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Is deep learning a learning method for artificial intelligence?

Jun 15, 2020 pm 05:32 PM
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Is deep learning a learning method for artificial intelligence?

#Is deep learning a learning method for artificial intelligence?

Deep learning is a learning method of artificial intelligence.

With the maturity of deep learning technology, AI artificial intelligence is gradually becoming more popular from cutting-edge technology. Many people are also wondering, what is a deep learning algorithm? Again, Liewei Technology will give you a popular science. What is artificial intelligence deep learning?

Deep Learning (DL, Deep Learning) It is a new research direction in the field of machine learning (ML, Machine Learning). It is introduced into machine learning to make it closer to the original goal - artificial intelligence (AI, Artificial Intelligence).

Deep learning is to learn the inherent laws and representation levels of sample data. The information obtained during these learning processes is of great help in the interpretation of data such as text, images, and sounds. Its ultimate goal is to enable machines to have the same analytical learning capabilities as humans and to recognize data such as text, images, and sounds. Deep learning is a complex machine learning algorithm that achieves results in speech and image recognition that far exceed those of previous related technologies.

Deep learning has achieved many results in search technology, data mining, machine learning, machine translation, natural language processing, multimedia learning, voice, recommendation and personalization technology, and other related fields. Deep learning enables machines to imitate human activities such as audio-visual and thinking, solves many complex pattern recognition problems, and makes great progress in artificial intelligence-related technologies.

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