Instructor-Led Workshop
Businesses worldwide are using artificial intelligence to solve their greatest challenges. Healthcare professionals use AI to enable more accurate, faster diagnoses in patients. Retail businesses use it to offer personalized customer shopping experiences. Automakers use it to make personal vehicles, shared mobility, and delivery services safer and more efficient. Deep learning is a powerful AI approach that uses multi-layered artificial neural networks to deliver state-of-the-art accuracy in tasks such as object detection, speech recognition, and language translation. Using deep learning, computers can learn and recognize patterns from data that are considered too complex or subtle for expert-written software.
In this workshop, you’ll learn how deep learning works through hands-on exercises in computer vision and natural language processing. You’ll train deep learning models from scratch, learning tools and tricks to achieve highly accurate results. You’ll also learn to leverage freely available, state-of-the-art pre-trained models to save time and get your deep learning application up and running quickly.
By participating in this workshop, you’ll:
Introduction (15 mins) |
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The Mechanics of Deep Learning (120 mins) |
Explore the fundamental mechanics and tools involved in successfully training deep neural networks: |
Pre-trained Models and Recurrent Networks (120 mins) |
Leverage pre-trained models to solve deep learning challenges quickly. Train recurrent neural networks on sequential data: |
Final Project: Object Classification (120 mins) |
Apply computer vision to create a model that distinguishes between fresh and rotten fruit: |
Final Review (15 mins) |
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Start of workshop: 9:00 am. Breaks will be allocated by the instructor, including one hour for lunch. Workshop finishes by 5:30 pm.
Duration: 8 hours
Prerequisites: An understanding of fundamental programming concepts in Python 3, such as functions, loops, dictionaries, and arrays; familiarity with Pandas data structures; and an understanding of how to compute a regression line.
Suggested materials to satisfy prerequisites: Python Beginner’s Guide.
Technologies: Tensorflow 2 with Keras, Pandas
Assessment Type: Skills-based coding assessments evaluate students’ ability to train a deep learning model to high accuracy.
Certificate: Upon successful completion of the assessment, participants will receive an NVIDIA DLI certificate to recognize their subject matter competency and support professional career growth.
Hardware Requirements: Laptop computer capable of running the latest version of Chrome or Firefox. Each participant will be provided with dedicated access to a fully configured, GPU-accelerated server in the cloud.
Language: English