SlideShare a Scribd company logo
1 of 21
Download to read offline
Presented By:
Kundan Kumar
Software Consultant
An introduction to
Apache Flink: 4G of
Big Data
Lack of etiquette and manners is a huge turn off.
KnolX Etiquettes
Punctuality
Respect Knolx session timings, you
are requested not to join sessions
after a 5 minutes threshold post
the session start time.
Feedback
Make sure to submit a constructive
feedback for all sessions as it is
very helpful for the presenter.
Mute
Be on mute until you have
questions or concerns.
Avoid Disturbance
Avoid unwanted chit chat during
the session.
Agenda
01 Big Data evolution
02
Introduction to Flink
03
Features of Flink
Architecture of Flink
Anatomy of a Flink program
Demo
04
05
06
Big Data Evolution
Problems with Big Data:
● Storing huge and exponentially growing datasets.
● Processing of huge data datasets having complex structure.
● 3v’s of Big Data - Volume, Variety, Velocity
Continue..
● At early 2000, Big Data era started with multiple frameworks focusing on
specifying Big Data problem.
Continue..
● A unified platform that alone can handle various Big Data problem:
➢ Batch processing
➢ Stream processing
➢ Graph processing
➢ Iterative processing
● A unified platform must have following characteristics to solve Big
Data Problem:
➢ Distributed/ parallel computation
➢ Fault tolerance
➢ Ease of use (developer friendly API’s)
➢ Powerful predefined operators/functions(Like Join, filter)
➢ Fast
Apache Spark (3G Big Data Framework)
● Spark is a lightning-fast cluster computing engine that is 100 times faster than
Hadoop in running applications in memory
● Apache Spark is best known for its in-memory computing capabilities that
deliver high-speed processing.
➢ Problem
● Process data streams in micro batches and not in real time.
● High throughput but medium latency in some use cases.
Introduction to Flink
● Apache Flink is a Big Data framework and distributed processing engine for
stateful computations over unbounded and bounded data streams.
● Flink is based on the streaming first principle which means it is real streaming
processing engine Flink considers batch processing as a special case of
streaming
● Flink has been designed to run in all common cluster environments, perform
computations at in-memory speed and at any scale.
Source
Transformations
Sink
➢ A Flink application may consume real-time data from streaming sources such as
message queues or distributed logs, like Apache Kafka or Kinesis.
➢ Flink can also consume bounded, historic data from a variety of data sources.
➢ The streams of results being produced by a Flink application can be sent to a wide
variety of systems that can be connected as sinks
➢ Programs in Flink are inherently parallel and distributed.
➢ During execution, a stream has one or more stream partitions, and each
operator has one or more operator subtasks.
➢ Flink facilitate stateful operations.
➢ Current handling event can depend on the accumulated effect of all the events
that came before it.
➢ The set of parallel instances of a stateful operator is effectively a sharded
key-value store. Each parallel instance is responsible for handling events for a
specific group of keys, and the state for those keys is kept locally.
Flink Architecture
➢ Flink 1.X's architecture consists of various components such as deploy,
core processing, and APIs.
➢ Flink has a layered architecture and each component is a part of a
specific layer.
➢ Each layer is built on top of the others for clear abstraction.
Flinks Distributed Execution
➢ Flink is based on master slave architecture.
➢ Various processes take part in the Flink’s program execution, namely
Job Manager, Task Manager, and Job Client.
Flink Task Manager
Flink Features
➢ High performance
➢ Exactly-once stateful computation
➢ Fault tolerance
➢ Memory management
➢ Optimizer
➢ Unified platform for stream and batch
➢ Rich Libraries
Basic Anatomy of a Flink Program
DEMO
Q/A
References
1.
2.
3.
Thank You !

More Related Content

What's hot

Building a fully managed stream processing platform on Flink at scale for Lin...
Building a fully managed stream processing platform on Flink at scale for Lin...Building a fully managed stream processing platform on Flink at scale for Lin...
Building a fully managed stream processing platform on Flink at scale for Lin...Flink Forward
 
Advanced Streaming Analytics with Apache Flink and Apache Kafka, Stephan Ewen
Advanced Streaming Analytics with Apache Flink and Apache Kafka, Stephan EwenAdvanced Streaming Analytics with Apache Flink and Apache Kafka, Stephan Ewen
Advanced Streaming Analytics with Apache Flink and Apache Kafka, Stephan Ewenconfluent
 
Batch Processing at Scale with Flink & Iceberg
Batch Processing at Scale with Flink & IcebergBatch Processing at Scale with Flink & Iceberg
Batch Processing at Scale with Flink & IcebergFlink Forward
 
Apache Flink and what it is used for
Apache Flink and what it is used forApache Flink and what it is used for
Apache Flink and what it is used forAljoscha Krettek
 
Changelog Stream Processing with Apache Flink
Changelog Stream Processing with Apache FlinkChangelog Stream Processing with Apache Flink
Changelog Stream Processing with Apache FlinkFlink Forward
 
Exactly-Once Financial Data Processing at Scale with Flink and Pinot
Exactly-Once Financial Data Processing at Scale with Flink and PinotExactly-Once Financial Data Processing at Scale with Flink and Pinot
Exactly-Once Financial Data Processing at Scale with Flink and PinotFlink Forward
 
Stream Processing using Apache Flink in Zalando's World of Microservices - Re...
Stream Processing using Apache Flink in Zalando's World of Microservices - Re...Stream Processing using Apache Flink in Zalando's World of Microservices - Re...
Stream Processing using Apache Flink in Zalando's World of Microservices - Re...Zalando Technology
 
CDC patterns in Apache Kafka®
CDC patterns in Apache Kafka®CDC patterns in Apache Kafka®
CDC patterns in Apache Kafka®confluent
 
Stephan Ewen - Experiences running Flink at Very Large Scale
Stephan Ewen -  Experiences running Flink at Very Large ScaleStephan Ewen -  Experiences running Flink at Very Large Scale
Stephan Ewen - Experiences running Flink at Very Large ScaleVerverica
 
How to build a streaming Lakehouse with Flink, Kafka, and Hudi
How to build a streaming Lakehouse with Flink, Kafka, and HudiHow to build a streaming Lakehouse with Flink, Kafka, and Hudi
How to build a streaming Lakehouse with Flink, Kafka, and HudiFlink Forward
 
Using the New Apache Flink Kubernetes Operator in a Production Deployment
Using the New Apache Flink Kubernetes Operator in a Production DeploymentUsing the New Apache Flink Kubernetes Operator in a Production Deployment
Using the New Apache Flink Kubernetes Operator in a Production DeploymentFlink Forward
 
Bootstrapping state in Apache Flink
Bootstrapping state in Apache FlinkBootstrapping state in Apache Flink
Bootstrapping state in Apache FlinkDataWorks Summit
 
Apache Kafka’s Transactions in the Wild! Developing an exactly-once KafkaSink...
Apache Kafka’s Transactions in the Wild! Developing an exactly-once KafkaSink...Apache Kafka’s Transactions in the Wild! Developing an exactly-once KafkaSink...
Apache Kafka’s Transactions in the Wild! Developing an exactly-once KafkaSink...HostedbyConfluent
 
Building an open data platform with apache iceberg
Building an open data platform with apache icebergBuilding an open data platform with apache iceberg
Building an open data platform with apache icebergAlluxio, Inc.
 
Flexible and Real-Time Stream Processing with Apache Flink
Flexible and Real-Time Stream Processing with Apache FlinkFlexible and Real-Time Stream Processing with Apache Flink
Flexible and Real-Time Stream Processing with Apache FlinkDataWorks Summit
 
Benefits of Stream Processing and Apache Kafka Use Cases
Benefits of Stream Processing and Apache Kafka Use CasesBenefits of Stream Processing and Apache Kafka Use Cases
Benefits of Stream Processing and Apache Kafka Use Casesconfluent
 
Kafka Streams State Stores Being Persistent
Kafka Streams State Stores Being PersistentKafka Streams State Stores Being Persistent
Kafka Streams State Stores Being Persistentconfluent
 
Flink powered stream processing platform at Pinterest
Flink powered stream processing platform at PinterestFlink powered stream processing platform at Pinterest
Flink powered stream processing platform at PinterestFlink Forward
 

What's hot (20)

Unified Stream and Batch Processing with Apache Flink
Unified Stream and Batch Processing with Apache FlinkUnified Stream and Batch Processing with Apache Flink
Unified Stream and Batch Processing with Apache Flink
 
Building a fully managed stream processing platform on Flink at scale for Lin...
Building a fully managed stream processing platform on Flink at scale for Lin...Building a fully managed stream processing platform on Flink at scale for Lin...
Building a fully managed stream processing platform on Flink at scale for Lin...
 
Advanced Streaming Analytics with Apache Flink and Apache Kafka, Stephan Ewen
Advanced Streaming Analytics with Apache Flink and Apache Kafka, Stephan EwenAdvanced Streaming Analytics with Apache Flink and Apache Kafka, Stephan Ewen
Advanced Streaming Analytics with Apache Flink and Apache Kafka, Stephan Ewen
 
Apache flink
Apache flinkApache flink
Apache flink
 
Batch Processing at Scale with Flink & Iceberg
Batch Processing at Scale with Flink & IcebergBatch Processing at Scale with Flink & Iceberg
Batch Processing at Scale with Flink & Iceberg
 
Apache Flink and what it is used for
Apache Flink and what it is used forApache Flink and what it is used for
Apache Flink and what it is used for
 
Changelog Stream Processing with Apache Flink
Changelog Stream Processing with Apache FlinkChangelog Stream Processing with Apache Flink
Changelog Stream Processing with Apache Flink
 
Exactly-Once Financial Data Processing at Scale with Flink and Pinot
Exactly-Once Financial Data Processing at Scale with Flink and PinotExactly-Once Financial Data Processing at Scale with Flink and Pinot
Exactly-Once Financial Data Processing at Scale with Flink and Pinot
 
Stream Processing using Apache Flink in Zalando's World of Microservices - Re...
Stream Processing using Apache Flink in Zalando's World of Microservices - Re...Stream Processing using Apache Flink in Zalando's World of Microservices - Re...
Stream Processing using Apache Flink in Zalando's World of Microservices - Re...
 
CDC patterns in Apache Kafka®
CDC patterns in Apache Kafka®CDC patterns in Apache Kafka®
CDC patterns in Apache Kafka®
 
Stephan Ewen - Experiences running Flink at Very Large Scale
Stephan Ewen -  Experiences running Flink at Very Large ScaleStephan Ewen -  Experiences running Flink at Very Large Scale
Stephan Ewen - Experiences running Flink at Very Large Scale
 
How to build a streaming Lakehouse with Flink, Kafka, and Hudi
How to build a streaming Lakehouse with Flink, Kafka, and HudiHow to build a streaming Lakehouse with Flink, Kafka, and Hudi
How to build a streaming Lakehouse with Flink, Kafka, and Hudi
 
Using the New Apache Flink Kubernetes Operator in a Production Deployment
Using the New Apache Flink Kubernetes Operator in a Production DeploymentUsing the New Apache Flink Kubernetes Operator in a Production Deployment
Using the New Apache Flink Kubernetes Operator in a Production Deployment
 
Bootstrapping state in Apache Flink
Bootstrapping state in Apache FlinkBootstrapping state in Apache Flink
Bootstrapping state in Apache Flink
 
Apache Kafka’s Transactions in the Wild! Developing an exactly-once KafkaSink...
Apache Kafka’s Transactions in the Wild! Developing an exactly-once KafkaSink...Apache Kafka’s Transactions in the Wild! Developing an exactly-once KafkaSink...
Apache Kafka’s Transactions in the Wild! Developing an exactly-once KafkaSink...
 
Building an open data platform with apache iceberg
Building an open data platform with apache icebergBuilding an open data platform with apache iceberg
Building an open data platform with apache iceberg
 
Flexible and Real-Time Stream Processing with Apache Flink
Flexible and Real-Time Stream Processing with Apache FlinkFlexible and Real-Time Stream Processing with Apache Flink
Flexible and Real-Time Stream Processing with Apache Flink
 
Benefits of Stream Processing and Apache Kafka Use Cases
Benefits of Stream Processing and Apache Kafka Use CasesBenefits of Stream Processing and Apache Kafka Use Cases
Benefits of Stream Processing and Apache Kafka Use Cases
 
Kafka Streams State Stores Being Persistent
Kafka Streams State Stores Being PersistentKafka Streams State Stores Being Persistent
Kafka Streams State Stores Being Persistent
 
Flink powered stream processing platform at Pinterest
Flink powered stream processing platform at PinterestFlink powered stream processing platform at Pinterest
Flink powered stream processing platform at Pinterest
 

Similar to Introduction To Flink

Why Serverless Flink Matters - Blazing Fast Stream Processing Made Scalable
Why Serverless Flink Matters - Blazing Fast Stream Processing Made ScalableWhy Serverless Flink Matters - Blazing Fast Stream Processing Made Scalable
Why Serverless Flink Matters - Blazing Fast Stream Processing Made ScalableHostedbyConfluent
 
The FN Project by Maximilian Jerg
The FN Project by Maximilian JergThe FN Project by Maximilian Jerg
The FN Project by Maximilian JergHarald Schmaldienst
 
Kostas Tzoumas - Apache Flink®: State of the Union and What's Next
Kostas Tzoumas - Apache Flink®: State of the Union and What's NextKostas Tzoumas - Apache Flink®: State of the Union and What's Next
Kostas Tzoumas - Apache Flink®: State of the Union and What's NextVerverica
 
Flink forward-2017-netflix keystones-paas
Flink forward-2017-netflix keystones-paasFlink forward-2017-netflix keystones-paas
Flink forward-2017-netflix keystones-paasMonal Daxini
 
How Tencent Applies Apache Pulsar to Apache InLong —— A Streaming Data Integr...
How Tencent Applies Apache Pulsar to Apache InLong —— A Streaming Data Integr...How Tencent Applies Apache Pulsar to Apache InLong —— A Streaming Data Integr...
How Tencent Applies Apache Pulsar to Apache InLong —— A Streaming Data Integr...StreamNative
 
O365Con19 - Things I've Learned While Building a Product on SharePoint Modern...
O365Con19 - Things I've Learned While Building a Product on SharePoint Modern...O365Con19 - Things I've Learned While Building a Product on SharePoint Modern...
O365Con19 - Things I've Learned While Building a Product on SharePoint Modern...NCCOMMS
 
Robust stream processing with Apache Flink
Robust stream processing with Apache FlinkRobust stream processing with Apache Flink
Robust stream processing with Apache FlinkAljoscha Krettek
 
Strimzi - Where Apache Kafka meets OpenShift - OpenShift Spain MeetUp
Strimzi - Where Apache Kafka meets OpenShift - OpenShift Spain MeetUpStrimzi - Where Apache Kafka meets OpenShift - OpenShift Spain MeetUp
Strimzi - Where Apache Kafka meets OpenShift - OpenShift Spain MeetUpJosé Román Martín Gil
 
Apache Flink Training Workshop @ HadoopCon2016 - #1 System Overview
Apache Flink Training Workshop @ HadoopCon2016 - #1 System OverviewApache Flink Training Workshop @ HadoopCon2016 - #1 System Overview
Apache Flink Training Workshop @ HadoopCon2016 - #1 System OverviewApache Flink Taiwan User Group
 
Towards Apache Flink 2.0 - Unified Data Processing and Beyond, Bowen Li
Towards Apache Flink 2.0 - Unified Data Processing and Beyond, Bowen LiTowards Apache Flink 2.0 - Unified Data Processing and Beyond, Bowen Li
Towards Apache Flink 2.0 - Unified Data Processing and Beyond, Bowen LiBowen Li
 
Apache Fink 1.0: A New Era for Real-World Streaming Analytics
Apache Fink 1.0: A New Era  for Real-World Streaming AnalyticsApache Fink 1.0: A New Era  for Real-World Streaming Analytics
Apache Fink 1.0: A New Era for Real-World Streaming AnalyticsSlim Baltagi
 
Apache Flink Online Training
Apache Flink Online TrainingApache Flink Online Training
Apache Flink Online TrainingLearntek1
 
Near real-time anomaly detection at Lyft
Near real-time anomaly detection at LyftNear real-time anomaly detection at Lyft
Near real-time anomaly detection at Lyftmarkgrover
 
Getting_Started_with_Salesforce_Flow_for_Developers_(In-person_event)_.pptx
Getting_Started_with_Salesforce_Flow_for_Developers_(In-person_event)_.pptxGetting_Started_with_Salesforce_Flow_for_Developers_(In-person_event)_.pptx
Getting_Started_with_Salesforce_Flow_for_Developers_(In-person_event)_.pptxShams Pirzada
 
Workshop híbrido: Stream Processing con Flink
Workshop híbrido: Stream Processing con FlinkWorkshop híbrido: Stream Processing con Flink
Workshop híbrido: Stream Processing con Flinkconfluent
 

Similar to Introduction To Flink (20)

Apache Flink
Apache FlinkApache Flink
Apache Flink
 
Why Serverless Flink Matters - Blazing Fast Stream Processing Made Scalable
Why Serverless Flink Matters - Blazing Fast Stream Processing Made ScalableWhy Serverless Flink Matters - Blazing Fast Stream Processing Made Scalable
Why Serverless Flink Matters - Blazing Fast Stream Processing Made Scalable
 
The FN Project by Maximilian Jerg
The FN Project by Maximilian JergThe FN Project by Maximilian Jerg
The FN Project by Maximilian Jerg
 
Kostas Tzoumas - Apache Flink®: State of the Union and What's Next
Kostas Tzoumas - Apache Flink®: State of the Union and What's NextKostas Tzoumas - Apache Flink®: State of the Union and What's Next
Kostas Tzoumas - Apache Flink®: State of the Union and What's Next
 
Flink forward-2017-netflix keystones-paas
Flink forward-2017-netflix keystones-paasFlink forward-2017-netflix keystones-paas
Flink forward-2017-netflix keystones-paas
 
How Tencent Applies Apache Pulsar to Apache InLong —— A Streaming Data Integr...
How Tencent Applies Apache Pulsar to Apache InLong —— A Streaming Data Integr...How Tencent Applies Apache Pulsar to Apache InLong —— A Streaming Data Integr...
How Tencent Applies Apache Pulsar to Apache InLong —— A Streaming Data Integr...
 
O365Con19 - Things I've Learned While Building a Product on SharePoint Modern...
O365Con19 - Things I've Learned While Building a Product on SharePoint Modern...O365Con19 - Things I've Learned While Building a Product on SharePoint Modern...
O365Con19 - Things I've Learned While Building a Product on SharePoint Modern...
 
Robust stream processing with Apache Flink
Robust stream processing with Apache FlinkRobust stream processing with Apache Flink
Robust stream processing with Apache Flink
 
Strimzi - Where Apache Kafka meets OpenShift - OpenShift Spain MeetUp
Strimzi - Where Apache Kafka meets OpenShift - OpenShift Spain MeetUpStrimzi - Where Apache Kafka meets OpenShift - OpenShift Spain MeetUp
Strimzi - Where Apache Kafka meets OpenShift - OpenShift Spain MeetUp
 
Apache flink
Apache flinkApache flink
Apache flink
 
Apache flink
Apache flinkApache flink
Apache flink
 
Apache Flink Training Workshop @ HadoopCon2016 - #1 System Overview
Apache Flink Training Workshop @ HadoopCon2016 - #1 System OverviewApache Flink Training Workshop @ HadoopCon2016 - #1 System Overview
Apache Flink Training Workshop @ HadoopCon2016 - #1 System Overview
 
Towards Apache Flink 2.0 - Unified Data Processing and Beyond, Bowen Li
Towards Apache Flink 2.0 - Unified Data Processing and Beyond, Bowen LiTowards Apache Flink 2.0 - Unified Data Processing and Beyond, Bowen Li
Towards Apache Flink 2.0 - Unified Data Processing and Beyond, Bowen Li
 
Apache Fink 1.0: A New Era for Real-World Streaming Analytics
Apache Fink 1.0: A New Era  for Real-World Streaming AnalyticsApache Fink 1.0: A New Era  for Real-World Streaming Analytics
Apache Fink 1.0: A New Era for Real-World Streaming Analytics
 
Apache Flink Online Training
Apache Flink Online TrainingApache Flink Online Training
Apache Flink Online Training
 
Serverless design with Fn project
Serverless design with Fn projectServerless design with Fn project
Serverless design with Fn project
 
Near real-time anomaly detection at Lyft
Near real-time anomaly detection at LyftNear real-time anomaly detection at Lyft
Near real-time anomaly detection at Lyft
 
Getting_Started_with_Salesforce_Flow_for_Developers_(In-person_event)_.pptx
Getting_Started_with_Salesforce_Flow_for_Developers_(In-person_event)_.pptxGetting_Started_with_Salesforce_Flow_for_Developers_(In-person_event)_.pptx
Getting_Started_with_Salesforce_Flow_for_Developers_(In-person_event)_.pptx
 
Workshop híbrido: Stream Processing con Flink
Workshop híbrido: Stream Processing con FlinkWorkshop híbrido: Stream Processing con Flink
Workshop híbrido: Stream Processing con Flink
 
Apache flink
Apache flinkApache flink
Apache flink
 

More from Knoldus Inc.

Robusta -Tool Presentation (DevOps).pptx
Robusta -Tool Presentation (DevOps).pptxRobusta -Tool Presentation (DevOps).pptx
Robusta -Tool Presentation (DevOps).pptxKnoldus Inc.
 
Optimizing Kubernetes using GOLDILOCKS.pptx
Optimizing Kubernetes using GOLDILOCKS.pptxOptimizing Kubernetes using GOLDILOCKS.pptx
Optimizing Kubernetes using GOLDILOCKS.pptxKnoldus Inc.
 
Azure Function App Exception Handling.pptx
Azure Function App Exception Handling.pptxAzure Function App Exception Handling.pptx
Azure Function App Exception Handling.pptxKnoldus Inc.
 
CQRS Design Pattern Presentation (Java).pptx
CQRS Design Pattern Presentation (Java).pptxCQRS Design Pattern Presentation (Java).pptx
CQRS Design Pattern Presentation (Java).pptxKnoldus Inc.
 
ETL Observability: Azure to Snowflake Presentation
ETL Observability: Azure to Snowflake PresentationETL Observability: Azure to Snowflake Presentation
ETL Observability: Azure to Snowflake PresentationKnoldus Inc.
 
Scripting with K6 - Beyond the Basics Presentation
Scripting with K6 - Beyond the Basics PresentationScripting with K6 - Beyond the Basics Presentation
Scripting with K6 - Beyond the Basics PresentationKnoldus Inc.
 
Getting started with dotnet core Web APIs
Getting started with dotnet core Web APIsGetting started with dotnet core Web APIs
Getting started with dotnet core Web APIsKnoldus Inc.
 
Introduction To Rust part II Presentation
Introduction To Rust part II PresentationIntroduction To Rust part II Presentation
Introduction To Rust part II PresentationKnoldus Inc.
 
Data governance with Unity Catalog Presentation
Data governance with Unity Catalog PresentationData governance with Unity Catalog Presentation
Data governance with Unity Catalog PresentationKnoldus Inc.
 
Configuring Workflows & Validators in JIRA
Configuring Workflows & Validators in JIRAConfiguring Workflows & Validators in JIRA
Configuring Workflows & Validators in JIRAKnoldus Inc.
 
Advanced Python (with dependency injection and hydra configuration packages)
Advanced Python (with dependency injection and hydra configuration packages)Advanced Python (with dependency injection and hydra configuration packages)
Advanced Python (with dependency injection and hydra configuration packages)Knoldus Inc.
 
Azure Databricks (For Data Analytics).pptx
Azure Databricks (For Data Analytics).pptxAzure Databricks (For Data Analytics).pptx
Azure Databricks (For Data Analytics).pptxKnoldus Inc.
 
The Power of Dependency Injection with Dagger 2 and Kotlin
The Power of Dependency Injection with Dagger 2 and KotlinThe Power of Dependency Injection with Dagger 2 and Kotlin
The Power of Dependency Injection with Dagger 2 and KotlinKnoldus Inc.
 
Data Engineering with Databricks Presentation
Data Engineering with Databricks PresentationData Engineering with Databricks Presentation
Data Engineering with Databricks PresentationKnoldus Inc.
 
Databricks for MLOps Presentation (AI/ML)
Databricks for MLOps Presentation (AI/ML)Databricks for MLOps Presentation (AI/ML)
Databricks for MLOps Presentation (AI/ML)Knoldus Inc.
 
NoOps - (Automate Ops) Presentation.pptx
NoOps - (Automate Ops) Presentation.pptxNoOps - (Automate Ops) Presentation.pptx
NoOps - (Automate Ops) Presentation.pptxKnoldus Inc.
 
Mastering Distributed Performance Testing
Mastering Distributed Performance TestingMastering Distributed Performance Testing
Mastering Distributed Performance TestingKnoldus Inc.
 
MLops on Vertex AI Presentation (AI/ML).pptx
MLops on Vertex AI Presentation (AI/ML).pptxMLops on Vertex AI Presentation (AI/ML).pptx
MLops on Vertex AI Presentation (AI/ML).pptxKnoldus Inc.
 
Introduction to Ansible Tower Presentation
Introduction to Ansible Tower PresentationIntroduction to Ansible Tower Presentation
Introduction to Ansible Tower PresentationKnoldus Inc.
 
CQRS with dot net services presentation.
CQRS with dot net services presentation.CQRS with dot net services presentation.
CQRS with dot net services presentation.Knoldus Inc.
 

More from Knoldus Inc. (20)

Robusta -Tool Presentation (DevOps).pptx
Robusta -Tool Presentation (DevOps).pptxRobusta -Tool Presentation (DevOps).pptx
Robusta -Tool Presentation (DevOps).pptx
 
Optimizing Kubernetes using GOLDILOCKS.pptx
Optimizing Kubernetes using GOLDILOCKS.pptxOptimizing Kubernetes using GOLDILOCKS.pptx
Optimizing Kubernetes using GOLDILOCKS.pptx
 
Azure Function App Exception Handling.pptx
Azure Function App Exception Handling.pptxAzure Function App Exception Handling.pptx
Azure Function App Exception Handling.pptx
 
CQRS Design Pattern Presentation (Java).pptx
CQRS Design Pattern Presentation (Java).pptxCQRS Design Pattern Presentation (Java).pptx
CQRS Design Pattern Presentation (Java).pptx
 
ETL Observability: Azure to Snowflake Presentation
ETL Observability: Azure to Snowflake PresentationETL Observability: Azure to Snowflake Presentation
ETL Observability: Azure to Snowflake Presentation
 
Scripting with K6 - Beyond the Basics Presentation
Scripting with K6 - Beyond the Basics PresentationScripting with K6 - Beyond the Basics Presentation
Scripting with K6 - Beyond the Basics Presentation
 
Getting started with dotnet core Web APIs
Getting started with dotnet core Web APIsGetting started with dotnet core Web APIs
Getting started with dotnet core Web APIs
 
Introduction To Rust part II Presentation
Introduction To Rust part II PresentationIntroduction To Rust part II Presentation
Introduction To Rust part II Presentation
 
Data governance with Unity Catalog Presentation
Data governance with Unity Catalog PresentationData governance with Unity Catalog Presentation
Data governance with Unity Catalog Presentation
 
Configuring Workflows & Validators in JIRA
Configuring Workflows & Validators in JIRAConfiguring Workflows & Validators in JIRA
Configuring Workflows & Validators in JIRA
 
Advanced Python (with dependency injection and hydra configuration packages)
Advanced Python (with dependency injection and hydra configuration packages)Advanced Python (with dependency injection and hydra configuration packages)
Advanced Python (with dependency injection and hydra configuration packages)
 
Azure Databricks (For Data Analytics).pptx
Azure Databricks (For Data Analytics).pptxAzure Databricks (For Data Analytics).pptx
Azure Databricks (For Data Analytics).pptx
 
The Power of Dependency Injection with Dagger 2 and Kotlin
The Power of Dependency Injection with Dagger 2 and KotlinThe Power of Dependency Injection with Dagger 2 and Kotlin
The Power of Dependency Injection with Dagger 2 and Kotlin
 
Data Engineering with Databricks Presentation
Data Engineering with Databricks PresentationData Engineering with Databricks Presentation
Data Engineering with Databricks Presentation
 
Databricks for MLOps Presentation (AI/ML)
Databricks for MLOps Presentation (AI/ML)Databricks for MLOps Presentation (AI/ML)
Databricks for MLOps Presentation (AI/ML)
 
NoOps - (Automate Ops) Presentation.pptx
NoOps - (Automate Ops) Presentation.pptxNoOps - (Automate Ops) Presentation.pptx
NoOps - (Automate Ops) Presentation.pptx
 
Mastering Distributed Performance Testing
Mastering Distributed Performance TestingMastering Distributed Performance Testing
Mastering Distributed Performance Testing
 
MLops on Vertex AI Presentation (AI/ML).pptx
MLops on Vertex AI Presentation (AI/ML).pptxMLops on Vertex AI Presentation (AI/ML).pptx
MLops on Vertex AI Presentation (AI/ML).pptx
 
Introduction to Ansible Tower Presentation
Introduction to Ansible Tower PresentationIntroduction to Ansible Tower Presentation
Introduction to Ansible Tower Presentation
 
CQRS with dot net services presentation.
CQRS with dot net services presentation.CQRS with dot net services presentation.
CQRS with dot net services presentation.
 

Recently uploaded

DevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platformsDevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platformsSergiu Bodiu
 
The State of Passkeys with FIDO Alliance.pptx
The State of Passkeys with FIDO Alliance.pptxThe State of Passkeys with FIDO Alliance.pptx
The State of Passkeys with FIDO Alliance.pptxLoriGlavin3
 
Sample pptx for embedding into website for demo
Sample pptx for embedding into website for demoSample pptx for embedding into website for demo
Sample pptx for embedding into website for demoHarshalMandlekar2
 
Time Series Foundation Models - current state and future directions
Time Series Foundation Models - current state and future directionsTime Series Foundation Models - current state and future directions
Time Series Foundation Models - current state and future directionsNathaniel Shimoni
 
Transcript: New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024Transcript: New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024BookNet Canada
 
The Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptx
The Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptxThe Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptx
The Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptxLoriGlavin3
 
A Deep Dive on Passkeys: FIDO Paris Seminar.pptx
A Deep Dive on Passkeys: FIDO Paris Seminar.pptxA Deep Dive on Passkeys: FIDO Paris Seminar.pptx
A Deep Dive on Passkeys: FIDO Paris Seminar.pptxLoriGlavin3
 
The Ultimate Guide to Choosing WordPress Pros and Cons
The Ultimate Guide to Choosing WordPress Pros and ConsThe Ultimate Guide to Choosing WordPress Pros and Cons
The Ultimate Guide to Choosing WordPress Pros and ConsPixlogix Infotech
 
From Family Reminiscence to Scholarly Archive .
From Family Reminiscence to Scholarly Archive .From Family Reminiscence to Scholarly Archive .
From Family Reminiscence to Scholarly Archive .Alan Dix
 
Advanced Computer Architecture – An Introduction
Advanced Computer Architecture – An IntroductionAdvanced Computer Architecture – An Introduction
Advanced Computer Architecture – An IntroductionDilum Bandara
 
What is DBT - The Ultimate Data Build Tool.pdf
What is DBT - The Ultimate Data Build Tool.pdfWhat is DBT - The Ultimate Data Build Tool.pdf
What is DBT - The Ultimate Data Build Tool.pdfMounikaPolabathina
 
Use of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptx
Use of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptxUse of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptx
Use of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptxLoriGlavin3
 
DSPy a system for AI to Write Prompts and Do Fine Tuning
DSPy a system for AI to Write Prompts and Do Fine TuningDSPy a system for AI to Write Prompts and Do Fine Tuning
DSPy a system for AI to Write Prompts and Do Fine TuningLars Bell
 
A Journey Into the Emotions of Software Developers
A Journey Into the Emotions of Software DevelopersA Journey Into the Emotions of Software Developers
A Journey Into the Emotions of Software DevelopersNicole Novielli
 
Generative AI for Technical Writer or Information Developers
Generative AI for Technical Writer or Information DevelopersGenerative AI for Technical Writer or Information Developers
Generative AI for Technical Writer or Information DevelopersRaghuram Pandurangan
 
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptx
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptxMerck Moving Beyond Passwords: FIDO Paris Seminar.pptx
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptxLoriGlavin3
 
Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 365Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 3652toLead Limited
 
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)Mark Simos
 
DevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache MavenDevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache MavenHervé Boutemy
 
Take control of your SAP testing with UiPath Test Suite
Take control of your SAP testing with UiPath Test SuiteTake control of your SAP testing with UiPath Test Suite
Take control of your SAP testing with UiPath Test SuiteDianaGray10
 

Recently uploaded (20)

DevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platformsDevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platforms
 
The State of Passkeys with FIDO Alliance.pptx
The State of Passkeys with FIDO Alliance.pptxThe State of Passkeys with FIDO Alliance.pptx
The State of Passkeys with FIDO Alliance.pptx
 
Sample pptx for embedding into website for demo
Sample pptx for embedding into website for demoSample pptx for embedding into website for demo
Sample pptx for embedding into website for demo
 
Time Series Foundation Models - current state and future directions
Time Series Foundation Models - current state and future directionsTime Series Foundation Models - current state and future directions
Time Series Foundation Models - current state and future directions
 
Transcript: New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024Transcript: New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
 
The Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptx
The Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptxThe Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptx
The Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptx
 
A Deep Dive on Passkeys: FIDO Paris Seminar.pptx
A Deep Dive on Passkeys: FIDO Paris Seminar.pptxA Deep Dive on Passkeys: FIDO Paris Seminar.pptx
A Deep Dive on Passkeys: FIDO Paris Seminar.pptx
 
The Ultimate Guide to Choosing WordPress Pros and Cons
The Ultimate Guide to Choosing WordPress Pros and ConsThe Ultimate Guide to Choosing WordPress Pros and Cons
The Ultimate Guide to Choosing WordPress Pros and Cons
 
From Family Reminiscence to Scholarly Archive .
From Family Reminiscence to Scholarly Archive .From Family Reminiscence to Scholarly Archive .
From Family Reminiscence to Scholarly Archive .
 
Advanced Computer Architecture – An Introduction
Advanced Computer Architecture – An IntroductionAdvanced Computer Architecture – An Introduction
Advanced Computer Architecture – An Introduction
 
What is DBT - The Ultimate Data Build Tool.pdf
What is DBT - The Ultimate Data Build Tool.pdfWhat is DBT - The Ultimate Data Build Tool.pdf
What is DBT - The Ultimate Data Build Tool.pdf
 
Use of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptx
Use of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptxUse of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptx
Use of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptx
 
DSPy a system for AI to Write Prompts and Do Fine Tuning
DSPy a system for AI to Write Prompts and Do Fine TuningDSPy a system for AI to Write Prompts and Do Fine Tuning
DSPy a system for AI to Write Prompts and Do Fine Tuning
 
A Journey Into the Emotions of Software Developers
A Journey Into the Emotions of Software DevelopersA Journey Into the Emotions of Software Developers
A Journey Into the Emotions of Software Developers
 
Generative AI for Technical Writer or Information Developers
Generative AI for Technical Writer or Information DevelopersGenerative AI for Technical Writer or Information Developers
Generative AI for Technical Writer or Information Developers
 
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptx
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptxMerck Moving Beyond Passwords: FIDO Paris Seminar.pptx
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptx
 
Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 365Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 365
 
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)
 
DevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache MavenDevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache Maven
 
Take control of your SAP testing with UiPath Test Suite
Take control of your SAP testing with UiPath Test SuiteTake control of your SAP testing with UiPath Test Suite
Take control of your SAP testing with UiPath Test Suite
 

Introduction To Flink

  • 1. Presented By: Kundan Kumar Software Consultant An introduction to Apache Flink: 4G of Big Data
  • 2. Lack of etiquette and manners is a huge turn off. KnolX Etiquettes Punctuality Respect Knolx session timings, you are requested not to join sessions after a 5 minutes threshold post the session start time. Feedback Make sure to submit a constructive feedback for all sessions as it is very helpful for the presenter. Mute Be on mute until you have questions or concerns. Avoid Disturbance Avoid unwanted chit chat during the session.
  • 3. Agenda 01 Big Data evolution 02 Introduction to Flink 03 Features of Flink Architecture of Flink Anatomy of a Flink program Demo 04 05 06
  • 4. Big Data Evolution Problems with Big Data: ● Storing huge and exponentially growing datasets. ● Processing of huge data datasets having complex structure. ● 3v’s of Big Data - Volume, Variety, Velocity
  • 5. Continue.. ● At early 2000, Big Data era started with multiple frameworks focusing on specifying Big Data problem.
  • 6. Continue.. ● A unified platform that alone can handle various Big Data problem: ➢ Batch processing ➢ Stream processing ➢ Graph processing ➢ Iterative processing ● A unified platform must have following characteristics to solve Big Data Problem: ➢ Distributed/ parallel computation ➢ Fault tolerance ➢ Ease of use (developer friendly API’s) ➢ Powerful predefined operators/functions(Like Join, filter) ➢ Fast
  • 7. Apache Spark (3G Big Data Framework) ● Spark is a lightning-fast cluster computing engine that is 100 times faster than Hadoop in running applications in memory ● Apache Spark is best known for its in-memory computing capabilities that deliver high-speed processing. ➢ Problem ● Process data streams in micro batches and not in real time. ● High throughput but medium latency in some use cases.
  • 8. Introduction to Flink ● Apache Flink is a Big Data framework and distributed processing engine for stateful computations over unbounded and bounded data streams. ● Flink is based on the streaming first principle which means it is real streaming processing engine Flink considers batch processing as a special case of streaming ● Flink has been designed to run in all common cluster environments, perform computations at in-memory speed and at any scale.
  • 10. ➢ A Flink application may consume real-time data from streaming sources such as message queues or distributed logs, like Apache Kafka or Kinesis. ➢ Flink can also consume bounded, historic data from a variety of data sources. ➢ The streams of results being produced by a Flink application can be sent to a wide variety of systems that can be connected as sinks
  • 11. ➢ Programs in Flink are inherently parallel and distributed. ➢ During execution, a stream has one or more stream partitions, and each operator has one or more operator subtasks.
  • 12. ➢ Flink facilitate stateful operations. ➢ Current handling event can depend on the accumulated effect of all the events that came before it. ➢ The set of parallel instances of a stateful operator is effectively a sharded key-value store. Each parallel instance is responsible for handling events for a specific group of keys, and the state for those keys is kept locally.
  • 13. Flink Architecture ➢ Flink 1.X's architecture consists of various components such as deploy, core processing, and APIs. ➢ Flink has a layered architecture and each component is a part of a specific layer. ➢ Each layer is built on top of the others for clear abstraction.
  • 14. Flinks Distributed Execution ➢ Flink is based on master slave architecture. ➢ Various processes take part in the Flink’s program execution, namely Job Manager, Task Manager, and Job Client.
  • 16. Flink Features ➢ High performance ➢ Exactly-once stateful computation ➢ Fault tolerance ➢ Memory management ➢ Optimizer ➢ Unified platform for stream and batch ➢ Rich Libraries
  • 17. Basic Anatomy of a Flink Program
  • 18. DEMO
  • 19. Q/A