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Data Engineer

Doctify
City of London
2 weeks ago
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Overview

We're Doctify. Doctify is a global HealthTech leader building the largest global network of validated healthcare providers and experts. Our mission is to help millions of patients around the world find the right doctor or clinic when they need care. Backed by $30m+ in funding and operating across 6 countries, we've already supported over 100 million patients and we're just getting started.

About The Role

To achieve our mission, we need to provide the highest quality data - supporting our sales and marketing teams, and most importantly, the patients who rely on Doctify.com. Our Data team is at the heart of this mission as we continue expanding across the six markets where we operate. We\'re now looking for a Data Engineer to help us build and maintain a world class database that will fuel Doctify\'s ongoing growth.

You\'ll Be Responsible for
  • Processing and formatting data into the Doctify database creating a clean, efficient and actionable store of data.
  • Finding new methods to automate profile enrichment
  • Working with third party suppliers to improve our data
  • Rigorously checking the data we have for inaccuracies and duplicates from the, data that we acquire, ensuring it\'s filled correctly, and that it\'s accurate, and helpful to patients
About you
  • Experience with LLMs (e.g., ChatGPT, Google Gemini or similar), including general usage, API implementation, and prompt construction
  • Strong Excel proficiency, including formulas such as VLOOKUPs and handling large datasets
  • Skilled in coding using Python, with experience in data analysis (Pandas), API integration, and preferably web scraping (Beautiful Soup 4, Selenium, Playwright, Requests)
  • Nice to have, but not essential experience would be - SQL experience, including writing and optimising queries and/or experience with Salesforce, HubSpot, or similar CRM platforms
What We Offer

At Doctify, we shape careers with purpose. Our benefits are designed to fuel your growth, flexibility, and wellbeing.

Time Off, Flexibility & Balance
  • 28 days annual leave (25 + 3 between Christmas and New Year), earning up to 30 days leave with tenure
  • 2 weeks of remote work annually (within 3-hour time zone of HQ)
  • Hybrid working model
  • Enhanced Parental Leave
  • 2 weeks Peternity Leave to welcome your newest furry family member
  • Medicash health cash plan
Setting You Up for Success
  • Competitive, benchmarked compensation
  • 3-month immersive onboarding experience
  • Ongoing learning through expert-led sessions, leadership insights, and soft-skill development
  • Clear internal mobility pathways to accelerate your career
The Uniquely Doctify Experience
  • Daily team huddles to connect, share wins and spark ideas
  • Regional Lunch Clubs & team socials powered by our Fun Police
  • Quarterly Doctifier nominated Impact Awards
  • Employee referral bonus: £700 (or local equivalent) per hire
Our Commitment to DEIB

Diversity, equity, inclusion and belonging aren\'t just values. They\'re at the core of what makes us Uniquely Doctify. These principles shape how we work, how we build our teams, how we design our policies, and how we bring our mission to life.

As a global team, we know that diverse perspectives drive innovation and lead to better outcomes for patients, providers and each other. We\'re committed to creating a fair, inclusive environment where everyone is heard, respected and empowered to thrive.

We want to ensure that everyone has an equitable and comfortable experience throughout our hiring process. If you require any adjustments, we\'re happy to discuss how we can support you. You can contact us at .


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