Data scraping
Description
I require an experienced data researcher / scraping specialist to extract high-quality, niche-specific data from multiple UK sources and deliver it in a clean, structured format.
This is not a bulk scraping job — accuracy and relevance are critical.
Scope of Work:
- Target Data (Initial Focus)
I am looking to build lists for the following niches: • Property investors (Buy-to-Let, HMO, developers) • Company directors in property-related businesses
⸻
- Data Sources
You may use a combination of: • Companies House (via SIC codes & director data) • Property-related platforms (where legally accessible) • LinkedIn (Sales Navigator filtering
- manual research, not scraping if restricted)
⸻
- Required Data Fields
Each record should include (where available): • Role (Director / Owner) • Email Address (verified where possible) • Phone Number (if available) • Location (UK-based) • Industry / SIC Code • Notes (if relevant, e.g. property investor / developer)
⸻
- Data Quality Requirements • UK-based contacts only • Data must be accurate and up-to-date • Avoid scraped junk or low-quality lists
⸻
- Compliance (VERY IMPORTANT) • All data must be sourced from publicly available or compliant sources
⸻
- Output Format • Excel / Google Sheets • Clean, ready for outreach use
⸻
- Initial Volume • Phase 1: 4000-5000 high-quality leads • Potential for ongoing weekly/monthly work
⸻
Ideal Candidate: • Experience with UK data sourcing (Companies House, etc.) • Understanding of property / finance sector is a plus • Able to suggest better data sources (not just follow instructions)
⸻
Budget & Timeline:
⸻
To apply, please include:
⸻
Start your proposal with: “Quality over quantity — understood”
⸻
Additional Notes:
This project is focused on building a long-term data pipeline for targeted outreach campaigns. I am looking for someone reliable who can consistently deliver high-quality results.
Budget: GBP 100 (Fixed Price)
Proposals: 36 freelancers have applied
Want AI to find more roles like this?
Upload your CV once. Get matched to relevant assignments automatically.