Cloud Intelligence™Cloud Intelligence™

Build, ship, and run Claude in production

Anthropic on DoiT

Move Claude from pilot to production across AWS, Google Cloud, and Azure. Right model, costs you can see, operations that hold up.

enterprise-grade Anthropic practice

Most AI projects stall after the demo

The model works. The bill, the latency, and the reliability do not. We run an enterprise-grade Anthropic practice built for one job: move Claude from pilot to production.

We pair Anthropic depth with our FinOps and CloudOps DNA. Our Forward Deployed Engineers embed with your team and ship, instead of handing you a strategy deck and leaving.

Explore Forward Deployed Engineering
Engineers collaborating on a Claude production deployment

Why DoiT

Plenty of firms can run a Claude workshop. Few can run the workload after it goes live. That gap is where we work.

  • Multicloud by default

    Claude on Amazon Bedrock and Google Vertex, plus direct API. We pick the path that fits your stack, not ours.

  • FinOps heritage

    We have priced and optimized cloud spend since 2011. Tokens, GPUs, and provider trade-offs measured to the dollar.

  • Embedded delivery

    Senior engineers join your team. They know your architecture, your context, and your constraints.

  • Instrumentation built in

    Attribute AI spend by team, feature, and customer so you see what Claude actually costs.

what the partnership gives you

From Pilot to Production, faster

Right model. Real targets. Costs you can defend.

Right model for the job

Right model for the job

Opus for hard reasoning. Sonnet for balance. Haiku for high-volume work.

Faster path to production

Faster path to production

Reference architectures compress weeks into days.

Costs you control

Costs you control

Unit economics from day one, tuned for margin.

Reliability under load

Reliability under load

HA patterns and rollback plans baked in before go-live.

Eval harnesses included

Eval harnesses included

Quality is measured by automated evaluations, not guessed.

Governance wired in

Governance wired in

Least-privilege access and clear data ownership across teams.

how we deliver

Forward Deployed Engineers, not a ticket queue

FDEs are senior cloud architects who embed directly with your team. They pair with your engineers to implement, test, and deploy. They own outcomes across the full Claude lifecycle: agent and workflow engineering, RAG and knowledge systems, evaluation harnesses, inference cost optimization, reliability, and security.

Meet the team
Forward Deployed Engineer pairing with a customer team

How the engagement runs

Five phases. Real code changes, not recommendations.

  • Kickoff

    Align on use cases, SLOs, and the pain-now list. Map your environment.

  • Plan

    Scope the build. Pick models, define evals, set cost and latency targets.

  • Ship

    Implement alongside your engineers. Real changes in your codebase.

  • Automate

    Wire in monitoring, guardrails, and policy controls. No babysitting.

  • Prove it

    Measure quality, cost, and reliability against targets. Then move on.

Run Claude like production

Bursty demand, GPU scheduling, model drift, unpredictable costs. Our FDE team handles GenAI ops the way we handle any critical workload.

  • GPU efficiency

    Spot underutilized inference and training runs. Keep accelerators busy without waste.

  • Scaling patterns

    Autoscaling strategies tuned for LLM and agent traffic.

  • Data pipelines

    Harden ingestion and preprocessing so retrieval and training never stall.

  • FinOps for AI

    See token usage, provider costs, and trade-offs clearly.

  • Resilience by default

    HA patterns, failure domains, and graceful degradation built in.

  • Production validation

    Load tests, chaos drills, and rollback plans before go-live.

see what Claude actually costs

Token bills hide the truth

You know the total. You do not know which team, feature, or customer drove it. We change that.

We use kernel-level instrumentation to attribute AI and cloud spend at the source, with no code changes. Tie every API call to the workload behind it. Make trade-offs with real numbers.

Dashboard showing AI spend attributed by team, feature, and customer

What we build

Each engagement starts from a problem, not a feature.

  • Agentic workflows

    Claude does the multi-step work your team does by hand today.

  • Knowledge and RAG systems

    Answers grounded in your data, not the open web.

  • Coding and SDLC acceleration

    Faster review, refactoring, and migration with Claude in the loop.

  • Support automation

    Resolve tickets and deflect volume without losing the customer.

  • Document and contract analysis

    Extract, summarize, and check at scale.

  • Custom workloads

    Built around your stack, data, and SLOs, not a template.

Start building with Claude

We map your priorities and the fastest path to production.