Python Engineer, Webscraper

FPSG Connect
Edinburgh
1 year ago
Applications closed

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Overview

Ref:

Python Engineer, Webscraper

Hybrid Edinburgh

About:

Do you enjoy extracting effective data from the web then transforms it into usable formats? Are you passionate about ML and AI? Have you advanced Python skills? If so this exciting opportunity should be for you. This role will allow you to join a dynamic fintech company playing a crucial role in reshaping the norm.

Key Responsibilities:

  • Developing and implementing web scraping tools using Python and JavaScript.
  • Analysing website structures and data patterns to inform scraping strategies.
  • Writing efficient scripts designed to handle dynamic and complex content.
  • Designing extraction workflows to collect the targeted information.
  • Data sanitation and normalisation to feed Machine Learning.
  • Processing and formatting extracted data into practical, usable forms.
  • Performing data cleaning to ensure precision and uniformity.

Essential Skills:

  • Advanced knowledge of Python
  • Working knowledge of Web scraping tools such as Beautiful Soup, Scrapy, ParseHub, OctoParse, Scraper API, Mozenda, Webhose.io, Content Grabber
  • Experience scraping large complex Data sets
  • Understanding technologies such as HTML CSS JavaScript
  • Exposure to manipulation libraries such as Pandas or NumPy
  • Working Knowle...

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