SUPPLIER
Product overview: 

VALIDAT software for method validation of analytical methods according to DIN/ISO/ICH/USP/FDA standards. It reduces the complex job of method validation and achieves significant time and cost reductions. A variety of interfaces allow simple but secured data exchange with LIMS or CDS.

Company overview: 

iCD. is a ISO cerfied company specialised in the development of software and associated consulting for laboratories in different industry sectors since 1986. More than 300 customers worldwide rely on our core products: LABS/Q LIMS, the SAP Middleware LABS/QM, and the VALIDAT method validation software.

Distributors: 

Accelerated Technology Laboratories Inc. (USA, Canada); iCD. Thailand GmbH (Asia-Pacific); LZS Concept GmbH (Austria), Flowspek AG (Switzerland); Terra Analytics and Measurement Equipment Trade Co.Inc. (Turkey); Araman Tandorost Co. (Iran, Middle East).

Email: 
Phone: 
+49 2234 966 23 -0
Address: 

iCD. Vertriebs GmbH
Augustinusstr. 9d
50226 Frechen (Germany)

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Building a Smart Laboratory 2018 highlights the importance of adopting smart laboratory technology, as well as pointing out the challenges and pitfalls of the process

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Informatics experts share their experiences on the implementing new technologies and manging change in the modern laboratory

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This chapter considers how the smart laboratory contributes to the requirements of a knowledge eco-system, and the practical consequences of joined-up science. Knowledge management describes the processes that bring people and information together to address the acquisition, processing, storage, use, and re-use of knowledge to develop understanding and to create value

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