Introduction to
Deep Learning
Suriyadeepan Ramamoorthy
Machine Learning
Paradigms
Supervised Learning
Unsupervised Learning
Reinforcement Learning
Supervised Learning
Supervised Learning
Data : (X, y)
Model p( y | X )
Unavailability of labelled data
Data Tagging
Unsupervised Learning
Unsupervised Learning
Exploit inherent latent structure in data
Generative Modeling
Model p(x)
Generate new samples from model
Reinforcement Learning
Reinforcement Learning
Unknown Environment
Not-so-well-defined objective
Learn through Self-play
Deep Learning
Deep Learning
Deep Learning
Applications
Computer Vision
Speech Recognition and Synthesis
Language Understanding
Machine Translation
Dialogue Systems
Question Answering
Recommendation Systems
Robotics
Convolutional
Neural Networks
Convolution
CNN
CNN
Recurrent Neural Networks
RNN
Learning
Linear Regression
Linear Regression
Gradient Descent
Gradient Descent
Multi-layer Perceptron
Backprop
Research
Genomics
DecaNLP
Interpretability
Interpretability
Interpretability
Question Answering
Bayesian Learning
Bayesian Learning
Bayesian Learning
Bayesian Learning
Bayesian Learning
Hyperopt
Hyperopt
Made with Slides.com