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    • Reinforcement Learning

    필터링 기준

    "reinforcement learning"에 대한 83개의 결과

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      University of Alberta

      Reinforcement Learning

      획득할 기술: Machine Learning, Reinforcement Learning, Artificial Neural Networks, Entrepreneurship, Mathematics, Machine Learning Algorithms, Python Programming, Statistical Programming, Business Psychology, Computer Programming, Markov Model, Theoretical Computer Science, Algorithms, Deep Learning, Leadership and Management, Planning, Software Architecture, Software Engineering, Supply Chain and Logistics, Operations Research, Research and Design, Strategy and Operations

      4.7

      (3.1k개의 검토)

      Intermediate · Specialization · 3-6 Months

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      DeepLearning.AI, Stanford University

      Machine Learning

      획득할 기술: Machine Learning, Probability & Statistics, Machine Learning Algorithms, General Statistics, Theoretical Computer Science, Algorithms, Applied Machine Learning, Artificial Neural Networks, Regression, Econometrics, Computer Programming, Deep Learning, Python Programming, Statistical Programming, Mathematics, Tensorflow, Data Management, Data Structures, Statistical Machine Learning, Reinforcement Learning, Probability Distribution, Mathematical Theory & Analysis, Data Analysis, Data Mining, Linear Algebra, Computer Vision, Calculus, Feature Engineering, Bayesian Statistics, Operations Research, Research and Design, Strategy and Operations, Computational Logic, Accounting, Communication

      4.9

      (7.9k개의 검토)

      Beginner · Specialization · 1-3 Months

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      University of Alberta

      Fundamentals of Reinforcement Learning

      획득할 기술: Machine Learning, Reinforcement Learning, Machine Learning Algorithms, Python Programming, Statistical Programming, Markov Model, Computer Programming, Mathematics, Operations Research, Research and Design, Strategy and Operations

      4.8

      (2.5k개의 검토)

      Intermediate · Course · 1-3 Months

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      DeepLearning.AI

      Unsupervised Learning, Recommenders, Reinforcement Learning

      획득할 기술: Machine Learning, Probability & Statistics, Machine Learning Algorithms, General Statistics, Applied Machine Learning, Theoretical Computer Science, Algorithms, Mathematics, Reinforcement Learning, Econometrics, Data Management, Data Structures, Tensorflow, Artificial Neural Networks, Data Analysis, Data Mining, Mathematical Theory & Analysis, Probability Distribution, Bayesian Statistics, Computer Programming, Operations Research, Python Programming, Research and Design, Statistical Programming, Strategy and Operations, Communication

      4.9

      (767개의 검토)

      Beginner · Course · 1-4 Weeks

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      New York University

      Machine Learning and Reinforcement Learning in Finance

      획득할 기술: Machine Learning, Finance, Machine Learning Algorithms, Mathematics, Algorithms, Probability & Statistics, Theoretical Computer Science, Applied Mathematics, Calculus, General Statistics, Investment Management, Applied Machine Learning, Artificial Neural Networks, Business Analysis, Data Analysis, Deep Learning, Financial Analysis, Machine Learning Software, Tensorflow, Advertising, Communication, Computer Programming, Entrepreneurship, Marketing, Markov Model, Operations Research, Python Programming, Research and Design, Statistical Machine Learning, Strategy and Operations

      3.7

      (770개의 검토)

      Intermediate · Specialization · 3-6 Months

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      DeepLearning.AI

      Deep Learning

      획득할 기술: Deep Learning, Machine Learning, Artificial Neural Networks, Python Programming, Statistical Programming, Machine Learning Algorithms, Linear Algebra, Applied Machine Learning, Statistical Machine Learning, Dimensionality Reduction, Feature Engineering, Probability & Statistics, Business Psychology, Entrepreneurship, Machine Learning Software, Computer Vision, Marketing, General Statistics, Natural Language Processing, Computer Programming, Leadership and Management, Project Management, Regression, Sales, Strategy, Strategy and Operations, Tensorflow, Differential Equations, Mathematics, Applied Mathematics, Decision Making, Supply Chain Systems, Supply Chain and Logistics, Advertising, Communication, Estimation, Forecasting, Mathematical Theory & Analysis, Statistical Visualization, Algorithms, Theoretical Computer Science, Bayesian Statistics, Calculus, Probability Distribution, Statistical Tests, Big Data, Computer Architecture, Computer Networking, Data Management, Human Computer Interaction, Network Architecture, User Experience, Algebra, Computational Logic, Computer Graphic Techniques, Computer Graphics, Data Structures, Data Visualization, Hardware Design, Interactive Design, Markov Model, Network Model

      4.8

      (137.7k개의 검토)

      Intermediate · Specialization · 3-6 Months

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      New York Institute of Finance

      Machine Learning for Trading

      획득할 기술: Machine Learning, Finance, Leadership and Management, Cloud Computing, Cloud Platforms, Risk Management, Strategy, Applied Machine Learning, Artificial Neural Networks, Entrepreneurship, Investment Management, Marketing, Probability & Statistics, Sales, Securities Trading, Strategy and Operations, Business Psychology, Computer Programming, General Statistics, Mathematics, Python Programming, Reinforcement Learning, Statistical Programming

      3.9

      (1k개의 검토)

      Intermediate · Specialization · 1-3 Months

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      IBM Skills Network

      Deep Learning and Reinforcement Learning

      획득할 기술: Deep Learning, Machine Learning, Artificial Neural Networks, Computer Vision, Computer Programming, Python Programming, Reinforcement Learning, Statistical Programming

      4.5

      (124개의 검토)

      Intermediate · Course · 1-3 Months

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      University of Alberta

      A Complete Reinforcement Learning System (Capstone)

      획득할 기술: Artificial Neural Networks, Machine Learning, Reinforcement Learning

      4.7

      (583개의 검토)

      Intermediate · Course · 1-3 Months

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      New York Institute of Finance

      Reinforcement Learning for Trading Strategies

      획득할 기술: Machine Learning, Artificial Neural Networks, Business Psychology, Cloud Computing, Computer Programming, Entrepreneurship, Finance, General Statistics, Investment Management, Leadership and Management, Marketing, Mathematics, Probability & Statistics, Python Programming, Reinforcement Learning, Sales, Statistical Programming, Strategy, Strategy and Operations

      3.6

      (204개의 검토)

      Intermediate · Course · 1-4 Weeks

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      Alberta Machine Intelligence Institute

      Machine Learning: Algorithms in the Real World

      획득할 기술: Machine Learning, Machine Learning Algorithms, Strategy and Operations, Applied Machine Learning, Mathematics, Algorithms, Artificial Neural Networks, Data Analysis, Regression, Theoretical Computer Science, Reinforcement Learning, Basic Descriptive Statistics, Computer Programming, Data Analysis Software, Data Warehousing, Exploratory Data Analysis, Extract, Transform, Load, Linear Algebra, Probability & Statistics, Python Programming, Statistical Analysis

      4.6

      (1k개의 검토)

      Intermediate · Specialization · 3-6 Months

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      Google Cloud

      Advanced Machine Learning on Google Cloud

      획득할 기술: Machine Learning, Cloud Computing, Google Cloud Platform, Cloud Platforms, Probability & Statistics, Business Psychology, General Statistics, Entrepreneurship, Statistical Programming, Apache, Cloud Applications, Data Management, Deep Learning, Machine Learning Software, Natural Language Processing, Python Programming, Reinforcement Learning, Tensorflow, Performance Management, Strategy and Operations, Applied Machine Learning, Artificial Neural Networks, Cloud API, Computational Thinking, Computer Architecture, Computer Programming, Computer Vision, Data Analysis, Data Engineering, Distributed Computing Architecture, Hardware Design, Machine Learning Algorithms, Other Cloud Platforms and Tools, Theoretical Computer Science

      4.5

      (1.4k개의 검토)

      Advanced · Specialization · 3-6 Months

    reinforcement learning과(와) 관련된 검색

    reinforcement learning in finance
    reinforcement learning for trading strategies
    reinforcement learning: qwik start
    a complete reinforcement learning system (capstone)
    fundamentals of reinforcement learning
    unsupervised learning, recommenders, reinforcement learning
    machine learning and reinforcement learning in finance
    deep learning and reinforcement learning
    1234…7

    요약하자면, 여기에 가장 인기 있는 reinforcement learning 강좌 10개가 있습니다.

    • Reinforcement Learning: University of Alberta
    • Machine Learning: DeepLearning.AI
    • Fundamentals of Reinforcement Learning: University of Alberta
    • Unsupervised Learning, Recommenders, Reinforcement Learning: DeepLearning.AI
    • Machine Learning and Reinforcement Learning in Finance: New York University
    • Deep Learning: DeepLearning.AI
    • Machine Learning for Trading: New York Institute of Finance
    • Deep Learning and Reinforcement Learning: IBM Skills Network
    • A Complete Reinforcement Learning System (Capstone): University of Alberta
    • Reinforcement Learning for Trading Strategies: New York Institute of Finance

    Machine Learning에서 학습할 수 있는 스킬

    Python 프로그래밍 (33)
    TensorFlow (32)
    심층 학습 (30)
    인공 신경 회로망 (24)
    빅 데이터 (18)
    통계 분류 (17)
    대수학 (10)
    베이지안 (10)
    선형 대수 (10)
    선형 회귀 (9)
    Numpy (9)

    강화 학습에 대한 자주 묻는 질문

    • Reinforcement learning is a machine learning paradigm in which software agents use a process of trial and error to learn how to complete tasks in a way that maximizes cumulative rewards as defined by their programmers. In contrast to supervised learning paradigms, reinforcement learning systems do not need labeled input/output pairs or explicit corrections of suboptimal actions; and, in contrast to unsupervised learning, reinforcement learning defines an explicit goal, which is the maximization of the value returned by the Q-learning (or “quality” learning) algorithm as a result of its actions.

      Because it combines the goal orientation of supervised learning with the flexibility of unsupervised learning, reinforcement learning is very important in creating artificial intelligence (AI) applications requiring successful problem-solving in complex situations. For example, they are often used in financial engineering to develop optimal trading algorithms for the stock market. They are also used to build intelligent systems to allow robots and self-driving cars to navigate real-world environments safely.‎

    • As one of the main paradigms for machine learning, reinforcement learning is an essential skill for careers in this fast-growing field. Reinforcement learning is particularly important for developing artificially intelligent digital agents for real-world problem-solving in industries like finance, automotive, robotics, logistics, and smart assistants. According to Glassdoor, the average annual salary for machine learning engineers in America is $114,121 per year, a high level of pay which reflects the high level of demand for this expertise.‎

    • Absolutely. Coursera hosts a wide variety of courses in reinforcement learning and related topics in machine learning, as well as the use of these techniques in applied contexts such as finance and self-driving cars. These courses and Specializations are offered by top-ranked institutions in this field, including the deepmind.ai, New York University, the University of Toronto, and the University of Alberta’s Machine Intelligence Institute. You can learn remotely on a flexible schedule while still getting feedback from expert professors and instructors, ensuring that you’ll get a high quality education with all the reinforcement you need to learn these valuable skills with confidence.‎

    • Because reinforcement learning itself isn't a beginner-level subject, you'll need to have a good grasp on the fundamentals of machine learning before starting to learn it. Additionally, many courses will require you to have a strong background in high-level mathematics such as linear algebra, statistics, and probability. Most courses will require you to be proficient in Python, although people familiar with other programming languages like C++, Matlab, and JavaScript can often use those skills to help them learn reinforcement learning. Having the ability to implement algorithms from pseudocode may be another prerequisite. As you progress, you'll gain skills in using reinforcement learning solutions to solve problems with probabilistic artificial intelligence, function approximation, and intelligent systems.‎

    • People best suited to roles within the reinforcement learning realm should have a passion for machine learning with a drive for analytics and data and an interest in providing frontline support to solve real-world problems while leveraging innate creative problem-solving skills. Additionally, many companies like to see that candidates have strong communication skills and the ability to collaborate across disciplines and departments. There are a variety of roles associated with reinforcement learning, including analysts, engineers, and researchers. In late February 2021, there were more than 1,800 job listings for people proficient in reinforcement learning on LinkedIn.‎

    • If you want to be a part of the future of machine learning, learning reinforcement learning may be a good move for you. This innovative machine learning technique creates an algorithm that learns through trial and error, leading to a combination of short- and long-term rewards such as the ability to define sequences to solve problems using a reward-based learning approach. It's useful across multiple industries, including the tech industry, business, advertising, finance, and e-commerce, all of which find reinforcement learning useful in part because of its ability to offer greater personalization. Ultimately, if you want to work within AI and machine learning, this could be a step to advancing your goals.‎

    이 FAQ 콘텐츠는 정보 전달 목적만으로 사용할 수 있습니다. 학습자는 과정 및 기타 학점 정보가 개인적, 직업적 및 재정적 목표에 부합하는지 확인하기 위해 추가 조사를 수행하는 것이 좋습니다.
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