Given a linear transformation, find the kernel and range

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  • Опубліковано 22 чер 2021

КОМЕНТАРІ • 19

  • @yousiffatohi136
    @yousiffatohi136 Рік тому +23

    I appreciate the last-minute clutch Friday video to help me 4.0 my test later today.

  • @islamicaestheticvideos
    @islamicaestheticvideos 2 місяці тому

    Man this is the best "how to find range and null space " video for me. THANK YOU SO MUCH.

  • @retired5209
    @retired5209 2 роки тому +10

    Nice tutoring. I can understand now. Thank you very much

    • @user-ft8io7dz2c
      @user-ft8io7dz2c 2 роки тому +2

      Hello, David Friday, I just want to let you know that I am extremely thankful and satisfied with your elaboration on how to write a vector as a linear combination of other vectors, this knowledge will be a great addition to my skill and professional experience which further help me with my studies and professional research again I can not thank you enough for your effort on your lessons, from your best student DR.Данияр

    • @user-ft8io7dz2c
      @user-ft8io7dz2c 2 роки тому

      true

    • @user-ft8io7dz2c
      @user-ft8io7dz2c 2 роки тому +1

      shit i meant "truly*"

  • @overclocked7260
    @overclocked7260 6 місяців тому

    awesome video

  • @adesh7004
    @adesh7004 2 роки тому

    Great

  • @raghavkumarsingh4222
    @raghavkumarsingh4222 3 місяці тому +1

    Iam confused in finding Range of T if T:R²-->R³...plz help

    • @davidfriday7498
      @davidfriday7498  3 місяці тому

      Respectfully, if you don't give me the definition of the transformation, there is literally nothing I can do to help.

  • @davidmurphy563
    @davidmurphy563 6 місяців тому

    Is this an American thing to say kernel instead of nullspace? The latter is a much better term in my humble.

    • @davidfriday7498
      @davidfriday7498  6 місяців тому +3

      Kernel applies to the transformation, nullspace applies to the matrix.
      The kernel of the transformation, T, is the set of all vectors, x, such that T(x) = 0.
      The nullspace of the matrix, A, is the set of all vectors, x, such that Ax = 0.
      Fundamentally, they are the same concept. The difference in terms simply lets you know if you're referring to the transformation or the matrix.

    • @davidmurphy563
      @davidmurphy563 6 місяців тому

      @@davidfriday7498 I'm sure you gave a great explanation but I'm still not sure I understand the distinction. I just think of nullspace as the geometric space made by the span of all the vectors which project into the zero vector after the application of a new basis; a line, plane or whatever. Or unpivoted bases of the matrix after row reduction. Or a zero det.
      But listen, I self-studied this stuff so I'm not really qualified to comment on the formal stuff.

    • @davidfriday7498
      @davidfriday7498  6 місяців тому

      @@davidmurphy563 I appreciate the backstory of your education. If you don't understand the distinction, don't fret too much. There is a lot of vocabulary-related gatekeeping to higher level math; this is not a battle that needs to be picked.
      I suppose the thing to keep in mind is that a given matrix can always have a linear transformation, but a given linear transformation doesn't always have a matrix. In the first case, kernel of the transformation and nullspace of the matrix are essentially the same thing. However, in the second instance, because there isn't necessarily a matrix, the term "kernel" would be used without using "nullspace". For example, a derivative is a linear transformation, and the kernel of that transformation is any constant function. You wouldn't be able to effectively model the linear transformation of the derivative as a matrix effectively.
      Also, to one point you made in your reply: zero determinant is great assuming the matrix is square. However, it doesn't have to be, specifically transforming between vector spaces with different dimensions.

  • @captainnobody4960
    @captainnobody4960 Рік тому

    Your missing a free variable for the column with all zeros

    • @davidfriday7498
      @davidfriday7498  Рік тому +9

      The column of zeros represents the zeros on the right side of the equation. Zero is a number, not a variable. As such, no free variable is needed for this column of zeros.

    • @arkojyotidutta5890
      @arkojyotidutta5890 10 місяців тому

      ​@@davidfriday7498❤

  • @matarmqds307
    @matarmqds307 7 місяців тому +1

    How i can find
    null (T)?

    • @davidfriday7498
      @davidfriday7498  7 місяців тому

      I'm not familiar with the notation you're using, but here are some possibilities:
      - If you mean the nullity of T, that's the dimension of the kernel of T. In this case, because of the one free variable and one basis vector, that's 1.
      - If you mean the nullspace of T, "nullspace" only refers to a matrix. The good news is that the nullspace of the matrix of T, which we call A, is the same as the kernel of T.