Apache Spark Overview of Reviews & Product Details - 2025
✨ Ask AI Search
Categories
For Business

Apache Spark

Apache Spark is an open-source unified analytics engine designed for large-scale data processing. It combines fast in-memory computation with seamless integration across programming languages like Python, Java, and Scala, supporting both batch and real-time processing. With advanced machine learning capabilities and broad compatibility, it is ideal for transforming, analyzing, and optimizing big data workflows efficiently.

Apache Spark

N/A
0
Reviews
83%
Subscribed Score

Available for Claim - This listing is available to be claimed
Claim This Site

Unclaimed

Curated and listed by Subscribed Team

Claim This Site
Smart Automation
Smart Automation
Save time with AI-powered workflows.
Seamless Integrations
Seamless Integrations
Connect easily with your favorite tools.
No-Code Simplicity
No-Code Simplicity
Launch without writing a single line of code.

Apache Spark is an innovative, open‐source unified analytics engine designed to handle both batch and real‐time data processing. It empowers organizations with the capability to process enormous data volumes using distributed in‑memory computing. Born from the Apache Software Foundation, Apache Spark has redefined the landscape of Big Data Management by simplifying complex data pipelines and providing a framework that adapts quickly to evolving business needs. Its robust architecture allows seamless integration with popular languages such as Java, Scala, Python, and SQL, ensuring that developers and data engineers can make the most out of their coding expertise.

Key Features & Benefits

  • Unified Analytics: Apache Spark provides a single engine to handle diverse data workloads — from batch processing to real‑time stream analysis — reducing the need to work with multiple systems.
  • High Performance: Powered by in‑memory computing, Spark significantly accelerates data query and processing times, enabling businesses to derive insights faster.
  • Rich Ecosystem: With its extensive library support for machine learning, graph processing, and SQL queries, the framework serves as a one‑stop solution for a myriad of data-driven applications.
  • Scalability: Whether deployed on cloud, on‑premise, or in hybrid environments, Spark’s fault‑tolerant distributed framework easily scales to accommodate growing data volumes and real‑time analytics needs.
  • Developer Friendly: The availability of APIs across languages, along with a flexible integration model, fosters quick adoption and minimal operational overhead for development teams.

Why Choose Apache Spark?

Apache Spark stands out in the realm of Big Data Management solutions. It simplifies the transformation of vast data streams, optimizes memory usage, and reduces the latency associated with traditional batch processing methods. The framework not only accelerates data processing but also offers a unified platform for executing complex data transformations, making it a preferred choice for organizations keen on rapid insights and analytics-driven decision making.

Who Can Benefit?

Apache Spark is ideal for data engineers, data scientists, and software developers who manage large-scale data processing tasks. Enterprises seeking to modernize their data infrastructure with efficient, real-time processing capabilities will find Spark indispensable. Its flexibility and comprehensive library support allow teams to build end‑to‑end data pipelines with minimal friction, ensuring that every data transformation—from ingestion to insight—is optimized for performance.

Explore exclusive deals to leverage the full potential of Apache Spark in your organization.

Alternatives

Apache Spark Summary

Apache Spark is an innovative, open‐source unified analytics engine designed to handle both batch and real‐time data processing. It empowers organizations with the capability to process enormous data volumes using distributed in‑memory computing. Born from the Apache Software Foundation, Apache Spark has redefined the landscape of Big Data Management by simplifying complex data pipelines and providing a framework that adapts quickly to evolving business needs. Its robust architecture allows seamless integration with popular languages such as Java, Scala, Python, and SQL, ensuring that developers and data engineers can make the most out of their coding expertise.

Key Features & Benefits

  • Unified Analytics: Apache Spark provides a single engine to handle diverse data workloads — from batch processing to real‑time stream analysis — reducing the need to work with multiple systems.
  • High Performance: Powered by in‑memory computing, Spark significantly accelerates data query and processing times, enabling businesses to derive insights faster.
  • Rich Ecosystem: With its extensive library support for machine learning, graph processing, and SQL queries, the framework serves as a one‑stop solution for a myriad of data-driven applications.
  • Scalability: Whether deployed on cloud, on‑premise, or in hybrid environments, Spark’s fault‑tolerant distributed framework easily scales to accommodate growing data volumes and real‑time analytics needs.
  • Developer Friendly: The availability of APIs across languages, along with a flexible integration model, fosters quick adoption and minimal operational overhead for development teams.

Why Choose Apache Spark?

Apache Spark stands out in the realm of Big Data Management solutions. It simplifies the transformation of vast data streams, optimizes memory usage, and reduces the latency associated with traditional batch processing methods. The framework not only accelerates data processing but also offers a unified platform for executing complex data transformations, making it a preferred choice for organizations keen on rapid insights and analytics-driven decision making.

Who Can Benefit?

Apache Spark is ideal for data engineers, data scientists, and software developers who manage large-scale data processing tasks. Enterprises seeking to modernize their data infrastructure with efficient, real-time processing capabilities will find Spark indispensable. Its flexibility and comprehensive library support allow teams to build end‑to‑end data pipelines with minimal friction, ensuring that every data transformation—from ingestion to insight—is optimized for performance.

Explore exclusive deals to leverage the full potential of Apache Spark in your organization.

Alternatives

Apache Spark reviews

Learn what people say about Apache Spark

N/A
0 Reviews

This is coming soon with our subscribed-x launch, the human ai software evolution, stay tuned

83%
Subscribed Score

Lear more here about the Subscribed score on how it is composed. Learn more Click here

This is coming soon with our subscribed-x launch, the human ai software evolution, stay tuned

Overall rating

5
4
3
2
1
CX 4/6

How good is the customer support based on subscribed’s assessment

CX Icon
Security 4/6

How secure is the product based on Subscribed’s assessment?

Security Icon
Ease of Use 5/6

How easy is the product to use, based on Subscribed’s assessment?

EOU Icon
Value 5/6

What is the value for money based on Subscribed’s assessment?

coin Icon
Integration 5/6

How many integrations does the product offer?

gear Icon
Popularity 6/6

How popular is the product?

star

No Reviews Yet!

Be the first to share your experience and help others in the community.

This is coming soon with our subscribed-x launch, the human ai software evolution, stay tuned

Reviews from G2, Capterra, Trustpilot
info Icon

These ratings come directly from third-party platforms like G2, Capterra, and Trustpilot. They reflect real user feedback collected independently on those sites.

This is coming soon with our subscribed-x launch, the human ai software evolution, stay tuned

Apache Spark

Pricing Range
info Icon

This only an estimated pricing range, visit Apache Spark pricing page to access all the information by clicking “Visit Now”.

Not specified
Deals Available

This product comes with a special deal, see details

Visit Now - Apache Spark
✨ Ask AI about pricing
83% Subscribed Score
info Icon

The Subscribed Score is an independent rating that combines user reviews, features, and value-for-money from multiple trusted sources. It’s designed as a quick benchmark, not a guarantee of individual experience.

Analysis

Apache Spark is an innovative, open‐source unified analytics engine designed to handle both batch and real‐time data processing. It empowers organizations with the capability to process enormous data volumes using distributed in‑memory computing. Born from the Apache Software Foundation, Apache Spark has redefined the landscape of Big Data Management by simplifying complex data pipelines and providing a framework that adapts quickly to evolving business needs. Its robust architecture allows seamless integration with popular languages such as Java, Scala, Python, and SQL, ensuring that developers and data engineers can make the most out of their coding expertise.

Key Features & Benefits

  • Unified Analytics: Apache Spark provides a single engine to handle diverse data workloads — from batch processing to real‑time stream analysis — reducing the need to work with multiple systems.
  • High Performance: Powered by in‑memory computing, Spark significantly accelerates data query and processing times, enabling businesses to derive insights faster.
  • Rich Ecosystem: With its extensive library support for machine learning, graph processing, and SQL queries, the framework serves as a one‑stop solution for a myriad of data-driven applications.
  • Scalability: Whether deployed on cloud, on‑premise, or in hybrid environments, Spark’s fault‑tolerant distributed framework easily scales to accommodate growing data volumes and real‑time analytics needs.
  • Developer Friendly: The availability of APIs across languages, along with a flexible integration model, fosters quick adoption and minimal operational overhead for development teams.

Why Choose Apache Spark?

Apache Spark stands out in the realm of Big Data Management solutions. It simplifies the transformation of vast data streams, optimizes memory usage, and reduces the latency associated with traditional batch processing methods. The framework not only accelerates data processing but also offers a unified platform for executing complex data transformations, making it a preferred choice for organizations keen on rapid insights and analytics-driven decision making.

Who Can Benefit?

Apache Spark is ideal for data engineers, data scientists, and software developers who manage large-scale data processing tasks. Enterprises seeking to modernize their data infrastructure with efficient, real-time processing capabilities will find Spark indispensable. Its flexibility and comprehensive library support allow teams to build end‑to‑end data pipelines with minimal friction, ensuring that every data transformation—from ingestion to insight—is optimized for performance.

Explore exclusive deals to leverage the full potential of Apache Spark in your organization.

Alternatives

Pros
  • Efficiently handles large-scale data processing.
  • Supports multiple programming languages.
  • In-memory processing enhances speed.
  • Strong library ecosystem for data and ML tasks.
Cons
  • Struggles with small datasets.
  • Lacks automatic optimization features.
  • Error messages can be unclear.
  • Challenging for beginners to learn.
Subscribed Score Metrics
29/36 Metric achieved
MetricsScore
Customer Support4/6
Security4/6
Ease of Use5/6
Value of Money5/6
Integration5/6
Popularity6/6
Radar Chart Table View
Ease of Use
Measures how simple and intuitive the product is to use, including setup, navigation, and overall user experience
5/6 Metric Checks
Security
Compares the product`s features, quality, and pricing to determine its overall cost-effectiveness.
4/6 Metric Checks
Value of Money
Assesses the product`s ability to protect data, prevent breaches, and comply with industry standards.
5/6 Metric Checks
Customer Support
Reflects the responsiveness, helpfulness, and quality of assistance provided by the product`s support team.
4/6 Metric Checks
Integrations
Evaluates how well the product connects with other tools and platforms, enabling seamless workflows.
5/6 Metric Checks
Apache Spark Pricing Range
Not specified

Apache Spark Showcase
info Icon

A curated gallery of real screenshots and use cases from the product, so you can see how it works before trying it.

Full Screen Icon
Full Screen Icon
Full Screen Icon
https://www.youtube.com/watch?v=znBa13Earms
Full Screen Icon
https://www.youtube.com/watch?v=xDEzSxlsUpU
Full Screen Icon

What else exists next to Apache Spark
info Icon

A list of platforms similar to Apache Spark, helping you evaluate which tool best matches your needs.

Need to cancel Apache Spark? Here is how
info Icon

Thinking about how to cancel Apache Spark this is how you do it!

To cancel an Apache Spark application:

  • Open Synapse Studio or Spark UI.
  • Locate the running application.
  • Use the "Cancel" option to stop it.
  • For Spark Streaming jobs, use yarn application -kill if deployed on YARN.

How to Cancel the Apache Spark

To cancel an Apache Spark application:

  • Open Synapse Studio or Spark UI.
  • Locate the running application.
  • Use the "Cancel" option to stop it.
  • For Spark Streaming jobs, use yarn application -kill if deployed on YARN.
Every else you need to know about Apache Spark
info Icon

A collection of FAQs, guides, alternatives, and comparisons to help you quickly understand if Apache Spark is right for you.

Pricing Range
info Icon

This only an estimated pricing range, visit Apache Spark pricing page to access all the information by clicking “Visit Now”.

Not specified
Deals Available

This product comes with a special deal, see details

This product comes with a special deal, see details

Visit Now