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1
Intro
2
AI and Machine Learning
3
Accuracy vs Recall
4
Programming
5
Bias
6
Linear Discriminator
7
Model
8
Output
9
H function
10
Mean squared error
11
Parabola example
12
Gradient Descent
13
Tensor Flow
14
TensorFlow Flow
15
Accuracy
16
Visual Studio
17
Training the model
18
Summary operation
19
Logs
20
Optimization Graph
21
Freezing a Model
22
Inference
23
Linear Model
24
Mathematical Induction
25
Activation Function
26
Derivatives
27
BackPropagation
28
Multilayer Perceptron
29
Atom Optimizer
Description:
Explore the fundamentals of TensorFlow in this comprehensive conference talk. Dive into an interactive discussion covering basic elements of the framework and their composition for creating deep learning machine learning models. Gain a strong foundation in both creating and consuming deep learning models in applications. Begin with an introduction to AI and machine learning concepts, including accuracy vs recall and bias. Progress through programming concepts, linear discriminators, and model outputs. Understand key mathematical concepts like mean squared error, gradient descent, and mathematical induction. Delve into TensorFlow specifics, including TensorFlow flow, accuracy measurement, and training models. Learn about optimization graphs, freezing models, and inference. Explore advanced topics such as linear models, activation functions, derivatives, backpropagation, and multilayer perceptrons. Conclude with an overview of the Atom Optimizer. No prior exposure to TensorFlow is required, though a basic understanding of deep learning concepts is helpful. Read more

Deep Learning with TensorFlow

NDC Conferences
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