Luma Lab Connect: Empowering Automated End-to-End Instrument Data Capture in the Modern Lab
The presentation on Dotmatics Luma Lab Connect, led by Alister Campbell at Messe Frankfurt on June 11th, will showcase how the platform enables automated, end-to-end instrument data capture in modern labs by centralizing and standardizing diverse data formats to provide scientists with FAIR (Findable, Accessible, Interoperable, Reusable) data access despite challenges from varied manufacturers and formats.
Luma Lab Connect: Empowering Automated End-to-End Instrument Data Capture in the Modern Lab
Within the laboratory environment, rapid innovation in instrumentation has led to an explosion of data and potential insights. However, this increase in data has shifted challenges downstream in the process. A lack of centralization and standardization—due to differences among manufacturers and formats—has made it increasingly difficult for scientists and researchers to find relevant data.
The presentation will demonstrate how Dotmatics Luma Lab Connect aims to address these issues by providing data to scientists in a FAIR (Findable, Accessible, Interoperable, Reusable) manner.
Attendees will hear from Alister Campbell, Vice President, Global Head of Science and Technology at Dotmatics, on Tuesday, June 11th from 2:45 pm to 3:15 pm at Messe Frankfurt GmbH, Germany.
Related
Data Evolution in Pharma: The Spread of Multimodal
The pharmaceutical industry is shifting from single-mode to multimodal drug discovery, incorporating diverse therapeutic modalities like biologics, gene therapies, and small molecules, but this evolution presents significant challenges in integrating heterogeneous R&D data and technologies, necessitating advanced, compatible platforms to enable efficient collaboration and leverage AI-driven insights for faster, cost-effective drug development.
How Luma Lab Connect Automates Lab Data Acquisition Across 100+ Instruments
Dotmatics Luma Lab Connect, part of the Dotmatics Luma multimodal scientific R&D platform, automates and streamlines the acquisition, management, and preparation of complex, multimodal lab data from over 100 diverse instruments and sources, addressing challenges of data security, integrity, and usability to enhance research productivity and enable FAIR data practices within a unified, low-code SaaS environment.
Empowering Automated End-to-End Instrument Data Capture in the Modern Lab
Alister Campbell's Achema 2024 presentation demonstrates how Dotmatics' Lab Connect and Luma platforms automate end-to-end instrument data capture in modern R&D labs, streamlining data management with FAIR principles, integrating over 100 instruments without configuration, enhancing efficiency by reducing analysis time, and enabling scalable, cloud-native solutions that support predictive and generative AI to drive digital transformation and ROI.
A Decade of Data Sharing Change
Over the past decade, scientific R&D has shifted from viewing data sharing as problematic to a mandated practice driven by policies like the NIH’s 2023 Data Management and Sharing Policy, which emphasizes standardized data and metadata sharing to enhance reproducibility, collaboration, and innovation, while also necessitating technological advancements to manage the complexity of modern research data.
Dotmatics Mini-Summit: From Insights to Impact
The Dotmatics Mini-Summit: From Insights to Impact is a 90-minute digital event featuring CEO Thomas Swalla and experts demonstrating Dotmatics Luma, a no-code, multimodal data platform that automates aggregation of diverse research data from thousands of instruments and software, enables easy data modeling, streamlines scientific workflows, offers upcoming AI-powered natural language search, and supports FAIR data principles, followed by a live Q&A session.
FAIR Data Principles Explained
The FAIR Data Principles, established in 2016 by a diverse group of stakeholders, provide high-level, non-domain-specific guidelines to make data and metadata Findable, Accessible, Interoperable, and Reusable, thereby enhancing data management for both humans and machines to improve collaboration, efficiency, and value in scientific research and development across disciplines and data types.