Different Data Types in Hive which are involved in creation of table.

Last updated on May 30 2022
Abhimanyu Joshi

Table of Contents

Different Data Types in Hive which are involved in creation of table.

Hive – Data Types

This blog takes you through the different data types in Hive, which are involved within the table creation. All the data types in Hive are classified into four types, given as follows:

  • Column Types
  • Literals
  • Null Values
  • Complex Types

Column Types

Column type are utilized as column data types of Hive. They are as follows:

Integral Types

Integer type data can be specified using integral data types, INT. When the data range exceeds the range of INT, you need to use BIGINT and if the data range is smaller than the INT, you use SMALLINT. TINYINT is smaller than SMALLINT.

The subsequent table depicts various INT data types:

Type Postfix Example
TINYINT Y 10Y
SMALLINT S 10S
INT 10
BIGINT L 10L

String Types

String type data types can be specified using single quotes (‘ ‘) or double quotes (” “). It contains two data types: VARCHAR and CHAR. Hive follows C-types escape characters.

The subsequent table depicts various CHAR data types:

Data Type Length
VARCHAR 1 to 65355
CHAR 255

Timestamp

It supports traditional UNIX timestamp with optional nanosecond precision. It supports java.sql.Timestamp format “YYYY-MM-DD HH:MM:SS.fffffffff” and format “yyyy-mm-dd hh:mm:ss.ffffffffff”.

Dates

DATE values are described in year/month/day format in the form {{YYYY-MM-DD}}.

Decimals

The DECIMAL type in Hive is as equivalent as Big Decimal format of Java. It is utilized for representing immutable arbitrary precision. The syntax and example is as follows:

DECIMAL(precision, scale)

decimal(10,0)

Union Types

Union is a collection of heterogeneous data types. You’ll create an instance using create union. The syntax and example is as follows:

UNIONTYPE<int, double, array<string>, struct<a:int,b:string>>

 

{0:1}

{1:2.0}

{2:[“three”,”four”]}

{3:{“a”:5,”b”:”five”}}

{2:[“six”,”seven”]}

{3:{“a”:8,”b”:”eight”}}

{0:9}

{1:10.0}

Literals

The subsequent literals are utilized in Hive:

Floating Point Types

Floating point types are nothing but numbers with decimal points. Generally, this type of data is  consists of DOUBLE data type.

Decimal Type

Decimal type data is nothing but floating point value with higher range than DOUBLE data type. The range of decimal type is approximately -10-308 to 10308.

Null Value

Missing values are represented by the special value NULL.

Complex Types

The Hive complex data types are as follows:

Arrays

Arrays in Hive are utilized the equivalent way they are utilized in Java.

Syntax: ARRAY<data_type>

Maps

Maps in Hive are similar to Java Maps.

Syntax: MAP<primitive_type, data_type>

Structs

Structs in Hive is similar to using complex data with comment.

Syntax: STRUCT<col_name : data_type [COMMENT col_comment], …>

So, this brings us to the end of blog. This Tecklearn ‘Different Data Types in Hive which are involved in creation of table’ helps you with commonly asked questions if you are looking out for a job in Big Data and Hadoop Domain.

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Getting Data into HDFS

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Installing and Configuring Hive, Impala, and Pig

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Hadoop Clients

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  • Performing Basic Administration Tasks Using Cloudera Manager

Advanced Cluster Configuration

  • Advanced Configuration Parameters
  • Configuring Hadoop Ports
  • Explicitly Including and Excluding Hosts
  • Configuring HDFS for Rack Awareness
  • Configuring HDFS High Availability

Hadoop Security

  • Why Hadoop Security Is Important
  • Hadoop’s Security System Concepts
  • What Kerberos Is and How it Works
  • Securing a Hadoop Cluster with Kerberos

Managing and Scheduling Jobs

  • Managing Running Jobs
  • Scheduling Hadoop Jobs
  • Configuring the Fair Scheduler
  • Impala Query Scheduling

Cluster Maintenance

  • Checking HDFS Status
  • Copying Data Between Clusters
  • Adding and Removing Cluster Nodes
  • Rebalancing the Cluster
  • Cluster Upgrading

Cluster Monitoring and Troubleshooting

  • General System Monitoring
  • Monitoring Hadoop Clusters
  • Common Troubleshooting Hadoop Clusters
  • Common Misconfigurations

Introduction to Pig

  • What Is Pig?
  • Pig’s Features
  • Pig Use Cases
  • Interacting with Pig

Basic Data Analysis with Pig

  • Pig Latin Syntax
  • Loading Data
  • Simple Data Types
  • Field Definitions
  • Data Output
  • Viewing the Schema
  • Filtering and Sorting Data
  • Commonly-Used Functions

Processing Complex Data with Pig

  • Storage Formats
  • Complex/Nested Data Types
  • Grouping
  • Built-In Functions for Complex Data
  • Iterating Grouped Data

Multi-Dataset Operations with Pig

  • Techniques for Combining Data Sets
  • Joining Data Sets in Pig
  • Set Operations
  • Splitting Data Sets

Pig Troubleshooting and Optimization

  • Troubleshooting Pig
  • Logging
  • Using Hadoop’s Web UI
  • Data Sampling and Debugging
  • Performance Overview
  • Understanding the Execution Plan
  • Tips for Improving the Performance of Your Pig Jobs

Introduction to Hive and Impala

  • What Is Hive?
  • What Is Impala?
  • Schema and Data Storage
  • Comparing Hive to Traditional Databases
  • Hive Use Cases

Querying with Hive and Impala

  • Databases and Tables
  • Basic Hive and Impala Query Language Syntax
  • Data Types
  • Differences Between Hive and Impala Query Syntax
  • Using Hue to Execute Queries
  • Using the Impala Shell

Data Management

  • Data Storage
  • Creating Databases and Tables
  • Loading Data
  • Altering Databases and Tables
  • Simplifying Queries with Views
  • Storing Query Results

Data Storage and Performance

  • Partitioning Tables
  • Choosing a File Format
  • Managing Metadata
  • Controlling Access to Data

Relational Data Analysis with Hive and Impala

  • Joining Datasets
  • Common Built-In Functions
  • Aggregation and Windowing

Working with Impala 

  • How Impala Executes Queries
  • Extending Impala with User-Defined Functions
  • Improving Impala Performance

Analyzing Text and Complex Data with Hive

  • Complex Values in Hive
  • Using Regular Expressions in Hive
  • Sentiment Analysis and N-Grams
  • Conclusion

Hive Optimization 

  • Understanding Query Performance
  • Controlling Job Execution Plan
  • Bucketing
  • Indexing Data

Extending Hive 

  • SerDes
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  • User-Defined Functions
  • Parameterized Queries

Importing Relational Data with Apache Sqoop

  • Sqoop Overview
  • Basic Imports and Exports
  • Limiting Results
  • Improving Sqoop’s Performance
  • Sqoop 2

Introduction to Impala and Hive

  • Introduction to Impala and Hive
  • Why Use Impala and Hive?
  • Comparing Hive to Traditional Databases
  • Hive Use Cases

Modelling and Managing Data with Impala and Hive

  • Data Storage Overview
  • Creating Databases and Tables
  • Loading Data into Tables
  • HCatalog
  • Impala Metadata Caching

Data Formats

  • Selecting a File Format
  • Hadoop Tool Support for File Formats
  • Avro Schemas
  • Using Avro with Hive and Sqoop
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  • Compression

Data Partitioning

  • Partitioning Overview
  • Partitioning in Impala and Hive

Capturing Data with Apache Flume

  • What is Apache Flume?
  • Basic Flume Architecture
  • Flume Sources
  • Flume Sinks
  • Flume Channels
  • Flume Configuration

Spark Basics

  • What is Apache Spark?
  • Using the Spark Shell
  • RDDs (Resilient Distributed Datasets)
  • Functional Programming in Spark

Working with RDDs in Spark

  • A Closer Look at RDDs
  • Key-Value Pair RDDs
  • MapReduce
  • Other Pair RDD Operations

Writing and Deploying Spark Applications

  • Spark Applications vs. Spark Shell
  • Creating the SparkContext
  • Building a Spark Application (Scala and Java)
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  • The Spark Application Web UI
  • Configuring Spark Properties
  • Logging

Parallel Programming with Spark

  • Review: Spark on a Cluster
  • RDD Partitions
  • Partitioning of File-based RDDs
  • HDFS and Data Locality
  • Executing Parallel Operations
  • Stages and Tasks

Spark Caching and Persistence

  • RDD Lineage
  • Caching Overview
  • Distributed Persistence

Common Patterns in Spark Data Processing

  • Common Spark Use Cases
  • Iterative Algorithms in Spark
  • Graph Processing and Analysis
  • Machine Learning
  • Example: k-means

Preview: Spark SQL

  • Spark SQL and the SQL Context
  • Creating DataFrames
  • Transforming and Querying DataFrames
  • Saving DataFrames
  • Comparing Spark SQL with Impala

Hadoop Testing

  • Hadoop Application Testing
  • Roles and Responsibilities of Hadoop Testing Professional
  • Framework MRUnit for Testing of MapReduce Programs
  • Unit Testing
  • Test Execution
  • Test Plan Strategy and Writing Test Cases for Testing Hadoop Application

Big Data Testing

  • BigData Testing
  • Unit Testing
  • Integration Testing
  • Functional Testing
  • Non-Functional Testing
  • Golden Data Set

System Testing

  • Building and Set up
  • Testing SetUp
  • Solary Server
  • Non-Functional Testing
  • Longevity Testing
  • Volumetric Testing

Security Testing

  • Security Testing
  • Non-Functional Testing
  • Hadoop Cluster
  • Security-Authorization RBA
  • IBM Project

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  • Query Surge Tool

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