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    "title" : "Machine Learning: How Bureau of Labor Statistics Did It |Digital.gov",
    "description": "Machine Learning: How Bureau of Labor Statistics Did It",
    "home_page_url" : "/preview/gsa/digitalgov.gov/bc-archive-content-3/","feed_url" : "/preview/gsa/digitalgov.gov/bc-archive-content-3/event/2019/07/25/machine-learning-how-bureau-labor-statistics-did-it/index.json","item" : [
    {"title" :"Machine Learning: How Bureau of Labor Statistics Did It","deck" : "","summary" : "The Bureau of Labor Statistics has been on a journey to improve their data reporting, using and iterating on machine learning, from algorithms to deep neural networks with lessons for everyone on this path.","date" : "2019-07-25T15:00:00-05:00","date_modified" : "2025-01-27T19:42:55-05:00","start_date" : "2019-07-25T15:00:00-05:00","end_date" : "2019-07-25T16:00:00-05:00",
      "event_organizer" : "DigitalGov University","host" : "AI COP","registration_url" : "https://www.eventbrite.com/e/machine-learning-how-bureau-of-labor-statistics-did-it-registration-64613832713","youtube_id" : "0j-DmzJmJFg","authors" : {"alex-measure" : "Alex Measure","gwynne-kostin" : "Gwynne Kostin"},"topics" : {
        
            "emerging-tech" : "Emerging tech",
            "software-engineering" : "Software engineering"
            },"content" :"\u003cp\u003eCome and learn about the eight year journey of integrating machine learning (ML) models into the \u003ca href=\"https://www.bls.gov/\"\u003eBureau of Labor Statistics\u003c/a\u003e (BLS). Discover how the organization learned to change, and how the team worked internally to make BLS more data-friendly.\u003c/p\u003e\n\u003cp\u003eJoining us will be presenter \u003cstrong\u003eAlex Measure\u003c/strong\u003e, an economist-turned-machine learning and natural language processing (NLP) practitioner at BLS. He designs, builds, and maintains machine learning systems that automate difficult text classification, information extraction, and record-matching problems in production systems.\u003c/p\u003e\n\u003cp\u003e\u003cem\u003eQuestions about this event or future events? Email them to \u003ca href=\"mailto:digitalgov@gsa.gov\"\u003edigitalgov@gsa.gov\u003c/a\u003e.\u003c/em\u003e\u003c/p\u003e\n",
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      "filename" :"2019-07-25-machine-learning-how-bureau-labor-statistics-did-it.md",
      
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