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Institute (ANSI) A300 Part 7-2006 Vegetation Management standards and the International Society of Arboriculture best management practices. IVM has continued to evolve over the last decade, with examples of expanded emphasis of work on: 1) broad assessment of environmental impact, 2) building social awareness and responsibility; and 3) elevated focus on safety and reliability of service. The .