Download Big Data Driven Supply Chain Management: A Framework for Implementing Analytics and Turning Information Into Intelligence (FT Press Analytics) PDF EPUB
Author: Author
Pages: 272
Size: 1.633,86 Kb
Publication Date: June 8,2014
Category: Production, Operation & Management
Get better at a complete, five-stage roadmap for leveraging Big Data and analytics to get unprecedented competitive benefit from your source chain. They are attaining better visibility into inventory amounts, order fulfillment rates, materials and item delivery… using predictive data analytics to complement source with demand; Using Big Data, pioneers such as for example Amazon, UPS, and Wal-Mart are attaining unprecedented mastery over their source chains. leveraging new preparing strengths to optimize their product sales channel strategies; optimizing source chain technique and competitive priorities; actually launching powerful brand-new ventures. In Big Data Driven Source Chain Administration , Nada Sanders presents a systematic five-stage framework for using Big Data in source chains. Despite these possibilities, many supply chain functions are attaining limited or no worth from Big Data.ll learn guidelines for segmenting and analyzing clients, defining competitive priorities for every segment, aligning functions at the rear of technique, dissolving organizational boundaries to feeling demand and make smarter decisions, and choose the best metrics to support all this. You' Using these methods, you can conquer the widespread obstacles to taking advantage of Big Data in your source chain — and generate big profits from the info you're currently generating. For all executives, managers, and analysts thinking about using Big Data technology to boost supply chain performance.
See also
- Modeling Techniques in Predictive Analytics: Business Problems and Solutions with R, Revised and Expanded Edition (FT Press Analytics)
- Sports Analytics and Data Science: Winning the Game with Methods and Models (FT Press Analytics)
- Marketing Data Science: Modeling Techniques in Predictive Analytics with R and Python (FT Press Analytics)