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Description

"Deep Learning and Machine Learning are one of the hottest tech fields to be in right now! The field is exploding with opportunities and career prospects. Machine/Deep Learning techniques are widely used in several sectors nowadays such as banking, healthcare, transportation and technology.
Machine learning
is the study of algorithms that teach computers to learn from experience. Through experience (i.e.: more training data), computers can continuously improve their performance.
Deep Learning
is a subset of Machine learning that utilizes multi-layer Artificial Neural Networks. Deep Learning is inspired by the human brain and mimics the operation of biological neurons. A hierarchical, deep artificial neural network is formed by connecting multiple artificial neurons in a layered fashion. The more hidden layers added to the network, the more “deep” the network will be, the more complex nonlinear relationships that can be modeled. Deep learning is widely used in self-driving cars, face and speech recognition, and healthcare applications.
The purpose of this course is to provide students with knowledge of key aspects of deep and machine learning techniques in a practical, easy and fun way. The course provides students with practical hands-on experience in training deep and machine learning models using real-world dataset. This course covers several technique in a practical manner, the projects include but not limited to:
(1) Train Deep Learning techniques to perform image classification tasks.
(2) Develop prediction models to forecast future events such as future commodity prices using state of the art Facebook Prophet Time series.
(3) Develop Natural Language Processing Models to analyze customer reviews and identify spam/ham messages.
(4) Develop recommender systems such as Amazon and Netflix movie recommender systems.
The course is targeted towards students wanting to gain a fundamental understanding of Deep and machine learning models. Basic knowledge of programming is recommended. However, these topics will be extensively covered during early course lectures; therefore, the course has no prerequisites, and is open to any student with basic programming knowledge. Students who enroll in this course will master deep and machine learning models and can directly apply these skills to solve real world challenging problems."
Who this course is for:
Data Scientists who want to apply their knowledge on Real World Case Studies
Deep Learning practitioners who want to get more Practical Assigmetns
Machine Learning Enthusiasts who look to add more projects to their Portfolio

What you'll learn

Deep Learning Practical Applications

Machine Learning Practical Applications

How to use ARTIFICIAL NEURAL NETWORKS to predict car sales

How to use DEEP NEURAL NETWORKS for image classification

How to use LE-NET DEEP NETWORK to classify Traffic Signs

How to apply TRANSFER LEARNING for CNN image classification

How to use PROPHET TIME SERIES to predict crime

How to use PROPHET TIME SERIES to predict market conditions

How to develop NATURAL LANGUAGE PROCESSING MODEL to analyze Reviews

How to apply NATURAL LANGUAGE PROCESSING to develop spam filder

How to use USER-BASED COLLABORATIVE FILTERING to develop recommender system

Requirements

  • You will need a copy of Adobe XD 2019 or above. A free trial can be downloaded from Adobe.
  • No previous design experience is needed.
  • No previous Adobe XD skills are needed.

Course Content

27 sections • 95 lectures
Expand All Sections
1-INTRODUCTION TO THE COURSE [QUICK WIN IN FIRST 10-12 MINS]
9
1.1-Welcome Message
1.2-Updates on Udemy Reviews
1.3-Course overview
1.4-EXTRA: Learning Path
1.5-ML vs. DL vs. AI
1.6-ML Deep Dive
1.7-Download Course Materials
1.8-EXTRA: ML vs DL vs AI
1.9-EXTRA: 5 Benefits of Jupyter Notebook
2-ANACONDA AND JUPYTER INSTALLATION
4
2.1-Download and Set up Anaconda
2.2-What is Jupyter Notebook
2.3-Install Tensorflow
2.4-How to run a Jupyter Notebook
3-PROJECT #1: ARTIFICIAL NEURAL NETWORKS - CAR SALES PREDICTION
12
3.1-Introduction
3.2-Theory Part 1
3.3-Theory Part 2
3.4-Theory Part 3
3.5-Theory Part 4
3.6-Theory Part 5
3.7-Project Overview
3.8-Import Data
3.9-Data Visualization Cleaning
3.10-Model Training 1
3.11-Model Training 2
3.12-Model Evaluation
4-PROJECT #2: DEEP NEURAL NETWORKS - CIFAR-10 CLASSIFICATION
14
4.1-Introduction
4.2-Theory Part 1
4.3-Theory Part 2
4.4-Theory Part 3
4.5-Theory Part 4
4.6-Problem Statement
4.7-Data Vizualization
4.8-Data Preparation
4.9-Model Training Part 1
4.10-Model Training Part 2
4.11-Model Evaluation
4.12-Save the Model
4.13-Image Augmentation Part 1
4.14-Image augmentation Part 2
5-PROJECT #3: PROPHET TIME SERIES - CHICAGO CRIME RATE
6
5.1-Introduction
5.2-Project Overview
5.3-Import Dataset
5.4-Data Vizualization
5.5-Prepare the Data
5.6-Make Predictions
6-PROJECT #4: PROPHET TIME SERIES - AVOCADO MARKET
6
6.1-Introduction
6.2-Load Avocado Data
6.3-Explore Dataset
6.4-Make Predictions Part 1
6.5-Make Predictions Part 2 (Region Specific)
6.6-Make Prediction Part 2.1
7-PROJECT #5: LE-NET DEEP NETWORK - TRAFFIC SIGN CLASSIFICATION
7
7.1-Introduction
7.2-Project Overview
7.3-Load Data
7.4-Data Exploration
7.5-Data Normalization
7.6-Model Training
7.7-Model Evaluation
8-PROJECT #6: NATURAL LANGUAGE PROCESSING - E-MAIL SPAM FILTER
9
8.1-Introduction
8.2-Naive Bayes Theory Part 1
8.3-Naive Bayes Theory Part 2
8.4-Spam Project Overview
8.5-Visualize Dataset
8.6-Count Vectorizer
8.7-Model Training Part 1
8.8-Model Training Part 2
8.9-Testing
9-PROJECT #7: NATURAL LANGUAGE PROCESSING - YELP REVIEWS
15
9.1-Introduction
9.2-Theory
9.3-Project Overview
9.4-Load Dataset
9.5-Visualize Dataset Part 1
9.6-Visualize Dataset Part 2
9.7-Exercise #1
9.8-Exercise #2
9.9-Exercise #3
9.10-Apply NLP to Data
9.11-Apply Count Vectorizer to Data
9.12-Model Training Part 1
9.13-Model Training Part 2
9.14-Model Evaluation Part 1
9.15-Model Evaluation Part 2
10-PROJECT #8: USER-BASED COLLABORATIVE FILTERING - MOVIE RECOMMENDER SYSTEM
7
10.1-Introduction
10.2-Theory
10.3-Project Overview
10.4-Import Movie Dataset
10.5-Visualize Dataset
10.6-Collaborative Filter One Movie
10.7-Full Movie Recomendation
11-Congratulations!! Don't forget your Prize :)
1
11.1-Bonus: How To UNLOCK Top Salaries (Live Training)