srt-health / prompts.txt
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Goal I want a clean, compelling landing-page draft for SRT Health — an AI-driven, offline-capable health platform that runs on edge devices. The page should instantly communicate what the product is, why it matters, and how users can get started. Return Format Structure the copy in the following order (feel free to use tasteful emoji where helpful, but no more than 3 total): Hero section Punchy headline (≤ 8 words) One-sentence sub-headline (≤ 20 words) Primary call-to-action button label Problem → Solution blurb 2–3 short sentences describing the pain point of limited connectivity and siloed data in healthcare 1 sentence on how SRT Health solves this with on-device AI Top 3 differentiators Edge-first AI engine (one crisp sentence) Privacy-by-design architecture (one crisp sentence) Seamless offline-to-cloud sync when connectivity returns (one crisp sentence) “How it works” mini-timeline Step 1: Data capture on device Step 2: Real-time inference locally Step 3: Secure sync & insights when online Founder credibility block 1 sentence bio highlighting PhD work at the intersection of AI & health Optional small quote (≤ 15 words) about the mission Early-adopter testimonial (fictional but believable, first-name + role) ≤ 30 words Secondary call-to-action with wait-list form prompt Warnings Keep all medical claims factual and non-diagnostic; do not promise cures or regulatory approvals. Do not mention HIPAA, FDA, or any specific compliance acronym unless you explicitly state “pending” or “in progress.” Make sure the term “edge AI” appears at least once, but no more than twice, in the whole page. Use plain language; avoid jargon like “synergistic” or “paradigm.” –– Context Dump I’m a PhD student specializing in AI for health. SRT Health’s core value is bringing intelligent health-monitoring and decision support to clinics, rural settings, and field workers who often lack reliable internet. The model footprint is small, inference is done locally on hardware as modest as a Raspberry Pi, and syncing occurs automatically once connectivity is restored. Our first use-case is vital-sign monitoring and triage support, but the platform is modular for future extensions (e.g., maternal health, chronic-disease tracking). We’re pre-launch and gathering a wait-list of clinicians, NGOs, and low-resource hospitals interested in pilot programs.