SlideShare uma empresa Scribd logo
1 de 43
Baixar para ler offline
H T	
  Technologies	
   2013	
  
HOST:	
  
Eric	
  Kavanagh	
  
 	
  	
  THIS	
  YEAR	
  is…	
  
The	
  Real-­‐Time	
  Enterprise	
  
ž  Data-­‐driven	
  organizations	
  want	
  faster	
  time-­‐to-­‐
insight	
  and	
  time-­‐to-­‐action	
  
ž  Data	
  governance	
  and	
  quality	
  tend	
  to	
  slow	
  down	
  
critical	
  processes	
  
ž  “Intelligent	
  Operations”	
  can	
  be	
  the	
  key	
  to	
  
delivering	
  agile,	
  robust	
  enterprise	
  functionality	
  
ANALYST:	
  
Krish	
  Krishnan	
  
Founder	
  &	
  CEO,	
  Sixth	
  Sense	
  Advisors	
  
ANALYST:	
  
Robin	
  Bloor	
  
Chief	
  Analyst,	
  The	
  Bloor	
  Group	
  
GUEST:	
  
Dave	
  Duggal	
  
Founder	
  &	
  Managing	
  Director,	
  EnterpriseWeb	
  
THE	
  LINE	
  UP	
  
INTRODUCING	
  
Krish	
  Krishnan	
  
+
Next Generation Enterprise Application
Beyond Big Data and Cloud
+
State of Enterprise Today
n  Multiple producers and consumers need to share data in a
collaborative decision support and application environment
n  Tight coupling of information management and decision
support hampers innovation
n  Market opportunity to embrace newer technologies like
cloud and dynamic application interfaces not successful due
to inherent design and deployment issues.
n  Proliferation of different data models (XML schemas) in the
enterprise
n  No consistent semantics across the Enterprise
+
Demand of the Market
n  Agile Enterprise
n  Innovation – A Core Skill
n  Flexible and Adaptive Architecture
n  Robust Security – User and Data
n  Inter-Operability – Cloud and On-Premise Ready
n  API – Application Platform Interface
n  Plug and Play Deployment
+
Defining The Next Generation
n  The application platform for the next generation enterprise
n  Will be cloud driven
n  Will be based on platforms like REST API
n  Will be late binding models allowing for greatest amount of
architecture flexibility
n  Will be ready for plug and play deployments
n  Will be applicable across desktop, tablets and mobile
environments
n  Will not carry data until the application is used
+
Enterprise Architecture Driven
Strategy
Ross,Weill & Robertson Architecture
+
Benefits of a New Strategy
o  Strategic Initiatives
o  Operating Model
o  Enterprise Architecture
o  Engagement Model
o  Foundation for execution
n  The IT infrastructure and digitized
business processes automating a
company’s core capabilities.
+
Next Generation Enterprise
l  With the evolution of the enterprise architecture as a
strategy that aligns business and technology into one
coherent operation and execution.
l  Assurance is gained through an ability to not only have all the
information but also, through coherency, have the information
provide access to additional knowledge within the enterprise.
l  Alignment is very mature because the rules for processing
information will allow descriptions to be compared for
alignment and adjusted accordingly.
l  Agility is achieved because the designs are coherent, which
includes an understanding and practice of loose coupling by
design instead of tight coupling by accident through the entire
architecture process.
INTRODUCING	
  
Robin	
  Bloor	
  
Agents for Agility - The Just-in-Time Enterprise Has Arrived
The Litany of Software Challenges
u  Developer Productivity
u  Maintainability (Future-
Proofing)
u  Reusability
u  Application Integration
u  Flexibility
u  Performance &
Scalability
u  Time to deploy, Time to
value
A Record of Partial Solutions
Database & relational
database
CASE & visual
development
4GLs &
language
innovation
Programming
methodologies
Object orientation
Enterprise
application
integration
Platforms: compatible
integrated stacks
BPM
SOA
The Archaeology of Software
Data Centers often resemble ancient/
modern cities like Rome — some of the
infrastructure and the applications are
very old, but still functioning; some are
working very well
“Rip and replace” is rarely an option for
much of this, and yet new “must-adopt”
technologies and applications appear
regularly at every level
This is one of the primary reasons why
corporate IT remains expensive
Is there an architecture
or even a platform that
can handle this
situation?
And By The Way…
We are at the start of a major
transformation in IT as we attempt to
come to grips with:
The Internet of Things
Event-driven
Architectures
Real-time Everything
Image Credits
The joyous Bosch artwork furnished by Wikimedia Commons:
1.  http://commons.wikimedia.org/wiki/File%3AChrist_in_Limbo
%2C_follower_of_Hieronymous_Bosch%2C_Flemish%2C_c._1550_-
_Museum_of_Fine_Arts%2C_Springfield%2C_MA_-_DSC04055.JPG
2.  http://commons.wikimedia.org/wiki/
File:Two_Monsters_by_Hieronimus_Bosch.jpg
3.  http://commons.wikimedia.org/wiki/File:Group_of_ten_spectators.jpg
4.  http://commons.wikimedia.org/wiki/
File:Jheronimus_Bosch_023_exterior_02.jpg
5.  http://commons.wikimedia.org/wiki/File:Hieronymus_Bosch_013.jpg
Thank You Robin Bloor
Robin.Bloor@bloorgroup.com
www.bloorgroup.com
INTRODUCING	
  
Dave	
  Duggal	
  
Enabling the real-time data-driven enterprise ™
Copyright	
  2013,	
  EnterpriseWeb	
  LLC	
  
EnterpriseWeb™
	
  
EnterpriseWeb	
  is	
  a	
  real-­‐:me	
  applica:on	
  pla=orm	
  
for	
  ‘smart’	
  data-­‐driven	
  services,	
  apps	
  and	
  processes.	
  
	
  
EnterpriseWeb	
  supports	
  real-­‐:me	
  feedback	
  with	
  
embedded	
  Opera:onal	
  Intelligence	
  and	
  Predic:ve	
  
Analy:cs.	
  
	
  
It	
  makes	
  event-­‐based	
  architecture	
  prac:cal,	
  scalable	
  
and	
  affordable.	
  
Copyright	
  2013,	
  EnterpriseWeb	
  LLC	
  
Copyright	
  2013,	
  EnterpriseWeb	
  LLC	
  
Real-Time for Alignment of Business and IT
Model-Driven
User-Driven
Enterprise Agility
Machine-Learning
Change Management
Personalization
Exception Management
Systems of Engagement
•  Respond	
  to	
  opportuni:es	
  and	
  threats	
  
•  Op:mize	
  service	
  delivery	
  
•  Inject	
  Compliance,	
  Governance	
  and	
  System	
  Controls	
  
•  Automate	
  good	
  architectural	
  prac:ce	
  
EnterpriseWeb™
is	
  ideal	
  for	
  	
  -­‐	
  
•  Intelligent	
  Business	
  Process	
  Management	
  (iBPM)	
  and	
  Adap:ve	
  Case	
  
Management	
  (ACM):	
  	
  Applica:ons	
  for	
  dynamic	
  domains	
  that	
  can’t	
  be	
  neatly	
  standardized	
  into	
  
assembly-­‐line	
  processes	
  	
  (Healthcare;	
  Research	
  &	
  Development;	
  Emergency	
  Response;	
  Defense/Intelligence;	
  
Legal-­‐work;	
  Project	
  Management,	
  HR	
  Processes;	
  etc.)	
  
•  Governance/Risk/Compliance	
  (GRC)	
  and	
  Business	
  Ac:vity	
  Monitoring	
  
(BAM):	
  Business	
  applica:ons	
  where	
  detected	
  or	
  correlated	
  internal	
  events	
  can	
  trigger	
  system	
  ac:ons	
  
(alerts,	
  no:fica:ons,	
  etc.)	
  and	
  human	
  workflows	
  (inves:ga:ons,	
  board	
  reviews,	
  etc.)	
  
•  Data	
  Migra:on	
  (DMM),	
  Data	
  Quality	
  (DQM)	
  and	
  Master	
  Data	
  
Management	
  (MDM):	
  Data-­‐centric	
  applica:ons	
  that	
  leverage:	
  Virtualiza:on;	
  Physical	
  Storage;	
  
Applica:on	
  Run-­‐:me	
  for	
  Scrip:ng	
  and	
  Human	
  Workflows;	
  Rela:onship	
  Mapping,	
  En:ty	
  Modeling;	
  Change	
  
Data	
  Control,	
  Roll-­‐back;	
  Real-­‐:me	
  Valida:on	
  and	
  Algorithmic	
  Mapping	
  –	
  for	
  greater	
  value.	
  
•  Internet-­‐of-­‐Things	
  (IoT):	
  Network	
  monitoring	
  applica:ons	
  where	
  detected	
  or	
  correlated	
  events	
  
across	
  systems	
  and/or	
  devices	
  can	
  trigger	
  system	
  ac:ons	
  (alerts,	
  no:fica:ons,	
  load	
  balancing,	
  etc.)	
  and	
  
human	
  workflows	
  (service	
  calls,	
  emergency	
  response,	
  etc.)	
  
•  Sobware	
  Defined	
  Everything:	
  Sobware-­‐Defined	
  Networking	
  (SDN)	
  and	
  Network	
  Func:on	
  
Virtualiza:on	
  (NFV)	
  
Copyright	
  2013,	
  EnterpriseWeb	
  LLC	
  
North	
  America,	
  Europe,	
  The	
  Middle-­‐East,	
  	
  
Australia	
  /	
  New	
  Zealand,	
  South	
  America	
  
	
  
•  Leading	
  Academic	
  Medical	
  School	
  in	
  NY	
  uses	
  EnterpriseWeb	
  for	
  a	
  
unified	
  Research	
  Management	
  portal	
  
•  Large	
  SAP	
  integrator	
  is	
  developing	
  next	
  genera:on	
  ETL	
  and	
  Data	
  
Migra:on	
  Tools	
  powered	
  by	
  EnterpriseWeb	
  
•  Telcom	
  Industry	
  Consor:um	
  uses	
  EnterpriseWeb	
  as	
  enabling	
  
technology	
  for	
  ‘smart’	
  policy-­‐driven	
  network	
  management	
  
•  Prominent	
  Enterprise	
  Architect	
  uses	
  EnterpriseWeb	
  to	
  produc:ze	
  
methodology	
  for	
  Risk	
  Management	
  for	
  large-­‐scale	
  sobware	
  projects	
  
	
  
The	
  logically	
  mul:-­‐tenant	
  pla=orm	
  supports	
  Cloud	
  	
  
and	
  on-­‐premise	
  deployment	
  models	
  
	
  
EnterpriseWeb™	
  prominent,	
  diverse,	
  global	
  customers	
  
Copyright	
  2013,	
  EnterpriseWeb	
  LLC	
  
EnterpriseWeb™
is	
  comprised	
  of	
  3	
  primary	
  components	
  -­‐	
  	
  
RESTful	
  Applica.on	
  Fabric:	
  	
  An	
  elas:cally-­‐scalable	
  applica:on	
  fabric	
  for	
  
modeling,	
  running	
  and	
  governing	
  fully-­‐dynamic	
  composite	
  applica:ons	
  and	
  processes	
  
–	
  it	
  provides	
  a	
  web-­‐based	
  management	
  counsel	
  for	
  monitoring	
  ac:vity,	
  lifecycle	
  
management,	
  navigable	
  dependency	
  maps	
  and	
  version	
  control	
  	
  with	
  audit	
  history	
  and	
  
rollback	
  
Virtual	
  Repository:	
  	
  A	
  schema-­‐less	
  Web-­‐style	
  repository	
  of	
  structured,	
  semi-­‐
structured	
  and	
  un-­‐structured	
  informa:on,	
  stored	
  as	
  indexed	
  documents	
  (Data	
  is	
  co-­‐
located	
  with	
  Code,	
  UI	
  components	
  and	
  ‘adaptors’	
  for	
  federated	
  services/APIs)	
  -­‐	
  	
  the	
  
Virtual	
  Repository	
  includes	
  an	
  extensible	
  library	
  of	
  system	
  capabili:es	
  (Security,	
  
Iden:ty	
  &	
  Access	
  Management,	
  Organiza:onal	
  Hierarchy,	
  Master	
  Data	
  Management,	
  
Applica:on/Service	
  Modeling,	
  and	
  Portal	
  with	
  Enterprise	
  Search,	
  etc.)	
  
Transac.on	
  Management:	
  	
  Distributable	
  sobware	
  agents	
  that	
  execute	
  
all	
  system	
  processing	
  –	
  run-­‐:me	
  execu:on	
  is	
  performed	
  in	
  interac:on-­‐specific	
  
containers	
  that	
  op:mize	
  use	
  of	
  RAM	
  for	
  scalability	
  for	
  High-­‐Performance	
  Compu:ng	
  
with	
  policy-­‐based	
  concurrency	
  management	
  (agents	
  handle	
  all	
  connec:ons,	
  
orchestra:on,	
  transforma:on,	
  queries,	
  cache/release,	
  state	
  management/persistence,	
  
indexing/tagging,	
  etc	
  –	
  automa:cally)	
  
Copyright	
  2013,	
  EnterpriseWeb	
  LLC	
  
Copyright	
  2013,	
  EnterpriseWeb	
  LLC	
  
RDBMS	
  /	
  
Schemas	
  
RDBMS	
  /	
  
Schemas	
  
RDBMS	
  /	
  
Schemas	
  
Cube	
   NoSQL	
   Hadoop	
  
Opera:onal	
  /	
  
Transac:onal	
  
Systems	
  
Opera:onal	
  /	
  
Transac:onal	
  
Systems	
  
Opera:onal	
  /	
  
Transac:onal	
  
Systems	
  
Analy:cs	
   Analy:cs	
   Analy:cs	
  
Data	
  Integra:on	
  /	
  ETL	
  
ESB	
  /	
  Service	
  Access	
  Layer	
  (SOAP/WSDL,	
  RESTful	
  APIs)	
  
Cloud/Web	
  Layer	
  (SOAP/WSDL,	
  RESTful	
  APIs)	
  
Data	
  Virtualiza:on	
  
Enterprise	
  Data	
  Warehouse	
  
Component	
  Middleware	
  &	
  	
  
Ar:facts	
  /	
  App	
  Resources	
  /	
  Models	
  
Applica:ons	
  
Network	
  
In-­‐Memory	
  Data	
  Grid	
  
Copyright	
  2013,	
  EnterpriseWeb	
  LLC	
  
RDBMS	
  /	
  
Schemas	
  
RDBMS	
  /	
  
Schemas	
  
RDBMS	
  /	
  
Schemas	
  
Cube	
   NoSQL	
   Hadoop	
  
Opera:onal	
  /	
  
Transac:onal	
  
Systems	
  
Opera:onal	
  /	
  
Transac:onal	
  
Systems	
  
Opera:onal	
  /	
  
Transac:onal	
  
Systems	
  
Analy:cs	
   Analy:cs	
   Analy:cs	
  
Data	
  Integra:on	
  /	
  ETL	
  
ESB	
  /	
  Service	
  Access	
  Layer	
  (SOAP/WSDL,	
  RESTful	
  APIs)	
  
Cloud/Web	
  Layer	
  (SOAP/WSDL,	
  RESTful	
  APIs)	
  
Data	
  Virtualiza:on	
  
Enterprise	
  Data	
  Warehouse	
  
Component	
  Middleware	
  &	
  	
  
Ar:facts	
  /	
  App	
  Resources	
  /	
  Models	
  
Applica:ons	
  
Network	
  
In-­‐Memory	
  Data	
  Grid	
  
Indexed	
  Content	
  
links	
  
People	
  
Informa:on	
  
Rules	
  
Capabili:es	
  
A 3-Dimensional Information Space
Copyright	
  2013,	
  EnterpriseWeb	
  LLC	
  
EnterpriseWeb™
is Hyper-Relational™
Service Interface	
  
Methods	
  
Object
Data	
   Code	
  
Services are a black-box with a black-box inside
Tightly-coupled Methods
constrain adaptability and re-use
Copyright	
  2013,	
  EnterpriseWeb	
  LLC	
  
Copyright	
  2013,	
  EnterpriseWeb	
  LLC	
  
Cloudlet
Copyright	
  2013,	
  EnterpriseWeb	
  LLC	
  
Rule	
  Rule	
  Rule	
  
Rule	
  Rule	
  Rule	
  
With	
  Link	
  (URI)	
  References	
  and	
  Metadata	
  Queries	
  
Cloudlets™ provide a “Full Service”
Functional and Non-Functional Concerns
Pre-Conditions
“WHO”
Who performs this Task?
Can it be manually assigned?
People referenced by links and
metadata queries/algorithms
Delegate to Authority to User?
Post-Conditions
“WHERE TO”
When complete, based on it’s context,
direct or recommend ‘next-best-actions’
Can user create next step in-flight?
Subsequent Tasks referenced by links and
metadata queries/algorithms
Delegate to Authority to User?
Workload Conditions
“WHAT”
What views, forms (UI) and functions are required
Can the Task be modified in-flight?
Information, capabilities and policies referenced by
links and metadata queries/algorithms
Delegate to Authority to User?
System Controls
Security
State management / Persistence
Indexing
Tagging
Version Control
Compliance Policies
Conflict of Interest Detection
Fraud Detection
Enterprise Governance
Object / File System Security
Retention Rules
Change Management / ALM / ITIL
Performance Management
Copyright	
  2013,	
  EnterpriseWeb	
  LLC	
  
Request	
  /	
  
Event	
  
Copyright	
  2013,	
  EnterpriseWeb	
  LLC	
  
Request	
  /	
  
Event	
  
Security	
  /	
  
Iden.ty	
  
Applica.on	
  
Logic	
  
Cross	
  Process	
  
Compliance	
  
Enterprise	
  IT	
  
Governance	
  
System	
  	
  
Controls	
  
Unified Identity Management and Access Control / Object Security
with support for LDAP/AD, XACML, Kerberos, etc.
Evaluate and dynamically compute Functional Requirements
based on interaction-context and related system activity
Cross-reference against any linked processes that monitor for GRC
(fraud, conflicts-of-interest, data quality, resource availability, training, etc.)
Automated management of Enterprise IT policies for Version Control,
Indexing,/Tagging, Retention Management, etc.
Connection, Transformation, Orchestration, Cache/Release,
and State / Persistence Management, etc.
Connec:ons	
  
Storage	
  
Metadata	
  
Seman:c	
  Enterprise	
  Applica:on	
  Integra:on	
  
Agent-­‐based	
  Transac:on	
  Management	
  
Enterprise	
  Search	
  
Lifecycle	
  Mgmt	
  
Version	
  Control	
  
Governance	
  
Security	
  
Portal	
   Device	
  1	
   Device	
  2	
   System	
  1	
   System	
  2	
  
Services	
   APIs	
   Systems	
   Databases	
   Devices	
  
Human	
  Clients	
   System	
  Clients	
  
Targets	
  
Sources	
  
Copyright	
  2013,	
  EnterpriseWeb	
  LLC	
  
EnterpriseWeb™	
  
En::es	
  /	
  MDM	
  
UI	
  /	
  Forms	
  
Processes	
  
Transac:ons	
  
Analy:cs	
  
Modeling	
  Concepts	
  
System-­‐wide	
  Concepts	
  
EnterpriseWeb	
  provides	
  a	
  unified	
  way	
  of	
  managing	
  
diverse	
  and	
  distributed	
  data	
  and	
  code,	
  which	
  promotes	
  
interoperability.	
  
	
  
It	
  enables	
  organiza:ons	
  to	
  work	
  dynamically	
  across	
  
business	
  and	
  technology	
  silos	
  for	
  integrated	
  opera:ons.	
  
Copyright	
  2013,	
  EnterpriseWeb	
  LLC	
  
EnterpriseWeb	
  provides	
  a	
  unified	
  way	
  of	
  managing	
  
diverse	
  and	
  distributed	
  data	
  and	
  code,	
  which	
  promotes	
  
interoperability.	
  
	
  
It	
  enables	
  organiza:ons	
  to	
  work	
  dynamically	
  across	
  
business	
  and	
  technology	
  silos	
  for	
  integrated	
  opera:ons.	
  
	
  
It	
  delivers	
  an	
  Enterprise-­‐class,	
  Web-­‐scale	
  founda:on	
  for	
  
automa:on,	
  orchestra:on,	
  management,	
  policy-­‐based	
  
op:miza:on,	
  re-­‐use	
  and	
  adaptability	
  in	
  the	
  Cloud.	
  
Copyright	
  2013,	
  EnterpriseWeb	
  LLC	
  
Copyright	
  2013,	
  EnterpriseWeb	
  LLC	
  
David	
  Lloyd	
  George,	
  Bri:sh	
  Prime	
  Minister	
  
“…	
  you	
  can't	
  cross	
  a	
  chasm	
  
in	
  two	
  small	
  jumps”	
  
Transformation requires a LEAP™
Albert	
  Einstein	
  
“…	
  you	
  can’t	
  solve	
  problems	
  
with	
  the	
  thinking	
  that	
  created	
  
them”	
  
EnterpriseWeb™
upcoming	
  events
	
  
GigaOm	
  Roundtable	
  with	
  David	
  Linthicum	
  
Thursday,	
  September	
  19th,	
  1pm	
  Eastern	
  Time	
  
hkp://pro.gigaom.com/webinar/smart-­‐services-­‐
extending-­‐the-­‐cloud-­‐to-­‐applica:on-­‐design/	
  	
  
	
  
451Research	
  HCTS	
  Conference	
  with	
  Carl	
  Lehmann	
  
Tuesday,	
  September	
  24th,	
  2pm	
  Eastern	
  Time	
  
hkp://na.hos:ngtransforma:on.com/agenda	
  	
  
	
  
Copyright	
  2013,	
  EnterpriseWeb	
  LLC	
  
Come together, right now
Enabling the real-time data-driven enterprise
‘smart’ data-driven services, applications and processes
Copyright	
  2013,	
  EnterpriseWeb	
  LLC	
  
Agents for Agility - The Just-in-Time Enterprise Has Arrived
The	
  Archive	
  Trifecta:	
  
•  Inside	
  Analysis	
  	
  www.insideanalysis.com	
  
•  SlideShare	
  	
  www.slideshare.net/InsideAnalysis	
  
•  YouTube	
  	
  www.youtube.com/user/BloorGroup	
  
THANK	
  YOU!	
  

Mais conteúdo relacionado

Mais procurados

How to Create a Knowledge Networking Culture
How to Create a Knowledge Networking CultureHow to Create a Knowledge Networking Culture
How to Create a Knowledge Networking CultureMichael Heiss
 
Tool Time for Digital Collaboration
Tool Time for Digital CollaborationTool Time for Digital Collaboration
Tool Time for Digital CollaborationKarsten Ehms
 
2015 Bio-IT Trends From the Trenches
2015 Bio-IT Trends From the Trenches2015 Bio-IT Trends From the Trenches
2015 Bio-IT Trends From the TrenchesChris Dagdigian
 
EMC APAC State of Hybrid Cloud
EMC APAC State of Hybrid CloudEMC APAC State of Hybrid Cloud
EMC APAC State of Hybrid CloudAi-Ling See
 
What's Next with Government Big Data
What's Next with Government Big Data What's Next with Government Big Data
What's Next with Government Big Data GovLoop
 
Huawei Argentina - Presentación #ITResellers100
Huawei Argentina - Presentación #ITResellers100Huawei Argentina - Presentación #ITResellers100
Huawei Argentina - Presentación #ITResellers100ITSitio.com
 
Crowdsourcing vs. Technology Scouting in a B2B setting
Crowdsourcing vs. Technology Scouting in a B2B settingCrowdsourcing vs. Technology Scouting in a B2B setting
Crowdsourcing vs. Technology Scouting in a B2B settingMichael Heiss
 
Microsoft cloud migration and modernization playbook 031819 (1) (2)
Microsoft cloud migration and modernization playbook 031819 (1) (2)Microsoft cloud migration and modernization playbook 031819 (1) (2)
Microsoft cloud migration and modernization playbook 031819 (1) (2)didicadoida
 
Semantische Technologien. Datenspeicher oder Wissensmodelle?
Semantische Technologien. Datenspeicher oder Wissensmodelle?Semantische Technologien. Datenspeicher oder Wissensmodelle?
Semantische Technologien. Datenspeicher oder Wissensmodelle?Karsten Ehms
 
Cloud Computing: Big Data Technology
Cloud Computing: Big Data TechnologyCloud Computing: Big Data Technology
Cloud Computing: Big Data TechnologyBooz Allen Hamilton
 
Wissensmanagement 4.2
Wissensmanagement 4.2Wissensmanagement 4.2
Wissensmanagement 4.2Karsten Ehms
 
Management of Complexity in System Design of Large IT Solutions
Management of Complexity in System Design of Large IT SolutionsManagement of Complexity in System Design of Large IT Solutions
Management of Complexity in System Design of Large IT SolutionsMichael Heiss
 
The Future Paradigm Shifts of the Cloud and Big Data: Security Impacts & New ...
The Future Paradigm Shifts of the Cloud and Big Data: Security Impacts & New ...The Future Paradigm Shifts of the Cloud and Big Data: Security Impacts & New ...
The Future Paradigm Shifts of the Cloud and Big Data: Security Impacts & New ...InnoTech
 
Exploring cloud for data warehousing
Exploring cloud for data warehousingExploring cloud for data warehousing
Exploring cloud for data warehousingmark madsen
 
Html5 workshop part 1
Html5 workshop part 1Html5 workshop part 1
Html5 workshop part 1NAILBITER
 
The Future Paradigm Shifts of the Cloud and Big Data: Security Impacts & New...
 The Future Paradigm Shifts of the Cloud and Big Data: Security Impacts & New... The Future Paradigm Shifts of the Cloud and Big Data: Security Impacts & New...
The Future Paradigm Shifts of the Cloud and Big Data: Security Impacts & New...InnoTech
 
DCD INTERNET 2015 BROCHURE
DCD INTERNET 2015 BROCHUREDCD INTERNET 2015 BROCHURE
DCD INTERNET 2015 BROCHUREDCDNA
 
How Analytics Optimize Migration to Amazon Web Services, Microsoft Azure and ...
How Analytics Optimize Migration to Amazon Web Services, Microsoft Azure and ...How Analytics Optimize Migration to Amazon Web Services, Microsoft Azure and ...
How Analytics Optimize Migration to Amazon Web Services, Microsoft Azure and ...Enterprise Management Associates
 

Mais procurados (20)

How to Create a Knowledge Networking Culture
How to Create a Knowledge Networking CultureHow to Create a Knowledge Networking Culture
How to Create a Knowledge Networking Culture
 
Tool Time for Digital Collaboration
Tool Time for Digital CollaborationTool Time for Digital Collaboration
Tool Time for Digital Collaboration
 
2015 Bio-IT Trends From the Trenches
2015 Bio-IT Trends From the Trenches2015 Bio-IT Trends From the Trenches
2015 Bio-IT Trends From the Trenches
 
EMC APAC State of Hybrid Cloud
EMC APAC State of Hybrid CloudEMC APAC State of Hybrid Cloud
EMC APAC State of Hybrid Cloud
 
What's Next with Government Big Data
What's Next with Government Big Data What's Next with Government Big Data
What's Next with Government Big Data
 
Huawei Argentina - Presentación #ITResellers100
Huawei Argentina - Presentación #ITResellers100Huawei Argentina - Presentación #ITResellers100
Huawei Argentina - Presentación #ITResellers100
 
Crowdsourcing vs. Technology Scouting in a B2B setting
Crowdsourcing vs. Technology Scouting in a B2B settingCrowdsourcing vs. Technology Scouting in a B2B setting
Crowdsourcing vs. Technology Scouting in a B2B setting
 
Microsoft cloud migration and modernization playbook 031819 (1) (2)
Microsoft cloud migration and modernization playbook 031819 (1) (2)Microsoft cloud migration and modernization playbook 031819 (1) (2)
Microsoft cloud migration and modernization playbook 031819 (1) (2)
 
Semantische Technologien. Datenspeicher oder Wissensmodelle?
Semantische Technologien. Datenspeicher oder Wissensmodelle?Semantische Technologien. Datenspeicher oder Wissensmodelle?
Semantische Technologien. Datenspeicher oder Wissensmodelle?
 
Cloud Computing: Big Data Technology
Cloud Computing: Big Data TechnologyCloud Computing: Big Data Technology
Cloud Computing: Big Data Technology
 
The collaborative cloud
The collaborative cloudThe collaborative cloud
The collaborative cloud
 
Wissensmanagement 4.2
Wissensmanagement 4.2Wissensmanagement 4.2
Wissensmanagement 4.2
 
Management of Complexity in System Design of Large IT Solutions
Management of Complexity in System Design of Large IT SolutionsManagement of Complexity in System Design of Large IT Solutions
Management of Complexity in System Design of Large IT Solutions
 
The Future Paradigm Shifts of the Cloud and Big Data: Security Impacts & New ...
The Future Paradigm Shifts of the Cloud and Big Data: Security Impacts & New ...The Future Paradigm Shifts of the Cloud and Big Data: Security Impacts & New ...
The Future Paradigm Shifts of the Cloud and Big Data: Security Impacts & New ...
 
Exploring cloud for data warehousing
Exploring cloud for data warehousingExploring cloud for data warehousing
Exploring cloud for data warehousing
 
Html5 workshop part 1
Html5 workshop part 1Html5 workshop part 1
Html5 workshop part 1
 
The Future Paradigm Shifts of the Cloud and Big Data: Security Impacts & New...
 The Future Paradigm Shifts of the Cloud and Big Data: Security Impacts & New... The Future Paradigm Shifts of the Cloud and Big Data: Security Impacts & New...
The Future Paradigm Shifts of the Cloud and Big Data: Security Impacts & New...
 
big data and cloud computing
big data and cloud computingbig data and cloud computing
big data and cloud computing
 
DCD INTERNET 2015 BROCHURE
DCD INTERNET 2015 BROCHUREDCD INTERNET 2015 BROCHURE
DCD INTERNET 2015 BROCHURE
 
How Analytics Optimize Migration to Amazon Web Services, Microsoft Azure and ...
How Analytics Optimize Migration to Amazon Web Services, Microsoft Azure and ...How Analytics Optimize Migration to Amazon Web Services, Microsoft Azure and ...
How Analytics Optimize Migration to Amazon Web Services, Microsoft Azure and ...
 

Semelhante a Agents for Agility - The Just-in-Time Enterprise Has Arrived

The Essentials Of Project Management
The Essentials Of Project ManagementThe Essentials Of Project Management
The Essentials Of Project ManagementLaura Arrigo
 
Cloud Computing Basics III
Cloud Computing Basics IIICloud Computing Basics III
Cloud Computing Basics IIIRightScale
 
System Security on Cloud
System Security on CloudSystem Security on Cloud
System Security on CloudTu Pham
 
IBM Private Cloud Platform - Setting Foundation for Hybrid (JUKE, 2015)
IBM Private Cloud Platform - Setting Foundation for Hybrid (JUKE, 2015)IBM Private Cloud Platform - Setting Foundation for Hybrid (JUKE, 2015)
IBM Private Cloud Platform - Setting Foundation for Hybrid (JUKE, 2015)Denny Muktar
 
The People Pillar of Cloud Adoption: Developing Your Workforce & Building Dig...
The People Pillar of Cloud Adoption: Developing Your Workforce & Building Dig...The People Pillar of Cloud Adoption: Developing Your Workforce & Building Dig...
The People Pillar of Cloud Adoption: Developing Your Workforce & Building Dig...Amazon Web Services
 
Bridging the Gap: Analyzing Data in and Below the Cloud
Bridging the Gap: Analyzing Data in and Below the CloudBridging the Gap: Analyzing Data in and Below the Cloud
Bridging the Gap: Analyzing Data in and Below the CloudInside Analysis
 
Hybrid Cloud Point of View - IBM Event, 2015
Hybrid Cloud Point of View - IBM Event, 2015Hybrid Cloud Point of View - IBM Event, 2015
Hybrid Cloud Point of View - IBM Event, 2015Denny Muktar
 
How to Transform Corporate IT into the Driver for Digital Transformation
How to Transform Corporate IT into the Driver for Digital TransformationHow to Transform Corporate IT into the Driver for Digital Transformation
How to Transform Corporate IT into the Driver for Digital TransformationEnterprise Management Associates
 
Wicsa2011 cloud tutorial
Wicsa2011 cloud tutorialWicsa2011 cloud tutorial
Wicsa2011 cloud tutorialAnna Liu
 
CLOUD CPOMPUTING SECURITY
CLOUD CPOMPUTING SECURITYCLOUD CPOMPUTING SECURITY
CLOUD CPOMPUTING SECURITYShivananda Rai
 
Manage the Velocity of Change with Cloud Computing
Manage the Velocity of Change with Cloud Computing Manage the Velocity of Change with Cloud Computing
Manage the Velocity of Change with Cloud Computing Janine Sneed
 
From Business Idea to Successful Delivery by Serhiy Haziyev & Olha Hrytsay, S...
From Business Idea to Successful Delivery by Serhiy Haziyev & Olha Hrytsay, S...From Business Idea to Successful Delivery by Serhiy Haziyev & Olha Hrytsay, S...
From Business Idea to Successful Delivery by Serhiy Haziyev & Olha Hrytsay, S...SoftServe
 
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 ProductionFlorian Wilhelm
 
Telecom Clouds crossing borders, Chet Golding, Zefflin Systems
Telecom Clouds crossing borders, Chet Golding, Zefflin SystemsTelecom Clouds crossing borders, Chet Golding, Zefflin Systems
Telecom Clouds crossing borders, Chet Golding, Zefflin SystemsSriram Subramanian
 
Navigating the Complexity of Distributed Microservices across AWS, Azure, and...
Navigating the Complexity of Distributed Microservices across AWS, Azure, and...Navigating the Complexity of Distributed Microservices across AWS, Azure, and...
Navigating the Complexity of Distributed Microservices across AWS, Azure, and...Enterprise Management Associates
 
Cloud forum-lessons-learned-20110405c-final
Cloud forum-lessons-learned-20110405c-finalCloud forum-lessons-learned-20110405c-final
Cloud forum-lessons-learned-20110405c-finalMauricio Godoy
 
Digital Architecture – The Missing Link in Digital Transformation Success
Digital Architecture – The Missing Link in Digital Transformation SuccessDigital Architecture – The Missing Link in Digital Transformation Success
Digital Architecture – The Missing Link in Digital Transformation SuccessNUS-ISS
 
SpeedyCloud Services Introduction Vol-5
SpeedyCloud Services Introduction Vol-5SpeedyCloud Services Introduction Vol-5
SpeedyCloud Services Introduction Vol-5Zaighum Malik 赞谋
 
Technology insights: Decision Science Platform
Technology insights: Decision Science PlatformTechnology insights: Decision Science Platform
Technology insights: Decision Science PlatformDecision Science Community
 

Semelhante a Agents for Agility - The Just-in-Time Enterprise Has Arrived (20)

The Essentials Of Project Management
The Essentials Of Project ManagementThe Essentials Of Project Management
The Essentials Of Project Management
 
Cloud Computing Basics III
Cloud Computing Basics IIICloud Computing Basics III
Cloud Computing Basics III
 
System Security on Cloud
System Security on CloudSystem Security on Cloud
System Security on Cloud
 
IBM Private Cloud Platform - Setting Foundation for Hybrid (JUKE, 2015)
IBM Private Cloud Platform - Setting Foundation for Hybrid (JUKE, 2015)IBM Private Cloud Platform - Setting Foundation for Hybrid (JUKE, 2015)
IBM Private Cloud Platform - Setting Foundation for Hybrid (JUKE, 2015)
 
The People Pillar of Cloud Adoption: Developing Your Workforce & Building Dig...
The People Pillar of Cloud Adoption: Developing Your Workforce & Building Dig...The People Pillar of Cloud Adoption: Developing Your Workforce & Building Dig...
The People Pillar of Cloud Adoption: Developing Your Workforce & Building Dig...
 
Bridging the Gap: Analyzing Data in and Below the Cloud
Bridging the Gap: Analyzing Data in and Below the CloudBridging the Gap: Analyzing Data in and Below the Cloud
Bridging the Gap: Analyzing Data in and Below the Cloud
 
Hybrid Cloud Point of View - IBM Event, 2015
Hybrid Cloud Point of View - IBM Event, 2015Hybrid Cloud Point of View - IBM Event, 2015
Hybrid Cloud Point of View - IBM Event, 2015
 
How to Transform Corporate IT into the Driver for Digital Transformation
How to Transform Corporate IT into the Driver for Digital TransformationHow to Transform Corporate IT into the Driver for Digital Transformation
How to Transform Corporate IT into the Driver for Digital Transformation
 
Wicsa2011 cloud tutorial
Wicsa2011 cloud tutorialWicsa2011 cloud tutorial
Wicsa2011 cloud tutorial
 
Jobs in the Cloud
 Jobs in the Cloud Jobs in the Cloud
Jobs in the Cloud
 
CLOUD CPOMPUTING SECURITY
CLOUD CPOMPUTING SECURITYCLOUD CPOMPUTING SECURITY
CLOUD CPOMPUTING SECURITY
 
Manage the Velocity of Change with Cloud Computing
Manage the Velocity of Change with Cloud Computing Manage the Velocity of Change with Cloud Computing
Manage the Velocity of Change with Cloud Computing
 
From Business Idea to Successful Delivery by Serhiy Haziyev & Olha Hrytsay, S...
From Business Idea to Successful Delivery by Serhiy Haziyev & Olha Hrytsay, S...From Business Idea to Successful Delivery by Serhiy Haziyev & Olha Hrytsay, S...
From Business Idea to Successful Delivery by Serhiy Haziyev & Olha Hrytsay, S...
 
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
 
Telecom Clouds crossing borders, Chet Golding, Zefflin Systems
Telecom Clouds crossing borders, Chet Golding, Zefflin SystemsTelecom Clouds crossing borders, Chet Golding, Zefflin Systems
Telecom Clouds crossing borders, Chet Golding, Zefflin Systems
 
Navigating the Complexity of Distributed Microservices across AWS, Azure, and...
Navigating the Complexity of Distributed Microservices across AWS, Azure, and...Navigating the Complexity of Distributed Microservices across AWS, Azure, and...
Navigating the Complexity of Distributed Microservices across AWS, Azure, and...
 
Cloud forum-lessons-learned-20110405c-final
Cloud forum-lessons-learned-20110405c-finalCloud forum-lessons-learned-20110405c-final
Cloud forum-lessons-learned-20110405c-final
 
Digital Architecture – The Missing Link in Digital Transformation Success
Digital Architecture – The Missing Link in Digital Transformation SuccessDigital Architecture – The Missing Link in Digital Transformation Success
Digital Architecture – The Missing Link in Digital Transformation Success
 
SpeedyCloud Services Introduction Vol-5
SpeedyCloud Services Introduction Vol-5SpeedyCloud Services Introduction Vol-5
SpeedyCloud Services Introduction Vol-5
 
Technology insights: Decision Science Platform
Technology insights: Decision Science PlatformTechnology insights: Decision Science Platform
Technology insights: Decision Science Platform
 

Mais de Inside Analysis

An Ounce of Prevention: Forging Healthy BI
An Ounce of Prevention: Forging Healthy BIAn Ounce of Prevention: Forging Healthy BI
An Ounce of Prevention: Forging Healthy BIInside Analysis
 
Agile, Automated, Aware: How to Model for Success
Agile, Automated, Aware: How to Model for SuccessAgile, Automated, Aware: How to Model for Success
Agile, Automated, Aware: How to Model for SuccessInside Analysis
 
First in Class: Optimizing the Data Lake for Tighter Integration
First in Class: Optimizing the Data Lake for Tighter IntegrationFirst in Class: Optimizing the Data Lake for Tighter Integration
First in Class: Optimizing the Data Lake for Tighter IntegrationInside Analysis
 
Fit For Purpose: Preventing a Big Data Letdown
Fit For Purpose: Preventing a Big Data LetdownFit For Purpose: Preventing a Big Data Letdown
Fit For Purpose: Preventing a Big Data LetdownInside Analysis
 
To Serve and Protect: Making Sense of Hadoop Security
To Serve and Protect: Making Sense of Hadoop Security To Serve and Protect: Making Sense of Hadoop Security
To Serve and Protect: Making Sense of Hadoop Security Inside Analysis
 
The Hadoop Guarantee: Keeping Analytics Running On Time
The Hadoop Guarantee: Keeping Analytics Running On TimeThe Hadoop Guarantee: Keeping Analytics Running On Time
The Hadoop Guarantee: Keeping Analytics Running On TimeInside Analysis
 
Introducing: A Complete Algebra of Data
Introducing: A Complete Algebra of DataIntroducing: A Complete Algebra of Data
Introducing: A Complete Algebra of DataInside Analysis
 
The Role of Data Wrangling in Driving Hadoop Adoption
The Role of Data Wrangling in Driving Hadoop AdoptionThe Role of Data Wrangling in Driving Hadoop Adoption
The Role of Data Wrangling in Driving Hadoop AdoptionInside Analysis
 
Ahead of the Stream: How to Future-Proof Real-Time Analytics
Ahead of the Stream: How to Future-Proof Real-Time AnalyticsAhead of the Stream: How to Future-Proof Real-Time Analytics
Ahead of the Stream: How to Future-Proof Real-Time AnalyticsInside Analysis
 
All Together Now: Connected Analytics for the Internet of Everything
All Together Now: Connected Analytics for the Internet of EverythingAll Together Now: Connected Analytics for the Internet of Everything
All Together Now: Connected Analytics for the Internet of EverythingInside Analysis
 
Goodbye, Bottlenecks: How Scale-Out and In-Memory Solve ETL
Goodbye, Bottlenecks: How Scale-Out and In-Memory Solve ETLGoodbye, Bottlenecks: How Scale-Out and In-Memory Solve ETL
Goodbye, Bottlenecks: How Scale-Out and In-Memory Solve ETLInside Analysis
 
The Biggest Picture: Situational Awareness on a Global Level
The Biggest Picture: Situational Awareness on a Global LevelThe Biggest Picture: Situational Awareness on a Global Level
The Biggest Picture: Situational Awareness on a Global LevelInside Analysis
 
Structurally Sound: How to Tame Your Architecture
Structurally Sound: How to Tame Your ArchitectureStructurally Sound: How to Tame Your Architecture
Structurally Sound: How to Tame Your ArchitectureInside Analysis
 
SQL In Hadoop: Big Data Innovation Without the Risk
SQL In Hadoop: Big Data Innovation Without the RiskSQL In Hadoop: Big Data Innovation Without the Risk
SQL In Hadoop: Big Data Innovation Without the RiskInside Analysis
 
The Perfect Fit: Scalable Graph for Big Data
The Perfect Fit: Scalable Graph for Big DataThe Perfect Fit: Scalable Graph for Big Data
The Perfect Fit: Scalable Graph for Big DataInside Analysis
 
A Revolutionary Approach to Modernizing the Data Warehouse
A Revolutionary Approach to Modernizing the Data WarehouseA Revolutionary Approach to Modernizing the Data Warehouse
A Revolutionary Approach to Modernizing the Data WarehouseInside Analysis
 
The Maturity Model: Taking the Growing Pains Out of Hadoop
The Maturity Model: Taking the Growing Pains Out of HadoopThe Maturity Model: Taking the Growing Pains Out of Hadoop
The Maturity Model: Taking the Growing Pains Out of HadoopInside Analysis
 
Rethinking Data Availability and Governance in a Mobile World
Rethinking Data Availability and Governance in a Mobile WorldRethinking Data Availability and Governance in a Mobile World
Rethinking Data Availability and Governance in a Mobile WorldInside Analysis
 
DisrupTech - Dave Duggal
DisrupTech - Dave DuggalDisrupTech - Dave Duggal
DisrupTech - Dave DuggalInside Analysis
 

Mais de Inside Analysis (20)

An Ounce of Prevention: Forging Healthy BI
An Ounce of Prevention: Forging Healthy BIAn Ounce of Prevention: Forging Healthy BI
An Ounce of Prevention: Forging Healthy BI
 
Agile, Automated, Aware: How to Model for Success
Agile, Automated, Aware: How to Model for SuccessAgile, Automated, Aware: How to Model for Success
Agile, Automated, Aware: How to Model for Success
 
First in Class: Optimizing the Data Lake for Tighter Integration
First in Class: Optimizing the Data Lake for Tighter IntegrationFirst in Class: Optimizing the Data Lake for Tighter Integration
First in Class: Optimizing the Data Lake for Tighter Integration
 
Fit For Purpose: Preventing a Big Data Letdown
Fit For Purpose: Preventing a Big Data LetdownFit For Purpose: Preventing a Big Data Letdown
Fit For Purpose: Preventing a Big Data Letdown
 
To Serve and Protect: Making Sense of Hadoop Security
To Serve and Protect: Making Sense of Hadoop Security To Serve and Protect: Making Sense of Hadoop Security
To Serve and Protect: Making Sense of Hadoop Security
 
The Hadoop Guarantee: Keeping Analytics Running On Time
The Hadoop Guarantee: Keeping Analytics Running On TimeThe Hadoop Guarantee: Keeping Analytics Running On Time
The Hadoop Guarantee: Keeping Analytics Running On Time
 
Introducing: A Complete Algebra of Data
Introducing: A Complete Algebra of DataIntroducing: A Complete Algebra of Data
Introducing: A Complete Algebra of Data
 
The Role of Data Wrangling in Driving Hadoop Adoption
The Role of Data Wrangling in Driving Hadoop AdoptionThe Role of Data Wrangling in Driving Hadoop Adoption
The Role of Data Wrangling in Driving Hadoop Adoption
 
Ahead of the Stream: How to Future-Proof Real-Time Analytics
Ahead of the Stream: How to Future-Proof Real-Time AnalyticsAhead of the Stream: How to Future-Proof Real-Time Analytics
Ahead of the Stream: How to Future-Proof Real-Time Analytics
 
All Together Now: Connected Analytics for the Internet of Everything
All Together Now: Connected Analytics for the Internet of EverythingAll Together Now: Connected Analytics for the Internet of Everything
All Together Now: Connected Analytics for the Internet of Everything
 
Goodbye, Bottlenecks: How Scale-Out and In-Memory Solve ETL
Goodbye, Bottlenecks: How Scale-Out and In-Memory Solve ETLGoodbye, Bottlenecks: How Scale-Out and In-Memory Solve ETL
Goodbye, Bottlenecks: How Scale-Out and In-Memory Solve ETL
 
The Biggest Picture: Situational Awareness on a Global Level
The Biggest Picture: Situational Awareness on a Global LevelThe Biggest Picture: Situational Awareness on a Global Level
The Biggest Picture: Situational Awareness on a Global Level
 
Structurally Sound: How to Tame Your Architecture
Structurally Sound: How to Tame Your ArchitectureStructurally Sound: How to Tame Your Architecture
Structurally Sound: How to Tame Your Architecture
 
SQL In Hadoop: Big Data Innovation Without the Risk
SQL In Hadoop: Big Data Innovation Without the RiskSQL In Hadoop: Big Data Innovation Without the Risk
SQL In Hadoop: Big Data Innovation Without the Risk
 
The Perfect Fit: Scalable Graph for Big Data
The Perfect Fit: Scalable Graph for Big DataThe Perfect Fit: Scalable Graph for Big Data
The Perfect Fit: Scalable Graph for Big Data
 
A Revolutionary Approach to Modernizing the Data Warehouse
A Revolutionary Approach to Modernizing the Data WarehouseA Revolutionary Approach to Modernizing the Data Warehouse
A Revolutionary Approach to Modernizing the Data Warehouse
 
The Maturity Model: Taking the Growing Pains Out of Hadoop
The Maturity Model: Taking the Growing Pains Out of HadoopThe Maturity Model: Taking the Growing Pains Out of Hadoop
The Maturity Model: Taking the Growing Pains Out of Hadoop
 
Rethinking Data Availability and Governance in a Mobile World
Rethinking Data Availability and Governance in a Mobile WorldRethinking Data Availability and Governance in a Mobile World
Rethinking Data Availability and Governance in a Mobile World
 
DisrupTech - Dave Duggal
DisrupTech - Dave DuggalDisrupTech - Dave Duggal
DisrupTech - Dave Duggal
 
Modus Operandi
Modus OperandiModus Operandi
Modus Operandi
 

Último

UiPath Studio Web workshop Series - Day 3
UiPath Studio Web workshop Series - Day 3UiPath Studio Web workshop Series - Day 3
UiPath Studio Web workshop Series - Day 3DianaGray10
 
3 Pitfalls Everyone Should Avoid with Cloud Data
3 Pitfalls Everyone Should Avoid with Cloud Data3 Pitfalls Everyone Should Avoid with Cloud Data
3 Pitfalls Everyone Should Avoid with Cloud DataEric D. Schabell
 
How to release an Open Source Dataweave Library
How to release an Open Source Dataweave LibraryHow to release an Open Source Dataweave Library
How to release an Open Source Dataweave Libraryshyamraj55
 
Novo Nordisk's journey in developing an open-source application on Neo4j
Novo Nordisk's journey in developing an open-source application on Neo4jNovo Nordisk's journey in developing an open-source application on Neo4j
Novo Nordisk's journey in developing an open-source application on Neo4jNeo4j
 
UiPath Studio Web workshop series - Day 1
UiPath Studio Web workshop series  - Day 1UiPath Studio Web workshop series  - Day 1
UiPath Studio Web workshop series - Day 1DianaGray10
 
CyberSecurity - Computers In Libraries 2024
CyberSecurity - Computers In Libraries 2024CyberSecurity - Computers In Libraries 2024
CyberSecurity - Computers In Libraries 2024Brian Pichman
 
20140402 - Smart house demo kit
20140402 - Smart house demo kit20140402 - Smart house demo kit
20140402 - Smart house demo kitJamie (Taka) Wang
 
Q4 2023 Quarterly Investor Presentation - FINAL - v1.pdf
Q4 2023 Quarterly Investor Presentation - FINAL - v1.pdfQ4 2023 Quarterly Investor Presentation - FINAL - v1.pdf
Q4 2023 Quarterly Investor Presentation - FINAL - v1.pdfTejal81
 
Keep Your Finger on the Pulse of Your Building's Performance with IES Live
Keep Your Finger on the Pulse of Your Building's Performance with IES LiveKeep Your Finger on the Pulse of Your Building's Performance with IES Live
Keep Your Finger on the Pulse of Your Building's Performance with IES LiveIES VE
 
UiPath Studio Web workshop series - Day 4
UiPath Studio Web workshop series - Day 4UiPath Studio Web workshop series - Day 4
UiPath Studio Web workshop series - Day 4DianaGray10
 
GraphSummit Copenhagen 2024 - Neo4j Vision and Roadmap.pptx
GraphSummit Copenhagen 2024 - Neo4j Vision and Roadmap.pptxGraphSummit Copenhagen 2024 - Neo4j Vision and Roadmap.pptx
GraphSummit Copenhagen 2024 - Neo4j Vision and Roadmap.pptxNeo4j
 
The Zero-ETL Approach: Enhancing Data Agility and Insight
The Zero-ETL Approach: Enhancing Data Agility and InsightThe Zero-ETL Approach: Enhancing Data Agility and Insight
The Zero-ETL Approach: Enhancing Data Agility and InsightSafe Software
 
SIM INFORMATION SYSTEM: REVOLUTIONIZING DATA MANAGEMENT
SIM INFORMATION SYSTEM: REVOLUTIONIZING DATA MANAGEMENTSIM INFORMATION SYSTEM: REVOLUTIONIZING DATA MANAGEMENT
SIM INFORMATION SYSTEM: REVOLUTIONIZING DATA MANAGEMENTxtailishbaloch
 
The Importance of Indoor Air Quality (English)
The Importance of Indoor Air Quality (English)The Importance of Indoor Air Quality (English)
The Importance of Indoor Air Quality (English)IES VE
 
Introduction - IPLOOK NETWORKS CO., LTD.
Introduction - IPLOOK NETWORKS CO., LTD.Introduction - IPLOOK NETWORKS CO., LTD.
Introduction - IPLOOK NETWORKS CO., LTD.IPLOOK Networks
 
2024.03.12 Cost drivers of cultivated meat production.pdf
2024.03.12 Cost drivers of cultivated meat production.pdf2024.03.12 Cost drivers of cultivated meat production.pdf
2024.03.12 Cost drivers of cultivated meat production.pdfThe Good Food Institute
 
Graphene Quantum Dots-Based Composites for Biomedical Applications
Graphene Quantum Dots-Based Composites for  Biomedical ApplicationsGraphene Quantum Dots-Based Composites for  Biomedical Applications
Graphene Quantum Dots-Based Composites for Biomedical Applicationsnooralam814309
 
Design and Modeling for MySQL SCALE 21X Pasadena, CA Mar 2024
Design and Modeling for MySQL SCALE 21X Pasadena, CA Mar 2024Design and Modeling for MySQL SCALE 21X Pasadena, CA Mar 2024
Design and Modeling for MySQL SCALE 21X Pasadena, CA Mar 2024Alkin Tezuysal
 
LF Energy Webinar - Unveiling OpenEEMeter 4.0
LF Energy Webinar - Unveiling OpenEEMeter 4.0LF Energy Webinar - Unveiling OpenEEMeter 4.0
LF Energy Webinar - Unveiling OpenEEMeter 4.0DanBrown980551
 

Último (20)

UiPath Studio Web workshop Series - Day 3
UiPath Studio Web workshop Series - Day 3UiPath Studio Web workshop Series - Day 3
UiPath Studio Web workshop Series - Day 3
 
3 Pitfalls Everyone Should Avoid with Cloud Data
3 Pitfalls Everyone Should Avoid with Cloud Data3 Pitfalls Everyone Should Avoid with Cloud Data
3 Pitfalls Everyone Should Avoid with Cloud Data
 
How to release an Open Source Dataweave Library
How to release an Open Source Dataweave LibraryHow to release an Open Source Dataweave Library
How to release an Open Source Dataweave Library
 
Novo Nordisk's journey in developing an open-source application on Neo4j
Novo Nordisk's journey in developing an open-source application on Neo4jNovo Nordisk's journey in developing an open-source application on Neo4j
Novo Nordisk's journey in developing an open-source application on Neo4j
 
UiPath Studio Web workshop series - Day 1
UiPath Studio Web workshop series  - Day 1UiPath Studio Web workshop series  - Day 1
UiPath Studio Web workshop series - Day 1
 
CyberSecurity - Computers In Libraries 2024
CyberSecurity - Computers In Libraries 2024CyberSecurity - Computers In Libraries 2024
CyberSecurity - Computers In Libraries 2024
 
20140402 - Smart house demo kit
20140402 - Smart house demo kit20140402 - Smart house demo kit
20140402 - Smart house demo kit
 
SheDev 2024
SheDev 2024SheDev 2024
SheDev 2024
 
Q4 2023 Quarterly Investor Presentation - FINAL - v1.pdf
Q4 2023 Quarterly Investor Presentation - FINAL - v1.pdfQ4 2023 Quarterly Investor Presentation - FINAL - v1.pdf
Q4 2023 Quarterly Investor Presentation - FINAL - v1.pdf
 
Keep Your Finger on the Pulse of Your Building's Performance with IES Live
Keep Your Finger on the Pulse of Your Building's Performance with IES LiveKeep Your Finger on the Pulse of Your Building's Performance with IES Live
Keep Your Finger on the Pulse of Your Building's Performance with IES Live
 
UiPath Studio Web workshop series - Day 4
UiPath Studio Web workshop series - Day 4UiPath Studio Web workshop series - Day 4
UiPath Studio Web workshop series - Day 4
 
GraphSummit Copenhagen 2024 - Neo4j Vision and Roadmap.pptx
GraphSummit Copenhagen 2024 - Neo4j Vision and Roadmap.pptxGraphSummit Copenhagen 2024 - Neo4j Vision and Roadmap.pptx
GraphSummit Copenhagen 2024 - Neo4j Vision and Roadmap.pptx
 
The Zero-ETL Approach: Enhancing Data Agility and Insight
The Zero-ETL Approach: Enhancing Data Agility and InsightThe Zero-ETL Approach: Enhancing Data Agility and Insight
The Zero-ETL Approach: Enhancing Data Agility and Insight
 
SIM INFORMATION SYSTEM: REVOLUTIONIZING DATA MANAGEMENT
SIM INFORMATION SYSTEM: REVOLUTIONIZING DATA MANAGEMENTSIM INFORMATION SYSTEM: REVOLUTIONIZING DATA MANAGEMENT
SIM INFORMATION SYSTEM: REVOLUTIONIZING DATA MANAGEMENT
 
The Importance of Indoor Air Quality (English)
The Importance of Indoor Air Quality (English)The Importance of Indoor Air Quality (English)
The Importance of Indoor Air Quality (English)
 
Introduction - IPLOOK NETWORKS CO., LTD.
Introduction - IPLOOK NETWORKS CO., LTD.Introduction - IPLOOK NETWORKS CO., LTD.
Introduction - IPLOOK NETWORKS CO., LTD.
 
2024.03.12 Cost drivers of cultivated meat production.pdf
2024.03.12 Cost drivers of cultivated meat production.pdf2024.03.12 Cost drivers of cultivated meat production.pdf
2024.03.12 Cost drivers of cultivated meat production.pdf
 
Graphene Quantum Dots-Based Composites for Biomedical Applications
Graphene Quantum Dots-Based Composites for  Biomedical ApplicationsGraphene Quantum Dots-Based Composites for  Biomedical Applications
Graphene Quantum Dots-Based Composites for Biomedical Applications
 
Design and Modeling for MySQL SCALE 21X Pasadena, CA Mar 2024
Design and Modeling for MySQL SCALE 21X Pasadena, CA Mar 2024Design and Modeling for MySQL SCALE 21X Pasadena, CA Mar 2024
Design and Modeling for MySQL SCALE 21X Pasadena, CA Mar 2024
 
LF Energy Webinar - Unveiling OpenEEMeter 4.0
LF Energy Webinar - Unveiling OpenEEMeter 4.0LF Energy Webinar - Unveiling OpenEEMeter 4.0
LF Energy Webinar - Unveiling OpenEEMeter 4.0
 

Agents for Agility - The Just-in-Time Enterprise Has Arrived

  • 1. H T  Technologies   2013  
  • 3.      THIS  YEAR  is…  
  • 4. The  Real-­‐Time  Enterprise   ž  Data-­‐driven  organizations  want  faster  time-­‐to-­‐ insight  and  time-­‐to-­‐action   ž  Data  governance  and  quality  tend  to  slow  down   critical  processes   ž  “Intelligent  Operations”  can  be  the  key  to   delivering  agile,  robust  enterprise  functionality  
  • 5. ANALYST:   Krish  Krishnan   Founder  &  CEO,  Sixth  Sense  Advisors   ANALYST:   Robin  Bloor   Chief  Analyst,  The  Bloor  Group   GUEST:   Dave  Duggal   Founder  &  Managing  Director,  EnterpriseWeb   THE  LINE  UP  
  • 7. + Next Generation Enterprise Application Beyond Big Data and Cloud
  • 8. + State of Enterprise Today n  Multiple producers and consumers need to share data in a collaborative decision support and application environment n  Tight coupling of information management and decision support hampers innovation n  Market opportunity to embrace newer technologies like cloud and dynamic application interfaces not successful due to inherent design and deployment issues. n  Proliferation of different data models (XML schemas) in the enterprise n  No consistent semantics across the Enterprise
  • 9. + Demand of the Market n  Agile Enterprise n  Innovation – A Core Skill n  Flexible and Adaptive Architecture n  Robust Security – User and Data n  Inter-Operability – Cloud and On-Premise Ready n  API – Application Platform Interface n  Plug and Play Deployment
  • 10. + Defining The Next Generation n  The application platform for the next generation enterprise n  Will be cloud driven n  Will be based on platforms like REST API n  Will be late binding models allowing for greatest amount of architecture flexibility n  Will be ready for plug and play deployments n  Will be applicable across desktop, tablets and mobile environments n  Will not carry data until the application is used
  • 12. + Benefits of a New Strategy o  Strategic Initiatives o  Operating Model o  Enterprise Architecture o  Engagement Model o  Foundation for execution n  The IT infrastructure and digitized business processes automating a company’s core capabilities.
  • 13. + Next Generation Enterprise l  With the evolution of the enterprise architecture as a strategy that aligns business and technology into one coherent operation and execution. l  Assurance is gained through an ability to not only have all the information but also, through coherency, have the information provide access to additional knowledge within the enterprise. l  Alignment is very mature because the rules for processing information will allow descriptions to be compared for alignment and adjusted accordingly. l  Agility is achieved because the designs are coherent, which includes an understanding and practice of loose coupling by design instead of tight coupling by accident through the entire architecture process.
  • 16. The Litany of Software Challenges u  Developer Productivity u  Maintainability (Future- Proofing) u  Reusability u  Application Integration u  Flexibility u  Performance & Scalability u  Time to deploy, Time to value
  • 17. A Record of Partial Solutions Database & relational database CASE & visual development 4GLs & language innovation Programming methodologies Object orientation Enterprise application integration Platforms: compatible integrated stacks BPM SOA
  • 18. The Archaeology of Software Data Centers often resemble ancient/ modern cities like Rome — some of the infrastructure and the applications are very old, but still functioning; some are working very well “Rip and replace” is rarely an option for much of this, and yet new “must-adopt” technologies and applications appear regularly at every level This is one of the primary reasons why corporate IT remains expensive Is there an architecture or even a platform that can handle this situation?
  • 19. And By The Way… We are at the start of a major transformation in IT as we attempt to come to grips with: The Internet of Things Event-driven Architectures Real-time Everything
  • 20. Image Credits The joyous Bosch artwork furnished by Wikimedia Commons: 1.  http://commons.wikimedia.org/wiki/File%3AChrist_in_Limbo %2C_follower_of_Hieronymous_Bosch%2C_Flemish%2C_c._1550_- _Museum_of_Fine_Arts%2C_Springfield%2C_MA_-_DSC04055.JPG 2.  http://commons.wikimedia.org/wiki/ File:Two_Monsters_by_Hieronimus_Bosch.jpg 3.  http://commons.wikimedia.org/wiki/File:Group_of_ten_spectators.jpg 4.  http://commons.wikimedia.org/wiki/ File:Jheronimus_Bosch_023_exterior_02.jpg 5.  http://commons.wikimedia.org/wiki/File:Hieronymus_Bosch_013.jpg Thank You Robin Bloor Robin.Bloor@bloorgroup.com www.bloorgroup.com
  • 22. Enabling the real-time data-driven enterprise ™ Copyright  2013,  EnterpriseWeb  LLC  
  • 23. EnterpriseWeb™   EnterpriseWeb  is  a  real-­‐:me  applica:on  pla=orm   for  ‘smart’  data-­‐driven  services,  apps  and  processes.     EnterpriseWeb  supports  real-­‐:me  feedback  with   embedded  Opera:onal  Intelligence  and  Predic:ve   Analy:cs.     It  makes  event-­‐based  architecture  prac:cal,  scalable   and  affordable.   Copyright  2013,  EnterpriseWeb  LLC  
  • 24. Copyright  2013,  EnterpriseWeb  LLC   Real-Time for Alignment of Business and IT Model-Driven User-Driven Enterprise Agility Machine-Learning Change Management Personalization Exception Management Systems of Engagement •  Respond  to  opportuni:es  and  threats   •  Op:mize  service  delivery   •  Inject  Compliance,  Governance  and  System  Controls   •  Automate  good  architectural  prac:ce  
  • 25. EnterpriseWeb™ is  ideal  for    -­‐   •  Intelligent  Business  Process  Management  (iBPM)  and  Adap:ve  Case   Management  (ACM):    Applica:ons  for  dynamic  domains  that  can’t  be  neatly  standardized  into   assembly-­‐line  processes    (Healthcare;  Research  &  Development;  Emergency  Response;  Defense/Intelligence;   Legal-­‐work;  Project  Management,  HR  Processes;  etc.)   •  Governance/Risk/Compliance  (GRC)  and  Business  Ac:vity  Monitoring   (BAM):  Business  applica:ons  where  detected  or  correlated  internal  events  can  trigger  system  ac:ons   (alerts,  no:fica:ons,  etc.)  and  human  workflows  (inves:ga:ons,  board  reviews,  etc.)   •  Data  Migra:on  (DMM),  Data  Quality  (DQM)  and  Master  Data   Management  (MDM):  Data-­‐centric  applica:ons  that  leverage:  Virtualiza:on;  Physical  Storage;   Applica:on  Run-­‐:me  for  Scrip:ng  and  Human  Workflows;  Rela:onship  Mapping,  En:ty  Modeling;  Change   Data  Control,  Roll-­‐back;  Real-­‐:me  Valida:on  and  Algorithmic  Mapping  –  for  greater  value.   •  Internet-­‐of-­‐Things  (IoT):  Network  monitoring  applica:ons  where  detected  or  correlated  events   across  systems  and/or  devices  can  trigger  system  ac:ons  (alerts,  no:fica:ons,  load  balancing,  etc.)  and   human  workflows  (service  calls,  emergency  response,  etc.)   •  Sobware  Defined  Everything:  Sobware-­‐Defined  Networking  (SDN)  and  Network  Func:on   Virtualiza:on  (NFV)   Copyright  2013,  EnterpriseWeb  LLC  
  • 26. North  America,  Europe,  The  Middle-­‐East,     Australia  /  New  Zealand,  South  America     •  Leading  Academic  Medical  School  in  NY  uses  EnterpriseWeb  for  a   unified  Research  Management  portal   •  Large  SAP  integrator  is  developing  next  genera:on  ETL  and  Data   Migra:on  Tools  powered  by  EnterpriseWeb   •  Telcom  Industry  Consor:um  uses  EnterpriseWeb  as  enabling   technology  for  ‘smart’  policy-­‐driven  network  management   •  Prominent  Enterprise  Architect  uses  EnterpriseWeb  to  produc:ze   methodology  for  Risk  Management  for  large-­‐scale  sobware  projects     The  logically  mul:-­‐tenant  pla=orm  supports  Cloud     and  on-­‐premise  deployment  models     EnterpriseWeb™  prominent,  diverse,  global  customers   Copyright  2013,  EnterpriseWeb  LLC  
  • 27. EnterpriseWeb™ is  comprised  of  3  primary  components  -­‐     RESTful  Applica.on  Fabric:    An  elas:cally-­‐scalable  applica:on  fabric  for   modeling,  running  and  governing  fully-­‐dynamic  composite  applica:ons  and  processes   –  it  provides  a  web-­‐based  management  counsel  for  monitoring  ac:vity,  lifecycle   management,  navigable  dependency  maps  and  version  control    with  audit  history  and   rollback   Virtual  Repository:    A  schema-­‐less  Web-­‐style  repository  of  structured,  semi-­‐ structured  and  un-­‐structured  informa:on,  stored  as  indexed  documents  (Data  is  co-­‐ located  with  Code,  UI  components  and  ‘adaptors’  for  federated  services/APIs)  -­‐    the   Virtual  Repository  includes  an  extensible  library  of  system  capabili:es  (Security,   Iden:ty  &  Access  Management,  Organiza:onal  Hierarchy,  Master  Data  Management,   Applica:on/Service  Modeling,  and  Portal  with  Enterprise  Search,  etc.)   Transac.on  Management:    Distributable  sobware  agents  that  execute   all  system  processing  –  run-­‐:me  execu:on  is  performed  in  interac:on-­‐specific   containers  that  op:mize  use  of  RAM  for  scalability  for  High-­‐Performance  Compu:ng   with  policy-­‐based  concurrency  management  (agents  handle  all  connec:ons,   orchestra:on,  transforma:on,  queries,  cache/release,  state  management/persistence,   indexing/tagging,  etc  –  automa:cally)   Copyright  2013,  EnterpriseWeb  LLC  
  • 28. Copyright  2013,  EnterpriseWeb  LLC   RDBMS  /   Schemas   RDBMS  /   Schemas   RDBMS  /   Schemas   Cube   NoSQL   Hadoop   Opera:onal  /   Transac:onal   Systems   Opera:onal  /   Transac:onal   Systems   Opera:onal  /   Transac:onal   Systems   Analy:cs   Analy:cs   Analy:cs   Data  Integra:on  /  ETL   ESB  /  Service  Access  Layer  (SOAP/WSDL,  RESTful  APIs)   Cloud/Web  Layer  (SOAP/WSDL,  RESTful  APIs)   Data  Virtualiza:on   Enterprise  Data  Warehouse   Component  Middleware  &     Ar:facts  /  App  Resources  /  Models   Applica:ons   Network   In-­‐Memory  Data  Grid  
  • 29. Copyright  2013,  EnterpriseWeb  LLC   RDBMS  /   Schemas   RDBMS  /   Schemas   RDBMS  /   Schemas   Cube   NoSQL   Hadoop   Opera:onal  /   Transac:onal   Systems   Opera:onal  /   Transac:onal   Systems   Opera:onal  /   Transac:onal   Systems   Analy:cs   Analy:cs   Analy:cs   Data  Integra:on  /  ETL   ESB  /  Service  Access  Layer  (SOAP/WSDL,  RESTful  APIs)   Cloud/Web  Layer  (SOAP/WSDL,  RESTful  APIs)   Data  Virtualiza:on   Enterprise  Data  Warehouse   Component  Middleware  &     Ar:facts  /  App  Resources  /  Models   Applica:ons   Network   In-­‐Memory  Data  Grid  
  • 30. Indexed  Content   links   People   Informa:on   Rules   Capabili:es   A 3-Dimensional Information Space Copyright  2013,  EnterpriseWeb  LLC   EnterpriseWeb™ is Hyper-Relational™
  • 31. Service Interface   Methods   Object Data   Code   Services are a black-box with a black-box inside Tightly-coupled Methods constrain adaptability and re-use Copyright  2013,  EnterpriseWeb  LLC  
  • 33. Copyright  2013,  EnterpriseWeb  LLC   Rule  Rule  Rule   Rule  Rule  Rule   With  Link  (URI)  References  and  Metadata  Queries   Cloudlets™ provide a “Full Service” Functional and Non-Functional Concerns Pre-Conditions “WHO” Who performs this Task? Can it be manually assigned? People referenced by links and metadata queries/algorithms Delegate to Authority to User? Post-Conditions “WHERE TO” When complete, based on it’s context, direct or recommend ‘next-best-actions’ Can user create next step in-flight? Subsequent Tasks referenced by links and metadata queries/algorithms Delegate to Authority to User? Workload Conditions “WHAT” What views, forms (UI) and functions are required Can the Task be modified in-flight? Information, capabilities and policies referenced by links and metadata queries/algorithms Delegate to Authority to User? System Controls Security State management / Persistence Indexing Tagging Version Control Compliance Policies Conflict of Interest Detection Fraud Detection Enterprise Governance Object / File System Security Retention Rules Change Management / ALM / ITIL Performance Management
  • 34. Copyright  2013,  EnterpriseWeb  LLC   Request  /   Event  
  • 35. Copyright  2013,  EnterpriseWeb  LLC   Request  /   Event   Security  /   Iden.ty   Applica.on   Logic   Cross  Process   Compliance   Enterprise  IT   Governance   System     Controls   Unified Identity Management and Access Control / Object Security with support for LDAP/AD, XACML, Kerberos, etc. Evaluate and dynamically compute Functional Requirements based on interaction-context and related system activity Cross-reference against any linked processes that monitor for GRC (fraud, conflicts-of-interest, data quality, resource availability, training, etc.) Automated management of Enterprise IT policies for Version Control, Indexing,/Tagging, Retention Management, etc. Connection, Transformation, Orchestration, Cache/Release, and State / Persistence Management, etc.
  • 36. Connec:ons   Storage   Metadata   Seman:c  Enterprise  Applica:on  Integra:on   Agent-­‐based  Transac:on  Management   Enterprise  Search   Lifecycle  Mgmt   Version  Control   Governance   Security   Portal   Device  1   Device  2   System  1   System  2   Services   APIs   Systems   Databases   Devices   Human  Clients   System  Clients   Targets   Sources   Copyright  2013,  EnterpriseWeb  LLC   EnterpriseWeb™   En::es  /  MDM   UI  /  Forms   Processes   Transac:ons   Analy:cs   Modeling  Concepts   System-­‐wide  Concepts  
  • 37. EnterpriseWeb  provides  a  unified  way  of  managing   diverse  and  distributed  data  and  code,  which  promotes   interoperability.     It  enables  organiza:ons  to  work  dynamically  across   business  and  technology  silos  for  integrated  opera:ons.   Copyright  2013,  EnterpriseWeb  LLC  
  • 38. EnterpriseWeb  provides  a  unified  way  of  managing   diverse  and  distributed  data  and  code,  which  promotes   interoperability.     It  enables  organiza:ons  to  work  dynamically  across   business  and  technology  silos  for  integrated  opera:ons.     It  delivers  an  Enterprise-­‐class,  Web-­‐scale  founda:on  for   automa:on,  orchestra:on,  management,  policy-­‐based   op:miza:on,  re-­‐use  and  adaptability  in  the  Cloud.   Copyright  2013,  EnterpriseWeb  LLC  
  • 39. Copyright  2013,  EnterpriseWeb  LLC   David  Lloyd  George,  Bri:sh  Prime  Minister   “…  you  can't  cross  a  chasm   in  two  small  jumps”   Transformation requires a LEAP™ Albert  Einstein   “…  you  can’t  solve  problems   with  the  thinking  that  created   them”  
  • 40. EnterpriseWeb™ upcoming  events   GigaOm  Roundtable  with  David  Linthicum   Thursday,  September  19th,  1pm  Eastern  Time   hkp://pro.gigaom.com/webinar/smart-­‐services-­‐ extending-­‐the-­‐cloud-­‐to-­‐applica:on-­‐design/       451Research  HCTS  Conference  with  Carl  Lehmann   Tuesday,  September  24th,  2pm  Eastern  Time   hkp://na.hos:ngtransforma:on.com/agenda       Copyright  2013,  EnterpriseWeb  LLC  
  • 41. Come together, right now Enabling the real-time data-driven enterprise ‘smart’ data-driven services, applications and processes Copyright  2013,  EnterpriseWeb  LLC  
  • 43. The  Archive  Trifecta:   •  Inside  Analysis    www.insideanalysis.com   •  SlideShare    www.slideshare.net/InsideAnalysis   •  YouTube    www.youtube.com/user/BloorGroup   THANK  YOU!