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Data science, Machine learning, and Artificial Intelligence. We post daily contents related to machine learning focusing on Numpy, Pandas, and ML effectively.
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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.
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πŸ‘¨β€πŸ’»#NumPy
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Being fluent in NumPy goes a long way in becoming a data scientist πŸƒ Today we are taking an important step in that direction! πŸš€
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Wanna know more? Check out the slides!
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πŸ‘¨β€πŸ’»#NumPy
Hi everyone πŸ‘‹πŸ‘‹.I wanted to introduce Pandas to you in case it’s new to you. We will be working a lot with it in the future so a nice introduction will go a long way πŸ™Œ.I have asked a few of my friends ‼️ to help me introduce Pandas to you by showing up on the post πŸ˜‚πŸ˜‚.Jokes aside, Pandas is a really powerful data analytics library in Python that I use almost everyday. It’s robust, fast, and great for prototyping data science problems 🧠..It quickly feels like you’re working with a database, so if you know SQL this won’t feel too different..Let me know who your favorite founder is from the 4 on the picture. I’ll keep mine a secret for now. πŸ‘

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πŸ‘¨β€πŸ’»#Pandas
Hi everyone πŸ‘‹πŸ‘‹.My friends are here again for part 2 of our intro to PandasπŸ‘ŒπŸŽ‰πŸ‘.In Pandas, you can easily extract more useful data points from existing data in the table, and because Pandas has been optimized to work on large amounts of data, column operations are super fast πŸ’¨..Here I divide the founders’ net worth by their age, to get a sense of their average wealth accumulation rate.Then I am interested to see who’s accumulated wealth the fastest, so I sort the column in the descending order πŸ™ŒπŸ».Super fast, in a few lines, I have answered a couple of my questions about my favorite founders πŸ‘.

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πŸ‘¨β€πŸ’»#Pandas
Hello all and welcome to the 3rd episode of our Intro to Pandas series @bigdataguru πŸ‘‹πŸ™.Our friends, the 4 founders, have been kind enough to show up once again to help us understand two important functions on Pandas πŸŽ‰.groupby()mean().Groupby() as the name suggests groups the rows of data frame based on the values of a column of columns..The result of the groupby is usually used for aggregation of data, in the case finding the mean number of employees employed in given states by these 4 companies.With those in our toolset, we can now do incredible things with data πŸ™ŒπŸ»πŸ™ŒπŸ».

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πŸ‘¨β€πŸ’»#Pandas
Hi data scientists πŸ‘‹πŸ‘‹πŸ‘‹.A coincidence that the day we just finished was Valentine’s Day but I have been receiving a lot of love πŸ’™ from you guys lately! Many of you have reached out and supported the content, just know that it’s appreciated and it will make this page better! πŸ‘Œ.With that, let’s get to today’s post, shall we?? .Of course when we are talking about Pandas, our good friends the founders are back to help us! πŸŽ‰.However our founders have been having a little argument lately. Even one was allegedly heard calling another one β€œhey boomer” ‼️ and the other responded back with β€œyou millennial” πŸ€¦πŸ»β€β™‚οΈ Even though arguments are not nice, this gives us the chance to use Pandas to settle who is in what generation!.pd.cut allows us to categorize a continuous spectrum into bins πŸ‘Œ here our bins are the generations and the continuous spectrum is the year number πŸ‘.After seeing exactly who’s in what generation, our founders realize that they should apologize to each other. They have promised to treat each other better in the next post so stay tuned πŸ—£.Correction: founders_df[β€œBirth”] should be founders_df[β€œBirthYear”] ‼️‼️

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πŸ‘¨β€πŸ’»#Pandas
Hello all and welcome to the post of the day πŸ™ .Today, we are going to introduce Machine Learning and Deep Learning and talk about what makes them different πŸ€” .In traditional machine learning, scientists had to define concrete and well defined features for the inputs, those features would then get fed into a neural network that would produce a prediction πŸ‘.In deep learning however, we are leaving it to the network to learn and ultimately decide which features it seems relevant to the learning problem πŸ’‘ .This is precisely why deep learning is so powerful, everything end to end is learned by the network. The hard part then becomes designing the perfect network for a given problem 🧠.Super excited to be going through this journey through AI with you guys. Stay tuned for more machine learning posts this coming week πŸŽ‰

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πŸ‘¨β€πŸ’» #Machine_Learning
Hello data science enthusiasts πŸ‘‹πŸ‘‹.Weekend calls for a machine learning related post, doesn’t it?.Machine learning historically started with the two main types: supervised and unsupervised..Overtime, a new type was invented β€œreinforcement” learning, and now there is even more types ....So, what are they?.Supervised: training a model with labeled data points, you β€œsupervise” the model by giving it the β€œright answers”.Unsupervised: you ask the model to tell you what it thinks the data classifications or clustering should be based on the pattern it can find in the data. This is a good approach for when there are no right answers or the right answers are not available..Reinforcement: this type is largely evolving and generally is orchestrated on a series of actions and rewards. The model learns over time what action to take and when to optimize its total rewards..Machine learning is fast moving field and the research in it brings a ton of new ideas every month πŸ‘ŒπŸ§ .We should be covering the different techniques used on this slide in the future posts so stay tuned πŸ—£πŸ—£

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πŸ‘¨β€πŸ’» #Machine_Learning
Hello everyone πŸ‘‹πŸ‘‹.Today we are continuing our journey in machine learning with this 3rd post in the series πŸ‘.Logistic regression is one of the most widely used and popular classification algorithms out there. Due to its diversity, simplicity and robustness, it’s become super popular as a baseline model all along the field πŸ‘Œ.At the heart of logistic regression, is the sigmoid function, a smooth function that takes any value and outputs a value between 0 and 1. This function allows for any input to be β€œclassified” in one of the two binary classes after a threshold is applied πŸ‘.Neat, right? 😍

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πŸ‘¨β€πŸ’» #Machine_Learning
Hi everyone πŸ‘‹πŸ‘‹ and welcome to another β€œIntro to Machine Learning” post 🧠.Supervise Learning is everywhere. In fact, 90% of the problems I have solved so far with ML have been through Supervised Learning.With Supervised Learning, you can answer so many questions and become an expert in ML πŸ‘Œ.The two types of Supervised Learning are crucial to Artificial Intelligence: regression and classification.An example of regression is predictions the price of a home based on its number of bedrooms, number of bathrooms, size and age 🏠 ..An example of a classification problem could be predicting whether a cancer tumor is benign or not πŸ’Š .

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πŸ‘¨β€πŸ’» #Machine_Learning
Hi everyone πŸ‘‹πŸ‘‹.Hope you’re having a nice weekend πŸ‘Œ.Today we are continuing our journey with the β€œintro to machine learning” series.And of course, SVMs πŸŽ‰.SVM or support vector machine is a machine learning algorithm whose job is to find a hyperplane that divides the data for the each label πŸ‘.The power of SVMs comes through especially when the data is non linear or not easily distinguishable by eye!.SVMs use non linear kernels to transform the data to another space where the resulting data points are easily divisible by a hyperplane and then they transform everything including the hyperplane back to the initial dimensions.How cool is that with the right kernel, the SVM in the post was able to figure out the circular pattern of our data points? πŸ‘πŸ‘.I personally think it’s absolutely amazing!!.Let me know what you think below.

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πŸ‘¨β€πŸ’» #Machine_Learning