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int64
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2023-01-12 18:26:00
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71
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86
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2024-10-05 12:55:00
64
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2024-09-21 05:41:00
71
End of preview. Expand in Data Studio

Gym & Fitness Club Membership Dataset (Free Sample)

This is a free sample with 2,308 rows. The full dataset has 22,713 rows across 4 tables.

Membership records for a simulated fitness club chain with 3 locations and 2,500 members over 2 years. Includes member profiles, membership plans, check-in logs, class bookings, and churn events.

Features realistic patterns: New Year resolution signup surge (January 3x), summer dip, morning/evening check-in peaks, class popularity rankings, and two anomalies — a facility closure for renovation and a viral TikTok promotion driving a signup spike.

Ideal for: fitness SaaS development, member retention ML, churn prediction, class scheduling optimization, and gym management dashboards.

Sample tables

Table Sample Rows
checkins 2,000
locations 3
members 300
plans 5
Total 2,308

Full dataset

The complete dataset includes all tables with full row counts:

Table Full Rows
checkins 20,005
locations 3
members 2,700
plans 5
Total 22,713

Formats included: CSV, Parquet, SQLite

Get the full dataset on Gumroad

About

Generated by Mindweave Technologies -- realistic synthetic datasets for developers, QA teams, and data engineers.

Every dataset features:

  • Enforced foreign key relationships across all tables
  • Realistic statistical distributions (not uniform random)
  • Temporal patterns (seasonal, time-of-day, day-of-week)
  • Injected anomalies for ML training and anomaly detection
  • Deterministic generation (same seed = same output)

Browse all datasets: https://mindweavetech.gumroad.com

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