license: mit
pretty_name: EconomicIndex
tags:
- text
viewer: true
configs:
- config_name: default
data_files:
- split: train
path: onet_task_mappings.csv
Overview
This directory contains O*NET task mapping and automation vs. augmentation data from "Which Economic Tasks are Performed with AI? Evidence from Millions of Claude Conversations." The data and provided analysis are described below.
Please see our blog post and paper for further visualizations and complete analysis.
Data
SOC_Structure.csv
- Standard Occupational Classification (SOC) system hierarchy from the U.S. Department of Labor O*NET databaseautomation_vs_augmentation.csv
- Data on automation vs augmentation patterns, with columns:- interaction_type: Type of human-AI interaction (directive, feedback loop, task iteration, learning, validation)
- pct: Percentage of conversations showing this interaction pattern Data obtained using Clio (Tamkin et al. 2024)
bls_employment_may_2023.csv
- Employment statistics from U.S. Bureau of Labor Statistics, May 2023onet_task_mappings.csv
- Mappings between tasks and O*NET categories, with columns:- task_name: Task description
- pct: Percentage of conversations involving this task Data obtained using Clio (Tamkin et al. 2024)
onet_task_statements.csv
- Task descriptions and metadata from the U.S. Department of Labor O*NET databasewage_data.csv
- Occupational wage data scraped from O*NET website using open source tools from https://github.com/adamkq/onet-dataviz
Analysis
The plots.ipynb
notebook provides visualizations and analysis including:
Task Analysis
- Top tasks by percentage of conversations
- Task distribution across occupational categories
- Comparison with BLS employment data
Occupational Analysis
- Top occupations by conversation percentage
- Occupational category distributions
- Occupational category distributions compared to BLS employment data
Wage Analysis
- Occupational usage by wage
Automation vs Augmentation Analysis
- Distribution across interaction modes
Usage
To generate the analysis:
- Ensure all data files are present in this directory
- Open
plots.ipynb
in Jupyter - Run all cells to generate visualizations
- Plots will be saved to the notebook and can be exported
The notebook uses pandas for data manipulation and seaborn/matplotlib for visualization. Example outputs are contained in the plots\
folder.
Data released under CC-BY, code released under MIT License
Contact
You can submit inquires to kunal@anthropic.com or atamkin@anthropic.com. We invite researchers to provide input on potential future data releases using this form.