Inspection

QTrak

Designed in-house to meet the specific needs of our services and operations, QTrak is our proprietary project management system. Now in its third iteration, the state-of-the-art tool is cloud-based and fully paperless, providing our customers with access to a wealth of real-time and historic data including inspection reports, supplier analysis and financial reporting.

Thanks to continued investment, QTrak has been optimised around a bespoke application programming interface (API) that allows it to connect with customers’ in-house project management systems. Data can be shared securely between platforms to  maximise efficiencies, streamline reporting and promote the highest levels of data integrity.

We recognise that continued innovation and systems customisation is important to our customers, and work hard to be the partner of choice. Developed in house by G&P’s expert team, specific customer requirements can be defined and coded into the QTrak system quickly and effectively.

More than just a reporting and invoicing tool, day-to-day data collected by QTrak can be analysed to provide a reliable indication of deteriorating supplier performance.

By continually monitoring the frequency, scale and detail of supplier quality incidents, QTrak can build up a comprehensive picture of risk within any given supply chain.

Indeed, QTrak can calculate a supplier risk level index number that ranks risk in the supplier pool. Using this intelligence to direct proactive interventions towards ‘at risk’ suppliers, the chance of poor quality impacting on the manufacturer can be reduced, potentially eliminating costly disruptions.

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G&P are an international service provider, enabling our clients to benefit from consistent service levels as well as localised points of contact.
 

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