If you enjoy DataFlint please give us a ⭐️ and join our slack community for feature requests, support and more!
DataFlint is a modern, user-friendly enhancement for Apache Spark that simplifies performance monitoring and debugging. It adds an intuitive tab to the existing Spark Web UI, transforming a powerful but often overwhelming interface into something easy to navigate and understand.
- Intuitive Design: DataFlint's tab in the Spark Web UI presents complex metrics in a clear, easy-to-understand format, making Spark performance accessible to everyone.
- Effortless Setup: Install DataFlint in minutes with just a few lines of code or configuration, without making any changes to your existing Spark environment.
- For All Skill Levels: Whether you're a seasoned data engineer or just starting with Spark, DataFlint provides valuable insights that help you work more effectively.
With DataFlint, spend less time deciphering Spark Web UI and more time deriving value from your data. Make big data work better for you, regardless of your role or experience level with Spark.
After installation, you will see a "DataFlint" tab in the Spark Web UI. Click on it to start using DataFlint.
- 📈 Real-time query and cluster status
- 📊 Query breakdown with performance heat map
- 📋 Application Run Summary
⚠️ Performance alerts and suggestions- 👀 Identify query failures
- 🤖 Spark AI Assistant
See Our Features for more information
Install DataFlint via sbt:
libraryDependencies += "io.dataflint" %% "spark" % "0.2.5"
Then instruct spark to load the DataFlint plugin:
val spark = SparkSession
.builder()
.config("spark.plugins", "io.dataflint.spark.SparkDataflintPlugin")
...
.getOrCreate()
Add these 2 configs to your pyspark session builder:
builder = pyspark.sql.SparkSession.builder
...
.config("spark.jars.packages", "io.dataflint:spark_2.12:0.2.5") \
.config("spark.plugins", "io.dataflint.spark.SparkDataflintPlugin") \
...
Alternatively, install DataFlint with no code change as a spark ivy package by adding these 2 lines to your spark-submit command:
spark-submit
--packages io.dataflint:spark_2.12:0.2.5 \
--conf spark.plugins=io.dataflint.spark.SparkDataflintPlugin \
...
- There is also support for scala 2.13, if your spark cluster is using scala 2.13 change package name to io.dataflint:spark_2.13:0.2.5
- For more installation options, including for python and k8s spark-operator, see Install on Spark docs
- For installing DataFlint in spark history server for observability on completed runs see install on spark history server docs
- For installing DataFlint on DataBricks see install on databricks docs
DataFlint is installed as a plugin on the spark driver and history server.
The plugin exposes an additional HTTP resoures for additional metrics not available in Spark UI, and a modern SPA web-app that fetches data from spark without the need to refresh the page.
For more information, see how it works docs
-
Fixing small files performance issues in Apache Spark using DataFlint
-
Are Long Filter Conditions in Apache Spark Leading to Performance Issues?
-
Optimizing update operations to Apache Iceberg tables using DataFlint
-
Did you know that your Apache Spark logs might be leaking PIIs?
-
Cost vs Speed: measuring Apache Spark performance with DataFlint
DataFlint require spark version 3.2 and up, and supports both scala versions 2.12 or 2.13.
Spark Platforms | DataFlint Realtime | DataFlint History server |
---|---|---|
Local | ✅ | ✅ |
Standalone | ✅ | ✅ |
Kubernetes Spark Operator | ✅ | ✅ |
EMR | ✅ | ✅ |
Dataproc | ✅ | ❓ |
HDInsights | ✅ | ❓ |
Databricks | ✅ | ❌ |
For more information, see supported versions docs