Marek Rosa - Inventing General Artificial Intelligence: A Vision and Methodology
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Transcript of Marek Rosa - Inventing General Artificial Intelligence: A Vision and Methodology
Accelerating Towards General Artificial Intelligence:GoodAI and the Future of Humankind
Marek RosaCEO, CTO & Founder
GoodAI and Keen Software House
About GoodAI
• Interest in general AI since childhood• Development began in January 2014,
within Keen Software House- Space Engineers + Medieval Engineers
• My personal $10mil investment• Team of 30 researchers• Team members = co-owners of
GoodAI
Our mission
Develop general artificial intelligence as fast as possible,be helpful to humanity, and understand the universe.
Advantages of AGI
• General AI vs narrow AI• Highest “return on investment” (ROI) possible =>
high-risk & high-reward• Recursively self-improving AI; exponential growth• Could be “our final invention” (in a good sense)• AI scientists, AI programmers, AI astronauts, AI
…. • Solve the problems of humankind• Illness, death, climate change, rescue
operations, exploring the universe• Everyone will benefit from AI (charities,
corporations, individuals…)
Effect on Jobs
• AI will be increasingly more skilled than humans at performing human tasks. Where will this lead?• Increased automation in our economy• Employers will start to prefer intelligent machine workers to
human ones• Job replacement
• Institute a universal basic income• Exit the human-based economy• No need to work to survive• Altruism• Investing in the AI future
What is Intelligence?
• Learn, adapt, solve problems and achieve goals in a complex environment
• Model of the world where only relevant parts are represented
• Evolution vs intelligence- Intelligence is both faster and cheaper- Intelligence needs fewer resources
• Maximize the chance of achieving goals in the future (goal / resources / time)
BrainSensors
Moti
vatio
ns
Motors
Unified Brain Architecture
• Our own all-in-one AI brain architecture - Composed of a network and sub-networks of "experts" (essentially small
programs) - Purpose is to make a procedural representation of the world, past
experiences, learned skills, predictions, plans, etc.• Not just integrating Deep Learning, Machine Learning, HTM, LSTM, or
others as independent modules where each is focused on specifics- Look to the principles of intelligence, aim to understand them, and
implement only those principles into our unified brain architecture- Building our own design, not on top of existing technology
Intrinsic Properties
• One system manifests them all:- Over-generalization- Generalize-first- Analogy- Knowledge transfer + context switching:
Reuse existing or modified programs (groups of experts)
• Conflicting and Parallel Actions- Hierarchical long-term sequences- Actions (hierarchical) –> motor commands- Behaviors: internal, external, general to
specific / concrete• Learning to learn
• Additive learning, compositional learning• Online, continuous, lifelong learning• Unsupervised and supervised learning, puppet
learning, guided and gradual learning, reinforcement learning
• Pattern detection• Altering knowledge• Unified memory: working + short term + long term +
episodic• Anomalies / novelty detection• One-shot learning• Pattern reconstruction• Detect uncertainty + confidence• Predictions – multiple and simultaneous• Perceptual consistency, continuity
Learned General Abilities
• Visual attention / focus• Feature selection• Language?• Gratification delay• Mental time travel• Imagination• Active logic reasoning• Meta cognition• Third party intervention• Empathy• Mirroring• Recognize himself in the mirror• Abduction
• Induction• Deduction• Imitation learning• Planning – long-term sequences of actions• Active learning• Proactive learning• Cooperation• Curiosity• Creativity• Imagination• Exploration• Exploitation
Learned Skills / Knowledge / Experience
• Recognize apple, pear, door (locked / unlocked)• Apple tree produces apples...pear tree produces pears… • Open door• Close door• Day + night• …
School for AI
• Set of simple game environments• Gradual and guided learning• Learning tasks• Communication• Can serve as an AGI benchmark• Sets the requirements for our Unified Brain Architecture!
Brain Simulator
• In-house, collaborative platform for researchers, developers, and high-tech companies
• Prototype and simulate artificial brain architectures
• Share knowledge
Integration with Space Engineers
Future Business Applications
• Useful to start with games (safe, low-risk environment)• Easy-to-implement applications• Later commercialization
- Automating science, engineering, art, manufacturing, robotics, etc.• Paradox: need to reach human-level AI before commercializing?
Thank you!
Keep in touch or join our teams!
We’re hiring:
Game ProgrammersGame ArtistsGame Writer…and more!
[email protected]/marek_rosa
blog.marekrosa.org
www.KeenSWH.com www.GoodAI.com