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Deploying Materials Informatics IDTechEx Discusses if SAAS Is a One-Size-Fits-All Approach

The materials industry is sometimes described as conservative, but digital transformation is well underway in the sector. Materials informatics – the application of data-centric approaches, including machine learning, to materials R&D – has the potential to be the most impactful arm of this process.

Not only can materials informatics (MI) accelerate the ‘forward’ direction of innovation (properties are predicted for an input material), but sometimes even the idealized ‘inverse’ direction (materials are designed given desired properties). Given its potential to revolutionize materials development, it is little wonder that IDTechEx forecasts the market for the provision of external MI services to grow at 13.7% CAGR by 2033.

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During research interviews for their recent report “Materials Informatics 2023-2033”, industry insiders frequently told IDTechEx that a core problem in developing an MI solution is that materials scientists are rarely data scientists and vice versa. As a firm newly looking to employ MI, buying into a SaaS (software-as-a-service) platform from an external provider is often an attractive approach to bridging this gap, giving materials scientists a pre-built architecture to develop their own MI projects within.

A full toolkit, from data gathering to machine learning analysis to visualization of results, is often given to users of these platforms, sometimes with little to no need to employ coding skills. This might sound like a magic bullet – why, then, are SaaS platforms not the universal approach to MI?

Using a SaaS package for MI projects lowers skill barriers, allowing companies that may not otherwise have had the internal expertise to apply machine learning to materials development. This, surprisingly, is not universally seen as beneficial. Materials giants with sufficient resources may prefer to build their own internal skillsets, software, and platforms as part of their own custom-tailored digital transformation – specialist consultancy firms like Enthought even exist to aid in the task. These giants may feel they are able to differentiate and break new ground beyond what is possible with an off-the-shelf platform. Given the diverse range of problems within materials science, it could be argued that a targeted approach is sometimes more valuable than a one-stop shop, despite the higher investment required.

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3M has been particularly public about its efforts in this area, with the company saying this forced it to overhaul its approach to data infrastructures and has yielded positive results with adhesive formulations. A few major players, like Hitachi, have even chosen to deploy their own internally developed MI platforms to other firms via a SaaS approach.

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Of course, multibillion-dollar giants also employ SaaS platforms two cherrypicked examples include LyondellBasel working with Citrine Informatics and TotalEnergies with Uncountable Inc. When interviewed, both Citrine and Uncountable told IDTechEx that they are seeing increasing interest in MI services from industry titans, likely as a scramble continues to not get left behind in the race for digital transformation. Some of these players could even be looking to acquire SaaS providers to internalize their expertise.

This speaks to another reason that not everyone trusts buy-in to a SaaS platform: if a SaaS provider ceases trading, newly-ingrained methods of working with materials data could suddenly become useless. Furthermore, despite extensive efforts by MI SaaS providers to demonstrate their data security expertise, some materials firms may still struggle to trust these companies to handle the data that has become their most valuable commodity.

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[To share your insights with us, please write to sghosh@martechseries.com]

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