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Events Managment

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Submitted By suzannebadruk
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Suzanne Badruk
Events Management
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Friday 23rd November 2012
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Title: Events Management 1.0 This report will look at all aspects of events management it will also investigate the scale and scope of the events industry and the impact it has on economy. Events management has many different processes which are set out in the report. It will also analyse the risk with in an event and government legislations that all event organisers have to follow to ensure the safe running of the event. Managements have to obey by ethical issues when staging an event and must sympathies with the need of not just the employees but the customers they are serving. The report will outline ethical issues that affect not just the event industry but tourism in general 2.0 Procedure 3.1 Scale and Scope 3.2 Legal and Ethical

3.0 Finding 4.3 Scale and Scope
3.1.1 Event can refer to many things such as, an observable occurrence, phenomenon or an extraordinary occurrence. It can be described as a public assembly for the purpose of celebration, education, marketing or reunion. Events can be classified on the basis of their size, type and context. Events are needed socially to mark the local and national details of people's lives (Bowdin, 1999).
In the events industry today the type of events can be classification of events can be done on the basis of size or type, as follows: * The largest events are called mega-events and these are generally targeted at international markets. The Olympic Games, Commonwealth Games, World Cup are good examples * Hallmark events are designed to increase the appeal of a specific tourism destination or region * Major events attract significant local interest and large numbers of participants, as well as generating significant tourism revenue * Cultural Events or entertainment events are

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