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OpTeamizer’s Deep Learning 3 Days Course

Course length

3 days

Course Price

OpTeamizer’s Deep Learning 3 Days Course


Tomer Gal

CTO at OpTeamizer Ltd
An NVIDIA Preferred Partner, Deep Learning AI Institute
A lecturer for the hi-tech industry and also in the academy
DLI-certified Instructor of CUDA and Deep Learning courses
NVIDIA DLI University Ambassador
More than 10 years of GPU development experience
Making many years of GPU development experience accessible to you and your team.

To register this course or get more information - contact us via contact form on this website or call us:
| ☎ +972 (54) 746-7477
| ☎ +972 (54) 213-1337
| ☎ +972 (3)-953-3365


About the course


Upcoming dates

Information soon...

This course showcases the field of Deep Learning, concepts and algorithms in this branch of Machine Learning, and its implementation using modern neural network systems.
The labs in this course will use Python and Keras.
We will learn about the structure of neural networks, training techniques, CNN architectures, and we will analyze existing architectures and models.

Course Name: Deep Learning Course – 3 Days Course

Duration: 3 days

Course Prerequisites: Knowledge of / experience with some programming language.
Background in Python will serve as advantage, but is not a mandatory requirement.
Basic mathematical background in the fields of linear algebra, differential calculus.

Labs: Participants are to bring a Laptop with them to the Lab. There is no need to install any software prior to the labs.

★ Course Description – Day 1:

- Introduction to Neural Networks

- Basics of Neural Network Programming – Binary classification, Logistic regression, cost function, gradient descent, derivatives, computation graph.

- Shallow Neural Network – Neural networks with several layer, activation function, initialization.

- Lab – Logistic regression with Neural Network mindset.

★ Course Description – Day 2:

- Deep Neural Networks – DNNs, parameter dimensions, why deep representations, forward and backward propagation, parameters vs. hyper parameters.

- Convolutional Neural Networks – Motivation, padding, strides, volume, multiple filters, pooling layers, convnet example.

- Detection Algorithms – classification with localization, sliding windows, fully connected to convolutional layer, bounding box prediction, IOU, NMS, anchor boxes.

- Lab – Car detection with YOLO and Keras.

★ Course Description – Day 3:

- CNN Architectures – AlexNet, VGG, GoogLeNet, ResNet.

- Deep Learning hardware and Software(TensorFlow/PyTorch).

- Optimization algorithms – Mini batch, exponentially weighted moving average, bias correction, gradient
descent with momentum, RMSprop, ADAM.

- Recurrent Neural Networks – RNNs, computational graph, backpropagation through time, image captioning, LSTM.

Upcoming Dates: (Information Soon)

Lunch included at Carlton Hotel.

Enroll to receive price and course information.

Eliezer Peri St 10 (Carlton Hotel), Tel Aviv, Israel

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