SlideShare ist ein Scribd-Unternehmen logo
1 von 1
Downloaden Sie, um offline zu lesen
Adapting to Workloads Characteristics
General stream slicing automatically adapts to workload characteristics
to improve window aggregation performance without sacrificing
general applicability.
We make the following contributions:
1. We identify the workload characteristics which impact the
applicability and performance of window aggregation techniques.
2. We contribute general stream slicing, a generally applicable and
highly efficient solution for streaming window aggregation.
3. We analyze the implications of workload characteristics and show
that stream slicing is generally applicable while offering better
performance than existing approaches
Efficient Window Aggregation with
General Stream Slicing
Jonas Traub
jonas.traub@tu-berlin.de
Philipp M. Grulich
philipp.grulich@campus.tu-berlin.de
Alejandro Rodríguez Cuéllar
alejandro.rodriguez88@gmail.com
Sebastian Breß
sebastian.bress@dfki.de
Abstract and Contributions
Architecture of General Stream Slicing
22nd International Conference on Extending Database Technology (EDBT), March 26-29, 2019, Lisbon, Portugal
Asterios Katsifodimos
a.katsifodimos@tudelft.nl
Tilmann Rabl
rabl@tu-berlin.de
Volker Markl
volker.markl@tu-berlin.de
Aggregation Techniques
Keep individual tuples?
Workload Characteristics
Are splits required? How to remove tuples?
Performance Evaluation
Key findings
• General slicing outperform
alternative concepts with
respect to throughput and
scales to large numbers of
concurrent windows.
Impact of Out-Of-Order TuplesScalability (20% out-of-order) Impact of Aggregation Functions (20% out-of-order)
Tuple centric Slice centric
• Stream slicing and Buckets scale
with constant throughput to
large fractions of out-of-order
tuples and are robust against
high delays of these tuples.
• On time-based windows, stream slicing performs diverse
distributive and algebraic aggregations with similarly high
throughputs. Considering count-based windows and out-
of-order tuples, invertible aggregations lead to higher
throughputs than not invertible ones.
Open Source Repository:
tu-berlin-dima.github.io/scotty-window-processor

Weitere ähnliche Inhalte

Mehr von Jonas Traub

Flink Forward 2018: Efficient Window Aggregation with Stream Slicing
Flink Forward 2018: Efficient Window Aggregation with Stream SlicingFlink Forward 2018: Efficient Window Aggregation with Stream Slicing
Flink Forward 2018: Efficient Window Aggregation with Stream Slicing
Jonas Traub
 
Scotty: Efficient Window Aggregation for Out-of-Order Stream Processing
Scotty: Efficient Window Aggregation for Out-of-Order Stream ProcessingScotty: Efficient Window Aggregation for Out-of-Order Stream Processing
Scotty: Efficient Window Aggregation for Out-of-Order Stream Processing
Jonas Traub
 
UZH Stream Reasoning Workshop 2018: Optimized On-Demand Data Streaming from S...
UZH Stream Reasoning Workshop 2018: Optimized On-Demand Data Streaming from S...UZH Stream Reasoning Workshop 2018: Optimized On-Demand Data Streaming from S...
UZH Stream Reasoning Workshop 2018: Optimized On-Demand Data Streaming from S...
Jonas Traub
 

Mehr von Jonas Traub (10)

Flink Forward 2018: Efficient Window Aggregation with Stream Slicing
Flink Forward 2018: Efficient Window Aggregation with Stream SlicingFlink Forward 2018: Efficient Window Aggregation with Stream Slicing
Flink Forward 2018: Efficient Window Aggregation with Stream Slicing
 
Scotty: Efficient Window Aggregation for Out-of-Order Stream Processing
Scotty: Efficient Window Aggregation for Out-of-Order Stream ProcessingScotty: Efficient Window Aggregation for Out-of-Order Stream Processing
Scotty: Efficient Window Aggregation for Out-of-Order Stream Processing
 
Scalable Detection of Concept Drifts on Data Streams with Parallel Adaptive W...
Scalable Detection of Concept Drifts on Data Streams with Parallel Adaptive W...Scalable Detection of Concept Drifts on Data Streams with Parallel Adaptive W...
Scalable Detection of Concept Drifts on Data Streams with Parallel Adaptive W...
 
Efficient SIMD Vectorization for Hashing in OpenCL
Efficient SIMD Vectorization for Hashing in OpenCLEfficient SIMD Vectorization for Hashing in OpenCL
Efficient SIMD Vectorization for Hashing in OpenCL
 
UZH Stream Reasoning Workshop 2018: Optimized On-Demand Data Streaming from S...
UZH Stream Reasoning Workshop 2018: Optimized On-Demand Data Streaming from S...UZH Stream Reasoning Workshop 2018: Optimized On-Demand Data Streaming from S...
UZH Stream Reasoning Workshop 2018: Optimized On-Demand Data Streaming from S...
 
JT@UCSB - On-Demand Data Streaming from Sensor Nodes and A quick overview of ...
JT@UCSB - On-Demand Data Streaming from Sensor Nodes and A quick overview of ...JT@UCSB - On-Demand Data Streaming from Sensor Nodes and A quick overview of ...
JT@UCSB - On-Demand Data Streaming from Sensor Nodes and A quick overview of ...
 
I²: Interactive Real-Time Visualization for Streaming Data with Apache Flink ...
I²: Interactive Real-Time Visualization for Streaming Data with Apache Flink ...I²: Interactive Real-Time Visualization for Streaming Data with Apache Flink ...
I²: Interactive Real-Time Visualization for Streaming Data with Apache Flink ...
 
I²: Interactive Real-Time Visualization for Streaming Data
I²: Interactive Real-Time Visualization for Streaming DataI²: Interactive Real-Time Visualization for Streaming Data
I²: Interactive Real-Time Visualization for Streaming Data
 
LWA 2015: The Apache Flink Platform (Poster)
LWA 2015: The Apache Flink Platform (Poster)LWA 2015: The Apache Flink Platform (Poster)
LWA 2015: The Apache Flink Platform (Poster)
 
LWA 2015: The Apache Flink Platform for Parallel Batch and Stream Analysis
LWA 2015: The Apache Flink Platform for Parallel Batch and Stream AnalysisLWA 2015: The Apache Flink Platform for Parallel Batch and Stream Analysis
LWA 2015: The Apache Flink Platform for Parallel Batch and Stream Analysis
 

Kürzlich hochgeladen

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
panagenda
 

Kürzlich hochgeladen (20)

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
 
HTML Injection Attacks: Impact and Mitigation Strategies
HTML Injection Attacks: Impact and Mitigation StrategiesHTML Injection Attacks: Impact and Mitigation Strategies
HTML Injection Attacks: Impact and Mitigation Strategies
 
Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024
 
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
 
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...
 
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law DevelopmentsTrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
 
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin WoodPolkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
 
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data DiscoveryTrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
 
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
 
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
 
Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfBoost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdf
 
Top 10 Most Downloaded Games on Play Store in 2024
Top 10 Most Downloaded Games on Play Store in 2024Top 10 Most Downloaded Games on Play Store in 2024
Top 10 Most Downloaded Games on Play Store in 2024
 
Powerful Google developer tools for immediate impact! (2023-24 C)
Powerful Google developer tools for immediate impact! (2023-24 C)Powerful Google developer tools for immediate impact! (2023-24 C)
Powerful Google developer tools for immediate impact! (2023-24 C)
 
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
 
Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonData Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt Robison
 
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time AutomationFrom Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
 
2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...
 
A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)
 
presentation ICT roal in 21st century education
presentation ICT roal in 21st century educationpresentation ICT roal in 21st century education
presentation ICT roal in 21st century education
 
GenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdfGenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdf
 

Efficient Window Aggregation with General Stream Slicing (Poster for EDBT Best Paper 2019)

  • 1. Adapting to Workloads Characteristics General stream slicing automatically adapts to workload characteristics to improve window aggregation performance without sacrificing general applicability. We make the following contributions: 1. We identify the workload characteristics which impact the applicability and performance of window aggregation techniques. 2. We contribute general stream slicing, a generally applicable and highly efficient solution for streaming window aggregation. 3. We analyze the implications of workload characteristics and show that stream slicing is generally applicable while offering better performance than existing approaches Efficient Window Aggregation with General Stream Slicing Jonas Traub jonas.traub@tu-berlin.de Philipp M. Grulich philipp.grulich@campus.tu-berlin.de Alejandro Rodríguez Cuéllar alejandro.rodriguez88@gmail.com Sebastian Breß sebastian.bress@dfki.de Abstract and Contributions Architecture of General Stream Slicing 22nd International Conference on Extending Database Technology (EDBT), March 26-29, 2019, Lisbon, Portugal Asterios Katsifodimos a.katsifodimos@tudelft.nl Tilmann Rabl rabl@tu-berlin.de Volker Markl volker.markl@tu-berlin.de Aggregation Techniques Keep individual tuples? Workload Characteristics Are splits required? How to remove tuples? Performance Evaluation Key findings • General slicing outperform alternative concepts with respect to throughput and scales to large numbers of concurrent windows. Impact of Out-Of-Order TuplesScalability (20% out-of-order) Impact of Aggregation Functions (20% out-of-order) Tuple centric Slice centric • Stream slicing and Buckets scale with constant throughput to large fractions of out-of-order tuples and are robust against high delays of these tuples. • On time-based windows, stream slicing performs diverse distributive and algebraic aggregations with similarly high throughputs. Considering count-based windows and out- of-order tuples, invertible aggregations lead to higher throughputs than not invertible ones. Open Source Repository: tu-berlin-dima.github.io/scotty-window-processor