There is more than meets the eye when it comes to being a card tender. For example, did you know that they make an average of $13.24 an hour? That's $27,539 a year!
Between 2018 and 2028, the career is expected to grow -1% and produce -1,900 job opportunities across the U.S.
There are certain skills that many card tenders have in order to accomplish their responsibilities. By taking a look through resumes, we were able to narrow down the most common skills for a person in this position. We discovered that a lot of resumes listed detail oriented, dexterity and mechanical skills.
When it comes to searching for a job, many search for a key term or phrase. Instead, it might be more helpful to search by industry, as you might be missing jobs that you never thought about in industries that you didn't even think offered positions related to the card tender job title. But what industry to start with? Most card tenders actually find jobs in the retail and manufacturing industries.
If you're interested in becoming a card tender, one of the first things to consider is how much education you need. We've determined that 0.0% of card tenders have a bachelor's degree. In terms of higher education levels, we found that 0.0% of card tenders have master's degrees. Even though some card tenders have a college degree, it's possible to become one with only a high school degree or GED.
You may find that experience in other jobs will help you become a card tender. In fact, many card tender jobs require experience in a role such as grill cook. Meanwhile, many card tenders also have previous career experience in roles such as batch room technician or drywall hanger, framer.
Tell us your goals and we'll match you with the right jobs to get there.
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