US National Employment Hours and Earnings
The Current Employment Statistics (CES) program produces detailed industry estimates of nonfarm employment, hours, and earnings of workers on payrolls in the United States.
Note
Microsoft provides Azure Open Datasets on an “as is” basis. Microsoft makes no warranties, express or implied, guarantees or conditions with respect to your use of the datasets. To the extent permitted under your local law, Microsoft disclaims all liability for any damages or losses, including direct, consequential, special, indirect, incidental or punitive, resulting from your use of the datasets.
This dataset is provided under the original terms that Microsoft received source data. The dataset may include data sourced from Microsoft.
README containing file for detailed information about this dataset is available at the original dataset location.
This dataset is sourced from Current Employment Statistics - CES (National) data published by US Bureau of Labor Statistics (BLS). Review Linking and Copyright Information and Important Web Site Notices for the terms and conditions related to the use this dataset.
Storage location
This dataset is stored in the East US Azure region. Allocating compute resources in East US is recommended for affinity.
Related datasets
- US State Employment Hours and Earnings
- US Local Area Unemployment Statistics
- US Labor Force Statistics
Columns
Name | Data type | Unique | Values (sample) | Description |
---|---|---|---|---|
data_type_code | string | 37 | 1 10 | See https://download.bls.gov/pub/time.series/ce/ce.datatype |
data_type_text | string | 37 | ALL EMPLOYEES, THOUSANDS WOMEN EMPLOYEES, THOUSANDS | See https://download.bls.gov/pub/time.series/ce/ce.datatype |
footnote_codes | string | 2 | nan P | |
industry_code | string | 902 | 30000000 32000000 | Different industries covered. See https://download.bls.gov/pub/time.series/ce/ce.industry |
industry_name | string | 895 | Nondurable goods Durable goods | Different industries covered. See https://download.bls.gov/pub/time.series/ce/ce.industry |
period | string | 13 | M03 M06 | See https://download.bls.gov/pub/time.series/ce/ce.period |
seasonal | string | 2 | U S | |
series_id | string | 26,021 | CEU3100000008 CEU9091912001 | Different types of data series available in the dataset. See https://download.bls.gov/pub/time.series/ce/ce.series |
series_title | string | 25,685 | All employees, thousands, durable goods, not seasonally adjusted All employees, thousands, nondurable goods, not seasonally adjusted | Title of the different types of data series available in the dataset. See https://download.bls.gov/pub/time.series/ce/ce.series |
supersector_code | string | 22 | 31 60 | Higher-level industry or sector classification. See https://download.bls.gov/pub/time.series/ce/ce.supersector |
supersector_name | string | 22 | Durable Goods Professional and business services | Higher-level industry or sector classification. See https://download.bls.gov/pub/time.series/ce/ce.supersector |
value | float | 572,372 | 38.5 38.400001525878906 | |
year | int | 81 | 2017 2012 |
Preview
data_type_code | industry_code | supersector_code | series_id | year | period | value | footnote_codes | seasonal | series_title | supersector_name | industry_name | data_type_text |
---|---|---|---|---|---|---|---|---|---|---|---|---|
26 | 5000000 | 5 | CES0500000026 | 1939 | M04 | 52 | nan | S | All employees, 3-month average change, seasonally adjusted, thousands, total private, seasonally adjusted | Total private | Total private | ALL EMPLOYEES, 3-MONTH AVERAGE CHANGE, SEASONALLY ADJUSTED, THOUSANDS |
26 | 5000000 | 5 | CES0500000026 | 1939 | M05 | 65 | nan | S | All employees, 3-month average change, seasonally adjusted, thousands, total private, seasonally adjusted | Total private | Total private | ALL EMPLOYEES, 3-MONTH AVERAGE CHANGE, SEASONALLY ADJUSTED, THOUSANDS |
26 | 5000000 | 5 | CES0500000026 | 1939 | M06 | 74 | nan | S | All employees, 3-month average change, seasonally adjusted, thousands, total private, seasonally adjusted | Total private | Total private | ALL EMPLOYEES, 3-MONTH AVERAGE CHANGE, SEASONALLY ADJUSTED, THOUSANDS |
26 | 5000000 | 5 | CES0500000026 | 1939 | M07 | 103 | nan | S | All employees, 3-month average change, seasonally adjusted, thousands, total private, seasonally adjusted | Total private | Total private | ALL EMPLOYEES, 3-MONTH AVERAGE CHANGE, SEASONALLY ADJUSTED, THOUSANDS |
26 | 5000000 | 5 | CES0500000026 | 1939 | M08 | 108 | nan | S | All employees, 3-month average change, seasonally adjusted, thousands, total private, seasonally adjusted | Total private | Total private | ALL EMPLOYEES, 3-MONTH AVERAGE CHANGE, SEASONALLY ADJUSTED, THOUSANDS |
26 | 5000000 | 5 | CES0500000026 | 1939 | M09 | 152 | nan | S | All employees, 3-month average change, seasonally adjusted, thousands, total private, seasonally adjusted | Total private | Total private | ALL EMPLOYEES, 3-MONTH AVERAGE CHANGE, SEASONALLY ADJUSTED, THOUSANDS |
26 | 5000000 | 5 | CES0500000026 | 1939 | M10 | 307 | nan | S | All employees, 3-month average change, seasonally adjusted, thousands, total private, seasonally adjusted | Total private | Total private | ALL EMPLOYEES, 3-MONTH AVERAGE CHANGE, SEASONALLY ADJUSTED, THOUSANDS |
26 | 5000000 | 5 | CES0500000026 | 1939 | M11 | 248 | nan | S | All employees, 3-month average change, seasonally adjusted, thousands, total private, seasonally adjusted | Total private | Total private | ALL EMPLOYEES, 3-MONTH AVERAGE CHANGE, SEASONALLY ADJUSTED, THOUSANDS |
Data access
Azure Notebooks
# This is a package in preview.
from azureml.opendatasets import UsLaborEHENational
usLaborEHENational = UsLaborEHENational()
usLaborEHENational_df = usLaborEHENational.to_pandas_dataframe()
usLaborEHENational_df.info()
Azure Databricks
# This is a package in preview.
from azureml.opendatasets import UsLaborEHENational
usLaborEHENational = UsLaborEHENational()
usLaborEHENational_df = usLaborEHENational.to_spark_dataframe()
display(usLaborEHENational_df.limit(5))
Azure Synapse
Sample not available for this platform/package combination.
Next steps
View the rest of the datasets in the Open Datasets catalog.