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Using Machine Learning to classify if a property is brick, siding or unknown. Keras, Tensorflow.

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gitgranthub/target_market

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Target Marketing Machine Learning

  • python
  • Flask
  • keras
  • tensorflow
  • javascript
  • HTML
  • D3.js

Visit each branch to see the corresponding team member's code and project work.


Final site deployment is routed through David Fried's github repo

brick_house_final_00.png

Using Machine Learning to cut down marketing costs for a sales or marketing campagin. Our model varifies brick homes or homes with siding. Evanston, IL has a diverse mix of brick and siding homes. Evanston also had a very nice address data set. This was a great starting point for algorithm testing. A real estate, tuck-pointing, or painting company can use this Machine Learning algorithm to cut down on direct marketing costs and only target brick or siding homes. This model could be tweaked for other companies such as insurance, land-scaping, or roofing.

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Using Machine Learning to classify if a property is brick, siding or unknown. Keras, Tensorflow.

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