ماآت: راهنمای نهایی فلسفه، اصول و جادوی ماآت به همراه معنویت کِمِتیک
Maat: The Ultimate Guide to Maat Philosophy, Principles, and Magick along with Kemetic Spirituality
معرفی کتاب «ماآت: راهنمای نهایی فلسفه، اصول و جادوی ماآت به همراه معنویت کِمِتیک» (با عنوان لاتین Maat: The Ultimate Guide to Maat Philosophy, Principles, and Magick along with Kemetic Spirituality) نوشتهٔ Chambers، William Andrew، Zaharia، Matei و Mari Silva، منتشرشده توسط نشر 2022 در سال 2022. این کتاب در فرمت epub، زبان انگلیسی ارائه شده است.
Bill Chambers, Matei Zaharia. Publication Information Suggested By Resource Description Page (safari, Viewed May 22, 2017). Early Release, Raw & Unedited--resource Description Page. Cover Copyright Table of Contents Preface About the Authors Who This Book Is For Conventions Used in This Book Using Code Examples O’Reilly Safari How to Contact Us Acknowledgments Part I. Gentle Overview of Big Data and Spark Chapter 1. What Is Apache Spark? Apache Spark’s Philosophy Context: The Big Data Problem History of Spark The Present and Future of Spark Running Spark Downloading Spark Locally Launching Spark’s Interactive Consoles Running Spark in the Cloud Data Used in This Book Chapter 2. A Gentle Introduction to Spark Spark’s Basic Architecture Spark Applications Spark’s Language APIs Spark’s APIs Starting Spark The SparkSession DataFrames Partitions Transformations Lazy Evaluation Actions Spark UI An End-to-End Example DataFrames and SQL Conclusion Chapter 3. A Tour of Spark’s Toolset Running Production Applications Datasets: Type-Safe Structured APIs Structured Streaming Machine Learning and Advanced Analytics Lower-Level APIs SparkR Spark’s Ecosystem and Packages Conclusion Part II. Structured APIs—DataFrames, SQL, and Datasets Chapter 4. Structured API Overview DataFrames and Datasets Schemas Overview of Structured Spark Types DataFrames Versus Datasets Columns Rows Spark Types Overview of Structured API Execution Logical Planning Physical Planning Execution Conclusion Chapter 5. Basic Structured Operations Schemas Columns and Expressions Columns Expressions Records and Rows Creating Rows DataFrame Transformations Creating DataFrames select and selectExpr Converting to Spark Types (Literals) Adding Columns Renaming Columns Reserved Characters and Keywords Case Sensitivity Removing Columns Changing a Column’s Type (cast) Filtering Rows Getting Unique Rows Random Samples Random Splits Concatenating and Appending Rows (Union) Sorting Rows Limit Repartition and Coalesce Collecting Rows to the Driver Conclusion Chapter 6. Working with Different Types of Data Where to Look for APIs Converting to Spark Types Working with Booleans Working with Numbers Working with Strings Regular Expressions Working with Dates and Timestamps Working with Nulls in Data Coalesce ifnull, nullIf, nvl, and nvl2 drop fill replace Ordering Working with Complex Types Structs Arrays split Array Length array_contains explode Maps Working with JSON User-Defined Functions Conclusion Chapter 7. Aggregations Aggregation Functions count countDistinct approx_count_distinct first and last min and max sum sumDistinct avg Variance and Standard Deviation skewness and kurtosis Covariance and Correlation Aggregating to Complex Types Grouping Grouping with Expressions Grouping with Maps Window Functions Grouping Sets Rollups Cube Grouping Metadata Pivot User-Defined Aggregation Functions Conclusion Chapter 8. Joins Join Expressions Join Types Inner Joins Outer Joins Left Outer Joins Right Outer Joins Left Semi Joins Left Anti Joins Natural Joins Cross (Cartesian) Joins Challenges When Using Joins Joins on Complex Types Handling Duplicate Column Names How Spark Performs Joins Communication Strategies Conclusion Chapter 9. Data Sources The Structure of the Data Sources API Read API Structure Basics of Reading Data Write API Structure Basics of Writing Data CSV Files CSV Options Reading CSV Files Writing CSV Files JSON Files JSON Options Reading JSON Files Writing JSON Files Parquet Files Reading Parquet Files Writing Parquet Files ORC Files Reading Orc Files Writing Orc Files SQL Databases Reading from SQL Databases Query Pushdown Writing to SQL Databases Text Files Reading Text Files Writing Text Files Advanced I/O Concepts Splittable File Types and Compression Reading Data in Parallel Writing Data in Parallel Writing Complex Types Managing File Size Conclusion Chapter 10. Spark SQL What Is SQL? Big Data and SQL: Apache Hive Big Data and SQL: Spark SQL Spark’s Relationship to Hive How to Run Spark SQL Queries Spark SQL CLI Spark’s Programmatic SQL Interface SparkSQL Thrift JDBC/ODBC Server Catalog Tables Spark-Managed Tables Creating Tables Creating External Tables Inserting into Tables Describing Table Metadata Refreshing Table Metadata Dropping Tables Caching Tables Views Creating Views Dropping Views Databases Creating Databases Setting the Database Dropping Databases Select Statements case...when...then Statements Advanced Topics Complex Types Functions Subqueries Miscellaneous Features Configurations Setting Configuration Values in SQL Conclusion Chapter 11. Datasets When to Use Datasets Creating Datasets In Java: Encoders In Scala: Case Classes Actions Transformations Filtering Mapping Joins Grouping and Aggregations Conclusion Part III. Low-Level APIs Chapter 12. Resilient Distributed Datasets (RDDs) What Are the Low-Level APIs? When to Use the Low-Level APIs? How to Use the Low-Level APIs? About RDDs Types of RDDs When to Use RDDs? Datasets and RDDs of Case Classes Creating RDDs Interoperating Between DataFrames, Datasets, and RDDs From a Local Collection From Data Sources Manipulating RDDs Transformations distinct filter map sort Random Splits Actions reduce count first max and min take Saving Files saveAsTextFile SequenceFiles Hadoop Files Caching Checkpointing Pipe RDDs to System Commands mapPartitions foreachPartition glom Conclusion Chapter 13. Advanced RDDs Key-Value Basics (Key-Value RDDs) keyBy Mapping over Values Extracting Keys and Values lookup sampleByKey Aggregations countByKey Understanding Aggregation Implementations Other Aggregation Methods CoGroups Joins Inner Join zips Controlling Partitions coalesce repartition repartitionAndSortWithinPartitions Custom Partitioning Custom Serialization Conclusion Chapter 14. Distributed Shared Variables Broadcast Variables Accumulators Basic Example Custom Accumulators Conclusion Part IV. Production Applications Chapter 15. How Spark Runs on a Cluster The Architecture of a Spark Application Execution Modes The Life Cycle of a Spark Application (Outside Spark) Client Request Launch Execution Completion The Life Cycle of a Spark Application (Inside Spark) The SparkSession Logical Instructions A Spark Job Stages Tasks Execution Details Pipelining Shuffle Persistence Conclusion Chapter 16. Developing Spark Applications Writing Spark Applications A Simple Scala-Based App Writing Python Applications Writing Java Applications Testing Spark Applications Strategic Principles Tactical Takeaways Connecting to Unit Testing Frameworks Connecting to Data Sources The Development Process Launching Applications Application Launch Examples Configuring Applications The SparkConf Application Properties Runtime Properties Execution Properties Configuring Memory Management Configuring Shuffle Behavior Environmental Variables Job Scheduling Within an Application Conclusion Chapter 17. Deploying Spark Where to Deploy Your Cluster to Run Spark Applications On-Premises Cluster Deployments Spark in the Cloud Cluster Managers Standalone Mode Spark on YARN Configuring Spark on YARN Applications Spark on Mesos Secure Deployment Configurations Cluster Networking Configurations Application Scheduling Miscellaneous Considerations Conclusion Chapter 18. Monitoring and Debugging The Monitoring Landscape What to Monitor Driver and Executor Processes Queries, Jobs, Stages, and Tasks Spark Logs The Spark UI Spark REST API Spark UI History Server Debugging and Spark First Aid Spark Jobs Not Starting Errors Before Execution Errors During Execution Slow Tasks or Stragglers Slow Aggregations Slow Joins Slow Reads and Writes Driver OutOfMemoryError or Driver Unresponsive Executor OutOfMemoryError or Executor Unresponsive Unexpected Nulls in Results No Space Left on Disk Errors Serialization Errors Conclusion Chapter 19. Performance Tuning Indirect Performance Enhancements Design Choices Object Serialization in RDDs Cluster Configurations Scheduling Data at Rest Shuffle Configurations Memory Pressure and Garbage Collection Direct Performance Enhancements Parallelism Improved Filtering Repartitioning and Coalescing User-Defined Functions (UDFs) Temporary Data Storage (Caching) Joins Aggregations Broadcast Variables Conclusion Part V. Streaming Chapter 20. Stream Processing Fundamentals What Is Stream Processing? Stream Processing Use Cases Advantages of Stream Processing Challenges of Stream Processing Stream Processing Design Points Record-at-a-Time Versus Declarative APIs Event Time Versus Processing Time Continuous Versus Micro-Batch Execution Spark’s Streaming APIs The DStream API Structured Streaming Conclusion Chapter 21. Structured Streaming Basics Structured Streaming Basics Core Concepts Transformations and Actions Input Sources Sinks Output Modes Triggers Event-Time Processing Structured Streaming in Action Transformations on Streams Selections and Filtering Aggregations Joins Input and Output Where Data Is Read and Written (Sources and Sinks) Reading from the Kafka Source Writing to the Kafka Sink How Data Is Output (Output Modes) When Data Is Output (Triggers) Streaming Dataset API Conclusion Chapter 22. Event-Time and Stateful Processing Event Time Stateful Processing Arbitrary Stateful Processing Event-Time Basics Windows on Event Time Tumbling Windows Handling Late Data with Watermarks Dropping Duplicates in a Stream Arbitrary Stateful Processing Time-Outs Output Modes mapGroupsWithState flatMapGroupsWithState Conclusion Chapter 23. Structured Streaming in Production Fault Tolerance and Checkpointing Updating Your Application Updating Your Streaming Application Code Updating Your Spark Version Sizing and Rescaling Your Application Metrics and Monitoring Query Status Recent Progress Spark UI Alerting Advanced Monitoring with the Streaming Listener Conclusion Part VI. Advanced Analytics and Machine Learning Chapter 24. Advanced Analytics and Machine Learning Overview A Short Primer on Advanced Analytics Supervised Learning Recommendation Unsupervised Learning Graph Analytics The Advanced Analytics Process Spark’s Advanced Analytics Toolkit What Is MLlib? High-Level MLlib Concepts MLlib in Action Feature Engineering with Transformers Estimators Pipelining Our Workflow Training and Evaluation Persisting and Applying Models Deployment Patterns Conclusion Chapter 25. Preprocessing and Feature Engineering Formatting Models According to Your Use Case Transformers Estimators for Preprocessing Transformer Properties High-Level Transformers RFormula SQL Transformers VectorAssembler Working with Continuous Features Bucketing Scaling and Normalization StandardScaler Working with Categorical Features StringIndexer Converting Indexed Values Back to Text Indexing in Vectors One-Hot Encoding Text Data Transformers Tokenizing Text Removing Common Words Creating Word Combinations Converting Words into Numerical Representations Word2Vec Feature Manipulation PCA Interaction Polynomial Expansion Feature Selection ChiSqSelector Advanced Topics Persisting Transformers Writing a Custom Transformer Conclusion Chapter 26. Classification Use Cases Types of Classification Binary Classification Multiclass Classification Multilabel Classification Classification Models in MLlib Model Scalability Logistic Regression Model Hyperparameters Training Parameters Prediction Parameters Example Model Summary Decision Trees Model Hyperparameters Training Parameters Prediction Parameters Random Forest and Gradient-Boosted Trees Model Hyperparameters Training Parameters Prediction Parameters Naive Bayes Model Hyperparameters Training Parameters Prediction Parameters Evaluators for Classification and Automating Model Tuning Detailed Evaluation Metrics One-vs-Rest Classifier Multilayer Perceptron Conclusion Chapter 27. Regression Use Cases Regression Models in MLlib Model Scalability Linear Regression Model Hyperparameters Training Parameters Example Training Summary Generalized Linear Regression Model Hyperparameters Training Parameters Prediction Parameters Example Training Summary Decision Trees Model Hyperparameters Training Parameters Example Random Forests and Gradient-Boosted Trees Model Hyperparameters Training Parameters Example Advanced Methods Survival Regression (Accelerated Failure Time) Isotonic Regression Evaluators and Automating Model Tuning Metrics Conclusion Chapter 28. Recommendation Use Cases Collaborative Filtering with Alternating Least Squares Model Hyperparameters Training Parameters Prediction Parameters Example Evaluators for Recommendation Metrics Regression Metrics Ranking Metrics Frequent Pattern Mining Conclusion Chapter 29. Unsupervised Learning Use Cases Model Scalability k-means Model Hyperparameters Training Parameters Example k-means Metrics Summary Bisecting k-means Model Hyperparameters Training Parameters Example Bisecting k-means Summary Gaussian Mixture Models Model Hyperparameters Training Parameters Example Gaussian Mixture Model Summary Latent Dirichlet Allocation Model Hyperparameters Training Parameters Prediction Parameters Example Conclusion Chapter 30. Graph Analytics Building a Graph Querying the Graph Subgraphs Motif Finding Graph Algorithms PageRank In-Degree and Out-Degree Metrics Breadth-First Search Connected Components Strongly Connected Components Advanced Tasks Conclusion Chapter 31. Deep Learning What Is Deep Learning? Ways of Using Deep Learning in Spark Deep Learning Libraries MLlib Neural Network Support TensorFrames BigDL TensorFlowOnSpark DeepLearning4J Deep Learning Pipelines A Simple Example with Deep Learning Pipelines Setup Images and DataFrames Transfer Learning Applying Popular Models Conclusion Part VII. Ecosystem Chapter 32. Language Specifics: Python (PySpark) and R (SparkR and sparklyr) PySpark Fundamental PySpark Differences Pandas Integration R on Spark SparkR sparklyr Conclusion Chapter 33. Ecosystem and Community Spark Packages An Abridged List of Popular Packages Using Spark Packages External Packages Community Spark Summit Local Meetups Conclusion Index About the Authors Colophon Learn how to use, deploy, and maintain Apache Spark with this comprehensive guide, written by the creators of the open-source cluster-computing framework. With an emphasis on improvements and new features in Spark 2.0, authors Bill Chambers and Matei Zaharia break down Spark topics into distinct sections, each with unique goals. You'll explore the basic operations and common functions of Spark's structured APIs, as well as Structured Streaming, a new high-level API for building end-to-end streaming applications. Developers and system administrators will learn the fundamentals of monitoring, tuning, and debugging Spark, and explore machine learning techniques and scenarios for employing MLlib, Spark's scalable machine-learning library. Get a gentle overview of big data and Spark. Learn about DataFrames, SQL, and Datasets--Spark's core APIs--through worked examples. Dive into Spark's low-level APIs, RDDs, and execution of SQL and DataFrames. Understand how Spark runs on a cluster. Debug, monitor, and tune Spark clusters and applications. Learn the power of Structured Streaming, Spark's stream-processing engine. Learn how you can apply MLlib to a variety of problems, including classification or recommendation.--Provided by publisher Learn how to use, deploy, and maintain Apache Spark with this comprehensive guide, written by the creators of the open-source cluster-computing framework. With an emphasis on improvements and new features in Spark 2.0, authors Bill Chambers and Matei Zaharia break down Spark topics into distinct sections, each with unique goals. Youâ??ll explore the basic operations and common functions of Sparkâ??s structured APIs, as well as Structured Streaming, a new high-level API for building end-to-end streaming applications. Developers and system administrators will learn the fundamentals of monitoring, tuning, and debugging Spark, and explore machine learning techniques and scenarios for employing MLlib, Sparkâ??s scalable machine-learning library. Get a gentle overview of big data and Spark Learn about DataFrames, SQL, and Datasetsâ??Sparkâ??s core APIsâ??through worked examples Dive into Sparkâ??s low-level APIs, RDDs, and execution of SQL and DataFrames Understand how Spark runs on a cluster Debug, monitor, and tune Spark clusters and applications Learn the power of Structured Streaming, Sparkâ??s stream-processing engine Learn how you can apply MLlib to a variety of problems, including classification or recommendation
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