All Projects → LucaCanali → Miscellaneous

LucaCanali / Miscellaneous

Licence: apache-2.0
Scripts and code examples. Includes Spark notes, Jupyter notebook examples for Spark, Impala and Oracle.

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Miscellaneous projects and scripts.

Author: [email protected]

Folder Short description
Spark_Dashboard How to build a performance dashboard for Apache Spark with examples.
Spark_Notes Miscellaneous tips and code snippets about Apache Spark.
Pyspark_SQL_Magic_Jupyter How to write Jupyter SQL magic functions for PySpark and Spark SQL.
Impala_SQL_Jupyter Examples of how to run SQL on Apache Impala using Jupyter/IPython notebooks.
Oracle_Jupyter Examples of how to query Oracle using Jupyter/IPython notebooks.
SQL_color_Mandelbrot How to use SQL to compute and display the Mandelbrot set with colors. Examples for Oracle and PostgreSQL.
PLSQL_Neural_Network An example of how to deploy a serving engine ifor Oracle using PL/SQL. Neural net training is with TensorFlow.
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