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FRED Graph


NOTES

Source: U.S. Bureau of Labor Statistics  

Release: State Employment and Unemployment  

Units:  Thousands of Persons, Seasonally Adjusted

Frequency:  Monthly

Notes:

The Federal Reserve Bank of St. Louis seasonally adjusts this series by using the 'statsmodels' library from Python with default parameter settings. The package uses the U.S. Bureau of the Census X-13ARIMA-SEATS Seasonal Adjustment Program. More information on the 'statsmodels' X-13ARIMA-SEATS package can be found here. More information on X-13ARIMA-SEATS can be found here.

Many series include both seasonally adjusted (SA) and not seasonally adjusted (NSA) data. Occasionally, updates to the data will not include sufficient seasonal factors to trigger a seasonal adjustment. In these cases, the NSA series will be updated normally; but the SA series will also be updated with the NSA data. The NSA series can be located here here.

Some seasonally adjusted series may exhibit negative values because they are created from a seasonal adjustment process regardless of the actual meaning or interpretation of the given indicator.

Suggested Citation:

U.S. Bureau of Labor Statistics, All Employees: Manufacturing in Houston-The Woodlands-Sugar Land, TX (MSA) [HOUS448MFG], retrieved from FRED, Federal Reserve Bank of St. Louis; https://fred.stlouisfed.org/series/HOUS448MFG, May 16, 2024.

Source: U.S. Bureau of Labor Statistics  

Release: State Employment and Unemployment  

Units:  Thousands of Persons, Seasonally Adjusted

Frequency:  Monthly

Notes:

The Federal Reserve Bank of St. Louis seasonally adjusts this series by using the 'statsmodels' library from Python with default parameter settings. The package uses the U.S. Bureau of the Census X-13ARIMA-SEATS Seasonal Adjustment Program. More information on the 'statsmodels' X-13ARIMA-SEATS package can be found here. More information on X-13ARIMA-SEATS can be found here.

Many series include both seasonally adjusted (SA) and not seasonally adjusted (NSA) data. Occasionally, updates to the data will not include sufficient seasonal factors to trigger a seasonal adjustment. In these cases, the NSA series will be updated normally; but the SA series will also be updated with the NSA data. The NSA series can be located here here.

Some seasonally adjusted series may exhibit negative values because they are created from a seasonal adjustment process regardless of the actual meaning or interpretation of the given indicator.

Suggested Citation:

U.S. Bureau of Labor Statistics, All Employees: Education and Health Services: Private Education and Health Services in Houston-The Woodlands-Sugar Land, TX (MSA) [HOUS448EDUH], retrieved from FRED, Federal Reserve Bank of St. Louis; https://fred.stlouisfed.org/series/HOUS448EDUH, May 16, 2024.

Source: Federal Reserve Bank of Dallas  

Release: Texas Employment Data  

Units:  Thousands of Persons, Seasonally Adjusted

Frequency:  Monthly

Notes:

The Dallas Fed has improved the quality of the payroll employment estimates for Metropolitan Areas of Texas using early benchmarking and two-step seasonal adjustment. More information regarding the early benchmarking technique can be found at http://www.dallasfed.org/research/basics/benchmark.cfm. More information pertaining to two-step seasonal adjustment can be found at http://www.dallasfed.org/research/basics/twostep.cfm.

Suggested Citation:

Federal Reserve Bank of Dallas, Construction, Mining and Natural Resources Payroll Employment for Houston-The Woodlands-Sugar Land, TX (MSA) [HOUNRMCA175MFRBDAL], retrieved from FRED, Federal Reserve Bank of St. Louis; https://fred.stlouisfed.org/series/HOUNRMCA175MFRBDAL, May 16, 2024.

Source: U.S. Bureau of Labor Statistics  

Source: Federal Reserve Bank of St. Louis  

Release: State and Metro Area Employment, Hours, and Earnings  

Units:  Thousands of Persons, Seasonally Adjusted

Frequency:  Monthly

Notes:

The Federal Reserve Bank of St. Louis seasonally adjusts this series by using the 'statsmodels' library from Python with default parameter settings. The package uses the U.S. Bureau of the Census X-13ARIMA-SEATS Seasonal Adjustment Program. More information on the 'statsmodels' X-13ARIMA-SEATS package can be found here. More information on X-13ARIMA-SEATS can be found here.

Many series include both seasonally adjusted (SA) and not seasonally adjusted (NSA) data. Occasionally, updates to the data will not include sufficient seasonal factors to trigger a seasonal adjustment. In these cases, the NSA series will be updated normally; but the SA series will also be updated with the NSA data. The NSA series can be located here here.

Some seasonally adjusted series may exhibit negative values because they are created from a seasonal adjustment process regardless of the actual meaning or interpretation of the given indicator.

Suggested Citation:

U.S. Bureau of Labor Statistics and Federal Reserve Bank of St. Louis, All Employees: Retail Trade in Houston-The Woodlands-Sugar Land, TX (MSA) [SMU48264204200000001SA], retrieved from FRED, Federal Reserve Bank of St. Louis; https://fred.stlouisfed.org/series/SMU48264204200000001SA, May 16, 2024.

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All Employees: Manufacturing in Houston-The Woodlands-Sugar Land, TX (MSA)

Annual, Not Seasonally Adjusted Monthly, Not Seasonally Adjusted

All Employees: Education and Health Services: Private Education and Health Services in Houston-The Woodlands-Sugar Land, TX (MSA)

Monthly, Not Seasonally Adjusted

Construction, Mining and Natural Resources Payroll Employment for Houston-The Woodlands-Sugar Land, TX (MSA)

December to December Percent Change, Annual, Not Seasonally Adjusted Percent Change at Annual Rate, Monthly, Seasonally Adjusted

All Employees: Retail Trade in Houston-The Woodlands-Sugar Land, TX (MSA)

Annual, Not Seasonally Adjusted Monthly, Not Seasonally Adjusted

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