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Catch up on Supply Chain Analytics news with our Summer Reading List

AIMMS

The list includes the best of our blog and news items, our latest webinars and most recent case studies. Often, teams think they also need plenty of clean and accurate data to do it right. It’s the perfect companion for an inspiring holiday break! .

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Catch up on Supply Chain Analytics news with our Summer Reading List

AIMMS

The list includes our best supply chain analytics blogs and news items, our latest webinars and most recent case studies. Often, teams think they also need plenty of clean and accurate data to do it right. It’s the perfect companion for an inspiring holiday break! .

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Blockchain in Supply Chain: 2 Ethereum-Based Projects That Demonstrate How Blockchain Can Improve Supply Chains

GlobalTranz

2017 was the year that blockchain technology finally made world headlines, but it was mostly for the wrong reason. Ethereum shares some common features with Bitcoin, including how it’s mined by computers and codifies unique data that can be used to track everything from transactions to an exchange of goods (more on that below).

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Why you don’t need perfect data to start implementing S&OP

AIMMS

Often, teams think they also need plenty of clean and accurate data to do it right. He gathered and looked at the data and would produce a forecast based on previous experiences. He was changing forecasting data upon verification but also based on gut feel. Then we’ll have a more consistent way of getting our data.

article thumbnail

Why you don’t need perfect data to start implementing S&OP

AIMMS

Often, teams think they also need plenty of clean and accurate data to do it right. He gathered and looked at the data and would produce a forecast based on previous experiences. He was changing forecasting data upon verification but also based on gut feel. Then we’ll have a more consistent way of getting our data.