Forwarded from Epython Lab (Asibeh Tenager)
You can conclude the result based on the graph shows
#QuarantineYourself #LearnDataScience #Bioinformatics #Python #Pandas #Matplotlib
#QuarantineYourself #LearnDataScience #Bioinformatics #Python #Pandas #Matplotlib
π1
Do you want to become a software engineer at one of tech company's in USA?
https://www.microverse.org/?grsf=4ydafn
@epythonlab
https://www.microverse.org/?grsf=4ydafn
@epythonlab
www.microverse.org
Microverse | Learn How To Code Online
Want to learn how to code? Pay $0 until you become a software developer and land a job. Learn programming from the best online coding school and connect with a global community.
π1
Forwarded from Epython Lab
π» Linear Algebra for Natural Language Processing
https://www.kdnuggets.com/2021/08/linear-algebra-natural-language-processing.html
Code: https://github.com/Taaniya/linear-algebra-for-ml
@epythonlab #nlp #code #article
https://www.kdnuggets.com/2021/08/linear-algebra-natural-language-processing.html
Code: https://github.com/Taaniya/linear-algebra-for-ml
@epythonlab #nlp #code #article
Data science from scratch
πLink: https://github.com/joelgrus/data-science-from-scratch
@epythonlab #books
πLink: https://github.com/joelgrus/data-science-from-scratch
@epythonlab #books
π2
How to be good at algorithms?
https://telegra.ph/How-to-be-good-at-algorithms-01-06
https://telegra.ph/How-to-be-good-at-algorithms-01-06
Telegraph
How to be good at algorithms?
By @epythonlab 1. Fundamentals Start with a solid base DSA(data structure and algorithm) that can be done through online courses, textbooks, YouTube videos, etc. 2. Math and Logic:- Try to solve basic riddles and gradually increase the difficulty. 3. Bigβ¦
β€4π1
How to Fix: KeyError in Pandas?
The KeyError in Pandas occurs when you try to access the columns in pandas DataFrame, which does not exist, or you misspell them.
Typically, we import data from the excel name, which imports the column names, and there are high chances that you misspell the column names or include an unwanted space before or after the column name.
https://itsmycode.com/how-to-fix-keyerror-in-pandas/
@epythonlab
The KeyError in Pandas occurs when you try to access the columns in pandas DataFrame, which does not exist, or you misspell them.
Typically, we import data from the excel name, which imports the column names, and there are high chances that you misspell the column names or include an unwanted space before or after the column name.
https://itsmycode.com/how-to-fix-keyerror-in-pandas/
@epythonlab
π4
Learn Python from Scratch
PDF: https://cfm.ehu.es/ricardo/docs/python/Learning_Python.pdf
@epythonlab #pythonbooks
PDF: https://cfm.ehu.es/ricardo/docs/python/Learning_Python.pdf
@epythonlab #pythonbooks
π7π₯1
Project Idea: Building a spam classifier
Introduction
Spam detection is one of the major applications of Machine Learning in the interwebs today. Pretty much all of the major email service providers have spam detection systems built in and automatically classify such mail as 'Junk Mail'.
In this mission we will be using the Naive Bayes algorithm to create a model that can classify dataset SMS messages as spam or not spam, based on the training we give to the model. It is important to have some level of intuition as to what a spammy text message might look like.
What are spammy messages?
Usually they have words like 'free', 'win', 'winner', 'cash', 'prize', or similar words in them, as these texts are designed to catch your eye and tempt you to open them. Also, spam messages tend to have words written in all capitals and also tend to use a lot of exclamation marks. To the recipient, it is usually pretty straightforward to identify a spam text and our objective here is to train a model to do that for us!
Being able to identify spam messages is a binary classification problem as messages are classified as either 'Spam' or 'Not Spam' and nothing else. Also, this is a supervised learning problem, as we know what are trying to predict. We will be feeding a labelled dataset into the model, that it can learn from, to make future predictions.
@epythonlab #projectIdea #ml
Introduction
Spam detection is one of the major applications of Machine Learning in the interwebs today. Pretty much all of the major email service providers have spam detection systems built in and automatically classify such mail as 'Junk Mail'.
In this mission we will be using the Naive Bayes algorithm to create a model that can classify dataset SMS messages as spam or not spam, based on the training we give to the model. It is important to have some level of intuition as to what a spammy text message might look like.
What are spammy messages?
Usually they have words like 'free', 'win', 'winner', 'cash', 'prize', or similar words in them, as these texts are designed to catch your eye and tempt you to open them. Also, spam messages tend to have words written in all capitals and also tend to use a lot of exclamation marks. To the recipient, it is usually pretty straightforward to identify a spam text and our objective here is to train a model to do that for us!
Being able to identify spam messages is a binary classification problem as messages are classified as either 'Spam' or 'Not Spam' and nothing else. Also, this is a supervised learning problem, as we know what are trying to predict. We will be feeding a labelled dataset into the model, that it can learn from, to make future predictions.
@epythonlab #projectIdea #ml
π5
Implementing Bag of Words from scratch
Before we dive into scikit-learn's Bag of Words (BoW) library to do the dirty work for us, let's implement it ourselves first so that we can understand what's happening behind the scenes.
Step 1: Convert all strings to their lower case form.
Let's say we have a document set:
documents = ['Hello, how are you!',
'Win money, win from home.',
'Call me now.',
'Hello, Call hello you tomorrow?']
Instructions:
Convert all the strings in the documents set to their lower case. Save them into a list called 'lower_case_documents'. You can convert strings to their lower case in python by using the lower() method.
@epythonlab #codetip #naive_bayes #ml #AI
Before we dive into scikit-learn's Bag of Words (BoW) library to do the dirty work for us, let's implement it ourselves first so that we can understand what's happening behind the scenes.
Step 1: Convert all strings to their lower case form.
Let's say we have a document set:
documents = ['Hello, how are you!',
'Win money, win from home.',
'Call me now.',
'Hello, Call hello you tomorrow?']
Instructions:
Convert all the strings in the documents set to their lower case. Save them into a list called 'lower_case_documents'. You can convert strings to their lower case in python by using the lower() method.
@epythonlab #codetip #naive_bayes #ml #AI
π3π₯1
Epython Lab
Implementing Bag of Words from scratch Before we dive into scikit-learn's Bag of Words (BoW) library to do the dirty work for us, let's implement it ourselves first so that we can understand what's happening behind the scenes. Step 1: Convert all stringsβ¦
Step 2: Removing all punctuation
Instructions: Remove all punctuation from the strings in the document set. Save the strings into a list called 'sans_punctuation_documents'.
@epythonlab #codetip #ml #AI #naive_bayes
Instructions: Remove all punctuation from the strings in the document set. Save the strings into a list called 'sans_punctuation_documents'.
@epythonlab #codetip #ml #AI #naive_bayes
π3
Epython Lab
Step 2: Removing all punctuation Instructions: Remove all punctuation from the strings in the document set. Save the strings into a list called 'sans_punctuation_documents'. @epythonlab #codetip #ml #AI #naive_bayes
Step 3: Tokenization
Tokenizing a sentence in a document set means splitting up the sentence into individual words using a delimiter. The delimiter specifies what character we will use to identify the beginning and end of a word. Most commonly, we use a single space as the delimiter character for identifying words, and this is true in our documents in this case also.
Instructions: Tokenize the strings stored in 'sans_punctuation_documents' using the split() method. Store the final document set in a list called 'preprocessed_documents'.
@epythonlab #codetip #ml #AI #naive_bayes
Tokenizing a sentence in a document set means splitting up the sentence into individual words using a delimiter. The delimiter specifies what character we will use to identify the beginning and end of a word. Most commonly, we use a single space as the delimiter character for identifying words, and this is true in our documents in this case also.
Instructions: Tokenize the strings stored in 'sans_punctuation_documents' using the split() method. Store the final document set in a list called 'preprocessed_documents'.
@epythonlab #codetip #ml #AI #naive_bayes
π3
Epython Lab
Step 3: Tokenization Tokenizing a sentence in a document set means splitting up the sentence into individual words using a delimiter. The delimiter specifies what character we will use to identify the beginning and end of a word. Most commonly, we use a singleβ¦
Step 4 and the last step: Count frequencies
Now that we have our document set in the required format, we can proceed to counting the occurrence of each word in each document of the document set. We will use the Counter method from the Python collections library for this purpose.
Counter counts the occurrence of each item in the list and returns a dictionary with the key as the item being counted and the corresponding value being the count of that item in the list.
Instructions: Using the Counter() method and preprocessed_documents as the input, create a dictionary with the keys being each word in each document and the corresponding values being the frequency of occurrence of that word. Save each Counter dictionary as an item in a list called 'frequency_list'.
@epythonlab #codetip #ml #AI #naive_bayes
Now that we have our document set in the required format, we can proceed to counting the occurrence of each word in each document of the document set. We will use the Counter method from the Python collections library for this purpose.
Counter counts the occurrence of each item in the list and returns a dictionary with the key as the item being counted and the corresponding value being the count of that item in the list.
Instructions: Using the Counter() method and preprocessed_documents as the input, create a dictionary with the keys being each word in each document and the corresponding values being the frequency of occurrence of that word. Save each Counter dictionary as an item in a list called 'frequency_list'.
@epythonlab #codetip #ml #AI #naive_bayes
π5
Congratulations We have implemented BoW from scratch using Python.
Here is a Partially mplementation of spam classifier using naive_bayes algorithm
https://t.me/epythonlab/689
In this post we have implemented bag of words without using scikit learn library.
We have followed lots of steps to implement BoW without library.
1. Convert all strings to their lowercase
https://t.me/epythonlab/690
2. Removing all punctuations
https://t.me/epythonlab/691
3. Tokenize https://t.me/epythonlab/692
4. Count freequencies
https://t.me/epythonlab/693
N.B: Follow all steps above and implement BoW using scikit learn by yourself.
@epythonlab #AI #ML
Here is a Partially mplementation of spam classifier using naive_bayes algorithm
https://t.me/epythonlab/689
In this post we have implemented bag of words without using scikit learn library.
We have followed lots of steps to implement BoW without library.
1. Convert all strings to their lowercase
https://t.me/epythonlab/690
2. Removing all punctuations
https://t.me/epythonlab/691
3. Tokenize https://t.me/epythonlab/692
4. Count freequencies
https://t.me/epythonlab/693
N.B: Follow all steps above and implement BoW using scikit learn by yourself.
@epythonlab #AI #ML
Telegram
EPYTHON LAB
Project Idea: Building a spam classifier
Introduction
Spam detection is one of the major applications of Machine Learning in the interwebs today. Pretty much all of the major email service providers have spam detection systems built in and automaticallyβ¦
Introduction
Spam detection is one of the major applications of Machine Learning in the interwebs today. Pretty much all of the major email service providers have spam detection systems built in and automaticallyβ¦
π7
Epython Lab
Congratulations We have implemented BoW from scratch using Python. Here is a Partially mplementation of spam classifier using naive_bayes algorithm https://t.me/epythonlab/689 In this post we have implemented bag of words without using scikit learn library.β¦
Previously, we have implemented BoW without scikit-learn python based ML library. You can read the above post and We will now implement sklearn.feature_extraction.text.CountVectorizer method in the next step.
π5