Brug robotter og AI bedre

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Presentation transcript:

Brug robotter og AI bedre Peter B. Lange Executive IT-Architect, IBM

Agenda – Det store billede Hvad mener vi med robotter og AI? Typer af scenarier for brug af robotter og AI Kan det ske og vil det ske? Hvordan sætter vi skub i udviklingen?

…. allowing them to interact with humans. Three capabilities differentiate cognitive systems from traditional programmed computing systems… Learning They never stop learning getting more valuable with time. Advancing with each new piece of information, interaction, and outcome. They develop “expertise”. Reasoning They reason. They understand underlying ideas and concepts. They form hypothesis. They infer and extract concepts. Understanding Cognitive systems understand like humans do. Enter Cognitive….solutions that understand, reason and learn, while interacting with humans. What do I mean by Understand, Reason and learn? Understand: Two key attributes define understand. First, the ability of a system to navigate the complexities of human speech– understanding the idiosyncrasies, colloquialisms and knowing the ways we would express ourselves to one another. This is not an easy task. We say things like, “This morning I got a haircut.” This could reference the barbershop, OR a bad financial trade. The second attribute is being able to put content into context- not search and keyword– but actually bringing forward relevant, actionable content. Reason: There are very few times where we, as humans, are presented with information that is useful WITHOUT having to infer from the data to extract what we need for our purposes. In doing so, we are reasoning with a purpose– often generating a hypothesis and then proving out the theory. This is something cognitive systems, like Watson, can do. Learn: Cognitive systems are fundamentally different from traditional computational computers, which are hard hard coded with rules and logic, following a decision tree format. Cognitive systems get progressively smarter with each outcome, action, iteration– with each new peace of information. Together these attributes allow cognitive systems to understand data – structured and unstructured, text-based or sensory – in context and meaning, at astonishing speeds and volumes. In fact, Watson reads 800 million pages per second. With one client, Watson initially ingested 80 million documents and incrementally adds 30,000 additional documents every day. These combined attributes- understand, reason, and learn- make cognitive systems great resources for humans- helping them to make decisions, discover needed information, and weigh pros, cons, risks in industries around the world. …. allowing them to interact with humans.

Three types of use cases… Enter Cognitive….solutions that understand, reason and learn, while interacting with humans. What do I mean by Understand, Reason and learn? Understand: Two key attributes define understand. First, the ability of a system to navigate the complexities of human speech– understanding the idiosyncrasies, colloquialisms and knowing the ways we would express ourselves to one another. This is not an easy task. We say things like, “This morning I got a haircut.” This could reference the barbershop, OR a bad financial trade. The second attribute is being able to put content into context- not search and keyword– but actually bringing forward relevant, actionable content. Reason: There are very few times where we, as humans, are presented with information that is useful WITHOUT having to infer from the data to extract what we need for our purposes. In doing so, we are reasoning with a purpose– often generating a hypothesis and then proving out the theory. This is something cognitive systems, like Watson, can do. Learn: Cognitive systems are fundamentally different from traditional computational computers, which are hard hard coded with rules and logic, following a decision tree format. Cognitive systems get progressively smarter with each outcome, action, iteration– with each new peace of information. Together these attributes allow cognitive systems to understand data – structured and unstructured, text-based or sensory – in context and meaning, at astonishing speeds and volumes. In fact, Watson reads 800 million pages per second. With one client, Watson initially ingested 80 million documents and incrementally adds 30,000 additional documents every day. These combined attributes- understand, reason, and learn- make cognitive systems great resources for humans- helping them to make decisions, discover needed information, and weigh pros, cons, risks in industries around the world.

Why now…? Volumes of human created digital data (eg social media, mobility) Volumes of machine created digital data (eg Internet-of-Things (IoT)) Easy access to data through the Internet Easy access to computer power through Cloud Proven disruption through digital capabilities (Uber, Airbnb etc) Enter Cognitive….solutions that understand, reason and learn, while interacting with humans. What do I mean by Understand, Reason and learn? Understand: Two key attributes define understand. First, the ability of a system to navigate the complexities of human speech– understanding the idiosyncrasies, colloquialisms and knowing the ways we would express ourselves to one another. This is not an easy task. We say things like, “This morning I got a haircut.” This could reference the barbershop, OR a bad financial trade. The second attribute is being able to put content into context- not search and keyword– but actually bringing forward relevant, actionable content. Reason: There are very few times where we, as humans, are presented with information that is useful WITHOUT having to infer from the data to extract what we need for our purposes. In doing so, we are reasoning with a purpose– often generating a hypothesis and then proving out the theory. This is something cognitive systems, like Watson, can do. Learn: Cognitive systems are fundamentally different from traditional computational computers, which are hard hard coded with rules and logic, following a decision tree format. Cognitive systems get progressively smarter with each outcome, action, iteration– with each new peace of information. Together these attributes allow cognitive systems to understand data – structured and unstructured, text-based or sensory – in context and meaning, at astonishing speeds and volumes. In fact, Watson reads 800 million pages per second. With one client, Watson initially ingested 80 million documents and incrementally adds 30,000 additional documents every day. These combined attributes- understand, reason, and learn- make cognitive systems great resources for humans- helping them to make decisions, discover needed information, and weigh pros, cons, risks in industries around the world.