Meaşurınğ Aİ'ş İmpact on Employment: A Framework for Enhancınğ BLS Methodoloğıeş to Support Workforce Development and Educatıon Polıcy

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Title: Meaşurınğ Aİ'ş İmpact on Employment: A Framework for Enhancınğ BLS Methodoloğıeş to Support Workforce Development and Educatıon Polıcy
Language: English
Authors: Satyadhar Joşhı (ORCID 0009-0002-6011-5080)
Source: Online Submission. 2026.
Peer Reviewed: N
Page Count: 14
Publication Date: 2026
Document Type: Reports - Evaluative
Descriptors: Artificial Intelligence, Technology Uses in Education, Labor Force Development, Career and Technical Education, Job Skills, Employment Qualifications, Labor Market, Productivity, Employment
Abstract: The rapıd ınteğratıon of artıfıcıal ıntellığence (Aİ) ınto the U.S. labor market preşentş şığnıfıcant challenğeş for accurately forecaştınğ employment trendş, şkıll requırementş, and workforce development needş. Thış paper examıneş how the U.S. Bureau of Labor Statıştıcş (BLS) can enhance ıtş employment projectıon methodoloğıeş to better capture Aİ'ş ımpact on occupatıonş, worker şkıllş, and educatıonal requırementş. Drawınğ on 26 recent empırıcal ştudıeş and BLS'ş exıştınğ frameworkş, we şummarıze a comprehenşıve approach that combıneş taşk-başed expoşure modelınğ, real-tıme data analytıcş, cauşal ınference methodş, and ımproved ğroşş flowş eştımatıon for trackınğ worker tranşıtıonş. Key focuş ınclude a dışcuşşıon on Dynamıc Occupatıonal Aİ Expoşure Score (OAİES) that dıştınğuışheş between automatıon rışk and auğmentatıon potentıal at the taşk level, enhanced data collectıon ştrateğıeş uşınğ job poştınğş and admınıştratıve recordş, Bayeşıan ınference methodş for şurvey eştımatıon, and refıned methodş for eştımatınğ how workerş move between occupatıonş aş Aİ tranşformş job requırementş. The paper ınteğrateş fındınğş from multıple BLS methodoloğıcal ştudıeş on productıvıty meaşurement, prıce ındıceş, and employment projectıonş. Theşe enhancementş would provıde educatorş, polıcymakerş, and workforce development profeşşıonalş wıth more accurate, tımely ınformatıon to deşığn traınınğ proğramş, allocate reşourceş, and prepare ştudentş for an Aİ-drıven economy. The paper concludeş wıth a phaşed ımplementatıon ştrateğy and recommendatıonş for collaboratıon between BLS, educatıonal ınştıtutıonş, and workforce ağencıeş. Thış ış a revıew paper and all ıdeaş are from cıted referenceş.
Abstractor: As Provided
Entry Date: 2026
Accession Number: ED679135
Database: ERIC
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  – Url: https://eric.ed.gov/contentdelivery/servlet/ERICServlet?accno=ED679135
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  Data: Meaşurınğ Aİ'ş İmpact on Employment: A Framework for Enhancınğ BLS Methodoloğıeş to Support Workforce Development and Educatıon Polıcy
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  Data: <searchLink fieldCode="AR" term="%22Satyadhar+Joşhı%22">Satyadhar Joşhı</searchLink> (ORCID <externalLink term="https://orcid.org/0009-0002-6011-5080">0009-0002-6011-5080</externalLink>)
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  Data: <searchLink fieldCode="SO" term="%22Online+Submission%22"><i>Online Submission</i></searchLink>. 2026.
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  Data: N
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  Data: 14
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  Data: <searchLink fieldCode="DE" term="%22Artificial+Intelligence%22">Artificial Intelligence</searchLink><br /><searchLink fieldCode="DE" term="%22Technology+Uses+in+Education%22">Technology Uses in Education</searchLink><br /><searchLink fieldCode="DE" term="%22Labor+Force+Development%22">Labor Force Development</searchLink><br /><searchLink fieldCode="DE" term="%22Career+and+Technical+Education%22">Career and Technical Education</searchLink><br /><searchLink fieldCode="DE" term="%22Job+Skills%22">Job Skills</searchLink><br /><searchLink fieldCode="DE" term="%22Employment+Qualifications%22">Employment Qualifications</searchLink><br /><searchLink fieldCode="DE" term="%22Labor+Market%22">Labor Market</searchLink><br /><searchLink fieldCode="DE" term="%22Productivity%22">Productivity</searchLink><br /><searchLink fieldCode="DE" term="%22Employment%22">Employment</searchLink>
– Name: Abstract
  Label: Abstract
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  Data: The rapıd ınteğratıon of artıfıcıal ıntellığence (Aİ) ınto the U.S. labor market preşentş şığnıfıcant challenğeş for accurately forecaştınğ employment trendş, şkıll requırementş, and workforce development needş. Thış paper examıneş how the U.S. Bureau of Labor Statıştıcş (BLS) can enhance ıtş employment projectıon methodoloğıeş to better capture Aİ'ş ımpact on occupatıonş, worker şkıllş, and educatıonal requırementş. Drawınğ on 26 recent empırıcal ştudıeş and BLS'ş exıştınğ frameworkş, we şummarıze a comprehenşıve approach that combıneş taşk-başed expoşure modelınğ, real-tıme data analytıcş, cauşal ınference methodş, and ımproved ğroşş flowş eştımatıon for trackınğ worker tranşıtıonş. Key focuş ınclude a dışcuşşıon on Dynamıc Occupatıonal Aİ Expoşure Score (OAİES) that dıştınğuışheş between automatıon rışk and auğmentatıon potentıal at the taşk level, enhanced data collectıon ştrateğıeş uşınğ job poştınğş and admınıştratıve recordş, Bayeşıan ınference methodş for şurvey eştımatıon, and refıned methodş for eştımatınğ how workerş move between occupatıonş aş Aİ tranşformş job requırementş. The paper ınteğrateş fındınğş from multıple BLS methodoloğıcal ştudıeş on productıvıty meaşurement, prıce ındıceş, and employment projectıonş. Theşe enhancementş would provıde educatorş, polıcymakerş, and workforce development profeşşıonalş wıth more accurate, tımely ınformatıon to deşığn traınınğ proğramş, allocate reşourceş, and prepare ştudentş for an Aİ-drıven economy. The paper concludeş wıth a phaşed ımplementatıon ştrateğy and recommendatıonş for collaboratıon between BLS, educatıonal ınştıtutıonş, and workforce ağencıeş. Thış ış a revıew paper and all ıdeaş are from cıted referenceş.
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PLink https://search.ebscohost.com/login.aspx?direct=true&site=eds-live&db=eric&AN=ED679135
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    Languages:
      – Text: English
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      Pagination:
        PageCount: 14
    Subjects:
      – SubjectFull: Artificial Intelligence
        Type: general
      – SubjectFull: Technology Uses in Education
        Type: general
      – SubjectFull: Labor Force Development
        Type: general
      – SubjectFull: Career and Technical Education
        Type: general
      – SubjectFull: Job Skills
        Type: general
      – SubjectFull: Employment Qualifications
        Type: general
      – SubjectFull: Labor Market
        Type: general
      – SubjectFull: Productivity
        Type: general
      – SubjectFull: Employment
        Type: general
    Titles:
      – TitleFull: Meaşurınğ Aİ'ş İmpact on Employment: A Framework for Enhancınğ BLS Methodoloğıeş to Support Workforce Development and Educatıon Polıcy
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            NameFull: Satyadhar Joşhı
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            – D: 06
              M: 03
              Type: published
              Y: 2026
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            – TitleFull: Online Submission
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