SlideShare a Scribd company logo
SAS founded in 2013 in Paris | http://linkurio.us | @linkurious
Graph-based Product
Lifecycle Management
Graph visualization and analysis
startup founded in 2013.
40+ clients in 20+ countries (NASA,
Cisco, French Ministry of Finances).
Linkurious Enterprise and Linkurious
SDK.
About Linkurious
What is graph technology?
A graph is a data structure that
consists of nodes and edges.
Graph databases store & process
large connected graphs in real-time.
Linkurious’ software helps analysts
easily detect and investigate insights
hidden in graph data.
Node
STORE
ACCESS
Data
Graph
database
Linkurious
ORGANIZE
Edge
Some use cases
Cyber-security
Servers, switches, routers,
applications, etc.
Suspicious activity patterns,
identify impact of a compromised
asset.
IT Operations
Servers, switches, routers,
applications, etc.
Impact analysis, root cause
analysis.
Intelligence
People, emails, transactions,
phone call records, social.
Detecting and investigating
criminal or terrorist networks.
AML
People, transactions, watch-lists,
companies, organizations.
Detecting suspicious
transactions, identify beneficiary
owners.
Fraud
Claims, people, financial records,
personal data.
Detecting and investigating
criminal networks.
Life Sciences
Proteins, publications,
researchers, patents, topics.
Understanding protein
interactions, new drugs.
Enterprise
Architecture
Servers, applications, metadata,
business objectives.
Data lineage, curating enterprise
architecture.
Product Lifecycle
Management (PLM)
is the process of
managing the entire
lifecycle of a product
from design stage to
development to
go-to-market to
retirement to
disposal.
Quality & Compliance
management
Requirement
management
Manufacturing process
management
Maintenance & repair
management
Source and supply chain
management
Portfolio
management
Document
management
Component
management
Configuration/BOM
management
Classification
management
Workflow/Process
management
Change
management
The stakes of PLM
↗ Productivity
↗ Product quality
↘ Costs
↘ Risks
The field of PLM technology today
Existing PLM systems rely on
RDBMS.
Siloed data, inability to model
real-life complexities and to adapt to
changes.
Performance issues with multi-level
queries (impact analysis).
id: b8953
t$:v52
id: b8953
t$:b88
Components
id: b8953
Bike
Product
t$: v52
t$: b88
Jaycon
Blueline
Sub-components
Limitations of the relational approach
Inability to scale data model without
costs and risks as business evolves.
Searching for information is
time-consuming, 12-30% of
engineer’s time.
Missing insights regarding
dependencies leads to poor decisions
and increases risks.
The advantages of graph technology for PLM
Process changes
quickly
Graph technology are more
flexible and scalable than
relational technology and let
you adapt to change.
Reduce search
time
Easily and quickly find
information from large
datasets with interactive
graph data visualizations.
Access hidden insights
about dependencies
Don’t miss any of the
complex dependencies
between elements even on
multiple levels.
Represent cross-department data
about products and processes as
a graph and store it as one.
Aggregate product hierarchies and
connections into a single source of
truth.
Easily edit, or expand your model
as your needs evolve.
A flexible and unified model of product lifecycle
Save time by searching and
exploring your data through
interactive visualizations.
Filter visualizations to work on
specific elements or specific
sections of the data.
Visually track dependencies between
entities and get contextual insights.
Access hidden insights with graph visualization
Demo: PLM with Linkurious.
- Modeling your product data as a graph
- Visualizing your data in Linkurious Enterprise
- Running impact analysis
Modeling multi-level BOM data into a graph.
Exploring component hierarchy and interdependencies in Linkurious Enterprise
Finding patterns of components counting more than 9 dependencies to subcomponents
Load data into one of the graph or
RDF DB supported by Linkurious:
Neo4j, DataStax, Titan, AllegroGraph.
Windows / Linux / Mac, on-premise
or in the cloud, supports all modern
browsers.
Use Linkurious Enterprise
off-the-shelf interface or build your
custom application with Linkurious
SDK.
How it works.
DMS or DBMS
Synchronize
automatically
ERP (SAP, Oracle
Applications, IFS
Applications…)
Graph DB (Neo4j,
AllegroGraph,
Titan, DataStax..)
Background
International vehicle manufacturer.
Problem
Complex products with many
subcomponents make it hard to
conduct change management.
Benefit
Graph approach breaks silos and
enables easy impact analysis.
Project planning and impact analysis (confidential).
Background
International industrial
manufacturer.
Problem
Numerous BOMs to keep track of.
Hard to understand dependencies
between components.
Benefit
Visualization helps communicate
complex results and drive action.
BOM & component management (confidential).
Our partners
Questions?
www.linkurio.us
contact@linkurio.us
Bibliography :
● Bruggen Blog. Using Neo4j to Manage and Calculate Hierarchies. Available:
http://blog.bruggen.com/2014/03/using-neo4j-to-manage-and-calculate.html [September 2017]
● Product lifecycle management. PLM models. Available:
http://www.product-lifecycle-management.info/plm-elements/plm-models.html [September 2017]
● Beyond PLM. PLM graph-aware architecture and search for data. Available
http://beyondplm.com/2017/05/10/plm-graph-aware-architecture-search-relevant-data/
[September 2017]
● PLM Book. What is the right data model for PLM. Available
http://plmbook.com/what-is-right-data-model-for-plm/
Images:
● Istock
● Data visualization icon by Creative Outlet from the Noun Project
● Browser Analytics icon by Oliviu Stoian from the Noun Project
Sources and links
Ad

More Related Content

What's hot (20)

Demystifying Data Warehousing as a Service - DFW
Demystifying Data Warehousing as a Service - DFWDemystifying Data Warehousing as a Service - DFW
Demystifying Data Warehousing as a Service - DFW
Kent Graziano
 
Ebook - The Guide to Master Data Management
Ebook - The Guide to Master Data Management Ebook - The Guide to Master Data Management
Ebook - The Guide to Master Data Management
Hazelknight Media & Entertainment Pvt Ltd
 
Why Data Vault?
Why Data Vault? Why Data Vault?
Why Data Vault?
Kent Graziano
 
Power BI Overview
Power BI Overview Power BI Overview
Power BI Overview
Gal Vekselman
 
What is Power BI
What is Power BIWhat is Power BI
What is Power BI
Dries Vyvey
 
BI Consultancy - Data, Analytics and Strategy
BI Consultancy - Data, Analytics and StrategyBI Consultancy - Data, Analytics and Strategy
BI Consultancy - Data, Analytics and Strategy
Shivam Dhawan
 
Microsoft dynamics business central
Microsoft dynamics business centralMicrosoft dynamics business central
Microsoft dynamics business central
ZUHAD MAHMOOD
 
Business Intelligence - A Management Perspective
Business Intelligence - A Management PerspectiveBusiness Intelligence - A Management Perspective
Business Intelligence - A Management Perspective
vinaya.hs
 
Enterprise Architecture vs. Data Architecture
Enterprise Architecture vs. Data ArchitectureEnterprise Architecture vs. Data Architecture
Enterprise Architecture vs. Data Architecture
DATAVERSITY
 
What is Product vs. Platform Product Management by Oracle PM
What is Product vs. Platform Product Management by Oracle PMWhat is Product vs. Platform Product Management by Oracle PM
What is Product vs. Platform Product Management by Oracle PM
Product School
 
Ibm data governance framework
Ibm data governance frameworkIbm data governance framework
Ibm data governance framework
kaiyun7631
 
3 Keys To Successful Master Data Management - Final Presentation
3 Keys To Successful Master Data Management - Final Presentation3 Keys To Successful Master Data Management - Final Presentation
3 Keys To Successful Master Data Management - Final Presentation
James Chi
 
Power BI Reporting & Project Online
Power BI Reporting & Project OnlinePower BI Reporting & Project Online
Power BI Reporting & Project Online
Hari Thapliyal
 
Intro Microsoft Dynamics 365
Intro Microsoft Dynamics 365Intro Microsoft Dynamics 365
Intro Microsoft Dynamics 365
Juan Fabian
 
Snowflake Architecture
Snowflake ArchitectureSnowflake Architecture
Snowflake Architecture
mymailforspamfr
 
Microsoft Fabric Introduction
Microsoft Fabric IntroductionMicrosoft Fabric Introduction
Microsoft Fabric Introduction
James Serra
 
Introduction to Microsoft’s Hadoop solution (HDInsight)
Introduction to Microsoft’s Hadoop solution (HDInsight)Introduction to Microsoft’s Hadoop solution (HDInsight)
Introduction to Microsoft’s Hadoop solution (HDInsight)
James Serra
 
Mitigating Supply Chain Risk using Big Data Analytics
Mitigating Supply Chain Risk using Big Data AnalyticsMitigating Supply Chain Risk using Big Data Analytics
Mitigating Supply Chain Risk using Big Data Analytics
Merck Life Sciences
 
Power bi overview
Power bi overview Power bi overview
Power bi overview
Kiki Noviandi
 
Lessons in Data Modeling: Data Modeling & MDM
Lessons in Data Modeling: Data Modeling & MDMLessons in Data Modeling: Data Modeling & MDM
Lessons in Data Modeling: Data Modeling & MDM
DATAVERSITY
 
Demystifying Data Warehousing as a Service - DFW
Demystifying Data Warehousing as a Service - DFWDemystifying Data Warehousing as a Service - DFW
Demystifying Data Warehousing as a Service - DFW
Kent Graziano
 
What is Power BI
What is Power BIWhat is Power BI
What is Power BI
Dries Vyvey
 
BI Consultancy - Data, Analytics and Strategy
BI Consultancy - Data, Analytics and StrategyBI Consultancy - Data, Analytics and Strategy
BI Consultancy - Data, Analytics and Strategy
Shivam Dhawan
 
Microsoft dynamics business central
Microsoft dynamics business centralMicrosoft dynamics business central
Microsoft dynamics business central
ZUHAD MAHMOOD
 
Business Intelligence - A Management Perspective
Business Intelligence - A Management PerspectiveBusiness Intelligence - A Management Perspective
Business Intelligence - A Management Perspective
vinaya.hs
 
Enterprise Architecture vs. Data Architecture
Enterprise Architecture vs. Data ArchitectureEnterprise Architecture vs. Data Architecture
Enterprise Architecture vs. Data Architecture
DATAVERSITY
 
What is Product vs. Platform Product Management by Oracle PM
What is Product vs. Platform Product Management by Oracle PMWhat is Product vs. Platform Product Management by Oracle PM
What is Product vs. Platform Product Management by Oracle PM
Product School
 
Ibm data governance framework
Ibm data governance frameworkIbm data governance framework
Ibm data governance framework
kaiyun7631
 
3 Keys To Successful Master Data Management - Final Presentation
3 Keys To Successful Master Data Management - Final Presentation3 Keys To Successful Master Data Management - Final Presentation
3 Keys To Successful Master Data Management - Final Presentation
James Chi
 
Power BI Reporting & Project Online
Power BI Reporting & Project OnlinePower BI Reporting & Project Online
Power BI Reporting & Project Online
Hari Thapliyal
 
Intro Microsoft Dynamics 365
Intro Microsoft Dynamics 365Intro Microsoft Dynamics 365
Intro Microsoft Dynamics 365
Juan Fabian
 
Microsoft Fabric Introduction
Microsoft Fabric IntroductionMicrosoft Fabric Introduction
Microsoft Fabric Introduction
James Serra
 
Introduction to Microsoft’s Hadoop solution (HDInsight)
Introduction to Microsoft’s Hadoop solution (HDInsight)Introduction to Microsoft’s Hadoop solution (HDInsight)
Introduction to Microsoft’s Hadoop solution (HDInsight)
James Serra
 
Mitigating Supply Chain Risk using Big Data Analytics
Mitigating Supply Chain Risk using Big Data AnalyticsMitigating Supply Chain Risk using Big Data Analytics
Mitigating Supply Chain Risk using Big Data Analytics
Merck Life Sciences
 
Lessons in Data Modeling: Data Modeling & MDM
Lessons in Data Modeling: Data Modeling & MDMLessons in Data Modeling: Data Modeling & MDM
Lessons in Data Modeling: Data Modeling & MDM
DATAVERSITY
 

Similar to Graph-based Product Lifecycle Management (20)

Graph-based Network & IT Management.
Graph-based Network & IT Management.Graph-based Network & IT Management.
Graph-based Network & IT Management.
Linkurious
 
Using Linkurious in your Enterprise Architecture projects
Using Linkurious in your Enterprise Architecture projectsUsing Linkurious in your Enterprise Architecture projects
Using Linkurious in your Enterprise Architecture projects
Linkurious
 
Finding answers through visualization (GraphDay Barcelona Feb 2016)
Finding answers through visualization (GraphDay Barcelona Feb 2016)Finding answers through visualization (GraphDay Barcelona Feb 2016)
Finding answers through visualization (GraphDay Barcelona Feb 2016)
Linkurious
 
Detecting eCommerce Fraud with Neo4j and Linkurious
Detecting eCommerce Fraud with Neo4j and LinkuriousDetecting eCommerce Fraud with Neo4j and Linkurious
Detecting eCommerce Fraud with Neo4j and Linkurious
Neo4j
 
Finding the insights hidden in your graph data
Finding the insights hidden in your graph dataFinding the insights hidden in your graph data
Finding the insights hidden in your graph data
DataStax
 
UNIT-1 Data Visualization used in daily life
UNIT-1 Data Visualization used in daily lifeUNIT-1 Data Visualization used in daily life
UNIT-1 Data Visualization used in daily life
AadityaRathi4
 
UNIT-1 Data Visualization for the life use
UNIT-1 Data Visualization for the life useUNIT-1 Data Visualization for the life use
UNIT-1 Data Visualization for the life use
AadityaRathi4
 
KnowNow Syndication-Oriented Architecture
KnowNow Syndication-Oriented ArchitectureKnowNow Syndication-Oriented Architecture
KnowNow Syndication-Oriented Architecture
rohitkhare
 
Sqrrl Enterprise: Integrate, Explore, Analyze
Sqrrl Enterprise: Integrate, Explore, AnalyzeSqrrl Enterprise: Integrate, Explore, Analyze
Sqrrl Enterprise: Integrate, Explore, Analyze
Sqrrl
 
Presentazione Roambi Business_new branding
Presentazione Roambi Business_new brandingPresentazione Roambi Business_new branding
Presentazione Roambi Business_new branding
Ines Tammaro
 
Oracle Analytics Cloud (1).pptx
Oracle Analytics Cloud (1).pptxOracle Analytics Cloud (1).pptx
Oracle Analytics Cloud (1).pptx
RichardGrayson13
 
25 Best Data Mining Tools in 2022
25 Best Data Mining Tools in 202225 Best Data Mining Tools in 2022
25 Best Data Mining Tools in 2022
Kavika Roy
 
Splunk Enterprise 6.1 Solutions Brief
Splunk Enterprise 6.1 Solutions BriefSplunk Enterprise 6.1 Solutions Brief
Splunk Enterprise 6.1 Solutions Brief
Manish Kalra
 
AI, ML and Graph Algorithms: Real Life Use Cases with Neo4j
AI, ML and Graph Algorithms: Real Life Use Cases with Neo4jAI, ML and Graph Algorithms: Real Life Use Cases with Neo4j
AI, ML and Graph Algorithms: Real Life Use Cases with Neo4j
Ivan Zoratti
 
Splunk for big_data
Splunk for big_dataSplunk for big_data
Splunk for big_data
Greg Hanchin
 
Data Virtualization: Introduction and Business Value (UK)
Data Virtualization: Introduction and Business Value (UK)Data Virtualization: Introduction and Business Value (UK)
Data Virtualization: Introduction and Business Value (UK)
Denodo
 
Denodo DataFest 2016: Data Science: Operationalizing Analytical Models in Rea...
Denodo DataFest 2016: Data Science: Operationalizing Analytical Models in Rea...Denodo DataFest 2016: Data Science: Operationalizing Analytical Models in Rea...
Denodo DataFest 2016: Data Science: Operationalizing Analytical Models in Rea...
Denodo
 
Big data analytics for the bussiness purpose
Big data analytics for the bussiness purposeBig data analytics for the bussiness purpose
Big data analytics for the bussiness purpose
AadityaRathi4
 
Mark logic for dita
Mark logic for ditaMark logic for dita
Mark logic for dita
Fernando Mesa
 
Big Data Analytics PPT - S1 working .pptx
Big Data Analytics PPT - S1 working .pptxBig Data Analytics PPT - S1 working .pptx
Big Data Analytics PPT - S1 working .pptx
VivekChaurasia43
 
Graph-based Network & IT Management.
Graph-based Network & IT Management.Graph-based Network & IT Management.
Graph-based Network & IT Management.
Linkurious
 
Using Linkurious in your Enterprise Architecture projects
Using Linkurious in your Enterprise Architecture projectsUsing Linkurious in your Enterprise Architecture projects
Using Linkurious in your Enterprise Architecture projects
Linkurious
 
Finding answers through visualization (GraphDay Barcelona Feb 2016)
Finding answers through visualization (GraphDay Barcelona Feb 2016)Finding answers through visualization (GraphDay Barcelona Feb 2016)
Finding answers through visualization (GraphDay Barcelona Feb 2016)
Linkurious
 
Detecting eCommerce Fraud with Neo4j and Linkurious
Detecting eCommerce Fraud with Neo4j and LinkuriousDetecting eCommerce Fraud with Neo4j and Linkurious
Detecting eCommerce Fraud with Neo4j and Linkurious
Neo4j
 
Finding the insights hidden in your graph data
Finding the insights hidden in your graph dataFinding the insights hidden in your graph data
Finding the insights hidden in your graph data
DataStax
 
UNIT-1 Data Visualization used in daily life
UNIT-1 Data Visualization used in daily lifeUNIT-1 Data Visualization used in daily life
UNIT-1 Data Visualization used in daily life
AadityaRathi4
 
UNIT-1 Data Visualization for the life use
UNIT-1 Data Visualization for the life useUNIT-1 Data Visualization for the life use
UNIT-1 Data Visualization for the life use
AadityaRathi4
 
KnowNow Syndication-Oriented Architecture
KnowNow Syndication-Oriented ArchitectureKnowNow Syndication-Oriented Architecture
KnowNow Syndication-Oriented Architecture
rohitkhare
 
Sqrrl Enterprise: Integrate, Explore, Analyze
Sqrrl Enterprise: Integrate, Explore, AnalyzeSqrrl Enterprise: Integrate, Explore, Analyze
Sqrrl Enterprise: Integrate, Explore, Analyze
Sqrrl
 
Presentazione Roambi Business_new branding
Presentazione Roambi Business_new brandingPresentazione Roambi Business_new branding
Presentazione Roambi Business_new branding
Ines Tammaro
 
Oracle Analytics Cloud (1).pptx
Oracle Analytics Cloud (1).pptxOracle Analytics Cloud (1).pptx
Oracle Analytics Cloud (1).pptx
RichardGrayson13
 
25 Best Data Mining Tools in 2022
25 Best Data Mining Tools in 202225 Best Data Mining Tools in 2022
25 Best Data Mining Tools in 2022
Kavika Roy
 
Splunk Enterprise 6.1 Solutions Brief
Splunk Enterprise 6.1 Solutions BriefSplunk Enterprise 6.1 Solutions Brief
Splunk Enterprise 6.1 Solutions Brief
Manish Kalra
 
AI, ML and Graph Algorithms: Real Life Use Cases with Neo4j
AI, ML and Graph Algorithms: Real Life Use Cases with Neo4jAI, ML and Graph Algorithms: Real Life Use Cases with Neo4j
AI, ML and Graph Algorithms: Real Life Use Cases with Neo4j
Ivan Zoratti
 
Splunk for big_data
Splunk for big_dataSplunk for big_data
Splunk for big_data
Greg Hanchin
 
Data Virtualization: Introduction and Business Value (UK)
Data Virtualization: Introduction and Business Value (UK)Data Virtualization: Introduction and Business Value (UK)
Data Virtualization: Introduction and Business Value (UK)
Denodo
 
Denodo DataFest 2016: Data Science: Operationalizing Analytical Models in Rea...
Denodo DataFest 2016: Data Science: Operationalizing Analytical Models in Rea...Denodo DataFest 2016: Data Science: Operationalizing Analytical Models in Rea...
Denodo DataFest 2016: Data Science: Operationalizing Analytical Models in Rea...
Denodo
 
Big data analytics for the bussiness purpose
Big data analytics for the bussiness purposeBig data analytics for the bussiness purpose
Big data analytics for the bussiness purpose
AadityaRathi4
 
Big Data Analytics PPT - S1 working .pptx
Big Data Analytics PPT - S1 working .pptxBig Data Analytics PPT - S1 working .pptx
Big Data Analytics PPT - S1 working .pptx
VivekChaurasia43
 
Ad

More from Linkurious (20)

Using graph technology for multi-INT investigations
Using graph technology for multi-INT investigationsUsing graph technology for multi-INT investigations
Using graph technology for multi-INT investigations
Linkurious
 
Webinar: What's new in Linkurious Enterprise 2.8
Webinar: What's new in Linkurious Enterprise 2.8Webinar: What's new in Linkurious Enterprise 2.8
Webinar: What's new in Linkurious Enterprise 2.8
Linkurious
 
Graph-based intelligence analysis
Graph-based intelligence analysis Graph-based intelligence analysis
Graph-based intelligence analysis
Linkurious
 
What's new in Linkurious Enterprise 2.7
What's new in Linkurious Enterprise 2.7What's new in Linkurious Enterprise 2.7
What's new in Linkurious Enterprise 2.7
Linkurious
 
How to visualize Cosmos DB graph data
How to visualize Cosmos DB graph dataHow to visualize Cosmos DB graph data
How to visualize Cosmos DB graph data
Linkurious
 
GraphTech Ecosystem - part 3: Graph Visualization
GraphTech Ecosystem - part 3: Graph VisualizationGraphTech Ecosystem - part 3: Graph Visualization
GraphTech Ecosystem - part 3: Graph Visualization
Linkurious
 
Getting started with Cosmos DB + Linkurious Enterprise
Getting started with Cosmos DB + Linkurious EnterpriseGetting started with Cosmos DB + Linkurious Enterprise
Getting started with Cosmos DB + Linkurious Enterprise
Linkurious
 
GraphTech Ecosystem - part 2: Graph Analytics
 GraphTech Ecosystem - part 2: Graph Analytics GraphTech Ecosystem - part 2: Graph Analytics
GraphTech Ecosystem - part 2: Graph Analytics
Linkurious
 
GraphTech Ecosystem - part 1: Graph Databases
GraphTech Ecosystem - part 1: Graph DatabasesGraphTech Ecosystem - part 1: Graph Databases
GraphTech Ecosystem - part 1: Graph Databases
Linkurious
 
3 types of fraud graph analytics can help defeat
3 types of fraud graph analytics can help defeat3 types of fraud graph analytics can help defeat
3 types of fraud graph analytics can help defeat
Linkurious
 
Graph analytics in Linkurious Enterprise
Graph analytics in Linkurious EnterpriseGraph analytics in Linkurious Enterprise
Graph analytics in Linkurious Enterprise
Linkurious
 
Graph technology and data-journalism: the case of the Paradise Papers
Graph technology and data-journalism: the case of the Paradise PapersGraph technology and data-journalism: the case of the Paradise Papers
Graph technology and data-journalism: the case of the Paradise Papers
Linkurious
 
Visualize the Knowledge Graph and Unleash Your Data
Visualize the Knowledge Graph and Unleash Your DataVisualize the Knowledge Graph and Unleash Your Data
Visualize the Knowledge Graph and Unleash Your Data
Linkurious
 
Fraudes Financières: Méthodes de Prévention et Détection
Fraudes Financières: Méthodes de Prévention et DétectionFraudes Financières: Méthodes de Prévention et Détection
Fraudes Financières: Méthodes de Prévention et Détection
Linkurious
 
Detecting eCommerce Fraud with Neo4j and Linkurious
Detecting eCommerce Fraud with Neo4j and LinkuriousDetecting eCommerce Fraud with Neo4j and Linkurious
Detecting eCommerce Fraud with Neo4j and Linkurious
Linkurious
 
Graph-powered data lineage in Finance
Graph-powered data lineage in FinanceGraph-powered data lineage in Finance
Graph-powered data lineage in Finance
Linkurious
 
Linkurious SDK: Build enterprise-ready graph applications faster
Linkurious SDK: Build enterprise-ready graph applications fasterLinkurious SDK: Build enterprise-ready graph applications faster
Linkurious SDK: Build enterprise-ready graph applications faster
Linkurious
 
Fighting financial crime with graph analysis at BIWA Summit 2017
Fighting financial crime with graph analysis at BIWA Summit 2017Fighting financial crime with graph analysis at BIWA Summit 2017
Fighting financial crime with graph analysis at BIWA Summit 2017
Linkurious
 
Reinforcing AML systems with graph technologies.
Reinforcing AML systems with graph technologies.Reinforcing AML systems with graph technologies.
Reinforcing AML systems with graph technologies.
Linkurious
 
Using graphs technologies for intelligence analysis.
Using graphs technologies for intelligence analysis. Using graphs technologies for intelligence analysis.
Using graphs technologies for intelligence analysis.
Linkurious
 
Using graph technology for multi-INT investigations
Using graph technology for multi-INT investigationsUsing graph technology for multi-INT investigations
Using graph technology for multi-INT investigations
Linkurious
 
Webinar: What's new in Linkurious Enterprise 2.8
Webinar: What's new in Linkurious Enterprise 2.8Webinar: What's new in Linkurious Enterprise 2.8
Webinar: What's new in Linkurious Enterprise 2.8
Linkurious
 
Graph-based intelligence analysis
Graph-based intelligence analysis Graph-based intelligence analysis
Graph-based intelligence analysis
Linkurious
 
What's new in Linkurious Enterprise 2.7
What's new in Linkurious Enterprise 2.7What's new in Linkurious Enterprise 2.7
What's new in Linkurious Enterprise 2.7
Linkurious
 
How to visualize Cosmos DB graph data
How to visualize Cosmos DB graph dataHow to visualize Cosmos DB graph data
How to visualize Cosmos DB graph data
Linkurious
 
GraphTech Ecosystem - part 3: Graph Visualization
GraphTech Ecosystem - part 3: Graph VisualizationGraphTech Ecosystem - part 3: Graph Visualization
GraphTech Ecosystem - part 3: Graph Visualization
Linkurious
 
Getting started with Cosmos DB + Linkurious Enterprise
Getting started with Cosmos DB + Linkurious EnterpriseGetting started with Cosmos DB + Linkurious Enterprise
Getting started with Cosmos DB + Linkurious Enterprise
Linkurious
 
GraphTech Ecosystem - part 2: Graph Analytics
 GraphTech Ecosystem - part 2: Graph Analytics GraphTech Ecosystem - part 2: Graph Analytics
GraphTech Ecosystem - part 2: Graph Analytics
Linkurious
 
GraphTech Ecosystem - part 1: Graph Databases
GraphTech Ecosystem - part 1: Graph DatabasesGraphTech Ecosystem - part 1: Graph Databases
GraphTech Ecosystem - part 1: Graph Databases
Linkurious
 
3 types of fraud graph analytics can help defeat
3 types of fraud graph analytics can help defeat3 types of fraud graph analytics can help defeat
3 types of fraud graph analytics can help defeat
Linkurious
 
Graph analytics in Linkurious Enterprise
Graph analytics in Linkurious EnterpriseGraph analytics in Linkurious Enterprise
Graph analytics in Linkurious Enterprise
Linkurious
 
Graph technology and data-journalism: the case of the Paradise Papers
Graph technology and data-journalism: the case of the Paradise PapersGraph technology and data-journalism: the case of the Paradise Papers
Graph technology and data-journalism: the case of the Paradise Papers
Linkurious
 
Visualize the Knowledge Graph and Unleash Your Data
Visualize the Knowledge Graph and Unleash Your DataVisualize the Knowledge Graph and Unleash Your Data
Visualize the Knowledge Graph and Unleash Your Data
Linkurious
 
Fraudes Financières: Méthodes de Prévention et Détection
Fraudes Financières: Méthodes de Prévention et DétectionFraudes Financières: Méthodes de Prévention et Détection
Fraudes Financières: Méthodes de Prévention et Détection
Linkurious
 
Detecting eCommerce Fraud with Neo4j and Linkurious
Detecting eCommerce Fraud with Neo4j and LinkuriousDetecting eCommerce Fraud with Neo4j and Linkurious
Detecting eCommerce Fraud with Neo4j and Linkurious
Linkurious
 
Graph-powered data lineage in Finance
Graph-powered data lineage in FinanceGraph-powered data lineage in Finance
Graph-powered data lineage in Finance
Linkurious
 
Linkurious SDK: Build enterprise-ready graph applications faster
Linkurious SDK: Build enterprise-ready graph applications fasterLinkurious SDK: Build enterprise-ready graph applications faster
Linkurious SDK: Build enterprise-ready graph applications faster
Linkurious
 
Fighting financial crime with graph analysis at BIWA Summit 2017
Fighting financial crime with graph analysis at BIWA Summit 2017Fighting financial crime with graph analysis at BIWA Summit 2017
Fighting financial crime with graph analysis at BIWA Summit 2017
Linkurious
 
Reinforcing AML systems with graph technologies.
Reinforcing AML systems with graph technologies.Reinforcing AML systems with graph technologies.
Reinforcing AML systems with graph technologies.
Linkurious
 
Using graphs technologies for intelligence analysis.
Using graphs technologies for intelligence analysis. Using graphs technologies for intelligence analysis.
Using graphs technologies for intelligence analysis.
Linkurious
 
Ad

Recently uploaded (20)

LLM finetuning for multiple choice google bert
LLM finetuning for multiple choice google bertLLM finetuning for multiple choice google bert
LLM finetuning for multiple choice google bert
ChadapornK
 
i_o updated.pptx 6=₹cnjxifj,lsbd ধ and vjcjcdbgjfu n smn u cut the lb, it ও o...
i_o updated.pptx 6=₹cnjxifj,lsbd ধ and vjcjcdbgjfu n smn u cut the lb, it ও o...i_o updated.pptx 6=₹cnjxifj,lsbd ধ and vjcjcdbgjfu n smn u cut the lb, it ও o...
i_o updated.pptx 6=₹cnjxifj,lsbd ধ and vjcjcdbgjfu n smn u cut the lb, it ও o...
ggg032019
 
Safety Innovation in Mt. Vernon A Westchester County Model for New Rochelle a...
Safety Innovation in Mt. Vernon A Westchester County Model for New Rochelle a...Safety Innovation in Mt. Vernon A Westchester County Model for New Rochelle a...
Safety Innovation in Mt. Vernon A Westchester County Model for New Rochelle a...
James Francis Paradigm Asset Management
 
Call illuminati Agent in uganda+256776963507/0741506136
Call illuminati Agent in uganda+256776963507/0741506136Call illuminati Agent in uganda+256776963507/0741506136
Call illuminati Agent in uganda+256776963507/0741506136
illuminati Agent uganda call+256776963507/0741506136
 
Digilocker under workingProcess Flow.pptx
Digilocker  under workingProcess Flow.pptxDigilocker  under workingProcess Flow.pptx
Digilocker under workingProcess Flow.pptx
satnamsadguru491
 
brainstorming-techniques-infographics.pptx
brainstorming-techniques-infographics.pptxbrainstorming-techniques-infographics.pptx
brainstorming-techniques-infographics.pptx
maritzacastro321
 
Chromatography_Detailed_Information.docx
Chromatography_Detailed_Information.docxChromatography_Detailed_Information.docx
Chromatography_Detailed_Information.docx
NohaSalah45
 
History of Science and Technologyandits source.pptx
History of Science and Technologyandits source.pptxHistory of Science and Technologyandits source.pptx
History of Science and Technologyandits source.pptx
balongcastrojo
 
Secure_File_Storage_Hybrid_Cryptography.pptx..
Secure_File_Storage_Hybrid_Cryptography.pptx..Secure_File_Storage_Hybrid_Cryptography.pptx..
Secure_File_Storage_Hybrid_Cryptography.pptx..
yuvarajreddy2002
 
AllContacts Vs AllSubscribers - SFMC.pptx
AllContacts Vs AllSubscribers - SFMC.pptxAllContacts Vs AllSubscribers - SFMC.pptx
AllContacts Vs AllSubscribers - SFMC.pptx
bpkr84
 
md-presentHHHHHHHHHHHHHHHHHHHHHHHHHHHHHHation.pptx
md-presentHHHHHHHHHHHHHHHHHHHHHHHHHHHHHHation.pptxmd-presentHHHHHHHHHHHHHHHHHHHHHHHHHHHHHHation.pptx
md-presentHHHHHHHHHHHHHHHHHHHHHHHHHHHHHHation.pptx
fatimalazaar2004
 
Conic Sectionfaggavahabaayhahahahahs.pptx
Conic Sectionfaggavahabaayhahahahahs.pptxConic Sectionfaggavahabaayhahahahahs.pptx
Conic Sectionfaggavahabaayhahahahahs.pptx
taiwanesechetan
 
EDU533 DEMO.pptxccccvbnjjkoo jhgggggbbbb
EDU533 DEMO.pptxccccvbnjjkoo jhgggggbbbbEDU533 DEMO.pptxccccvbnjjkoo jhgggggbbbb
EDU533 DEMO.pptxccccvbnjjkoo jhgggggbbbb
JessaMaeEvangelista2
 
AI Competitor Analysis: How to Monitor and Outperform Your Competitors
AI Competitor Analysis: How to Monitor and Outperform Your CompetitorsAI Competitor Analysis: How to Monitor and Outperform Your Competitors
AI Competitor Analysis: How to Monitor and Outperform Your Competitors
Contify
 
Template_A3nnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnn
Template_A3nnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnTemplate_A3nnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnn
Template_A3nnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnn
cegiver630
 
How to join illuminati Agent in uganda call+256776963507/0741506136
How to join illuminati Agent in uganda call+256776963507/0741506136How to join illuminati Agent in uganda call+256776963507/0741506136
How to join illuminati Agent in uganda call+256776963507/0741506136
illuminati Agent uganda call+256776963507/0741506136
 
computer organization and assembly language.docx
computer organization and assembly language.docxcomputer organization and assembly language.docx
computer organization and assembly language.docx
alisoftwareengineer1
 
Minions Want to eat presentacion muy linda
Minions Want to eat presentacion muy lindaMinions Want to eat presentacion muy linda
Minions Want to eat presentacion muy linda
CarlaAndradesSoler1
 
Customer Segmentation using K-Means clustering
Customer Segmentation using K-Means clusteringCustomer Segmentation using K-Means clustering
Customer Segmentation using K-Means clustering
Ingrid Nyakerario
 
Cleaned_Lecture 6666666_Simulation_I.pdf
Cleaned_Lecture 6666666_Simulation_I.pdfCleaned_Lecture 6666666_Simulation_I.pdf
Cleaned_Lecture 6666666_Simulation_I.pdf
alcinialbob1234
 
LLM finetuning for multiple choice google bert
LLM finetuning for multiple choice google bertLLM finetuning for multiple choice google bert
LLM finetuning for multiple choice google bert
ChadapornK
 
i_o updated.pptx 6=₹cnjxifj,lsbd ধ and vjcjcdbgjfu n smn u cut the lb, it ও o...
i_o updated.pptx 6=₹cnjxifj,lsbd ধ and vjcjcdbgjfu n smn u cut the lb, it ও o...i_o updated.pptx 6=₹cnjxifj,lsbd ধ and vjcjcdbgjfu n smn u cut the lb, it ও o...
i_o updated.pptx 6=₹cnjxifj,lsbd ধ and vjcjcdbgjfu n smn u cut the lb, it ও o...
ggg032019
 
Safety Innovation in Mt. Vernon A Westchester County Model for New Rochelle a...
Safety Innovation in Mt. Vernon A Westchester County Model for New Rochelle a...Safety Innovation in Mt. Vernon A Westchester County Model for New Rochelle a...
Safety Innovation in Mt. Vernon A Westchester County Model for New Rochelle a...
James Francis Paradigm Asset Management
 
Digilocker under workingProcess Flow.pptx
Digilocker  under workingProcess Flow.pptxDigilocker  under workingProcess Flow.pptx
Digilocker under workingProcess Flow.pptx
satnamsadguru491
 
brainstorming-techniques-infographics.pptx
brainstorming-techniques-infographics.pptxbrainstorming-techniques-infographics.pptx
brainstorming-techniques-infographics.pptx
maritzacastro321
 
Chromatography_Detailed_Information.docx
Chromatography_Detailed_Information.docxChromatography_Detailed_Information.docx
Chromatography_Detailed_Information.docx
NohaSalah45
 
History of Science and Technologyandits source.pptx
History of Science and Technologyandits source.pptxHistory of Science and Technologyandits source.pptx
History of Science and Technologyandits source.pptx
balongcastrojo
 
Secure_File_Storage_Hybrid_Cryptography.pptx..
Secure_File_Storage_Hybrid_Cryptography.pptx..Secure_File_Storage_Hybrid_Cryptography.pptx..
Secure_File_Storage_Hybrid_Cryptography.pptx..
yuvarajreddy2002
 
AllContacts Vs AllSubscribers - SFMC.pptx
AllContacts Vs AllSubscribers - SFMC.pptxAllContacts Vs AllSubscribers - SFMC.pptx
AllContacts Vs AllSubscribers - SFMC.pptx
bpkr84
 
md-presentHHHHHHHHHHHHHHHHHHHHHHHHHHHHHHation.pptx
md-presentHHHHHHHHHHHHHHHHHHHHHHHHHHHHHHation.pptxmd-presentHHHHHHHHHHHHHHHHHHHHHHHHHHHHHHation.pptx
md-presentHHHHHHHHHHHHHHHHHHHHHHHHHHHHHHation.pptx
fatimalazaar2004
 
Conic Sectionfaggavahabaayhahahahahs.pptx
Conic Sectionfaggavahabaayhahahahahs.pptxConic Sectionfaggavahabaayhahahahahs.pptx
Conic Sectionfaggavahabaayhahahahahs.pptx
taiwanesechetan
 
EDU533 DEMO.pptxccccvbnjjkoo jhgggggbbbb
EDU533 DEMO.pptxccccvbnjjkoo jhgggggbbbbEDU533 DEMO.pptxccccvbnjjkoo jhgggggbbbb
EDU533 DEMO.pptxccccvbnjjkoo jhgggggbbbb
JessaMaeEvangelista2
 
AI Competitor Analysis: How to Monitor and Outperform Your Competitors
AI Competitor Analysis: How to Monitor and Outperform Your CompetitorsAI Competitor Analysis: How to Monitor and Outperform Your Competitors
AI Competitor Analysis: How to Monitor and Outperform Your Competitors
Contify
 
Template_A3nnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnn
Template_A3nnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnTemplate_A3nnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnn
Template_A3nnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnnn
cegiver630
 
computer organization and assembly language.docx
computer organization and assembly language.docxcomputer organization and assembly language.docx
computer organization and assembly language.docx
alisoftwareengineer1
 
Minions Want to eat presentacion muy linda
Minions Want to eat presentacion muy lindaMinions Want to eat presentacion muy linda
Minions Want to eat presentacion muy linda
CarlaAndradesSoler1
 
Customer Segmentation using K-Means clustering
Customer Segmentation using K-Means clusteringCustomer Segmentation using K-Means clustering
Customer Segmentation using K-Means clustering
Ingrid Nyakerario
 
Cleaned_Lecture 6666666_Simulation_I.pdf
Cleaned_Lecture 6666666_Simulation_I.pdfCleaned_Lecture 6666666_Simulation_I.pdf
Cleaned_Lecture 6666666_Simulation_I.pdf
alcinialbob1234
 

Graph-based Product Lifecycle Management

  • 1. SAS founded in 2013 in Paris | http://linkurio.us | @linkurious Graph-based Product Lifecycle Management
  • 2. Graph visualization and analysis startup founded in 2013. 40+ clients in 20+ countries (NASA, Cisco, French Ministry of Finances). Linkurious Enterprise and Linkurious SDK. About Linkurious
  • 3. What is graph technology? A graph is a data structure that consists of nodes and edges. Graph databases store & process large connected graphs in real-time. Linkurious’ software helps analysts easily detect and investigate insights hidden in graph data. Node STORE ACCESS Data Graph database Linkurious ORGANIZE Edge
  • 4. Some use cases Cyber-security Servers, switches, routers, applications, etc. Suspicious activity patterns, identify impact of a compromised asset. IT Operations Servers, switches, routers, applications, etc. Impact analysis, root cause analysis. Intelligence People, emails, transactions, phone call records, social. Detecting and investigating criminal or terrorist networks. AML People, transactions, watch-lists, companies, organizations. Detecting suspicious transactions, identify beneficiary owners. Fraud Claims, people, financial records, personal data. Detecting and investigating criminal networks. Life Sciences Proteins, publications, researchers, patents, topics. Understanding protein interactions, new drugs. Enterprise Architecture Servers, applications, metadata, business objectives. Data lineage, curating enterprise architecture.
  • 5. Product Lifecycle Management (PLM) is the process of managing the entire lifecycle of a product from design stage to development to go-to-market to retirement to disposal.
  • 6. Quality & Compliance management Requirement management Manufacturing process management Maintenance & repair management Source and supply chain management Portfolio management Document management Component management Configuration/BOM management Classification management Workflow/Process management Change management The stakes of PLM ↗ Productivity ↗ Product quality ↘ Costs ↘ Risks
  • 7. The field of PLM technology today Existing PLM systems rely on RDBMS. Siloed data, inability to model real-life complexities and to adapt to changes. Performance issues with multi-level queries (impact analysis). id: b8953 t$:v52 id: b8953 t$:b88 Components id: b8953 Bike Product t$: v52 t$: b88 Jaycon Blueline Sub-components
  • 8. Limitations of the relational approach Inability to scale data model without costs and risks as business evolves. Searching for information is time-consuming, 12-30% of engineer’s time. Missing insights regarding dependencies leads to poor decisions and increases risks.
  • 9. The advantages of graph technology for PLM Process changes quickly Graph technology are more flexible and scalable than relational technology and let you adapt to change. Reduce search time Easily and quickly find information from large datasets with interactive graph data visualizations. Access hidden insights about dependencies Don’t miss any of the complex dependencies between elements even on multiple levels.
  • 10. Represent cross-department data about products and processes as a graph and store it as one. Aggregate product hierarchies and connections into a single source of truth. Easily edit, or expand your model as your needs evolve. A flexible and unified model of product lifecycle
  • 11. Save time by searching and exploring your data through interactive visualizations. Filter visualizations to work on specific elements or specific sections of the data. Visually track dependencies between entities and get contextual insights. Access hidden insights with graph visualization
  • 12. Demo: PLM with Linkurious. - Modeling your product data as a graph - Visualizing your data in Linkurious Enterprise - Running impact analysis
  • 13. Modeling multi-level BOM data into a graph.
  • 14. Exploring component hierarchy and interdependencies in Linkurious Enterprise
  • 15. Finding patterns of components counting more than 9 dependencies to subcomponents
  • 16. Load data into one of the graph or RDF DB supported by Linkurious: Neo4j, DataStax, Titan, AllegroGraph. Windows / Linux / Mac, on-premise or in the cloud, supports all modern browsers. Use Linkurious Enterprise off-the-shelf interface or build your custom application with Linkurious SDK. How it works. DMS or DBMS Synchronize automatically ERP (SAP, Oracle Applications, IFS Applications…) Graph DB (Neo4j, AllegroGraph, Titan, DataStax..)
  • 17. Background International vehicle manufacturer. Problem Complex products with many subcomponents make it hard to conduct change management. Benefit Graph approach breaks silos and enables easy impact analysis. Project planning and impact analysis (confidential).
  • 18. Background International industrial manufacturer. Problem Numerous BOMs to keep track of. Hard to understand dependencies between components. Benefit Visualization helps communicate complex results and drive action. BOM & component management (confidential).
  • 21. Bibliography : ● Bruggen Blog. Using Neo4j to Manage and Calculate Hierarchies. Available: http://blog.bruggen.com/2014/03/using-neo4j-to-manage-and-calculate.html [September 2017] ● Product lifecycle management. PLM models. Available: http://www.product-lifecycle-management.info/plm-elements/plm-models.html [September 2017] ● Beyond PLM. PLM graph-aware architecture and search for data. Available http://beyondplm.com/2017/05/10/plm-graph-aware-architecture-search-relevant-data/ [September 2017] ● PLM Book. What is the right data model for PLM. Available http://plmbook.com/what-is-right-data-model-for-plm/ Images: ● Istock ● Data visualization icon by Creative Outlet from the Noun Project ● Browser Analytics icon by Oliviu Stoian from the Noun Project Sources and links