Statistical Modeling for Data Science - Simpliv
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Website https://www.simpliv.com/machinelearning/statistical-modeling-for-data-science |
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Category training;webinar
Deadline: April 24, 2019 | Date: April 24, 2019-May 03, 2019
Venue/Country: online course, U.S.A
Updated: 2019-04-22 20:09:15 (GMT+9)
Call For Papers - CFP
About this CourseOn the off chance that you are going for a profession as a Data Scientist or Business Analyst at that point looking over your statistics abilities is something you have to do.In any case, it's only difficult to begin... Learning/re-adapting ALL of details just appears like an overwhelming undertaking.That is precisely why we have made this course!Here you will rapidly get the significant details learning for a Data Scientist or Analyst.This isn't simply one more exhausting course on details.This course is exceptionally pragmatic.I have particularly included true models of business difficulties to demonstrate to you how you could apply this learning to help YOUR vocation.In the meantime you will ace points, for example, dispersions, the z-test, the Central Limit Theorem, theory testing, certainty interims, measurable criticalness and some more!So what are you sitting tight for?Select now and enable your profession!Basic knowledgeJust a basic knowledge of high school mathInterest in Learning Statistical ModellingWhat you will learnPeople working in any numerate field which requires data analysisPeople carrying out observational or experimental studiesAny one who want to make career in Data ScienceContact Us:simplivllcgmail.comPhone: 76760-08458Email: sudheersimpliv.comPhone: 9538055093To read more and register: https://www.simpliv.com/machinelearning/statistical-modeling-for-data-science
Keywords: Accepted papers list. Acceptance Rate. EI Compendex. Engineering Index. ISTP index. ISI index. Impact Factor.
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