Budget: 25 EUR Deadline: 5 days
Have you thought about how to simplify the routine processing of databases? Your project to merge data from Google Sheets not only addresses this issue but also significantly simplifies daily data operations. Using Python and its powerful libraries, such as pandas, I am ready to create an adaptive and reliable script that will ensure flexible management of structures and precise data standardization. My experience in automating processes and working with Google API allows me to quickly respond to changes and malfunctions. Let's discuss the project details!
Budget: 100 EUR Deadline: 1 day
Good day! I am ready to complete this project and have extensive experience in developing various applications.
Budget: 25 EUR Deadline: 1 day
Hello.
I was interested to learn about your project. I am confident that I can do effective and quality work that meets your requirements and expectations. I have over 8 years of experience. I am ready to discuss the details and start working. I will be waiting for your response, feel free to write and we will discuss.
Budget: 25 EUR Deadline: 2 days
Good day! I have experience in creating scripts for automation and working with Google API, I can help with your task, ready to start working today.
Budget: 200 EUR Deadline: 5 days
Hello,
I am interested in your project and task, and I would be happy to complete it for you. Regarding the program and script, its configuration is clear. I would like to review examples of the tables and am ready to start working.
Budget: 25 EUR Deadline: 1 day
Hello!
I have experience working with Google API, ready to help automate your work.
Budget: 100 EUR Deadline: 3 days
Hello, I am ready to help with the implementation of the task. I have professional experience and skills in similar solutions. I will propose the optimal solution. Feel free to reach out.
- Projects 21
- Rating 5.0
- Rating 1 860
Budget: 198 EUR Deadline: 1 day
Hello. It seems to me that in this case, it would be more convenient for you to have a program with an interface to make it easier to match the headers between the source tables and the master table. Regarding the unification-standardization of fields, this needs to be considered and developed for a specific case, as you mentioned only the field "Location"; we will need to look at how these "Locations" are filled out and write a separate standardization-unification for these types. Creating a single standardization for everything in the world is impossible; it is necessary to know in advance and develop a standardization for each case. The number of these standardizations affects the price.
Budget: 100 EUR Deadline: 2 days
Hello.
I am a NodeJS developer. I have experience with Google Sheets. I am ready to take on the task. Write to me, we will discuss.
Budget: 120 EUR Deadline: 5 days
Good day. I have the necessary experience with these libraries. It would be preferable to see at least test datasets. I would be happy to collaborate.
- Projects 4
- Rating 5.0
- Rating 484
Budget: 350 EUR Deadline: 3 days
Hello, my profile has been an app script on Google Sheets from the very beginning. I will develop a custom solution based on your request. I will adjust where I see the specifications. I have already had similar cases, and clients left very positive feedback.
I am ready to start working today.
Budget: 370 EUR Deadline: 9 days
Good day, I am ready to complete this work within the specified time. Please provide examples of tables. Thank you.
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