SlideShare una empresa de Scribd logo
1 de 28
Descargar para leer sin conexión
Project Management
in AI
Nathanael Weill, PhD
About me
2
Master in Bioinformatics Strasbourg University (France)
Ph.D. In Pharmaceutical Science. Strasbourg University (France)
Post-Doc at McGill (Computational chemistry)
Post-Doc at UdeM (Computational Biology)
Senior Data Scientist at Mnubo (IoT company)
Nathanael Weill
What is AI?
Why AI?
AI project phases
Warnings
Optimize the process
Outlines
3
The theory and development of computer systems able to perform
tasks that normally require human intelligence, such as visual perception,
speech recognition, decision-making, and translation between languages. (google
dictionary)
What is AI?
4
Prediction: The process of filling in
missing information. Prediction takes data
you have to generate data you don’t have.
How does it work?
5
computer
Input data
Output
Function
computer
Input data
Function
Output
computer
New Input data
Prediction
Function
Why AI?
6
Prediction became cheaper
Data
AccuracyClient
The AI race
7
Symposium 2019 : Gestion de projet en Intelligence Artificielle
Big Data & Data Science Projects
Failure Rate
9
GARTNER
ESTIMATED
85%
of big data projects
fail (2017). The
initial estimation
was 60% (GARTNER
2016)
THROUGH 2020
80%
of AI projects will
remain alchemy,
run by wizards
whose talents will
not scale in the
organization.
(GARTNER 2018)
THROUGH 2022
20%
of analytic insights
will deliver
business
outcomes. (GARTNER
2018)
EXECUTIVE
SURVEY
77%
respondents say
that “business
adoption” of big
data and AI
initiatives
continues to
represent a
challenge for their
organizations
(NEWVANTAGE
PARTNERS 2019)
A recipe for failure
We must define the solution as an entire process.
If prediction is the end of the solution, the entire solution might fail because:
• The output does not correspond to the operational needs.
• The operator will not use it due to complexification of the process.
• No one is capable of managing the algorithms if something goes wrong.
• …
Data Algorithm Prediction
Data Algorithm Prediction
Judgment
Action
Feedback
Critical! We have to make sure we produce the right
information and in the right format to help the person in charge
to take action
Manager: Person in charge to take action. We need to
make sure this person is involved early in the process
Design of the solution
Identification of
the problem to
solve
Design the
appropriate
solution
Proof of concept
Productization
Scale the process
Reorganize the
company
6 Phases
12
Use Case
13
At Mnubo we designed a 3-5 days workshop
with clients to go from the problem identification
to the mock up of the solution
Performance problem? Scalability issue?
How to Consume the predictions? Maintain the solution?
What action(s) will be taken?
…
Ex:
1 prediction per machine? Every hour? 12 hours?
Solving the right problem
14
A journey as a Data Scientist 1/2
15
Data Scientist:
Define the valuable business
problem
Translate the business problem
into a KPI
A Key Performance Indicator (KPI) is a
measurable value that demonstrates how
effectively a company is achieving key
business objectives. Organizations use key
performance indicators at multiple levels to
evaluate their success at reaching targets.
Client:
« I loose a lot of money when the
assembly lines stops ».
« I would like to reduce the number of
machine failures ».
https://www.klipfolio.com/resources/kpi-examples
A journey as a Data Scientist 2/2
16
Data Scientist:
Define the metric and the
definition of success.
Next phase: Proof of concept.
• explore
• Establish a baseline
• Iterate!!!
Client:
A success would be to predict
failure 12 hours in advance
with an accuracy of 80%
According to the final report, I
get an answer to:
• Is the objectives reasonable?
• How should I productize the
solution?
POC: Critical choice
17
Time
Resources Accuracy
• Explore
• Create a baseline
• Iterate
Agile
Productization phase
18
2 productization models:
• Data scientist write specifications and engineers take over and
rewrite the code in an other language (java, scala…)
• Data scientist with a team of data engineer, dev ops etc… takes
the code written and deploy it in the infrastructure
Pros and cons…
Data Algorithm Prediction
Judgment
Action
Feedback
Data Algorithm Prediction
Judgment
Action
Feedback
Data Algorithm Prediction
Judgment
Action
Feedback
Data Algorithm Prediction
Judgment
Action
Feedback
Data Algorithm Prediction
Judgment
Action
Feedback
Data Algorithm Prediction
Judgment
Action
Feedback
Data Algorithm Prediction
Judgment
Action
Feedback
Full solution management:
• Configuration
• Monitoring
• ROI evaluation
Scaling of the Solution
Avoid silos
labyrinthine system
Data Algorithm
Judgment
Action
Feedback
Data Algorithm Prediction
Judgment
Action
Feedback
(Automating)
Dev ops: In charge of deploying and maintaining the
infrastructure to support the solution
Data engineer: in charge of setting the appropriate
resource to access the data.
Data scientist: in charge of creating the machine
learning model (pipeline data to prediction)
Roles: development phases
21
Operator: In charge of activating/deactivating the
algorithms designed for specific predictions/actions
=> Provide feedback to data scientists
Data scientist: Integrate the feedback and update the
algorithm (if needed)
Dev ops: Maintain the infrastructure
Roles: long term
22
Company perturbation
23
IT Team
Operation
Team
Executives
Data Science
Team
24
The Proof of Concept Curse in AI and IoT
80% of companies stop at
the POC stage.
Laggards & Winners
I recommend:
To use Agile methodology in all
phases of the project
Have a clear understanding of
the final aim in term of:
• The process of development
• The perturbation of the company
organization
Critical role of the project manager
25
Phases:
Identification of the problem to
solve
Design the appropriate solution
Proof of concept
Productization
Scale the process
Reorganize the company
There is multiple tracks that can be done in parallel:
Data acquisition
To make sure the data are available in (near-) real time.
Creation of the machine learning algorithm
Create the appropriate pipeline to train, test and deploy the model(s).
Creation of the end point to expose the predictions
A dashboard, an app, an alerting system, a reporting system.
Monitoring of the pipeline
monitor the data acquisition, the performance of the model, the use of the
end point…
Process to capture the action taken and consolidate a feedback
loop
Optimize the process
26
Hofstadter's law: It always takes longer than you expect, even when
you take into account Hofstadter's Law.
First AI project is hard, you should start with an easy project
• Is there already a system in place to monitor the KPI?
• Is the data pipeline already in place?
• Is AI a replacement for an existing system?
Assess the client maturity is hard especially regarding the company
perturbation
A good PM is the key to success!
Wrap up
27
Nathanael Weill
nweill@mnubo.com
28
Thank you!!

Más contenido relacionado

La actualidad más candente

Pm prompt ver1
Pm prompt ver1Pm prompt ver1
Pm prompt ver1proctra
 
Project Management PowerPoint PPT Content Modern Sample
Project Management PowerPoint PPT Content Modern SampleProject Management PowerPoint PPT Content Modern Sample
Project Management PowerPoint PPT Content Modern SampleAndrew Schwartz
 
Kepner-Tregoe Project Managment Suite Brochure
Kepner-Tregoe Project Managment Suite BrochureKepner-Tregoe Project Managment Suite Brochure
Kepner-Tregoe Project Managment Suite BrochureKepner-Tregoe
 
Project Management Fundamentals Course Preview
Project Management Fundamentals Course PreviewProject Management Fundamentals Course Preview
Project Management Fundamentals Course PreviewInvensis Learning
 
Beyond the Crystal Ball: The Agile PMO
Beyond the Crystal Ball: The Agile PMOBeyond the Crystal Ball: The Agile PMO
Beyond the Crystal Ball: The Agile PMOGilt Tech Talks
 
The Agile PMO (fall 2014 version)
The Agile PMO (fall 2014 version)The Agile PMO (fall 2014 version)
The Agile PMO (fall 2014 version)Gilt Tech Talks
 
Entroids Introduces the "Think-Plan-Do" framework for execution - A GPS for N...
Entroids Introduces the "Think-Plan-Do" framework for execution - A GPS for N...Entroids Introduces the "Think-Plan-Do" framework for execution - A GPS for N...
Entroids Introduces the "Think-Plan-Do" framework for execution - A GPS for N...Entroids
 
the PointZERO vision introduction (includes Quality Supervision overview)
the PointZERO vision introduction (includes Quality Supervision overview)the PointZERO vision introduction (includes Quality Supervision overview)
the PointZERO vision introduction (includes Quality Supervision overview)Rik Marselis
 
The six step guide to practical project management
The six step guide to practical project managementThe six step guide to practical project management
The six step guide to practical project managementMindGenius
 
Lean strategy: Solving the right problems by Daniel T Jones
Lean strategy: Solving the right problems by Daniel T JonesLean strategy: Solving the right problems by Daniel T Jones
Lean strategy: Solving the right problems by Daniel T JonesInstitut Lean France
 
Top 10 project management tips
Top 10 project management tipsTop 10 project management tips
Top 10 project management tipsProjectManager247
 
Lean Project Management PowerPoint Presentation Slides
Lean Project Management PowerPoint Presentation Slides Lean Project Management PowerPoint Presentation Slides
Lean Project Management PowerPoint Presentation Slides SlideTeam
 
Simple & Practical Project Management for Digital Marketing Teams
Simple & Practical Project Management for Digital Marketing TeamsSimple & Practical Project Management for Digital Marketing Teams
Simple & Practical Project Management for Digital Marketing TeamsDigitangle
 
Death Of the PMO
Death Of the PMODeath Of the PMO
Death Of the PMOLarry Dukes
 
What is Agile Project Management? | Agile Project Management | Invensis Learn...
What is Agile Project Management? | Agile Project Management | Invensis Learn...What is Agile Project Management? | Agile Project Management | Invensis Learn...
What is Agile Project Management? | Agile Project Management | Invensis Learn...Invensis Learning
 

La actualidad más candente (20)

Pm prompt ver1
Pm prompt ver1Pm prompt ver1
Pm prompt ver1
 
Project Management PowerPoint PPT Content Modern Sample
Project Management PowerPoint PPT Content Modern SampleProject Management PowerPoint PPT Content Modern Sample
Project Management PowerPoint PPT Content Modern Sample
 
Kepner-Tregoe Project Managment Suite Brochure
Kepner-Tregoe Project Managment Suite BrochureKepner-Tregoe Project Managment Suite Brochure
Kepner-Tregoe Project Managment Suite Brochure
 
Project Management Fundamentals Course Preview
Project Management Fundamentals Course PreviewProject Management Fundamentals Course Preview
Project Management Fundamentals Course Preview
 
Beyond the Crystal Ball: The Agile PMO
Beyond the Crystal Ball: The Agile PMOBeyond the Crystal Ball: The Agile PMO
Beyond the Crystal Ball: The Agile PMO
 
A3 thinking
A3 thinkingA3 thinking
A3 thinking
 
The Agile PMO (fall 2014 version)
The Agile PMO (fall 2014 version)The Agile PMO (fall 2014 version)
The Agile PMO (fall 2014 version)
 
4 things Project Managers and Green Belts should learn from one another
4 things Project Managers and Green Belts should learn from one another4 things Project Managers and Green Belts should learn from one another
4 things Project Managers and Green Belts should learn from one another
 
Agile in the Bathtub
Agile in the BathtubAgile in the Bathtub
Agile in the Bathtub
 
Entroids way
Entroids wayEntroids way
Entroids way
 
Entroids Introduces the "Think-Plan-Do" framework for execution - A GPS for N...
Entroids Introduces the "Think-Plan-Do" framework for execution - A GPS for N...Entroids Introduces the "Think-Plan-Do" framework for execution - A GPS for N...
Entroids Introduces the "Think-Plan-Do" framework for execution - A GPS for N...
 
the PointZERO vision introduction (includes Quality Supervision overview)
the PointZERO vision introduction (includes Quality Supervision overview)the PointZERO vision introduction (includes Quality Supervision overview)
the PointZERO vision introduction (includes Quality Supervision overview)
 
The six step guide to practical project management
The six step guide to practical project managementThe six step guide to practical project management
The six step guide to practical project management
 
Agile Framework Recommendations and Refreshers
Agile Framework Recommendations and RefreshersAgile Framework Recommendations and Refreshers
Agile Framework Recommendations and Refreshers
 
Lean strategy: Solving the right problems by Daniel T Jones
Lean strategy: Solving the right problems by Daniel T JonesLean strategy: Solving the right problems by Daniel T Jones
Lean strategy: Solving the right problems by Daniel T Jones
 
Top 10 project management tips
Top 10 project management tipsTop 10 project management tips
Top 10 project management tips
 
Lean Project Management PowerPoint Presentation Slides
Lean Project Management PowerPoint Presentation Slides Lean Project Management PowerPoint Presentation Slides
Lean Project Management PowerPoint Presentation Slides
 
Simple & Practical Project Management for Digital Marketing Teams
Simple & Practical Project Management for Digital Marketing TeamsSimple & Practical Project Management for Digital Marketing Teams
Simple & Practical Project Management for Digital Marketing Teams
 
Death Of the PMO
Death Of the PMODeath Of the PMO
Death Of the PMO
 
What is Agile Project Management? | Agile Project Management | Invensis Learn...
What is Agile Project Management? | Agile Project Management | Invensis Learn...What is Agile Project Management? | Agile Project Management | Invensis Learn...
What is Agile Project Management? | Agile Project Management | Invensis Learn...
 

Similar a Symposium 2019 : Gestion de projet en Intelligence Artificielle

[DSC Europe 22] The Making of a Data Organization - Denys Holovatyi
[DSC Europe 22] The Making of a Data Organization - Denys Holovatyi[DSC Europe 22] The Making of a Data Organization - Denys Holovatyi
[DSC Europe 22] The Making of a Data Organization - Denys HolovatyiDataScienceConferenc1
 
How to make your data scientists happy
How to make your data scientists happy How to make your data scientists happy
How to make your data scientists happy Hussain Sultan
 
Data science is not Software Development and how Experiment Management can ma...
Data science is not Software Development and how Experiment Management can ma...Data science is not Software Development and how Experiment Management can ma...
Data science is not Software Development and how Experiment Management can ma...Jakub Czakon
 
Agile Mumbai 2023 | AI-Powered Agility: A New Era of Sustainable Business Inn...
Agile Mumbai 2023 | AI-Powered Agility: A New Era of Sustainable Business Inn...Agile Mumbai 2023 | AI-Powered Agility: A New Era of Sustainable Business Inn...
Agile Mumbai 2023 | AI-Powered Agility: A New Era of Sustainable Business Inn...AgileNetwork
 
Intelligently Automating Machine Learning, Artificial Intelligence, and Data ...
Intelligently Automating Machine Learning, Artificial Intelligence, and Data ...Intelligently Automating Machine Learning, Artificial Intelligence, and Data ...
Intelligently Automating Machine Learning, Artificial Intelligence, and Data ...Ali Alkan
 
Big Data LDN 2018: THE PATH TO ENTERPRISE AI: TALES FROM THE FIELD
Big Data LDN 2018: THE PATH TO ENTERPRISE AI: TALES FROM THE FIELDBig Data LDN 2018: THE PATH TO ENTERPRISE AI: TALES FROM THE FIELD
Big Data LDN 2018: THE PATH TO ENTERPRISE AI: TALES FROM THE FIELDMatt Stubbs
 
Metrics for Mofel-Based Systems Development
Metrics for Mofel-Based Systems DevelopmentMetrics for Mofel-Based Systems Development
Metrics for Mofel-Based Systems DevelopmentBruce Douglass
 
integrating-cognitive-services-into-your-devops-strategy
integrating-cognitive-services-into-your-devops-strategyintegrating-cognitive-services-into-your-devops-strategy
integrating-cognitive-services-into-your-devops-strategyKarthik Jaganathan
 
Integrating cognitive services in to your devops strategy
Integrating cognitive services in to your devops strategyIntegrating cognitive services in to your devops strategy
Integrating cognitive services in to your devops strategyAspire Systems
 
Betsol | Machine Learning for IT Project Estimates
Betsol | Machine Learning for IT Project Estimates  Betsol | Machine Learning for IT Project Estimates
Betsol | Machine Learning for IT Project Estimates BETSOL
 
The future Proof Financial: Fintech
The future Proof Financial: FintechThe future Proof Financial: Fintech
The future Proof Financial: FintechMartijn Zoet
 
Doing Analytics Right - Designing and Automating Analytics
Doing Analytics Right - Designing and Automating AnalyticsDoing Analytics Right - Designing and Automating Analytics
Doing Analytics Right - Designing and Automating AnalyticsTasktop
 
Software Project Estimation
Software Project EstimationSoftware Project Estimation
Software Project EstimationFrank Vogelezang
 
Agile Methods: Fact or Fiction
Agile Methods: Fact or FictionAgile Methods: Fact or Fiction
Agile Methods: Fact or FictionMatt Ganis
 
AI improves software testing by Kari Kakkonen at TQS
AI improves software testing by Kari Kakkonen at TQSAI improves software testing by Kari Kakkonen at TQS
AI improves software testing by Kari Kakkonen at TQSKari Kakkonen
 
Managing Software Project
Managing Software ProjectManaging Software Project
Managing Software ProjectAnas Bilal
 
So Now You’re a UiPath Developer – What’s Next?” What Role do You Play as Dev...
So Now You’re a UiPath Developer – What’s Next?” What Role do You Play as Dev...So Now You’re a UiPath Developer – What’s Next?” What Role do You Play as Dev...
So Now You’re a UiPath Developer – What’s Next?” What Role do You Play as Dev...DianaGray10
 
Succeed in AI projects
Succeed in AI projectsSucceed in AI projects
Succeed in AI projectsSubhendu Dey
 

Similar a Symposium 2019 : Gestion de projet en Intelligence Artificielle (20)

[DSC Europe 22] The Making of a Data Organization - Denys Holovatyi
[DSC Europe 22] The Making of a Data Organization - Denys Holovatyi[DSC Europe 22] The Making of a Data Organization - Denys Holovatyi
[DSC Europe 22] The Making of a Data Organization - Denys Holovatyi
 
How to make your data scientists happy
How to make your data scientists happy How to make your data scientists happy
How to make your data scientists happy
 
Data science is not Software Development and how Experiment Management can ma...
Data science is not Software Development and how Experiment Management can ma...Data science is not Software Development and how Experiment Management can ma...
Data science is not Software Development and how Experiment Management can ma...
 
Agile Mumbai 2023 | AI-Powered Agility: A New Era of Sustainable Business Inn...
Agile Mumbai 2023 | AI-Powered Agility: A New Era of Sustainable Business Inn...Agile Mumbai 2023 | AI-Powered Agility: A New Era of Sustainable Business Inn...
Agile Mumbai 2023 | AI-Powered Agility: A New Era of Sustainable Business Inn...
 
Intelligently Automating Machine Learning, Artificial Intelligence, and Data ...
Intelligently Automating Machine Learning, Artificial Intelligence, and Data ...Intelligently Automating Machine Learning, Artificial Intelligence, and Data ...
Intelligently Automating Machine Learning, Artificial Intelligence, and Data ...
 
Challenges of Executing AI
Challenges of Executing AIChallenges of Executing AI
Challenges of Executing AI
 
Big Data LDN 2018: THE PATH TO ENTERPRISE AI: TALES FROM THE FIELD
Big Data LDN 2018: THE PATH TO ENTERPRISE AI: TALES FROM THE FIELDBig Data LDN 2018: THE PATH TO ENTERPRISE AI: TALES FROM THE FIELD
Big Data LDN 2018: THE PATH TO ENTERPRISE AI: TALES FROM THE FIELD
 
Metrics for Mofel-Based Systems Development
Metrics for Mofel-Based Systems DevelopmentMetrics for Mofel-Based Systems Development
Metrics for Mofel-Based Systems Development
 
integrating-cognitive-services-into-your-devops-strategy
integrating-cognitive-services-into-your-devops-strategyintegrating-cognitive-services-into-your-devops-strategy
integrating-cognitive-services-into-your-devops-strategy
 
Integrating cognitive services in to your devops strategy
Integrating cognitive services in to your devops strategyIntegrating cognitive services in to your devops strategy
Integrating cognitive services in to your devops strategy
 
Betsol | Machine Learning for IT Project Estimates
Betsol | Machine Learning for IT Project Estimates  Betsol | Machine Learning for IT Project Estimates
Betsol | Machine Learning for IT Project Estimates
 
The future Proof Financial: Fintech
The future Proof Financial: FintechThe future Proof Financial: Fintech
The future Proof Financial: Fintech
 
Doing Analytics Right - Designing and Automating Analytics
Doing Analytics Right - Designing and Automating AnalyticsDoing Analytics Right - Designing and Automating Analytics
Doing Analytics Right - Designing and Automating Analytics
 
Software Project Estimation
Software Project EstimationSoftware Project Estimation
Software Project Estimation
 
Agile Methods: Fact or Fiction
Agile Methods: Fact or FictionAgile Methods: Fact or Fiction
Agile Methods: Fact or Fiction
 
AI improves software testing by Kari Kakkonen at TQS
AI improves software testing by Kari Kakkonen at TQSAI improves software testing by Kari Kakkonen at TQS
AI improves software testing by Kari Kakkonen at TQS
 
Managing Software Project
Managing Software ProjectManaging Software Project
Managing Software Project
 
So Now You’re a UiPath Developer – What’s Next?” What Role do You Play as Dev...
So Now You’re a UiPath Developer – What’s Next?” What Role do You Play as Dev...So Now You’re a UiPath Developer – What’s Next?” What Role do You Play as Dev...
So Now You’re a UiPath Developer – What’s Next?” What Role do You Play as Dev...
 
Mohammed AL Madhani
Mohammed AL MadhaniMohammed AL Madhani
Mohammed AL Madhani
 
Succeed in AI projects
Succeed in AI projectsSucceed in AI projects
Succeed in AI projects
 

Más de PMI-Montréal

La mobilisation des équipes de projets pour sortir gagnant de la crise
La mobilisation des équipes de projets pour sortir gagnant de la criseLa mobilisation des équipes de projets pour sortir gagnant de la crise
La mobilisation des équipes de projets pour sortir gagnant de la crisePMI-Montréal
 
Adoption du changement : êtes-vous prêts?
Adoption du changement : êtes-vous prêts?Adoption du changement : êtes-vous prêts?
Adoption du changement : êtes-vous prêts?PMI-Montréal
 
Workshop - Lean change & the gang
Workshop - Lean change & the gangWorkshop - Lean change & the gang
Workshop - Lean change & the gangPMI-Montréal
 
Mentorat du PMI-Montréal - Séance informative mai 2020
Mentorat du PMI-Montréal - Séance informative mai 2020Mentorat du PMI-Montréal - Séance informative mai 2020
Mentorat du PMI-Montréal - Séance informative mai 2020PMI-Montréal
 
Désinfection (COVID-19) Ce que vous devez savoir pour un chantier productif
Désinfection (COVID-19) Ce que vous devez savoir pour un chantier productifDésinfection (COVID-19) Ce que vous devez savoir pour un chantier productif
Désinfection (COVID-19) Ce que vous devez savoir pour un chantier productifPMI-Montréal
 
Leadership responsable : mettez votre masque d’oxygène en premier!
Leadership responsable : mettez votre masque d’oxygène en premier!Leadership responsable : mettez votre masque d’oxygène en premier!
Leadership responsable : mettez votre masque d’oxygène en premier!PMI-Montréal
 
Delegation Poker - Responsabilisez vos équipes et amenez-les vers une grande ...
Delegation Poker - Responsabilisez vos équipes et amenez-les vers une grande ...Delegation Poker - Responsabilisez vos équipes et amenez-les vers une grande ...
Delegation Poker - Responsabilisez vos équipes et amenez-les vers une grande ...PMI-Montréal
 
Agile et gestion du changement - Au-delà du Manifeste et de la méthodologie
Agile et gestion du changement -  Au-delà du Manifeste et de la méthodologie Agile et gestion du changement -  Au-delà du Manifeste et de la méthodologie
Agile et gestion du changement - Au-delà du Manifeste et de la méthodologie PMI-Montréal
 
Agilité comportementale – Comment adapter ses comportements en temps de crise...
Agilité comportementale – Comment adapter ses comportements en temps de crise...Agilité comportementale – Comment adapter ses comportements en temps de crise...
Agilité comportementale – Comment adapter ses comportements en temps de crise...PMI-Montréal
 
Le Design Thinking : Penser et agir autrement pour trouver des solutions diff...
Le Design Thinking : Penser et agir autrement pour trouver des solutions diff...Le Design Thinking : Penser et agir autrement pour trouver des solutions diff...
Le Design Thinking : Penser et agir autrement pour trouver des solutions diff...PMI-Montréal
 
COVID-19 et Télétravail - Comment garder votre équipe de projet productive et...
COVID-19 et Télétravail - Comment garder votre équipe de projet productive et...COVID-19 et Télétravail - Comment garder votre équipe de projet productive et...
COVID-19 et Télétravail - Comment garder votre équipe de projet productive et...PMI-Montréal
 
Matinee PMI-Montréal - Softskills, incontournable pour l'ingénieur en gestion...
Matinee PMI-Montréal - Softskills, incontournable pour l'ingénieur en gestion...Matinee PMI-Montréal - Softskills, incontournable pour l'ingénieur en gestion...
Matinee PMI-Montréal - Softskills, incontournable pour l'ingénieur en gestion...PMI-Montréal
 
Matinée 11 février 2020 - Priorisation d'un portefeuille de projet
Matinée 11 février 2020 - Priorisation d'un portefeuille de projetMatinée 11 février 2020 - Priorisation d'un portefeuille de projet
Matinée 11 février 2020 - Priorisation d'un portefeuille de projetPMI-Montréal
 
Comment animer un atelier de gestion de risques?
Comment animer un atelier de gestion de risques?Comment animer un atelier de gestion de risques?
Comment animer un atelier de gestion de risques?PMI-Montréal
 
Se réapproprier la gestion BIM avec annexes
Se réapproprier la gestion BIM avec annexesSe réapproprier la gestion BIM avec annexes
Se réapproprier la gestion BIM avec annexesPMI-Montréal
 
MATINÉE - BÂTIR UN PROJET DE VILLE/DESTINATION INTELLIGENTE : ENTRE L'UTOPIE ...
MATINÉE - BÂTIR UN PROJET DE VILLE/DESTINATION INTELLIGENTE : ENTRE L'UTOPIE ...MATINÉE - BÂTIR UN PROJET DE VILLE/DESTINATION INTELLIGENTE : ENTRE L'UTOPIE ...
MATINÉE - BÂTIR UN PROJET DE VILLE/DESTINATION INTELLIGENTE : ENTRE L'UTOPIE ...PMI-Montréal
 
La gestion de projet dans l'industrie 4.0
La gestion de projet dans l'industrie 4.0La gestion de projet dans l'industrie 4.0
La gestion de projet dans l'industrie 4.0PMI-Montréal
 
Matinée PMI - De gestionnaire de projet à producteur exécutif!
Matinée PMI - De gestionnaire de projet à producteur exécutif!Matinée PMI - De gestionnaire de projet à producteur exécutif!
Matinée PMI - De gestionnaire de projet à producteur exécutif!PMI-Montréal
 
PMI-Montréal - protection des données conformité gouvernance 2019 06
PMI-Montréal - protection des données conformité gouvernance 2019 06 PMI-Montréal - protection des données conformité gouvernance 2019 06
PMI-Montréal - protection des données conformité gouvernance 2019 06 PMI-Montréal
 
Symposium 2019 : Quand l'industrie des technologies se mobilise
Symposium 2019 : Quand l'industrie des technologies se mobiliseSymposium 2019 : Quand l'industrie des technologies se mobilise
Symposium 2019 : Quand l'industrie des technologies se mobilisePMI-Montréal
 

Más de PMI-Montréal (20)

La mobilisation des équipes de projets pour sortir gagnant de la crise
La mobilisation des équipes de projets pour sortir gagnant de la criseLa mobilisation des équipes de projets pour sortir gagnant de la crise
La mobilisation des équipes de projets pour sortir gagnant de la crise
 
Adoption du changement : êtes-vous prêts?
Adoption du changement : êtes-vous prêts?Adoption du changement : êtes-vous prêts?
Adoption du changement : êtes-vous prêts?
 
Workshop - Lean change & the gang
Workshop - Lean change & the gangWorkshop - Lean change & the gang
Workshop - Lean change & the gang
 
Mentorat du PMI-Montréal - Séance informative mai 2020
Mentorat du PMI-Montréal - Séance informative mai 2020Mentorat du PMI-Montréal - Séance informative mai 2020
Mentorat du PMI-Montréal - Séance informative mai 2020
 
Désinfection (COVID-19) Ce que vous devez savoir pour un chantier productif
Désinfection (COVID-19) Ce que vous devez savoir pour un chantier productifDésinfection (COVID-19) Ce que vous devez savoir pour un chantier productif
Désinfection (COVID-19) Ce que vous devez savoir pour un chantier productif
 
Leadership responsable : mettez votre masque d’oxygène en premier!
Leadership responsable : mettez votre masque d’oxygène en premier!Leadership responsable : mettez votre masque d’oxygène en premier!
Leadership responsable : mettez votre masque d’oxygène en premier!
 
Delegation Poker - Responsabilisez vos équipes et amenez-les vers une grande ...
Delegation Poker - Responsabilisez vos équipes et amenez-les vers une grande ...Delegation Poker - Responsabilisez vos équipes et amenez-les vers une grande ...
Delegation Poker - Responsabilisez vos équipes et amenez-les vers une grande ...
 
Agile et gestion du changement - Au-delà du Manifeste et de la méthodologie
Agile et gestion du changement -  Au-delà du Manifeste et de la méthodologie Agile et gestion du changement -  Au-delà du Manifeste et de la méthodologie
Agile et gestion du changement - Au-delà du Manifeste et de la méthodologie
 
Agilité comportementale – Comment adapter ses comportements en temps de crise...
Agilité comportementale – Comment adapter ses comportements en temps de crise...Agilité comportementale – Comment adapter ses comportements en temps de crise...
Agilité comportementale – Comment adapter ses comportements en temps de crise...
 
Le Design Thinking : Penser et agir autrement pour trouver des solutions diff...
Le Design Thinking : Penser et agir autrement pour trouver des solutions diff...Le Design Thinking : Penser et agir autrement pour trouver des solutions diff...
Le Design Thinking : Penser et agir autrement pour trouver des solutions diff...
 
COVID-19 et Télétravail - Comment garder votre équipe de projet productive et...
COVID-19 et Télétravail - Comment garder votre équipe de projet productive et...COVID-19 et Télétravail - Comment garder votre équipe de projet productive et...
COVID-19 et Télétravail - Comment garder votre équipe de projet productive et...
 
Matinee PMI-Montréal - Softskills, incontournable pour l'ingénieur en gestion...
Matinee PMI-Montréal - Softskills, incontournable pour l'ingénieur en gestion...Matinee PMI-Montréal - Softskills, incontournable pour l'ingénieur en gestion...
Matinee PMI-Montréal - Softskills, incontournable pour l'ingénieur en gestion...
 
Matinée 11 février 2020 - Priorisation d'un portefeuille de projet
Matinée 11 février 2020 - Priorisation d'un portefeuille de projetMatinée 11 février 2020 - Priorisation d'un portefeuille de projet
Matinée 11 février 2020 - Priorisation d'un portefeuille de projet
 
Comment animer un atelier de gestion de risques?
Comment animer un atelier de gestion de risques?Comment animer un atelier de gestion de risques?
Comment animer un atelier de gestion de risques?
 
Se réapproprier la gestion BIM avec annexes
Se réapproprier la gestion BIM avec annexesSe réapproprier la gestion BIM avec annexes
Se réapproprier la gestion BIM avec annexes
 
MATINÉE - BÂTIR UN PROJET DE VILLE/DESTINATION INTELLIGENTE : ENTRE L'UTOPIE ...
MATINÉE - BÂTIR UN PROJET DE VILLE/DESTINATION INTELLIGENTE : ENTRE L'UTOPIE ...MATINÉE - BÂTIR UN PROJET DE VILLE/DESTINATION INTELLIGENTE : ENTRE L'UTOPIE ...
MATINÉE - BÂTIR UN PROJET DE VILLE/DESTINATION INTELLIGENTE : ENTRE L'UTOPIE ...
 
La gestion de projet dans l'industrie 4.0
La gestion de projet dans l'industrie 4.0La gestion de projet dans l'industrie 4.0
La gestion de projet dans l'industrie 4.0
 
Matinée PMI - De gestionnaire de projet à producteur exécutif!
Matinée PMI - De gestionnaire de projet à producteur exécutif!Matinée PMI - De gestionnaire de projet à producteur exécutif!
Matinée PMI - De gestionnaire de projet à producteur exécutif!
 
PMI-Montréal - protection des données conformité gouvernance 2019 06
PMI-Montréal - protection des données conformité gouvernance 2019 06 PMI-Montréal - protection des données conformité gouvernance 2019 06
PMI-Montréal - protection des données conformité gouvernance 2019 06
 
Symposium 2019 : Quand l'industrie des technologies se mobilise
Symposium 2019 : Quand l'industrie des technologies se mobiliseSymposium 2019 : Quand l'industrie des technologies se mobilise
Symposium 2019 : Quand l'industrie des technologies se mobilise
 

Último

P4C x ELT = P4ELT: Its Theoretical Background (Kanazawa, 2024 March).pdf
P4C x ELT = P4ELT: Its Theoretical Background (Kanazawa, 2024 March).pdfP4C x ELT = P4ELT: Its Theoretical Background (Kanazawa, 2024 March).pdf
P4C x ELT = P4ELT: Its Theoretical Background (Kanazawa, 2024 March).pdfYu Kanazawa / Osaka University
 
Quality Assurance_GOOD LABORATORY PRACTICE
Quality Assurance_GOOD LABORATORY PRACTICEQuality Assurance_GOOD LABORATORY PRACTICE
Quality Assurance_GOOD LABORATORY PRACTICESayali Powar
 
Maximizing Impact_ Nonprofit Website Planning, Budgeting, and Design.pdf
Maximizing Impact_ Nonprofit Website Planning, Budgeting, and Design.pdfMaximizing Impact_ Nonprofit Website Planning, Budgeting, and Design.pdf
Maximizing Impact_ Nonprofit Website Planning, Budgeting, and Design.pdfTechSoup
 
UKCGE Parental Leave Discussion March 2024
UKCGE Parental Leave Discussion March 2024UKCGE Parental Leave Discussion March 2024
UKCGE Parental Leave Discussion March 2024UKCGE
 
In - Vivo and In - Vitro Correlation.pptx
In - Vivo and In - Vitro Correlation.pptxIn - Vivo and In - Vitro Correlation.pptx
In - Vivo and In - Vitro Correlation.pptxAditiChauhan701637
 
Prescribed medication order and communication skills.pptx
Prescribed medication order and communication skills.pptxPrescribed medication order and communication skills.pptx
Prescribed medication order and communication skills.pptxraviapr7
 
The basics of sentences session 10pptx.pptx
The basics of sentences session 10pptx.pptxThe basics of sentences session 10pptx.pptx
The basics of sentences session 10pptx.pptxheathfieldcps1
 
PISA-VET launch_El Iza Mohamedou_19 March 2024.pptx
PISA-VET launch_El Iza Mohamedou_19 March 2024.pptxPISA-VET launch_El Iza Mohamedou_19 March 2024.pptx
PISA-VET launch_El Iza Mohamedou_19 March 2024.pptxEduSkills OECD
 
Practical Research 1 Lesson 9 Scope and delimitation.pptx
Practical Research 1 Lesson 9 Scope and delimitation.pptxPractical Research 1 Lesson 9 Scope and delimitation.pptx
Practical Research 1 Lesson 9 Scope and delimitation.pptxKatherine Villaluna
 
Diploma in Nursing Admission Test Question Solution 2023.pdf
Diploma in Nursing Admission Test Question Solution 2023.pdfDiploma in Nursing Admission Test Question Solution 2023.pdf
Diploma in Nursing Admission Test Question Solution 2023.pdfMohonDas
 
How to Add Existing Field in One2Many Tree View in Odoo 17
How to Add Existing Field in One2Many Tree View in Odoo 17How to Add Existing Field in One2Many Tree View in Odoo 17
How to Add Existing Field in One2Many Tree View in Odoo 17Celine George
 
DUST OF SNOW_BY ROBERT FROST_EDITED BY_ TANMOY MISHRA
DUST OF SNOW_BY ROBERT FROST_EDITED BY_ TANMOY MISHRADUST OF SNOW_BY ROBERT FROST_EDITED BY_ TANMOY MISHRA
DUST OF SNOW_BY ROBERT FROST_EDITED BY_ TANMOY MISHRATanmoy Mishra
 
Patterns of Written Texts Across Disciplines.pptx
Patterns of Written Texts Across Disciplines.pptxPatterns of Written Texts Across Disciplines.pptx
Patterns of Written Texts Across Disciplines.pptxMYDA ANGELICA SUAN
 
5 charts on South Africa as a source country for international student recrui...
5 charts on South Africa as a source country for international student recrui...5 charts on South Africa as a source country for international student recrui...
5 charts on South Africa as a source country for international student recrui...CaraSkikne1
 
Presentation on the Basics of Writing. Writing a Paragraph
Presentation on the Basics of Writing. Writing a ParagraphPresentation on the Basics of Writing. Writing a Paragraph
Presentation on the Basics of Writing. Writing a ParagraphNetziValdelomar1
 
Ultra structure and life cycle of Plasmodium.pptx
Ultra structure and life cycle of Plasmodium.pptxUltra structure and life cycle of Plasmodium.pptx
Ultra structure and life cycle of Plasmodium.pptxDr. Asif Anas
 
How to Show Error_Warning Messages in Odoo 17
How to Show Error_Warning Messages in Odoo 17How to Show Error_Warning Messages in Odoo 17
How to Show Error_Warning Messages in Odoo 17Celine George
 
CapTechU Doctoral Presentation -March 2024 slides.pptx
CapTechU Doctoral Presentation -March 2024 slides.pptxCapTechU Doctoral Presentation -March 2024 slides.pptx
CapTechU Doctoral Presentation -March 2024 slides.pptxCapitolTechU
 
General views of Histopathology and step
General views of Histopathology and stepGeneral views of Histopathology and step
General views of Histopathology and stepobaje godwin sunday
 

Último (20)

P4C x ELT = P4ELT: Its Theoretical Background (Kanazawa, 2024 March).pdf
P4C x ELT = P4ELT: Its Theoretical Background (Kanazawa, 2024 March).pdfP4C x ELT = P4ELT: Its Theoretical Background (Kanazawa, 2024 March).pdf
P4C x ELT = P4ELT: Its Theoretical Background (Kanazawa, 2024 March).pdf
 
Quality Assurance_GOOD LABORATORY PRACTICE
Quality Assurance_GOOD LABORATORY PRACTICEQuality Assurance_GOOD LABORATORY PRACTICE
Quality Assurance_GOOD LABORATORY PRACTICE
 
Finals of Kant get Marx 2.0 : a general politics quiz
Finals of Kant get Marx 2.0 : a general politics quizFinals of Kant get Marx 2.0 : a general politics quiz
Finals of Kant get Marx 2.0 : a general politics quiz
 
Maximizing Impact_ Nonprofit Website Planning, Budgeting, and Design.pdf
Maximizing Impact_ Nonprofit Website Planning, Budgeting, and Design.pdfMaximizing Impact_ Nonprofit Website Planning, Budgeting, and Design.pdf
Maximizing Impact_ Nonprofit Website Planning, Budgeting, and Design.pdf
 
UKCGE Parental Leave Discussion March 2024
UKCGE Parental Leave Discussion March 2024UKCGE Parental Leave Discussion March 2024
UKCGE Parental Leave Discussion March 2024
 
In - Vivo and In - Vitro Correlation.pptx
In - Vivo and In - Vitro Correlation.pptxIn - Vivo and In - Vitro Correlation.pptx
In - Vivo and In - Vitro Correlation.pptx
 
Prescribed medication order and communication skills.pptx
Prescribed medication order and communication skills.pptxPrescribed medication order and communication skills.pptx
Prescribed medication order and communication skills.pptx
 
The basics of sentences session 10pptx.pptx
The basics of sentences session 10pptx.pptxThe basics of sentences session 10pptx.pptx
The basics of sentences session 10pptx.pptx
 
PISA-VET launch_El Iza Mohamedou_19 March 2024.pptx
PISA-VET launch_El Iza Mohamedou_19 March 2024.pptxPISA-VET launch_El Iza Mohamedou_19 March 2024.pptx
PISA-VET launch_El Iza Mohamedou_19 March 2024.pptx
 
Practical Research 1 Lesson 9 Scope and delimitation.pptx
Practical Research 1 Lesson 9 Scope and delimitation.pptxPractical Research 1 Lesson 9 Scope and delimitation.pptx
Practical Research 1 Lesson 9 Scope and delimitation.pptx
 
Diploma in Nursing Admission Test Question Solution 2023.pdf
Diploma in Nursing Admission Test Question Solution 2023.pdfDiploma in Nursing Admission Test Question Solution 2023.pdf
Diploma in Nursing Admission Test Question Solution 2023.pdf
 
How to Add Existing Field in One2Many Tree View in Odoo 17
How to Add Existing Field in One2Many Tree View in Odoo 17How to Add Existing Field in One2Many Tree View in Odoo 17
How to Add Existing Field in One2Many Tree View in Odoo 17
 
DUST OF SNOW_BY ROBERT FROST_EDITED BY_ TANMOY MISHRA
DUST OF SNOW_BY ROBERT FROST_EDITED BY_ TANMOY MISHRADUST OF SNOW_BY ROBERT FROST_EDITED BY_ TANMOY MISHRA
DUST OF SNOW_BY ROBERT FROST_EDITED BY_ TANMOY MISHRA
 
Patterns of Written Texts Across Disciplines.pptx
Patterns of Written Texts Across Disciplines.pptxPatterns of Written Texts Across Disciplines.pptx
Patterns of Written Texts Across Disciplines.pptx
 
5 charts on South Africa as a source country for international student recrui...
5 charts on South Africa as a source country for international student recrui...5 charts on South Africa as a source country for international student recrui...
5 charts on South Africa as a source country for international student recrui...
 
Presentation on the Basics of Writing. Writing a Paragraph
Presentation on the Basics of Writing. Writing a ParagraphPresentation on the Basics of Writing. Writing a Paragraph
Presentation on the Basics of Writing. Writing a Paragraph
 
Ultra structure and life cycle of Plasmodium.pptx
Ultra structure and life cycle of Plasmodium.pptxUltra structure and life cycle of Plasmodium.pptx
Ultra structure and life cycle of Plasmodium.pptx
 
How to Show Error_Warning Messages in Odoo 17
How to Show Error_Warning Messages in Odoo 17How to Show Error_Warning Messages in Odoo 17
How to Show Error_Warning Messages in Odoo 17
 
CapTechU Doctoral Presentation -March 2024 slides.pptx
CapTechU Doctoral Presentation -March 2024 slides.pptxCapTechU Doctoral Presentation -March 2024 slides.pptx
CapTechU Doctoral Presentation -March 2024 slides.pptx
 
General views of Histopathology and step
General views of Histopathology and stepGeneral views of Histopathology and step
General views of Histopathology and step
 

Symposium 2019 : Gestion de projet en Intelligence Artificielle

  • 2. About me 2 Master in Bioinformatics Strasbourg University (France) Ph.D. In Pharmaceutical Science. Strasbourg University (France) Post-Doc at McGill (Computational chemistry) Post-Doc at UdeM (Computational Biology) Senior Data Scientist at Mnubo (IoT company) Nathanael Weill
  • 3. What is AI? Why AI? AI project phases Warnings Optimize the process Outlines 3
  • 4. The theory and development of computer systems able to perform tasks that normally require human intelligence, such as visual perception, speech recognition, decision-making, and translation between languages. (google dictionary) What is AI? 4 Prediction: The process of filling in missing information. Prediction takes data you have to generate data you don’t have.
  • 5. How does it work? 5 computer Input data Output Function computer Input data Function Output computer New Input data Prediction Function
  • 9. Big Data & Data Science Projects Failure Rate 9 GARTNER ESTIMATED 85% of big data projects fail (2017). The initial estimation was 60% (GARTNER 2016) THROUGH 2020 80% of AI projects will remain alchemy, run by wizards whose talents will not scale in the organization. (GARTNER 2018) THROUGH 2022 20% of analytic insights will deliver business outcomes. (GARTNER 2018) EXECUTIVE SURVEY 77% respondents say that “business adoption” of big data and AI initiatives continues to represent a challenge for their organizations (NEWVANTAGE PARTNERS 2019)
  • 10. A recipe for failure We must define the solution as an entire process. If prediction is the end of the solution, the entire solution might fail because: • The output does not correspond to the operational needs. • The operator will not use it due to complexification of the process. • No one is capable of managing the algorithms if something goes wrong. • … Data Algorithm Prediction
  • 11. Data Algorithm Prediction Judgment Action Feedback Critical! We have to make sure we produce the right information and in the right format to help the person in charge to take action Manager: Person in charge to take action. We need to make sure this person is involved early in the process Design of the solution
  • 12. Identification of the problem to solve Design the appropriate solution Proof of concept Productization Scale the process Reorganize the company 6 Phases 12
  • 14. At Mnubo we designed a 3-5 days workshop with clients to go from the problem identification to the mock up of the solution Performance problem? Scalability issue? How to Consume the predictions? Maintain the solution? What action(s) will be taken? … Ex: 1 prediction per machine? Every hour? 12 hours? Solving the right problem 14
  • 15. A journey as a Data Scientist 1/2 15 Data Scientist: Define the valuable business problem Translate the business problem into a KPI A Key Performance Indicator (KPI) is a measurable value that demonstrates how effectively a company is achieving key business objectives. Organizations use key performance indicators at multiple levels to evaluate their success at reaching targets. Client: « I loose a lot of money when the assembly lines stops ». « I would like to reduce the number of machine failures ». https://www.klipfolio.com/resources/kpi-examples
  • 16. A journey as a Data Scientist 2/2 16 Data Scientist: Define the metric and the definition of success. Next phase: Proof of concept. • explore • Establish a baseline • Iterate!!! Client: A success would be to predict failure 12 hours in advance with an accuracy of 80% According to the final report, I get an answer to: • Is the objectives reasonable? • How should I productize the solution?
  • 17. POC: Critical choice 17 Time Resources Accuracy • Explore • Create a baseline • Iterate Agile
  • 18. Productization phase 18 2 productization models: • Data scientist write specifications and engineers take over and rewrite the code in an other language (java, scala…) • Data scientist with a team of data engineer, dev ops etc… takes the code written and deploy it in the infrastructure Pros and cons…
  • 19. Data Algorithm Prediction Judgment Action Feedback Data Algorithm Prediction Judgment Action Feedback Data Algorithm Prediction Judgment Action Feedback Data Algorithm Prediction Judgment Action Feedback Data Algorithm Prediction Judgment Action Feedback Data Algorithm Prediction Judgment Action Feedback Data Algorithm Prediction Judgment Action Feedback Full solution management: • Configuration • Monitoring • ROI evaluation Scaling of the Solution Avoid silos labyrinthine system
  • 20. Data Algorithm Judgment Action Feedback Data Algorithm Prediction Judgment Action Feedback (Automating)
  • 21. Dev ops: In charge of deploying and maintaining the infrastructure to support the solution Data engineer: in charge of setting the appropriate resource to access the data. Data scientist: in charge of creating the machine learning model (pipeline data to prediction) Roles: development phases 21
  • 22. Operator: In charge of activating/deactivating the algorithms designed for specific predictions/actions => Provide feedback to data scientists Data scientist: Integrate the feedback and update the algorithm (if needed) Dev ops: Maintain the infrastructure Roles: long term 22
  • 24. 24 The Proof of Concept Curse in AI and IoT 80% of companies stop at the POC stage. Laggards & Winners
  • 25. I recommend: To use Agile methodology in all phases of the project Have a clear understanding of the final aim in term of: • The process of development • The perturbation of the company organization Critical role of the project manager 25 Phases: Identification of the problem to solve Design the appropriate solution Proof of concept Productization Scale the process Reorganize the company
  • 26. There is multiple tracks that can be done in parallel: Data acquisition To make sure the data are available in (near-) real time. Creation of the machine learning algorithm Create the appropriate pipeline to train, test and deploy the model(s). Creation of the end point to expose the predictions A dashboard, an app, an alerting system, a reporting system. Monitoring of the pipeline monitor the data acquisition, the performance of the model, the use of the end point… Process to capture the action taken and consolidate a feedback loop Optimize the process 26
  • 27. Hofstadter's law: It always takes longer than you expect, even when you take into account Hofstadter's Law. First AI project is hard, you should start with an easy project • Is there already a system in place to monitor the KPI? • Is the data pipeline already in place? • Is AI a replacement for an existing system? Assess the client maturity is hard especially regarding the company perturbation A good PM is the key to success! Wrap up 27