Hadoop: The Definitive Guide. Storage and Analysis at Internet Scale. 4th Edition
- Ocena:
- Bądź pierwszym, który oceni tę książkę
- Stron:
- 756
- Dostępne formaty:
-
ePubMobi
Opis ebooka: Hadoop: The Definitive Guide. Storage and Analysis at Internet Scale. 4th Edition
Get ready to unlock the power of your data. With the fourth edition of this comprehensive guide, youâ??ll learn how to build and maintain reliable, scalable, distributed systems with Apache Hadoop. This book is ideal for programmers looking to analyze datasets of any size, and for administrators who want to set up and run Hadoop clusters.
Using Hadoop 2 exclusively, author Tom White presents new chapters on YARN and several Hadoop-related projects such as Parquet, Flume, Crunch, and Spark. Youâ??ll learn about recent changes to Hadoop, and explore new case studies on Hadoopâ??s role in healthcare systems and genomics data processing.
- Learn fundamental components such as MapReduce, HDFS, and YARN
- Explore MapReduce in depth, including steps for developing applications with it
- Set up and maintain a Hadoop cluster running HDFS and MapReduce on YARN
- Learn two data formats: Avro for data serialization and Parquet for nested data
- Use data ingestion tools such as Flume (for streaming data) and Sqoop (for bulk data transfer)
- Understand how high-level data processing tools like Pig, Hive, Crunch, and Spark work with Hadoop
- Learn the HBase distributed database and the ZooKeeper distributed configuration service
Wybrane bestsellery
-
Tę książkę napisał wytrawny znawca i współtwórca Hadoopa. Przedstawia w niej wszystkie istotne mechanizmy działania platformy i pokazuje, jak efektywnie jej używać. Dowiesz się stąd, do czego służą model MapReduce oraz systemy HDFS i YARN. Nauczysz się budować aplikacje oraz klastry.
Hadoop. Komplety przewodnik. Analiza i przechowywanie danych Hadoop. Komplety przewodnik. Analiza i przechowywanie danych
(29.90 zł najniższa cena z 30 dni)44.50 zł
89.00 zł(-50%) -
Hadoop: The Definitive Guide helps you harness the power of your data. Ideal for processing large datasets, the Apache Hadoop framework is an open source implementation of the MapReduce algorithm on which Google built its empire. This comprehensive resource demonstrates how to use Hadoop to build...
Hadoop: The Definitive Guide. The Definitive Guide Hadoop: The Definitive Guide. The Definitive Guide
(126.65 zł najniższa cena z 30 dni)135.15 zł
159.00 zł(-15%) -
Ця книжка познайомить вас з особливостями Jav...
Head First. Програмування на JavaScript. Head First. Програмування на JavaScript Head First. Програмування на JavaScript. Head First. Програмування на JavaScript
(84.16 zł najniższa cena z 30 dni)84.16 zł
103.90 zł(-19%) -
«Патерни проєктування» 2014 ваша книжка, якщо C...(84.16 zł najniższa cena z 30 dni)
84.16 zł
103.90 zł(-19%) -
This practical guide to implementing DeFi in your projects guides you through building full-stack DeFi solutions with popular tools and teaches you how to leverage blockchain technologies to manage crypto assets.
Building Full Stack DeFi Applications. A practical guide to creating your own decentralized finance projects on blockchain Building Full Stack DeFi Applications. A practical guide to creating your own decentralized finance projects on blockchain
-
The Definitive Guide to Data Integration is for data eclectics looking to explore the modern data stack. Complete with practical examples and insights, it covering tools, techniques, and best practices to unleash your data's potential.
The Definitive Guide to Data Integration. Unlock the power of data integration to efficiently manage, transform, and analyze data The Definitive Guide to Data Integration. Unlock the power of data integration to efficiently manage, transform, and analyze data
Pierre-Yves BONNEFOY, Emeric CHAIZE, Raphaël MANSUY, Mehdi TAZI, Stephane Heckel
-
Learn T-SQL Querying, Second Edition, is an up-to-date reference designed to help you write more efficient T-SQL code to perform simple-to-advanced tasks for data management and data analysis tasks.
Learn T-SQL Querying. A guide to developing efficient and elegant T-SQL code - Second Edition Learn T-SQL Querying. A guide to developing efficient and elegant T-SQL code - Second Edition
-
With the help of well-structured and practical recipes, this book will teach you how to integrate data from the cloud and on-premises. You’ll learn how to transform, clean, and consolidate data into a single data platform and get to grips with ADF
Azure Data Factory Cookbook. Build ETL, Hybrid ETL, and ELT pipelines using ADF, Synapse Analytics, Fabric and Databricks - Second Edition Azure Data Factory Cookbook. Build ETL, Hybrid ETL, and ELT pipelines using ADF, Synapse Analytics, Fabric and Databricks - Second Edition
Dmitry Foshin, Tonya Chernyshova, Dmitry Anoshin, Xenia Ireton
Kup polskie wydanie:
Hadoop. Komplety przewodnik. Analiza i przechowywanie danych
- Autor:
- Tom White
44,50 zł
89,00 zł
(29.90 zł najniższa cena z 30 dni)
Ebooka "Hadoop: The Definitive Guide. Storage and Analysis at Internet Scale. 4th Edition" przeczytasz na:
-
czytnikach Inkbook, Kindle, Pocketbook, Onyx Boox i innych
-
systemach Windows, MacOS i innych
-
systemach Windows, Android, iOS, HarmonyOS
-
na dowolnych urządzeniach i aplikacjach obsługujących formaty: PDF, EPub, Mobi
Masz pytania? Zajrzyj do zakładki Pomoc »
Audiobooka "Hadoop: The Definitive Guide. Storage and Analysis at Internet Scale. 4th Edition" posłuchasz:
-
w aplikacji Ebookpoint na Android, iOS, HarmonyOs
-
na systemach Windows, MacOS i innych
-
na dowolnych urządzeniach i aplikacjach obsługujących format MP3 (pliki spakowane w ZIP)
Masz pytania? Zajrzyj do zakładki Pomoc »
Kurs Video "Hadoop: The Definitive Guide. Storage and Analysis at Internet Scale. 4th Edition" zobaczysz:
-
w aplikacjach Ebookpoint i Videopoint na Android, iOS, HarmonyOs
-
na systemach Windows, MacOS i innych z dostępem do najnowszej wersji Twojej przeglądarki internetowej
Szczegóły ebooka
- ISBN Ebooka:
- 978-14-919-0170-0, 9781491901700
- Data wydania ebooka:
- 2015-03-25 Data wydania ebooka często jest dniem wprowadzenia tytułu do sprzedaży i może nie być równoznaczna z datą wydania książki papierowej. Dodatkowe informacje możesz znaleźć w darmowym fragmencie. Jeśli masz wątpliwości skontaktuj się z nami sklep@ebookpoint.pl.
- Język publikacji:
- angielski
- Rozmiar pliku ePub:
- 8.1MB
- Rozmiar pliku Mobi:
- 16.7MB
Spis treści ebooka
- Hadoop: The Definitive Guide
- Dedication
- Foreword
- Preface
- Administrative Notes
- Whats New in the Fourth Edition?
- Whats New in the Third Edition?
- Whats New in the Second Edition?
- Conventions Used in This Book
- Using Code Examples
- Safari Books Online
- How to Contact Us
- Acknowledgments
- I. Hadoop Fundamentals
- 1. Meet Hadoop
- Data!
- Data Storage and Analysis
- Querying All Your Data
- Beyond Batch
- Comparison with Other Systems
- Relational Database Management Systems
- Grid Computing
- Volunteer Computing
- A Brief History of Apache Hadoop
- Whats in This Book?
- 1. Meet Hadoop
- 2. MapReduce
- A Weather Dataset
- Data Format
- A Weather Dataset
- Analyzing the Data with Unix Tools
- Analyzing the Data with Hadoop
- Map and Reduce
- Java MapReduce
- A test run
- Scaling Out
- Data Flow
- Combiner Functions
- Specifying a combiner function
- Running a Distributed MapReduce Job
- Hadoop Streaming
- Ruby
- Python
- 3. The Hadoop Distributed Filesystem
- The Design of HDFS
- HDFS Concepts
- Blocks
- Namenodes and Datanodes
- Block Caching
- HDFS Federation
- HDFS High Availability
- Failover and fencing
- The Command-Line Interface
- Basic Filesystem Operations
- Hadoop Filesystems
- Interfaces
- HTTP
- C
- NFS
- FUSE
- Interfaces
- The Java Interface
- Reading Data from a Hadoop URL
- Reading Data Using the FileSystem API
- FSDataInputStream
- Writing Data
- FSDataOutputStream
- Directories
- Querying the Filesystem
- File metadata: FileStatus
- Listing files
- File patterns
- PathFilter
- Deleting Data
- Data Flow
- Anatomy of a File Read
- Anatomy of a File Write
- Coherency Model
- Consequences for application design
- Parallel Copying with distcp
- Keeping an HDFS Cluster Balanced
- 4. YARN
- Anatomy of a YARN Application Run
- Resource Requests
- Application Lifespan
- Building YARN Applications
- Anatomy of a YARN Application Run
- YARN Compared to MapReduce 1
- Scheduling in YARN
- Scheduler Options
- Capacity Scheduler Configuration
- Queue placement
- Fair Scheduler Configuration
- Enabling the Fair Scheduler
- Queue configuration
- Queue placement
- Preemption
- Delay Scheduling
- Dominant Resource Fairness
- Further Reading
- 5. Hadoop I/O
- Data Integrity
- Data Integrity in HDFS
- LocalFileSystem
- ChecksumFileSystem
- Data Integrity
- Compression
- Codecs
- Compressing and decompressing streams with CompressionCodec
- Inferring CompressionCodecs using CompressionCodecFactory
- Native libraries
- CodecPool
- Codecs
- Compression and Input Splits
- Using Compression in MapReduce
- Compressing map output
- Serialization
- The Writable Interface
- WritableComparable and comparators
- The Writable Interface
- Writable Classes
- Writable wrappers for Java primitives
- Text
- Indexing
- Unicode
- Iteration
- Mutability
- Resorting to String
- BytesWritable
- NullWritable
- ObjectWritable and GenericWritable
- Writable collections
- Implementing a Custom Writable
- Implementing a RawComparator for speed
- Custom comparators
- Serialization Frameworks
- Serialization IDL
- File-Based Data Structures
- SequenceFile
- Writing a SequenceFile
- Reading a SequenceFile
- Displaying a SequenceFile with the command-line interface
- Sorting and merging SequenceFiles
- The SequenceFile format
- SequenceFile
- MapFile
- MapFile variants
- Other File Formats and Column-Oriented Formats
- II. MapReduce
- 6. Developing a MapReduce Application
- The Configuration API
- Combining Resources
- Variable Expansion
- The Configuration API
- Setting Up the Development Environment
- Managing Configuration
- GenericOptionsParser, Tool, and ToolRunner
- 6. Developing a MapReduce Application
- Writing a Unit Test with MRUnit
- Mapper
- Reducer
- Running Locally on Test Data
- Running a Job in a Local Job Runner
- Testing the Driver
- Running on a Cluster
- Packaging a Job
- The client classpath
- The task classpath
- Packaging dependencies
- Task classpath precedence
- Packaging a Job
- Launching a Job
- The MapReduce Web UI
- The resource manager page
- The MapReduce job page
- Retrieving the Results
- Debugging a Job
- The tasks and task attempts pages
- Handling malformed data
- Hadoop Logs
- Remote Debugging
- Tuning a Job
- Profiling Tasks
- The HPROF profiler
- Profiling Tasks
- MapReduce Workflows
- Decomposing a Problem into MapReduce Jobs
- JobControl
- Apache Oozie
- Defining an Oozie workflow
- Packaging and deploying an Oozie workflow application
- Running an Oozie workflow job
- 7. How MapReduce Works
- Anatomy of a MapReduce Job Run
- Job Submission
- Job Initialization
- Task Assignment
- Task Execution
- Streaming
- Progress and Status Updates
- Job Completion
- Anatomy of a MapReduce Job Run
- Failures
- Task Failure
- Application Master Failure
- Node Manager Failure
- Resource Manager Failure
- Shuffle and Sort
- The Map Side
- The Reduce Side
- Configuration Tuning
- Task Execution
- The Task Execution Environment
- Streaming environment variables
- The Task Execution Environment
- Speculative Execution
- Output Committers
- Task side-effect files
- 8. MapReduce Types and Formats
- MapReduce Types
- The Default MapReduce Job
- The default Streaming job
- Keys and values in Streaming
- The Default MapReduce Job
- MapReduce Types
- Input Formats
- Input Splits and Records
- FileInputFormat
- FileInputFormat input paths
- FileInputFormat input splits
- Small files and CombineFileInputFormat
- Preventing splitting
- File information in the mapper
- Processing a whole file as a record
- Input Splits and Records
- Text Input
- TextInputFormat
- Controlling the maximum line length
- TextInputFormat
- KeyValueTextInputFormat
- NLineInputFormat
- XML
- Binary Input
- SequenceFileInputFormat
- SequenceFileAsTextInputFormat
- SequenceFileAsBinaryInputFormat
- FixedLengthInputFormat
- Multiple Inputs
- Database Input (and Output)
- Output Formats
- Text Output
- Binary Output
- SequenceFileOutputFormat
- SequenceFileAsBinaryOutputFormat
- MapFileOutputFormat
- Multiple Outputs
- An example: Partitioning data
- MultipleOutputs
- Lazy Output
- Database Output
- 9. MapReduce Features
- Counters
- Built-in Counters
- Task counters
- Job counters
- Built-in Counters
- User-Defined Java Counters
- Dynamic counters
- Retrieving counters
- Counters
- User-Defined Streaming Counters
- Sorting
- Preparation
- Partial Sort
- Total Sort
- Secondary Sort
- Java code
- Streaming
- Joins
- Map-Side Joins
- Reduce-Side Joins
- Side Data Distribution
- Using the Job Configuration
- Distributed Cache
- Usage
- How it works
- The distributed cache API
- MapReduce Library Classes
- III. Hadoop Operations
- 10. Setting Up a Hadoop Cluster
- Cluster Specification
- Cluster Sizing
- Master node scenarios
- Cluster Sizing
- Network Topology
- Rack awareness
- Cluster Specification
- 10. Setting Up a Hadoop Cluster
- Cluster Setup and Installation
- Installing Java
- Creating Unix User Accounts
- Installing Hadoop
- Configuring SSH
- Configuring Hadoop
- Formatting the HDFS Filesystem
- Starting and Stopping the Daemons
- Creating User Directories
- Hadoop Configuration
- Configuration Management
- Environment Settings
- Java
- Memory heap size
- System logfiles
- SSH settings
- Important Hadoop Daemon Properties
- HDFS
- YARN
- Memory settings in YARN and MapReduce
- CPU settings in YARN and MapReduce
- Hadoop Daemon Addresses and Ports
- Other Hadoop Properties
- Cluster membership
- Buffer size
- HDFS block size
- Reserved storage space
- Trash
- Job scheduler
- Reduce slow start
- Short-circuit local reads
- Security
- Kerberos and Hadoop
- An example
- Kerberos and Hadoop
- Delegation Tokens
- Other Security Enhancements
- Benchmarking a Hadoop Cluster
- Hadoop Benchmarks
- Benchmarking MapReduce with TeraSort
- Other benchmarks
- Hadoop Benchmarks
- User Jobs
- 11. Administering Hadoop
- HDFS
- Persistent Data Structures
- Namenode directory structure
- The filesystem image and edit log
- Secondary namenode directory structure
- Datanode directory structure
- Persistent Data Structures
- Safe Mode
- Entering and leaving safe mode
- HDFS
- Audit Logging
- Tools
- dfsadmin
- Filesystem check (fsck)
- Finding the blocks for a file
- Datanode block scanner
- Balancer
- Monitoring
- Logging
- Setting log levels
- Getting stack traces
- Logging
- Metrics and JMX
- Maintenance
- Routine Administration Procedures
- Metadata backups
- Data backups
- Filesystem check (fsck)
- Filesystem balancer
- Routine Administration Procedures
- Commissioning and Decommissioning Nodes
- Commissioning new nodes
- Decommissioning old nodes
- Upgrades
- HDFS data and metadata upgrades
- Start the upgrade
- Wait until the upgrade is complete
- Check the upgrade
- Roll back the upgrade (optional)
- Finalize the upgrade (optional)
- HDFS data and metadata upgrades
- IV. Related Projects
- 12. Avro
- Avro Data Types and Schemas
- In-Memory Serialization and Deserialization
- The Specific API
- Avro Datafiles
- Interoperability
- Python API
- Avro Tools
- 12. Avro
- Schema Resolution
- Sort Order
- Avro MapReduce
- Sorting Using Avro MapReduce
- Avro in Other Languages
- 13. Parquet
- Data Model
- Nested Encoding
- Data Model
- Parquet File Format
- Parquet Configuration
- Writing and Reading Parquet Files
- Avro, Protocol Buffers, and Thrift
- Projection and read schemas
- Avro, Protocol Buffers, and Thrift
- Parquet MapReduce
- 14. Flume
- Installing Flume
- An Example
- Transactions and Reliability
- Batching
- The HDFS Sink
- Partitioning and Interceptors
- File Formats
- Fan Out
- Delivery Guarantees
- Replicating and Multiplexing Selectors
- Distribution: Agent Tiers
- Delivery Guarantees
- Sink Groups
- Integrating Flume with Applications
- Component Catalog
- Further Reading
- 15. Sqoop
- Getting Sqoop
- Sqoop Connectors
- A Sample Import
- Text and Binary File Formats
- Generated Code
- Additional Serialization Systems
- Imports: A Deeper Look
- Controlling the Import
- Imports and Consistency
- Incremental Imports
- Direct-Mode Imports
- Working with Imported Data
- Imported Data and Hive
- Importing Large Objects
- Performing an Export
- Exports: A Deeper Look
- Exports and Transactionality
- Exports and SequenceFiles
- Further Reading
- 16. Pig
- Installing and Running Pig
- Execution Types
- Local mode
- MapReduce mode
- Execution Types
- Running Pig Programs
- Grunt
- Pig Latin Editors
- Installing and Running Pig
- An Example
- Generating Examples
- Comparison with Databases
- Pig Latin
- Structure
- Statements
- Expressions
- Types
- Schemas
- Using Hive tables with HCatalog
- Validation and nulls
- Schema merging
- Functions
- Other libraries
- Macros
- User-Defined Functions
- A Filter UDF
- Leveraging types
- A Filter UDF
- An Eval UDF
- Dynamic invokers
- A Load UDF
- Using a schema
- Data Processing Operators
- Loading and Storing Data
- Filtering Data
- FOREACH...GENERATE
- STREAM
- Grouping and Joining Data
- JOIN
- COGROUP
- CROSS
- GROUP
- Sorting Data
- Combining and Splitting Data
- Pig in Practice
- Parallelism
- Anonymous Relations
- Parameter Substitution
- Dynamic parameters
- Parameter substitution processing
- Further Reading
- 17. Hive
- Installing Hive
- The Hive Shell
- Installing Hive
- An Example
- Running Hive
- Configuring Hive
- Execution engines
- Logging
- Configuring Hive
- Hive Services
- Hive clients
- The Metastore
- Comparison with Traditional Databases
- Schema on Read Versus Schema on Write
- Updates, Transactions, and Indexes
- SQL-on-Hadoop Alternatives
- HiveQL
- Data Types
- Primitive types
- Complex types
- Data Types
- Operators and Functions
- Conversions
- Tables
- Managed Tables and External Tables
- Partitions and Buckets
- Partitions
- Buckets
- Storage Formats
- The default storage format: Delimited text
- Binary storage formats: Sequence files, Avro datafiles, Parquet files, RCFiles, and ORCFiles
- Using a custom SerDe: RegexSerDe
- Storage handlers
- Importing Data
- Inserts
- Multitable insert
- CREATE TABLE...AS SELECT
- Altering Tables
- Dropping Tables
- Querying Data
- Sorting and Aggregating
- MapReduce Scripts
- Joins
- Inner joins
- Outer joins
- Semi joins
- Map joins
- Subqueries
- Views
- User-Defined Functions
- Writing a UDF
- Writing a UDAF
- A more complex UDAF
- Further Reading
- 18. Crunch
- An Example
- The Core Crunch API
- Primitive Operations
- union()
- parallelDo()
- groupByKey()
- combineValues()
- Primitive Operations
- Types
- Records and tuples
- Sources and Targets
- Reading from a source
- Writing to a target
- Existing outputs
- Combined sources and targets
- Functions
- Serialization of functions
- Object reuse
- Materialization
- PObject
- Pipeline Execution
- Running a Pipeline
- Asynchronous execution
- Debugging
- Running a Pipeline
- Stopping a Pipeline
- Inspecting a Crunch Plan
- Iterative Algorithms
- Checkpointing a Pipeline
- Crunch Libraries
- Further Reading
- 19. Spark
- Installing Spark
- An Example
- Spark Applications, Jobs, Stages, and Tasks
- A Scala Standalone Application
- A Java Example
- A Python Example
- Resilient Distributed Datasets
- Creation
- Transformations and Actions
- Aggregation transformations
- Persistence
- Persistence levels
- Serialization
- Data
- Functions
- Shared Variables
- Broadcast Variables
- Accumulators
- Anatomy of a Spark Job Run
- Job Submission
- DAG Construction
- Task Scheduling
- Task Execution
- Executors and Cluster Managers
- Spark on YARN
- YARN client mode
- YARN cluster mode
- Spark on YARN
- Further Reading
- 20. HBase
- HBasics
- Backdrop
- HBasics
- Concepts
- Whirlwind Tour of the Data Model
- Regions
- Locking
- Whirlwind Tour of the Data Model
- Implementation
- HBase in operation
- Installation
- Test Drive
- Clients
- Java
- MapReduce
- REST and Thrift
- Building an Online Query Application
- Schema Design
- Loading Data
- Load distribution
- Bulk load
- Online Queries
- Station queries
- Observation queries
- HBase Versus RDBMS
- Successful Service
- HBase
- Praxis
- HDFS
- UI
- Metrics
- Counters
- Further Reading
- 21. ZooKeeper
- Installing and Running ZooKeeper
- An Example
- Group Membership in ZooKeeper
- Creating the Group
- Joining a Group
- Listing Members in a Group
- ZooKeeper command-line tools
- Deleting a Group
- The ZooKeeper Service
- Data Model
- Ephemeral znodes
- Sequence numbers
- Watches
- Data Model
- Operations
- Multiupdate
- APIs
- Watch triggers
- ACLs
- Implementation
- Consistency
- Sessions
- Time
- States
- Building Applications with ZooKeeper
- A Configuration Service
- The Resilient ZooKeeper Application
- InterruptedException
- KeeperException
- State exceptions
- Recoverable exceptions
- Unrecoverable exceptions
- A reliable configuration service
- A Lock Service
- The herd effect
- Recoverable exceptions
- Unrecoverable exceptions
- Implementation
- More Distributed Data Structures and Protocols
- BookKeeper and Hedwig
- ZooKeeper in Production
- Resilience and Performance
- Configuration
- Further Reading
- V. Case Studies
- 22. Composable Data at Cerner
- From CPUs to Semantic Integration
- Enter Apache Crunch
- Building a Complete Picture
- Integrating Healthcare Data
- Composability over Frameworks
- Moving Forward
- 22. Composable Data at Cerner
- 23. Biological Data Science: Saving Lives with Software
- The Structure of DNA
- The Genetic Code: Turning DNA Letters into Proteins
- Thinking of DNA as Source Code
- The Human Genome Project and Reference Genomes
- Sequencing and Aligning DNA
- ADAM, A Scalable Genome Analysis Platform
- Literate programming with the Avro interface description language (IDL)
- Column-oriented access with Parquet
- A simple example: k-mer counting using Spark and ADAM
- From Personalized Ads to Personalized Medicine
- Join In
- 24. Cascading
- Fields, Tuples, and Pipes
- Operations
- Taps, Schemes, and Flows
- Cascading in Practice
- Flexibility
- Hadoop and Cascading at ShareThis
- Summary
- A. Installing Apache Hadoop
- Prerequisites
- Installation
- Configuration
- Standalone Mode
- Pseudodistributed Mode
- Configuring SSH
- Formatting the HDFS filesystem
- Starting and stopping the daemons
- Creating a user directory
- Fully Distributed Mode
- B. Clouderas Distribution Including Apache Hadoop
- C. Preparing the NCDC Weather Data
- D. The Old and New Java MapReduce APIs
- Index
- Colophon
- Copyright
O'Reilly Media - inne książki
-
Software as a service (SaaS) is on the path to becoming the de facto model for building, delivering, and operating software solutions. Adopting a multi-tenant SaaS model requires builders to take on a broad range of new architecture, implementation, and operational challenges. How data is partiti...(237.15 zł najniższa cena z 30 dni)
245.65 zł
289.00 zł(-15%) -
Great engineers don't necessarily make great leaders—at least, not without a lot of work. Finding your path to becoming a strong leader is often fraught with challenges. It's not easy to figure out how to be strategic, successful, and considerate while also being firm. Whether you're on the...(118.15 zł najniższa cena z 30 dni)
126.65 zł
149.00 zł(-15%) -
Data science happens in code. The ability to write reproducible, robust, scaleable code is key to a data science project's success—and is absolutely essential for those working with production code. This practical book bridges the gap between data science and software engineering,and clearl...(211.65 zł najniższa cena z 30 dni)
220.15 zł
259.00 zł(-15%) -
With the massive adoption of microservices, operators and developers face far more complexity in their applications today. Service meshes can help you manage this problem by providing a unified control plane to secure, manage, and monitor your entire network. This practical guide shows you how th...(194.65 zł najniższa cena z 30 dni)
211.65 zł
249.00 zł(-15%) -
Get practical advice on how to leverage AI development tools for all stages of code creation, including requirements, planning, design, coding, debugging, testing, and documentation. With this book, beginners and experienced developers alike will learn how to use a wide range of tools, from gener...(177.65 zł najniższa cena z 30 dni)
164.25 zł
219.00 zł(-25%) -
Rust's popularity is growing, due in part to features like memory safety, type safety, and thread safety. But these same elements can also make learning Rust a challenge, even for experienced programmers. This practical guide helps you make the transition to writing idiomatic Rust—while als...(177.65 zł najniższa cena z 30 dni)
164.25 zł
219.00 zł(-25%) -
Advance your Power BI skills by adding AI to your repertoire at a practice level. With this practical book, business-oriented software engineers and developers will learn the terminologies, practices, and strategy necessary to successfully incorporate AI into your business intelligence estate. Je...(211.65 zł najniższa cena z 30 dni)
220.15 zł
259.00 zł(-15%) -
Microservices can be a very effective approach for delivering value to your organization and to your customers. If you get them right, microservices help you to move fast by making changes to small parts of your system hundreds of times a day. But if you get them wrong, microservices will just ma...(203.15 zł najniższa cena z 30 dni)
211.65 zł
249.00 zł(-15%) -
JavaScript gives web developers great power to create rich interactive browser experiences, and much of that power is provided by the browser itself. Modern web APIs enable web-based applications to come to life like never before, supporting actions that once required browser plug-ins. Some are s...(186.15 zł najniższa cena z 30 dni)
186.15 zł
219.00 zł(-15%) -
How will software development and operations have to change to meet the sustainability and green needs of the planet? And what does that imply for development organizations? In this eye-opening book, sustainable software advocates Anne Currie, Sarah Hsu, and Sara Bergman provide a unique overview...(160.65 zł najniższa cena z 30 dni)
169.14 zł
199.00 zł(-15%)
Dzieki opcji "Druk na żądanie" do sprzedaży wracają tytuły Grupy Helion, które cieszyły sie dużym zainteresowaniem, a których nakład został wyprzedany.
Dla naszych Czytelników wydrukowaliśmy dodatkową pulę egzemplarzy w technice druku cyfrowego.
Co powinieneś wiedzieć o usłudze "Druk na żądanie":
- usługa obejmuje tylko widoczną poniżej listę tytułów, którą na bieżąco aktualizujemy;
- cena książki może być wyższa od początkowej ceny detalicznej, co jest spowodowane kosztami druku cyfrowego (wyższymi niż koszty tradycyjnego druku offsetowego). Obowiązująca cena jest zawsze podawana na stronie WWW książki;
- zawartość książki wraz z dodatkami (płyta CD, DVD) odpowiada jej pierwotnemu wydaniu i jest w pełni komplementarna;
- usługa nie obejmuje książek w kolorze.
Masz pytanie o konkretny tytuł? Napisz do nas: sklep[at]helion.pl.
Książka, którą chcesz zamówić pochodzi z końcówki nakładu. Oznacza to, że mogą się pojawić drobne defekty (otarcia, rysy, zagięcia).
Co powinieneś wiedzieć o usłudze "Końcówka nakładu":
- usługa obejmuje tylko książki oznaczone tagiem "Końcówka nakładu";
- wady o których mowa powyżej nie podlegają reklamacji;
Masz pytanie o konkretny tytuł? Napisz do nas: sklep[at]helion.pl.
Książka drukowana
Oceny i opinie klientów: Hadoop: The Definitive Guide. Storage and Analysis at Internet Scale. 4th Edition Tom White (0) Weryfikacja opinii następuję na podstawie historii zamówień na koncie Użytkownika umieszczającego opinię. Użytkownik mógł otrzymać punkty za opublikowanie opinii uprawniające do uzyskania rabatu w ramach Programu Punktowego.