Datasets:
metadata
license: other
language:
- en
tags:
- seo
- search-console
- content-performance
- tabular
- education
- flyrank-internship
pretty_name: FlyRank Internship — Starter (Content Refresh, Anonymized)
size_categories:
- 10K<n<100K
FlyRank Internship — Starter Dataset (Anonymized)
The public, safe starting point for the FlyRank Applied Search Intelligence ML internship. 30,000 anonymized content-performance rows across 32 pseudonymized clients (53 columns).
Public-safe: hashed content_id / client_id + numeric/categorical metrics only — no titles, URLs, keywords, domains, or client names.
What it's for
Week 1–2 quick wins and the ready-now capstone lanes (ranking-signal analysis, lifecycle / opportunity scoring, content-archetype clustering).
Verified reference results (this 30k slice)
- Rule baseline Precision@50 = 0.26 → Random Forest Precision@50 = 0.74
search_volumevsimpressions_90dcorrelation ≈ 0.0012 (essentially zero — a real myth-buster)- Weighted CTR by position:
top_30.49% →page_10.35% →deep0.04% - Length is not the differentiator: growing vs declining word count ≈ 2,850 vs 2,910
Safety rules
Anonymized, but still treat row-level outputs as not-for-careless-publishing.
Do not use product flags (health_score, needs_ctr_fix, is_quick_win, …) as model features — they leak the decline label. Keep all public outputs anonymized/aggregate.