By the end of this course, learners will be able to identify the foundations of deep learning, analyze stock price datasets, apply preprocessing and feature scaling techniques, develop an RNN with LSTM layers, and evaluate predictions using real-world financial data.

Deep Learning RNN & LSTM: Stock Price Prediction

Deep Learning RNN & LSTM: Stock Price Prediction
This course is part of Deep Learning with Python: CNN, ANN & RNN Specialization

Instructor: EDUCBA
Included with
11 reviews
What you'll learn
Preprocess stock datasets with feature scaling and EDA.
Build and train RNNs with LSTM layers for time-series data.
Evaluate and visualize stock predictions using real datasets.
Skills you'll gain
- Artificial Neural Networks
- Data Transformation
- Development Environment
- Deep Learning
- Model Evaluation
- Predictive Modeling
- Predictive Analytics
- Model Training
- Model Optimization
- Financial Forecasting
- Time Series Analysis and Forecasting
- Recurrent Neural Networks (RNNs)
- Exploratory Data Analysis
- Data Preprocessing
- Forecasting
- Data Processing
- Statistical Visualization
- Feature Engineering
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Reviewed on Dec 27, 2025
The course offers excellent coverage of deep learning techniques for time-series forecasting in financial markets.
Reviewed on Dec 29, 2025
This course delivers solid theoretical understanding along with practical implementation of RNN and LSTM for stock forecasting.
Reviewed on Jan 6, 2026
The perfect blend of academic rigor and street-smart trading knowledge. I particularly loved the sections on handling non-stationarity and regime changes — topics most courses completely ignore.
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