ATL to Exhibit Data Automation Solutions at 2014 TCEQ Public Drinking Water Conference
News Jul 28, 2014
Accelerated Technology Laboratories, Inc. (ATL), a premier supplier of Laboratory Data Management Solutions, will be exhibiting in Zone C at the 2014 TCEQ Public Drinking Water Conference, August 5 - 6, 2014, at the Doubletree Hotel in Austin, TX.
Sample Master® and TITAN® Laboratory Data Management solutions are designed to assist organizations in managing NELAP, TCEQ, EPA, ISO and other compliance data, along with quality assurance processes. These tools aid in organizing, analyzing and storing analytical data, and enabling the conversion of data from information to knowledge, while facilitating regulatory compliance goals. ATL's software solutions identify each sample, store metadata and sample life cycle transactions, and generate bar-coded labels, EDDs, and automated reporting.
ATL will demonstrate Sample Master® v10 - a 100 percent web-based version of our Sample Master® LIMS, built on .NET framework. Sample Master® v10 boasts a brand new look and feel, perfect for those organizations with multiple US locations or global operations, and a need to utilize mobile technology (tablets; iPad, Samsung Galaxy, Trimble, etc.). The software will leverage the modularity and user friendliness for which Sample Master® is known, along with the secure Result Point® web portal.
ATL will also feature its revolutionary Laboratory Enterprise Resource Planning (ERP) system, TITAN®, representing the next generation in Laboratory Information Management Solutions. TITAN® offers a feature-rich user experience that simplifies and promotes automation and productivity through streamlined work processes. TITAN® is highly configurable and provides users the ability to tailor LIMS business rules to match their organizations' requirements, rather than modifying their way of doing business to fit a software package.
Additionally, ATL will exhibit the iMobile Application for tablets, smart phones and rugged laptops. Users of this application can view chain of custody, collection list, enter results for samples that were previously scheduled, GIS coordinates, and add new samples "on the fly". Plant, field and laboratory users will benefit from this technology.
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