In our team, we construct different statistical models to resolve things for clients. We do modelling and segmentation to determine a customer's lifetime value. We do deep learning and protective analysis.
Python RPA leverages the power of Python to automate repetitive tasks and workflows, offering a flexible and scalable solution. It's designed for integration across business processes, aiming to enhance efficiency and operational productivity with its versatile capabilities.


| Product | Mindshare (%) |
|---|---|
| Python RPA | 0.9% |
| UiPath Platform | 10.2% |
| Microsoft Power Automate | 6.7% |
| Other | 82.2% |
Python RPA offers flexible pricing tailored to enterprise needs. Official pricing information remains undisclosed, but users highlight competitive rates, especially for larger implementations. Users report strong ROI and cost savings, with additional costs for customization and support. Licensing is typically annual, with scalable options based on bot usage and features.
Python RPA is employed by businesses to streamline operations, reduce manual workload, and achieve cost savings. Combining Python's robust programming capabilities with automation, it appeals to companies looking to enhance their technology stack. Python RPA's strengths lie in its open-source nature that allows easy customization and a vast library of resources supporting automation tasks. This solution supports a wide range of applications, enabling seamless integration into existing systems and promoting innovation.
What are the key features of Python RPA?Python RPA finds applicability in industries like finance for transaction processing, healthcare for patient record management, and manufacturing for supply chain automation. Its adaptability allows companies to fine-tune the tool to sector-specific challenges, ensuring that automation objectives align with business goals.
Home Credit, Silimed, Hilton, Al Hilal Bank, Baskin and Robbins
| Author info | Rating | Review Summary |
|---|---|---|
| Co - Founder & Chief Data Officer -CDO at Data360 | 4.0 | In my team, we use Python RPA for constructing statistical models and predictive analytics, finding it agile and adaptable. However, improvements are needed in deep learning for security predictions. We've achieved a 40% ROI with this tool. |
| Solutions Architect at mweb | 4.0 | I use Python RPA for test automation, specifically integrating with Jenkins and release pipelines. Its keyword-driven automation and error handling are beneficial, though support needs improvement. We switched from Micro Focus to save costs, and it helps our customers do the same. |
| Full-Stack Python Developer at Optisol | 4.5 | I used Python RPA to transfer data between applications, appreciating its ease of package import and integration capabilities, allowing complex actions in single statements. However, API error feedback needs improvement as it doesn't specify the issue. |

In our team, we construct different statistical models to resolve things for clients. We do modelling and segmentation to determine a customer's lifetime value. We do deep learning and protective analysis.
The processing of data is good. We can use many different types of data, including images and videos. We can use different libraries to do better preprocessing of different types of data. We can do different models in recommendation systems for things like videos and sales strategy. We can do language processing or sentiment analysis to predict things for our clients.
We can design and develop machine learning applications that can predict events. We can use these on libraries to solve complex problems when we have a lot of data.
It's possible to use the solution with other tools. It's very agile.
In the financial advisory and portfolio management space, several budget management applications are now available in the market. These have machine learning based functionality. In Python, I use different machine learning algorithms to enable customers to keep track of their expenses and provide recommendations on better savings. These are machine learning algorithms that customize financial portfolios by looking at income rate tolerance and preferences, et cetera.
I've worked with file detection for secure transactions. I use a machine learning model to predict events related to security transactions by predicting possible routes in advance. They need to improve the part of deep learning that deals with security and the prediction of fraud.
It can be expensive to deploy a lot of models in the cloud, especially if there are large amounts of data.
I haven't had issues with stability.
It is possible to scale the solution, however, it depends on the depth and quality of the data. If you have bad data or low-quality data, you need to fix the process in order to get better data. However, it is a very good tool for constructing a lot of algorithms and combining different tools.
On the web and through the portal, there are a lot of different answers to problems that you can look at. Customer service has been fine overall.
Positive
The initial setup may be straightforward or complex, depending on the behavior of the data. Sometimes it is easy to process the data as it is of better quality. However, if the data isn't as good, it can be more complex.
We have seen a 40% ROI. I've used it to make strategic actions for clients that have helped them uncover relevant insights that have led to cost savings. With this tool, they can explore decisions and make better overall decision-making.
We're just a customer.
It's a good tool. It's easy. I can use it in many different ways and for many different use cases.
I'd recommend the product for data science use cases. It is a robust tool and very useful for constructing historical models. It has artificial intelligence built in.
I'd rate the product eight out of ten.

I use the tool for test automation. We've used it to automate integration and sanity suite test cases using keyword-driven methods.
The tool has brought significant improvements across our business.
Keyword-driven automation has been beneficial in streamlining operations. The error handling capability of Python RPA is fairly good in managing exceptions. I rate it a seven out of ten. We've integrated it with Jenkins and with our release pipeline. It was fairly easy. We had no issues with integration that we couldn’t deal with. The dashboard is simple. We export it to Excel or Power BI and make it look pretty. For our initial use, the dashboard is okay.
Support could be improved.
I have been using the solution for six months. I am using the latest version of the solution.
I rate the tool’s stability an eight out of ten.
It was fairly easy to scale the tool. It adapted easily. We have about 20 users in our organization. There is a separate team to maintain and troubleshoot the product. The tool is pretty scalable. I rate the tool’s scalability an eight out of ten.
Support is regularly available. It's a very fairly open community. I rate the support seven and a half out of ten.
Neutral
We used Micro Focus before. We switched to Python RPA because Micro Focus was expensive.
The deployment was straightforward. The deployment took a week.
The product helps our customers save money.
The tool is not expensive.
I will recommend the product to others. The sooner we start, the better. We should have done it long ago, as soon as we got rid of Micro Focus. Overall, I rate the solution an eight out of ten.
To transfer some data from front end to back end application. I'll see if I want to read the data from database, and I will collect collect from front end. So for that purpose, I have used it.
It is easy to import the packages. And, yeah, instead of writing multiple lines of code, we can do it in a single statement, like a far low, RPA fluke.
The integration capabilities are good.
When we call an API and there is an error, it doesn't tell you what the error is.
I have been using Python RPA for four to five years.
The initial setup is straightforward.
I am using an open-source solution.
Overall, I rate the solution a nine out of ten.