Course Information
- Available
- *The delivery and distribution of the certificate are subject to the policies and arrangements of the course provider.
Course Overview
If you have any quantitative, STEM or business background this course is for you to break into data science using Python
Let me tell you my story. I graduated with my Ph. D. in computational nano-electronics but I have been working as a data scientist in most of my career. My undergrad and graduate major was in electrical engineering (EE) and minor in Physics. After first year of my job in Intel as a "yield analysis engineer" (now they changed the title to Data Scientist), I literally broke into data science by taking plenty of online classes. I took numerous interviews, completed tons of projects and finally I broke into data science. I consider this as one of very important achievement in my life. Without having a degree in computer science (CS) or a statistics I got my second job as a Data Scientist. Since then I have been working as a Data Scientist.
If I can break into data science without a CS or Stat degree I think you can do it too!
In this class allow me sharing my journey towards data science and let me help you breaking into data science. Of course it is not fair to say that after taking one course you will be a data scientist. However we need to start some where. A good start and a good companion can take us further.
We will definitely discuss Python, Pandas, NumPy, Sk-learn and all other most popular libraries out there. In this course we will also try to de-mystify important complex concepts of machine learning. Most of the lectures will be accompanied by code and practical examples. I will also use “white board” to explain the concepts which cannot be explained otherwise. A good data scientist should use white board for ideation, problem solving. I also want to mention that this course is not designed towards explaining all the math needed to “practice” machine learning. Also, I will be continuously upgrading the contents of this course to make sure that all the latest tools and libraries are taught here. Stay tuned!
Course Content
- 16 section(s)
- 110 lecture(s)
- Section 1 Data Science Tool Box
- Section 2 Python Crash Course
- Section 3 Obtaining Data
- Section 4 Cleaning Data
- Section 5 Exploratory Data Analysis (EDA)
- Section 6 Data Visualization
- Section 7 Data Wrangling/Manipulation
- Section 8 Predictive Analysis with Machine Learning
- Section 9 Linear Regression
- Section 10 Logistic Regression
- Section 11 Multinomial Logistic Regression
- Section 12 Naive Bayes Algorithm
- Section 13 Decision Tree Based Algorithm
- Section 14 K-NN Classifier
- Section 15 Important Machine Learning Concepts
- Section 16 Journey to be a Data Scientist
What You’ll Learn
- How to use Python for Data Science Applications
- Python Libraries: Pandas, NumPy, Sci-kit learn
- Data Visualization Libraries: Matplotlib, Seaborn, Plotly
- Exploratory data Analysis (EDA), Descriptive Analysis, Predictive Modeling using Machine Learning
- Data Science Best Practices: How techniques and tools are being used by Data Scientist in industries.
- Machine Learning Model: Linear and Logistics Regression, KNN, Naive Bayes, Multinomial Models
- Why and when to use a particular ML Models
Reviews
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KKenny James
Simply, A M A Z I N G! thank you sir!
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AAdnan Kashem
Clear explanations and very well organised course
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TThomas Oluwasegun Olubunmi
well structured lessons
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JJesse Arthur
Getting the environment set up