User:RutaRezene/Transformer (machine learning model)

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How machine learning works

Machine learning is a kind of artificial intelligence that allows computers to perform better on tasks without explicit programming by using data to learn from. Fundamentally, machine learning algorithms are made to find patterns in big datasets and use those patterns to infer or decide what to do. Three primary steps are usually included in the process: preparing the data, training the model, and evaluating the model. To guarantee its quality and applicability to the job at hand, raw data is cleaned, converted, and ready for analysis during the data preparation stage. In order to reduce mistakes and maximize performance, the algorithm modifies its internal parameters during model training based on the preprocessed input.

How machine learning can effect healthcare and stem fields

Machine learning has the potential to completely transform the healthcare sector as well as the STEM (Science, Technology, Engineering, and Mathematics) fields because of its ability to enhance decision-making, boost productivity, and offer customized therapies. Healthcare professionals employ machine learning algorithms to estimate patient outcomes, diagnose and prognosticate illnesses based on medical imaging data analysis, and customize treatment plans based on the individual characteristics and responses of each patient. Additionally, employing machine learning techniques like natural language processing, unstructured clinical notes and research literature may offer insightful information that can expedite biological research and enable evidence-based therapy. Machine learning algorithms are able to analyze large amounts of scientific data, mimic complex events, and find novel patterns in STEM fields.