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Amazon SageMaker Reviews

3.9 out of 5
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Featured Amazon SageMaker reviews

Amazon SageMaker mindshare

Product category:
As of December 2025, the mindshare of Amazon SageMaker in the Data Science Platforms category stands at 5.0%, down from 7.6% compared to the previous year, according to calculations based on PeerSpot user engagement data.
Data Science Platforms Market Share Distribution
ProductMarket Share (%)
Amazon SageMaker5.0%
Databricks10.7%
KNIME Business Hub10.1%
Other74.2%
Data Science Platforms

PeerResearch reports based on Amazon SageMaker reviews

TypeTitleDate
CategoryData Science PlatformsDec 30, 2025Download
ProductReviews, tips, and advice from real usersDec 30, 2025Download
ComparisonAmazon SageMaker vs DatabricksDec 30, 2025Download
ComparisonAmazon SageMaker vs KNIME Business HubDec 30, 2025Download
ComparisonAmazon SageMaker vs Microsoft Azure Machine Learning StudioDec 30, 2025Download
Suggested products
TitleRatingMindshareRecommending
Databricks4.110.7%96%91 interviewsAdd to research
KNIME Business Hub4.110.1%94%60 interviewsAdd to research
 
 
Key learnings from peers

Valuable Features

Room for Improvement

ROI

Pricing

Popular Use Cases

Service and Support

Deployment

Scalability

Stability

Review data by company size

By reviewers
Company SizeCount
Small Business11
Midsize Enterprise11
Large Enterprise13
By reviewers
By visitors reading reviews
Company SizeCount
Small Business234
Midsize Enterprise135
Large Enterprise714
By visitors reading reviews

Top industries

By visitors reading reviews
Financial Services Firm
18%
Computer Software Company
11%
Manufacturing Company
9%
University
6%
Insurance Company
5%
Retailer
4%
Comms Service Provider
4%
Educational Organization
4%
Energy/Utilities Company
4%
Government
4%
Healthcare Company
4%
Outsourcing Company
3%
Media Company
3%
Real Estate/Law Firm
2%
Construction Company
2%
Non Profit
2%
Transportation Company
2%
Pharma/Biotech Company
2%
Performing Arts
2%
Recreational Facilities/Services Company
1%
Legal Firm
1%
Hospitality Company
1%
Wholesaler/Distributor
1%
Consumer Goods Company
1%
Logistics Company
1%
Engineering Company
1%
Marketing Services Firm
1%
 
Amazon SageMaker Reviews Summary
Author infoRatingReview Summary
Python AWS & AI Expert at a tech consulting company4.0I use Amazon SageMaker to develop an assistant like Siri using BlazingText. It offers valuable integration options and tools, though integration with AWS Lambda could improve. It is fully managed on AWS, simplifying development with pre-trained models and flexible frameworks.
Lead Consultant at Saama3.5My primary use of Amazon SageMaker involves provisioning for data scientists. I value its Feature Store sharing and Studio UI, though improvements are needed in no-code options and seamless UI updates. Competing solutions include DataIKU and Databricks.
Senior Solutions Architect at a tech vendor with 10,001+ employees4.0No summary available
Data Lake and MLOps Lead at a energy/utilities company with 10,001+ employees3.5I've used Amazon SageMaker for years in various data science projects and found it stable and scalable, though scaling operations remains challenging. While effective for ML tasks, broader data infrastructure integration needs improvement. Overall, it's a solid tool.
President & CEO at Y124.0No summary available
AWS & Azure Engineer at a media company with 11-50 employees4.5I use Amazon SageMaker with AWS services for building, training, and deploying AI models. Its valuable features include lifecycle configurations and VPC support. However, improving entry-point documentation on the front page would enhance accessibility for users.
Data Scientist at a computer software company with 5,001-10,000 employees4.0I find Amazon SageMaker valuable for its rich ML libraries and seamless AWS integration, particularly its serverless nature and pay-as-you-go model. However, cost and GPU integration still need improvement, especially for large workloads.
Tech Lead - Sanlam Fintech Cluster - Data,ML,AI Eng. at Sanlam3.5I use Amazon SageMaker for deploying and developing machine learning models. It's a one-stop shop, simplifying management and reducing costs since it's integrated with AWS. However, it lacks comprehensive documentation and isn't as user-friendly as Databricks.