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    • Neural Networks

    필터링 기준

    "neural networks"에 대한 490개의 결과

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      Coursera Project Network

      Predicting the Weather with Artificial Neural Networks

      획득할 기술: Artificial Neural Networks, Machine Learning

      3.8

      (11개의 검토)

      Intermediate · Guided Project · Less Than 2 Hours

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      Coursera Project Network

      Neural Network Visualizer Web App with Python

      획득할 기술: Artificial Neural Networks, Computer Programming, Machine Learning, Statistical Programming, Computer Vision, Data Science, Deep Learning, Marketing, Mobile Development, Tensorflow

      4.5

      (231개의 검토)

      Intermediate · Guided Project · Less Than 2 Hours

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      Coursera Project Network

      TensorFlow for AI: Neural Network Representation

      획득할 기술: Artificial Neural Networks, Computer Programming, Deep Learning, Machine Learning, Python Programming, Tensorflow

      4.2

      (18개의 검토)

      Intermediate · Guided Project · Less Than 2 Hours

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      Coursera Project Network

      Machine Learning: Predict Numbers from Handwritten Digits using a Neural Network, Keras, and R

      획득할 기술: Computer Programming, Machine Learning, Statistical Programming

      4.4

      (71개의 검토)

      Intermediate · Guided Project · Less Than 2 Hours

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      Google Cloud

      Classify Images with TensorFlow Convolutional Neural Networks

      획득할 기술: Cloud Computing, Google Cloud Platform

      Beginner · Project · Less Than 2 Hours

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      Coursera Project Network

      بناء Neural Network مكونه من 3 طبقات بأستخدام لغة Python

      획득할 기술: Python Programming

      Beginner · Guided Project · Less Than 2 Hours

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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

      (758개의 검토)

      Beginner · Course · 1-4 Weeks

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      IBM Skills Network

      Introduction to Artificial Intelligence (AI)

      획득할 기술: Applied Machine Learning, Data Science, Computer Vision, Deep Learning, Machine Learning, Machine Learning Algorithms

      4.7

      (10.3k개의 검토)

      Beginner · Course · 1-4 Weeks

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      Imperial College London

      TensorFlow 2 for Deep Learning

      획득할 기술: Machine Learning, Tensorflow, Deep Learning, Computer Programming, Python Programming, Statistical Programming, Applied Machine Learning, Artificial Neural Networks, Computer Vision, Machine Learning Algorithms, Probability & Statistics, Data Visualization, Bayesian Statistics, Natural Language Processing, Probability Distribution, Advertising, Communication, Marketing, Operations Research, Research and Design

      4.8

      (627개의 검토)

      Intermediate · Specialization · 3-6 Months

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      Imperial College London

      Getting started with TensorFlow 2

      획득할 기술: Applied Machine Learning, Artificial Neural Networks, Computer Programming, Computer Vision, Deep Learning, Machine Learning, Python Programming, Statistical Programming, Tensorflow, Data Visualization, Machine Learning Algorithms

      4.9

      (505개의 검토)

      Intermediate · Course · 1-3 Months

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      무료

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      Edge Impulse

      Computer Vision with Embedded Machine Learning

      획득할 기술: Computer Vision, Machine Learning, Artificial Neural Networks, Deep Learning, Estimation, General Statistics, Machine Learning Algorithms, Probability & Statistics, Computer Programming, Python Programming

      4.7

      (86개의 검토)

      Intermediate · Course · 1-4 Weeks

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      Coursera Project Network

      Image Classification with CNNs using Keras

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

      4.4

      (545개의 검토)

      Intermediate · Guided Project · Less Than 2 Hours

    neural networks과(와) 관련된 검색

    neural networks and deep learning
    neural networks and random forests
    convolutional neural networks
    deep neural networks with pytorch
    convolutional neural networks in tensorflow
    improving deep neural networks: hyperparameter tuning, regularization and optimization
    introduction to deep learning & neural networks with keras
    classify images with tensorflow convolutional neural networks
    1234…41

    요약하자면, 여기에 가장 인기 있는 neural networks 강좌 10개가 있습니다.

    • Predicting the Weather with Artificial Neural Networks: Coursera Project Network
    • Neural Network Visualizer Web App with Python: Coursera Project Network
    • TensorFlow for AI: Neural Network Representation: Coursera Project Network
    • Machine Learning: Predict Numbers from Handwritten Digits using a Neural Network, Keras, and R: Coursera Project Network
    • Classify Images with TensorFlow Convolutional Neural Networks: Google Cloud
    • بناء Neural Network مكونه من 3 طبقات بأستخدام لغة Python: Coursera Project Network
    • Unsupervised Learning, Recommenders, Reinforcement Learning: DeepLearning.AI
    • Introduction to Artificial Intelligence (AI): IBM Skills Network
    • TensorFlow 2 for Deep Learning: Imperial College London
    • Getting started with TensorFlow 2: Imperial College London

    Machine Learning에서 학습할 수 있는 스킬

    Python 프로그래밍 (33)
    TensorFlow (32)
    심층 학습 (30)
    인공 신경 회로망 (24)
    빅 데이터 (18)
    통계 분류 (17)
    강화 학습 (13)
    대수학 (10)
    베이지안 (10)
    선형 대수 (10)
    선형 회귀 (9)
    Numpy (9)

    신경망에 대한 자주 묻는 질문

    • Neural networks, also known as neural nets or artificial neural networks (ANN), are machine learning algorithms organized in networks that mimic the functioning of neurons in the human brain. Using this biological neuron model, these systems are capable of unsupervised learning from massive datasets.

      This is an important enabler for artificial intelligence (AI) applications, which are used across a growing range of tasks including image recognition, natural language processing (NLP), and medical diagnosis. The related field of deep learning also relies on neural networks, typically using a convolutional neural network (CNN) architecture that connects multiple layers of neural networks in order to enable more sophisticated applications.

      For example, using deep learning, a facial recognition system can be created without specifying features such as eye and hair color; instead, the program can simply be fed thousands of images of faces and it will learn what to look for to identify different individuals over time, in much the same way that humans learn. Regardless of the end-use application, neural networks are typically created in TensorFlow and/or with Python programming skills.‎

    • Neural networks are a fundamental concept to understand for jobs in artificial intelligence (AI) and deep learning. And, as the number of industries seeking to leverage these approaches continues to grow, so do career opportunities for professionals with expertise in neural networks. For instance, these skills could lead to jobs in healthcare creating tools to automate X-ray scans or assist in drug discovery, or a job in the automotive industry developing autonomous vehicles.

      Professionals dedicating their careers to cutting-edge work in neural networks typically pursue a master’s degree or even a doctorate in computer science. This high-level expertise in neural networks and artificial intelligence are in high demand; according to the Bureau of Labor Statistics, computer research scientists earn a median annual salary of $122,840 per year, and these jobs are projected to grow much faster than average over the next decade.‎

    • Absolutely - in fact, Coursera is one of the best places to learn about neural networks, online or otherwise. You can take courses and Specializations spanning multiple courses in topics like neural networks, artificial intelligence, and deep learning from pioneers in the field - including deeplearning.ai and Stanford University. Coursera has also partnered with industry leaders such as IBM, Google Cloud, and Amazon Web Services to offer courses that can lead to professional certificates in applied AI and other areas. You can even learn about neural networks with hands-on Guided Projects, a way to learn on Coursera by completing step-by-step tutorials led by experienced instructors.‎

    • Before starting to learn neural networks, it's important to have experience creating and using algorithms since neural networks run on complicated algorithms. You should also have fundamental math skills at least, but you'll be at a better advantage if you have knowledge of linear algebra, calculus, statistics, and probability. Being proficient at problem-solving is also important before starting to learn neural networks. An understanding of how the human brain processes information is helpful since artificial neural networks are patterned after how the brain works. You'll also benefit from having experience using any programming language, in particular Java, R, Python, or C++. This includes experience using these languages' libraries, which you'll access to apply the algorithms used in neural networks.‎

    • People who are best suited for roles in neural networks are innovative, interested in technology, and have the ability to identify patterns in large amounts of data and draw conclusions from them. People who have a desire to make life and work easier for human beings through artificial technology are well suited for roles in neural networks too. Also, people who have good programming skills and data engineering skills like SQL, data analysis, ETL, and data visualization are likely well suited for roles in neural networks.‎

    • If you are interested in the field of artificial intelligence, learning about neural networks is right for you. If your current or future position involves data analysis, pattern recognition, optimization, forecasting, or decision-making, you might also benefit from learning neural networks. Neural networks are also used in image recognition software, speech synthesis, self-driving vehicles, navigation systems, industrial robots, and algorithms for protecting information systems, so if you're interested in these technologies, learning neural networks may be helpful to you.‎

    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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