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No matter what market you operate in, AI is critical to keeping your business competitive. When considering how to work AI into your existing business practices and what solution to use, you must determine whether your goal is to develop, deploy, or consume AI technology. And for additional information click here.
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s wholesale pivot to technology has transformed not only the automaker’s business operations but its corporate identity. “We Mike Amend, Ford’s chief enterprise technology officer, was once CTO for Dell’s global online business. Ford Motor Co.’s People don’t think of a large, 100-year-old manufacturing company as high tech.”
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His first order of business was to create a singular technology organization called MMTech to unify the IT orgs of the company’s four business lines. To address the misalignment of those business units, MMTech developed a core platform with built-in governance and robust security services on which to build and run applications quickly.
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The flashpoint moment is that rather than being based on rules, statistics, and thresholds, now these systems are being imbued with the power of deep learning and deep reinforcement learning brought about by neural networks,” Mattmann says. The systems are fed the data, and trained, and then improve over time on their own.”
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