This post is inspired by a great question on the last post! So keep asking great questions and motivate future posts πͺ
.
.
π¨βπ»#NumPy
.
.
π¨βπ»#NumPy
Hi Data Science enthusiasts π
.
Today, we are gonna talk about broadcasting in NumPy π’
.
Broadcasting is a powerful, useful yet tricky feature in NumPy. If you know it well and use it intentionally, you can simplify a lot of code π
.
However, if itβs used by mistake it can create bugs and a lot of headaches π€
.
Thatβs because in NumPy, you can easily do operations between matrices even if they donβt have the same shape π
.
NumPy βbroadcastsβ the smaller matrix (if valid for the operation) and repeats the operation per element, row, column, etc π€
.
In todayβs code snippet, a scalar broadcasts into the same size of a matrix to be subtracted. Similarly, a row and column vector broadcasts into the right shape before getting subtracted!
.
Wanna know how? Check out the post!
.π¨βπ»#NumPy
.
Today, we are gonna talk about broadcasting in NumPy π’
.
Broadcasting is a powerful, useful yet tricky feature in NumPy. If you know it well and use it intentionally, you can simplify a lot of code π
.
However, if itβs used by mistake it can create bugs and a lot of headaches π€
.
Thatβs because in NumPy, you can easily do operations between matrices even if they donβt have the same shape π
.
NumPy βbroadcastsβ the smaller matrix (if valid for the operation) and repeats the operation per element, row, column, etc π€
.
In todayβs code snippet, a scalar broadcasts into the same size of a matrix to be subtracted. Similarly, a row and column vector broadcasts into the right shape before getting subtracted!
.
Wanna know how? Check out the post!
.π¨βπ»#NumPy
Partitioning is an important technique when you have a large amount of data and like to partition it based on a pivot value. NumPy can do this very efficiently and it leads to some cool applications.
.
Wanna know more? Check out the slides!
.
.
π¨βπ»#NumPy
.
Wanna know more? Check out the slides!
.
.
π¨βπ»#NumPy
Level up your Python skills with our Telegram channel! ππ₯
Join now for valuable Python insights, tutorials, and community discussions. Let's learn and code together! π»π
https://t.me/+gumUMX-TjOdiOGY0
Join now for valuable Python insights, tutorials, and community discussions. Let's learn and code together! π»π
https://t.me/+gumUMX-TjOdiOGY0
Being fluent in NumPy goes a long way in becoming a data scientist π Today we are taking an important step in that direction! π
.
Wanna know more? Check out the slides!
.
π¨βπ»#NumPy
.
Wanna know more? Check out the slides!
.
π¨βπ»#NumPy
Hi everyone ππ.I wanted to introduce Pandas to you in case itβs new to you. We will be working a lot with it in the future so a nice introduction will go a long way π.I have asked a few of my friends βΌοΈ to help me introduce Pandas to you by showing up on the post ππ.Jokes aside, Pandas is a really powerful data analytics library in Python that I use almost everyday. Itβs robust, fast, and great for prototyping data science problems π§ ..It quickly feels like youβre working with a database, so if you know SQL this wonβt feel too different..Let me know who your favorite founder is from the 4 on the picture. Iβll keep mine a secret for now. π
.
π¨βπ»#Pandas
.
π¨βπ»#Pandas