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What Is Mining

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1.Start out going north on Rice Ct toward Neal Way.0.02 mi
2.Take the 1st left onto Neal Way.If you are on Luther Ct and reach Hosea Ct you've gone a little too far 0.4 mi
3.Turn right onto Double Bridge Rd. 0.4 mi
4.Turn slight left onto Front St.Front St is 0.1 miles past Christophers Bnd 0.3 mi
5.Front St becomes Ellenwood Rd. 0.2 mi
6.Turn left onto Forest Pky/Ellenwood Rd.0.2 mi
7.Merge onto I-675 N toward I-285.If you reach Old Grant Rd you've gone about 0.3 miles too far 4.7 mi
8.Merge onto I-285 W/GA-407 W via the exit on the left toward Atlanta/ATL Airport. 8.9 mi
9.Merge onto I-85 S via EXIT 61 toward Columbus/Montgomery (Crossing into Alabama).144.3 mi
10.Merge onto US-80 W/AL-21 S/AL-8 W via EXIT 6. 7.3 mi
11.Turn left onto S Court St.S Court St is 0.5 miles past Norman Bridge Rd CHEVRON is on the corner If you reach Rosa L Parks Ave you've gone about 0.4 miles too far 1.9 mi
12.S Court St becomes US-331 S/AL-9 S. 44.7 mi13.Turn right onto US-331/S Forest Ave/US-29/AL-15/AL-9. Continue to follow US-331 S/US-29 S/AL-15 S/AL-9 S.US-331 S is just past Legrand St Flowers by Michelle is on the right
If you are on US-29 and reach N Glenwood Ave you've gone a little too far9.5 mi
14.Turn right onto US-29/W Emmett Ave/AL-15. Continue to follow US-29/AL-15.US-29 is just past St James St If you are on S Main St and reach Railroad Ave you've gone a little too far 9.2 mi
15.Turn left onto Main St.If you reach Lowman Loop Rd you've gone about 0.9 miles too far 0.7 mi
16.Main St becomes Rose Hill Rd.3.4 mi
17.Turn slight right onto Straughn School Rd.Rose Hill Volunteer Fire Department is on the corner 0.9 mi
18.Take the 1st right onto Old Searight Rd.Old Searight Rd is 0.2 miles past Will Grant Ln
If you reach Holley Rd you've gone about 0.2 miles too far 1.2 mi
19.Stay straight to go onto Bama Ln. 0.3 mi
20.32837 BAMA LN is on the left.Your

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