Course Information
- Available
- *The delivery and distribution of the certificate are subject to the policies and arrangements of the course provider.
Course Overview
Apply Data Science using Python, Statistical Techniques, EDA, Numpy, Pandas, Scikit Learn, Statsmodel Libraries
Are you aspiring to become a Data Scientist or Machine Learning Engineer? if yes, then this course is for you.
In this course, you will learn about core concepts of Data Science, Exploratory Data Analysis, Statistical Methods, role of Data, Python Language, challenges of Bias, Variance and Overfitting, choosing the right Performance Metrics, Model Evaluation Techniques, Model Optmization using Hyperparameter Tuning and Grid Search Cross Validation techniques, etc.
You will learn how to perform detailed Data Analysis using Pythin, Statistical Techniques, Exploratory Data Analysis, using various Predictive Modelling Techniques such as a range of Classification Algorithms, Regression Models and Clustering Models. You will learn the scenarios and use cases of deploying Predictive models.
This course covers Python for Data Science and Machine Learning in great detail and is absolutely essential for the beginner in Python.
Most of this course is hands-on, through completely worked out projects and examples taking you through the Exploratory Data Analysis, Model development, Model Optimization and Model Evaluation techniques.
This course covers the use of Numpy and Pandas Libraries extensively for teaching Exploratory Data Analysis. In addition, it also covers Marplotlib and Seaborn Libraries for creating Visualizations.
There is also an introductory lesson included on Deep Neural Networks with a worked-out example on Image Classification using TensorFlow and Keras.
And in the last section, you will learn how to create a FAST API using your ML Model just as you need to deploy your Model in production, and invoke the FAST API from a Streamlit UI.
Course Sections:
Introduction to Data Science
Use Cases and Methodologies
Role of Data in Data Science
Statistical Methods
Exploratory Data Analysis (EDA)
Understanding the process of Training or Learning
Understanding Validation and Testing
Python Language in Detail
Setting up your DS/ML Development Environment
Python internal Data Structures
Python Language Elements
Pandas Data Structure – Series and DataFrames
Exploratory Data Analysis (EDA)
Learning Linear Regression Model using the House Price Prediction case study
Learning Logistic Model using the Credit Card Fraud Detection case study
Evaluating your model performance
Fine Tuning your model
Hyperparameter Tuning for Optimising our Models
Cross-Validation Technique
Learning SVM through an Image Classification project
Understanding Decision Trees
Understanding Ensemble Techniques using Random Forest
Dimensionality Reduction using PCA
K-Means Clustering with Customer Segmentation
Introduction to Deep Learning
Bonus Module: Time Series Prediction using ARIMA
Building a FAST API to deploy your ML Model
Course Content
- 15 section(s)
- 119 lecture(s)
- Section 1 Introduction to Data Science
- Section 2 Statistical Techniques
- Section 3 Python for Data Science
- Section 4 Exploratory Data Analysis (EDA)
- Section 5 Machine Learning
- Section 6 Linear Regression
- Section 7 Logistic Regression
- Section 8 Unsupervised Learning - K-Mean Clustering
- Section 9 Naive Bayes Probability Model
- Section 10 Classfication using Decision Trees
- Section 11 Ensemble Methods - Random Forest
- Section 12 Advanced Classification Techniques - Support Vector Machine
- Section 13 Dimensionality Reduction using PCA
- Section 14 Introduction to Deep Learning
- Section 15 Bonus Section - Learning Time Series Prediction with ARIMA
What You’ll Learn
- Data Science Core Concepts in Detail
- Data Science Use Cases, Life Cycle and Methodologies
- Exploratory Data Analysis (EDA)
- Statistical Techniques
- Detailed coverage of Python for Data Science and Machine Learning
- Regression Algorithm - Linear Regression
- Classification Problems and Classification Algorithms
- Unsupervised Learning using K-Means Clustering
- Dimensionality Reduction Techniques (PCA)
- Feature Engineering Techniques
- Model Optimization using Hyperparameter Tuning
- Model Optimization using Grid-Search Cross Validation
- Introduction to Deep Neural Networks
Skills covered in this course
Reviews
-
SShailesh Panghate
Yes
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EEdgar
If you have already some general knowledge, this course will give you good insight with some real examples about data science and machine learning. Overall good one!
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MMuritala Muhydeen Babatunde
The best introduction so far
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MMellisa Mbawa
good course to take