Developing Emotionally Intelligent AI Systems that can Fete Interpret and Respond Meetly to Mortal Feelings

Developing Emotionally Intelligent AI Systems that can Fete Interpret and Respond Meetly to Mortal Feelings

Authors

  • Mrs. Shambhavi Holay
  • Dr. Diwakar Tripathi

DOI:

https://doi.org/10.58213/vidhyayana.v10isi3.2239

Keywords:

Artificial Intelligence, Machine Learning, Natural Language Processing, Emotion Recognition, Human-Centric Systems

Abstract

The development of emotionally intelligent artificial intelligence represents a significant advancement in mortal- computer commerce, aiming to remove the emotional gap between machines and humans. These systems are designed to fete to mortal feelings, using advancements in affective computing & natural language processing. By assaying some suggestions similar as facial expressions, tone of voice, body language & emotionally intelligent artificial intelligence can infer emotional countries and knitter its relations consequently. Operations gauge colorful disciplines, including virtual sidekicks, client service, where compassionate & adaptive responses enhance stoner experience. Challenges remain in icing artistic & contextual perceptivity, avoiding impulses and maintaining stoner sequestration when handling sensitive emotional data. likewise, the integration of emotional intelligence into artificial intelligence requires interdisciplinary collaboration, drawing perceptivity from psychology, neuroscience & machine literacy.

This paper explores the current state of emotionally intelligent artificial intelligence, its beginning technologies, 60 creating systems that foster more natural & mortal- centric relations.

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References

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Additional Files

Published

25-02-2025

How to Cite

Mrs. Shambhavi Holay, & Dr. Diwakar Tripathi. (2025). Developing Emotionally Intelligent AI Systems that can Fete Interpret and Respond Meetly to Mortal Feelings. Vidhyayana - An International Multidisciplinary Peer-Reviewed E-Journal - ISSN 2454-8596, 10(si3). https://doi.org/10.58213/vidhyayana.v10isi3.2239
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