External reviews
External reviews are not included in the AWS star rating for the product.
Extremely nice UI, lots of options and easy to use.
What do you like best about the product?
I love the fact that you can use a GitHub repo and that you get a free decent GPU.
You can also easily share a template you have made which is extremely useful to me.
There is a lot of templates to choose from as well which is helpful and saves time.
You can also easily share a template you have made which is extremely useful to me.
There is a lot of templates to choose from as well which is helpful and saves time.
What do you dislike about the product?
I feel that in the pro version, choosing a GPU is not clear. You see a lot of names but it is not clear which GPU are which.
What problems is the product solving and how is that benefiting you?
For me specifically I needed to run a cloud based Streamlit app with GPU capabilities. Saturncloud has been the easiest platform for this purpose. In my opinion it is one of the easiest platform to use for ML and is solving all the time wasted trying to deploy working code.
- Leave a Comment |
- Mark review as helpful
Useful tool, better than its main counterpart
What do you like best about the product?
Full Jupyter server with all of its features
What do you dislike about the product?
- Absence of customization;
- Pricing;
- Payment methods limitations;
- Pricing;
- Payment methods limitations;
What problems is the product solving and how is that benefiting you?
Training of ML models
"Saturn Cloud: A Stellar Solution for Data Professionals"
What do you like best about the product?
From the moment I started using Saturn Cloud, it became vividly clear that this platform is a game-changer for researchers, data scientists, and machine learning engineers alike. The ease of spinning up Jupyter instances, coupled with the seamless scalability of resources, has remarkably streamlined my workflow.
As a data scientist, the ability to effortlessly scale from a modest dataset on a single machine to vast arrays of data processed across a distributed Dask cluster has not only saved invaluable time but also expanded the horizons of what I can achieve with my data. The integrated environment supports a variety of languages and libraries, which fosters a truly polyglot approach to data analysis and model building.
For machine learning engineers, Saturn Cloud provides a robust and versatile platform that supports the end-to-end machine learning lifecycle. The ease with which one can manage models, from training to deployment, makes it an indispensable tool in the modern ML toolkit.
Researchers benefit from the collaborative features that allow for sharing and reproducing experiments with peers, ensuring that groundbreaking work is not hampered by technical limitations. The platform's commitment to high-performance computing with GPU support means that computationally intensive tasks are handled with elegance and efficiency.
Saturn Cloud has eloquently fulfilled the needs of the data community by providing a platform that is as powerful as it is user-friendly. Their dedication to facilitating high-level data analysis and model development without the usual infrastructure headaches is why I'm giving Saturn Cloud a well-deserved five-star rating. Whether you're a solo data explorer or part of a large team, Saturn Cloud stands out as the celestial body guiding the data cosmos.
As a data scientist, the ability to effortlessly scale from a modest dataset on a single machine to vast arrays of data processed across a distributed Dask cluster has not only saved invaluable time but also expanded the horizons of what I can achieve with my data. The integrated environment supports a variety of languages and libraries, which fosters a truly polyglot approach to data analysis and model building.
For machine learning engineers, Saturn Cloud provides a robust and versatile platform that supports the end-to-end machine learning lifecycle. The ease with which one can manage models, from training to deployment, makes it an indispensable tool in the modern ML toolkit.
Researchers benefit from the collaborative features that allow for sharing and reproducing experiments with peers, ensuring that groundbreaking work is not hampered by technical limitations. The platform's commitment to high-performance computing with GPU support means that computationally intensive tasks are handled with elegance and efficiency.
Saturn Cloud has eloquently fulfilled the needs of the data community by providing a platform that is as powerful as it is user-friendly. Their dedication to facilitating high-level data analysis and model development without the usual infrastructure headaches is why I'm giving Saturn Cloud a well-deserved five-star rating. Whether you're a solo data explorer or part of a large team, Saturn Cloud stands out as the celestial body guiding the data cosmos.
What do you dislike about the product?
It is a pay as you go and may create cost runs.
What problems is the product solving and how is that benefiting you?
The ease of spinning up Jupyter instances, coupled with the seamless scalability of resources, has remarkably streamlined my workflow.
Fantastic computing experience and staff support
What do you like best about the product?
Easy to use and very fast customer support. They have several features available which makes cloud computing a joy!
What do you dislike about the product?
Nothing to dislike. I hope they had a feature to give me a warning if I am about to run out of disk space
What problems is the product solving and how is that benefiting you?
I need multiple cores to run parallel processing libraries which is simply not possible on my local laptop.
Isha's review of Saturn Cloud
What do you like best about the product?
Free CPU and GPU like resources available.
What do you dislike about the product?
Only pro versions have 6+ hours of computing.
What problems is the product solving and how is that benefiting you?
Using saturn cloud to run my deep learning models.
Exceptional
What do you like best about the product?
The disposition of the bot to assist with navigation and its comprehensibility.
What do you dislike about the product?
Quite frankly, I dislike nothing about Saturn cloud
What problems is the product solving and how is that benefiting you?
Saurn Cloud is helpful with solving Nueral Network and Deep Learning problems because of its access to GPU.
Happy
What do you like best about the product?
I had used google Colab previouly, but it was slow where as saturn cloud jupyter notebook is very fast.
What do you dislike about the product?
it should also have it's own ai Code completion
What problems is the product solving and how is that benefiting you?
it's fast and free to use, and i can connect it directly to my vscode which is very helpfull.
I loved the experience with saturn cloud how it is user friendly
What do you like best about the product?
Userfriendly and free gpus for computation for student and ml deployment i really love it
What do you dislike about the product?
Nothing yet during my 1 month of working with saturn
What problems is the product solving and how is that benefiting you?
It is helping me deploy and train models in their platform
Its really good, easy to use, research friendly
What do you like best about the product?
Managed Environments: Saturn Cloud provides managed environments for Jupyter Notebooks and other data science tools, eliminating the need for users to configure and manage their own environments.
Scalability: Users can easily scale their computing resources based on the demands of their workloads. Saturn Cloud offers the ability to access larger machine types or clusters for more substantial computational power.
Collaboration Features: The platform supports collaboration among data science teams. Multiple users can work within the same project, share resources, and collaborate on Jupyter Notebooks in real-time.
Integrated Data Versioning: Saturn Cloud often includes features for data versioning and model versioning, which is crucial for reproducibility and collaboration in data science projects.
Secure and Managed Notebooks: Saturn Cloud provides a secure environment for running Jupyter Notebooks. Users can manage dependencies, libraries, and data securely in a controlled environment.
Efficient Resource Utilization: Users appreciate the ability to spin up and down resources as needed, optimizing costs by paying only for the resources used during active work.
Simplified Deployment: The platform streamlines the deployment of machine learning models, making it easier for data scientists to transition from experimentation to production.
Scalability: Users can easily scale their computing resources based on the demands of their workloads. Saturn Cloud offers the ability to access larger machine types or clusters for more substantial computational power.
Collaboration Features: The platform supports collaboration among data science teams. Multiple users can work within the same project, share resources, and collaborate on Jupyter Notebooks in real-time.
Integrated Data Versioning: Saturn Cloud often includes features for data versioning and model versioning, which is crucial for reproducibility and collaboration in data science projects.
Secure and Managed Notebooks: Saturn Cloud provides a secure environment for running Jupyter Notebooks. Users can manage dependencies, libraries, and data securely in a controlled environment.
Efficient Resource Utilization: Users appreciate the ability to spin up and down resources as needed, optimizing costs by paying only for the resources used during active work.
Simplified Deployment: The platform streamlines the deployment of machine learning models, making it easier for data scientists to transition from experimentation to production.
What do you dislike about the product?
Costs: Some users might find that the costs associated with using cloud platforms, including Saturn Cloud, can be a concern. It's important to carefully manage and monitor resource usage to avoid unexpected expenses.
What problems is the product solving and how is that benefiting you?
Infrastructure Management:
Problem: Setting up and managing infrastructure for data science and machine learning workloads can be complex and time-consuming.
Solution: Saturn Cloud provides managed environments, eliminating the need for users to handle infrastructure setup, configuration, and maintenance.
Scalability:
Problem: Workloads often vary in computational requirements, and managing scalable resources manually can be challenging.
Solution: Saturn Cloud allows users to easily scale resources up or down based on their specific needs, optimizing performance and costs.
Problem: Setting up and managing infrastructure for data science and machine learning workloads can be complex and time-consuming.
Solution: Saturn Cloud provides managed environments, eliminating the need for users to handle infrastructure setup, configuration, and maintenance.
Scalability:
Problem: Workloads often vary in computational requirements, and managing scalable resources manually can be challenging.
Solution: Saturn Cloud allows users to easily scale resources up or down based on their specific needs, optimizing performance and costs.
Great cloud for deep learning
What do you like best about the product?
I use free version for my education and its great. You can get up to 10Gib of space, 16 GB ram and access to good GPU/CPU.
You can easily setup enviroment you need to use.
Their support can be accessed via live chat.
You can have 10 hours of free usage on workstation.
You can easily setup enviroment you need to use.
Their support can be accessed via live chat.
You can have 10 hours of free usage on workstation.
What do you dislike about the product?
Only thing that is bad is that they hide option of 10Gibs under advanced options
What problems is the product solving and how is that benefiting you?
Deep learning image classification - I can finish my university project without problem
showing 31 - 40