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The US financial services industry has fully embraced a move to the cloud, driving a demand for tech skills such as AWS and automation, as well as Python for dataanalytics, Java for developing consumer-facing apps, and SQL for database work. Dataengineer. Business systems analyst.
The US financial services industry has fully embraced a move to the cloud, driving a demand for tech skills such as AWS and automation, as well as Python for dataanalytics, Java for developing consumer-facing apps, and SQL for database work. Dataengineer. Business systems analyst.
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We are super excited to participate in the biggest and the most influential Data, AI and Advanced Analytics event in the Nordics! Data Innovation Summit ! There our Gema Parreño – Data Science expert at Apiumhub gives a talk about Alignment of Language Agents for serious video games.
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