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Learning repository for Artificial Intelligence (AI), Machine Learning (ML) and Deep Learning (DL)

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AI - ML - DL and Data Science

Learning repository for Artificial Intelligence (AI), Machine Learning (ML) and Deep Learning (DL)

Illustration of the overall relationships of those "learnings" and "analytics":

AI,ML,DL and GI - How it fall fits together!

Thanks Source: https://www.linkedin.com/pulse/how-does-ai-ml-dl-gi-fit-together-anang-b-singh/

High Level Comparison: AI vs ML vs DL

Thanks Source: https://www.analyticsvidhya.com/articles/machine-learning-vs-artificial-intelligence-vs-deep-learning/

Artificial Intelligence (AI) Machine Learning (ML) Deep Learning (DL)
AI simulates human intelligence to perform tasks and make decisions. ML is a subset of AI that uses algorithms to learn patterns from data. DL is a subset of ML that employs artificial neural networks for complex tasks.
AI may or may not require large datasets; it can use predefined rules. ML heavily relies on labeled data for training and making predictions. DL requires extensive labeled data and performs exceptionally with big datasets.
AI can be rule-based, requiring human programming and intervention. ML automates learning from data and requires less manual intervention. DL automates feature extraction, reducing the need for manual enginnering.
AI can handel various tasks, from simple to complex, across domains. ML specializes in data-driven tasks like classification, regression, etc. DL excels at complext tasks like image recognition, natural language processing, and more.
AI algorithms can be simple or complex, depending on the application. ML employes various algorithms like decision trees, SVM, and random forests. DL relies on deep neural networks, which can have numerous hidden layers for complex learning.
AI may require less training time and resources for rule-based systems. ML training time varies with the algorithm complexity and dataset size. DL training demands substantial computational resources and time for deep networks.
AI systems may offer interpretable results based on human rules. ML models can be interpretable or less interpretable baesd on the algorithm. DL models are often considered less interpretable due to complex network architectures.
AI is used in virtual assitants, recommendation systems, and more. ML is applied in image recognition, spam filtering, and other data tasks. DL is utilized in autonomous vehicles, speech recognition, and advanced AI applications.

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Learning repository for Artificial Intelligence (AI), Machine Learning (ML) and Deep Learning (DL)

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