Training
Taining
-
Applications of AI for Anomaly Detection
2 hrs
Learn to detect anomalies in large data sets to identify network intrusions using supervised and unsupervised machine learning techniques, such as accelerated XGBoost, autoencoders, and generative adversarial networks (GANs).
Apply Course
PREREQUISITES: Experience with CNNs and Python
TOOLS AND FRAMEWORKS: Keras, GANs
LANGUAGES: English
DURATION: 2 hours -
Clustering
2 hrs
Learn the theoretical foundations of clustering along with fundamental and advanced clustering methods such as distance based, iterative, hierarchical, continuous and categorical, density based methods. Dive into a deeper analysis with measures to analyze quality of clustering and its applications.
Apply Course
PREREQUISITES: Basic machine learning and python.
TOOLS AND FRAMEWORKS: Python, sci-kit learn, Tensor flow.
LANGUAGES: English
DURATION: 2 hours -
Coarse-to-Fine Contextual Memory for Medical Imaging
2 hrs
Learn how to improve traditional architectures using coarse-to-fine context memory. Apply it to medical image segmentation and classification tasks.
PREREQUISITES: Experience with CNNs and long short-term memory (LSTM)
TOOLS AND FRAMEWORKS:TensorFlow
LANGUAGES:English
DURATION:2 hours -
Deep Learning
4 hrs
PREREQUISITES:Neural Networks and python
Apply Course
TOOLS AND FRAMEWORKS:Tensorflow, Keras, PyTorch
LANGUAGES:English
DURATION:4 hours -
Deep Learning For Creating Digital Content
2 hrs
Learn character animation, transferring styles between images and videos, denoising images using neural networks.
PREREQUISITES: Basic familiarity with deep learning concepts, such as CNNs and experience
with Python.
TOOLS AND FRAMEWORKS: TensorFlow, Torch .
LANGUAGES: English
DURATION: 2 hours -
Deep Learning for Intelligent Video Analytics
2 hrs
Learn to develop deep neural networks for object detection, localization and tracking.
PREREQUISITES: Experience with deep networks (specifically variations of CNNs) and intermediate level experience with C++ and Python.
Apply Course
TOOLS AND FRAMEWORKS: TensorFlow
LANGUAGES: English
DURATION: 2 hours -
Deep Learning Network Optimization
4 hrs
PREREQUISITES: Neural Networks and python.
Apply Course
TOOLS AND FRAMEWORKS: Tensorflow, Keras, PyTorch
LANGUAGES: English
DURATION: 4 hours -
Introduction Of Machine Learnig (Advance)
2 Days | 18 hrs
Mathematics for Machine Learning
1. Introduction to Calculus, Linear Algebra, Probability, Statistics and Random Variables
2. Introduction to Python, numpy, pandas etc.
3. Python assignments.Machine Learning Basics
1. Fundamentals of Machine Learning
2. Application in Machine Learning- Classification, Regression etc.
3. Introduction to the theory and algorithms of :
→ Supervised Learning
→ Semi Supervised Learning
→ Unsupervised Learning
→ Graphical Models
→ Predictive ModellingPractical Machine Learning-Frameworks
1. Machine Learning Frameworks :
→ Google COLAB
→ Sci-kit-learn
→ TensorFlow
→ PyTorch
→ Keras
2. Industry grade tools and technologies for implementing a practical machine learning project
3. Assignments – classification, regression and mathematical models
QuizNeural Network and Deep Learning
1. Introdution to theory of neural networks and stochastic gradient descent
2. Deep neural networks, CNN, RNN, Auto Encoders
3. LSTM, GAN, Capsule networksPractical Machine Learning – Your own models
1. Implementing a Neural Network from scratch
2. Implementing a Deep Neural Network (CNN, RNN, GAN) in Tensorflow/PyTorch
3. Developing AI projects and practical caveats in implementing machine learning models
4. Organizing Machine Learning ProjectsResearch and Applications
Apply Course
1. Applications of AI in Industry and Academia
2. Computer Vision
3. Natural Language Processing
4. What’s hot in AI research – a discussion on state of the art and recent trends in AI
Quiz -
Introduction Of Machine Learnig (Basic)
Day 1 | 8 hrs
Mathematics for Machine Learning
1. Introduction to Calculus
2. Introduction to Linear Algebra
3. Introduction to Probability & StatisticsMachine Learning Basics
1. Fundamentals of Machine Learning
2. Machine Learning Practical Applications: Classification, Regression etc.
3. Supervised Learning
4. Semi Supervised Learning
5.Unsupervised Learning
6. Neural Networks and Deep LearningPractical Machine Learning
1. Machine Learning Frameworks : Python, Google COLAB, TensorFlow, Pytorch, Keras
2. Code Classification and Time series Prediction Models
3. Implementing a Neural Network from ScratchQuiz
Apply Course