Simple project description.
Este é um modelo de classificação binário que busca diagnosticar a partir características comportamentais se uma criança possuí autismo.
Role | Responsibility | Full name | |
---|---|---|---|
Data Scientist | Author | [Manoel Vilela ] |
[[email protected] ] |
Data Scientist | Author | [Denilson Gomes ] |
[[email protected] ] |
Data Scientist | Author | [Matheus Frota ] |
[[email protected] ] |
Describe how to reproduce your model
Usage is standardized across models. There are two main things you need to know, the development workflow and the Makefile commands.
Both are made super simple to work with Git and Docker while versioning experiments and workspace.
All you'll need to have setup is Docker and Git, which you probably already have. If you don't, feel free to ask for help.
Makefile commands can be accessed using make help
.
Make sure that docker is installed and you have access to S3.
Clone the project from the analytics Models repo.
git clone ssh://[email protected]:datascience-ufc/asd.git
cd asd
Set the ssh auth variables:
eval $(ssh-agent)
ssh-add ~/.ssh/your-secret-key
Load cloud data & run the project
make load VERSION=X.Y.Z # load data + models
make run # generate a new model
After that, if you want test the IRIS dataset you can predict the
class for new labels using for instance the workspace/data/test.csv
:
make predict INPUT=workspace/data/test.csv
You access your workspace in the file predict/output.csv
.
Explain you folder strucure