Primary discovery source is Indie Hackers. / Indie Hackers mention is recent (2026-04-25).
Why it matters
Primary discovery source is Indie Hackers.
Key Features
Primary public product URL is https://www.blunlock.com/.
Description: Mac Proximity Lock - No Apple Watch required.
Listed on Indie Hackers as "Blunlock".
Source description: Mac Proximity Lock - No Apple Watch required.
Source publish date is 2026-04-25.
Use Cases
Primary discovery source is Indie Hackers.
Indie Hackers mention is recent (2026-04-25).
Primary public product URL is https://www.blunlock.com/.
Description: Mac Proximity Lock - No Apple Watch required.
Listed on Indie Hackers as "Blunlock".
Why Now
Blunlock is appearing on fresh discovery surfaces, so it is worth reviewing while momentum is still forming. Confidence is currently low (41/100), so treat this as an early signal rather than a settled trend.
Intelligence Breakdown
Facts
Listed on Indie Hackers as "Blunlock".
Source description: Mac Proximity Lock - No Apple Watch required.
Source publish date is 2026-04-25.
Description: Mac Proximity Lock - No Apple Watch required.
Primary public product URL is https://www.blunlock.com/.
Signals
Indie Hackers mention is recent (2026-04-25).
Primary discovery source is Indie Hackers.
Inference
Trust data is still pending
The evidence pipeline has not produced enough structured trust blocks for this product yet.
Unknowns
Documentation is not explicitly linked in the current allowed evidence set.
No tagline is stored on the current product record.
Pricing details are not explicitly linked in the current allowed evidence set.
Recent changelog or release history is not explicitly linked in the current allowed evidence set.
Evidence Snapshots
Blunlock
Listed on Indie Hackers as "Blunlock".
Blunlock official profile
Primary public product URL is https://www.blunlock.com/.
Original Sources
Original sources are still pending
No stable public source URLs have been attached to this product yet.
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