LINKS Analytics BV Announces Launch of ClearD3™ Data-Driven Pricing Platform Enabling B2B Companies to Optimise Pricing and Capacity Processes
LINKS Analytics BV today announced the launch of its new Data-Driven Pricing Platform, ClearD3™, that will enable companies of all sizes to optimise their Pricing and Capacity Processes without the crippling burden of upfront investments. The ClearD3™ platform translates external supply chain economic and business data into measurably better margins and revenues* setting a new gold standard in data-driven decision making.
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“In the coming decade the decision making in companies will undergo a major transition towards data-driven rules-based management”
“In the coming decade the decision making in companies will undergo a major transition towards data-driven rules-based management,” said Taron Ganjalyan, founder and managing director, LINKS Analytics. “Extra gross margins of 5-10% for data-driven companies compared to the competition will be the norm in the B2B market. Margins will be gradually competed away during the coming 30 years and data-driven decisions will become a minimum requirement to survive.”
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ClearD3™ is an AI machine-learning application assisted by an Agent-Based Model of today’s global supply chains. The platform comprises seventy industries in forty countries and gives a coverage of about 92% of the global economy. It enables companies to navigate their changing pricing environment and to make their pricing and capacity decisions based on accurate analyses of the latest market conditions.
ClearD3™ has been validated* by major financial institutions (professional teams with Assets Under Management over €100 billion) using the system based on rigorous and objective requirements:
– Beating human analysts
– Beating best available statistical methods
– Generating superior performance on the basis of high-probability forecasts