Resources
A collection of feature articles, case studies, and whitepapers from CAS. News and trends spanning scientific research and information technology.
Check the spelling in your query or search for a new term.
Site search accepts advanced operators to help refine your query. Learn more.
A collection of feature articles, case studies, and whitepapers from CAS. News and trends spanning scientific research and information technology.
How can you make smart investments that position your organization for success with today's technologies, such as deep learning, as well as the next breakthroughs? This blog will show you how building a solid data foundation is essential to long-term success in implementing digital technologies and how you can get started with smart investments today that will pay dividends long into the future.
Though an increasing number of novel chemical compounds are being synthesized each year, there is growing concern that innovation may be stagnating in small molecule discovery. However, new research published by CAS scientists in the October 2019 Journal of Organic Chemistry reveals that the pace of small molecule innovation is actually accelerating from a structural perspective and offers insights into finding fruitful new areas for further investigation as chemists navigate a vast and largely unexplored chemical space.
How your data is organized and stored, and the data relationships within, is defined by a data model. An effective model allows users across your organization to easily understand how the business operates. It is the linchpin of almost every high-value business solution, with its greatest value realized when applied beyond the boundaries of individual lines of businesses (LOBs) or operations within an organization. This data model is a strategic pillar for information management, upon which the success of future business-critical projects depend.
Given the wide range of applications and benefits offered by ML, there is a current push to implement it in the materials science sector, with many R&D-based organizations investing heavily in the development of digital strategies. However, one challenge these teams face is that scientific data is often complex and disconnected. This is a problem because ML systems rely on well-organized, high-quality data. So, how can you effectively apply ML to accelerate innovation and growth in your materials science company?
Read how machine learning is being used to identify, screen and prioritize candidate compounds. CAS demonstrates how a machine learning approach will increase accuracy and reliability of predictions.
The promise of artificial intelligence has always felt more like a future state, but the reality is that many companies are already adopting AI initiatives. This is especially true in the scientific R&D realms. Over the last few years, there has been a huge increase of machine learning and AI initiatives in everything from QSAR models to genomics. According to a 2018 survey, AI adoption grew drastically from 38% in 2017 to 61% in 2018. This occurred across a variety of industries, including healthcare, manufacturing and financial services. However, most early adopters noted one of the biggest challenges to successful implementation involved data, specifically, accessing, protecting, integrating and preparing data for AI initiatives.
Learn how incorporating an intellectual property (IP) strategy in research and development plans can give your business a competitive edge.
Celebrating its 10th year, the CAS Future Leaders program awards early-career scientists with essential scientific, business and leadership training and a trip to the ACS National Meeting & Exposition. This year, 29 participants from 16 countries took part in programming related to five leadership themes (Storytelling, Insights, Strategies, Perspectives and Impacts), all designed to help them advance their careers and make meaningful impacts in science.