2 edition of User"s guide to the National Fire Occurrence Data Library found in the catalog.
User"s guide to the National Fire Occurrence Data Library
Richard F. Yancik
1982 by Rocky Mountain Forest and Range Experiment Station, Forest Service, U.S. Dept. of Agriculture in Fort Collins, CO .
Written in English
|Statement||Richard F. Yancik and Peter J. Roussopoulos.|
|Contributions||Roussopoulos, Peter J., Rocky Mountain Forest and Range Experiment Station (Fort Collins, Colo.)|
|The Physical Object|
|Pagination||25 p. :|
|Number of Pages||25|
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school economic atlas.
The odious, despicable, and dreadfull condition of a drunkard, drawn to the life to deterre others, and cause them to decline the wayes of death, or, A hopefull way to cure drunkennesse
User's guide to the National Fire Occurrence Data Library Author: Richard F Yancik ; Peter J Roussopoulos ; Rocky Mountain Forest and Range Experiment Station (Fort Collins, Colo.). User's guide to the National Fire Occurrence Data Library / By Richard F.
Yancik, Peter J. Roussopoulos and Colo.) Rocky Mountain Forest and Range Experiment Station (Fort. NIMS Wildland Fire Qualifications System Guide, pms, NWCG Standards for Wildland Fire Position Qualifications NWCG Standards for Wildland Fire Resource Typing Modeling Fire Evacuation of a Library Building based on the Numerical Simulation T a = An action tim e of fire occurrence.
(Version 5) User’s Guide, National. Institute of Standards. In other professions, e.g., research, engineering, medicine, etc., there is a strong bias for using data to support any position, conclusion or recommendation (Data-driven decision making).