SlideShare a Scribd company logo
Agility in
Software 2.0
– Notebook Interfaces
and MLOps with
Buttresses and Rebars
6th Int’l. Conference on Lean and
Agile Software Development
January 22, 2022
RISE Research Institutes of Sweden
CC
BY-NC
2.0
K.
Edblom
Markus Borg
@mrksbrg
mrksbrg.com
Agile iterates fast.
Data science moves faster!
(CC
CC BY-NC 2.0 K. Edblom
Who is Markus?
• Development engineer, ABB 2007-2010
– Process automation
– Editor and compiler development
• PhD student, LundUniversity 2010-2015
– Requirements engineering and testing
– Traceability, change impact analysis
• Senior researcher, RISE 2015-
– Software engineering for AI/ML
Also Markus…
• Member of the board, Swedsoft
– Influence decision makers
– Write comment letters
– Facilitate networking
• Adjunct lecturer, Lund University
– Teaching software engineering
Software 2.0
Computational
Notebooks
MLOps
(CC BY-NY-ND 2.0 Flick: *Hajee)
Software 2.0?
”a large portion of real-world problems have the
property that it is significantly easier
to collect the data than to
explicitly write the program”
https://medium.com/@karpathy/software-2-0-a64152b37c35
Andrej Karpathy
Director of AI at Tesla
9
Karpathy’s Software 2.0
Software 1.0
• Humans write source code
• Other humans comprehend the
source code
Software 2.0
• Humans curate data and specify goals
• Backprop. and gradient descent produces
millions of weights
• Humans cannot comprehend mapping
from input to output
“computers’ ability to learn without
being explicitly programmed”
- Arthur Samuel (1959)
11
12
Cars
Car
f(x)
Not cars
Supervised learning
Neural
network
YOLO (You Only Look Once) by Redmon et al. (2016)
13
CC BY-NC 2.0
Flickr: @andreas_komodromos
15
Another ware!
Hardware
Software
AI
MLware
16
17
Established software quality
assurance no longer sufficient
18
MLware is different
Software engineering practices throughout the lifecycle must evolve
– New types of requirements (explainability, fairness, …)
– New architectures (system, neural networks, …)
– Configuration management (data, models, parameters, …)
– Testing levels (data, model, …)
– Operations (scaling, monitoring, retraining, …)
Computational
Notebooks
Markus
Borg
Martin
Jakobsson
Johan
Henriksson
20
Oskar
Handmark
21
Data science is not software engineering
Established best practices might not apply
Biggest difference is how experimental it is
• Maximum agility needed to quickly reach insights
CACE principle
• “Changing Anything Changes Everything”
22
Also different peopleware
Data scientists are not software engineers
• and maybe not software developers
• perhaps not even computer scientists
Data scientists master the art of taming data and train models
Analogy: research on development of scientific software
23
“Literate programming”
- Donald E. Knuth (1984)
24
Mix source code and explanatory text
Computational notebooks
Extended into “literate computing” with
three types of cells
• (Python) Source code
• Explanatory text describing the code
• Visual content
Promotes interaction!
Interpreter runs in the background
Cells can be executed in any order
Very agile, but very messy
26
27
Notebook collaboration pain points
Concurrent editing is confusing
Code management and refactoring
Replicability is low
Productization of a Notebook proof-of-concept is a big step
CHI’20
28
28
Very agile!
Loads of tools!
29
30
30
Jakobsson and Henriksson (2021)
https://lup.lub.lu.se/student-papers/search/publication/9066685
https://github.com/backtick-se/cowait
dataset versioning?
dependency management?
deployment?
real-time performance?
version control?
repeatability?
scalability?
monitoring?
feature store? model management?
Data Features Training Model
MLware sounds simple!
31
Sculley et al. (2015), Hidden Technical Debt in
Machine Learning Systems
In Proc. of the Advances in Neural Information Processing Systems 28
MLOps
34
What is
MLOps
anyway?
36
“MLOps is the standardization and
streamlining of machine learning life
cycle management”
As an engineering discipline, MLOps is a set of practices
that combines Machine Learning, DevOps and Data Engineering,
which aims to
deploy and maintain ML systems in production reliably and efficiently.
- Treveil et al., Introducing MLOps, O'Reilley
Media, Inc., 2020.
(CC BY 2.0 Flick: Kuhnt)
DevOps with ML specific additions
• Experiment tracking
• Model management
37
MLOps
Please!
How?
Fully managed end-to-end
solution by the hyperscalers
Custom-built on-prem pipelines
38
40
Data
Validation
Model
Training
Model
Validation
Packaging Deploy in
Test Env.
Deploy in
Prod. Env.
Training Deployment
Model
Monitoring
Software Development
ML Development
Data
Repos
Code
Repos
ML Ops
Release
Management
40
Published April 21, 2021
High Risk
Unacceptable
Prohibited:
Social Scoring, Public Facial Detection,
User Manipulation, …
Minimal Risk
Business as usual:
Video games, Camera
Effects, Spamfilters, …
Limited Risk
Increased Transparency:
Chatbots, Deep Fakes,
Emotion Recognition, …
Conformity Assessment:
1) X under product safety regulations
2) Education, employment, healthcare,
immigration, justice, …
43
High-risk AI providers must
• Document internal rigorous engineering activities
• Quality assurance, fairness, traceability, auditability, …
• Pass independent conformance assessment
• National Supervisory Authority
• Monitoring to continuously check compliance
If not? GDPR style punishment…
• Up to 6% global annual turnover!
44
Agile iterates fast.
Data science moves faster!
(CC
CC BY-NC 2.0 K. Edblom
Agility in
Software 2.0
– Notebook Interfaces
and MLOps with
Buttresses and Rebars
6th Int’l. Conference on Lean and
Agile Software Development
January 22, 2022
RISE Research Institutes of Sweden
CC
BY-NC
2.0
K.
Edblom
Markus Borg
@mrksbrg
mrksbrg.com

More Related Content

Similar to Agility in Software 2.0 - Notebook Interfaces and MLOps with Buttresses and Rebars

Future of jobs and digital economy citi conference 090618
Future of jobs and digital economy citi conference 090618Future of jobs and digital economy citi conference 090618
Future of jobs and digital economy citi conference 090618
Economic Strategy Institute
 
Chapter 1(1) system development life .ppt
Chapter 1(1) system development life .pptChapter 1(1) system development life .ppt
Chapter 1(1) system development life .ppt
DoaaRezk5
 
Software testing presentation for engineering students of computer science
Software testing presentation for engineering students of computer scienceSoftware testing presentation for engineering students of computer science
Software testing presentation for engineering students of computer science
AmaanAli86
 
Patterns for New Software Engineering: Machine Learning and IoT Engineering P...
Patterns for New Software Engineering: Machine Learning and IoT Engineering P...Patterns for New Software Engineering: Machine Learning and IoT Engineering P...
Patterns for New Software Engineering: Machine Learning and IoT Engineering P...
Hironori Washizaki
 
Studying Software Engineering Patterns for Designing Machine Learning Systems
Studying Software Engineering Patterns for Designing Machine Learning SystemsStudying Software Engineering Patterns for Designing Machine Learning Systems
Studying Software Engineering Patterns for Designing Machine Learning Systems
Hironori Washizaki
 
2014 01-ticosa
2014 01-ticosa2014 01-ticosa
2014 01-ticosa
Pharo
 
Iwesep19.ppt
Iwesep19.pptIwesep19.ppt
INCOSE IS 2019: AI and Systems Engineering
INCOSE IS 2019: AI and Systems EngineeringINCOSE IS 2019: AI and Systems Engineering
INCOSE IS 2019: AI and Systems Engineering
CARLOS III UNIVERSITY OF MADRID
 
Antwerp Management School Alumni Internet of Things Meetup June 24th 2015
Antwerp Management School Alumni Internet of Things Meetup June 24th 2015Antwerp Management School Alumni Internet of Things Meetup June 24th 2015
Antwerp Management School Alumni Internet of Things Meetup June 24th 2015
Antwerp Management School
 
Mastering Software Variability for Innovation and Science
Mastering Software Variability for Innovation and ScienceMastering Software Variability for Innovation and Science
Mastering Software Variability for Innovation and Science
University of Rennes, INSA Rennes, Inria/IRISA, CNRS
 
Kallio Chipster Bosc2008
Kallio Chipster Bosc2008Kallio Chipster Bosc2008
Kallio Chipster Bosc2008
bosc_2008
 
Chapter 1,2,3 Module I -Foundations for SD.pptx
Chapter 1,2,3 Module I -Foundations for SD.pptxChapter 1,2,3 Module I -Foundations for SD.pptx
Chapter 1,2,3 Module I -Foundations for SD.pptx
TimmyChok1
 
Keynote at-icpc-2020
Keynote at-icpc-2020Keynote at-icpc-2020
Keynote at-icpc-2020
Ralf Laemmel
 
AI4SE: Challenges and opportunities in the integration of Systems Engineering...
AI4SE: Challenges and opportunities in the integration of Systems Engineering...AI4SE: Challenges and opportunities in the integration of Systems Engineering...
AI4SE: Challenges and opportunities in the integration of Systems Engineering...
CARLOS III UNIVERSITY OF MADRID
 
Bridging the Gap: from Data Science to Production
Bridging the Gap: from Data Science to ProductionBridging the Gap: from Data Science to Production
Bridging the Gap: from Data Science to Production
Florian Wilhelm
 
NECST @ Microsoft
NECST @ Microsoft NECST @ Microsoft
[2015/2016] Software systems engineering PRINCIPLES
[2015/2016] Software systems engineering PRINCIPLES[2015/2016] Software systems engineering PRINCIPLES
[2015/2016] Software systems engineering PRINCIPLES
Ivano Malavolta
 
MSc-Course-Information-2023.pdf
MSc-Course-Information-2023.pdfMSc-Course-Information-2023.pdf
MSc-Course-Information-2023.pdf
SasinduLakshan2
 
Engineering Large Scale Cyber-Physical Systems
Engineering Large Scale Cyber-Physical SystemsEngineering Large Scale Cyber-Physical Systems
Engineering Large Scale Cyber-Physical Systems
Bob Marcus
 
Pattern driven Enterprise Architecture
Pattern driven Enterprise ArchitecturePattern driven Enterprise Architecture
Pattern driven Enterprise Architecture
WSO2
 

Similar to Agility in Software 2.0 - Notebook Interfaces and MLOps with Buttresses and Rebars (20)

Future of jobs and digital economy citi conference 090618
Future of jobs and digital economy citi conference 090618Future of jobs and digital economy citi conference 090618
Future of jobs and digital economy citi conference 090618
 
Chapter 1(1) system development life .ppt
Chapter 1(1) system development life .pptChapter 1(1) system development life .ppt
Chapter 1(1) system development life .ppt
 
Software testing presentation for engineering students of computer science
Software testing presentation for engineering students of computer scienceSoftware testing presentation for engineering students of computer science
Software testing presentation for engineering students of computer science
 
Patterns for New Software Engineering: Machine Learning and IoT Engineering P...
Patterns for New Software Engineering: Machine Learning and IoT Engineering P...Patterns for New Software Engineering: Machine Learning and IoT Engineering P...
Patterns for New Software Engineering: Machine Learning and IoT Engineering P...
 
Studying Software Engineering Patterns for Designing Machine Learning Systems
Studying Software Engineering Patterns for Designing Machine Learning SystemsStudying Software Engineering Patterns for Designing Machine Learning Systems
Studying Software Engineering Patterns for Designing Machine Learning Systems
 
2014 01-ticosa
2014 01-ticosa2014 01-ticosa
2014 01-ticosa
 
Iwesep19.ppt
Iwesep19.pptIwesep19.ppt
Iwesep19.ppt
 
INCOSE IS 2019: AI and Systems Engineering
INCOSE IS 2019: AI and Systems EngineeringINCOSE IS 2019: AI and Systems Engineering
INCOSE IS 2019: AI and Systems Engineering
 
Antwerp Management School Alumni Internet of Things Meetup June 24th 2015
Antwerp Management School Alumni Internet of Things Meetup June 24th 2015Antwerp Management School Alumni Internet of Things Meetup June 24th 2015
Antwerp Management School Alumni Internet of Things Meetup June 24th 2015
 
Mastering Software Variability for Innovation and Science
Mastering Software Variability for Innovation and ScienceMastering Software Variability for Innovation and Science
Mastering Software Variability for Innovation and Science
 
Kallio Chipster Bosc2008
Kallio Chipster Bosc2008Kallio Chipster Bosc2008
Kallio Chipster Bosc2008
 
Chapter 1,2,3 Module I -Foundations for SD.pptx
Chapter 1,2,3 Module I -Foundations for SD.pptxChapter 1,2,3 Module I -Foundations for SD.pptx
Chapter 1,2,3 Module I -Foundations for SD.pptx
 
Keynote at-icpc-2020
Keynote at-icpc-2020Keynote at-icpc-2020
Keynote at-icpc-2020
 
AI4SE: Challenges and opportunities in the integration of Systems Engineering...
AI4SE: Challenges and opportunities in the integration of Systems Engineering...AI4SE: Challenges and opportunities in the integration of Systems Engineering...
AI4SE: Challenges and opportunities in the integration of Systems Engineering...
 
Bridging the Gap: from Data Science to Production
Bridging the Gap: from Data Science to ProductionBridging the Gap: from Data Science to Production
Bridging the Gap: from Data Science to Production
 
NECST @ Microsoft
NECST @ Microsoft NECST @ Microsoft
NECST @ Microsoft
 
[2015/2016] Software systems engineering PRINCIPLES
[2015/2016] Software systems engineering PRINCIPLES[2015/2016] Software systems engineering PRINCIPLES
[2015/2016] Software systems engineering PRINCIPLES
 
MSc-Course-Information-2023.pdf
MSc-Course-Information-2023.pdfMSc-Course-Information-2023.pdf
MSc-Course-Information-2023.pdf
 
Engineering Large Scale Cyber-Physical Systems
Engineering Large Scale Cyber-Physical SystemsEngineering Large Scale Cyber-Physical Systems
Engineering Large Scale Cyber-Physical Systems
 
Pattern driven Enterprise Architecture
Pattern driven Enterprise ArchitecturePattern driven Enterprise Architecture
Pattern driven Enterprise Architecture
 

More from Markus Borg

Quality Assurance Of Generative Dialog Models in an evolving Conversationa...
Quality Assurance  Of  Generative Dialog Models in an evolving  Conversationa...Quality Assurance  Of  Generative Dialog Models in an evolving  Conversationa...
Quality Assurance Of Generative Dialog Models in an evolving Conversationa...
Markus Borg
 
Test Automation with Grad-CAM Heatmaps - A Future Pipe Segment in MLOps for V...
Test Automation with Grad-CAM Heatmaps - A Future Pipe Segment in MLOps for V...Test Automation with Grad-CAM Heatmaps - A Future Pipe Segment in MLOps for V...
Test Automation with Grad-CAM Heatmaps - A Future Pipe Segment in MLOps for V...
Markus Borg
 
Digital Twins Are Not Monozygotic - Cross-Replicating ADAS Testing in Two Ind...
Digital Twins Are Not Monozygotic - Cross-Replicating ADAS Testing in Two Ind...Digital Twins Are Not Monozygotic - Cross-Replicating ADAS Testing in Two Ind...
Digital Twins Are Not Monozygotic - Cross-Replicating ADAS Testing in Two Ind...
Markus Borg
 
Illuminating a Blind Spot in Digitalization - Software Development in Sweden’...
Illuminating a Blind Spot in Digitalization - Software Development in Sweden’...Illuminating a Blind Spot in Digitalization - Software Development in Sweden’...
Illuminating a Blind Spot in Digitalization - Software Development in Sweden’...
Markus Borg
 
Trained, Not Coded - Still Safe?
Trained, Not Coded - Still Safe?Trained, Not Coded - Still Safe?
Trained, Not Coded - Still Safe?
Markus Borg
 
SZZ Unleashed: An Open Implementation of the SZZ Algorithm
SZZ Unleashed:  An Open Implementation of the SZZ AlgorithmSZZ Unleashed:  An Open Implementation of the SZZ Algorithm
SZZ Unleashed: An Open Implementation of the SZZ Algorithm
Markus Borg
 
Explainability First! Cousteauing the Depths of Neural Networks
Explainability First! Cousteauing the Depths of Neural NetworksExplainability First! Cousteauing the Depths of Neural Networks
Explainability First! Cousteauing the Depths of Neural Networks
Markus Borg
 
Test Automation Research... Is That Really Needed in 2018?
Test Automation Research... Is That Really Needed in 2018?Test Automation Research... Is That Really Needed in 2018?
Test Automation Research... Is That Really Needed in 2018?
Markus Borg
 
Supporting Change Impact Analysis Using a Recommendation System - An Industri...
Supporting Change Impact Analysis Using a Recommendation System - An Industri...Supporting Change Impact Analysis Using a Recommendation System - An Industri...
Supporting Change Impact Analysis Using a Recommendation System - An Industri...
Markus Borg
 
Component Source Origin Decisions in Practice - A Survey of Decision Making i...
Component Source Origin Decisions in Practice - A Survey of Decision Making i...Component Source Origin Decisions in Practice - A Survey of Decision Making i...
Component Source Origin Decisions in Practice - A Survey of Decision Making i...
Markus Borg
 
Enabling Visual Analytics with Unity - Exploring Regression Test Results in A...
Enabling Visual Analytics with Unity - Exploring Regression Test Results in A...Enabling Visual Analytics with Unity - Exploring Regression Test Results in A...
Enabling Visual Analytics with Unity - Exploring Regression Test Results in A...
Markus Borg
 
Testing Quality Requirements of a System-of-Systems in the Public Sector - Ch...
Testing Quality Requirements of a System-of-Systems in the Public Sector - Ch...Testing Quality Requirements of a System-of-Systems in the Public Sector - Ch...
Testing Quality Requirements of a System-of-Systems in the Public Sector - Ch...
Markus Borg
 
From Bugs to Decision Support - Selected Research Highlights
From Bugs to Decision Support - Selected Research HighlightsFrom Bugs to Decision Support - Selected Research Highlights
From Bugs to Decision Support - Selected Research Highlights
Markus Borg
 
Comparing Cousins – A Harmonized Analysis of Racket Sport Set Scores using Ra...
Comparing Cousins – A Harmonized Analysis of Racket Sport Set Scores using Ra...Comparing Cousins – A Harmonized Analysis of Racket Sport Set Scores using Ra...
Comparing Cousins – A Harmonized Analysis of Racket Sport Set Scores using Ra...
Markus Borg
 
Automation in the Bug Flow - Machine Learning for Triaging and Tracing
Automation in the Bug Flow - Machine Learning for Triaging and TracingAutomation in the Bug Flow - Machine Learning for Triaging and Tracing
Automation in the Bug Flow - Machine Learning for Triaging and Tracing
Markus Borg
 
Revisiting the Challenges in Aligning RE and V&V: Experiences from the Public...
Revisiting the Challenges in Aligning RE and V&V: Experiences from the Public...Revisiting the Challenges in Aligning RE and V&V: Experiences from the Public...
Revisiting the Challenges in Aligning RE and V&V: Experiences from the Public...
Markus Borg
 
Enabling Traceability Reuse for Impact Analyses - Toward a Recommendation Sys...
Enabling Traceability Reuse for Impact Analyses - Toward a Recommendation Sys...Enabling Traceability Reuse for Impact Analyses - Toward a Recommendation Sys...
Enabling Traceability Reuse for Impact Analyses - Toward a Recommendation Sys...
Markus Borg
 
Analyzing networks of issue reports
Analyzing networks of issue reportsAnalyzing networks of issue reports
Analyzing networks of issue reports
Markus Borg
 
Findability through Traceability - A Realistic Application of Candidate Tr...
Findability through Traceability  - A Realistic Application of Candidate Tr...Findability through Traceability  - A Realistic Application of Candidate Tr...
Findability through Traceability - A Realistic Application of Candidate Tr...
Markus Borg
 
Recommendation Systems for Issue Management
Recommendation Systems for Issue ManagementRecommendation Systems for Issue Management
Recommendation Systems for Issue Management
Markus Borg
 

More from Markus Borg (20)

Quality Assurance Of Generative Dialog Models in an evolving Conversationa...
Quality Assurance  Of  Generative Dialog Models in an evolving  Conversationa...Quality Assurance  Of  Generative Dialog Models in an evolving  Conversationa...
Quality Assurance Of Generative Dialog Models in an evolving Conversationa...
 
Test Automation with Grad-CAM Heatmaps - A Future Pipe Segment in MLOps for V...
Test Automation with Grad-CAM Heatmaps - A Future Pipe Segment in MLOps for V...Test Automation with Grad-CAM Heatmaps - A Future Pipe Segment in MLOps for V...
Test Automation with Grad-CAM Heatmaps - A Future Pipe Segment in MLOps for V...
 
Digital Twins Are Not Monozygotic - Cross-Replicating ADAS Testing in Two Ind...
Digital Twins Are Not Monozygotic - Cross-Replicating ADAS Testing in Two Ind...Digital Twins Are Not Monozygotic - Cross-Replicating ADAS Testing in Two Ind...
Digital Twins Are Not Monozygotic - Cross-Replicating ADAS Testing in Two Ind...
 
Illuminating a Blind Spot in Digitalization - Software Development in Sweden’...
Illuminating a Blind Spot in Digitalization - Software Development in Sweden’...Illuminating a Blind Spot in Digitalization - Software Development in Sweden’...
Illuminating a Blind Spot in Digitalization - Software Development in Sweden’...
 
Trained, Not Coded - Still Safe?
Trained, Not Coded - Still Safe?Trained, Not Coded - Still Safe?
Trained, Not Coded - Still Safe?
 
SZZ Unleashed: An Open Implementation of the SZZ Algorithm
SZZ Unleashed:  An Open Implementation of the SZZ AlgorithmSZZ Unleashed:  An Open Implementation of the SZZ Algorithm
SZZ Unleashed: An Open Implementation of the SZZ Algorithm
 
Explainability First! Cousteauing the Depths of Neural Networks
Explainability First! Cousteauing the Depths of Neural NetworksExplainability First! Cousteauing the Depths of Neural Networks
Explainability First! Cousteauing the Depths of Neural Networks
 
Test Automation Research... Is That Really Needed in 2018?
Test Automation Research... Is That Really Needed in 2018?Test Automation Research... Is That Really Needed in 2018?
Test Automation Research... Is That Really Needed in 2018?
 
Supporting Change Impact Analysis Using a Recommendation System - An Industri...
Supporting Change Impact Analysis Using a Recommendation System - An Industri...Supporting Change Impact Analysis Using a Recommendation System - An Industri...
Supporting Change Impact Analysis Using a Recommendation System - An Industri...
 
Component Source Origin Decisions in Practice - A Survey of Decision Making i...
Component Source Origin Decisions in Practice - A Survey of Decision Making i...Component Source Origin Decisions in Practice - A Survey of Decision Making i...
Component Source Origin Decisions in Practice - A Survey of Decision Making i...
 
Enabling Visual Analytics with Unity - Exploring Regression Test Results in A...
Enabling Visual Analytics with Unity - Exploring Regression Test Results in A...Enabling Visual Analytics with Unity - Exploring Regression Test Results in A...
Enabling Visual Analytics with Unity - Exploring Regression Test Results in A...
 
Testing Quality Requirements of a System-of-Systems in the Public Sector - Ch...
Testing Quality Requirements of a System-of-Systems in the Public Sector - Ch...Testing Quality Requirements of a System-of-Systems in the Public Sector - Ch...
Testing Quality Requirements of a System-of-Systems in the Public Sector - Ch...
 
From Bugs to Decision Support - Selected Research Highlights
From Bugs to Decision Support - Selected Research HighlightsFrom Bugs to Decision Support - Selected Research Highlights
From Bugs to Decision Support - Selected Research Highlights
 
Comparing Cousins – A Harmonized Analysis of Racket Sport Set Scores using Ra...
Comparing Cousins – A Harmonized Analysis of Racket Sport Set Scores using Ra...Comparing Cousins – A Harmonized Analysis of Racket Sport Set Scores using Ra...
Comparing Cousins – A Harmonized Analysis of Racket Sport Set Scores using Ra...
 
Automation in the Bug Flow - Machine Learning for Triaging and Tracing
Automation in the Bug Flow - Machine Learning for Triaging and TracingAutomation in the Bug Flow - Machine Learning for Triaging and Tracing
Automation in the Bug Flow - Machine Learning for Triaging and Tracing
 
Revisiting the Challenges in Aligning RE and V&V: Experiences from the Public...
Revisiting the Challenges in Aligning RE and V&V: Experiences from the Public...Revisiting the Challenges in Aligning RE and V&V: Experiences from the Public...
Revisiting the Challenges in Aligning RE and V&V: Experiences from the Public...
 
Enabling Traceability Reuse for Impact Analyses - Toward a Recommendation Sys...
Enabling Traceability Reuse for Impact Analyses - Toward a Recommendation Sys...Enabling Traceability Reuse for Impact Analyses - Toward a Recommendation Sys...
Enabling Traceability Reuse for Impact Analyses - Toward a Recommendation Sys...
 
Analyzing networks of issue reports
Analyzing networks of issue reportsAnalyzing networks of issue reports
Analyzing networks of issue reports
 
Findability through Traceability - A Realistic Application of Candidate Tr...
Findability through Traceability  - A Realistic Application of Candidate Tr...Findability through Traceability  - A Realistic Application of Candidate Tr...
Findability through Traceability - A Realistic Application of Candidate Tr...
 
Recommendation Systems for Issue Management
Recommendation Systems for Issue ManagementRecommendation Systems for Issue Management
Recommendation Systems for Issue Management
 

Recently uploaded

14 th Edition of International conference on computer vision
14 th Edition of International conference on computer vision14 th Edition of International conference on computer vision
14 th Edition of International conference on computer vision
ShulagnaSarkar2
 
The Key to Digital Success_ A Comprehensive Guide to Continuous Testing Integ...
The Key to Digital Success_ A Comprehensive Guide to Continuous Testing Integ...The Key to Digital Success_ A Comprehensive Guide to Continuous Testing Integ...
The Key to Digital Success_ A Comprehensive Guide to Continuous Testing Integ...
kalichargn70th171
 
What’s New in Odoo 17 – A Complete Roadmap
What’s New in Odoo 17 – A Complete RoadmapWhat’s New in Odoo 17 – A Complete Roadmap
What’s New in Odoo 17 – A Complete Roadmap
Envertis Software Solutions
 
Project Management: The Role of Project Dashboards.pdf
Project Management: The Role of Project Dashboards.pdfProject Management: The Role of Project Dashboards.pdf
Project Management: The Role of Project Dashboards.pdf
Karya Keeper
 
INTRODUCTION TO AI CLASSICAL THEORY TARGETED EXAMPLES
INTRODUCTION TO AI CLASSICAL THEORY TARGETED EXAMPLESINTRODUCTION TO AI CLASSICAL THEORY TARGETED EXAMPLES
INTRODUCTION TO AI CLASSICAL THEORY TARGETED EXAMPLES
anfaltahir1010
 
How Can Hiring A Mobile App Development Company Help Your Business Grow?
How Can Hiring A Mobile App Development Company Help Your Business Grow?How Can Hiring A Mobile App Development Company Help Your Business Grow?
How Can Hiring A Mobile App Development Company Help Your Business Grow?
ToXSL Technologies
 
ACE - Team 24 Wrapup event at ahmedabad.
ACE - Team 24 Wrapup event at ahmedabad.ACE - Team 24 Wrapup event at ahmedabad.
ACE - Team 24 Wrapup event at ahmedabad.
Maitrey Patel
 
Modelling Up - DDDEurope 2024 - Amsterdam
Modelling Up - DDDEurope 2024 - AmsterdamModelling Up - DDDEurope 2024 - Amsterdam
Modelling Up - DDDEurope 2024 - Amsterdam
Alberto Brandolini
 
UI5con 2024 - Bring Your Own Design System
UI5con 2024 - Bring Your Own Design SystemUI5con 2024 - Bring Your Own Design System
UI5con 2024 - Bring Your Own Design System
Peter Muessig
 
E-Invoicing Implementation: A Step-by-Step Guide for Saudi Arabian Companies
E-Invoicing Implementation: A Step-by-Step Guide for Saudi Arabian CompaniesE-Invoicing Implementation: A Step-by-Step Guide for Saudi Arabian Companies
E-Invoicing Implementation: A Step-by-Step Guide for Saudi Arabian Companies
Quickdice ERP
 
Using Query Store in Azure PostgreSQL to Understand Query Performance
Using Query Store in Azure PostgreSQL to Understand Query PerformanceUsing Query Store in Azure PostgreSQL to Understand Query Performance
Using Query Store in Azure PostgreSQL to Understand Query Performance
Grant Fritchey
 
Unlock the Secrets to Effortless Video Creation with Invideo: Your Ultimate G...
Unlock the Secrets to Effortless Video Creation with Invideo: Your Ultimate G...Unlock the Secrets to Effortless Video Creation with Invideo: Your Ultimate G...
Unlock the Secrets to Effortless Video Creation with Invideo: Your Ultimate G...
The Third Creative Media
 
一比一原版(USF毕业证)旧金山大学毕业证如何办理
一比一原版(USF毕业证)旧金山大学毕业证如何办理一比一原版(USF毕业证)旧金山大学毕业证如何办理
一比一原版(USF毕业证)旧金山大学毕业证如何办理
dakas1
 
Oracle Database 19c New Features for DBAs and Developers.pptx
Oracle Database 19c New Features for DBAs and Developers.pptxOracle Database 19c New Features for DBAs and Developers.pptx
Oracle Database 19c New Features for DBAs and Developers.pptx
Remote DBA Services
 
DECODING JAVA THREAD DUMPS: MASTER THE ART OF ANALYSIS
DECODING JAVA THREAD DUMPS: MASTER THE ART OF ANALYSISDECODING JAVA THREAD DUMPS: MASTER THE ART OF ANALYSIS
DECODING JAVA THREAD DUMPS: MASTER THE ART OF ANALYSIS
Tier1 app
 
Quarter 3 SLRP grade 9.. gshajsbhhaheabh
Quarter 3 SLRP grade 9.. gshajsbhhaheabhQuarter 3 SLRP grade 9.. gshajsbhhaheabh
Quarter 3 SLRP grade 9.. gshajsbhhaheabh
aisafed42
 
All you need to know about Spring Boot and GraalVM
All you need to know about Spring Boot and GraalVMAll you need to know about Spring Boot and GraalVM
All you need to know about Spring Boot and GraalVM
Alina Yurenko
 
UI5con 2024 - Boost Your Development Experience with UI5 Tooling Extensions
UI5con 2024 - Boost Your Development Experience with UI5 Tooling ExtensionsUI5con 2024 - Boost Your Development Experience with UI5 Tooling Extensions
UI5con 2024 - Boost Your Development Experience with UI5 Tooling Extensions
Peter Muessig
 
Energy consumption of Database Management - Florina Jonuzi
Energy consumption of Database Management - Florina JonuziEnergy consumption of Database Management - Florina Jonuzi
Energy consumption of Database Management - Florina Jonuzi
Green Software Development
 
Enhanced Screen Flows UI/UX using SLDS with Tom Kitt
Enhanced Screen Flows UI/UX using SLDS with Tom KittEnhanced Screen Flows UI/UX using SLDS with Tom Kitt
Enhanced Screen Flows UI/UX using SLDS with Tom Kitt
Peter Caitens
 

Recently uploaded (20)

14 th Edition of International conference on computer vision
14 th Edition of International conference on computer vision14 th Edition of International conference on computer vision
14 th Edition of International conference on computer vision
 
The Key to Digital Success_ A Comprehensive Guide to Continuous Testing Integ...
The Key to Digital Success_ A Comprehensive Guide to Continuous Testing Integ...The Key to Digital Success_ A Comprehensive Guide to Continuous Testing Integ...
The Key to Digital Success_ A Comprehensive Guide to Continuous Testing Integ...
 
What’s New in Odoo 17 – A Complete Roadmap
What’s New in Odoo 17 – A Complete RoadmapWhat’s New in Odoo 17 – A Complete Roadmap
What’s New in Odoo 17 – A Complete Roadmap
 
Project Management: The Role of Project Dashboards.pdf
Project Management: The Role of Project Dashboards.pdfProject Management: The Role of Project Dashboards.pdf
Project Management: The Role of Project Dashboards.pdf
 
INTRODUCTION TO AI CLASSICAL THEORY TARGETED EXAMPLES
INTRODUCTION TO AI CLASSICAL THEORY TARGETED EXAMPLESINTRODUCTION TO AI CLASSICAL THEORY TARGETED EXAMPLES
INTRODUCTION TO AI CLASSICAL THEORY TARGETED EXAMPLES
 
How Can Hiring A Mobile App Development Company Help Your Business Grow?
How Can Hiring A Mobile App Development Company Help Your Business Grow?How Can Hiring A Mobile App Development Company Help Your Business Grow?
How Can Hiring A Mobile App Development Company Help Your Business Grow?
 
ACE - Team 24 Wrapup event at ahmedabad.
ACE - Team 24 Wrapup event at ahmedabad.ACE - Team 24 Wrapup event at ahmedabad.
ACE - Team 24 Wrapup event at ahmedabad.
 
Modelling Up - DDDEurope 2024 - Amsterdam
Modelling Up - DDDEurope 2024 - AmsterdamModelling Up - DDDEurope 2024 - Amsterdam
Modelling Up - DDDEurope 2024 - Amsterdam
 
UI5con 2024 - Bring Your Own Design System
UI5con 2024 - Bring Your Own Design SystemUI5con 2024 - Bring Your Own Design System
UI5con 2024 - Bring Your Own Design System
 
E-Invoicing Implementation: A Step-by-Step Guide for Saudi Arabian Companies
E-Invoicing Implementation: A Step-by-Step Guide for Saudi Arabian CompaniesE-Invoicing Implementation: A Step-by-Step Guide for Saudi Arabian Companies
E-Invoicing Implementation: A Step-by-Step Guide for Saudi Arabian Companies
 
Using Query Store in Azure PostgreSQL to Understand Query Performance
Using Query Store in Azure PostgreSQL to Understand Query PerformanceUsing Query Store in Azure PostgreSQL to Understand Query Performance
Using Query Store in Azure PostgreSQL to Understand Query Performance
 
Unlock the Secrets to Effortless Video Creation with Invideo: Your Ultimate G...
Unlock the Secrets to Effortless Video Creation with Invideo: Your Ultimate G...Unlock the Secrets to Effortless Video Creation with Invideo: Your Ultimate G...
Unlock the Secrets to Effortless Video Creation with Invideo: Your Ultimate G...
 
一比一原版(USF毕业证)旧金山大学毕业证如何办理
一比一原版(USF毕业证)旧金山大学毕业证如何办理一比一原版(USF毕业证)旧金山大学毕业证如何办理
一比一原版(USF毕业证)旧金山大学毕业证如何办理
 
Oracle Database 19c New Features for DBAs and Developers.pptx
Oracle Database 19c New Features for DBAs and Developers.pptxOracle Database 19c New Features for DBAs and Developers.pptx
Oracle Database 19c New Features for DBAs and Developers.pptx
 
DECODING JAVA THREAD DUMPS: MASTER THE ART OF ANALYSIS
DECODING JAVA THREAD DUMPS: MASTER THE ART OF ANALYSISDECODING JAVA THREAD DUMPS: MASTER THE ART OF ANALYSIS
DECODING JAVA THREAD DUMPS: MASTER THE ART OF ANALYSIS
 
Quarter 3 SLRP grade 9.. gshajsbhhaheabh
Quarter 3 SLRP grade 9.. gshajsbhhaheabhQuarter 3 SLRP grade 9.. gshajsbhhaheabh
Quarter 3 SLRP grade 9.. gshajsbhhaheabh
 
All you need to know about Spring Boot and GraalVM
All you need to know about Spring Boot and GraalVMAll you need to know about Spring Boot and GraalVM
All you need to know about Spring Boot and GraalVM
 
UI5con 2024 - Boost Your Development Experience with UI5 Tooling Extensions
UI5con 2024 - Boost Your Development Experience with UI5 Tooling ExtensionsUI5con 2024 - Boost Your Development Experience with UI5 Tooling Extensions
UI5con 2024 - Boost Your Development Experience with UI5 Tooling Extensions
 
Energy consumption of Database Management - Florina Jonuzi
Energy consumption of Database Management - Florina JonuziEnergy consumption of Database Management - Florina Jonuzi
Energy consumption of Database Management - Florina Jonuzi
 
Enhanced Screen Flows UI/UX using SLDS with Tom Kitt
Enhanced Screen Flows UI/UX using SLDS with Tom KittEnhanced Screen Flows UI/UX using SLDS with Tom Kitt
Enhanced Screen Flows UI/UX using SLDS with Tom Kitt
 

Agility in Software 2.0 - Notebook Interfaces and MLOps with Buttresses and Rebars