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Gently Down the Stream – A gentle introduction to Apache Kafka (2021)

Hacker News

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Transitioning off Amazon Lookout for Metrics 

AWS Machine Learning Blog

The service, which was launched in March 2021, predates several popular AWS offerings that have anomaly detection, such as Amazon OpenSearch , Amazon CloudWatch , AWS Glue Data Quality , Amazon Redshift ML , and Amazon QuickSight.

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Bundesliga Match Fact Ball Recovery Time: Quantifying teams’ success in pressing opponents on AWS

AWS Machine Learning Blog

Since Steffen Baumgart took over as coach at FC Köln in 2021, the team has managed to lift themselves from the bottom and has established a steady position in the middle of the table. The recent history of Bundesliga club FC Köln emphasizes the effect of different pressing styles on a team’s success.

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Discover the Most Important Fundamentals of Data Engineering

Pickl AI

billion in 2021 and is expected to grow at a CAGR of 11.0% from 2021 to 2026. Among these tools, Apache Hadoop, Apache Spark, and Apache Kafka stand out for their unique capabilities and widespread usage. The global data integration market was valued at USD 11.6

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Bundesliga Match Fact Keeper Efficiency: Comparing keepers’ performances objectively using machine learning on AWS

AWS Machine Learning Blog

Not only was he widely considered the top-rated goalkeeper in the league during the 2021/22 season, but he also held that title back in 2018/19 when Eintracht Frankfurt reached the Europa League semifinals. In recent years, one name has been especially dominant: Kevin Trapp.

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ML Pipeline Architecture Design Patterns (With 10 Real-World Examples)

The MLOps Blog

Apache Kafka, Amazon Kinesis) 2 Data Preprocessing (e.g., 2021, July 15). Today different stages exist within ML pipelines built to meet technical, industrial, and business requirements. This section delves into the common stages in most ML pipelines, regardless of industry or business function. 1 Data Ingestion (e.g.,

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