AIML355 • Fundamentals of Deep Learning Lab
EXP07 — RNN for Stock Price Prediction
Record-ready template
Replace placeholders with your final work (code + outputs + screenshots).
Submission checklist
Aim ✓ • Environment ✓ • Dataset ✓ • Procedure ✓ • Code ✓ • Output ✓ • Discussion ✓ • Viva ✓
1) Aim
To implement an RNN model for stock price prediction in Python.
Learning outcomes
- Prepare time-series windows (lookback) and scaling.
- Train a SimpleRNN-based model for forecasting.
- Evaluate with MAE/MSE and compare predicted vs actual plots.
2) Requirements / Environment
Software
- Python 3.10+ (recommended)
- TensorFlow/Keras (or PyTorch where applicable)
- NumPy, Pandas, Matplotlib
- Jupyter/Colab optional
Hardware
- CPU is OK for small runs; GPU optional
- RAM: 4–8 GB+ recommended
Reproducibility
Record library versions and random seed in your final report.