Budget: 3000 UAH Deadline: 1 day
Ready to write a parser for the site https://aviation-safety.net/database/ that will scrape all events from it. Then, if you tell me the criteria to determine the required level of disaster, I will add filtering by this level.
In order to filter out 20k disasters, it is necessary to scrape all.
Budget: 1200 UAH Deadline: 3 days
Good day. The technical specification is very general, but if you provide a more detailed one, we can work. The website for parsing is not complicated. I am indicating the minimum budget.
Budget: 4400 UAH Deadline: 4 days
Hello, Pavlo! I have experience with parsing large volumes of data and building systems for processing structured data. I will use Go/Java/Perl to extract 20,000 records with disaster parameters, including geolocations. I will use PostgreSQL/MongoDB for data storage, and I will also set up CI/CD for process automation. I propose a price of 15,000 UAH for full implementation, including integration with the admin panel. I look forward to your response!
Budget: 4400 UAH Deadline: 3 days
Good day. Interesting task, I can take it on. The only question is whether the incident is small or not small. Write to me, we will discuss.
Budget: 900 UAH Deadline: 1 day
Hello!
I have experience in developing parsers and working with large data sets.
I analyzed the website: I will collect a clean database with coordinates and export it to your admin panel. Write to me, I am ready to collaborate!
Budget: 1000 UAH Deadline: 1 day
Hello, Pavel! Scale... What are the deadlines and payment? Waiting for your message.
Budget: 1200 UAH Deadline: 1 day
Hello!
The task is clear. I have experience in parsing large databases.
I will collect all the data, filtering only what you need from this website.
Result
- a file with the complete dataset
- a possible test demo fragment (50–100 events)
I will complete it for 1000 UAH
I am ready to start immediately after access is provided and the output format is confirmed.
Budget: 2000 UAH Deadline: 3 days
Hello! I have carefully reviewed your project and am ready to start working. I guarantee quality and timely execution.
Budget: 1000 UAH Deadline: 2 days
Good day, I can help with gathering information and provide you with the final information. I also work with AI to find the necessary information.
Budget: 1000 UAH Deadline: 1 day
Hello, I write scripts for automation and data parsing in Python, C++. I have experience in this. Write to me in private messages, we will discuss the details in more detail. Feel free to reach out.
Budget: 1000 UAH Deadline: 2 days
Good day, Pavel! I am ready to scrape the data you need from the specified source. Feel free to reach out!
Budget: 1000 UAH Deadline: 1 day
Hello. I am ready to do it in Python, the price is specific. I will create a structured file (in the format you request), without duplicates.
Budget: 1000 UAH Deadline: 3 days
Good afternoon
Please provide the source for parsing and in what format you need the result?
We will discuss the price after reviewing the donor.
Budget: 1200 UAH Deadline: 1 day
Pavel, good afternoon.
I studied the technical specifications. I am ready to implement.
I have extensive experience in data parsing and automation.
Budget: 1200 hryvnias.
Write to me. We will discuss the details.
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Yury V. 10 FebruaryЕсть ли в админке отдельные поля под широту и долготу, или их нужно «выкусывать» из описания?
В каком формате нужно передать данные?
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Yury Y. 10 FebruaryНужно спарсить весь интернет? )
Парсинг подразумевает наличие донора, откуда берутся данные.
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Pavel Pavel
10 February
как вариант - можно этот портал взять за донора
https://aviation-safety.net/ -
Pavel Pavel
10 February
Только там прям очень много инцидентов - а мне надо не маленькие инциденты типа на посадке шина отлетела, а те катастрофы где самолет разбился.
И чтобы в сумме вышло 20к таких катастроф.
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