Course Content
Day-2: How to use VScode (an IDE) for Python?
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Day-3: Basics of Python Programming
This section will train you for Python programming language
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Day-4: Data Visualization and Jupyter Notebooks
You will learn basics of Data Visualization and jupyter notebooks in this section.
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Day-5: MarkDown language
You will learn whole MarkDown Language in this section.
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Day-10: Data Wrangling and Data Visualization
Data Wrangling and Visualization is an important part of Exploratory Data Analysis, and we are going to learn this.
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Day-11: Data Visualization in Python
We will learn about Data Visualization in Python in details.
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Day-12,13: Exploratory Data Analysis (EDA)
EDA stands for Exploratory Data Analysis. It refers to the initial investigation and analysis of data to understand the key properties and patterns within the dataset.
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Day-15: Data Wrangling Techniques (Beginner to Pro)
Data Wrangling in python
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Day-26: How to use Conda Environments?
We are going to learn conda environments and their use in this section
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Day-37: Time Series Analysis
In this Section we will learn doing Time Series Analysis in Python.
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Day-38: NLP (Natural Language Processing)
In this section we learn basics of NLP
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Day-39: git and github
We will learn about git and github
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Day-40: Prompt Engineering (ChatGPT for Social Media Handling)
Social media per activae rehna hi sab kuch hy, is main ap ko wohi training milay ge.
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Python ka Chilla for Data Science (40 Days of Python for Data Science)
    Join the conversation
    Zeeshan Saleem 12 hours ago
    Masha Allah sir, great lecture. God bless you.
    Reply
    Muhammad Walid 1 month ago
    MashaAllah sir. great i have a learned a lot of things in this lecture. than you
    Reply
    Muhammad Haroon 10 months ago
    a = cluster sampling b = systematic sampling c = random sampling d = systematic sampling e = stratified sampling
    Reply
    shafiq ahmed 11 months ago
    Arsy ki malomat ko cross sectional data kehty hian
    Reply
    shafiq ahmed 11 months ago
    cluster
    Reply
    komal Baloch 11 months ago
    Cross-sectional data is like taking a photo of a group of people all at once. It shows what they're like at that exact moment, but it doesn't follow them over time. For example, if you want to know what TV shows people like, you can ask a bunch of people at one time, and that data is cross-sectional. It's like a snapshot of their preferences at that moment.
    Reply
    komal Baloch 11 months ago
    done
    Reply
    Shadat Ali 11 months ago
    Murshid, your teaching method is very beautiful and very easy for students
    Reply
    Muhammad Awais 11 months ago
    Perfect😊
    Reply
    Irum Kashif 11 months ago
    Amazing teaching style with good knowledge.
    Reply