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README.md
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README.md
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# test_mlflow
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# Abstract
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測試使用MLflow紀錄Pytorch模型訓練,以及從Model registry中拉取Production model進行推論。
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Try to use [MLflow](https://mlflow.org) platform to log PyTorch model training, and pull production model from model registry to run inference⛩
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# Requirements
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* MacOS 12.5
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* Docker 20.10
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# Dir
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* **service**
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* House MLflow service data, including MLflow artifacts, backend store and model registry
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# Files
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* **conda.yaml**
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* conda env yaml to run this repo
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* **start_mlflow_server.sh**
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* a script to start MLflow server with basic configuration
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* **test_pytorch_m1.py**
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* a script to test PyTorch on Apple M1 platform with GPU acceleration
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* **train.py**
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* a sample code to apply PyTorch to train a small neural network to predict fortune with MLflow logging
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* **predict.py**
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* a sample code to call registered model to predict testing data and save model to local file system
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* **get_registered_model_via_rest_api.py**
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* a script to test MLflow REST api
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###### tags: `MLOps`
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# test_pytorch_m1.py
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# Ref: https://towardsdatascience.com/installing-pytorch-on-apple-m1-chip-with-gpu-acceleration-3351dc44d67c
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#
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# author: deng
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# date : 20230301
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import torch
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import math
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print('this ensures that the current MacOS version is at least 12.3+')
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print('This ensures that the current MacOS version is at least 12.3+')
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print(torch.backends.mps.is_available())
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print('\nthis ensures that the current current PyTorch installation was built with MPS activated.')
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print('\nThis ensures that the current current PyTorch installation was built with MPS activated.')
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print(torch.backends.mps.is_built())
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