| Golang Sample | Python Sample | Node.js Sample |
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Images taken from Google/Bing and annotations done manually
[ ](Sample 1) |
[ ](Sample 2) |
[ ](Sample 3) |
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Annotations are present for each document and have the same name as the image name. You can find the example to train a model in python and node, by updating the api-key and model id in corresponding file. There is also a pre-processed json annotations folder that are ready payload for nanonets api.
Note: Make sure you have python and pip installed on your system if you don't visit Python pip
git clone https://github.com/NanoNets/object-detection-sample-python.git
cd object-detection-sample-python
sudo pip install requestsGet your free API Key from http://app.nanonets.com/user/api_key
export NANONETS_API_KEY=YOUR_API_KEY_GOES_HEREpython ./code/create-model.py_Note: This generates a MODEL_ID that you need for the next step
export NANONETS_MODEL_ID=YOUR_MODEL_ID_Note: you will get YOUR_MODEL_ID from the previous step
The training data is found in images (image files) and annotations (annotations for the image files)
python ./code/upload-training.pyOnce the Images have been uploaded, begin training the Model
python ./code/train-model.pyThe model takes ~2 hours to train. You will get an email once the model is trained. In the meanwhile you check the state of the model
python ./code/model-state.pyOnce the model is trained. You can make predictions using the model
python ./code/prediction.py PATH_TO_YOUR_IMAGE.jpgSample Usage:
python ./code/prediction.py ./images/image_10.pngNote the python sample uses the comverted json instead of the xml payload for convenience purposes, hence it has no dependencies.




