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Modern World Problems of ML in Production and How to Cope With Them

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Manage episode 388490310 series 3474670
Content provided by HackerNoon. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by HackerNoon or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://ppacc.player.fm/legal.

This story was originally published on HackerNoon at: https://hackernoon.com/modern-world-problems-of-ml-in-production-and-how-to-cope-with-them.
Discover the real-world challenges of deploying machine learning models and explore practical solutions.
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #ml-model, #ml-in-production, #model-drift, #concept-drift, #model-drift-detection, #problems-of-ml-in-production, #model-interpretability, #ml-model-data-privacy, and more.
This story was written by: @viktoriaerokhina. Learn more about this writer by checking @viktoriaerokhina's about page, and for more stories, please visit hackernoon.com.
Deploying machine learning models in real-world scenarios brings challenges like model drift, scalability issues, interpretability concerns, data privacy, and the need for continuous integration/deployment (CI/CD) pipelines. Solutions involve monitoring and retraining for model drift, optimizing model architectures, leveraging hardware accelerators, and implementing explainable AI for model interpretability. Maintaining data privacy involves techniques like differential privacy and federated learning. Establishing robust CI/CD pipelines is crucial, with tools like MLflow and Kubeflow aiding in the process. Real-world examples from companies like Amazon, MobiDev, Citibank, Google, and Netflix illustrate the practical application of these solutions, emphasizing the evolving nature of machine learning challenges and solutions.

  continue reading

126 episodes

Artwork
iconShare
 
Manage episode 388490310 series 3474670
Content provided by HackerNoon. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by HackerNoon or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://ppacc.player.fm/legal.

This story was originally published on HackerNoon at: https://hackernoon.com/modern-world-problems-of-ml-in-production-and-how-to-cope-with-them.
Discover the real-world challenges of deploying machine learning models and explore practical solutions.
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #ml-model, #ml-in-production, #model-drift, #concept-drift, #model-drift-detection, #problems-of-ml-in-production, #model-interpretability, #ml-model-data-privacy, and more.
This story was written by: @viktoriaerokhina. Learn more about this writer by checking @viktoriaerokhina's about page, and for more stories, please visit hackernoon.com.
Deploying machine learning models in real-world scenarios brings challenges like model drift, scalability issues, interpretability concerns, data privacy, and the need for continuous integration/deployment (CI/CD) pipelines. Solutions involve monitoring and retraining for model drift, optimizing model architectures, leveraging hardware accelerators, and implementing explainable AI for model interpretability. Maintaining data privacy involves techniques like differential privacy and federated learning. Establishing robust CI/CD pipelines is crucial, with tools like MLflow and Kubeflow aiding in the process. Real-world examples from companies like Amazon, MobiDev, Citibank, Google, and Netflix illustrate the practical application of these solutions, emphasizing the evolving nature of machine learning challenges and solutions.

  continue reading

126 episodes

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