Eppendorf SE and DataHow AG collaborate to advance bioprocess data management

19 Dec 2024

Industry news

Eppendorf SE, a leading life science company, and DataHow AG, a pioneer in advanced data analytics and AI-driven prediction software, have announced a strategic collaboration aimed at transforming bioprocess development. This partnership will integrate DataHow's innovative AI-enabled analytics solution, DataHowLab, with Eppendorf's cloud-based monitoring and analytics platform, BioNsight® cloud, providing scientists with unparalleled insight and analytics capabilities.

Enhancing bioprocess development efficiency and collaboration

In the highly specialized field of bioprocess development, the ability to design and optimize complex processes that meet stringent quality standards with maximum efficiency is crucial. Process data is a critical asset in this endeavor, yet leveraging it effectively remains a significant analytical challenge for process scientists.

The integration of DataHowLab software within BioNsight cloud addresses this need by offering a streamlined journey from data generation to advanced analytics and insight, enabling researchers to make informed decisions quickly and efficiently.

Data harmony around bioreactors is essential for enabling a robust bioprocess ecosystem. Bioprocess engineering demands seamless convergence between research and development as well as scalable production. This collaboration addresses the intricate requirements for digital services in this context.

Automating data preparation

Manual data cleaning and formatting are often tedious and error-prone tasks that can significantly impede the research process. By automating these processes, the integrated platform saves valuable time and reduces the risk of errors, allowing researchers to focus on value-add analysis and in generating critical insights for decision-making. This is where cloud technology truly excels, providing easy access to clean, formatted data that is ready for analysis.

Unlocking the power of predictive modeling

With clean and well-organized data, DataHowLab democratizes access to advanced AI-enabled analytics, enabling non-data science experts to perform complex analyses with guided workflows.

Scientists can use the software to perform advanced process data analytics, run in silico simulations to generate insight outside of the wet lab, or for AI-enabled optimal experimental design. With faster process understanding, R&D can operate more efficiently by reducing experimental effort and accelerating project timelines.

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Data AnalysisData analysis hardware and software is available to make data processing straight-forward yet powerful. Data software can be used for math and stats, technical graphing and image analysis. In addition, software is available for specific data analysis of electrophoresis, densitometry, ELISA and DNA sequencing.BioprocessingBioprocessing is the use of biological systems for the conversion of raw materials to desired products. This includes the research, development and manufacturing stages of production and can refer to food processing, small-molecule pharmaceutical manufacture, production of recombinant protein therapeutics, or the generation of renewable energy.AIAutomationAutomation in laboratories and manufacturing processes enhances efficiency, precision, and scalability by reducing the need for manual intervention. It plays a critical role in improving productivity, minimizing human error, and accelerating workflows in fields like diagnostics, drug development, and industrial testing. Automation technologies include robotic systems, automated liquid handlers, and process control systems that streamline complex tasks and ensure consistent, reproducible results. Explore our peer-reviewed product directory to discover the best automation solutions, compare options, read user reviews, and get prices directly from manufacturers.
Eppendorf SE and DataHow AG collaborate to advance bioprocess data management