What is Amazon SageMaker?
Bringing together widely adopted AWS machine learning (ML) and analytics capabilities, Amazon SageMaker delivers an integrated experience for analytics and AI with unified access to all your data. Collaborate and build faster from a unified studio (preview) using familiar AWS tools for model development, generative AI, data processing, and SQL analytics, accelerated by Amazon Q Developer, the most capable generative AI assistant for software development.
Company Details
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Get AssistanceAmazon SageMaker Ratings
Real user data aggregated to summarize the product performance and customer experience.
Product scores listed below represent current data. This may be different from data contained in reports and awards, which express data as of their publication date.
87 Likeliness to Recommend
100 Plan to Renew
85 Satisfaction of Cost Relative to Value
Emotional Footprint Overview
Product scores listed below represent current data. This may be different from data contained in reports and awards, which express data as of their publication date.
+98 Net Emotional Footprint
The emotional sentiment held by end users of the software based on their experience with the vendor. Responses are captured on an eight-point scale.
How much do users love Amazon SageMaker?
Pros
- Continually Improving Product
- Reliable
- Enables Productivity
- Unique Features
How to read the Emotional Footprint
The Net Emotional Footprint measures high-level user sentiment towards particular product offerings. It aggregates emotional response ratings for various dimensions of the vendor-client relationship and product effectiveness, creating a powerful indicator of overall user feeling toward the vendor and product.
While purchasing decisions shouldn't be based on emotion, it's valuable to know what kind of emotional response the vendor you're considering elicits from their users.
Footprint
Negative
Neutral
Positive
Feature Ratings
Performance and Scalability
Data Labeling
Feature Engineering
Ensembling
Data Pre-Processing
Model Monitoring and Management
Model Training
Algorithm Diversity
Algorithm Recommendation
Model Tuning
Explainability
Vendor Capability Ratings
Ease of Customization
Vendor Support
Ease of Data Integration
Breadth of Features
Ease of IT Administration
Ease of Implementation
Availability and Quality of Training
Quality of Features
Business Value Created
Usability and Intuitiveness
Product Strategy and Rate of Improvement
Amazon SageMaker Reviews
Jordan P.
- Role: Operations
- Industry: Technology
- Involvement: End User of Application
Submitted Sep 2025
Perfect for my data and AI analytics needs.
Likeliness to Recommend
What differentiates Amazon SageMaker from other similar products?
Sagemakers ability to scale automatically with our needs, is what I believe is one of the key things which stands it out from similar products. It is able to re-adjust resource management and reprovisioning , based on the immediate requirement of my workload. This ability to scale in real time with departmental needs strongly appeals to me.
What is your favorite aspect of this product?
Sagemaker reduces development time for me , as a result of its in-built models and algorithms. When working on regular use-cases such as natural language processing, I do not need to build my own models from scratch but simply leverage one of the hundreds of pretrained models which Sagemaker already provides me.
What do you dislike most about this product?
I think Sagemaker makes my department overly dependent on Amazon web service infrastructure, This will make the process of moving workflows or pipeline models to another cloud vendor very cumbersome, as a result of differences in model formats between Sagemaker and the cloud provider we are migrating to and of course this raises the need to refactor code.
What recommendations would you give to someone considering this product?
I think Sagemaker is most ideal and effective within organizations which already operates on Amazons web service , infrastructure.
Pros
- Reliable
- Performance Enhancing
- Enables Productivity
- Security Protects
Oluwaseun E.
- Role: Information Technology
- Industry: Technology
- Involvement: IT Development, Integration, and Administration
Submitted Mar 2025
A product that solves deployment issues
Likeliness to Recommend
What differentiates Amazon SageMaker from other similar products?
It's a fully managed machine learning (ML) service that enables developers and data scientists to build, train, and deploy ML models quickly and efficiently, offering tools for data preparation, model building, training, and deployment.
What is your favorite aspect of this product?
My favourite aspect os the unified studio and this provides a single, web-based interface for all ML development tasks, from data preparation to model deployment, facilitating collaboration and agile development.
What do you dislike most about this product?
When running large-scale training jobs or deploying models for high-traffic inference can increase costs.
What recommendations would you give to someone considering this product?
If you want to deploy your machine learning model Amazon sagemaker is your get to go product
Pros
- Helps Innovate
- Continually Improving Product
- Reliable
- Performance Enhancing
Lanre A.
- Role: Finance
- Industry: Finance
- Involvement: End User of Application
Submitted Mar 2025
Very Powerful product in model tuning/deployment
Likeliness to Recommend
What differentiates Amazon SageMaker from other similar products?
Super Powerful tool and it's integration to S3, Redshift and other familiar products makes it super comfortable to use.
What is your favorite aspect of this product?
Very Powerful and easy to scale.
What do you dislike most about this product?
A whole lot to learn on how to use. Being a cloud product, you must be extra careful on not using things you do not need as one would be charged for it.
What recommendations would you give to someone considering this product?
You must be well skilled running ML models on your local computer before trying out the cloud (Sagemaker)
Pros
- Continually Improving Product
- Reliable
- Performance Enhancing
- Enables Productivity