The number of job openings in California decreased from 436,019 in December 2014 to 425,877 in January 2015. The median number of job searchers per job opening across all MSAs (metropolitan statistical areas) and occupations in California was 0.98 in December 2014 and 1.77 in January 2015.
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Texas job openings by major occupational group for January
Texas January 2015
Total number of job openings and median searcher-to-job ratio across all MSAs (metropolitan statistical areas) for each major occupational group in Texas in January 2015.
Occupation | Job Openings | Searchers-to-Job Ratio |
Management, business, and financial occupations | 56,662 | 0.58 |
Professional and related occupations | 83,549 | 0.67 |
Office and administrative support occupations | 55,482 | 0.89 |
Sales and related occupations | 30,126 | 1.18 |
Service occupations | 64,965 | 1.42 |
Installation, maintenance, and repair occupations | 18,437 | 1.48 |
Transportation and material moving occupations | 19,703 | 1.67 |
Production occupations | 21,721 | 2.09 |
Farming, fishing, and forestry occupations | 937 | 5.4 |
Construction and extraction occupations | 14,583 | 5.44 |
Source: BLS
Texas job openings by major occupational group for January
Texas January 2015
Total number of job openings and median searcher-to-job ratio across all MSAs (metropolitan statistical areas) for each major occupational group in Texas in January 2015.
Occupation | Job Openings | Searchers-to-Job Ratio |
Management, business, and financial occupations | 56,662 | 0.58 |
Professional and related occupations | 83,549 | 0.67 |
Office and administrative support occupations | 55,482 | 0.89 |
Sales and related occupations | 30,126 | 1.18 |
Service occupations | 64,965 | 1.42 |
Installation, maintenance, and repair occupations | 18,437 | 1.48 |
Transportation and material moving occupations | 19,703 | 1.67 |
Production occupations | 21,721 | 2.09 |
Farming, fishing, and forestry occupations | 937 | 5.4 |
Construction and extraction occupations | 14,583 | 5.44 |
Source: BLS
A narrative description of the Millimet et. al (2002) econometric worklife model
The following describes the approach used by Millimet et al (2002) to estimate U.S. worker worklife expectancy. The pdf version can be found here: Millimet (2002) Methodology Description
Methodology
First, transition probabilities are obtained from a two state labor market econometric model. The two labor market states are active and inactive in the workforce. The transition probabilities are the probabilities of going from one labor market state to another, such as active in one period and inactive in the next period. There are four such transition probabilities (Active-Active, Active-Inactive, Inactive-Active, Inactive-Inactive). The transition probabilities are obtained from the conditional probabilities estimated using a standard logit frame work. The logit model states:
Where y is equal to 1 if the individual is active and y equals 0 if the individual is inactive in the workforce during the period. Logit regression models are estimated separately for active and inactive individuals. For example, for a person who is initially active, the two estimated transition probabilities (Active to Active and Active to Inactive) equations are:
The estimated transition probabilities for persons who are initially inactive are estimated in a similar manner. The transition probabilities/conditional probabilities are used to construct predicted transition probabilities for each individual in the data set.
The average of the individual predicted probabilities for each age are ultimately used to calculate the transition probabilities in the Millimet et al. (2002) econometric worklife model. The average predicted transition probabilities at each age are:
In the calculation the averages are weighted by the CPS weights. Also anine year moving average is used to smooth out the transition probabilities.
The worklife expectancy at each age can be determined recursively. Specifically, if there is an assumed terminal year (T+1) in which no one is in the workforce, then the worklife expectancy for each age prior can be determined by working backwards in the probability tree. For instance at the terminal year, the individual’s worklife in the terminal year is the worklife probability in that terminal year. For example, assume that after age 80 no individuals are active in the work force. In this example, the probability that a person who is active at age 79 will be active at age 80, is the worklife expectancy for the individual at age 79. As described below this fact allows the worklife for all ages to be determined recursively using the transition probabilities obtained from the logistic regression models.
So specifically, the worklife () is the probability that the person active at time T remains active at the beginning of period T+1 (or end of T). It is assumed that no one is active after time period T+1. Similarly, the worklife () is the probability that the person inactive at time T is active at the beginning of period T+1 (or the end of T). Accordingly, there are multiples ways that a person at the end of time period T-1 can arrive at being active or inactive at the end of T, the terminal year. For instance, the person could be active in T-1 and then active in T. The transition probability for the is person is: . Alternately the person could be inactive in T-1 and active in T. The transition probability for this person is Two similar transition probabilities can be obtained for persons who are initially inactive at time T-1.
Using the worklife expectancies( and ) for the year prior to the terminal year can be calculated using the four transition probabilities described above. Specifically the worklife expectancies are as follows.
The 0.5 factor is included to account for the assumption that all transitions are assumed to occur at mid year.
Using this methodology, the worklife expectancy for each year prior to the terminal year in a recursively fashion.
Texas saw greater increase in job openings than US and Cali for Jan
Texas both experienced a greater increase in job openings than California and US for the month of January.
January 2015
State | Total Openings | Monthly Change | Yearly Change |
California | 425,877 | -2.33% | -5.15% |
Texas | 366,165 | 35.19% | 27.41% |
USA | 4,393,597 | 27.61% | 22.75% |
Source: BLS
STEM jobs decreased in CA but increased in TX for Jan
California experienced a decrease of 10,856 innovation job openings from December 2014 to January 2015, a decrease of 16.18%. Texas experienced an increase of 4,472 innovation job openings from December 2014 to January 2015, an increase of 11.30%.
Our definition of STEM jobs: http://www.employstats.com/blog/2014/09/19/growing-national-interest-in-stem-fields-has-focused-our-research/
State | Total Openings | Monthly Change | Yearly Change |
CA | 56,235 | -16.18% | -1.70% |
TX | 44,042 | 11.30% | 28.05% |
Source: BLS
Image source: http://projecttomorrowblog.blogspot.com/2013/11/i-am-scientist.html
FLSA OT report for individuals working in Derrick, rotary drill, and services unit operators, oil, gas, and mining occupations
In this post, we look at the weekly overtime (OT) hours typically worked by those who work in Derrick, rotary drill, and services unit operators, oil, gas, and mining occupations.
Many of the employees that work in these jobs are not exempt from FLSA overtime pay and earn 1.5 times pay for hours worked over 40 in a given week.
The tabulations below are based on U.S. BLS survey data. The BLS job title groups are insightful, generally containing more specific job titles with similar knowledge, skills, and abilities (KSA), but can be more broad than a particular company’s job title listing. Also, some companies may have the job title listed here as exempt from FLSA or state OT due to their specific job assignments. The BLS does not make a distinction as to if the job title is exempt or non-exempt from OT.
Occupational Group Title | Percent of OT Workers | Average Hours of OT | 1 Out of Every 4 (25%) OT Workers Works at Least |
Derrick, rotary drill, and services unit operators, oil, gas, and mining | 66.67% | 25.6 | 80 |
U.S. BLS data indicates that approximately 66.67% of Derrick, rotary drill, and services unit operators, oil, gas, and mining workers work overtime hours in a given week. On average, these workers that have FLSA overtime work approximately 25.6 hours a week in OT. The average regular or straight time pay rate of these workers in the U.S. is approximately 32.10 an hour. The average FLSA OT rate, not including supplemental pay such as non-discretionary bonus pay is 48.14 an hour.
Source: BLS (CPS March)
All 4 largest Texas MSAs see increase in job openings for Jan
All four largest MSAs (metropolitan statistical areas) in Texas experienced an increase in job openings from December 2014 January 2015.
Dallas
Dallas experienced an increase of 24,720 job openings from December 2014 to January 2015, a 37.22% increase.
Date | Total Openings | Monthly Change | Yearly Change |
Jan-15 | 91,133 | 37.22% | 28.50% |
Dec-14 | 66,413 | -4.20% | -11.31% |
Nov-14 | 69,326 | -10.74% | 11.28% |
Oct-14 | 77,670 | 8.74% | 19.49% |
Sep-14 | 71,430 | -20.43% | -6.57% |
Aug-14 | 89,770 | -0.90% | 27.29% |
Jul-14 | 90,586 | 6.86% | 28.67% |
Jun-14 | 84,771 | 0.29% | 15.23% |
May-14 | 84,526 | -5.64% | 20.19% |
Apr-14 | 89,581 | 23.25% | 26.62% |
Mar-14 | 72,682 | 2.48% | -2.52% |
Feb-14 | 70,922 | -5.29% | 1.27% |
Austin
Austin experienced an increase of 7,912 job openings from December 2014 to January 2015, a 25.56% increase.
Date | Total Openings | Monthly Change | Yearly Change |
Jan-15 | 38,869 | 25.56% | 27.67% |
Dec-14 | 30,957 | -1.84% | -2.14% |
Nov-14 | 31,539 | -9.03% | 18.96% |
Oct-14 | 34,670 | 7.17% | 24.53% |
Sep-14 | 32,352 | -15.59% | -0.45% |
Aug-14 | 38,327 | -1.57% | 28.78% |
Jul-14 | 38,938 | 5.96% | 28.50% |
Jun-14 | 36,748 | 1.44% | 15.98% |
May-14 | 36,228 | -4.59% | 19.27% |
Apr-14 | 37,971 | 22.48% | 25.01% |
Mar-14 | 31,001 | 1.83% | -3.11% |
Feb-14 | 30,443 | -3.77% | 0.38% |
Houston
Houston experienced an increase of 20,424 job openings from December 2014 to January 2015, a 34.07% increase.
Date | Total Openings | Monthly Change | Yearly Change |
Jan-15 | 80,369 | 34.07% | 26.32% |
Dec-14 | 59,945 | -3.04% | -10.92% |
Nov-14 | 61,824 | -11.15% | 10.35% |
Oct-14 | 69,582 | 8.73% | 19.68% |
Sep-14 | 63,998 | -20.30% | -5.99% |
Aug-14 | 80,299 | -1.83% | 27.86% |
Jul-14 | 81,792 | 8.29% | 29.66% |
Jun-14 | 75,527 | -0.09% | 14.68% |
May-14 | 75,596 | -5.17% | 20.16% |
Apr-14 | 79,716 | 20.94% | 26.09% |
Mar-14 | 65,912 | 3.59% | -1.16% |
Feb-14 | 63,626 | -5.45% | 2.27% |
San Antonio
San Antonio experienced an increase of 9,886 job openings from December 2014 to January 2015, a 37.06% increase.
Date | Total Openings | Monthly Change | Yearly Change |
Jan-15 | 36,562 | 37.06% | 29.10% |
Dec-14 | 26,676 | -3.61% | -10.95% |
Nov-14 | 27,676 | -11.80% | 12.69% |
Oct-14 | 31,377 | 8.93% | 21.21% |
Sep-14 | 28,805 | -20.44% | -4.98% |
Aug-14 | 36,207 | 0.12% | 27.65% |
Jul-14 | 36,164 | 6.00% | 27.85% |
Jun-14 | 34,117 | 0.26% | 15.48% |
May-14 | 34,029 | -5.52% | 20.28% |
Apr-14 | 36,017 | 23.93% | 26.62% |
Mar-14 | 29,061 | 2.62% | -2.85% |
Feb-14 | 28,320 | -5.47% | 0.33% |
Source: BLS
Younger workers today have slightly less attachment to the workforce than younger workers in the past
Big Data. Bureau of Labor Statistics. Survey data. Employment Big Data. Those are all things that calculating worklife expectancy for U.S. workers requires. Worklife expectancy is similar to life expectancy and indicates how long a person can be expected to be active in the workforce over their working life. The worklife expectancy figure takes into account the anticipated to time out of the market due to unemployment, voluntary leaves, attrition, etc.
The goal of our recent work is to update the Millimet et al (2002) worklife expectancy paper and account for more recent CPS data. Their paper uses data from the 1992 to 2000 time period. Our goal is to update that paper using data from 2000 to 2013 and see if estimating the Millimet et al (2002) econometric worklife models with more recent data changes the results in the 2002 paper in any substantive way.
Finding: Overall, the worklife expectancy estimated using more recent data from 2000-2013 is shorter then in the earlier time period (1992-2000) data set. This is true for younger worker (18-early 40’s); younger workers from the more recent cohorts have a shorter expected work life then younger workers in the earlier cohorts. Conversely, while older workers in their 40s and 50s have a slightly longer worklife expectancy in the later time period data set. We are in the process of determining the statistical significance of these differences.
Table 4. Comparsion of Worklife Expectancy for 1992-2000 and 2001-2013 Time Periods | ||||
1992-2000 | 2001-2013 | |||
Age | Less than High School | High School | Less than High School | High School |
18 | 31.469 | 38.410 | 30.569 | 37.314 |
19 | 30.926 | 37.846 | 30.128 | 36.833 |
20 | 30.306 | 37.180 | 29.603 | 36.237 |
21 | 29.670 | 36.493 | 29.021 | 35.590 |
22 | 29.027 | 35.787 | 28.419 | 34.917 |
23 | 28.365 | 35.054 | 27.809 | 34.231 |
24 | 27.685 | 34.293 | 27.205 | 33.539 |
25 | 27.007 | 33.518 | 26.588 | 32.830 |
26 | 26.319 | 32.728 | 25.964 | 32.108 |
27 | 25.643 | 31.939 | 25.357 | 31.387 |
28 | 24.958 | 31.123 | 24.736 | 30.646 |
29 | 24.271 | 30.304 | 24.110 | 29.892 |
30 | 23.590 | 29.481 | 23.491 | 29.136 |
31 | 22.892 | 28.640 | 22.866 | 28.371 |
32 | 22.191 | 27.796 | 22.237 | 27.599 |
33 | 21.487 | 26.944 | 21.606 | 26.819 |
34 | 20.783 | 26.097 | 20.970 | 26.034 |
35 | 20.095 | 25.254 | 20.327 | 25.239 |
36 | 19.400 | 24.408 | 19.685 | 24.446 |
37 | 18.707 | 23.560 | 19.039 | 23.648 |
38 | 18.018 | 22.714 | 18.392 | 22.850 |
39 | 17.324 | 21.864 | 17.737 | 22.044 |
40 | 16.627 | 21.014 | 17.085 | 21.242 |
41 | 15.944 | 20.169 | 16.421 | 20.432 |
42 | 15.264 | 19.328 | 15.764 | 19.627 |
43 | 14.595 | 18.494 | 15.110 | 18.825 |
44 | 13.931 | 17.664 | 14.456 | 18.024 |
45 | 13.272 | 16.840 | 13.798 | 17.220 |
46 | 12.616 | 16.018 | 13.154 | 16.429 |
47 | 11.972 | 15.204 | 12.520 | 15.641 |
48 | 11.328 | 14.398 | 11.886 | 14.859 |
49 | 10.682 | 13.593 | 11.259 | 14.081 |
50 | 10.053 | 12.803 | 10.642 | 13.311 |
51 | 9.432 | 12.020 | 10.030 | 12.550 |
52 | 8.802 | 11.239 | 9.429 | 11.798 |
53 | 8.199 | 10.477 | 8.843 | 11.057 |
54 | 7.593 | 9.723 | 8.270 | 10.333 |
55 | 6.996 | 8.980 | 7.709 | 9.618 |
56 | 6.422 | 8.263 | 7.152 | 8.912 |
57 | 5.872 | 7.564 | 6.618 | 8.230 |
58 | 5.339 | 6.883 | 6.095 | 7.560 |
59 | 4.812 | 6.216 | 5.587 | 6.908 |
60 | 4.307 | 5.578 | 5.097 | 6.280 |
61 | 3.840 | 4.979 | 4.624 | 5.677 |
62 | 3.400 | 4.415 | 4.181 | 5.112 |
63 | 3.024 | 3.918 | 3.782 | 4.593 |
64 | 2.708 | 3.485 | 3.428 | 4.128 |
65 | 2.422 | 3.093 | 3.109 | 3.700 |
66 | 2.180 | 2.756 | 2.819 | 3.312 |
67 | 1.970 | 2.461 | 2.556 | 2.960 |
68 | 1.787 | 2.200 | 2.323 | 2.646 |
69 | 1.624 | 1.967 | 2.102 | 2.359 |
70 | 1.471 | 1.756 | 1.905 | 2.101 |
71 | 1.348 | 1.584 | 1.728 | 1.869 |
72 | 1.238 | 1.430 | 1.577 | 1.670 |
73 | 1.134 | 1.289 | 1.427 | 1.484 |
74 | 1.042 | 1.167 | 1.296 | 1.322 |
75 | 0.965 | 1.065 | 1.184 | 1.181 |
76 | 0.904 | 0.983 | 1.077 | 1.054 |
77 | 0.834 | 0.899 | 0.980 | 0.942 |
78 | 0.784 | 0.836 | 0.894 | 0.843 |
79 | 0.735 | 0.778 | 0.807 | 0.750 |
80 | 0.694 | 0.735 | 0.675 | 0.636 |
Notes:
The econometric model described by Millimet et al (2002) and logistic regression equations by gender and education are used to calculate the worklife expectancy estimates. The worklife model iin the left panel of the table is estimated using matched CPS cohorts from 1992–2000 time period as described in the Millimet et al. (2002) paper. The model on the right panel is estimated using data from 2001-2013.
The logistic equation includes independent variable for age, age squared, race, race by age interaction, race by age interaction squared, marital status, martial status by age, occupation dummies, year and year dummies.
The model is first estimated separately for each gender and education level combination for active persons. The model is then estimated again for inactive persons. The educational attainment variables used to estimate our model differ from that of Millimet et al. (2002) In our model, only individuals whose highest level of attainment is high school are included in the high school category. Millimet et al (2002) includes individuals with some college in the high school category.
California and Texas both saw decrease in job openings in December
California
California experienced a decrease of 11,258 job openings from November 2014 to December 2014, a 6.91% monthly decrease.
Month | Total Openings | Monthly Change | Yearly Change |
Dec-14 | 436019 | -2.52% | -6.91% |
Nov-14 | 447277 | -10.45% | 15.15% |
Oct-14 | 499494 | 7.47% | 21.56% |
Sep-14 | 464759 | -18.01% | -2.91% |
Aug-14 | 566834 | -0.67% | 27.78% |
Jul-14 | 570648 | 6.01% | 27.68% |
Jun-14 | 538310 | 0.55% | 16.09% |
May-14 | 535368 | -5.24% | 20.85% |
Apr-14 | 565001 | 23.20% | 26.68% |
Mar-14 | 458591 | 2.14% | -2.59% |
Feb-14 | 448997 | -4.13% | 0.79% |
Jan-14 | 468361 | 20.57% | 11.64% |
Texas
Texas experienced a decrease of 8,140 job openings from November 2014 to December 2014, a 2.92% monthly decrease.
Month | Total Openings | Monthly Change | Yearly Change |
Dec-14 | 270,849 | -2.92% | -10.76% |
Nov-14 | 278,989 | -11.11% | 10.78% |
Oct-14 | 313,873 | 8.34% | 19.17% |
Sep-14 | 289,703 | -20.46% | -5.86% |
Aug-14 | 364,236 | -1.23% | 27.59% |
Jul-14 | 368,784 | 7.36% | 28.75% |
Jun-14 | 343,517 | 0.21% | 14.99% |
May-14 | 342,800 | -5.20% | 20.03% |
Apr-14 | 361,597 | 22.06% | 25.80% |
Mar-14 | 296,241 | 3.08% | -1.95% |
Feb-14 | 287,386 | -5.31% | 1.30% |
Jan-14 | 303,498 | 20.51% | 12.47% |
Source: BLS