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Artificial intelligence means the ability of machines to simulate human intelligence, providing them with the capability of performing most tasks that are thought to require human cognition, like learning, reasoning, problem-solving, language understanding, and perception. <br><br>For more details visit at - https://www.birchwoodu.org/master-of-science-in-data-science/<br><br><br>For more details visit at - https://www.birchwoodu.org/master
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W H A T I S A R T I F I C I A L I N T E L L I G E N C E ? Artificial intelligence is the domain of computer science that simulates human intelligence in machines intended to think, learn, and make decisions. An AI system can understand data, determine patterns, and predict facts without explicit programming for each specific task. Generally, AI is divided into two major types: Narrow AI (Weak AI): It can be specifically related to any single task, like a voice assistant such as Siri or a recommendation algorithm. General AI (Strong AI): Another type of AI that is said to be capable of doing all things a human could intellectually. www.birchwoodu.org info@birchwoodu.org
APPLICATIONS OF AI 01 Healthcare: Applied to diagnostics, drug discovery, personal treatment, and medical imaging. 02 Finance: Fraud detection, algorithmic trading and customer service automation. 02 03 04 01 03 Automotive: Self-driving cars, traffic management, and predictive maintenance. 04 Retail: Recommendation of products based on personal experience, inventory management, insight for customers. www.birchwoodu.org info@birchwoodu.org
MACHINE LEARNING AND DEEP LEARNING Machine Learning Deep Learning A subfield of ML, deep learning is applied to analyze and learn multi- layered neural networks on highly dimensional data sets. DL enables computers to do detailed work such as image recognition, voice recognition, and natural language processing. It is an approach in which the algorithms learn through experience. It consists of three types of ML: supervised learning, unsupervised learning, and Reinforcement learning. www.birchwoodu.org info@birchwoodu.org
KEY AI TECHNOLOGIES Machines can understand, interpret, or generate human language-for example, GPT models like ChatGPT, translators for languages. NLP NLP The ability of machines to read and understand visual information about the world, including facial recognition, or self-driving cars. Computer NLP Vision Artificially intelligent robots operating with partial or fully autonomous function without human intervention or minimal human participation. Robotics NLP www.birchwoodu.org info@birchwoodu.org
ETHICAL ISSUES AND CHALLENGES IN AI Bias: An AI model takes on any bias that occurs in its training data and can bring forth discriminatory outputs in the decision-making of an individual. Job Loss: The high rate at which AI-based tools become advanced and automated leads to job loss that brings socioeconomic problems to the affected workers and industries. Security: AI systems are prone to attacks and abuse, which makes their reliability and safety seriously critical. Privacy: AI processes rely on personal information, thus creating important questions in the realms of privacy, proprietorship, and control over the data. www.birchwoodu.org info@birchwoodu.org
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