Dataset: Young Adult Longitudinal 1991-1995/96

Variable fr77a1: fr77: If training completed: Profession

Literal Question

F. 77 A
What profession did you learn?

< In the case of training already completed.>


German Question Text

Values Categories N
0 No job given 0
 0.0%
1 Farmer 16
 0.9%
2 Animal breeding/Fishery 17
 0.9%
3 Advisor for agricult. and breeding 1
 0.1%
4 Agricultural worker, zoo-keeper 11
 0.6%
5 Landscape gardener 27
 1.5%
6 Forestry/gamekeeper 3
 0.2%
7 Miner 1
 0.1%
8 Producer of minerals, oil, gas 0
 0.0%
9 Mineral processor 0
 0.0%
10 Stone mason 1
 0.1%
11 Producer of building materials 2
 0.1%
12 Ceramic producer 7
 0.4%
13 Glass-maker 1
 0.1%
14 Chemical worker 15
 0.8%
15 Synthetic material processor 0
 0.0%
16 Paper producer/processor 3
 0.2%
17 Printer 13
 0.7%
18 Producer of wood, similar jobs 6
 0.3%
19 Manufacturer of metal, rolling miller 2
 0.1%
20 Moulder/Caster 0
 0.0%
21 Metal shaper (without files) 1
 0.1%
22 Metal shaper (with files) 24
 1.3%
23 Surface metal worker, tempering, coating 1
 0.1%
24 Welder 3
 0.2%
25 Smithy 0
 0.0%
26 Thin sheet metal processor, installator 29
 1.6%
27 Locksmith 101
 5.6%
28 Mechanic 95
 5.3%
29 Toolmaker 20
 1.1%
30 Craft smithy 7
 0.4%
31 Electrician 93
 5.1%
32 Fitter and metal occupations 14
 0.8%
33 Spinning occupations 1
 0.1%
34 Textile producer 4
 0.2%
35 Textile processor 25
 1.4%
36 Textile refiner/finisher 0
 0.0%
37 Producer/processor of leather 3
 0.2%
39 Producer of baked/pastry goods 17
 0.9%
40 Meat/fish processor 11
 0.6%
41 Food preparer 20
 1.1%
42 Manufacturer of beverages/semi-luxury foods 1
 0.1%
43 Other nutrition-based occupations 2
 0.1%
44 Bricklayer, builder 33
 1.8%
45 Carpenter, roofer, scaffolder 17
 0.9%
46 Road construction, civil engineering 6
 0.3%
47 Labourer 0
 0.0%
48 Construction craftsman (interior/facilities) 17
 0.9%
49 Interior decorator, upholsterer 7
 0.4%
50 Joiner, model builder 36
 2.0%
51 Painter, varnisher/related jobs 16
 0.9%
52 Goods inspector, dispatcher 1
 0.1%
53 Unskilled worker, further undefined 1
 0.1%
54 Machinist and related jobs 15
 0.8%
60 Engineer 32
 1.8%
61 Chemist, physicist, mathematician 1
 0.1%
62 Technician 18
 1.0%
63 Technical specialist 34
 1.9%
68 Goods trader 191
 10.6%
69 Bank/insurance salesman 71
 3.9%
70 Other commercial services/related jobs 21
 1.2%
71 Road transport occupations 12
 0.7%
72 Water/air transport occupations 4
 0.2%
73 Media and communication professions 27
 1.5%
74 Stores supervisor/transport worker 6
 0.3%
75 Entrepreneur, organiser, auditor 0
 0.0%
76 Elected representative, professional/decision-making 3
 0.2%
77 Cashier, book-keeper, data-processor 24
 1.3%
78 Office worker/administrator 263
 14.5%
79 Service/Duty-officer 1
 0.1%
80 Safety-officer 6
 0.3%
81 Law protection 8
 0.4%
82 Journalist, translator, librarian 18
 1.0%
83 Artist and related jobs 15
 0.8%
84 Doctor, pharmacist 5
 0.3%
85 Other health related jobs 124
 6.9%
86 Social and nursing work 61
 3.4%
87 Teacher 22
 1.2%
88 Jobs within the arts and natural sciences 19
 1.1%
89 Pastor 0
 0.0%
90 Personal hygienist 39
 2.2%
91 Gastronomy 15
 0.8%
92 Home economic related jobs 9
 0.5%
93 Cleaning jobs 3
 0.2%
97 Helping family members outside of agriculture 0
 0.0%
98 Worker with title as of yet unspecified 0
 0.0%
99 Workers without further specification 10
 0.6%
Sysmiss 1996

Summary Statistics

Valid cases 1809
Missing cases 1996
Minimum 1.0
Maximum 99.0
This variable is numeric

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