Google Colab takes care of everything around the infrastructure requirements, software requirements and other associated things and lets us focus on solving real challenges in data science - we just need a browser to do even advanced machine learning training! The features l like most are the ability to share the notebooks with colleagues easily, the ability to use libraries like Tensorflow that automatically take care of version dependencies, the ability to use GPUs, and the ability to distributed training of neural network models that require TPUs, free of cost. Review collected by and hosted on G2.com.
There is nothing to dislike about Google Colab as it satisfies most of our standard requirements and has been very helpful for me in my data science work. To increase wider usage, Kaggle features like creating datasets, using notebooks as datasets etc., can be thought of Review collected by and hosted on G2.com.
Through Google Colaboratory, we can easily create, access and manage all our notebooks in a single place without worrying about where each notebook gets saved. It also has auto-save and versioning features, which lets us rest easy knowing that our latest changes are always saved, and we still have the option to fall back to an older version of code if needed.
Another advantage is that we can run our notebooks on more capable hardware than our own system. Review collected by and hosted on G2.com.
A common disadvantage of using Colaboratory is the need to always be online to access our notebooks. There is also the fact that it can't offer the advantages of running Jupyter notebooks on our local machines such as one global installation of required libraries applies to all notebooks calling it. Review collected by and hosted on G2.com.
Simplicity to use by just a web broweser, no need to install RAM hungary clients to access email, video call, chats and productivity tools. Review collected by and hosted on G2.com.
Less colorful graphics. it should be comes with more colorful themes and graphics. Review collected by and hosted on G2.com.
I like best about colaboratory for G Suite is that we can do data analysis seamlessly using Python and ML Models over the cloud interface.
By this, we can also collaborate and contribute to the same project by our team members. It is easy to use, fast and efficient. Review collected by and hosted on G2.com.
Sometimes there is a lag in updates over the code. Libraries other than included with python needs to be installed again in every visit. Overall, a good experience. Review collected by and hosted on G2.com.
Colaboratory offers a cloud Python environment to write and execute code. When it comes to machine learning and data science/analytics, this comes in handy because of its GPU. Quick and fast command execution is made possible due to its cloud GPU. Also, no setup is required, unlike other products. Review collected by and hosted on G2.com.
I have been using Colaboratory for many years now and one thing which could be improved is its speed of loading new databases. Often while working offline, this becomes a hindrance. Review collected by and hosted on G2.com.
The best part about Colaboratory for G Suite is its accessibility; it is really amazing how easy it is to set up a notebook rather than create a whole new notebook (like Jupyter Notebook) using tools like Anaconda. If a user wants to work on a Python project, they can just open the Colaboratory, and one is good to go. Review collected by and hosted on G2.com.
Colaboratory for G Suite has a lot of things to improve; it becomes a little difficult to load the new database and data frames that are present offline. As the interpretation is done online, it gets a little slower as compared to its counterparts. Options are also limited. Review collected by and hosted on G2.com.
I am using this tool for a long time in my organization and the features I mostly like are we can quickly import any Python notebook and use it easily. Also, I use this tool to create different notebooks in Python and can easily share those with anyone in the organization. Review collected by and hosted on G2.com.
I am using this tool but I haven't seen anything that I can say I dislike about this tool as Google is providing everything that can help us while working on this tool. Review collected by and hosted on G2.com.
Colaboratory, a cloud Python environment by Google, offers quick command execution with its cloud GPU. No setup is required, and it allows easy notebook creation and sharing. Collaboration is effortless with shared Google Colab notebooks on Google Drive. With pre-installed libraries like TensorFlow and PyTorch, it's a versatile tool for data analysis and machine learning. Review collected by and hosted on G2.com.
While Colaboratory is a valuable tool, it has areas that could be improved. Users have highlighted issues with the speed of loading new databases and data frames offline, as well as the need to repeatedly install libraries. Additional feedback includes the absence of integrated SQL, frequent runtime refreshes, and a desire for improved project management capabilities. Addressing these concerns would enhance Colaboratory's functionality and strengthen G Suite's position as a leading collaboration and productivity platform. Review collected by and hosted on G2.com.
The best thing I like about Colaboratory is that it runs Python code and machine learning models on the cloud, so my teammates and I can collaborate on the same project. Our Google Colab notebook is saved on Google Drive, so we can access them whenever we require them from any device just using our Google Log-In. Review collected by and hosted on G2.com.
While using Google Colab, we have to perform repititive task. For every new session of Google Colab, we have to install all the libraries that are not there with the Python package. It can be difficult to work with bigger datasets. Review collected by and hosted on G2.com.
Coaboratory is an awesome data analysis and machine learning tool that I highly recommend. It lets you combine Python code with other cool things like charts, images, and even LaTeX in a single document that you can store on Google Drive. One thing I love about Colab is how easy it is to use - you can write and run code right in your browser without needing to install anything on your computer. Plus, it comes with a bunch of useful libraries and packages like TensorFlow and PyTorch, which makes it a great option for exploring different machine-learning techniques. Review collected by and hosted on G2.com.
It lacks few features like it does not have SQL integrated with it and the runtime gets refreshed all the time, it would have been better if it had multiple notebooks just like sheets with excel. Review collected by and hosted on G2.com.