• @[email protected]
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    45 hours ago

    My prior employer actually ran diversity reviews on layoff lists to make sure the layoffs were diverse enough to defend against discrimination lawsuits.

  • @werefreeatlast
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    78 hours ago

    That’s nothing, we’re firing mostly Latino women and Chinese - Latino women. Super diverse!

  • HubertManne
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    2812 hours ago

    I am looking for work and man. It is so hard to care. Despite what it means for my life and the life of my wife. Begging for the collar around my neck.

    • @SpaceNoodle
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      1811 hours ago

      What sort of man are you looking for?

      • HubertManne
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        1311 hours ago

        oh great. you made me read my first two sentences and it has unintentional in your endo.

        • @[email protected]
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          2 hours ago

          Gives your last sentence new meaning, too.

          Also, I know that feeling. However you meant it…

          • HubertManne
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            14 hours ago

            yeah. you know im known for writing like that purposefully but this was coincidence as it just was how I felt atm.

        • @errer
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          109 hours ago

          Oh it’s definitely intentional in your endo ( ͡° ͜ʖ ͡°)

  • @UnderpantsWeevil
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    1612 hours ago

    But unironically…

    Tech layoffs are impacting women at a disproportionately higher rate than men, representing a possible setback for the industry’s efforts to improve its gender diversity, according to research by talent intelligence platform Eightfold AI.

    The key finding: women in tech are 65% more likely than men to lose their jobs.

    The research was led by Sania Khan, Eightfold’s chief economist and a former U.S. Bureau of Labor Statistics senior economist. The analysis used data including the percentage of women in different roles in the industry in 2021, and the types of roles impacted by cutbacks, using probability theory to arrive at the estimate.