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list-style-type="inherit" tabs="inherit"> <f size="20"> <b>Bearcraft Systems Inc.,</b> </f> </p> <p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="center" list-style-type="inherit" tabs="inherit"> <f size="20"> <b>UC Aircraft Design 2006</b> </f> </p> <p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="center" list-style-type="inherit" tabs="inherit"> <f family="Arial" charset="0" size="24"> <b> <inlineAttr line-through="false">Airfoil Values</inlineAttr> </b> </f> </p> </text> </region> <region region-id="20" left="12" top="86.25" width="237.75" height="12" align-x="29.25" align-y="96" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <text use-page-width="false" push-down="false" lock-width="true"> <p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" 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