Calm uses generative AI to personalise recommendations, increasing accuracy by 25% | Firemind
Case study

Calm uses generative AI to personalise recommendations, increasing accuracy by 25%

Industry: Health & Wellness

About

Calm is a San Francisco–based health and wellness company, best known for its leading meditation and sleep app. Its platform helps millions improve their mental health, sleep, and overall wellbeing. 

Challenge

Calm wanted to take its personalised recommendations to the next level, delivering more relevant and engaging content for users. While Amazon Personalize already powered recommendations, the team sought to add deeper contextual awareness to improve accuracy and user satisfaction. 

The goal was to harness user engagement data and detailed content metadata to create recommendations that not only matched preferences but also felt personal, transparent, and aligned with each user’s mood and persona.  

Solution

Firemind built a recommendation engine that combined a vector database, large language models (LLMs), and a hybrid search approach. This architecture enriched Calm’s recommendation process by generating detailed, contextual content descriptions using LLMs. 

The solution also introduced explainable AI for recommendations, where each suggestion included a tailored justification highlighting how it suited the user’s needs - enhancing transparency, trust, and engagement. 

Services used

  1. Amazon Bedrock
  2. AWS Lambda
  3. Amazon DynamoDB
  4. Amazon OpenSearch

Results

  • 100% of recommendations now have explainability

  • 25% improvement in recommendation accuracy

  • Added 5 new metadata properties for greater personalisation

  • Increased contextual awareness in recommendations

  • Enhanced user trust and engagement

The work that Firemind has done has been brilliant, improving with each iteration. Even at first glance, you could see the jump in quality.

Jonathan HummelVP of Engineering, Calm

See more case studies

  • How Nordic Enterprise took on its operational backlog with Firemind.

    Cloud infrastructure management for Nordic Enterprise: a live session that ran its backlog onto reviewable code, with patching and cost findings.

    • 3-node Elasticsearch cluster patched in 21 minutes with zero data loss
    • 15 unmanaged resources found and raised as a pull request
    • 20–70% in potential savings surfaced from multi-account cost reporting
    Learn more
  • A 22% cut in cloud cost, confirmed on a single dev and QA account

    How autonomous cloud cost optimisation cut a Nordic firm's AWS bill by 22% in a single dev and QA account, every figure cross-verified against the live estate.

    • 22% annual cloud cost reduction, cross-verified on a single AWS dev and QA account
    • Nearly half of the saving from a single idle database
    • Continuous FinOps discipline, not a one-off audit
    Learn more

View all case studies

CONTACT US

Start with a focused conversation about your environment.

We help you build, optimise and run AI that delivers measurable results.

Your benefits:

  • Outcome-driven - Measurable business impact
  • Expert-led - Hands-on delivery from senior practitioners
  • Secure by design - Your data and compliance requirements first
  • Fast to value - From discovery to production in weeks

What happens next?

Let's talk

A 20-minute focused session on your goals and current situation.

We propose

A clear plan and scope tailored to your priorities.

You decide

No obligation - move forward when the time is right.

No obligation - just a focused 30-minute discussion about your goals.

We'll only use your details to respond to your enquiry. No newsletters unless you ask for them.