Remove tags jupyter
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announcing jupyenv 0.1.0

Tweag

To better target people outside the Nix ecosystem, we are changing the name that emphasizes Jupyter environments (hence jupyenv). Blog With the last API update, we found it was difficult to inform our users that things were changing. To keep users in the loop, we have added a Blog tab to the site.

Python 83
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Why teach MLOps to your Data Science Teams?

DareData

Of course, this blog only exposes techniques regarding the construction and maintenance of Machine Learning models, one should never forget the fundamental statistical pillars guiding ML usage –for example, see /dsbuildingblocks-correlationcausality/. It can call tasks and other flows –named subflows.

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Open Data Science and Machine Learning for Business with Cloudera Data Science Workbench on HDP

Cloudera

Data scientists often use Jupyter or Zeppelin notebooks as convenient, open source, free and extensible tools supporting many open source languages and libraries for development, visualization and sharing. Saumitra has an MBA from Santa Clara University and an MSEE from University of Southern California.

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PinCompute: A Kubernetes Backed General Purpose Compute Platform for Pinterest

Pinterest Engineering

PinPod functions as a general purpose compute unit and is currently serving Jupyter Notebook for Pinterest developers. (2) Each AMI is tagged according to type and version, and they utilize the Upgrade service to initiate automatic deployments. PinApp and PinScaler help long-running stateless services deploy and scale quickly.

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50 Artificial Intelligence Interview Questions and Answers [2023]

ProjectPro

So right before we start, I would like to let you know that the focus of this blog is to get you started for interviews and give you exposure to what is the latest in the field of Artificial Intelligence. Most Data Scientists know how to run python code on a Jupyter Notebook. How do we deploy our own API to productionalize an ML Model?