SlideShare a Scribd company logo
1 of 75
Download to read offline
Storm
Distributed and fault-tolerant realtime computation




                                          Nathan Marz
                                            Twitter
Storm at Twitter




  Twitter Web Analytics
Before Storm



Queues        Workers
Example




 (simplified)
Example




Workers schemify tweets
 and append to Hadoop
Example




Workers update statistics on URLs by
incrementing counters in Cassandra
Example




Distribute tweets randomly
    on multiple queues
Example




Workers share the load of
  schemifying tweets
Example




Desire all updates for same
 URL go to same worker
Message locality

• Because:
 • No transactions in Cassandra (and no
    atomic increments at the time)
 • More effective batching of updates
Implementing message
        locality


• Have a queue for each consuming worker
• Choose queue for a URL using consistent hashing
Example




Workers choose queue to enqueue
   to using hash/mod of URL
Example




    All updates for same URL
guaranteed to go to same worker
Adding a worker
Adding a worker
                      Deploy




Reconfigure/redeploy
Problems

• Scaling is painful
• Poor fault-tolerance
• Coding is tedious
What we want
• Guaranteed data processing
• Horizontal scalability
• Fault-tolerance
• No intermediate message brokers!
• Higher level abstraction than message passing
• “Just works”
Storm
Guaranteed data processing
Horizontal scalability
Fault-tolerance
No intermediate message brokers!
Higher level abstraction than message passing
“Just works”
Use cases



  Stream      Distributed   Continuous
processing       RPC        computation
Storm Cluster
Storm Cluster




Master node (similar to Hadoop JobTracker)
Storm Cluster




Used for cluster coordination
Storm Cluster




 Run worker processes
Starting a topology
Killing a topology
Concepts

• Streams
• Spouts
• Bolts
• Topologies
Streams


Tuple   Tuple   Tuple   Tuple   Tuple   Tuple   Tuple




          Unbounded sequence of tuples
Spouts




Source of streams
Spout examples


• Read from Kestrel queue
• Read from Twitter streaming API
Bolts




Processes input streams and produces new streams
Bolts
• Functions
• Filters
• Aggregation
• Joins
• Talk to databases
Topology




Network of spouts and bolts
Tasks




Spouts and bolts execute as
many tasks across the cluster
Stream grouping




When a tuple is emitted, which task does it go to?
Stream grouping

• Shuffle grouping: pick a random task
• Fields grouping: consistent hashing on a
  subset of tuple fields
• All grouping: send to all tasks
• Global grouping: pick task with lowest id
Topology
shuffle      [“id1”, “id2”]




           shuffle
[“url”]


  shuffle

              all
Streaming word count




TopologyBuilder is used to construct topologies in Java
Streaming word count




Define a spout in the topology with parallelism of 5 tasks
Streaming word count




Split sentences into words with parallelism of 8 tasks
Streaming word count



Consumer decides what data it receives and how it gets grouped




Split sentences into words with parallelism of 8 tasks
Streaming word count




   Create a word count stream
Streaming word count




      splitsentence.py
Streaming word count
Streaming word count




  Submitting topology to a cluster
Streaming word count




  Running topology in local mode
Demo
Traditional data processing
Traditional data processing




   Intense processing (Hadoop, databases, etc.)
Traditional data processing




Light processing on a single machine to resolve queries
Distributed RPC




Distributed RPC lets you do intense processing at query-time
Game changer
Distributed RPC




Data flow for Distributed RPC
DRPC Example


Computing “reach” of a URL on the fly
Reach


Reach is the number of unique people
    exposed to a URL on Twitter
Computing reach
                Follower
                           Distinct
      Tweeter   Follower   follower

                Follower
                           Distinct
URL   Tweeter              follower   Count   Reach
                Follower

                Follower   Distinct
      Tweeter              follower
                Follower
Reach topology
Guaranteeing message
     processing




       “Tuple tree”
Guaranteeing message
     processing

• A spout tuple is not fully processed until all
  tuples in the tree have been completed
Guaranteeing message
     processing

• If the tuple tree is not completed within a
  specified timeout, the spout tuple is replayed
Guaranteeing message
     processing




      Reliability API
Guaranteeing message
     processing




“Anchoring” creates a new edge in the tuple tree
Guaranteeing message
     processing




 Marks a single node in the tree as complete
Guaranteeing message
     processing

• Storm tracks tuple trees for you in an
  extremely efficient way
Storm UI
Storm UI
Storm UI
Storm on EC2


https://github.com/nathanmarz/storm-deploy




          One-click deploy tool
Documentation
State spout (almost done)


       Synchronize a large amount of
  frequently changing state into a topology
State spout (almost done)




Optimizing reach topology by eliminating the database calls
State spout (almost done)




  Each GetFollowers task keeps a synchronous
     cache of a subset of the social graph
State spout (almost done)




This works because GetFollowers repartitions the social
 graph the same way it partitions GetTweeter’s stream
Future work

• Storm on Mesos
• “Swapping”
• Auto-scaling
• Higher level abstractions
Questions?


http://github.com/nathanmarz/storm
What Storm does
•   Distributes code and configurations

•   Robust process management

•   Monitors topologies and reassigns failed tasks

•   Provides reliability by tracking tuple trees

•   Routing and partitioning of streams

•   Serialization

•   Fine-grained performance stats of topologies

More Related Content

What's hot

HBase and HDFS: Understanding FileSystem Usage in HBase
HBase and HDFS: Understanding FileSystem Usage in HBaseHBase and HDFS: Understanding FileSystem Usage in HBase
HBase and HDFS: Understanding FileSystem Usage in HBaseenissoz
 
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
 
爆速クエリエンジン”Presto”を使いたくなる話
爆速クエリエンジン”Presto”を使いたくなる話爆速クエリエンジン”Presto”を使いたくなる話
爆速クエリエンジン”Presto”を使いたくなる話Kentaro Yoshida
 
Apache Storm
Apache StormApache Storm
Apache StormEdureka!
 
Apache Tez: Accelerating Hadoop Query Processing
Apache Tez: Accelerating Hadoop Query Processing Apache Tez: Accelerating Hadoop Query Processing
Apache Tez: Accelerating Hadoop Query Processing DataWorks Summit
 
Pinot: Near Realtime Analytics @ Uber
Pinot: Near Realtime Analytics @ UberPinot: Near Realtime Analytics @ Uber
Pinot: Near Realtime Analytics @ UberXiang Fu
 
[211] HBase 기반 검색 데이터 저장소 (공개용)
[211] HBase 기반 검색 데이터 저장소 (공개용)[211] HBase 기반 검색 데이터 저장소 (공개용)
[211] HBase 기반 검색 데이터 저장소 (공개용)NAVER D2
 
HDFSのスケーラビリティの限界を突破するためのさまざまな取り組み | Hadoop / Spark Conference Japan 2019 #hc...
HDFSのスケーラビリティの限界を突破するためのさまざまな取り組み | Hadoop / Spark Conference Japan 2019  #hc...HDFSのスケーラビリティの限界を突破するためのさまざまな取り組み | Hadoop / Spark Conference Japan 2019  #hc...
HDFSのスケーラビリティの限界を突破するためのさまざまな取り組み | Hadoop / Spark Conference Japan 2019 #hc...Yahoo!デベロッパーネットワーク
 
Time-Series Apache HBase
Time-Series Apache HBaseTime-Series Apache HBase
Time-Series Apache HBaseHBaseCon
 
Presto As A Service - Treasure DataでのPresto運用事例
Presto As A Service - Treasure DataでのPresto運用事例Presto As A Service - Treasure DataでのPresto運用事例
Presto As A Service - Treasure DataでのPresto運用事例Taro L. Saito
 
Hive+Tez: A performance deep dive
Hive+Tez: A performance deep diveHive+Tez: A performance deep dive
Hive+Tez: A performance deep divet3rmin4t0r
 
Exactly-once Semantics in Apache Kafka
Exactly-once Semantics in Apache KafkaExactly-once Semantics in Apache Kafka
Exactly-once Semantics in Apache Kafkaconfluent
 
Apache Hadoop YARN: best practices
Apache Hadoop YARN: best practicesApache Hadoop YARN: best practices
Apache Hadoop YARN: best practicesDataWorks Summit
 
Using Spark Streaming and NiFi for the next generation of ETL in the enterprise
Using Spark Streaming and NiFi for the next generation of ETL in the enterpriseUsing Spark Streaming and NiFi for the next generation of ETL in the enterprise
Using Spark Streaming and NiFi for the next generation of ETL in the enterpriseDataWorks Summit
 

What's hot (20)

HBase and HDFS: Understanding FileSystem Usage in HBase
HBase and HDFS: Understanding FileSystem Usage in HBaseHBase and HDFS: Understanding FileSystem Usage in HBase
HBase and HDFS: Understanding FileSystem Usage in HBase
 
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
 
爆速クエリエンジン”Presto”を使いたくなる話
爆速クエリエンジン”Presto”を使いたくなる話爆速クエリエンジン”Presto”を使いたくなる話
爆速クエリエンジン”Presto”を使いたくなる話
 
Apache Storm
Apache StormApache Storm
Apache Storm
 
HBase Low Latency
HBase Low LatencyHBase Low Latency
HBase Low Latency
 
Apache Tez: Accelerating Hadoop Query Processing
Apache Tez: Accelerating Hadoop Query Processing Apache Tez: Accelerating Hadoop Query Processing
Apache Tez: Accelerating Hadoop Query Processing
 
Pinot: Near Realtime Analytics @ Uber
Pinot: Near Realtime Analytics @ UberPinot: Near Realtime Analytics @ Uber
Pinot: Near Realtime Analytics @ Uber
 
Resource Aware Scheduling in Apache Storm
Resource Aware Scheduling in Apache StormResource Aware Scheduling in Apache Storm
Resource Aware Scheduling in Apache Storm
 
[211] HBase 기반 검색 데이터 저장소 (공개용)
[211] HBase 기반 검색 데이터 저장소 (공개용)[211] HBase 기반 검색 데이터 저장소 (공개용)
[211] HBase 기반 검색 데이터 저장소 (공개용)
 
HDFSのスケーラビリティの限界を突破するためのさまざまな取り組み | Hadoop / Spark Conference Japan 2019 #hc...
HDFSのスケーラビリティの限界を突破するためのさまざまな取り組み | Hadoop / Spark Conference Japan 2019  #hc...HDFSのスケーラビリティの限界を突破するためのさまざまな取り組み | Hadoop / Spark Conference Japan 2019  #hc...
HDFSのスケーラビリティの限界を突破するためのさまざまな取り組み | Hadoop / Spark Conference Japan 2019 #hc...
 
噛み砕いてKafka Streams #kafkajp
噛み砕いてKafka Streams #kafkajp噛み砕いてKafka Streams #kafkajp
噛み砕いてKafka Streams #kafkajp
 
Time-Series Apache HBase
Time-Series Apache HBaseTime-Series Apache HBase
Time-Series Apache HBase
 
Storm
StormStorm
Storm
 
Presto As A Service - Treasure DataでのPresto運用事例
Presto As A Service - Treasure DataでのPresto運用事例Presto As A Service - Treasure DataでのPresto運用事例
Presto As A Service - Treasure DataでのPresto運用事例
 
Hive+Tez: A performance deep dive
Hive+Tez: A performance deep diveHive+Tez: A performance deep dive
Hive+Tez: A performance deep dive
 
Exactly-once Semantics in Apache Kafka
Exactly-once Semantics in Apache KafkaExactly-once Semantics in Apache Kafka
Exactly-once Semantics in Apache Kafka
 
File Format Benchmark - Avro, JSON, ORC & Parquet
File Format Benchmark - Avro, JSON, ORC & ParquetFile Format Benchmark - Avro, JSON, ORC & Parquet
File Format Benchmark - Avro, JSON, ORC & Parquet
 
Apache Hadoop YARN: best practices
Apache Hadoop YARN: best practicesApache Hadoop YARN: best practices
Apache Hadoop YARN: best practices
 
Druid deep dive
Druid deep diveDruid deep dive
Druid deep dive
 
Using Spark Streaming and NiFi for the next generation of ETL in the enterprise
Using Spark Streaming and NiFi for the next generation of ETL in the enterpriseUsing Spark Streaming and NiFi for the next generation of ETL in the enterprise
Using Spark Streaming and NiFi for the next generation of ETL in the enterprise
 

Similar to Storm: distributed and fault-tolerant realtime computation

Building Big Data Streaming Architectures
Building Big Data Streaming ArchitecturesBuilding Big Data Streaming Architectures
Building Big Data Streaming ArchitecturesDavid Martínez Rego
 
Cleveland HUG - Storm
Cleveland HUG - StormCleveland HUG - Storm
Cleveland HUG - Stormjustinjleet
 
Storm presentation
Storm presentationStorm presentation
Storm presentationShyam Raj
 
Hadoop Ecosystem and Low Latency Streaming Architecture
Hadoop Ecosystem and Low Latency Streaming ArchitectureHadoop Ecosystem and Low Latency Streaming Architecture
Hadoop Ecosystem and Low Latency Streaming ArchitectureInSemble
 
Learning Stream Processing with Apache Storm
Learning Stream Processing with Apache StormLearning Stream Processing with Apache Storm
Learning Stream Processing with Apache StormEugene Dvorkin
 
Hortonworks Technical Workshop: Real Time Monitoring with Apache Hadoop
Hortonworks Technical Workshop: Real Time Monitoring with Apache HadoopHortonworks Technical Workshop: Real Time Monitoring with Apache Hadoop
Hortonworks Technical Workshop: Real Time Monitoring with Apache HadoopHortonworks
 
Low Latency Streaming Data Processing in Hadoop
Low Latency Streaming Data Processing in HadoopLow Latency Streaming Data Processing in Hadoop
Low Latency Streaming Data Processing in HadoopInSemble
 
Handling Data in Mega Scale Web Systems
Handling Data in Mega Scale Web SystemsHandling Data in Mega Scale Web Systems
Handling Data in Mega Scale Web SystemsVineet Gupta
 
Big data on Azure for Architects
Big data on Azure for ArchitectsBig data on Azure for Architects
Big data on Azure for ArchitectsTomasz Kopacz
 
Apache Storm 0.9 basic training - Verisign
Apache Storm 0.9 basic training - VerisignApache Storm 0.9 basic training - Verisign
Apache Storm 0.9 basic training - VerisignMichael Noll
 
High Performance Systems in Go - GopherCon 2014
High Performance Systems in Go - GopherCon 2014High Performance Systems in Go - GopherCon 2014
High Performance Systems in Go - GopherCon 2014Derek Collison
 
Introduction to Storm
Introduction to Storm Introduction to Storm
Introduction to Storm Chandler Huang
 
Big Data Technologies - Hadoop
Big Data Technologies - HadoopBig Data Technologies - Hadoop
Big Data Technologies - HadoopTalentica Software
 

Similar to Storm: distributed and fault-tolerant realtime computation (20)

Storm
StormStorm
Storm
 
Jan 2012 HUG: Storm
Jan 2012 HUG: StormJan 2012 HUG: Storm
Jan 2012 HUG: Storm
 
Building Big Data Streaming Architectures
Building Big Data Streaming ArchitecturesBuilding Big Data Streaming Architectures
Building Big Data Streaming Architectures
 
Apache Storm
Apache StormApache Storm
Apache Storm
 
Cleveland HUG - Storm
Cleveland HUG - StormCleveland HUG - Storm
Cleveland HUG - Storm
 
Storm presentation
Storm presentationStorm presentation
Storm presentation
 
Hadoop Ecosystem and Low Latency Streaming Architecture
Hadoop Ecosystem and Low Latency Streaming ArchitectureHadoop Ecosystem and Low Latency Streaming Architecture
Hadoop Ecosystem and Low Latency Streaming Architecture
 
Learning Stream Processing with Apache Storm
Learning Stream Processing with Apache StormLearning Stream Processing with Apache Storm
Learning Stream Processing with Apache Storm
 
Hortonworks Technical Workshop: Real Time Monitoring with Apache Hadoop
Hortonworks Technical Workshop: Real Time Monitoring with Apache HadoopHortonworks Technical Workshop: Real Time Monitoring with Apache Hadoop
Hortonworks Technical Workshop: Real Time Monitoring with Apache Hadoop
 
Hadoop basics
Hadoop basicsHadoop basics
Hadoop basics
 
Low Latency Streaming Data Processing in Hadoop
Low Latency Streaming Data Processing in HadoopLow Latency Streaming Data Processing in Hadoop
Low Latency Streaming Data Processing in Hadoop
 
Apache Storm Internals
Apache Storm InternalsApache Storm Internals
Apache Storm Internals
 
Mhug apache storm
Mhug apache stormMhug apache storm
Mhug apache storm
 
Handling Data in Mega Scale Web Systems
Handling Data in Mega Scale Web SystemsHandling Data in Mega Scale Web Systems
Handling Data in Mega Scale Web Systems
 
Big data on Azure for Architects
Big data on Azure for ArchitectsBig data on Azure for Architects
Big data on Azure for Architects
 
Apache Storm 0.9 basic training - Verisign
Apache Storm 0.9 basic training - VerisignApache Storm 0.9 basic training - Verisign
Apache Storm 0.9 basic training - Verisign
 
High Performance Systems in Go - GopherCon 2014
High Performance Systems in Go - GopherCon 2014High Performance Systems in Go - GopherCon 2014
High Performance Systems in Go - GopherCon 2014
 
Introduction to Storm
Introduction to Storm Introduction to Storm
Introduction to Storm
 
From Device to Data Center to Insights
From Device to Data Center to InsightsFrom Device to Data Center to Insights
From Device to Data Center to Insights
 
Big Data Technologies - Hadoop
Big Data Technologies - HadoopBig Data Technologies - Hadoop
Big Data Technologies - Hadoop
 

More from nathanmarz

Demystifying Data Engineering
Demystifying Data EngineeringDemystifying Data Engineering
Demystifying Data Engineeringnathanmarz
 
The inherent complexity of stream processing
The inherent complexity of stream processingThe inherent complexity of stream processing
The inherent complexity of stream processingnathanmarz
 
Using Simplicity to Make Hard Big Data Problems Easy
Using Simplicity to Make Hard Big Data Problems EasyUsing Simplicity to Make Hard Big Data Problems Easy
Using Simplicity to Make Hard Big Data Problems Easynathanmarz
 
The Epistemology of Software Engineering
The Epistemology of Software EngineeringThe Epistemology of Software Engineering
The Epistemology of Software Engineeringnathanmarz
 
Your Code is Wrong
Your Code is WrongYour Code is Wrong
Your Code is Wrongnathanmarz
 
Runaway complexity in Big Data... and a plan to stop it
Runaway complexity in Big Data... and a plan to stop itRunaway complexity in Big Data... and a plan to stop it
Runaway complexity in Big Data... and a plan to stop itnathanmarz
 
Become Efficient or Die: The Story of BackType
Become Efficient or Die: The Story of BackTypeBecome Efficient or Die: The Story of BackType
Become Efficient or Die: The Story of BackTypenathanmarz
 
The Secrets of Building Realtime Big Data Systems
The Secrets of Building Realtime Big Data SystemsThe Secrets of Building Realtime Big Data Systems
The Secrets of Building Realtime Big Data Systemsnathanmarz
 
Clojure at BackType
Clojure at BackTypeClojure at BackType
Clojure at BackTypenathanmarz
 
Cascalog workshop
Cascalog workshopCascalog workshop
Cascalog workshopnathanmarz
 
Cascalog at Strange Loop
Cascalog at Strange LoopCascalog at Strange Loop
Cascalog at Strange Loopnathanmarz
 
Cascalog at Hadoop Day
Cascalog at Hadoop DayCascalog at Hadoop Day
Cascalog at Hadoop Daynathanmarz
 
Cascalog at May Bay Area Hadoop User Group
Cascalog at May Bay Area Hadoop User GroupCascalog at May Bay Area Hadoop User Group
Cascalog at May Bay Area Hadoop User Groupnathanmarz
 

More from nathanmarz (16)

Demystifying Data Engineering
Demystifying Data EngineeringDemystifying Data Engineering
Demystifying Data Engineering
 
The inherent complexity of stream processing
The inherent complexity of stream processingThe inherent complexity of stream processing
The inherent complexity of stream processing
 
Using Simplicity to Make Hard Big Data Problems Easy
Using Simplicity to Make Hard Big Data Problems EasyUsing Simplicity to Make Hard Big Data Problems Easy
Using Simplicity to Make Hard Big Data Problems Easy
 
The Epistemology of Software Engineering
The Epistemology of Software EngineeringThe Epistemology of Software Engineering
The Epistemology of Software Engineering
 
Your Code is Wrong
Your Code is WrongYour Code is Wrong
Your Code is Wrong
 
Runaway complexity in Big Data... and a plan to stop it
Runaway complexity in Big Data... and a plan to stop itRunaway complexity in Big Data... and a plan to stop it
Runaway complexity in Big Data... and a plan to stop it
 
ElephantDB
ElephantDBElephantDB
ElephantDB
 
Become Efficient or Die: The Story of BackType
Become Efficient or Die: The Story of BackTypeBecome Efficient or Die: The Story of BackType
Become Efficient or Die: The Story of BackType
 
The Secrets of Building Realtime Big Data Systems
The Secrets of Building Realtime Big Data SystemsThe Secrets of Building Realtime Big Data Systems
The Secrets of Building Realtime Big Data Systems
 
Clojure at BackType
Clojure at BackTypeClojure at BackType
Clojure at BackType
 
Cascalog workshop
Cascalog workshopCascalog workshop
Cascalog workshop
 
Cascalog at Strange Loop
Cascalog at Strange LoopCascalog at Strange Loop
Cascalog at Strange Loop
 
Cascalog at Hadoop Day
Cascalog at Hadoop DayCascalog at Hadoop Day
Cascalog at Hadoop Day
 
Cascalog at May Bay Area Hadoop User Group
Cascalog at May Bay Area Hadoop User GroupCascalog at May Bay Area Hadoop User Group
Cascalog at May Bay Area Hadoop User Group
 
Cascalog
CascalogCascalog
Cascalog
 
Cascading
CascadingCascading
Cascading
 

Recently uploaded

Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot TakeoffStrategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoffsammart93
 
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businesspanagenda
 
Six Myths about Ontologies: The Basics of Formal Ontology
Six Myths about Ontologies: The Basics of Formal OntologySix Myths about Ontologies: The Basics of Formal Ontology
Six Myths about Ontologies: The Basics of Formal Ontologyjohnbeverley2021
 
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...apidays
 
DEV meet-up UiPath Document Understanding May 7 2024 Amsterdam
DEV meet-up UiPath Document Understanding May 7 2024 AmsterdamDEV meet-up UiPath Document Understanding May 7 2024 Amsterdam
DEV meet-up UiPath Document Understanding May 7 2024 AmsterdamUiPathCommunity
 
Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...apidays
 
AI in Action: Real World Use Cases by Anitaraj
AI in Action: Real World Use Cases by AnitarajAI in Action: Real World Use Cases by Anitaraj
AI in Action: Real World Use Cases by AnitarajAnitaRaj43
 
Artificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : UncertaintyArtificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : UncertaintyKhushali Kathiriya
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FMESafe Software
 
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...DianaGray10
 
Introduction to Multilingual Retrieval Augmented Generation (RAG)
Introduction to Multilingual Retrieval Augmented Generation (RAG)Introduction to Multilingual Retrieval Augmented Generation (RAG)
Introduction to Multilingual Retrieval Augmented Generation (RAG)Zilliz
 
JohnPollard-hybrid-app-RailsConf2024.pptx
JohnPollard-hybrid-app-RailsConf2024.pptxJohnPollard-hybrid-app-RailsConf2024.pptx
JohnPollard-hybrid-app-RailsConf2024.pptxJohnPollard37
 
Exploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with MilvusExploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with MilvusZilliz
 
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024Victor Rentea
 
MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MIND CTI
 
Architecting Cloud Native Applications
Architecting Cloud Native ApplicationsArchitecting Cloud Native Applications
Architecting Cloud Native ApplicationsWSO2
 
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...Jeffrey Haguewood
 
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...apidays
 
Introduction to use of FHIR Documents in ABDM
Introduction to use of FHIR Documents in ABDMIntroduction to use of FHIR Documents in ABDM
Introduction to use of FHIR Documents in ABDMKumar Satyam
 
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost SavingRepurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost SavingEdi Saputra
 

Recently uploaded (20)

Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot TakeoffStrategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
 
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire business
 
Six Myths about Ontologies: The Basics of Formal Ontology
Six Myths about Ontologies: The Basics of Formal OntologySix Myths about Ontologies: The Basics of Formal Ontology
Six Myths about Ontologies: The Basics of Formal Ontology
 
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...
 
DEV meet-up UiPath Document Understanding May 7 2024 Amsterdam
DEV meet-up UiPath Document Understanding May 7 2024 AmsterdamDEV meet-up UiPath Document Understanding May 7 2024 Amsterdam
DEV meet-up UiPath Document Understanding May 7 2024 Amsterdam
 
Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...
 
AI in Action: Real World Use Cases by Anitaraj
AI in Action: Real World Use Cases by AnitarajAI in Action: Real World Use Cases by Anitaraj
AI in Action: Real World Use Cases by Anitaraj
 
Artificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : UncertaintyArtificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : Uncertainty
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
 
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
 
Introduction to Multilingual Retrieval Augmented Generation (RAG)
Introduction to Multilingual Retrieval Augmented Generation (RAG)Introduction to Multilingual Retrieval Augmented Generation (RAG)
Introduction to Multilingual Retrieval Augmented Generation (RAG)
 
JohnPollard-hybrid-app-RailsConf2024.pptx
JohnPollard-hybrid-app-RailsConf2024.pptxJohnPollard-hybrid-app-RailsConf2024.pptx
JohnPollard-hybrid-app-RailsConf2024.pptx
 
Exploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with MilvusExploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with Milvus
 
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
 
MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024
 
Architecting Cloud Native Applications
Architecting Cloud Native ApplicationsArchitecting Cloud Native Applications
Architecting Cloud Native Applications
 
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
 
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
 
Introduction to use of FHIR Documents in ABDM
Introduction to use of FHIR Documents in ABDMIntroduction to use of FHIR Documents in ABDM
Introduction to use of FHIR Documents in ABDM
 
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost SavingRepurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
 

Storm: distributed and fault-tolerant realtime computation