artificial intelligence
KI MOD PEM for quality control in PEM fuel cell technology
QuoData is pleased to be part of the KI MOD PEM project (AI-based modular mapping of the PEMFC-MEA manufacturing process for quality control of intermediate and end products). This project is supported by the Central Innovation Program for SMEs (ZIM), a nationwide, technology- and industry-open funding program. KI MOD PEM has a duration of 2.5 years and runs until April 30, 2026.
Exploring Artificial Intelligence for Life Science SMEs: Successful Event Hosted by QuoData with biosaxony
The "biosaxony vor Ort – AI for SMEs" event held on March 14, 2024, at the QuoData headquarters, was a resounding success. Filled with vibrant energy from enthusiastic participants and insights shared by esteemed speakers, it was an enriching experience.
The event kicked off with a brief opening by Conny Lerche, followed by Anja Rösler's introduction to biosaxony and its current initiatives. Continuing the program, QuoData’s Senior Data Scientist, Kapil Nichani, delved into "Embracing AI: Transforming measurement data into insights and actions".
Exploring AI in Life Sciences: QuoData hosts "biosaxony vor Ort"
Exploring AI in Life Sciences: QuoData hosts "biosaxony vor Ort"
QuoData is honored and excited to take the lead in hosting the upcoming "biosaxony vor Ort" event on March 14, 2024, from 4 pm to 6:25 pm at our headquarters on Prellerstrasse 14.
Digitization and artificial intelligence are finding their way into viticulture
QuoData at the BVL Symposium 2020
How AI can help everyone’s decision-making process in the COVID-19 era – a novel QuoData approach to tackle the complexities of a pandemic
The novel coronavirus has directly or indirectly affected everyone’s lives forcing people to embrace a new normal. Many experts predict that the pandemic is likely to have a continued impact, far beyond the ongoing distancing restrictions. Moving forward, QuoData believes that adapting and tweaking everyone’s personal and business decision-making process, by factoring different socio-economic aspects is the key.
From farm to fork, via AI - a case study for distinguishing different grain cultivars
In their ongoing work, QuoData's scientists are pleased to share some of the recent developments in their latest paper - "AI-based identification of grain cultivars via non-target mass spectrometry". The paper deals with the use of non-target high-resolution mass spectrometry and the processing of the extensive data using artificial intelligence approaches.
AI for identification - proteomics and genomics
The range of human activity directly or indirectly involved in addressing issues related to food safety has considerably expanded in the last decade. In the past, the focus in food safety lay on quality control measures implemented to ensure productive processes met performance criteria. Nowadays, however, a narrow understanding of the issues surrounding food safety will compromise our ability to fully mobilize the potential of new digital and AI technologies.
Evaluating dependability of black box AI methods
Artificial intelligence methods are now seeping into healthcare, medicine, agriculture and food sectors. Keeping the buzz aside, such methods are increasingly efficient at addressing a task at hand. The area of food safety is not unknown to these technological developments in big data and contemporary machine learning methods. For example, use of AI as part of analytical measurement procedures, internet of things (IoT) enabled analytical devices, use of predictive analytics algorithms for crunching large data sets, to list a few.
Artificial neural networks for the detection of food fraud - Data Scientists at Eurachem workshop in Dublin
The Eurachem Week 2018 took place from 14 - 18 May 2018. As a developer of mathematical-statistical concepts for quality assurance QuoData contributed to the event. Its data scientists and Carsten Uhlig of Akees GmbH presented a new approach to detect food fraud more quickly at the "Workshop on Data - Quality, Analysis and Integrity”, which was developed in cooperation with the Federal Office for Consumer Protection and Food Safety (BVL).