Apache Spark vs. Engine Yard

Overview
ProductRatingMost Used ByProduct SummaryStarting Price
Apache Spark
Score 8.6 out of 10
N/A
N/AN/A
Engine Yard
Score 8.0 out of 10
N/A
Engine Yard is a platform-as-a-service solution allowing developers to plan, build, deploy, and manage applications in the cloud. Engine Yard also provides services for deployment, managing AWS, supporting databases, and microservices & container development.
$800
Per Month Per Cluster
Pricing
Apache SparkEngine Yard
Editions & Modules
No answers on this topic
Platform
$800.00
Per Month Per Cluster
Offerings
Pricing Offerings
Apache SparkEngine Yard
Free Trial
NoYes
Free/Freemium Version
NoNo
Premium Consulting/Integration Services
NoNo
Entry-level Setup FeeNo setup feeNo setup fee
Additional Details——
More Pricing Information
Community Pulse
Apache SparkEngine Yard
Top Pros
Top Cons
Best Alternatives
Apache SparkEngine Yard
Small Businesses

No answers on this topic

AWS Elastic Beanstalk
AWS Elastic Beanstalk
Score 9.0 out of 10
Medium-sized Companies
Cloudera Manager
Cloudera Manager
Score 9.7 out of 10
IBM Cloud Private
IBM Cloud Private
Score 9.5 out of 10
Enterprises
IBM Analytics Engine
IBM Analytics Engine
Score 8.8 out of 10
IBM Cloud Private
IBM Cloud Private
Score 9.5 out of 10
All AlternativesView all alternativesView all alternatives
User Ratings
Apache SparkEngine Yard
Likelihood to Recommend
9.9
(24 ratings)
8.0
(1 ratings)
Likelihood to Renew
10.0
(1 ratings)
8.0
(1 ratings)
Usability
10.0
(3 ratings)
-
(0 ratings)
Support Rating
8.7
(4 ratings)
-
(0 ratings)
User Testimonials
Apache SparkEngine Yard
Likelihood to Recommend
Apache
Well suited: To most of the local run of datasets and non-prod systems - scalability is not a problem at all. Including data from multiple types of data sources is an added advantage. MLlib is a decently nice built-in library that can be used for most of the ML tasks. Less appropriate: We had to work on a RecSys where the music dataset that we used was around 300+Gb in size. We faced memory-based issues. Few times we also got memory errors. Also the MLlib library does not have support for advanced analytics and deep-learning frameworks support. Understanding the internals of the working of Apache Spark for beginners is highly not possible.
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Engine Yard
It is best for rapidly getting your application to the cloud without worrying about standing up cloud infrastructure
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Pros
Apache
  • Apache Spark makes processing very large data sets possible. It handles these data sets in a fairly quick manner.
  • Apache Spark does a fairly good job implementing machine learning models for larger data sets.
  • Apache Spark seems to be a rapidly advancing software, with the new features making the software ever more straight-forward to use.
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Engine Yard
  • Quick deployments
  • Easily integrate your code from GitHub
  • Ability to recover site quickly to different zone when AWS has a widespread outage
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Cons
Apache
  • Memory management. Very weak on that.
  • PySpark not as robust as scala with spark.
  • spark master HA is needed. Not as HA as it should be.
  • Locality should not be a necessity, but does help improvement. But would prefer no locality
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Engine Yard
  • Embracing new Amazon Web Servicess(AWS) features
  • Security groups need more granularity
  • Audit trails of what happens by who in environment, especially when VM is deleted
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Likelihood to Renew
Apache
Capacity of computing data in cluster and fast speed.
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Engine Yard
Ease of use
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Usability
Apache
The only thing I dislike about spark's usability is the learning curve, there are many actions and transformations, however, its wide-range of uses for ETL processing, facility to integrate and it's multi-language support make this library a powerhouse for your data science solutions. It has especially aided us with its lightning-fast processing times.
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Engine Yard
No answers on this topic
Support Rating
Apache
1. It integrates very well with scala or python. 2. It's very easy to understand SQL interoperability. 3. Apache is way faster than the other competitive technologies. 4. The support from the Apache community is very huge for Spark. 5. Execution times are faster as compared to others. 6. There are a large number of forums available for Apache Spark. 7. The code availability for Apache Spark is simpler and easy to gain access to. 8. Many organizations use Apache Spark, so many solutions are available for existing applications.
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Engine Yard
No answers on this topic
Alternatives Considered
Apache
All the above systems work quite well on big data transformations whereas Spark really shines with its bigger API support and its ability to read from and write to multiple data sources. Using Spark one can easily switch between declarative versus imperative versus functional type programming easily based on the situation. Also it doesn't need special data ingestion or indexing pre-processing like Presto. Combining it with Jupyter Notebooks (https://github.com/jupyter-incubator/sparkmagic), one can develop the Spark code in an interactive manner in Scala or Python
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Engine Yard
More closely aligns to native AWS
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Return on Investment
Apache
  • Faster turn around on feature development, we have seen a noticeable improvement in our agile development since using Spark.
  • Easy adoption, having multiple departments use the same underlying technology even if the use cases are very different allows for more commonality amongst applications which definitely makes the operations team happy.
  • Performance, we have been able to make some applications run over 20x faster since switching to Spark. This has saved us time, headaches, and operating costs.
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Engine Yard
  • Positive in the sense that we can deploy new applications quickly for MVP
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