Applied AI studio

Ship AI that works in production — not another pilot.

Qalvra AI partners with teams to design, build and deploy intelligent systems: conversational assistants, agentic workflows, LLM integrations and computer vision. Engineered to cut cost and create real advantage.

Strategy before code

We start with a free audit of your highest-leverage AI opportunity — before a single line of code is written.

Production, not pilots

Every system we build is engineered to run in the real world — not a notebook demo that collapses under load.

Outcomes you can measure

We define success metrics upfront and deploy evaluation frameworks so you always know the AI is working.

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What we build

Six high-impact capabilities, delivered end to end.

Each engagement runs from problem framing to a deployed, monitored system. No hand-off gaps, no abandoned proofs of concept.

01

AI Strategy & Audit

Before building anything, we map exactly where AI creates real ROI in your business. A structured audit with a prioritised roadmap — so you invest in the right problems first.

02

Agentic AI Systems

Autonomous agents that plan, decide and execute multi-step tasks — research, data ops, workflows — with the right tools, memory and guardrails to run reliably in production.

03

RAG & Knowledge Systems

Make your internal documents, data and expertise instantly queryable. We build retrieval-augmented systems that give your team — or your customers — accurate, cited answers from your own knowledge base.

04

LLM Integration

Embed large language models into your existing products and pipelines. We handle model selection, prompt engineering, evaluation and safe deployment — so the AI fits your workflow, not the other way around.

05

On-Device & Edge AI

Run AI where the data is — on phones, embedded hardware and edge devices. We compress and optimise models through quantization, pruning and runtime tuning to meet strict memory and latency constraints.

06

AI Evaluation & Safety

Build AI you can trust and explain. We design evaluation frameworks, red-team your models, and add safety layers — essential for regulated industries like finance, healthcare and legal.

Not sure where to start?

Book a free 30-minute discovery call. We'll map the highest-leverage place AI can help — no pitch, just a plan.

Book a call →
How we work

A clear path from idea to deployed system.

STEP 01

Discovery

We start with your problem, not the tech. One call to find where AI creates the most value, fast.

STEP 02

Solution design

A scoped plan: architecture, data needs, success metrics and timeline — before a line of code.

STEP 03

Build & test

Iterative builds with evaluation baked in, so you see working software early and often.

STEP 04

Deploy & support

We ship to production — cloud or on-device — and stay on to monitor, tune and scale.

Why Qalvra

Engineering depth, without the agency overhead.

Qalvra AI is built by engineers who ship production AI for a living. You work directly with the people building your system — no account managers, no relayed requirements.

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Deep AI expertise

Hands-on experience across LLMs, computer vision, audio DSP and embedded ML — applied to real production systems, not slideware.

Fast, focused delivery

Small senior team, short feedback loops. From scoping to a working build in weeks — without cutting corners on quality.

Outcomes you can measure

Every project ships with evaluation in place. We define success up front and report against it — so you know the AI is working.

Built to last

Clean, documented systems you own. No black boxes, no lock-in — just maintainable software your team can build on.

From the field

Notes on building AI that ships.

Hard-won lessons from deploying real systems — the gaps between a notebook and production that nobody talks about honestly.

EDGE-AI / 01
On-Device AI·6 min read

I quantized the model. It still didn't fit.

The moment on-device AI stopped being theoretical for us — and why the inference runtime, not the model, is your real memory budget.

Read article
Coming soon

More field notes on the way

New posts on RAG, agentic systems and audio ML — published as the work happens.

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Let's talk

Ready to put AI to work in your business?

Tell us what you're trying to solve. We'll come back within one business day with a clear, honest take on how we can help.

Or reach us directly at hello@qalvra.com