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            課程目錄:AI and Robotics for Nuclear - Extended培訓
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                    AI and Robotics for Nuclear - Extended培訓

             

             

             

             

            Week 01
            Introduction

            What Makes a Robot smart?
            Physical vs Virtual Robots

            Smart Robots, Smart Machines, Sentient Machines and Robotic Process Automation (RPA), etc.
            The Role of Artificial Intelligence (AI) in Robotics

            Beyond "if-then-else" and the learning machine
            The algorithms behind AI
            Machine learning, computer vision, natural language processing (NLP), etc.
            Cognitive robotics
            The Role of Big Data in Robotics

            Decision-making based on data and patterns
            The Cloud and Robotics

            Linking robotics with IT
            Building more functional robots that access more information and collaborate
            Case Study: Industrial Robots

            Mechanical Robots
            Baxter
            Robots in Nuclear Facilities
            Radiation detection and protection
            Robots in Nuclear Reactors
            Radiation detection and protection
            Hardware Components of a Robot

            Motors, sensors, microcontrollers, cameras, etc.
            Common Elements of Robots

            Machine vision, voice recognition, speech synthesis, proximity sensing, pressure sensing, etc.
            Development Frameworks for Programming a Robot

            Open source and commercial frameworks
            Robot Operating System (ROS)
            Architecture: workspace, topics, messages, services, nodes, actionlibs, tools, etc.
            Languages for Programming a Robot

            C++ for low level controlling
            Python for orchestration
            Programming ROS nodes in Python and C ++
            Other languages
            Tools for Simulating a Physical Robot

            Commercial and open source 3D simulation and visualization software

            Week 02
            Preparing the Development Environment

            Software installation and setup
            Useful packages and utilities
            Case Study: Mechanical Robots

            Robots in the nuclear technology field
            Robots in environmental systems
            Programming the Robot

            Programming a node in Python and C ++
            Understanding ROS node
            Messages and topics in ROS
            Publication / subscription paradigm
            Project: Bump & Go with real robot
            Troubleshooting
            Simulation of robots with Gazebo / ROS
            Frames in ROS and reference changes
            2D information processing of cameras with OpenCV
            Information processing of a laser
            Project: Safe tracking of objects by color
            Troubleshooting

            Week 03
            Programming the Robot (Continued...)

            Services in ROS
            3D information processing of RGB-D sensors with PCL
            Maps and Navigation with ROS
            Project: Search for objects in the environment
            Troubleshooting
            Programming the Robot (Continued...)

            ActionLib
            Speech Recognition and Speech Generation
            Controlling robotic arms with MoveIt!
            Controlling robotic neck for active vision
            Project: Search and collection of objects
            Troubleshooting
            Testing Your Robot

            Unit testing

            Week 04
            Extending a Robot's Capabilities with Deep Learning

            Perception -- vision, audio, and haptics
            Knowledge representation
            Voice recognition through NLP (natural language processing)
            Computer vision
            Crash Course in Deep Learning

            Artificial Neural Networks (ANNs)
            Artificial Neural Networks vs. Biological Neural Networks
            Feedforward Neural Networks
            Activation Functions
            Training Artificial Neural Networks
            Crash Course in Deep Learning (Continued...)

            Deep Learning Models
            Convolutional Networks and Recurrent Networks
            Convolutional Neural Networks (CNNs or ConvNets)
            Convolution Layer
            Pooling Layer
            Convolutional Neural Networks Architecture

            Week 05
            Crash Course in Deep Learning (Continued...)

            Recurrent Neural Networks (RNN)
            Training an RNN
            Stabilizing gradients during training
            Long short-term memory networks
            Deep Learning Platforms and Software Libraries
            Deep Learning in ROS
            Using Big Data in Your Robot

            Big data concepts
            Approaches to data analysis
            Big Data tooling
            Recognizing patterns in the data
            Exercise: NLP and Computer Vision on large data sets
            Using Big Data in Your Robot (Continued...)

            Distributed processing of large data sets
            Coexistence and cross-fertilization of Big Data and Robotics
            The robot as a generator of data
            Range measuring sensors, position, visual, tactile sensors, and other modalities
            Making sense of sensory data (sense-plan-act loop)
            Exercise: Capturing streaming data
            Programming an Autonomous Deep Learning Robot

            Deep Learning robot components
            Setting up the robot simulator
            Running a CUDA-accelerated neural network with Cafe
            Troubleshooting

            Week 06
            Programming an Autonomous Deep Learning Robot (Continued...)

            Recognizing objects in photographs or video streams
            Enabling computer vision with OpenCV
            Troubleshooting
            Data Analytics

            Using the robot to collect and organize new data
            Tools and processes for making sense of the data
            Deploying a Robot

            Transitioning a simulated robot to physical hardware
            Deploying the robot in the physical world
            Monitoring and servicing robots in the field
            Securing Your Robot

            Preventing unauthorized tampering
            Preventing hackers from viewing and stealing sensitive data
            Building a Robot Collaboratively

            Building a robot in the cloud
            Joining the robotics community
            Future Outlook for Robots in the Science and Energy Field

            Summary and Conclusion

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