C&EN White Paper
Creating The Proper Data Infrastructure for AI-Driven Formulation & Measurement in R&D
Brought to you by Uncountable
Overview

Today, more than ever, the advancements in Artificial Intelligence (AI) and Machine Learning (ML) have redefined the ways in which R&D organizations are able to analyze, interpret, and leverage large volumes of data more efficiently and productively. However, a crucial precursor to properly and fully utilizing AI, is the meticulous structuring of laboratory data.

This white paper delves into the multi-faceted implications of structured lab data, popular data systems used in today’s lab environment, how to determine and prepare your organization for compatible and successful AI-driven development, how to prepare and find the right AI solution for your organization, and best practices for R&D organizations as a roadmap to guide the way for AI-driven formulation and measurement in R&D.

Key Objectives:
  • What to consider before deploying AI for your R&D efforts
  • Best practices in structuring lab data for AI-driven R&D
  • Comparing data systems/sources in the lab – examples, advantages, & disadvantages
  • How to create a roadmap for AI-driven formulation & measurement
  • Questions to ask when evaluating different vendors/providers

Brought to you by:
Uncountable
This content was created by Uncountable, without editorial input from the C&EN Media Group. For more information on C&EN's custom products, visit our C&EN Media Kit.
Please complete the form to download the white paper.
*By submitting this form, you agree to receive more information on related products and services from the American Chemical Society (ACS Publications) and its sponsor via email. ACS takes your privacy seriously. For more information, please see the ACS Privacy Policy.

Copyright © 2024 American Chemical Society | 1155 Sixteenth Street NW | Washington, DC 20036 | View our Privacy Policy