

Find out in this report how the two AI Observability solutions compare in terms of features, pricing, service and support, easy of deployment, and ROI.
Previously we had five employees doing the entire workflow, and now we can do it with two employees because agents are being used to do the same which was previously being done by the employees.
For team productivity, a single ML engineer using DataRobot is equivalent to five to ten traditional ML engineers.
On average, we're saving about 10 to 15 hours per project.
After implementing SentinelOne, it takes about five to seven minutes.
Our ability to get in and review our vulnerability stance, whether daily, monthly, weekly, or whatever it might be, has drastically improved over our prior provider.
It has saved us more than 50% of our time.
If you are paying somewhere between $100,000 to $200,000 annually, you receive a dedicated technical account manager who understands your AWS setup and models, unlike generic ticketing systems.
They answer all my questions and share guidance on using DataRobot scripts if certain functionalities are not available in the UI.
Being cloud-hosted enables automatic resource scaling, which supports collaboration across teams.
Having a reliable team ready and willing to assist with any issues is essential.
Throughout the migration, they remained available for several hours without complaint, providing assistance at every step.
In my experience, I have never encountered a junior person or someone without knowledge coming into support from SentinelOne.
Scalability is where DataRobot truly excels; it manages to handle millions or even billions of rows using technologies such as Spark and Dask for distributed training.
DataRobot's scalability has allowed us to reduce the number of employees needed for model creation.
DataRobot is very scalable because the customer initially started with two licenses, and now they have around 20 licenses.
The SentinelOne Singularity Cloud exhibits high scalability.
We've automated in our MDM so any device that we start in our MDM automatically installs SentinelOne.
It is scalable. I would rate it a ten out of ten for scalability.
Model stability is also reinforced through drift detection and auto-alerts if data changes or model accuracy dips, catching issues before they impact business operations.
I would rate the stability of SentinelOne Singularity Cloud Security a 10 because as of now we have not faced any stability issues.
SentinelOne Singularity Cloud Security operates consistently, and that is how a product should work—you should not have to worry about it.
SentinelOne Singularity Cloud is incredibly reliable.
If DataRobot also adds those data transformation capabilities, then it will be an end-to-end tool and the customer will not have to procure many tools for doing the ingestion and transformation process.
The integration of DataRobot would greatly benefit from allowing more realistic tools and would be improved if it integrates more comprehensively with AWS cloud and other cloud platforms.
For API deployment, we require enhanced data systems, including procuring new servers for GPU support.
It gives our management a false impression of there being no open incidents over that period.
A centralized dashboard with numerous metrics would improve user understanding.
I feel there is room for improvement in SentinelOne Singularity Cloud Security, particularly in creating custom dashboards since it only has a default dashboard feature, and a capability for creating custom dashboards would help us a lot as analysts.
The setup cost was minimal because it's cloud-hosted, eliminating the need for heavy on-premises infrastructure, allowing us to start using it immediately after purchase.
The annual platform license ranges from around $100,000 to $500,000, typically starting at $100,000 per year for small teams with one to two users.
It is a bit expensive but remains very effective.
With very little negotiation involved, we just let them know what we could pay and they were willing to meet us at slightly above what we paid with Sophos, which was still very fair for what we were looking at.
It should not be based on subscription. It should be based on the number of servers that I am scanning.
I was able to consolidate two security vendors into one by switching to SentinelOne, and I now pay less than I did for either of them.
By automating highly technical aspects like model comparison, DataRobot enhances productivity and reduces project timelines from three months to less than one month.
DataRobot has positively impacted our organization in many ways. First, it has improved efficiency; tasks such as model testing, feature engineering, and predictions that used to take us days or weeks can now be accomplished in hours.
The automated machine learning and AI features of DataRobot have helped us build predictive models rapidly using hundreds of algorithms.
This tool has been helpful for us. It allows us to search for vulnerabilities and provides evidence directly on the screen.
The cloud misconfiguration feature gave us almost zero false positives.
The user-friendliness is the most valuable feature.
| Product | Mindshare (%) |
|---|---|
| SentinelOne Singularity Cloud Security | 1.7% |
| DataRobot | 0.7% |
| Other | 97.6% |

| Company Size | Count |
|---|---|
| Small Business | 2 |
| Midsize Enterprise | 1 |
| Large Enterprise | 10 |
| Company Size | Count |
|---|---|
| Small Business | 54 |
| Midsize Enterprise | 27 |
| Large Enterprise | 63 |
DataRobot automates model building and deployment, simplifying MLOps with user-friendly interfaces. Its AutoML and feature engineering streamline model comparison, selection, and testing, enhancing efficiency and scalability.
DataRobot facilitates efficient integration with cloud systems and data sources, reducing manual workload, enhancing productivity, and empowering data-driven decision-making. Its strengths lie in automating complex modeling tasks and supporting multiple predictive models effectively. Users emphasize the need for better handling of large datasets, integration with orchestration tools, and more flexibility for custom code integration and advanced model tuning. They also seek improved support response times, transparent model processing, real-world documentation, and enhanced capabilities in generative AI and accuracy metrics.
What are the key features of DataRobot?DataRobot is adopted across industries like healthcare and education for creating and monitoring machine learning models. It accelerates development with GUI capabilities, aids data cleaning, and optimizes feature engineering and deployment. Organizations can predict behaviors, automate tasks, manage production models, and integrate into data science processes to improve data processing and maximize efficiency.
SentinelOne Singularity Cloud Security offers a streamlined approach to cloud security with intuitive operation and strong integration capabilities for heightened threat detection and remediation efficiency.
Singularity Cloud Security stands out for its real-time detection and response, effectively minimizing detection and remediation timelines. Its automated remediation integrates smoothly with third-party tools enhancing operational efficiency. The comprehensive console ensures visibility and support for forensic investigations. Seamless platform integration and robust support for innovation are notable advantages. Areas for development include improved search functionality, affordability, better firewall capabilities for remote users, stable agents, comprehensive reporting, and efficient third-party integrations. Clarity in the interface, responsive support, and real-time alerting need enhancement, with a call for more automation and customization. Better scalability and cost-effective integration without compromising capabilities are desired.
What are SentinelOne Singularity Cloud Security's standout features?
What benefits should users expect from SentinelOne Singularity Cloud Security?
SentinelOne Singularity Cloud Security is deployed in industries needing robust cloud security posture management, endpoint protection, and threat hunting. Utilized frequently across AWS and Azure, it assists in monitoring, threat detection, and maintaining compliance in diverse environments while providing real-time alerts and recommendations for proactive threat management.
We monitor all AI Observability reviews to prevent fraudulent reviews and keep review quality high. We do not post reviews by company employees or direct competitors. We validate each review for authenticity via cross-reference with LinkedIn, and personal follow-up with the reviewer when necessary.