Remove 2030 Remove Data Management Remove Manufacturing Remove Transportation
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Cognitive Computing: Getting Clear on Definitions

Supply Chain Shaman

The decision support technologies that we use today–price management, trade promotion management, network design, supply chain planning, transportation planning, supplier risk management–are on the cusp of redefinition through new forms of analytics. Forge New Directions for Supply Chain 2030.

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Maximize One of Your Greatest Assets: Yard Operations

BlueYonder

One often-overlooked logistics asset is yard operations — the physical space outside warehouses, distribution centers and manufacturing facilities where inbound and outbound shipments are handled. As more organizations realize the value of yard optimization, the market for dock and yard management solutions is growing. Valued at $3.1

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Supply Chain 2030: Forge a New Path

Supply Chain Shaman

The Supply Chain Insights Global Summit is over, but we hope the energy to define Supply Chain 2030 is just beginning. As companies prepare for Supply Chain 2030, we think that it is time to rethink the basics. As companies prepare for Supply Chain 2030, we think that it is time to rethink the basics. What does it take?

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Seasoned Leadership in Action™ – An Interview with Fiona Lowbridge, VP at ALOM!

Supply Chain Game Changer

Because of geographic distances and uncertainties related to economic, political, climate and weather, material availability, regulatory compliance, consumer expectations, transportation and the list goes on, planning is extremely complex. Timely, accurate data is needed to make fast, smart decisions.

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Achieve the Environmentally Sustainable Supply Chain Consumers Demand

Logility

Local sourcing might seem more expensive, but local suppliers may be more flexible, require shorter lead times, and have lower transportation costs as well as a smaller carbon footprint. It’s predicted that AI can reduce global greenhouse gas emissions by 4% by 2030, which is 2.4 billion tons of CO 2 emissions. .