Exp 7 — RNN for stock price prediction

Record-ready template Fill placeholders with your dataset, code, outputs, plots, and viva.
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.

3) Dataset

  • Source: Use historical stock data from a public source (e.g., Yahoo Finance via yfinance) and cite it.
  • Features/Labels: [Describe X and y; mention classes if classification]
  • Split: [Train/Validation/Test or K-fold]
  • Preprocessing: [Scaling/Normalization, resizing, tokenization, etc.]

4) Procedure / Steps

  1. Load dataset and perform preprocessing.
  2. Define model architecture and justify key choices.
  3. Compile model (loss + optimizer + metrics).
  4. Train with validation and log curves.
  5. Evaluate on test set and compute required metrics.
  6. Summarize observations and limitations.
Model hint
SimpleRNN + Dense head; compare lookback windows.

5) Code (Skeleton)

Paste your complete runnable code below (or attach notebook link in the final submission).

import numpy as np
import pandas as pd
import tensorflow as tf
from tensorflow import keras

# TODO: load stock series into a 1D array 'series'
# TODO: scale
# TODO: create windows (lookback)

model = keras.Sequential([
  keras.layers.Input(shape=(LOOKBACK, 1)),
  keras.layers.SimpleRNN(64),
  keras.layers.Dense(1)
])
model.compile(optimizer='adam', loss='mse', metrics=['mae'])

6) Results / Output

  • Metrics: [Write your final values: accuracy/F1 or MAE/MSE]
  • Plots: [Attach loss/metric curves; prediction vs actual plots if forecasting]
  • Screenshots: [Paste screenshots of outputs, confusion matrix, sample predictions]

7) Observations / Discussion

  • [Observation 1: what changed when you tuned epochs/batch size?]
  • [Observation 2: evidence of overfitting/underfitting?]
  • [Observation 3: what improved performance (augmentation, regularization, fine-tuning)?]

8) Conclusion

Write 3–6 lines summarizing what you implemented, key result, and what you learned.

9) Viva Questions

  1. What is a lookback window?
  2. Why do we scale time-series before training?
  3. What is the difference between training and validation data?
  4. Explain overfitting and two ways to reduce it.
  5. Why do we normalize/scale inputs?
  6. What does batch size and epoch mean?
  7. How do you choose a loss function for a task?

10) Post-lab Assignment

  • Compare SimpleRNN with LSTM and report differences.
  • Try multi-step forecasting (predict next k points).
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