2019-01-17T07:50:00Z

What is your primary use case for Anaconda?

Julia Miller - PeerSpot reviewer
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11 Answers

AP
Real User
2020-08-13T08:33:00Z
Aug 13, 2020

In Anaconda, we get everything: RStudio, Spyder, and Jupyter. R Studio is for R, and Spyder and Jupyter are for Python. Using these, we will be doing data wrangling and data modeling for a developing project.

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LN
Real User
2020-01-12T12:03:00Z
Jan 12, 2020

l began using it because it was open source and it was free and I knew other people who were using it. I just installed it and I got on with my testing. It was very useful for me because I could save my coding and present it to my assessor.

PB
Real User
2019-12-23T07:05:00Z
Dec 23, 2019

We primarily use the solution for the data science class. It's used for people to build their data science models.

HK
Real User
2019-12-19T06:32:00Z
Dec 19, 2019

I was using this solution for buildings some PoCs, as well as during a hackathon.

SK
Real User
2019-12-16T08:14:00Z
Dec 16, 2019

I use the solution for learning purposes only. I don't use it for any production standard quota, and have not deployed it.

AA
Real User
2019-12-16T08:14:00Z
Dec 16, 2019

We use different data science platforms for customer-specific projects. Whatever is being requested by, or is required by the customer, we learn it. Python is one of the technologies that we have a lot of experience with, and it is part of Anaconda. Our primary use case is analytics. We use Anaconda to build models that predict the probability of an event, or it can be used for classification purposes. There are various uses for this tool. One of the things that we do is subrogation and I can explain by using the example of a car accident. When an accident happens, you take your car to your insurance company and give them details about what happened. Also, the advisor at a service center will write down relevant information and supply it to the insurance company as well. At this point, the insurance company reimburses expenses for all of the damages that you have incurred. At the same time, they would like to find out if there is any fault that can be attributed to another person. If so, then they want to know whether it is possible to make any kind of recovery from that person or their insurance company. With thousands of these claims coming into the insurance companies, it is very difficult for somebody to read all of the information and decide whether there is a potential for recovery or not. This is where our application comes into effect. We read all of the data into our software, which is built with Python using Anaconda, and try to gain an understanding of each and every case. This includes many details, even claim history, and we try to assess what the chances are of recovery or what the chances are of subrogation in each case. This is just an example from one of our several clients. Each customer has different requirements and we customize a solution based on their needs.

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PB
Real User
2019-12-15T05:58:00Z
Dec 15, 2019

I use this solution for some of my assignments. Basically, it is used to take data from our database, analyze it, and make predictions.

MH
Real User
2019-12-12T07:48:00Z
Dec 12, 2019

We use Anaconda to develop machine learning models. Use primarily use Scikit-learn and TensorFlow.

AG
Real User
2019-12-11T05:40:00Z
Dec 11, 2019

We primarily use the solution for deep learning and machine learning.

DA
Real User
2019-12-09T10:58:00Z
Dec 9, 2019

My position is master of data and we are a customer of Anaconda. Our primary use case was to find technological solutions to manage our warehouse in conjunction with our customer base. Anaconda enabled me to plot the data on a graph and find the optimal area for where our warehouse should be located.

NG
Real User
2019-01-17T07:50:00Z
Jan 17, 2019

The best platform for a data scientist for development purposes. It supports applications which are needed for data analytics like Jupiter and predictive analytics like R.

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