Kensink Labs
Google GeminiLLM Models8-week engagement
GOOGLE GEMINI · MULTIMODAL

Direct Gemini integration. Large context, multimodal, vendor-neutral.

Google's Gemini brings very large context windows and strong multimodal understanding. We integrate it directly where its strengths fit the task.

Multimodal LLMLLM APIEval pipelines
Cycle
8 weeks · fixed price
Stack
Gemini API, direct
Output
Production code + eval suite
Handoff
Full source ownership
[THE SHORT VERSION]

Big context and native multimodality.

Gemini's large context windows and native handling of text, images, and other modalities make it a strong fit for document-heavy and multimodal tasks. We integrate it behind the same vendor-neutral abstraction we use for every model.

When it fits
  • Very large context or document-heavy workloads
  • Multimodal tasks spanning text and images
  • Teams on Google Cloud wanting native integration
[HOW WE BUILD IT]

How we build with Google Gemini.

01

Scope and fit

We decide where Google Gemini earns its place in your system, and where a simpler tool wins. No resume-driven architecture.

02

Build on a tested foundation

We integrate Google Gemini against a foundation we trust: typed code, CI, and observability from the first commit. Boring infrastructure, modern surface.

03

Eval before launch

An eval suite proves the build behaves before it reaches a user. We measure, then ship.

04

Handoff with ownership

Your team gets the code, the tests, and a runbook. No lock-in to us or to a vendor framework.

[WHAT YOU GET]

What the engagement leaves behind.

Senior
Engineers who have shipped this before
100%
Source ownership at handoff
Eval-first
Tested before it ships
0
Framework lock-in
[METHODOLOGY · K-FRAMEWORK]

Integrated through the
K-Framework.

Every model we integrate runs through the same operating system. Three pillars, sixteen layers, one Compound Growth Loop. The methodology that keeps AI work from rotting after the first ship.

Read the K-Framework
01

Foundations

Direct API integration with the model. No LangChain, no orchestration vendor, no agent framework built on quicksand. Typed contracts, the same way we wire up Postgres.

02

Amplification

An eval suite built from your real tasks gates every prompt and model change. Quality is measured before it ships, not vibed in a demo.

03

Judgment

Governance, audit, and oversight wired in from day one. Who called what, with which prompt version, at what cost. Your auditors get answers, not screenshots.

[OBSERVABILITY]

Observability your team can read.

A model in production without observability is roulette. We instrument every integration so engineering and finance can see the same numbers, and so a regression at 3am surfaces before a customer opens a ticket.

Instrumented

Cost per call

Tokens in, tokens out, dollars spent. Sliced by feature, tenant, and route. Budgets enforced where it matters.

Instrumented

Latency p50 / p95 / p99

Real distributions, not averages. We know which routes are slow, and why.

Instrumented

Eval pass rates

The same eval suite that gates a release runs continuously in production. A regression on real traffic surfaces fast.

Instrumented

Prompt + completion logs

PII scrubbed at the proxy, shipped to your SIEM. Retention controls match your compliance window.

Dashboards your team owns, not ours. At handoff you get the queries, the alerts, and the runbook. We are not in the path to read your metrics.

APPLIED K-FRAMEWORK

Bring the problem.
We’ll bring the build.

Senior engineers, eval suite at handoff, full source ownership. Sprint, program, or ongoing. We shape the engagement to the work.