t5
Build-Deploy-Actions
Details
Build-Deploy-Actions
Details
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#FROM python:3.8.13
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FROM artifacts.iflytek.com/docker-private/atp/base_image_for_ailab:0.0.1
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WORKDIR /app
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COPY . /app
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COPY requirements.txt /app
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RUN pip config set global.index-url https://pypi.mirrors.ustc.edu.cn/simple
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RUN pip install -r requirements.txt
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COPY . /app
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CMD ["python", "app.py"]
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3
app.py
3
app.py
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@ -25,7 +25,8 @@ demo = gr.Interface(fn=sentiment_analysis,
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outputs='text',
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examples=[["We describe a system called Overton, whose main design goal is to support engineers in building, monitoring, and improving production machinelearning systems. Key challenges engineers face are monitoring fine-grained quality, diagnosing errors in sophisticated applications, and handling contradictory or incomplete supervision data. Overton automates the life cycle of model construction, deployment, and monitoring by providing a set of novel high-level, declarative abstractions. Overton's vision is to shift developers to these higher-level tasks instead of lower-level machine learning tasks. In fact, using Overton, engineers can build deep-learning-based applications without writing any code in frameworks like TensorFlow. For over a year, Overton has been used in production to support multiple applications in both near-real-time applications and back-of-house processing. In that time, Overton-based applications have answered billions of queries in multiple languages and processed trillions of records reducing errors 1.7-2.9 times versus production systems."]],
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theme = theme,
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title = "摘要"
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css = "footer {visibility: hidden}",
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allow_flagging = "never",
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)
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