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Concept Computing
   in 12 Tweets
            Text

          Mills Davis
          Project10X
    mdavis@project10x.com
       1-202-667-6400
WIN a
                                                                         Personal
                                                                         Drone
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Before we start, a moment of truth in advertising:
Over the past several months I have consulted with Be Informed.
Be Informed delivers semantic technology that is mainstream, enterprise class, & ready for prime time!
I call it “concept computing” because it embraces, but goes significantly beyond what other vendors are
doing with semantic web, linked data, business process management, business rules, and intelligent user
interface.
Observations I’ll share with you today are the result of due diligence conducted to understand the
supplier landscape and market directions in enterprise computing.

OK, let’s get started.
Concept computing in twelve tweets:
Concept computing is the future of mobile internet and enterprise computing. It’s semantic
technology for the mainstream.
What is concept computing?
Concept computing is semantic model-driven computing.
A concept is semantic model.
Its meaning derives from the network of relationships to other concepts.
The basic idea is to model concepts and relationships separately from the supporting IT systems
and then to compute with this knowledge.
Concept computing is a paradigm shift. It does things differently. It’s capabilities are game
changing. It’s a value dynamo.
And it is already happening.
Why? Here are four reasons the shift to concept computing is happening:
a) It delivers a new user experience that people find compelling. No UX. No market pull.
b) Concept computing “democratizes” new social concepts of work, play, sharing and communicating
 where computers understand language, social interactions, and the way people collaborate.
c) It synthesizes functionality into capabilities, standards, and higher-level solution concepts that
 encompass and go beyond what was previously possible. The direction is toward systems that
 know, learn, and reason as people do. The upside is that concept computing can solve problems
 that are intractable with previous technologies.
d) Concept computing empowers breakthroughs in value and life cycle economics (These can be
 measured as gains in capability, user experience, performance).
Concept computing overcomes difficulties of previous expert system, modeling, and model-driven technologies.
I want to address a couple of legacy issues, concerns, and sources of confusion in the market.
Issue-1: Is computing with knowledge only for niche applications?
Expert systems have been mainstays of AI and business rule driven applications for decades.
But, there have been issues.
The usual concerns cited are technical complexity, brittleness of the knowledge models, poor scalability of the
solutions, difficulty to maintain, and lack of fit with mainstream programming paradigms.
These concerns are no longer warranted.
Concept computing is now robust, flexible, scalable, dynamic, and mainstream ready.
Issue-2: Is modeling only cost-effective for individual aspects of software applications? Why not all of it?
Going back to the beginning of IT, there was only an application program. It was a deck of cards that gave
instructions to a computer. It was low-level code.
Over the decades, we began model knowledge about some things separately and take this functionality out of
the application, so that multiple programs could share it.
The sequence was something like this: operating systems, then data, workflow, rules, services, and goals.
As modeling evolved, different kinds of concepts required separate tools to model them.
With different kinds of modeling tools came different formalisms and standards.
For example for: data schemas, decisions using business rules, processes flow-charted with BPMN, services
accessed through APIs.
Different formalisms and standards result in tools that don’t know about each other and don’t share semantics.
That’s a problem when you want to combine multiple types of models in an application. It gets complicated.
Often you are obliged to write some code. Other times, you import or export models into other tools, which
adds a layer of complexity.
With concept computing this ceases to be a problem.
Concept computing provides a unified environment for creating, managing, and executing all types of models.
Further, there is new hardware designed for concept computing at scale.

OK. Let’s resume the story.
With Concept computing, every aspect of a solution and every stage of the solution life cycle
becomes model-driven and semantic.
What’s game changing is how comprehensively this is happening:
•! aspect of a solution I include: user interaction, data, decisions, processes, and infrastructure.
 By
 Everything.
•! stage of a solution life cycle I include: development, operations and ongoing evolution.
 By
When semantic models power everything, you get to think differently.
New capabilities and solution concepts become practical.
Let’s tweet a few examples:
Concept computing makes user experience simpler, smarter and more helpful.
Semantic and model-driven user interface design allows implementation of different types of
“smarter” user experience.
The progression is from fixed tools, to appliances, to advisors, to virtual assistants that can
complete tasks, to expert agents.
Let me illustrate.
Mobility is all about new user experience. Make no mistake about this.
Mobile internet user experience demands computers that understand concepts.
One illustration of this is Apple’s SIRI.
What happens when semantic models enable computers to understand concepts?
Computers that understand concepts are systems that know.
That is, they are more than electronic pencils, more than calculators, and more than search
appliances that retrieve information.
Think about it.
Systems that know can advise you. They can help you.
They can simplify complex, knowledge-intensive tasks.
They can adapt and optimize their behavior when events happen and something changes.
But that’s not all.
They can become virtual assistants that get something done for you.
Concept computing puts semantic data to work.
Concept computing uses semantic models to link sources; connect knowledge and data; enhance
context; and, most important, integrate data, decisions, and actions.
Semantic models encompass:
• goal-oriented activities to perform
• pre-and post-conditions for these activities
• decisions required to take action;
• rules and conditions to be met for choosing
• data and calculations required.
All model(s) are managed in one environment.
Models are compact and integrated. For example, business rules always appear in context of their
use.
Schemas, ontologies, models, and business logic can be imported, exported, or updated using open
standards.
Concept computing can import linked data and ontologies in RDF/OWL and connect these to
analytic, decision, and process models.
Concept computing can combine natural language understanding with semantic models to extract
and apply knowledge and information from unstructured sources.
Concept computing processes become goal-oriented, event-driven, and context-aware.
Goal-oriented processes adapt, self-configure, and optimize when events happen, exceptions occur,
or needs change.
Like a GPS navigation system, the process interprets events and computes the next best action
based on the current context, system knowledge, and content of the case.
A dynamic activity plan continuously tracks and updates the status of actions taken in the system.
No difference exists between straight through processing (STP) and exception handling. 
What can be automated is. What can’t, isn’t. It’s still the same process.

Let’s illustrate this further with a multi-benefits solution:
•! system knowledgebase integrates all legislation, regulation, and policies needed to guide the
 A
 administrative process.
•!
 A core business process pattern defines common high-level functions.
•!
 These might include to inform, advise, apply for benefits, answer questions, decide eligibility,
 track status of cases, resolve exceptions, explain decisions, and communicate actions taken.
•!
 Specific requirements of individual benefits programs are modeled as specializations.
•!
 Every exception is just another business rule.
•!
 Meanwhile, the user experiences a single interface where s/he can access information, advice,
 and obtain services for all benefit programs.
•!
 Similarly, the caseworker has only to deal with actions actually needed for the specific case.
•!
 Dynamic case management can reduce clicks and keystrokes required by a factor of ten.
With concept computing, the model is the design, is the documentation, is the application, is the
user interface.
This is what happens when every aspect of the solution and every stage of the solution life cycle
is semantic and model-driven.
The model is the application.
At every stage of development, the model executes.
The model self-documents. it’s just another way to express the model.
And the model can explain its every decision and action taken.
Moreover, the model drives the user interface.
Change devices, channels or the underlying model itself and system behaviors change
automatically.
You don’t write program code.
You don’t draw flow charts in swim lanes either.
You don’t compose a waterfall of documents that translate requirements to designs to
specifications to code and so on.
Business logic is packaged in knowledge models, and delivered as knowledge-as-a-service, where it
can be reused by external applications.
One interconnected knowledge model directs activities and decisions dynamically towards the goal.
Under the hood, it’s all RDF & RDF/S.
All system knowledge updates quickly, without your having to rebuild databases or compile new
program code.
Concept computing enables everyone to model.
Concept computing handles all kinds of modeling in one environment.
No more separate modeling tools and file formats.
There are multiple choices of user-friendly modeling methods.
Examples include: graphical modeling, forms, spreadsheet style tabular modeling, and writing in
controlled natural language.
Concept computing lets users express ideas in ways they find natural. The computer learns how to
makes sense of it.
Development using concept computing practices is fast and lean.
Business users, subject matter experts, and IT specialists all participate in development and are
involved throughout.
Development starts with discovery of requirements.
Then comes definition of the functional architecture and design of the core application.
A small senior team of business analysts and system architects conducts these steps.
A functional design is like a plan view for a building that shows the basic layout and
infrastructure, but not all the details of each room.
Plus, the functional design is already a working core application.
From this core application, development builds in parallel, adding details.
Teams are smaller than with conventional IT.
Team roles encompass project leads, system architects, UI designers, knowledge modelers,
software engineers, test and quality assurance, trainers, support personnel, and system
administrators.
Time to solution is two to ten times faster than with conventional IT development.
Benefits start early. This reduces risk.
Integration with existing systems and infrastructure is non-invasive.
Development is iterative and incremental.
Development can be highly parallel, but is significantly less labor-intensive.
Testing and acceptance is ongoing rather than weighted towards the back end of the process.
Deployment is incremental.
Concept computing lowers operating costs, total cost of ownership (TCO), and cost of maintenance
compared to current operations.
Based on customer experience reported by Be Informed, the rule of thumb is 30-60-90:
Operating costs can be one-third less.
Total cost of ownership can decrease by as much as two-thirds.
Time and effort to make changes can decrease by up to 90 percent.
Why? It’s much easier to integrate new data sources and interface new services by changing
knowledge models than it is by writing code and rebuilding data stores.
#conceptcomputing
              poster child =
      http://www.beinformed.com


If you are looking for a concept computing poster child, it will be worth your while to visit Be
Informed.
Here is why:
1 Everything I’ve tweeted here, you can see demonstrated live in a Be Informed demo.
2 Be Informed has integrated concept computing principles into its product suite from the ground
up.
3 Be Informed delivers semantic technology that is mainstream, enterprise class, & ready for
prime time!
4 Analysts at Gartner, Forrester, and Ovum describe Be Informed as a hot, expansion stage
software company. They position Be Informed as the market leader in concept computing
technology, semantic model-driven development methods, and advanced enterprise solutions for
complex, knowledge-intensive, core, mission-critical enterprise systems.

Thank you. This completes my talk.

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Concept computing in twelve tweets

  • 1. Concept Computing in 12 Tweets Text Mills Davis Project10X mdavis@project10x.com 1-202-667-6400
  • 2. WIN a Personal Drone Spy-Cam Helicopter! Before we start, a moment of truth in advertising: Over the past several months I have consulted with Be Informed. Be Informed delivers semantic technology that is mainstream, enterprise class, & ready for prime time! I call it “concept computing” because it embraces, but goes significantly beyond what other vendors are doing with semantic web, linked data, business process management, business rules, and intelligent user interface. Observations I’ll share with you today are the result of due diligence conducted to understand the supplier landscape and market directions in enterprise computing. OK, let’s get started. Concept computing in twelve tweets:
  • 3. Concept computing is the future of mobile internet and enterprise computing. It’s semantic technology for the mainstream. What is concept computing? Concept computing is semantic model-driven computing. A concept is semantic model. Its meaning derives from the network of relationships to other concepts. The basic idea is to model concepts and relationships separately from the supporting IT systems and then to compute with this knowledge.
  • 4. Concept computing is a paradigm shift. It does things differently. It’s capabilities are game changing. It’s a value dynamo. And it is already happening. Why? Here are four reasons the shift to concept computing is happening: a) It delivers a new user experience that people find compelling. No UX. No market pull. b) Concept computing “democratizes” new social concepts of work, play, sharing and communicating where computers understand language, social interactions, and the way people collaborate. c) It synthesizes functionality into capabilities, standards, and higher-level solution concepts that encompass and go beyond what was previously possible. The direction is toward systems that know, learn, and reason as people do. The upside is that concept computing can solve problems that are intractable with previous technologies. d) Concept computing empowers breakthroughs in value and life cycle economics (These can be measured as gains in capability, user experience, performance).
  • 5. Concept computing overcomes difficulties of previous expert system, modeling, and model-driven technologies. I want to address a couple of legacy issues, concerns, and sources of confusion in the market. Issue-1: Is computing with knowledge only for niche applications? Expert systems have been mainstays of AI and business rule driven applications for decades. But, there have been issues. The usual concerns cited are technical complexity, brittleness of the knowledge models, poor scalability of the solutions, difficulty to maintain, and lack of fit with mainstream programming paradigms. These concerns are no longer warranted. Concept computing is now robust, flexible, scalable, dynamic, and mainstream ready. Issue-2: Is modeling only cost-effective for individual aspects of software applications? Why not all of it? Going back to the beginning of IT, there was only an application program. It was a deck of cards that gave instructions to a computer. It was low-level code. Over the decades, we began model knowledge about some things separately and take this functionality out of the application, so that multiple programs could share it. The sequence was something like this: operating systems, then data, workflow, rules, services, and goals. As modeling evolved, different kinds of concepts required separate tools to model them. With different kinds of modeling tools came different formalisms and standards. For example for: data schemas, decisions using business rules, processes flow-charted with BPMN, services accessed through APIs. Different formalisms and standards result in tools that don’t know about each other and don’t share semantics. That’s a problem when you want to combine multiple types of models in an application. It gets complicated. Often you are obliged to write some code. Other times, you import or export models into other tools, which adds a layer of complexity. With concept computing this ceases to be a problem. Concept computing provides a unified environment for creating, managing, and executing all types of models. Further, there is new hardware designed for concept computing at scale. OK. Let’s resume the story.
  • 6. With Concept computing, every aspect of a solution and every stage of the solution life cycle becomes model-driven and semantic. What’s game changing is how comprehensively this is happening: •! aspect of a solution I include: user interaction, data, decisions, processes, and infrastructure. By Everything. •! stage of a solution life cycle I include: development, operations and ongoing evolution. By When semantic models power everything, you get to think differently. New capabilities and solution concepts become practical. Let’s tweet a few examples:
  • 7. Concept computing makes user experience simpler, smarter and more helpful. Semantic and model-driven user interface design allows implementation of different types of “smarter” user experience. The progression is from fixed tools, to appliances, to advisors, to virtual assistants that can complete tasks, to expert agents. Let me illustrate. Mobility is all about new user experience. Make no mistake about this. Mobile internet user experience demands computers that understand concepts. One illustration of this is Apple’s SIRI. What happens when semantic models enable computers to understand concepts? Computers that understand concepts are systems that know. That is, they are more than electronic pencils, more than calculators, and more than search appliances that retrieve information. Think about it. Systems that know can advise you. They can help you. They can simplify complex, knowledge-intensive tasks. They can adapt and optimize their behavior when events happen and something changes. But that’s not all. They can become virtual assistants that get something done for you.
  • 8. Concept computing puts semantic data to work. Concept computing uses semantic models to link sources; connect knowledge and data; enhance context; and, most important, integrate data, decisions, and actions. Semantic models encompass: • goal-oriented activities to perform • pre-and post-conditions for these activities • decisions required to take action; • rules and conditions to be met for choosing • data and calculations required. All model(s) are managed in one environment. Models are compact and integrated. For example, business rules always appear in context of their use. Schemas, ontologies, models, and business logic can be imported, exported, or updated using open standards. Concept computing can import linked data and ontologies in RDF/OWL and connect these to analytic, decision, and process models. Concept computing can combine natural language understanding with semantic models to extract and apply knowledge and information from unstructured sources.
  • 9. Concept computing processes become goal-oriented, event-driven, and context-aware. Goal-oriented processes adapt, self-configure, and optimize when events happen, exceptions occur, or needs change. Like a GPS navigation system, the process interprets events and computes the next best action based on the current context, system knowledge, and content of the case. A dynamic activity plan continuously tracks and updates the status of actions taken in the system. No difference exists between straight through processing (STP) and exception handling.  What can be automated is. What can’t, isn’t. It’s still the same process. Let’s illustrate this further with a multi-benefits solution: •! system knowledgebase integrates all legislation, regulation, and policies needed to guide the A administrative process. •! A core business process pattern defines common high-level functions. •! These might include to inform, advise, apply for benefits, answer questions, decide eligibility, track status of cases, resolve exceptions, explain decisions, and communicate actions taken. •! Specific requirements of individual benefits programs are modeled as specializations. •! Every exception is just another business rule. •! Meanwhile, the user experiences a single interface where s/he can access information, advice, and obtain services for all benefit programs. •! Similarly, the caseworker has only to deal with actions actually needed for the specific case. •! Dynamic case management can reduce clicks and keystrokes required by a factor of ten.
  • 10. With concept computing, the model is the design, is the documentation, is the application, is the user interface. This is what happens when every aspect of the solution and every stage of the solution life cycle is semantic and model-driven. The model is the application. At every stage of development, the model executes. The model self-documents. it’s just another way to express the model. And the model can explain its every decision and action taken. Moreover, the model drives the user interface. Change devices, channels or the underlying model itself and system behaviors change automatically. You don’t write program code. You don’t draw flow charts in swim lanes either. You don’t compose a waterfall of documents that translate requirements to designs to specifications to code and so on. Business logic is packaged in knowledge models, and delivered as knowledge-as-a-service, where it can be reused by external applications. One interconnected knowledge model directs activities and decisions dynamically towards the goal. Under the hood, it’s all RDF & RDF/S. All system knowledge updates quickly, without your having to rebuild databases or compile new program code.
  • 11. Concept computing enables everyone to model. Concept computing handles all kinds of modeling in one environment. No more separate modeling tools and file formats. There are multiple choices of user-friendly modeling methods. Examples include: graphical modeling, forms, spreadsheet style tabular modeling, and writing in controlled natural language. Concept computing lets users express ideas in ways they find natural. The computer learns how to makes sense of it.
  • 12. Development using concept computing practices is fast and lean. Business users, subject matter experts, and IT specialists all participate in development and are involved throughout. Development starts with discovery of requirements. Then comes definition of the functional architecture and design of the core application. A small senior team of business analysts and system architects conducts these steps. A functional design is like a plan view for a building that shows the basic layout and infrastructure, but not all the details of each room. Plus, the functional design is already a working core application. From this core application, development builds in parallel, adding details. Teams are smaller than with conventional IT. Team roles encompass project leads, system architects, UI designers, knowledge modelers, software engineers, test and quality assurance, trainers, support personnel, and system administrators. Time to solution is two to ten times faster than with conventional IT development. Benefits start early. This reduces risk. Integration with existing systems and infrastructure is non-invasive. Development is iterative and incremental. Development can be highly parallel, but is significantly less labor-intensive. Testing and acceptance is ongoing rather than weighted towards the back end of the process. Deployment is incremental.
  • 13. Concept computing lowers operating costs, total cost of ownership (TCO), and cost of maintenance compared to current operations. Based on customer experience reported by Be Informed, the rule of thumb is 30-60-90: Operating costs can be one-third less. Total cost of ownership can decrease by as much as two-thirds. Time and effort to make changes can decrease by up to 90 percent. Why? It’s much easier to integrate new data sources and interface new services by changing knowledge models than it is by writing code and rebuilding data stores.
  • 14. #conceptcomputing poster child = http://www.beinformed.com If you are looking for a concept computing poster child, it will be worth your while to visit Be Informed. Here is why: 1 Everything I’ve tweeted here, you can see demonstrated live in a Be Informed demo. 2 Be Informed has integrated concept computing principles into its product suite from the ground up. 3 Be Informed delivers semantic technology that is mainstream, enterprise class, & ready for prime time! 4 Analysts at Gartner, Forrester, and Ovum describe Be Informed as a hot, expansion stage software company. They position Be Informed as the market leader in concept computing technology, semantic model-driven development methods, and advanced enterprise solutions for complex, knowledge-intensive, core, mission-critical enterprise systems. Thank you. This completes my talk.