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Celebrating 40 years of Db2: Running the world’s mission critical workloads

IBM Journey to AI blog

Codd published his famous paper “ A Relational Model of Data for Large Shared Data Banks.” Boyce to create Structured Query Language (SQL). Developers can leverage features like REST APIs, JSON support and enhanced SQL compatibility to easily build cloud-native applications. Chamberlin and Raymond F.

Database 101
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Why Open Table Format Architecture is Essential for Modern Data Systems

phData

Versioning also ensures a safer experimentation environment, where data scientists can test new models or hypotheses on historical data snapshots without impacting live data. Note : Cloud Data warehouses like Snowflake and Big Query already have a default time travel feature. FAQs What is a Data Lakehouse?

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Extract non-PHI data from Amazon HealthLake, reduce complexity, and increase cost efficiency with Amazon Athena and Amazon SageMaker Canvas

AWS Machine Learning Blog

Query the data using Athena By running Athena SQL queries directly on Amazon HealthLake, we are able to select only those fields that are not personally identifying; for example, not selecting name and patient ID, and reducing birthdate to birth year. In this post, we used Amazon S3 as the input data source for SageMaker Canvas.

ML 92
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Will Google’s Bard Replace Oracle and SnowFlake?

Mlearning.ai

Back in 2016 I was trying to explain to software engineers how to think about machine learning models from a software design perspective; I told them that they should think of a database. Both serve as a means of storing representations of historical data, which can later be queried. and “How many rides did Chana have last month?”