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--- |
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license: apache-2.0 |
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tags: |
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- keras |
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- time-series |
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- lstm |
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- regression |
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datasets: |
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- output8.csv |
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metrics: |
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- mean_squared_error |
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model_name: my_model |
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--- |
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# bhaskar1 |
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The above model is a simple neural network built using TensorFlow/Keras. It is designed to perform a regression task, which means it predicts continuous numeric values based on input features. |
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# Keras Model for Time Series Prediction |
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This repository contains a Keras model trained for time series prediction. |
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## Model Overview |
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The model is a simple neural network built using Keras. It is designed to perform regression tasks, predicting a numeric value from input features. |
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### Architecture |
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- **Input Layer**: 10 neurons, ReLU activation |
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- **Hidden Layer**: 10 neurons, ReLU activation |
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- **Output Layer**: 1 neuron (for regression) |
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## How to Use the Model |
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To use this model, follow the steps below: |
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### 1. Install Required Libraries |
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Make sure you have the necessary libraries installed: |
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```bash |
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pip install tensorflow huggingface-hub pandas matplotlib |
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#load the model from the Hugging Face Hub: |
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import tensorflow as tf |
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from huggingface_hub import from_pretrained_keras |
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import pandas as pd |
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import numpy as np |
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import matplotlib.pyplot as plt |
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# Load the model from Hugging Face Hub |
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model = from_pretrained_keras("iiitbh18/bhaskar1") |
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# Prepare Dummy Data |
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# Create a DataFrame with dummy data |
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dummy_data = { |
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'timestamp': [ |
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'2024-08-07 02:43:28.788', |
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'2024-08-07 02:43:28.788', |
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'2024-08-07 02:43:43.788', |
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'2024-08-07 02:43:43.788', |
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'2024-08-07 02:43:58.788' |
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], |
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'value': [ |
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99.00000005960464, |
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98.90000000596046, |
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98.70000004768372, |
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99.00000005960464, |
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98.89999993145466 |
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] |
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} |
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df = pd.DataFrame(dummy_data) |
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#Prepare Data for Prediction |
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X_dummy = df['value'].values.reshape(-1, 1) # Reshape to match model's input shape |
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# Make Predictions |
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predictions = model.predict(X_dummy) |
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print("Predictions:", predictions) |
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#Visualize the Results |
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# Plot actual vs. predicted values |
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plt.figure(figsize=(10, 6)) |
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plt.scatter(df['timestamp'], df['value'], color='blue', label='Actual Values') |
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plt.scatter(df['timestamp'], predictions, color='red', label='Predicted Values') |
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plt.xlabel('Timestamp') |
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plt.ylabel('Value') |
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plt.title('Actual vs Predicted Values') |
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plt.legend() |
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plt.xticks(rotation=45) |
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plt.show() |
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