logs, history, and derived data enable recovery, reprocessing, and safe changeHow to operate systems in production with observability, backpressure, and failure isolationHow to design data systems that support machine learning and large language model platforms, including feature pipelines and embeddingsHow to migrate, evolve, and decommission systems without outages or loss of trustThroughout the book, ideas are grounded in a single evolving reference system, allowing readers to see how architectural decisions accumulate and interact as requirements change.What Makes This Book DifferentDecision-focused, not tool-drivenThe book avoids product comparisons and instead teaches how to evaluate any technology within clear architectural constraints.Explicit trade-offs, not recipesEvery design choice is examined in terms of what it enables, what it forbids, and what it costs.Modern, without being trendyAI and LLM systems are addressed where they introduce real architectural pressure-without hype or speculation.Written for longevityThe principles in this book are designed to remain relevant as tools, platforms, and organizational structures change.This book is written for: Software engineers designing backend and platform systemsData engineers responsible for storage, processing, and pipelinesStaff, principal, and senior engineers shaping architectural directionArchitects and technical leaders responsible for long-term system evolutionPractitioners preparing for system design interviews who want judgment, not templatesThis is not: A beginner's introduction to databasesA step-by-step tutorial for specific toolsA catalog of technologies or patternsInstead, it is a book about how to think clearly about data systems, and how to design them so they remain understandable, trustworthy, and changeable over time.If you are responsible for making architectural decisions-and living with their consequences-Designing Modern Data Systems is written for you. This item is pr Shipping may be from our Sydney, NSW warehouse or from our UK or US warehouse, depending on stock availability. Bestandsnummer des Verkäufers 9798233501340
Anzahl: 1 verfügbar
Anbieter: Rarewaves.com UK, London, Vereinigtes Königreich
Paperback. Zustand: New. Bestandsnummer des Verkäufers LU-9798233501340
Anzahl: Mehr als 20 verfügbar
Anbieter: preigu, Osnabrück, Deutschland
Taschenbuch. Zustand: Neu. Designing Modern Data Systems | Decision-Focused Software Architecture for Data Engineering, System Design, and Large Language Model Platforms | Jonah Prescott | Taschenbuch | Englisch | 2025 | Richa Publishing Minds | EAN 9798233501340 | Verantwortliche Person für die EU: Libri GmbH, Europaallee 1, 36244 Bad Hersfeld, gpsr[at]libri[dot]de | Anbieter: preigu Print on Demand. Bestandsnummer des Verkäufers 134412614
Anzahl: 5 verfügbar
Anbieter: AHA-BUCH GmbH, Einbeck, Deutschland
Taschenbuch. Zustand: Neu. nach der Bestellung gedruckt Neuware - Printed after ordering - Data systems outlive applications, frameworks, and infrastructure.They encode decisions that shape what a system can become-and what it can never safely change.Designing Modern Data Systems is a deep, decision-driven guide to building data systems that are reliable, scalable, and adaptable over time. Rather than focusing on tools or trends, this book teaches how to reason about architecture itself: how guarantees are chosen, where authority lives, how failures manifest, and how systems evolve under real-world pressure.Written for experienced engineers and architects, the book treats data systems as long-lived sociotechnical systems-not just databases or pipelines. It focuses on clarity of responsibility, explicit trade-offs, and preserving meaning as data moves, changes, and ages.This book takes a structured journey through modern data system design:How to define data systems as distinct from applications and infrastructureHow non-functional requirements like reliability, availability, latency, and cost shape architecture long before technology choicesHow to design data models, storage engines, and indexing strategies that survive product evolutionHow to reason about replication, partitioning, coordination, and distributed transactions without accidental complexityHow batch and stream processing fit into a unified view of data over timeHow logs, history, and derived data enable recovery, reprocessing, and safe changeHow to operate systems in production with observability, backpressure, and failure isolationHow to design data systems that support machine learning and large language model platforms, including feature pipelines and embeddingsHow to migrate, evolve, and decommission systems without outages or loss of trustThroughout the book, ideas are grounded in a single evolving reference system, allowing readers to see how architectural decisions accumulate and interact as requirements change.What Makes This Book DifferentDecision-focused, not tool-drivenThe book avoids product comparisons and instead teaches how to evaluate any technology within clear architectural constraints.Explicit trade-offs, not recipesEvery design choice is examined in terms of what it enables, what it forbids, and what it costs.Modern, without being trendyAI and LLM systems are addressed where they introduce real architectural pressure-without hype or speculation.Written for longevityThe principles in this book are designed to remain relevant as tools, platforms, and organizational structures change.This book is written for:Software engineers designing backend and platform systemsData engineers responsible for storage, processing, and pipelinesStaff, principal, and senior engineers shaping architectural directionArchitects and technical leaders responsible for long-term system evolutionPractitioners preparing for system design interviews who want judgment, not templatesThis is not:A beginner's introduction to databasesA step-by-step tutorial for specific toolsA catalog of technologies or patternsInstead, it is a book about how to think clearly about data systems, and how to design them so they remain understandable, trustworthy, and changeable over time.If you are responsible for making architectural decisions-and living with their consequences-Designing Modern Data Systems is written for you. Bestandsnummer des Verkäufers 9798233501340
Anzahl: 2 verfügbar