SlideShare a Scribd company logo
Samira Afzal, Zahra Najafabadi Samani, Narges Mehran, Christian Timmerer, and Radu Prodan
Institute of Information Technology (ITEC), Alpen-Adria-Universität Austria
samira.afzal@aau.at | https://athena.itec.aau.at/
MPEC2: Multilayer and Pipeline
Video Encoding on the Computing Continuum
APOLLO
Agenda
Motivation and main
objectives
MPEC2
Evaluated results
Conclusion
1
Motivation and Main Objectives
Video streaming is a significant part of the current network traffic
Computationally intensive
Costly
Time-consuming
Video encoding is
Minimizing cost and/or minimizing encoding time
Making a trade-off between encoding time and cost
Considering encoding time deadline and cost limitation
To select Cloud/Fog resources for video encoding/transcoding operations,
aiming at:
2
Motivation and Main Objectives
Video streaming is a significant part of the current network traffic
Computationally intensive
Costly
Time-consuming
Video encoding is
Minimizing cost and/or minimizing encoding time
Making a trade-off between encoding time and cost
Considering encoding time deadline and cost limitation
To select Cloud/Fog resources for video encoding/transcoding operations,
aiming at:
3
MPEC2
Multilayer and
Pipeline Video
Encoding
on the Computing
Continuum (MPEC2)
4
MPEC2 Architecture Overview
Coordinator
5
MPEC2 Architecture Overview
Coordinator
6
MPEC2 Architecture Overview
Coordinator
7
MPEC2 Architecture Overview
Coordinator
8
MPEC2 Architecture Overview
Coordinator
9
10
Objective Function
Segment scheduling objective
Stream scheduling objective
Objective Function
Segment scheduling objective
Stream scheduling objective
Media service provider or
user priorities
𝛼 ∈ [0, 1]
Time-optimized (𝛼 = 1)
Cost-optimized (𝛼 = 0)
Encoding application
Completion time
Total cost
Segment
Instance
Scene's segments
11
MPEC2 Architecture Overview
Selects an instance type
optimizing the objective O1
Distributes segments
in a pipeline model on
the instances optimizing
the objective O2
Coordinator
12
Experimental
Setup
13
Experimental Infrastructure
Video Stream Characteristics
14
Evaluation
Segment encoding scheduling
Scene encoding scheduling
Related work comparison
15
Segment
Encoding
Scheduling
Time-optimized scenario
Cost-optimized scenario
16
Time vs. Cost-optimized Scenarios
Time-optimized results are 86 % faster and 77 % more expensive than the cost-optimized ones
17
Scene
Encoding
Scheduling
Time-optimized scenario
Cost-optimized scenario
18
Coordinater on
c5a.2xlarge
(Frankfurt)
Time-optimized Scenario
19
Time-optimized Scenario
Segment encoding
scheduling
Coordinater on
c5a.2xlarge
(Frankfurt)
20
Time-optimized Scenario
Segment encoding
scheduling
Coordinater on
c5a.2xlarge
(Frankfurt)
21
Scene encoding
scheduling
Coordinater on
c5a.2xlarge
(Frankfurt)
Time-optimized Scenario
5 number of c5.9xlarge
10 number of c5.4xlarge
5 number of r5.4xlarge
Total completion time
22
Cost-optimized Scenario
Segment encoding
scheduling
Coordinater on
c5a.2xlarge
(Frankfurt)
10 number of medium
Scene encoding
scheduling
Coordinater on
c5a.2xlarge
(Frankfurt)
Total completion time
23
Related Work
Comparison
MAPO: is a multi-objective model for IoT
application placement in a Fog environment
selecting one instance type for encoding the video
stream
Random: selects one arbitrary instance type per
scene to encode the video stream
Fastest: selects the fastest instance type relying on
the CPU speed to encode the video stream
Cheapest: selects the lowest cost instance type to
encode the video stream
Narges Mehran, Dragi Kimovski, and Radu Prodan. MAPO: a multi-objective model for iot application placement in a fog
environment. In Proceedings of the 9th International Conference on the Internet of Things, pages 1–8, 2019
1
1
24
Related Work Comparison
25
Conclusions
Proposed MPEC2 for video encoding application on the computing continuum
MPEC2 method:
Scene detection
Segment encoding scheduling, utilizing a multilayer graph partitioning model
Scene encoding scheduling, proposing a pipeline model
Highlighted factors:
User or media service priorities, such as cost and/or time priorities
Resources priorities, location, type, cost, number of instances for each resource type
Segment properties, such as duration, number of segments, segment encoding time
Evaluated MPEC2 on a set of Cloud AWS and Fog Exoscale resource instances
Achieved significant improvements:
24%, 54%, and 40% faster video encoding compared to MAPO, random, and fastest
instance selection methods in time-optimized scenarios
60 %, 50%, and 5% cheaper compared to the MAPO, random, and cheapest methods in
time-optimized scenarios
26
Thank you
Institute of Information Technology (ITEC) Alpen-Adria-Universität Austria
samira.afzal@aau.at https://itec.aau.at/
Have a
great day
ahead!
APOLLO

More Related Content

Similar to MPEC2: Multilayer and Pipeline Video Encoding on the Computing Continuum

HTTP Adaptive Streaming – Quo Vadis?
HTTP Adaptive Streaming – Quo Vadis?HTTP Adaptive Streaming – Quo Vadis?
HTTP Adaptive Streaming – Quo Vadis?
Alpen-Adria-Universität
 
A Study on FFmpeg Multimedia Framework
A Study on FFmpeg Multimedia FrameworkA Study on FFmpeg Multimedia Framework
A Study on FFmpeg Multimedia Framework
ijtsrd
 
11.performance evaluation of mpeg 0004www.iiste.org call for-paper video tran...
11.performance evaluation of mpeg 0004www.iiste.org call for-paper video tran...11.performance evaluation of mpeg 0004www.iiste.org call for-paper video tran...
11.performance evaluation of mpeg 0004www.iiste.org call for-paper video tran...
Alexander Decker
 
Multicasting Of Adaptively-Encoded MPEG4 Over Qos-Cognizant IP Networks
Multicasting Of Adaptively-Encoded MPEG4 Over Qos-Cognizant IP NetworksMulticasting Of Adaptively-Encoded MPEG4 Over Qos-Cognizant IP Networks
Multicasting Of Adaptively-Encoded MPEG4 Over Qos-Cognizant IP Networks
Editor IJMTER
 
QoE- and Energy-aware Content Consumption for HTTP Adaptive Streaming
QoE- and Energy-aware Content Consumption for HTTP Adaptive StreamingQoE- and Energy-aware Content Consumption for HTTP Adaptive Streaming
QoE- and Energy-aware Content Consumption for HTTP Adaptive Streaming
DanieleLorenzi6
 
Professional Skills Highlights
Professional Skills HighlightsProfessional Skills Highlights
Professional Skills Highlights
Videoguy
 

Similar to MPEC2: Multilayer and Pipeline Video Encoding on the Computing Continuum (20)

7. manuscript edit sat
7. manuscript edit sat7. manuscript edit sat
7. manuscript edit sat
 
Cloud, Fog, or Edge: Where and When to Compute?
Cloud, Fog, or Edge: Where and When to Compute?Cloud, Fog, or Edge: Where and When to Compute?
Cloud, Fog, or Edge: Where and When to Compute?
 
In Network Computing Prototype Using P4 at KSC/KREONET 2019
In Network Computing Prototype Using P4 at KSC/KREONET 2019In Network Computing Prototype Using P4 at KSC/KREONET 2019
In Network Computing Prototype Using P4 at KSC/KREONET 2019
 
Mini Project- Digital Video Editing
Mini Project- Digital Video EditingMini Project- Digital Video Editing
Mini Project- Digital Video Editing
 
HTTP Adaptive Streaming – Quo Vadis?
HTTP Adaptive Streaming – Quo Vadis?HTTP Adaptive Streaming – Quo Vadis?
HTTP Adaptive Streaming – Quo Vadis?
 
Motion Vector Recovery for Real-time H.264 Video Streams
Motion Vector Recovery for Real-time H.264 Video StreamsMotion Vector Recovery for Real-time H.264 Video Streams
Motion Vector Recovery for Real-time H.264 Video Streams
 
Accelerating Media Business Developments, MPEG-M: MPEG Extensible Middleware
Accelerating Media Business Developments, MPEG-M: MPEG Extensible MiddlewareAccelerating Media Business Developments, MPEG-M: MPEG Extensible Middleware
Accelerating Media Business Developments, MPEG-M: MPEG Extensible Middleware
 
A Study on FFmpeg Multimedia Framework
A Study on FFmpeg Multimedia FrameworkA Study on FFmpeg Multimedia Framework
A Study on FFmpeg Multimedia Framework
 
11.performance evaluation of mpeg 0004www.iiste.org call for-paper video tran...
11.performance evaluation of mpeg 0004www.iiste.org call for-paper video tran...11.performance evaluation of mpeg 0004www.iiste.org call for-paper video tran...
11.performance evaluation of mpeg 0004www.iiste.org call for-paper video tran...
 
Performance evaluation of mpeg 4 video transmission over ip-networks
Performance evaluation of mpeg 4 video transmission over ip-networksPerformance evaluation of mpeg 4 video transmission over ip-networks
Performance evaluation of mpeg 4 video transmission over ip-networks
 
Online Bitrate ladder prediction for Adaptive VVC Streaming
Online Bitrate ladder prediction for Adaptive VVC StreamingOnline Bitrate ladder prediction for Adaptive VVC Streaming
Online Bitrate ladder prediction for Adaptive VVC Streaming
 
Immersive Video Delivery: From Omnidirectional Video to Holography
Immersive Video Delivery: From Omnidirectional Video to HolographyImmersive Video Delivery: From Omnidirectional Video to Holography
Immersive Video Delivery: From Omnidirectional Video to Holography
 
Optimizing QoE and Latency of Live Video Streaming Using Edge Computing a...
Optimizing  QoE and Latency of  Live Video Streaming Using  Edge Computing  a...Optimizing  QoE and Latency of  Live Video Streaming Using  Edge Computing  a...
Optimizing QoE and Latency of Live Video Streaming Using Edge Computing a...
 
Multicasting Of Adaptively-Encoded MPEG4 Over Qos-Cognizant IP Networks
Multicasting Of Adaptively-Encoded MPEG4 Over Qos-Cognizant IP NetworksMulticasting Of Adaptively-Encoded MPEG4 Over Qos-Cognizant IP Networks
Multicasting Of Adaptively-Encoded MPEG4 Over Qos-Cognizant IP Networks
 
Analyzing Video Streaming Quality by Using Various Error Correction Methods o...
Analyzing Video Streaming Quality by Using Various Error Correction Methods o...Analyzing Video Streaming Quality by Using Various Error Correction Methods o...
Analyzing Video Streaming Quality by Using Various Error Correction Methods o...
 
Video Coding for Large-Scale HTTP Adaptive Streaming Deployments: State of th...
Video Coding for Large-Scale HTTP Adaptive Streaming Deployments: State of th...Video Coding for Large-Scale HTTP Adaptive Streaming Deployments: State of th...
Video Coding for Large-Scale HTTP Adaptive Streaming Deployments: State of th...
 
40120140504006
4012014050400640120140504006
40120140504006
 
A new robust video watermarking technique using h_264_aac_codec luma componen...
A new robust video watermarking technique using h_264_aac_codec luma componen...A new robust video watermarking technique using h_264_aac_codec luma componen...
A new robust video watermarking technique using h_264_aac_codec luma componen...
 
QoE- and Energy-aware Content Consumption for HTTP Adaptive Streaming
QoE- and Energy-aware Content Consumption for HTTP Adaptive StreamingQoE- and Energy-aware Content Consumption for HTTP Adaptive Streaming
QoE- and Energy-aware Content Consumption for HTTP Adaptive Streaming
 
Professional Skills Highlights
Professional Skills HighlightsProfessional Skills Highlights
Professional Skills Highlights
 

More from Alpen-Adria-Universität

Optimal Quality and Efficiency in Adaptive Live Streaming with JND-Aware Low ...
Optimal Quality and Efficiency in Adaptive Live Streaming with JND-Aware Low ...Optimal Quality and Efficiency in Adaptive Live Streaming with JND-Aware Low ...
Optimal Quality and Efficiency in Adaptive Live Streaming with JND-Aware Low ...
Alpen-Adria-Universität
 
Content-adaptive Video Coding for HTTP Adaptive Streaming
Content-adaptive Video Coding for HTTP Adaptive StreamingContent-adaptive Video Coding for HTTP Adaptive Streaming
Content-adaptive Video Coding for HTTP Adaptive Streaming
Alpen-Adria-Universität
 
Evaluation of Quality of Experience of ABR Schemes in Gaming Stream
Evaluation of Quality of Experience of ABR Schemes in Gaming StreamEvaluation of Quality of Experience of ABR Schemes in Gaming Stream
Evaluation of Quality of Experience of ABR Schemes in Gaming Stream
Alpen-Adria-Universität
 
Policy-Driven Dynamic HTTP Adaptive Streaming Player Environment
Policy-Driven Dynamic HTTP Adaptive Streaming Player EnvironmentPolicy-Driven Dynamic HTTP Adaptive Streaming Player Environment
Policy-Driven Dynamic HTTP Adaptive Streaming Player Environment
Alpen-Adria-Universität
 
Energy Consumption in Video Streaming: Components, Measurements, and Strategies
Energy Consumption in Video Streaming: Components, Measurements, and StrategiesEnergy Consumption in Video Streaming: Components, Measurements, and Strategies
Energy Consumption in Video Streaming: Components, Measurements, and Strategies
Alpen-Adria-Universität
 
Exploring the Energy Consumption of Video Streaming: Components, Challenges, ...
Exploring the Energy Consumption of Video Streaming: Components, Challenges, ...Exploring the Energy Consumption of Video Streaming: Components, Challenges, ...
Exploring the Energy Consumption of Video Streaming: Components, Challenges, ...
Alpen-Adria-Universität
 
SARENA: SFC-Enabled Architecture for Adaptive Video Streaming Applications
SARENA: SFC-Enabled Architecture for Adaptive Video Streaming ApplicationsSARENA: SFC-Enabled Architecture for Adaptive Video Streaming Applications
SARENA: SFC-Enabled Architecture for Adaptive Video Streaming Applications
Alpen-Adria-Universität
 
LLL-CAdViSE: Live Low-Latency Cloud-based Adaptive Video Streaming Evaluation...
LLL-CAdViSE: Live Low-Latency Cloud-based Adaptive Video Streaming Evaluation...LLL-CAdViSE: Live Low-Latency Cloud-based Adaptive Video Streaming Evaluation...
LLL-CAdViSE: Live Low-Latency Cloud-based Adaptive Video Streaming Evaluation...
Alpen-Adria-Universität
 
How to Optimize Dynamic Adaptive Video Streaming? Challenges and Solutions
How to Optimize Dynamic Adaptive Video Streaming? Challenges and SolutionsHow to Optimize Dynamic Adaptive Video Streaming? Challenges and Solutions
How to Optimize Dynamic Adaptive Video Streaming? Challenges and Solutions
Alpen-Adria-Universität
 

More from Alpen-Adria-Universität (20)

VEED: Video Encoding Energy and CO2 Emissions Dataset for AWS EC2 instances
VEED: Video Encoding Energy and CO2 Emissions Dataset for AWS EC2 instancesVEED: Video Encoding Energy and CO2 Emissions Dataset for AWS EC2 instances
VEED: Video Encoding Energy and CO2 Emissions Dataset for AWS EC2 instances
 
GREEM: An Open-Source Energy Measurement Tool for Video Processing
GREEM: An Open-Source Energy Measurement Tool for Video ProcessingGREEM: An Open-Source Energy Measurement Tool for Video Processing
GREEM: An Open-Source Energy Measurement Tool for Video Processing
 
Optimal Quality and Efficiency in Adaptive Live Streaming with JND-Aware Low ...
Optimal Quality and Efficiency in Adaptive Live Streaming with JND-Aware Low ...Optimal Quality and Efficiency in Adaptive Live Streaming with JND-Aware Low ...
Optimal Quality and Efficiency in Adaptive Live Streaming with JND-Aware Low ...
 
VEEP: Video Encoding Energy and CO₂ Emission Prediction
VEEP: Video Encoding Energy and CO₂ Emission PredictionVEEP: Video Encoding Energy and CO₂ Emission Prediction
VEEP: Video Encoding Energy and CO₂ Emission Prediction
 
Content-adaptive Video Coding for HTTP Adaptive Streaming
Content-adaptive Video Coding for HTTP Adaptive StreamingContent-adaptive Video Coding for HTTP Adaptive Streaming
Content-adaptive Video Coding for HTTP Adaptive Streaming
 
Empowerment of Atypical Viewers via Low-Effort Personalized Modeling of Video...
Empowerment of Atypical Viewers via Low-Effort Personalized Modeling of Video...Empowerment of Atypical Viewers via Low-Effort Personalized Modeling of Video...
Empowerment of Atypical Viewers via Low-Effort Personalized Modeling of Video...
 
Empowerment of Atypical Viewers via Low-Effort Personalized Modeling of Vid...
Empowerment of Atypical Viewers  via Low-Effort Personalized Modeling  of Vid...Empowerment of Atypical Viewers  via Low-Effort Personalized Modeling  of Vid...
Empowerment of Atypical Viewers via Low-Effort Personalized Modeling of Vid...
 
Optimizing Video Streaming for Sustainability and Quality: The Role of Prese...
Optimizing Video Streaming  for Sustainability and Quality: The Role of Prese...Optimizing Video Streaming  for Sustainability and Quality: The Role of Prese...
Optimizing Video Streaming for Sustainability and Quality: The Role of Prese...
 
Energy-Efficient Multi-Codec Bitrate-Ladder Estimation for Adaptive Video Str...
Energy-Efficient Multi-Codec Bitrate-Ladder Estimation for Adaptive Video Str...Energy-Efficient Multi-Codec Bitrate-Ladder Estimation for Adaptive Video Str...
Energy-Efficient Multi-Codec Bitrate-Ladder Estimation for Adaptive Video Str...
 
Machine Learning Based Resource Utilization Prediction in the Computing Conti...
Machine Learning Based Resource Utilization Prediction in the Computing Conti...Machine Learning Based Resource Utilization Prediction in the Computing Conti...
Machine Learning Based Resource Utilization Prediction in the Computing Conti...
 
Evaluation of Quality of Experience of ABR Schemes in Gaming Stream
Evaluation of Quality of Experience of ABR Schemes in Gaming StreamEvaluation of Quality of Experience of ABR Schemes in Gaming Stream
Evaluation of Quality of Experience of ABR Schemes in Gaming Stream
 
Network-Assisted Delivery of Adaptive Video Streaming Services through CDN, S...
Network-Assisted Delivery of Adaptive Video Streaming Services through CDN, S...Network-Assisted Delivery of Adaptive Video Streaming Services through CDN, S...
Network-Assisted Delivery of Adaptive Video Streaming Services through CDN, S...
 
Multi-access Edge Computing for Adaptive Video Streaming
Multi-access Edge Computing for Adaptive Video StreamingMulti-access Edge Computing for Adaptive Video Streaming
Multi-access Edge Computing for Adaptive Video Streaming
 
Policy-Driven Dynamic HTTP Adaptive Streaming Player Environment
Policy-Driven Dynamic HTTP Adaptive Streaming Player EnvironmentPolicy-Driven Dynamic HTTP Adaptive Streaming Player Environment
Policy-Driven Dynamic HTTP Adaptive Streaming Player Environment
 
Energy Consumption in Video Streaming: Components, Measurements, and Strategies
Energy Consumption in Video Streaming: Components, Measurements, and StrategiesEnergy Consumption in Video Streaming: Components, Measurements, and Strategies
Energy Consumption in Video Streaming: Components, Measurements, and Strategies
 
Exploring the Energy Consumption of Video Streaming: Components, Challenges, ...
Exploring the Energy Consumption of Video Streaming: Components, Challenges, ...Exploring the Energy Consumption of Video Streaming: Components, Challenges, ...
Exploring the Energy Consumption of Video Streaming: Components, Challenges, ...
 
Video Coding Enhancements for HTTP Adaptive Streaming Using Machine Learning
Video Coding Enhancements for HTTP Adaptive Streaming Using Machine LearningVideo Coding Enhancements for HTTP Adaptive Streaming Using Machine Learning
Video Coding Enhancements for HTTP Adaptive Streaming Using Machine Learning
 
SARENA: SFC-Enabled Architecture for Adaptive Video Streaming Applications
SARENA: SFC-Enabled Architecture for Adaptive Video Streaming ApplicationsSARENA: SFC-Enabled Architecture for Adaptive Video Streaming Applications
SARENA: SFC-Enabled Architecture for Adaptive Video Streaming Applications
 
LLL-CAdViSE: Live Low-Latency Cloud-based Adaptive Video Streaming Evaluation...
LLL-CAdViSE: Live Low-Latency Cloud-based Adaptive Video Streaming Evaluation...LLL-CAdViSE: Live Low-Latency Cloud-based Adaptive Video Streaming Evaluation...
LLL-CAdViSE: Live Low-Latency Cloud-based Adaptive Video Streaming Evaluation...
 
How to Optimize Dynamic Adaptive Video Streaming? Challenges and Solutions
How to Optimize Dynamic Adaptive Video Streaming? Challenges and SolutionsHow to Optimize Dynamic Adaptive Video Streaming? Challenges and Solutions
How to Optimize Dynamic Adaptive Video Streaming? Challenges and Solutions
 

Recently uploaded

Essentials of Automations: Optimizing FME Workflows with Parameters
Essentials of Automations: Optimizing FME Workflows with ParametersEssentials of Automations: Optimizing FME Workflows with Parameters
Essentials of Automations: Optimizing FME Workflows with Parameters
Safe Software
 

Recently uploaded (20)

IOS-PENTESTING-BEGINNERS-PRACTICAL-GUIDE-.pptx
IOS-PENTESTING-BEGINNERS-PRACTICAL-GUIDE-.pptxIOS-PENTESTING-BEGINNERS-PRACTICAL-GUIDE-.pptx
IOS-PENTESTING-BEGINNERS-PRACTICAL-GUIDE-.pptx
 
De-mystifying Zero to One: Design Informed Techniques for Greenfield Innovati...
De-mystifying Zero to One: Design Informed Techniques for Greenfield Innovati...De-mystifying Zero to One: Design Informed Techniques for Greenfield Innovati...
De-mystifying Zero to One: Design Informed Techniques for Greenfield Innovati...
 
Powerful Start- the Key to Project Success, Barbara Laskowska
Powerful Start- the Key to Project Success, Barbara LaskowskaPowerful Start- the Key to Project Success, Barbara Laskowska
Powerful Start- the Key to Project Success, Barbara Laskowska
 
From Siloed Products to Connected Ecosystem: Building a Sustainable and Scala...
From Siloed Products to Connected Ecosystem: Building a Sustainable and Scala...From Siloed Products to Connected Ecosystem: Building a Sustainable and Scala...
From Siloed Products to Connected Ecosystem: Building a Sustainable and Scala...
 
Essentials of Automations: Optimizing FME Workflows with Parameters
Essentials of Automations: Optimizing FME Workflows with ParametersEssentials of Automations: Optimizing FME Workflows with Parameters
Essentials of Automations: Optimizing FME Workflows with Parameters
 
Optimizing NoSQL Performance Through Observability
Optimizing NoSQL Performance Through ObservabilityOptimizing NoSQL Performance Through Observability
Optimizing NoSQL Performance Through Observability
 
IESVE for Early Stage Design and Planning
IESVE for Early Stage Design and PlanningIESVE for Early Stage Design and Planning
IESVE for Early Stage Design and Planning
 
10 Differences between Sales Cloud and CPQ, Blanka Doktorová
10 Differences between Sales Cloud and CPQ, Blanka Doktorová10 Differences between Sales Cloud and CPQ, Blanka Doktorová
10 Differences between Sales Cloud and CPQ, Blanka Doktorová
 
JMeter webinar - integration with InfluxDB and Grafana
JMeter webinar - integration with InfluxDB and GrafanaJMeter webinar - integration with InfluxDB and Grafana
JMeter webinar - integration with InfluxDB and Grafana
 
SOQL 201 for Admins & Developers: Slice & Dice Your Org’s Data With Aggregate...
SOQL 201 for Admins & Developers: Slice & Dice Your Org’s Data With Aggregate...SOQL 201 for Admins & Developers: Slice & Dice Your Org’s Data With Aggregate...
SOQL 201 for Admins & Developers: Slice & Dice Your Org’s Data With Aggregate...
 
Speed Wins: From Kafka to APIs in Minutes
Speed Wins: From Kafka to APIs in MinutesSpeed Wins: From Kafka to APIs in Minutes
Speed Wins: From Kafka to APIs in Minutes
 
UiPath Test Automation using UiPath Test Suite series, part 3
UiPath Test Automation using UiPath Test Suite series, part 3UiPath Test Automation using UiPath Test Suite series, part 3
UiPath Test Automation using UiPath Test Suite series, part 3
 
Salesforce Adoption – Metrics, Methods, and Motivation, Antone Kom
Salesforce Adoption – Metrics, Methods, and Motivation, Antone KomSalesforce Adoption – Metrics, Methods, and Motivation, Antone Kom
Salesforce Adoption – Metrics, Methods, and Motivation, Antone Kom
 
Dev Dives: Train smarter, not harder – active learning and UiPath LLMs for do...
Dev Dives: Train smarter, not harder – active learning and UiPath LLMs for do...Dev Dives: Train smarter, not harder – active learning and UiPath LLMs for do...
Dev Dives: Train smarter, not harder – active learning and UiPath LLMs for do...
 
GenAISummit 2024 May 28 Sri Ambati Keynote: AGI Belongs to The Community in O...
GenAISummit 2024 May 28 Sri Ambati Keynote: AGI Belongs to The Community in O...GenAISummit 2024 May 28 Sri Ambati Keynote: AGI Belongs to The Community in O...
GenAISummit 2024 May 28 Sri Ambati Keynote: AGI Belongs to The Community in O...
 
AI revolution and Salesforce, Jiří Karpíšek
AI revolution and Salesforce, Jiří KarpíšekAI revolution and Salesforce, Jiří Karpíšek
AI revolution and Salesforce, Jiří Karpíšek
 
Exploring UiPath Orchestrator API: updates and limits in 2024 🚀
Exploring UiPath Orchestrator API: updates and limits in 2024 🚀Exploring UiPath Orchestrator API: updates and limits in 2024 🚀
Exploring UiPath Orchestrator API: updates and limits in 2024 🚀
 
Unpacking Value Delivery - Agile Oxford Meetup - May 2024.pptx
Unpacking Value Delivery - Agile Oxford Meetup - May 2024.pptxUnpacking Value Delivery - Agile Oxford Meetup - May 2024.pptx
Unpacking Value Delivery - Agile Oxford Meetup - May 2024.pptx
 
Custom Approval Process: A New Perspective, Pavel Hrbacek & Anindya Halder
Custom Approval Process: A New Perspective, Pavel Hrbacek & Anindya HalderCustom Approval Process: A New Perspective, Pavel Hrbacek & Anindya Halder
Custom Approval Process: A New Perspective, Pavel Hrbacek & Anindya Halder
 
Slack (or Teams) Automation for Bonterra Impact Management (fka Social Soluti...
Slack (or Teams) Automation for Bonterra Impact Management (fka Social Soluti...Slack (or Teams) Automation for Bonterra Impact Management (fka Social Soluti...
Slack (or Teams) Automation for Bonterra Impact Management (fka Social Soluti...
 

MPEC2: Multilayer and Pipeline Video Encoding on the Computing Continuum