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How IBM Planning Analytics can help fix your supply chain

IBM Big Data Hub

IBM Planning Analytics, or TM1 as it used to be known, has always been a powerful upgrade from spreadsheets for all kinds of planning and reporting use cases, including financial planning and analysis (FP&A), sales & operations planning (S&OP), and many aspects of supply chain planning (SCP).

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Business process reengineering (BPR) examples

IBM Big Data Hub

An early case study of BPR was Ford Motor Company, which successfully implemented reengineering efforts in the 1990s to streamline its manufacturing processes and improve competitiveness. Organizations of all sizes and industries implement business process reengineering.

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Malicious PDF Analysis

Security Affairs

” Let’s go to our case study: I received a scan request for a PDF file that was reported to support an antivirus vendor, and it replied that the file was not malicious. Most security tools must always be adapted to this new reality of attack and infection. About the author : Zoziel Freire. Twitter: [link].

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The software-defined vehicle: The architecture behind the next evolution of the automotive industry

IBM Big Data Hub

A close-up of the SDV architecture The infrastructure layer This layer includes not only the vehicle but also the telco equipment, roadside units, smart city systems and similar components, as well as various backend systems of the original equipment manufacturers (OEMs).

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12 considerations when choosing MES software

IBM Big Data Hub

Manufacturing execution systems (MES) have grown in popularity across the manufacturing industry. If your manufacturing processes have become more intricate and challenging to manage manually, an MES can help streamline manufacturing operations management, increase efficiency and reduce errors.