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Although MLOps is an abbreviation for ML and operations, don’t let it confuse you as it can allow collaborations among datascientists, DevOps engineers, and IT teams. Model Training Frameworks This stage involves the process of creating and optimizing predictive models with labeled and unlabeled data.
Some popular end-to-end MLOps platforms in 2023 Amazon SageMaker Amazon SageMaker provides a unified interface for data preprocessing, model training, and experimentation, allowing datascientists to collaborate and share code easily. Check out the Kubeflow documentation.
Challenges In this section, we discuss challenges around various data sources, datadrift caused by internal or external events, and solution reusability. For example, Amazon Forecast supports related time series data like weather, prices, economic indicators, or promotions to reflect internal and external related events.
Machine learning models are only as good as the data they are trained on. Even with the most advanced neural network architectures, if the training data is flawed, the model will suffer. Data issues like label errors, outliers, duplicates, datadrift, and low-quality examples significantly hamper model performance.
By enabling datascientists to rapidly iterate through model development, validation, and deployment, DataRobot provides the tools to blitz through steps four and five of the machine learning lifecycle with AutoML and Auto Time-Series capabilities. High-level example of a common machine learning lifecycle.
Figure 1: Representation of the Text2SQL flow As our world is getting more global and dynamic, businesses are more and more dependent on data for making informed, objective and timely decisions. However, as of now, unleashing the full potential of organisational data is often a privilege of a handful of datascientists and analysts.
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