Amazon SageMaker vs. AWS Batch

Overview
ProductRatingMost Used ByProduct SummaryStarting Price
Amazon SageMaker
Score 8.2 out of 10
N/A
Amazon SageMaker enables developers and data scientists to quickly and easily build, train, and deploy machine learning models at any scale. Amazon SageMaker removes all the barriers that typically slow down developers who want to use machine learning.N/A
AWS Batch
Score 6.7 out of 10
N/A
With AWS Batch, users package the code for batch jobs, specify dependencies, and submit batch jobs using the AWS Management Console, CLIs, or SDKs. AWS Batch allows users to specify execution parameters and job dependencies, and facilitates integration with a broad range of popular batch computing workflow engines and languages (e.g., Pegasus WMS, Luigi, Nextflow, Metaflow, Apache Airflow, and AWS Step Functions).N/A
Pricing
Amazon SageMakerAWS Batch
Editions & Modules
No answers on this topic
No answers on this topic
Offerings
Pricing Offerings
Amazon SageMakerAWS Batch
Free Trial
NoNo
Free/Freemium Version
NoNo
Premium Consulting/Integration Services
NoNo
Entry-level Setup FeeNo setup feeNo setup fee
Additional Details
More Pricing Information
Community Pulse
Amazon SageMakerAWS Batch
Features
Amazon SageMakerAWS Batch
Workload Automation
Comparison of Workload Automation features of Product A and Product B
Amazon SageMaker
-
Ratings
AWS Batch
7.3
Ratings
12% below category average
Multi-platform scheduling00 Ratings6.00 Ratings
Central monitoring00 Ratings8.00 Ratings
Logging00 Ratings10.00 Ratings
Alerts and notifications00 Ratings5.00 Ratings
Analysis and visualization00 Ratings5.90 Ratings
Application integration00 Ratings8.70 Ratings
Best Alternatives
Amazon SageMakerAWS Batch
Small Businesses
InterSystems IRIS
InterSystems IRIS
Score 7.7 out of 10

No answers on this topic

Medium-sized Companies
InterSystems IRIS
InterSystems IRIS
Score 7.7 out of 10
Apache Airflow
Apache Airflow
Score 8.6 out of 10
Enterprises
InterSystems IRIS
InterSystems IRIS
Score 7.7 out of 10
Control-M
Control-M
Score 9.3 out of 10
All AlternativesView all alternativesView all alternatives
User Ratings
Amazon SageMakerAWS Batch
Likelihood to Recommend
9.0
(0 ratings)
5.0
(0 ratings)
Usability
-
(0 ratings)
8.0
(0 ratings)
User Testimonials
Amazon SageMakerAWS Batch
Likelihood to Recommend
Amazon Sagemaker suits well in areas of data science and Machine learnings where medium to high-volume data is to be used for analysis. For a lean and platform agnostic deployment, it provides kubernetes integration to containerize the solution and deploy on any platform. It is one of the best solution for technical users for training Machine Learning models.
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Start with reviewing all your jobs, consolidating the timeline, and making a plan on what all jobs need to be prioritized. These can be optimized based on cost and performance. With a continuously changing workload, AWS Batch helps to build and automate the jobs across various resources. It also helps to manage the performance and workload.
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Pros
  • SageMaker is useful as a managed Jupyter notebook server. Using the notebook instances' IAM roles to grant access to private S3 buckets and other AWS resources is great. Using SageMaker's lifecycle scripts and AWS Secrets Manager to inject connection strings and other secrets is great.
  • SageMaker is good at serving models. The interface it provides is often clunky, but a managed, auto-scaling model server is powerful.
  • SageMaker is opinionated about versioning machine learning models and useful if you agree with its opinions.
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  • S3 amount of files
  • Easy to share files to other sites
  • Like that the files and folders can be open and public or completely private
  • I like that you can have double or mirroring in different Data Centers for Data Recovery
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Cons
  • Searching and descriptions can be easier to read and interpret.
  • Training modules and customer service training representative could make on boarding employees easier.
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  • Jobs monitoring dashboards are not matured
  • Documentation and support is something which can be improved
  • Sometime i faced the slow response or slow in performance i would say
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Usability
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Key advantages include cost-effectiveness through dynamic resource provisioning and the use of spot instances. It auto-scales to meet workload demands, allowing easy job submission via the AWS Management Console or SDKs. It integrates seamlessly with other services like S3 and CloudWatch. It features automatic retries for failed jobs. It allows for a custom computing environment tailored to specific needs
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Alternatives Considered
We have not invested in another machine learning software at this time and so far this has proved very successful with our machine learning teams. As mentioned, I am training these individuals simply on the fundamentals of the software and using it/customizing it for their needs. It has been very easy to do this and has gotten great reviews across the organization so far.
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CF did not have a way to store the videos and I did not want to do so in YouTube because of privacy reasons.
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Return on Investment
  • Using SageMaker, we can truly implement 'fail early, learn fast,' using an on-demand server for training.
  • It also saves your money from investing in a physical server for very rare use.
  • However, the pricing is high, but it will cost you only for what you use.
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  • Well compared to the cost of having multiple lambda's or some other custom solution working, it has has a postiive impact
  • Helped in orchestrating the jobs, has saved time of developers
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ScreenShots