Apache Spark Streaming vs. IBM Streams

Overview
ProductRatingMost Used ByProduct SummaryStarting Price
Apache Spark Streaming
Score 8.7 out of 10
N/A
Apache Spark Streaming is a scalable fault-tolerant streaming processing system that natively supports both batch and streaming workloads.N/A
IBM Streams
Score 9.0 out of 10
N/A
A real-time analytics solution that turns fast-moving volumes and varieties into insights. Streams evaluates a broad range of streaming data — unstructured text, video, audio, geospatial and sensor — helping organizations spot opportunities and risks as they happen. Its Eclipse-based, visual IDE lets solution architects visually build applications or use familiar programming languages like Java™, Scala or Python. Data engineers can connect with virtually any data source — whether…N/A
Pricing
Apache Spark StreamingIBM Streams
Editions & Modules
No answers on this topic
No answers on this topic
Offerings
Pricing Offerings
Apache Spark StreamingIBM Streams
Free Trial
NoNo
Free/Freemium Version
NoNo
Premium Consulting/Integration Services
NoNo
Entry-level Setup FeeNo setup feeOptional
Additional Details
More Pricing Information
Community Pulse
Apache Spark StreamingIBM Streams
Top Pros
Top Cons
Features
Apache Spark StreamingIBM Streams
Streaming Analytics
Comparison of Streaming Analytics features of Product A and Product B
Apache Spark Streaming
8.4
1 Ratings
4% above category average
IBM Streams
8.3
5 Ratings
3% above category average
Real-Time Data Analysis8.01 Ratings8.05 Ratings
Visualization Dashboards9.01 Ratings10.05 Ratings
Data Ingestion from Multiple Data Sources9.01 Ratings9.05 Ratings
Low Latency8.01 Ratings7.93 Ratings
Integrated Development Tools8.01 Ratings8.04 Ratings
Data wrangling and preparation8.01 Ratings8.04 Ratings
Linear Scale-Out8.01 Ratings7.72 Ratings
Machine Learning Automation9.01 Ratings9.05 Ratings
Data Enrichment9.01 Ratings7.04 Ratings
Best Alternatives
Apache Spark StreamingIBM Streams
Small Businesses
IBM Streams
IBM Streams
Score 9.0 out of 10
Amazon Kinesis
Amazon Kinesis
Score 8.0 out of 10
Medium-sized Companies
Confluent
Confluent
Score 7.4 out of 10
Confluent
Confluent
Score 7.4 out of 10
Enterprises
Spotfire Streaming
Spotfire Streaming
Score 8.1 out of 10
Spotfire Streaming
Spotfire Streaming
Score 8.1 out of 10
All AlternativesView all alternativesView all alternatives
User Ratings
Apache Spark StreamingIBM Streams
Likelihood to Recommend
9.0
(1 ratings)
9.0
(9 ratings)
User Testimonials
Apache Spark StreamingIBM Streams
Likelihood to Recommend
Apache
Apache Spark Streaming is a tool that we are using for almost a year and is excellent in managing batch processing. It is user-friendly. Using it, we can even process our massive data in fractions of seconds. Its pricing is its other plus point. Only its In-memory processing is its demerit as it occupies a large memory.
Read full review
IBM
Like the name says, it is good for streaming data and analyzing. It is great to look at tuples at a fast rate, filtering, calling other sources to enrich data, can call APIs, etc. Could do better for ingest use cases, can do better with guaranteed delivery, etc.
Read full review
Pros
Apache
  • It is amazing in solving complicated transformative logic.
  • It is straightforward to program.
  • It is a very quick tool.
  • It processes large data within a fraction of seconds.
Read full review
IBM
  • IBM Streams is well suited for providing wire-speed real-time end-to-end processing with sub-millisecond latency.
  • Streams is amazingly computationally efficient. In other words, you can typically do much more processing with a given amount of hardware than other technologies. In a recent linear-road benchmark Streams based application was able to provide greater capability than the Hadoop-based implementation using 10x less hardware. So even when latency isn't critical, using Streams might still make sense for reducing operational cost.
  • Streams comes out of the box with a large and comprehensive set of tested and optimized toolkits. Leveraging these toolkits not only reduces the development time and cost but also helps reduce project risk by eliminating the need for custom code which likely has not seen as much time in test or production.
  • In addition to the out of the box toolkits, there is an active developer community contributing additional specialized packages.
Read full review
Cons
Apache
  • There must be more documentation.
  • It is a profoundly complex tool.
  • Its in-memory processing consumes massive memory.
Read full review
IBM
  • Documentation could be more extensive, with more examples, although overall this is not too bad compared to some of the alternative solutions.
  • Seems expensive to use in production.
Read full review
Alternatives Considered
Apache
Apache Spark Streaming stands above all the huge data transformative tools because of its speed of processing which was quite slow in Presto as it takes a lot of our time in the data processing. Spark, comfortably provides integration with Jupyter like notebook environment. and Spark's combination with Jupyter and Python results in enhancing the speed .
Read full review
IBM
There are well explained tutorials to get the user started. If you are looking for business application ideas, the user community offers a diversity of applications. It is very easy to launch applications on the cloud and can integrate with other analytic tools available on Watson Studio. It takes away the burden of the technology so that users can focus on business innovations.
Read full review
Return on Investment
Apache
  • Cost and time-effective tool for our business.
  • We can integrate with Jupyter with many conveniences.
  • Its high-speed data processing has proved beneficial for us.
Read full review
IBM
  • Ability to do more with less
  • Admins and data analyst can now focus on more thinking tasks
  • No negative impacts yet
Read full review
ScreenShots