DeepLearning For Finance
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Introduction to Deep Learning
Introduction to Deep Learning
From Traditional Models to Deep Learning
The Multi-Layer Perceptron (MLP)
Automatic Differentiation: The Engine of Deep Learning
Computation Backends & Keras 3
GPUs and Deep Learning: When Hardware Matters
Keras Fundamentals: Models & Layers
Keras Matrix Operations: The Building Blocks
Activation Functions: Adding Non-linearity
Model Training Fundamentals
Travaux Pratiques
TP1: Building Neural Networks - From Simple to Custom Implementations
Recurrent Neural Networks
Recurrent Neural Networks
Sequential Data Processing: From MLPs to RNNs
Long Short-Term Memory Networks (LSTM)
Modern RNN Architectures
RNN Limitations: Computational Challenges
Travaux Pratiques
TP: Recurrent Neural Networks for Time Series Prediction
Training a Neural Network
Training a Neural Network
Understanding the Training Loop
Understanding Optimizers
Understanding Callbacks
Training Parameters and Practical Considerations
Travaux Pratiques
TP: Using Deep Learning Frameworks for General Optimization
TP: Impact of Callbacks on Training
Essential Building Blocks of Modern Neural Networks
Essential Building Blocks of Modern Neural Networks
Residual Connections and Gating Mechanisms
Convolutional Layers: From Images to Time Series
Neural Network Embeddings: Learning Meaningful Representations
Attention Mechanisms: Learning What to Focus On
Encoder-Decoder Architectures
Travaux Pratiques
Practical Assignment: Building a Transformer-Based Architecture for Time Series Forecasting
Code source
Introduction to Deep Learning
Remi Genet
2025-02-18
Les cours de cette partie sont:
Activation Functions: Adding Non-linearity
Understanding activation functions, their mathematical properties, and roles in neural networks.
Remi Genet
2025-02-18
Automatic Differentiation: The Engine of Deep Learning
A technical deep-dive into gradient computation methods, highlighting why automatic differentiation became the backbone of modern machine learning.
Remi Genet
2025-02-18
Computation Backends & Keras 3
Understanding the ecosystem of deep learning frameworks and how Keras 3 abstracts hardware acceleration through backend engines.
Remi Genet
2025-02-18
From Traditional Models to Deep Learning
Foundations of machine learning and econometric modeling, introducing deep learning as a flexible function approximation paradigm for financial problems.
Remi Genet
2025-02-18
GPUs and Deep Learning: When Hardware Matters
Understanding the role of specialized hardware in accelerating neural network training, and why modern AI relies on GPUs.
Remi Genet
2025-02-18
Keras Fundamentals: Models & Layers
Understanding Keras’ core abstractions for building neural networks through its layered architecture and model composition paradigms.
Remi Genet
2025-02-18
Keras Matrix Operations: The Building Blocks
Understanding fundamental matrix operations in Keras that form the basis of all neural network computations, with a focus on practical examples and shape manipulation.
Remi Genet
2025-02-18
Model Training Fundamentals
Essential workflow for training neural networks in Keras, covering the basic steps from model creation to prediction.
Remi Genet
2025-02-18
The Multi-Layer Perceptron (MLP)
The MLP is the fundamental building block of deep learning. This chapter breaks down its biological inspiration, mathematical formulation, and financial applications.
Remi Genet
2025-02-18
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From Traditional Models to Deep Learning