Show rating breakdown
Save to My Lists
Unclaimed
Unclaimed

Red Hat OpenShift Data Science Reviews & Product Details

Camila C.
CC
Digital Marketing Specialist
Enterprise(> 1000 emp.)
More Options
Validated Reviewer
Review source: G2 invite
Incentivized Review
What do you like best about Red Hat OpenShift Data Science?

It provides a unified workflow for data exploration, model construction, deployment, and administration. This integrated solution reduces the need for different tools and simplifies the data science process, allowing teams to concentrate on providing insights and driving innovation. Red Hat OpenShift uses containerization technology, allowing simple deployment and scalability. The platform offers consistency across diverse environments and simplifies the management of complex deployments by encapsulating data science workloads in containers. Because of its scalability, it is suited for enterprise-level applications that require large-scale data processing and analysis. Review collected by and hosted on G2.com.

What do you dislike about Red Hat OpenShift Data Science?

The platform offers powerful model-building and deployment capabilities, but more comprehensive tools and features are available to monitor model performance, track model versions, and assure regulatory compliance. Enhancing the platform with built-in model monitoring tools, such as real-time performance metrics and anomaly detection, would allow data scientists to proactively discover and address deployed models. Incorporating model governance elements such as model versioning, auditing, and explainability would give enterprises more control and insight over their machine-learning models. Review collected by and hosted on G2.com.

What problems is Red Hat OpenShift Data Science solving and how is that benefiting you?

Red Hat OpenShift Data Science has dramatically influenced my job. Our data science workflows have been optimized due to the platform's seamless integration of tools and services, allowing us to offer insights and solutions more efficiently. Thanks to the containerized design, we could scale our models, manage enormous datasets, and generate maintenance models for a client. The platform's end-to-end capabilities, ranging from feature consistency across several platforms to scalability, allow us to handle large-scale data requirements. Review collected by and hosted on G2.com.

Red Hat OpenShift Data Science Overview

What is Red Hat OpenShift Data Science?

Red Hat® OpenShift® AI is a flexible, scalable artificial intelligence (AI) and machine learning (ML) platform that enables enterprises to create and deliver AI-enabled applications at scale across hybrid cloud environments. Built using open source technologies, OpenShift AI provides trusted, operationally consistent capabilities for teams to experiment, serve models, and deliver innovative apps.

Red Hat OpenShift Data Science Details
Show LessShow More
Product Description

Red Hat® OpenShift® AI is a flexible, scalable artificial intelligence (AI) and machine learning (ML) platform that enables enterprises to create and deliver AI-enabled applications at scale across hybrid cloud environments. Built using open source technologies, OpenShift AI provides trusted, operationally consistent capabilities for teams to experiment, serve models, and deliver innovative apps.


Seller Details
Seller
Red Hat
Year Founded
1993
HQ Location
Raleigh, NC
Twitter
@RedHat
294,341 Twitter followers
LinkedIn® Page
www.linkedin.com
19,863 employees on LinkedIn®
Description

At Red Hat, they connect an innovative community of customers, partners, and contributors to deliver an open source stack of trusted, high-performing technologies that solve business problems.

Recent Red Hat OpenShift Data Science Reviews

KR
kelly R.Mid-Market (51-1000 emp.)
5.0 out of 5
"Allows you to explore and discover valuable insights"
My overall experience with Red Hat OpenShift Data Science has been excellent. The software has exceeded my expectations in terms of its performance...
Adrian Andres J.
AJ
Adrian Andres J.Enterprise (> 1000 emp.)
4.5 out of 5
"Transforming Business Analysis: Containerization for Agile Collaboration"
Containerization offers unrivaled scalability and flexibility in the area of finance, where working with large datasets and complicated algorithms ...
JM
Jaime M.Mid-Market (51-1000 emp.)
4.5 out of 5
"Real-Time Data Processing and Collaboration: The Key to Business Success with OpenShift Data Science"
Hat Red With containerization, OpenShift Data Science offers a distinctive method for managing data science workflows. We may use this capability t...
Security Badge
This seller hasn't added their security information yet. Let them know that you'd like them to add it.
0 people requested security information

Red Hat OpenShift Data Science Media

Answer a few questions to help the Red Hat OpenShift Data Science community
Have you used Red Hat OpenShift Data Science before?
Yes

24 out of 25 Total Reviews for Red Hat OpenShift Data Science

4.4 out of 5
The next elements are filters and will change the displayed results once they are selected.
Search reviews
Popular Mentions
The next elements are radio elements and sort the displayed results by the item selected and will update the results displayed.
Hide FiltersMore Filters
The next elements are filters and will change the displayed results once they are selected.
The next elements are filters and will change the displayed results once they are selected.

Red Hat OpenShift Data Science Pros and Cons

How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Cons
G2 reviews are authentic and verified.
KR
Digital Media Manager
Marketing and Advertising
Mid-Market(51-1000 emp.)
More Options
Validated Reviewer
Review source: G2 invite
Incentivized Review
What do you like best about Red Hat OpenShift Data Science?

My overall experience with Red Hat OpenShift Data Science has been excellent. The software has exceeded my expectations in terms of its performance and ease of use. Additionally, the support and documentation provided by Red Hat has been extremely helpful in resolving any issues or concerns that have arisen. It is especially suitable for research and development projects, as well as for companies that require real-time data analysis. Its ability to process large volumes of data and its integration with other tools allows users to efficiently. Review collected by and hosted on G2.com.

What do you dislike about Red Hat OpenShift Data Science?

I can only say from my experience that some advanced features may require more specialized technical knowledge, which may limit their use for those who are less familiar with data analysis. Review collected by and hosted on G2.com.

What problems is Red Hat OpenShift Data Science solving and how is that benefiting you?

It has allowed me to perform complex data analysis efficiently and obtain valuable insights for my organization. This software allows us to access advanced tools and functions to process large amounts of data and extract valuable insights. Its use case ranges from data analysis and visualization to the creation of predictive models and the implementation of real-time solutions. Review collected by and hosted on G2.com.

Adrian Andres J.
AJ
Accounting and Reporting Analyst
Enterprise(> 1000 emp.)
More Options
Validated Reviewer
Review source: G2 invite
Incentivized Review
What do you like best about Red Hat OpenShift Data Science?

Containerization offers unrivaled scalability and flexibility in the area of finance, where working with large datasets and complicated algorithms is standard. It enables us to containerize our data science workloads, ensuring reliable performance in a range of settings. This feature greatly speeds up the creation and deployment of financial models. Our financial analysis team benefits greatly from the collaboration that Red Hat OpenShift Data Science fosters. We can work on projects at the same time, keep track of changes, and smoothly combine contributions thanks to its interaction with Git and other version control systems. When working with several stakeholders that need to analyze and contribute to financial models and studies, this skill is important. Review collected by and hosted on G2.com.

What do you dislike about Red Hat OpenShift Data Science?

Scalability-enabling containerization may also need a lot of resources. Running numerous containers at once might place a burden on hardware resources and demand a lot of processing power. Hardware changes might be required as a result, which would raise the overall implementation cost. Review collected by and hosted on G2.com.

What problems is Red Hat OpenShift Data Science solving and how is that benefiting you?

My responsibilities include managing crucial financial analysis, risk evaluations, and modeling. We have changed our strategy with the help of Red Hat OpenShift Data Science. Finance is based on collaboration, which Red Hat OpenShift Data Science excels at fostering. Our financial assessments now have better quality because of version control, collaboration on projects, and traceability of changes.

Now, our team can work together to develop intricate models while utilizing the unique skills of each team member. We got answers more quickly, which allowed us to decide on our investment portfolio in real time. Now that we have complete transparency into the contributions and modifications made by each team member, we can work together to construct complex financial models. This has increased the precision of our models while also speeding up project completion. Review collected by and hosted on G2.com.

JM
Senior Accounting and Finance Manager
Market Research
Mid-Market(51-1000 emp.)
More Options
Validated Reviewer
Review source: G2 invite
Incentivized Review
What do you like best about Red Hat OpenShift Data Science?

Hat Red With containerization, OpenShift Data Science offers a distinctive method for managing data science workflows. We may use this capability to package up our financial models, algorithms, and data pipelines, assuring consistency and reproducibility throughout different phases of research. It streamlines the creation and application of sophisticated financial models, improving the effectiveness of our job. Data that is current is essential for financial analysis. We can evaluate and respond to financial data as it is generated or received thanks to OpenShift Data Science's capability for real-time data processing, which distinguishes it from many other platforms. For monitoring market trends, adapting investment plans to shifting economic conditions, and tracking market movements, this real-time capability is crucial. Review collected by and hosted on G2.com.

What do you dislike about Red Hat OpenShift Data Science?

The platform can become quite demanding when dealing with large amounts of data. A robust hardware infrastructure is necessary to take full advantage of its capabilities. Review collected by and hosted on G2.com.

What problems is Red Hat OpenShift Data Science solving and how is that benefiting you?

By enabling us to containerize complex models, OpenShift Data Science and Machine Learnig platform has substantially enhanced my job and sped up our financial modeling and forecasting procedures. The transition from development to production is made easier and results are guaranteed to be consistent. Our approach to handling financial data has changed as a result of its containerization, real-time data processing, and collaborative capabilities. I and other finance professionals can make quick, accurate judgments based on data thanks to this platform. Financial success depends on staying ahead of market trends and economic upheavals. We have the ability to quickly make educated decisions thanks to real-time data processing capabilities. As a result, we are better able to predict the financial future, which helps us plan out our resource allocation and investment strategies more effectively. Review collected by and hosted on G2.com.

MP
Financial Analyst
Market Research
Mid-Market(51-1000 emp.)
More Options
Validated Reviewer
Review source: G2 invite
Incentivized Review
What do you like best about Red Hat OpenShift Data Science?

When it comes to effortlessly incorporating containerization into the machine learning workflow, Red Hat OpenShift Data Science excels. This functionality makes sure that machine learning models created in one environment can be reliably applied during other production and development stages. It makes the transition from development to production seamless and gets rid of the compatibility problems sometimes connected with model deployment. It offers a central platform where analysts, engineers, and data scientists can easily cooperate. This collaborative setting encourages knowledge exchange, quickens project turnaround times, and improves the caliber of machine learning models. Review collected by and hosted on G2.com.

What do you dislike about Red Hat OpenShift Data Science?

Red Hat OpenShift Data Science shines as a reliable platform in the field of machine learning. It has excellent orchestration of ML pipelines. Nonetheless, there is still potential for improvement in terms of streamlining the deployment procedure and providing a more seamless conversion from model development to practical use. Review collected by and hosted on G2.com.

What problems is Red Hat OpenShift Data Science solving and how is that benefiting you?

For predictive maintenance, we had to implement a sophisticated machine learning model. The model performed consistently in our production environment thanks to the containerization characteristics of Red Hat OpenShift Data Science. This not only helped us save time, but it also increased the model's dependability, enabling us to take preventative maintenance measures to minimize downtime. Review collected by and hosted on G2.com.

MG
Small-Business(50 or fewer emp.)
More Options
Validated Reviewer
Review source: G2 invite
Incentivized Review
What do you like best about Red Hat OpenShift Data Science?

Excellent platform that combines the flexibility and scalability of Red Hat OpenShift with the capabilities of data science. This solution offers a centralized, integrated environment that makes it easy to develop, deploy, and manage data science applications. The ability to transform large volumes of data into relevant and actionable information has fueled the growth and success of many companies. Review collected by and hosted on G2.com.

What do you dislike about Red Hat OpenShift Data Science?

There is nothing that I dislike about this platform since it allows data scientists to work with the best tools that fit each need and the best preferences in the best way. Review collected by and hosted on G2.com.

What problems is Red Hat OpenShift Data Science solving and how is that benefiting you?

This platform makes it easy to integrate with popular tools and languages like Jupyter Notebooks, Python, and R. This best enables data scientists to work with the tools that best fit their needs and preferences, allowing for easy scalability and flexibility of data science environments. This ensures that applications can grow with the changing needs of the organization. Review collected by and hosted on G2.com.

BA
Mid-Market(51-1000 emp.)
More Options
Validated Reviewer
Review source: G2 invite
Incentivized Review
What do you like best about Red Hat OpenShift Data Science?

Because Red Hat OpenShift Data Science is an open-source platform, it is free to use and change. It makes it an excellent choice for enterprises wishing to tailor the platform to their requirements. Jupyter Notebooks, TensorFlow, and PyTorch are among the integrated tools on the forum. It makes it simple for data scientists to use machine learning tools they are currently familiar with. It allows enterprises to select the deployment environment that best suits their requirements. Review collected by and hosted on G2.com.

What do you dislike about Red Hat OpenShift Data Science?

Red Hat OpenShift Data Science documentation may be enhanced. Some documentation is out of date or incomplete. The community surrounding Red Hat OpenShift Data Science is still tiny. It can make finding help and support for the platform challenging. Review collected by and hosted on G2.com.

What problems is Red Hat OpenShift Data Science solving and how is that benefiting you?

For the past few months, I've been using Red Hat OpenShift Data Science, and I've found it to be a helpful tool for my work as a data scientist. The platform made it simple to start with machine learning and gave me the tools to construct and deploy machine learning models. I've also found the Red Hat OpenShift Data Science community helpful and encouraging. Overall, Red Hat OpenShift Data Science has wowed me. It is a sophisticated and adaptable tool that has aided my work as a data analyst. Review collected by and hosted on G2.com.

Matias A.
MA
Data Engineer
Mid-Market(51-1000 emp.)
More Options
Validated Reviewer
Review source: G2 invite
Incentivized Review
What do you like best about Red Hat OpenShift Data Science?

Encourages teams of data scientists and machine learning experts to work together seamlessly. It provides a single platform for sharing code, data, models, and experiments among team members. It enables more effective cooperation, knowledge sharing, and increased production. Furthermore, the platform automates the deployment and management of machine learning models, allowing teams to develop, experiment, and provide results more quickly. It offers a unified platform for data scientists to execute operations like data intake, exploration, visualization, preprocessing, model training, validation, and deployment. It eliminates the need to transfer between tools or environments, optimizing the workflow and saving time and effort. Review collected by and hosted on G2.com.

What do you dislike about Red Hat OpenShift Data Science?

The interpretability and transparency of machine learning models is one area that could benefit from future research. Currently, the platform lacks built-in tools or functionalities for model interpretation. It might make it difficult for data scientists to comprehend why a model generated a specific prediction, which is essential when explaining and justifying model decisions to users. Review collected by and hosted on G2.com.

What problems is Red Hat OpenShift Data Science solving and how is that benefiting you?

One area where the software has proven to be beneficial is model deployment and management. I've been able to effortlessly deploy and upgrade machine learning models in production scenarios with its smooth interface with version control systems and automated deployment features. It saves me significant time and effort, allowing me to concentrate on refining and enhancing the models rather than dealing with time-consuming deployment processes. Review collected by and hosted on G2.com.

JV
It Reporting & Analytics
Market Research
Mid-Market(51-1000 emp.)
More Options
Validated Reviewer
Review source: G2 invite
Incentivized Review
What do you like best about Red Hat OpenShift Data Science?

One of the most notable features of Red Hat Openshift Data Science is its versatility. The platform allows users to easily build and deploy machine learning models in any programming language. In addition to having the possibility of working together on a single project allows for more fluid communication, avoiding duplication of efforts and increasing efficiency in data management. Review collected by and hosted on G2.com.

What do you dislike about Red Hat OpenShift Data Science?

Although overall Red Hat Openshift Data Science is an impressive tool, there are areas that could be improved. One of them is the initial learning curve. Despite its simple interface, some of the more advanced functionality can be a bit overwhelming for newcomers. Review collected by and hosted on G2.com.

What problems is Red Hat OpenShift Data Science solving and how is that benefiting you?

Red Hat Openshift Data Science emerges as an invaluable ally in solving a variety of business and scientific problems. Among them, the ability to perform predictive and generative analysis stands out, improve decision-making in real time, identify hidden patterns in large data sets, and optimize processes by detecting anomalies and automating repetitive tasks. Review collected by and hosted on G2.com.

DV
Mid-Market(51-1000 emp.)
More Options
Validated Reviewer
Review source: G2 invite
Incentivized Review
What do you like best about Red Hat OpenShift Data Science?

Unlike similar applications, Red Hat OpenShift Data Science has a unique feature that allows data scientists, engineers, and IT teams to collaborate seamlessly. Stakeholders can install machine learning models, access and share real-time information, and collaborate on projects using its intuitive interface, all inside a secure and centralized environment. This collaborative functionality significantly improves productivity, communication, and decision-making, distinguishing Red Hat OpenShift Data Science in the industry. The application transforms the data science workflow by enabling automated lifecycle management. That means that the software streamlines the entire process, from model creation to deployment, removing the need for manual interventions and lowering the chance of errors. Data engineers and scientists may focus more on innovation with a single platform that automates model versioning, monitoring, and scaling. Review collected by and hosted on G2.com.

What do you dislike about Red Hat OpenShift Data Science?

Red Hat OpenShift Data Science's testing capabilities could be expanded by delivering a comprehensive and user-friendly automated testing framework. It would aid in model validation and assure optimal performance in various settings, allowing data engineers to confidently deploy their models in production systems. Review collected by and hosted on G2.com.

What problems is Red Hat OpenShift Data Science solving and how is that benefiting you?

As a data engineer, Red Hat OpenShift Data Science has helped us accelerate our data-driven projects. My team and I have seamlessly combined the experience of data scientists and IT teams by exploiting its collaborative model deployment capability and rapidly deploying complex predictive models into our production environment. The automatic lifecycle management tool guarantees that models are efficiently versioned, monitored, and scaled, removing the need for manual intervention and enhancing our team's productivity. This program has proven to be an incredible asset, allowing me to focus more on extracting relevant insights from massive amounts of data and delivering significant outcomes to our firm. Review collected by and hosted on G2.com.

BI
Marketing Specialist
Marketing and Advertising
Mid-Market(51-1000 emp.)
More Options
Validated Reviewer
Review source: G2 invite
Incentivized Review
What do you like best about Red Hat OpenShift Data Science?

What I like most about this tool is that it offers a huge number of tools and services that make it easy to integrate and analyze data from different sources and formats. It also allows you to run machine learning models both internally and in hybrid cloud environments. Review collected by and hosted on G2.com.

What do you dislike about Red Hat OpenShift Data Science?

Since we are using this tool, we can say that it is one of the great ones that we have used, besides that we have not found any fault with this product since it is very easy to manage container applications and the problems related to them, such as the Scanning of container images and related values before production deployment. Review collected by and hosted on G2.com.

What problems is Red Hat OpenShift Data Science solving and how is that benefiting you?

I have been using OpenShift for over 2 years. I have seen many improvements in Openshift and it just keeps getting better. Most importantly, it provides a free lifetime account that can be used as part of OpenShift. Most importantly, you can attach your own domain to your app, even with a free account. Review collected by and hosted on G2.com.