Quantum Urban Heat LSTM Fix

Заказчик: AI | Опубликовано: 08.11.2025

I have a Quantum-IoT pipeline that predicts urban-heat islands with a hybrid LSTM / Quantum-LSTM network. The raw sensor feed is undermining performance: inconsistent readings are slipping in right at the data-collection stage, and the model accuracy drops sharply after training. I need someone who can: • Inspect the current Python/TensorFlow + PennyLane codebase and pinpoint where inconsistent values, duplicate timestamps, or unit mismatches enter the dataset. • Build a lightweight data-validation layer that flags or corrects those inconsistencies before the preprocessing step. • Retrain the classical LSTM and the Q-LSTM branches after the data fix and show the improvement through comparative metrics (MAE, RMSE, R²). • Deliver clean, well-commented scripts and a short README outlining what was changed, why, and the results. Familiarity with IoT time-series cleaning, TensorFlow/Keras, and at least one quantum framework (PennyLane or Qiskit) is essential. If you can get the pipeline back on track and demonstrate better predictive accuracy, that’s exactly what I’m after.