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Apheris Transforms Life Sciences by Harnessing Federated Computing to Break Through AI Data Barriers

Apheris Transforms Life Sciences by Harnessing Federated Computing to Break Through AI Data Barriers

Apheris is transforming the AI data challenge in the life sciences by employing federated computing, a method that shows considerable potential for improving both privacy and efficiency in machine learning.

In the life sciences field, AI is heavily dependent on data; however, privacy and regulatory issues significantly limit the use of health data. This challenge has been a major obstacle, with approximately 97% of all healthcare data remaining entirely unused because it is isolated within organisations and cannot be shared.

How Apheris Tackles This Challenge

Apheris has introduced a solution that utilises federated computing, which allows data to be utilised securely for AI model training without the need to transfer the data physically. Here’s an overview of the process:

Recent Developments and Funding

Apheris has recently secured a Series A funding round of $8.25 million, spearheaded by DeepTech investors OTB Ventures and eCAPITAL. This investment will enable Apheris to broaden its influence and establish itself as a premier provider of federated computing solutions within the life sciences sector. The funding will be utilised to develop the most extensive and secure life science data network by linking distributed health and life sciences data for analytics and AI.

Industry Impact and Partnerships

Apheris has already attracted significant interest from prominent clients, such as Roche and various hospitals. The company is also a member of the AI Structural Biology (AISB) Consortium, which comprises leading pharmaceutical companies like AbbVie, Boehringer Ingelheim, Johnson & Johnson, and Sanofi. This consortium utilises Apheris’ secure federated learning framework to tailor AI drug discovery models using proprietary pharmaceutical data while maintaining data privacy.

Overcoming Technical Challenges

While federated computing presents numerous advantages, it also introduces specific challenges:

Apheris is indeed reimagining the AI data bottleneck in life sciences through federated computing, enabling the full potential of AI and machine learning in the sector while preserving data privacy and security.

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