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Data Science and Machine Learning using Python: Bootcamp
Python to analyze data, create a state-of-the-art visualization, and use machine learning to facilitate decision-making
Development ,Data Science,Machine Learning
Lectures -109
Resources -7
Duration -24.5 hours
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Course Description
Greetings,
I am so excited to learn that you have started your path to becoming a Data Scientist with my course. Data Scientist is an in-demand and satisfying career, where you will solve the most interesting problems and challenges in the world. Not only, you will earn an average salary of over $100,000 p.a., but you will also see the impact of your work around your, is not amazing?
This is one of the most comprehensive courses on any e-learning platform (including Tutorialspoint marketplace) which uses the power of Python to learn exploratory data analysis and machine learning algorithms. You will learn the skills to dive deep into the data and present solid conclusions for decision-making.
Data Science Bootcamps are costly, in thousands of dollars. However, this course is only a fraction of the cost of any such Bootcamp and includes HD lectures along with detailed code notebooks for every lecture. The course also includes practice exercises on real data for each topic you cover, because the goal is "Learn by Doing"!
For your satisfaction, I would like to mention a few topics that we will be learning in this course:
Basis Python programming for Data Science.
Data Types, Comparisons Operators, if, else, elif statement, Loops, List Comprehension, Functions, Lambda Expression, Map and Filter.
NumPy.
Arrays, built-in methods, array methods and attributes, Indexing, slicing, broadcasting & boolean masking, Arithmetic Operations & Universal Functions
Pandas.
Pandas Data Structures - Series, DataFrame, Hierarchical Indexing, Handling Missing Data, Data Wrangling - Combining, merging, joining, Groupby, Other Useful Methods and Operations, Pandas Built-in Data Visualization.
Matplotlib.
Basic Plotting & Object-Oriented Approach.
Seaborn.
Distribution & Categorical Plots, Axis Grids, Matrix Plots, Regression Plots, Controlling Figure Aesthetics.
Plotly and Cufflinks.
Interactive & Geographical plotting.
SciKit-Learn (one of the world's best machine-learning Python libraries).
Liner Regression.
Overfitting, Under fitting Bias Variance Trade-off, saving and loading your trained Machine Learning Models.
Logistic Regression.
Confusion Matrix, True Negatives/Positives, False Negatives/Positives, Accuracy, Misclassification Rate / Error Rate, Specificity, Precision.
K Nearest Neighbour (KNN).
Curse of Dimensionality, Model Performance.
Decision Trees.
Tree Depth, Splitting at Nodes, Entropy, Information Gain.
Random Forests.
Bootstrap, Bagging (Bootstrap Aggregation).
K Mean Clustering.
Elbow Method.
Principle Component Analysis (PCA).
Support Vector Machine.
Recommender Systems.
Natural Language Processing (NLP).
Tokenization, Text Normalization, Vectorization, Bag-of-Words (BoW), Term Frequency-Inverse Document Frequency (TF-IDF), Pipeline .
Not only the hands-on practice using tens of real data projects, theory lectures are also provided to make you understand the working principle behind the Machine Learning models.
So, what are you waiting for, this is your opportunity to learn real Data Science at a fraction of the cost of any of your undergraduate courses.....!
A brief overview of Data around us:
According to IBM, we create 2.5 Quintillion bytes of data daily and 90% of the existing data in the world today, has been created in the last two years alone. Social media, transactions records, cell phones, GPS, emails, research, medical records and much more…., the data comes from everywhere which has created a big talent gap and the industry, across the globe, is experiencing shortage of experts who can answer and resolve the challenges associated with the data. Professionals are needed in the field of Data Science who are capable of handling and presenting the insights of the data to facilitate decision making. This is the time to get into this field with the knowledge and in-depth skills of data analysis and presentation.
Have Fun and Good Luck!
Who is this course for?
- For you, if you:
- want to learn Data Science with Python.
- want to learn Machine Learning with Python.
- are tired of complicated courses and "Learn by Doing".
Goals
Python to analyze data, create state-of-the-art visualization and use machine learning algorithms to facilitate decision-making.
Python for Data Science and Machine Learning.
NumPy for Numerical Data.
Pandas for Data Analysis.
Plotting with Matplotlib.
Statistical Plots with Seaborn.
Interactive dynamic visualizations of data using Plotly.
SciKit-Learn for Machine Learning.
K-Mean Clustering, Logistic Regression, Linear Regression.
Random Forest and Decision Trees.
Principal Component Analysis (PCA).
Support Vector Machines.
Recommender Systems.
Natural Language Processing and Spam Filters.
Prerequisites
A PC and passion to be successful!
Some experience in programming could be helpful but not required!

Curriculum
Check out the detailed breakdown of what’s inside the course
Welcome, Course Introduction & overview, and Environment set-up
5 Lectures
-
Welcome & course Overview 07:20 07:20
-
Set-up the Environment for the Course (lecture 1) 09:10 09:10
-
Set-up the Environment for the Course (lecture 2) 25:18 25:18
-
Two other options to setup environment 03:34 03:34
-
Resources
Python Essentials
7 Lectures

Python for Data Analysis using NumPy
6 Lectures

Python for Data Analysis Using pandas
14 Lectures

Python for Data Visualization Using Matplotlib
5 Lectures

Python for Data Visualization using seaborn
10 Lectures

Python for Data Visualization using Pandas
3 Lectures

Python for Interactive & Geographical plotting using plotly and cufflinks
5 Lectures

Capstone project - python for data analysis & Visualization
5 Lectures

Python for Machine Learning(ML) - Scikit - learn- Linear Regression Model
8 Lectures

Python for Machine learning - Scikit-learn-logistic Regression Model
6 Lectures

Python for Machine Learning - Scikit-learn-K Nearest Neighbors
4 Lectures

Python for Machine Learning - Scikit - learn-Decision tree and Random Forests
5 Lectures

Python for machine Learning - Scikit-learn-support vector machines(SVMs)
6 Lectures

Python for machine Learning - scikit -learn-K means Clustering
4 Lectures

Python for Machine Learning - Scikit-learn- principal componet Analysis(PCA)
4 Lectures

Recommender System with Python -(Additional Topic)
3 Lectures

Python for Natural Language Processing(NLP)- NLTK -(Additional Topic)
7 Lectures

Thank you and closing remarkss
2 Lectures

Instructor Details

Dr Junaid Qazi
Diverse academic background along with educational journey across Asia, Europe and North America has honed Dr. Qazi with adaptability, determination and internationalization. As a passionate professional, He has always been ready to learn new techniques to fulfil the needs of his students. He has participated in several professional trainings on teaching and project management. Now, Dr Qazi believes that he can use his experience to help his students acquire the skills to analyze data and present a clear story line with beautiful visualizations in their reports to facilitate industry leaders in decision making.
Dr. Qazi look forward to see you in his course on Data Science and Machine Learning. Good Luck!
P.S. Dr. Qazi can be reached via LinkedIn for more information on in-person and group training.
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