Remove System Architecture Remove Technical Advisors Remove Training
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Chief Technology Officer: Understanding the Main Tech Person In a Company

Altexsoft

A Chief Technology Officer (sometimes called Chief Technical Officer) is the most skilled technology person in the company. CTO vs CIO vs VP of Engineering vs Technical director. They are often confused with CIOs, VPs of Engineering, or Technical Directors. Technical director – tech advisor in a team.

CTO 76
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Choosing Between Contractors and Consultants: What’s the Best Decision?

Tandem

Companies are looking for professionals who possess a deep understanding of programming languages, system architecture, and agile methodologies. The right professional has both the necessary technical skills and a deep understanding of your specific industry and business goals.

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AoAD2 Practice: Whole Team

James Shore

Technical skills. A great team can produce technically excellent software without on-site customers, but to truly succeed, your software must also bring value to real customers, users, and your organization. They contribute to release planning by advising the team on user needs and priorities. At least it‘s Ops’ problem now.

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Digital Twins: Components, Use Cases, and Implementation Tips

Altexsoft

This process involves numerous pieces working as a uniform system. Digital twin system architecture. A digital twin system contains hardware and software components with middleware for data management in between. Components of the digital twin system. The twinning, however, doesn’t happen out of thin air.

IoT 64
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Ray jobs on Amazon SageMaker HyperPod: scalable and resilient distributed AI

AWS Machine Learning - AI

Foundation model (FM) training and inference has led to a significant increase in computational needs across the industry. These models require massive amounts of accelerated compute to train and operate effectively, pushing the boundaries of traditional computing infrastructure. We primarily focus on ML training use cases.