Introduction to Artificial Intelligence and Deep Learning
Data Mining Unsupervised Learning
Key benefits/Learning Outcomes
Who should attend this program?
All those participants who have:
A system with a min of 4 GB RAM with decent processor (i5 core) should do.
The below softwares are required.
- Overview and Applications of AI
- Building AI Solutions using Deep Learning
- Deep Learning – Neural Network using Python & R
- Introduction to Python Libraries – Tensorflow, Keras, OpenCV
- Perception Algorithm and Back propagation Algorithm
- Artificial Neural Network(ANN) or Multilayer Perceptron
- Convolution Neural Network(CNN)
- Image Processing and Computer Vision
- Recurrent Neural Network(RNN)
- Long Short-term Memory(LSTM)
Data Mining Unsupervised Learning
- Gated Recurrent Network (GRU)
- Auto Encoder, Restricted Boltzmann Machine (RBM)
- Deep Belief Networks (DBN)
- Generative Adversarial Networks (GANs)
- Reinforcement Learning and Q-Learning
Key benefits/Learning Outcomes
- Understand about the Gated Recurrent Networks (GRU)
- Learn on how to build AI systems using Deep Learning Algorithms
- Be able to deal with unstructured data such as images, videos, text etc.
- Be able to implement Deep Learning Solutions and image processing applications using convolutional networks
- Be introduced to analyze sequence data and perform Text analytics and Natural Language Processing (NLP) using recurrent networks
- Be able to effectively use various Python libraries such as Keras, Tensorflow, OpenCV, etc. which are used in solving AI and Deep Learning problems
Who should attend this program?
All those participants who have:
- Basic idea about programming
- Basic mathematical knowledge should be good to start with the program
- Candidates aspiring to become Data Scientists or Deep Learning & AI experts
- Analytics Managers / Professionals, Business Analyst, Developer
- People who are looking to build a career in Machine Learning, Deep Learning and AI
- Employees of organizations, who are planning to focus on building AI applications
- Students can also take up this program to guide their career towards the space of AI
A system with a min of 4 GB RAM with decent processor (i5 core) should do.
The below softwares are required.
- Python and Anaconda (IDE)
- R and RStudio
- MS Office
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