Data Analytics and Artificial Intelligence

Authors

  • Slesha Kumar Kosuru Department of Pharmaceutical Analysis & Quality Assurance, Lydia College of Pharmacy, Ravulapalem, Andhra Pradesh, India.
  • Suvarna Tadi Department of Pharmaceutical Analysis & Quality Assurance, Lydia College of Pharmacy, Ravulapalem, Andhra Pradesh, India.
  • Jyothi G Department of Pharmaceutical Analysis & Quality Assurance, Lydia College of Pharmacy, Ravulapalem, Andhra Pradesh, India.
  • Sravani K Department of Pharmaceutical Analysis & Quality Assurance, Lydia College of Pharmacy, Ravulapalem, Andhra Pradesh, India.
  • Gowthami D Department of Pharmaceutical Analysis & Quality Assurance, Lydia College of Pharmacy, Ravulapalem, Andhra Pradesh, India.
  • Sai Siva Saran K Department of Pharmaceutical Analysis & Quality Assurance, Lydia College of Pharmacy, Ravulapalem, Andhra Pradesh, India.

DOI:

https://doi.org/10.61427/jcpr.v3.i3.2023.112

Keywords:

Analytical Techniques, Artificial Intelligence, Data Analytics, Pharmaceutical Analysis

Abstract

In the realm of modern industry and technology, the amalgamation of data analytics and artificial intelligence (AI) has emerged as a formidable force, propelling significant transformations across various sectors. This partnership between data analytics and AI is not merely reshaping conventional practices but also uncovering valuable insights that were previously hidden from view. The collaboration between these two disciplines is exemplified by data analytics, which involves the systematic examination of extensive datasets to extract meaningful insights through data refinement and interpretation. Dedicated professionals are actively engaged in the pursuit of cutting-edge analytical techniques that empower precise, efficient and sustainable pharmaceutical analysis. They are committed to harnessing the power of data analytics and artificial intelligence to elevate the speed and accuracy of data interpretation, making the drug development process more efficient and reliable. Adaptation to an evolving regulatory landscape is another crucial aspect of the analysts' roles. They diligently work to meet ever-changing standards and ensure that analytical methods are not just innovative but compliant with the necessary regulatory guidelines. A spirit of collaboration and data sharing permeates the community. In this world of pharmaceutical analysis, the dedicated analysts are not just observers of the future. They are the architects of progress and innovation, shaping a future characterized by ground breaking discoveries and enhanced pharmaceutical solutions.

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References

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Published

2023-07-17
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How to Cite

Kosuru, S. K. ., S. Tadi, J. G, S. K, G. D, and S. S. S. K. “Data Analytics and Artificial Intelligence”. Journal of Clinical and Pharmaceutical Research, vol. 3, no. 3, July 2023, pp. 15-17, doi:10.61427/jcpr.v3.i3.2023.112.

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