Integrating AI and Machine Learning into Product Development Processes
DOI:
https://doi.org/10.70705/ppp.fetaiml.2023.v02.i01.pp37-39Keywords:
Artificial Intelligence (AI), Machine Learning (ML), Product development, customer feedback, skilled personnel, ethical considerations, innovation, prototyping, predictive models, data analysis, decision-making, time-to-market, product quality, data privacy, algorithmic bias, operational challenges, case studies, best practices, future trends, sustainable integrationAbstract
How companies create and function has been transformed by the incorporation of AI and ML into product development
processes. This article delves into the revolutionary effects of AI and ML on product development, shedding light on crucial
domains including design, prototyping, testing, and incorporating consumer input. Companies may increase product quality,
shorten time-to-market, and boost decision-making with the use of AI-driven data analytics and predictive models. Privacy
concerns, algorithmic prejudice, and a lack of trained staff are among the obstacles discussed in the article. Insights into best
practices and future trends are provided via case studies from diverse sectors, which show successful implementations. While
AI and ML do have many benefits, the results show that ethical and practical concerns must be carefully considered in order
for integration to be viable.


