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Integrate Machine learning model for other cancer prediction. #2

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Dheerajjha451 opened this issue Nov 12, 2024 · 7 comments
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@Dheerajjha451
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@sathishsadie
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Can you describe your Problem rised in your code .

@Dheerajjha451
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Dheerajjha451 commented Nov 16, 2024

@sathishsadie I want to build a platform for cancer prediction, including types like chest cancer and brain cancer. If you can create a model for any type of cancer prediction, develop an API for it, and fetch that API in the frontend to predict the cancer based on upload mri image by user, it would be greatly appreciated.

@sathishsadie
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@Dheerajjha451 I am proficient in creating ML model and integrate it with python using fast api , but i have no knowledge in Front-end frameworks , if you need model I will make it and integrate with fast-api and give it to you , If you ok for it then I will make a help for you for creating the breast-cancer prediction model .

@Dheerajjha451
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@sathishsadie yeah sure also add the screenshot of accuracy of the model

@sathishsadie
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https://www.kaggle.com/code/sathishgsmss/skin-cancer-analysis ,
I have build the skin cancer detection model with the accurcy of 82% on test data of images does it ok . Check the above link .

@Dheerajjha451
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Integrate it with fast api and then make the pr.

@Dheerajjha451
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@sathishsadie Are you working on this?

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