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    Machine Learning - New York

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    Website https://go.evvnt.com/283301-0?pid=4800 | Want to Edit it Edit Freely

    Category Conferences, Education, Training

    Deadline: December 04, 2018 | Date: December 05, 2018-December 06, 2018

    Venue/Country: Downtown Conference Center, U.S.A

    Updated: 2018-10-03 20:03:29 (GMT+9)

    Call For Papers - CFP

    This two day training course will provide delegates with an in-depth understanding of machine learning applications. This course will be a technical look at machine learning and provide suggestions and strategies for integrating it within your organization.

    The multi-tutor format will provide attendees with an understanding of key theory, models, and more advanced tools in machine learning solutions through a quantitative approach that will also consider portfolio construction, trading, risk management and other business areas.

    URL:

    Tickets: https://go.evvnt.com/283301-1?pid=4800

    Prices:

    Two Day Training Course (Super Early Bird): USD 2099.0

    Two Day Training Course (Super Early Bird 3 for 2): USD 1399.33

    Two Day Training Course (Early Bird): USD 2299.0

    Two Day Training Course (Early Bird 3 for 2): USD 1532.66

    Two Day Training Course: USD 2499.0

    Two Day Training Course (3 for 2): USD 1666.0

    Time: 9:00 am to 5:30 pm

    Venue details: Downtown Conference Center, 157 William St, New York, NY 10038, United States


    Keywords: Accepted papers list. Acceptance Rate. EI Compendex. Engineering Index. ISTP index. ISI index. Impact Factor.
    Disclaimer: ourGlocal is an open academical resource system, which anyone can edit or update. Usually, journal information updated by us, journal managers or others. So the information is old or wrong now. Specially, impact factor is changing every year. Even it was correct when updated, it may have been changed now. So please go to Thomson Reuters to confirm latest value about Journal impact factor.