|By Business Wire||
|July 28, 2014 05:54 AM EDT||
Research and Markets (http://www.researchandmarkets.com/research/rw5rts/manufacturing) has announced the addition of the "Manufacturing Execution System Market by Applications and Geography - Global Trends & Forecasts to 2014 - 2020" report to their offering.
The involvement of information technology in manufacturing processes has increased over the last few years. Information technology is used to improve the overall result. MES has helped many industries to improve their processes, which has led to a sustainable improvement.
MES has changed the manual operations into paperless operations for faster data transfer and better decision making. Connected network of various MES systems such as at plant level, production site and process site is the biggest feature of the MES technology. This has helped senior managers to make decisions based on the real time data from across the borders.
Discrete and process industries are two major categories of the manufacturing sector that MES serves. MES has been used in process industries for a long time but discrete industries are very large in nature and have the potential to grow for MES to be implemented. Automobile, healthcare, aerospace and defense, and FMCG are the major domains in the discrete industry.
Key Topics Covered:
2 Executive Summary
3 Market Overview
4 Global Manufacturing Execution System, By Products
5 Global Manufacturing Execution System Market, By Applications Market
6 Global Manufacturing Execution System, By Geographic Analysis
7 Competitive Landscape
8 Company Profiles
- ABB Ltd.
- andea Solutions Sp. Z O.O.
- Apriso Corporation
- Emerson Electric Co.
- Eyelit Inc.
- General Electric Co. (GE)
- Honeywell International, Inc.
- Operator System Aps
- Rockwell Automation, Inc.
- SAP AG
- Schneider Electric S.A.
- Siemens AG
- Werum Software and Systems
For more information visit http://www.researchandmarkets.com/research/rw5rts/manufacturing
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