Data Management - Data Quality

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  • Опубликовано: 14 янв 2025

Комментарии • 31

  • @firza6674
    @firza6674 4 года назад +15

    this is so well explained, i came here knowing nothing about data quality, and now i think im ready for my job interview. wish me luck guys

    • @firza6674
      @firza6674 4 года назад +19

      i got the job yall😭

    • @jaddek.astrie3071
      @jaddek.astrie3071 4 года назад +1

      Me too.

    • @ProfessionalCleancutguy
      @ProfessionalCleancutguy 3 года назад

      @@firza6674 Congratulations❤

    • @billiondollatv5837
      @billiondollatv5837 10 месяцев назад

      @@firza6674 please Can I have your contact? I would like to ask some questions and get some information from you because
      I just got a job as a Data Quality Analyst too

  • @jackdaniel1579
    @jackdaniel1579 6 лет назад +5

    Simply, short, sweet and on point! Loved it!

  • @muneerahmed4996
    @muneerahmed4996 Год назад

    Nice information..hope will have more video's in future..Thanks

  • @esther_anyanwu
    @esther_anyanwu Год назад +2

    Thank you so much for putting this together, it's so helpful for my Data Quality Analyst interview prep.

  • @vikassogani6346
    @vikassogani6346 Год назад

    Very Good Video ,Thanks

  • @morganbayeto2553
    @morganbayeto2553 2 года назад

    Wahoo great lesson

  • @WinPureDM
    @WinPureDM 2 года назад

    Good video and we particular like the section on data profiling at 13:01 as this is something we have been working on for many years in our tools, and by using this method you can quickly discover patterns and meaning in your data, and to check the quality of it by analyzing formats, types, completeness and value counts. Great stuff 👍

  • @tanyarems5475
    @tanyarems5475 3 года назад

    Wow.. perfect

  • @pushkardas9
    @pushkardas9 3 года назад

    Very well explained and clarified.

  • @R2DMD
    @R2DMD 6 лет назад +1

    Very well structured and presented. Thank you!

  • @prabhu4545
    @prabhu4545 4 года назад

    Well explained and presented. Thanking you

  • @jorgemendoza1160
    @jorgemendoza1160 6 месяцев назад

    this info is still useful, thank you so much!

  • @joachimcollin3712
    @joachimcollin3712 2 года назад

    very good video! I have been looking for something like that. Thanks

  • @parthshah7202
    @parthshah7202 6 лет назад +2

    Hi This is very informative and i learn very good about DQ, can you please share this presentation for us? Thanks

  • @gustiromanda4197
    @gustiromanda4197 4 года назад

    Good👍
    Thank's

  • @johnpaullozano8014
    @johnpaullozano8014 Год назад +1

    Hi. Thank you for this very informative presentation ❤ may i have a copy of the slides? Thanks so much.

  • @gauravkamireddi
    @gauravkamireddi 6 лет назад

    At around 14:20, for the data quality example, in the data assessment results, you mentioned Validity failed results as 2. But the date looks valid as 2/30/1968 which is correct according to the rule. Please correct me if I a wrong.

    • @gauravkamireddi
      @gauravkamireddi 6 лет назад +2

      :O :O :O How could I miss such a silly point. Sorry. And, Thank you. :)

    • @jamieduff3645
      @jamieduff3645 4 года назад

      @@gauravkamireddi I did it too :) haha

  • @rajatshelake765
    @rajatshelake765 9 месяцев назад

    DOB cannot be future date, this also rule we can apply on DOB column.
    Thanks for the video though, it really helpful and i am learning a lot :)

  • @franklinmosquera6313
    @franklinmosquera6313 4 года назад

    Good and easy !!!

  • @reemaalamoudi4959
    @reemaalamoudi4959 2 года назад

    where can I find the quiz, please?

  • @shamelame6367
    @shamelame6367 4 года назад

    Thanks!! Very Nice!! Please remove background music...

  • @irakli1610
    @irakli1610 6 лет назад +1

    There are many connections between data quality dimensions. Should an analyst include number of blank values in both Completeness and Validity?
    Should he/she include blank values in duplicate values?

    • @shorthop65
      @shorthop65 5 лет назад +1

      If the field is blank, or Null, then you measure that in your completeness metric. If the value in the field is "blank" and that value is not a valid use of that field, such as if you had a product name field and the value was "blank", then you wouldn't measure that as completeness, you would measure that as Invalid.

  • @venanciopereira133
    @venanciopereira133 3 года назад

    Thanks. I am struggling to learn this.

  • @pouyanpiano
    @pouyanpiano 4 года назад

    you didn't even bother reading the text?