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Rich feature set and high performance
- Spark is a unified analytics engine for highly distributed and scaled data processing. Its rich feature set and high performance have allowed it to become one of the premier big data frameworks. Spark also plays an increasingly central role in the machine learning and artificial intelligence domains.
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Jan 12, 2020 · Spark has been called a “general purpose distributed data processing engine”1 and “a lightning fast unified analytics engine for big data and machine learning”². It lets you process big data sets faster by splitting the work up into chunks and assigning those chunks across computational resources.
- Allison Stafford
Oct 7, 2024 · Apache Spark is built to work on heterogeneous workloads. It supports batch processing, interactive queries, real-time streaming, machine learning, and graph processing. This allows data scientists and engineers to work within a single framework, hence eliminating the use of multiple tools.
- What Is Apache Spark? An Introduction
- Spark CORE
- SparkSQL
- Spark Streaming
- MLlib
- Graphx
- How to Use Apache Spark: Event Detection Use Case
- Other Apache Spark Use Cases
- Conclusion
Sparkis an Apache project advertised as “lightning fast cluster computing”. It has a thriving open-source community and is the most active Apache project at the moment. Spark provides a faster and more general data processing platform. Spark lets you run programs up to 100x faster in memory, or 10x faster on disk, than Hadoop. Last year, Spark took...
Spark Coreis the base engine for large-scale parallel and distributed data processing. It is responsible for: 1. memory management and fault recovery 2. scheduling, distributing and monitoring jobs on a cluster 3. interacting with storage systems Spark introduces the concept of an RDD (Resilient Distributed Dataset), an immutable fault-tolerant, di...
SparkSQL is a Spark component that supports querying data either via SQL or via the Hive Query Language. It originated as the Apache Hive port to run on top of Spark (in place of MapReduce) and is now integrated with the Spark stack. In addition to providing support for various data sources, it makes it possible to weave SQL queries with code trans...
Spark Streamingsupports real time processing of streaming data, such as production web server log files (e.g. Apache Flume and HDFS/S3), social media like Twitter, and various messaging queues like Kafka. Under the hood, Spark Streaming receives the input data streams and divides the data into batches. Next, they get processed by the Spark engine a...
MLlib is a machine learning library that provides various algorithms designed to scale out on a cluster for classification, regression, clustering, collaborative filtering, and so on (check out Toptal’s article on machine learning for more information on that topic). Some of these algorithms also work with streaming data, such as linear regression ...
GraphXis a library for manipulating graphs and performing graph-parallel operations. It provides a uniform tool for ETL, exploratory analysis and iterative graph computations. Apart from built-in operations for graph manipulation, it provides a library of common graph algorithms such as PageRank.
Now that we have answered the question “What is Apache Spark?”, let’s think of what kind of problems or challenges it could be used for most effectively. I came across an article recently about an experiment to detect an earthquake by analyzing a Twitter stream. Interestingly, it was shown that this technique was likely to inform you of an earthqua...
Potential use cases for Spark extend far beyond detection of earthquakes of course. Here’s a quick (but certainly nowhere near exhaustive!) sampling of other use cases that require dealing with the velocity, variety and volume of Big Data, for which Spark is so well suited: In the game industry, processing and discovering patterns from the potentia...
To sum up, Spark helps to simplify the challenging and computationally intensive task of processing high volumes of real-time or archived data, both structured and unstructured, seamlessly integrating relevant complex capabilities such as machine learning and graph algorithms. Spark brings Big Data processing to the masses. Check it out!
- Radek Ostrowski
Spark was created to address the limitations to MapReduce, by doing processing in-memory, reducing the number of steps in a job, and by reusing data across multiple parallel operations. With Spark, only one-step is needed where data is read into memory, operations performed, and the results written back—resulting in a much faster execution.
May 13, 2024 · In this article, we’ve explored why Apache Spark has become the de facto standard for big data processing and how its architecture enables fast and efficient data analytics.
Apr 3, 2024 · Apache Spark is a data processing framework that can quickly perform processing tasks on very large data sets, and can also distribute data processing tasks across multiple computers, either...