Interests
Purpose: | Provide general occupational interest (RIASEC) high-point codes and numeric profile data for each O*NET-SOC occupation. |
Structure and Description:
Column | Type | Column Content |
---|
O*NET-SOC Code | Character(10) | O*NET-SOC Code (see Occupation Data) |
Element ID | Character Varying(20) | Content Model Outline Position (see Content Model Reference) |
Element Name | Character Varying(150) | Content Model Element Name (see Content Model Reference) |
Scale ID | Character Varying(3) | Scale ID (see Scales Reference) |
Data Value | Float(5,2) | Rating associated with the O*NET-SOC occupation |
Date | Character(7) | Date when data was updated |
Domain Source | Character Varying(30) | Source of the data |
This file contains the general occupational interest (RIASEC) high-point codes and numeric profile data for each O*NET-SOC occupation.
Interest ratings are presented as two scales: OI reports the RIASEC level of each interest and IH presents “high-point codes”, the numbers of the RIASEC scales for the first, second and/or third highest ratings.
The high-point values represent the following elements:
| 0.00 = No high point available | |
| 1.00 = Realistic | |
| 2.00 = Investigative | |
| 3.00 = Artistic | |
| 4.00 = Social | |
| 5.00 = Enterprising | |
| 6.00 = Conventional | |
The file is displayed in seven tab delimited fields with the columns named O*NET-SOC Code, Element ID, Element Name, Scale ID, Data Value, Date, and Domain Source. The seven fields are represented by one row. There are a total of 8,307 rows of data in this file.
For more information, see:
File Structure Changes:
Release Number | Description of Change |
---|
5.0 | Date and Source columns added |
5.1 - 29.1 | No structure changes |
Data Example - Interests:
O*NET-SOC Code | Element ID | Element Name | Scale ID | Data Value | Date | Domain Source |
---|
43-4041.00 | 1.B.1.a | Realistic | OI | 1.00 | 11/2023 | Machine Learning |
43-4041.00 | 1.B.1.b | Investigative | OI | 1.85 | 11/2023 | Machine Learning |
43-4041.00 | 1.B.1.c | Artistic | OI | 1.00 | 11/2023 | Machine Learning |
43-4041.00 | 1.B.1.d | Social | OI | 3.39 | 11/2023 | Machine Learning |
43-4041.00 | 1.B.1.e | Enterprising | OI | 4.47 | 11/2023 | Machine Learning |
43-4041.00 | 1.B.1.f | Conventional | OI | 7.00 | 11/2023 | Machine Learning |
43-4041.00 | 1.B.1.g | First Interest High-Point | IH | 6.00 | 11/2023 | Machine Learning |
43-4041.00 | 1.B.1.h | Second Interest High-Point | IH | 5.00 | 11/2023 | Machine Learning |
43-4041.00 | 1.B.1.i | Third Interest High-Point | IH | 4.00 | 11/2023 | Machine Learning |
29-2034.00 | 1.B.1.a | Realistic | OI | 6.25 | 11/2023 | Machine Learning |
29-2034.00 | 1.B.1.b | Investigative | OI | 4.63 | 11/2023 | Machine Learning |
29-2034.00 | 1.B.1.c | Artistic | OI | 1.00 | 11/2023 | Machine Learning |
29-2034.00 | 1.B.1.d | Social | OI | 3.58 | 11/2023 | Machine Learning |
29-2034.00 | 1.B.1.e | Enterprising | OI | 1.00 | 11/2023 | Machine Learning |
29-2034.00 | 1.B.1.f | Conventional | OI | 4.87 | 11/2023 | Machine Learning |
29-2034.00 | 1.B.1.g | First Interest High-Point | IH | 1.00 | 11/2023 | Machine Learning |
29-2034.00 | 1.B.1.h | Second Interest High-Point | IH | 6.00 | 11/2023 | Machine Learning |
29-2034.00 | 1.B.1.i | Third Interest High-Point | IH | 2.00 | 11/2023 | Machine Learning |