case study data six sigma improvement
TRANSCRIPT
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Resource Hours Cost/hr
Project Champion 40 $120.00
Project Leader 184 $45.00
Co-ordinator 64 $25.00
uality uper!i"o 128 $25.00
Quality #naly"t 1 160 $10.00Quality #naly"t 2 160 $10.00
Quality #naly"t 160 $10.00
Proce"" %&ner 184 $5.00
'echnical upport 40 $40.00
() upport 160 $25.00
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nvoic pp1 Trial pp1 Trial pp2 Trial pp2 Trial pp3 Trial pp3 Trial Correct
1 *ood *ood *ood *ood *ood *ood *ood
2 +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e
+e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e
4 *ood *ood *ood *ood *ood *ood *ood
5 *ood *ood *ood *ood *ood *ood *ood
6 *ood *ood *ood *ood *ood *ood *ood *ood +e,ecti!e +e,ecti!e +e,ecti!e *ood +e,ecti!e +e,ecti!e
8 *ood *ood *ood *ood *ood *ood *ood
*ood *ood *ood *ood *ood *ood *ood
10 *ood *ood *ood *ood *ood *ood *ood
11 +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e
12 *ood *ood *ood *ood *ood *ood *ood
1 *ood *ood *ood *ood *ood *ood *ood
14 +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e
15 *ood *ood *ood *ood *ood *ood *ood
16 +e,ecti!e +e,ecti!e *ood +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e1 *ood *ood *ood *ood *ood *ood *ood
18 *ood *ood *ood *ood *ood *ood *ood
1 *ood *ood *ood *ood *ood *ood *ood
20 *ood *ood *ood *ood *ood *ood *ood
21 +e,ecti!e *ood *ood *ood *ood *ood *ood
22 *ood +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e
2 *ood *ood *ood *ood *ood *ood *ood
24 +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e
25 *ood *ood *ood *ood *ood *ood *ood
26 *ood *ood *ood *ood *ood *ood *ood
2 *ood *ood +e,ecti!e *ood *ood +e,ecti!e *ood
28 *ood *ood +e,ecti!e *ood *ood *ood *ood
2 *ood *ood *ood *ood *ood *ood *ood
0 *ood *ood *ood *ood *ood *ood *ood
1 *ood *ood *ood *ood *ood *ood *ood
2 +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e
*ood *ood *ood *ood +e,ecti!e +e,ecti!e *ood
4 +e,ecti!e *ood *ood *ood *ood *ood *ood
5 +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e +e,ecti!e
6 *ood *ood *ood *ood *ood *ood *ood
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AF No efect Operator pe of !ploye ainin" Duratiorocessin" Ti!e
1620 0 /intae ull 'ime 16 4.2
25021 5 e& 3ecruit" Part 'ime 4 5.40
1548 0 /intae Part 'ime 16 6.8
2055 0 /intae ull 'ime 16 44.50
1416 0 e& 3ecruit" Part 'ime 16 1.58141 4 e& 3ecruit" Part 'ime 4 46.
262 0 e& 3ecruit" ull 'ime 16 18.12
146 1 e& 3ecruit" ull 'ime 16 8.
1114 1 /intae ull 'ime 16 1.81
1 0 /intae Part 'ime 16 44.28
25682 1 e& 3ecruit" ull 'ime 16 51.84
26586 0 e& 3ecruit" ull 'ime 16 26.55
161 0 /intae ull 'ime 16 .1
20056 0 /intae ull 'ime 16 6.06
2108 2 e& 3ecruit" Part 'ime 16 .4248 1 e& 3ecruit" ull 'ime 16 4.5
16886 6 e& 3ecruit" Part 'ime 4 4.80
288 0 /intae Part 'ime 16 2.84
182 4 e& 3ecruit" Part 'ime 4 4.16
122 0 e& 3ecruit" ull 'ime 16 8.22
228 4 e& 3ecruit" Part 'ime 4 5.5
18828 1 /intae ull 'ime 16 46.66
124 2 e& 3ecruit" Part 'ime 16 .62
2024 0 /intae ull 'ime 16 24.21
25 6 e& 3ecruit" Part 'ime 4 54.020 0 /intae ull 'ime 16 2.1
21116 0 /intae Part 'ime 16 48.84
115 0 /intae ull 'ime 16 25.56
28064 2 e& 3ecruit" Part 'ime 16 45.
14502 0 /intae ull 'ime 16 8.1
2125 1 e& 3ecruit" ull 'ime 16 4.06
28225 2 /intae ull 'ime 16 4.2
160 0 e& 3ecruit" Part 'ime 16 2.
21 e& 3ecruit" Part 'ime 4 1.6
2848 5 e& 3ecruit" Part 'ime 4 45.
11625 1 e& 3ecruit" ull 'ime 16 .4
1108 0 /intae Part 'ime 16 .8
224 0 /intae ull 'ime 16 .4
24 5 e& 3ecruit" Part 'ime 4 52.
25622 0 /intae ull 'ime 16 2.51
25 4 e& 3ecruit" Part 'ime 4 2.
20 0 /intae ull 'ime 16 0.8
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28242 e& 3ecruit" Part 'ime 4 5.
111 2 /intae ull 'ime 16 5.41
256 1 /intae Part 'ime 16 4.05
14152 1 e& 3ecruit" ull 'ime 16 .4
100 e& 3ecruit" Part 'ime 4 0.50
1220 0 e& 3ecruit" ull 'ime 16 2.41166 0 /intae ull 'ime 16 42.
10600 4 /intae Part 'ime 16 8.84
1526 0 e& 3ecruit" ull 'ime 16 26.4
16622 2 e& 3ecruit" Part 'ime 16 6.
14266 0 /intae Part 'ime 16 .54
121 1 /intae ull 'ime 16 50.61
114 4 e& 3ecruit" Part 'ime 4 4.86
15511 2 e& 3ecruit" Part 'ime 16 .61
124 5 e& 3ecruit" Part 'ime 4 6.0
2664 0 /intae ull 'ime 16 .612254 0 /intae ull 'ime 16 8.5
11152 0 /intae Part 'ime 16 1.85
1045 0 e& 3ecruit" ull 'ime 16 .2
1418 4 e& 3ecruit" Part 'ime 4 8.8
18856 0 /intae ull 'ime 16 6.52
2180 0 /intae Part 'ime 16 .85
1258 0 /intae ull 'ime 16 6.56
2802 6 e& 3ecruit" Part 'ime 4 4.2
0156 0 /intae ull 'ime 16 40.45
2282 0 e& 3ecruit" ull 'ime 16 40.2414 0 /intae ull 'ime 16 4.
25 4 e& 3ecruit" Part 'ime 4 .66
1815 5 e& 3ecruit" Part 'ime 4 51.22
258 1 e& 3ecruit" ull 'ime 16 .6
12 2 e& 3ecruit" Part 'ime 16 5.0
25014 1 /intae ull 'ime 16 45.6
21206 1 e& 3ecruit" ull 'ime 16 45.26
1406 0 /intae ull 'ime 16 .4
125 4 /intae ull 'ime 16 42.5
184 0 /intae ull 'ime 16 .84
2241 5 e& 3ecruit" Part 'ime 4 58.2
1644 /intae ull 'ime 16 22.66
16488 6 e& 3ecruit" Part 'ime 4 5.
2122 0 /intae ull 'ime 16 4.02
151 0 /intae ull 'ime 16 41.6
1252 0 /intae ull 'ime 16 2.8
11256 0 /intae ull 'ime 16 8.51
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12 0 e& 3ecruit" Part 'ime 16 2.52
14 1 e& 3ecruit" ull 'ime 16 4.4
24218 0 /intae ull 'ime 16 .80
2201 /intae ull 'ime 16 8.
26148 2 e& 3ecruit" Part 'ime 16 42.0
24101 0 /intae ull 'ime 16 5.8011512 e& 3ecruit" Part 'ime 4 48.0
22510 0 e& 3ecruit" ull 'ime 16 6.
22821 1 e& 3ecruit" ull 'ime 16 6.8
14284 0 /intae ull 'ime 16 .58
2666 4 e& 3ecruit" Part 'ime 4 51.44
14161 0 /intae ull 'ime 16 40.05
26845 1 /intae ull 'ime 16 .5
18542 1 /intae ull 'ime 16 .14
2162 e& 3ecruit" Part 'ime 16 4.
152 1 /intae ull 'ime 16 48.61668 /intae ull 'ime 16 45.0
1402 e& 3ecruit" Part 'ime 4 2.8
212 5 e& 3ecruit" Part 'ime 4 1.
14 0 /intae ull 'ime 16 40.2
20112 0 e& 3ecruit" ull 'ime 16 2.80
2415 4 e& 3ecruit" Part 'ime 4 8.06
1580 0 /intae ull 'ime 16 4.15
1840 5 e& 3ecruit" Part 'ime 4 51.21
242 0 /intae ull 'ime 16 0.2
24811 0 /intae ull 'ime 16 .501456 0 e& 3ecruit" ull 'ime 16 2.85
250 1 e& 3ecruit" ull 'ime 16 4.62
2886 5 /intae ull 'ime 16 54.6
164 4 e& 3ecruit" Part 'ime 4 4.2
1452 5 e& 3ecruit" Part 'ime 4 50.52
22 0 /intae ull 'ime 16 1.2
22801 5 /intae ull 'ime 16 4.88
112 4 e& 3ecruit" Part 'ime 4 4.8
2664 0 /intae ull 'ime 16 45.8
24580 e& 3ecruit" Part 'ime 4 2.56
215 /intae ull 'ime 16 44.50
2500 2 e& 3ecruit" Part 'ime 16 8.0
156 5 e& 3ecruit" Part 'ime 4 4.6
242 5 e& 3ecruit" Part 'ime 4 58.00
1410 4 e& 3ecruit" Part 'ime 4 4.8
2026 0 /intae ull 'ime 16 46.2
22118 0 /intae ull 'ime 16 0.2
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1404 5 e& 3ecruit" Part 'ime 4 5.24
146 1 e& 3ecruit" ull 'ime 16 2.24
212 0 /intae ull 'ime 16 .50
2100 6 e& 3ecruit" Part 'ime 4 5.2
1561 0 /intae ull 'ime 16 0.45
188 0 /intae ull 'ime 16 .6228 0 e& 3ecruit" ull 'ime 16 4.82
25100 1 e& 3ecruit" ull 'ime 16 0.5
2684 0 /intae ull 'ime 16 8.88
1646 0 e& 3ecruit" ull 'ime 16 0.01
2160 e& 3ecruit" Part 'ime 4 4.6
156 0 e& 3ecruit" ull 'ime 16 6.5
121 4 e& 3ecruit" Part 'ime 4 4.
15585 5 e& 3ecruit" Part 'ime 4 4.8
284 6 /intae ull 'ime 16 44.68
22048 0 /intae ull 'ime 16 28.8620854 0 /intae ull 'ime 16 25.8
28518 0 e& 3ecruit" Part 'ime 16 2.8
1261 5 /intae ull 'ime 16 50.4
20008 5 /intae ull 'ime 16 .2
11680 0 /intae ull 'ime 16 28.4
12654 0 /intae ull 'ime 16 4.20
162 0 /intae ull 'ime 16 40.0
212 0 /intae ull 'ime 16 1.11
26 1 e& 3ecruit" ull 'ime 16 0.2
1681 0 /intae ull 'ime 16 18.48128 0 e& 3ecruit" Part 'ime 16 2.
25081 2 e& 3ecruit" ull 'ime 16 0.15
1445 6 e& 3ecruit" Part 'ime 4 41.
1406 0 /intae ull 'ime 16 24.2
1280 e& 3ecruit" Part 'ime 16 5.15
260 0 /intae ull 'ime 16 4.1
186 5 e& 3ecruit" Part 'ime 4 8.40
21221 e& 3ecruit" Part 'ime 4 .8
2020 0 /intae ull 'ime 16 1.2
1656 6 e& 3ecruit" Part 'ime 4 42.5
1426 0 /intae ull 'ime 16 .62
24051 0 /intae ull 'ime 16 21.04
2628 0 /intae ull 'ime 16 8.58
2820 4 e& 3ecruit" Part 'ime 4 .48
126 e& 3ecruit" Part 'ime 4 5.68
102 0 /intae ull 'ime 16 2.2
1100 4 e& 3ecruit" Part 'ime 4 .45
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181 e& 3ecruit" ull 'ime 16 52.1
164 1 e& 3ecruit" Part 'ime 16 4.66
2501 5 e& 3ecruit" Part 'ime 4 44.4
24 0 /intae ull 'ime 16 42.8
28 e& 3ecruit" ull 'ime 16 .2
2845 0 /intae ull 'ime 16 1.124 0 /intae ull 'ime 16 26.11
1255 0 /intae ull 'ime 16 2.04
1614 0 /intae ull 'ime 16 1.48
1200 0 /intae ull 'ime 16 28.1
20528 4 e& 3ecruit" Part 'ime 4 46.1
1028 0 /intae ull 'ime 16 0.15
22 0 /intae ull 'ime 16 0.4
245 0 /intae ull 'ime 16 1.0
220 e& 3ecruit" ull 'ime 16 4.02
156 0 /intae ull 'ime 16 .621451 0 e& 3ecruit" Part 'ime 16 28.2
1681 0 /intae ull 'ime 16 4.1
2626 5 e& 3ecruit" Part 'ime 4 52.62
2805 2 e& 3ecruit" ull 'ime 16 6.01
161 0 /intae ull 'ime 16 40.54
21824 0 /intae ull 'ime 16 40.52
16152 4 e& 3ecruit" ull 'ime 16 5.68
2214 0 /intae ull 'ime 16 2.55
281 2 e& 3ecruit" ull 'ime 16 26.40
162 4 e& 3ecruit" ull 'ime 16 52.1250 5 e& 3ecruit" Part 'ime 4 54.1
26056 0 /intae ull 'ime 16 0.6
1644 0 /intae ull 'ime 16 0.10
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Defects in CAF
'itle Types of Defect Fre$uency ost/Occurrence
+ate 'itle $0.1
+ate ame $0.1
+ate 3e"idence #ddre"" $1.25
mail addre"" )dentity Proo, o $1.25
mail addre"" +ate $0.1
+ate 3e"eller Code $1.25
3e"eller Code mail addre"" $0.1
3e"eller Code
+ate
3e"idence #ddre""
'itle
3e"eller Code
3e"idence #ddre""
'itle
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'itle+ate
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+ate
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3e"eller Code
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3e"idence #ddre""
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3e"idence #ddre""
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ame
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'itle
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orrect Titl correct Title Correct Na! correct Na!e C
8.80 4.8 46.01 48.68
40.8 45.11 6.45 50.6
44. 46. 40.18 6.05
1.2 .06 48.60 5.2
44.8 5.65 26.2 48.60.24 .24 .82 42.2
2.61 6.0 40.25 4.55
6.1 1.5 40.6 .1
. 8.8 44.66 4.50
40.54 8.54 5.10 48.14
8.6 8.52 5.84 46.1
45. .66 48.5 42.5
.26 .5 4.81 4.55
4.8 4.46 4.65 4.
4.50 .8 41.66 .5246.65 .55 41. 40.11
42.16 4.61 40.6 8.24
4.68 .66 42.21 51.0
.1 42.0 8.12 40.4
8.48 4.0 45.8 44.25
4.22 6.61 5.02 56.0
.1 8.55 52.64 46.85
.8 40.11 42.5 41.8
8.1 48.8 41.6 44.1
.0 .05 . 40.02.6 45. 0.56 41.0
4.88 . 44.21 44.4
4.0 41.8 5. 4.15
4.50 42.8 22.86 8.4
4.51 5.54 8.8 .6
42.8 41.2 44.1 40.
6.24 .04 41.50 .06
40.5 42.2 1.4 44.80
40.56 6.6 46.56 44.55
4.54 41.5 4.6 1.86
40.2 4.2 42.62 5.11
4.45 .45 40.2 50.68
6.1 44.45 4.61 44.40
5.20 .6 40.0 4.
42.85 42.55 51.40 44.26
48.82 45.8 40.00 50.8
45.22 40.45 0.66 .
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40.01 41.82 2.4 50.
.0 5.8 4.42 5.54
2.0 4.1 8.4 4.5
41.8 42.4 28.5 4.8
40.85 5.8 51.4 48.48
44.5 8.6 4.6 4.506.64 6.2 4.84 .58
8.28 8.1 45.5 28.0
.1 4.40 40.0 8.00
42.05 .5 4.24 40.22
45.22 2.6 .81 .4
42.20 .54 6.60 42.01
40.1 .8 5.5 44.00
.80 4.40 .44 41.41
4.21 41.8 .0 4.8
42. 46.52 5.85 .8841.22 42.6 1. .
4.41 8.66 4.54 4.8
44.15 40.5 41.1 52.6
44.56 .41 4. 46.86
6.88 44.0 46. .40
.6 42.14 8.42 41.2
42.18 8. 42.45 4.1
8.24 4.54 4.2 .58
4. . 5.0 48.
40.5 .06 0. 45.0151.4 45.01 45.12 41.52
4.52 45. 50.6 41.2
40.5 42.1 4.64 6.21
.00 5.12 .1 41.2
45.0 8.84 .0 .2
4.8 4.06 4. 4.01
4.14 41.1 2.0 6.4
41.62 .41 42.18 42.0
42.8 42.10 .4 45.60
44.0 28.2 4.58 52.
41.86 45.8 41. 45.4
.11 40.18 44.4 41.8
45.42 46.5 44. 24.5
40.6 40.58 4.80 6.40
4.42 .8 4. 8.1
. 4.6 51.0 41.46
.6 44.16 . 1.8
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41.4 45.81 .4 40.
.52 6.15 40.2 50.24
.85 2.4 4.2 .4
40.41 41.20 41.60 45.66
. 40.80 .16 .8
41.0 45.1 5.04 .4540.4 5.5 2.8 42.
4.44 40. 46.50 2.1
4.80 . 4. 4.81
.56 42.0 4.5 4.66
.1 8.6 1.62 40.80
.5 8.24 6. .
6. 42.58 6.4 42.2
40.24 45.05 6.54 6.8
41.05 40.2 8.65 41.68
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rrect !ail A%%recorrect !ail A%%ress I%entify #roof &atc
28.518 4.68 8.51
25.444 4.616 5.06
6.800 4.685 41.28
0.140 .84 .12
2.86 6.450 41.26.8 .204 8.215
8.088 42.4 4.40
8. 42.440 .54
4.48 42.55 6.861
.226 40.856 8.661
25.044 2.15 .0
.85 5.222 4.685
1. 6.26 6.201
2.2 2.22 40.2
41.282 6.40 4.10.4 1.484 6.045
41.26 4.21 4.50
1.0 41.054 6.542
41.161 2.4 40.4
5.06 1.251 .101
41. 40.004 4.581
8.165 .1 40.054
42.484 4.8 50.165
42.565 42.100 8.211
5.801 42.0 41.441.04 50.1 2.
42. 24.40 .46
26.151 8.206 4.01
.12 45.814 .82
2.4 41.50 4.06
.86 48.45 46.454
2.252 0.44 44.1
25.615 .12 .046
.012 41.21 40.
48.616 8.4 6.106
20.501 1.44 .402
5.42 8.18 .0
1.86 0.10 5.0
44.5 6.014 2.84
2.11 8.856 4.24
6.11 6.88 5.888
.6 4.505 4.6
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46.165 4.46 8.06
8.15 .18 .605
28.1 6.0 .801
2.006 54.05 46.10
2.04 40.5 .565
28.51 8.045 .22.61 8.104 .18
40.02 45.620 .181
48.6 5.80 .12
.60 .24 6.02
1.12 45.86 6.225
5.44 .55 44.505
2.088 0.66 4.60
41.42 .6 4.1
5.20 40.415 8.12
40.52 8.5 4.1040.546 4.226 44.08
25.40 28.586 .45
40.425 5.54 40.6
6.0 .680 .6
45.0 .6 40.68
40.81 2.1 46.5
.1 2.642 8.412
45.55 5.61 0.5
.652 .16 .45
4.06 0.8 .2244.51 44.2 2.40
4.55 .452 5.51
0.04 2.26 41.8
41.284 45.28 4.88
1.2 44.4 42.80
48.1 0.525 4.20
5.568 5.25 8.0
42.24 .15 41.100
.12 .20 8.210
28.55 4.80 42.22
4.65 41.4 8.002
5.5 2.88 46.10
42.52 2.114 4.16
4.05 45.256 8.615
5.451 41.615 .552
4.15 4.465 40.
40.10 4.84 .24
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2.246 2.88 4.081
0.40 .0 40.688
41.01 .016 8.056
5.41 44.44 6.556
5.26 2.18 46.401
4.526 5.2 42.1.8 8.448 40.640
6.84 8.160 4.48
6.118 .468 41.515
.508 4.228 44.148
4.08 40.580 4.206
6.42 1.868 45.268
41.461 51.515 8.55
6.211 4.01 5.81
.624 4.621 .581
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46.21 4.52 54.54
48.804 .60 46.050
42.41 40.556 45.15
44.562 46.85 58.6
50.24 .8 41.02
48.2 1.2 55.4150.68 4.248 48.54
5.1 6.558 40.15
42.001 41.81 56.686
41.600 8.46 4.01
48.226 5.8 4.8
41.852 42.2 42.485
54.15 .60 42.68
4.8 .56 44.4
5.646 .48 51.82
51.188 .10 .22255.580 44.624 54.5
4.4 4. 46.840
4.001 8.20 50.21
48.015 6.0 5.042
5.00 .468 41.6
52.85 4.816 .15
52.81 .822 4.82
5. 4.645 41.6
56.18 2.02 42.22
50.18 .20 48.1045.41 4.8 52.865
41.521 6.625 44.688
55.182 41.845 51.184
52.4 .455 48.6
48.2 .681 44.4
44.1 5.62 45.48
4.468 45.008 4.60
50.641 8.85 51.146
54.105 42.68 48.54
.54 .4 4.6
54.148 6.62 46.611
55.800 .26 50.420
54.84 6.66 48.124
4.054 40.416 5.0
46.85 6.05 4.166
45.48 44.452 42.45
4.65 .01 4.611
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4.165 41.510 .88
6.011 40.41 48.155
44.612 42.244 .42
40.64 46.218 4.525
52.12 .5 46.26
48.06 8.60 54.8451.8 .016 4.41
5.51 41.8 44.5
4.80 4.20 41.5
5.54 6.52 46.561
58.4 40.160 46.662
44.00 .051 60.600
46.561 2.4 52.26
40.40 41.66 42.584
55.10 5.8 8.41
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Correct Resi%ence A%Incorrect Resi%ence A%%ress Correct Dat correct Dat
4.52 48.80 5.28 48.42
8.15 46.44 8.42 50.846
8.80 52.2 2.66 50.885
4.66 4.04 2.42 55.218
6.8 5.08 .20 52.2.58 51.112 42.460 48.41
40.681 4.51 8.25 51.61
8.4 48.55 8.8 50.4
44.40 5.16 .08 48.68
.65 51.501 4.141 45.401
0.46 45.051 42.05 4.10
1.55 52.84 42.854 50.85
.66 5.40 .5 52.24
.884 4.42 8.66 4.216
40.8 50. 5.46 48.8808.04 54.214 .80 52.55
40.420 46.16 .8 42.24
45.26 52.54 6.61 51.0
40.05 48.82 4.442 46.240
40.580 48.12 .10 46.885
40.44 50.148 40.4 52.10
.054 56.80 5.81 51.85
41.28 4.85 42.60 48.084
4.12 56.40 8.640 56.21
40. 51.50 5.81 50.1.020 51.205 4.865 50.664
8.652 55.4 2.86 56.58
4.41 51.10 5.5 4.24
6.210 52. .55 48.1
6.121 48.44 .40 51.64
42.48 4.851 40.6 52.62
40.100 5.248 . 48.1
40.5 51.555 .604 4.405
41.4 4.64 .40 50.6
4.054 4.4 .660 48.042
5.8 52.04 8.01 45.548
.64 4.62 1.820 51.400
41.506 48.8 4.820 46.665
42.85 54.26 40.211 50.4
.80 51.48 41.1 48.1
41.48 4.6 .116 50.451
2.616 50.61 .6 48.21
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44.8 4.0 6. 48.28
4.481 4.54 .4 51.8
40. 50.625 4.82 4.456
2.256 54.648 42.286 52.056
6.6 5.580 4.01 48.550
40.85 50.415 40.425 52.541.041 5.50 41.8 51.0
4.58 51.4 40.466 50.114
6.850 4.626 5.416 4.64
8.8 50.8 41.1 4.81
.416 54.18 4.01 48.542
1.1 5.086 .11 48.466
41.18 4.44 46.565 45.561
5.65 48.628 4.82 46.584
.400 5.001 .8 48.5
4.51 46.844 .485 55.406.8 51.561 .18 4.20
.262 48.555 4.10 45.6
.8 52.482 44.88 44.02
40.45 50.26 42.06 50.26
8.50 52.4 .1 54.1
6.85 54.51 8.0 5.01
4.455 5.88 40. 42.51
8.8 5.14 40.5 46.82
8.445 54.500 44.52 46.142
4.25 5.8 4.142 48.6148.206 48.85 . 46.2
40.56 48.8 5.4 4.85
8.845 5.844 40.858 54.210
4.206 45.650 46.428 50.805
.66 55.281 40.65 48.62
.045 5.41 40.26 46.441
.44 4.0 .8 4.2
41.1 48.40 . 51.466
40.88 4.801 2.184 50.856
40.55 48.26 6.551 50.224
.165 51.586 .464 46.044
5.15 54.11 40.6 51.550
6.280 4.4 4.15 5.21
.4 62.525 0.511 48.644
6.6 55.005 41.81 50.15
.502 4.80 44.26 51.0
0.1 51.50 40.11 46.21
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2.02 48.841 6.61 4.262
4.20 55.248 42.0 48.5
41.84 4.28 41.615 4.
8.54 50.2 8.68 46.51
40.652 5.8 4.482 4.5
4.28 55.5 1.08 56.8466.054 5.4 40.64 4.481
6.050 51.88 8.8 51.826
.21 5.8 5.4 46.56
44.118 46.55 4.652 51.81
40.40 48.26 42.284 48.280
8.28 50.541 42.540 50.60
8.41 46.816 42.5 45.6
.422 5.685 4.506 52.680
8.16 50.22 6.20 52.4
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42.028 40.168 8.12
.005 41.005 48.665
4.001 48.660 .6
41.12 45.8 44.80
40.105 46.005 44.8
.65 6. 44.1545.18 44.08 .112
40.15 41.500 4.182
50.468 4.14 41.82
44.0 41.0 46.100
46.51 44.01 6.14
40.60 4.442 4.42
41.86 45.68 45.18
4.4 4.10 .20
44.80 46.5 .56
.28 45.40 41.22641.51 46.421 46.014
.84 48.665 41.244
.85 6.282 40.46
41.84 45.60 42.602
44.28 44.11 40.800
4.655 42.04 42.062
.4 4.1 42.20
42.061 4.58 4.1
8.15 40.18 4.455
44.540 44.2 42.6540.015 42.2 44.01
5.285 42.52 44.481
45.51 40.12 41.622
42.1 8.411 .
46.64 42.5 4.
42.41 40. 41.40
6.525 42.48 40.22
8.480 41.442 .148
42.045 42.56 45.85
4.240 4.21 8.582
4.84 .54 46.2
8.14 41.26 42.585
41.2 4.811 42.25
40.1 41.2 4.22
44.246 8.485 45.04
42.52 42.84 4.04
.2 41.52 4.0
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45.516 42.54 8.56
41.55 41.10 45.642
46.11 .185 6.82
4.64 42.12 .8
44.618 41.10 44.66
.806 44. 5.15.42 44.128 .022
4.42 4.620 40.1
42.862 44.10 4.56
5.524 41. 4.2
4.1 44.654 41.81
45.44 45.882 8.2
44.651 .04 46.46
46.85 44.006 45.86
41.86 46.854 42.11