Sarvaswa AI Labs
Forward Deployed Engineering

Forward Deployed Engineers, embedded in your team

Hire senior engineers who join your standups, work in your codebase, and ship production AI inside your infrastructure. Not consultants who deliver a deck and leave. Your stack. Your data. Your IP.

Trusted by 20+ teams worldwide

Why most AI projects stall

Strategy decks do not ship. People in the room do.

Over half of AI projects never make it from pilot to production. It is rarely a knowledge gap. It is an execution gap. The roadmap is sound; nobody owns the last mile of getting it live, integrated, and reliable inside your real systems.

Generic consultancies bill you for discovery and hand over a PDF. Staffing marketplaces rent you a contractor and leave you to manage them. Neither closes the gap. A Forward Deployed Engineer does, by building it in your environment, alongside your team.

The short answer

What is a Forward Deployed Engineer?

A Forward Deployed Engineer (FDE) is a senior engineer who embeds directly in your team to design, build, and ship production AI systems. The model was popularised by Palantir and is now used by OpenAI, Anthropic, and a new generation of engineering-first firms.

The difference from a normal consultant is simple: an FDE still writes and ships production code. They join your standups, work in your repos, integrate with your data and tools, and leave you with systems your team owns and can run without us. At Sarvaswa, our FDEs are remote-first and deeply integrated into your workflow, with on-site time when an engagement calls for it.

Where Sarvaswa FDEs are different

Not a deck. Not a rented body. Not a wrapper.

We own the outcome, not the timesheet

Staffing shops supply a contractor and hand you the management problem. Our FDEs are accountable for a working system in production. The engagement is scoped to outcomes and measured against your real use cases.

Tech-agnostic. Your IP.

We pick the best tool for your problem. Open or commercial, any cloud. Never a stack we are paid to resell. Full source, full ownership. The moat is yours, not ours.

Engineers who build for a living

No junior analysts behind a partner's pitch. You get senior engineers who train custom LLMs, build agentic systems, and run them in production. The same people who ship are the people in your standups.

What you get

What our Forward Deployed Engineers ship.

Production AI systems

Custom LLMs, agents, and automations running in your infrastructure. Not a demo.

Inside your perimeter

Deployed in your cloud, behind your auth. Sensitive data never leaves your boundary.

Integrations and MCP servers

Claude Skills and Model Context Protocol servers that connect AI to your tools, databases, and APIs.

Data and evaluation pipelines

Retrieval, prompt registries, and evals that keep the system reliable as it scales.

Knowledge transfer by default

Your team builds alongside the FDE and can run, extend, and own the system after handover.

Cost and performance tuning

The right tradeoffs on model, latency, and spend. On a recent regulated workload we cut compute by about 40%.

How to hire a Forward Deployed Engineer

From first call to embedded in two weeks.

  1. Scope (1 call)

    A focused conversation on your highest-value use case, your stack, and your timeline. No discovery invoice.

  2. Match

    We assign a senior FDE (or a small pod) with the right domain and engineering fit. You meet them before you commit.

  3. Embed

    Your FDE joins your standups, Slack, and repos. PoC against your real data in 2 to 4 weeks. Production in 8 to 14 weeks.

  4. Hand over

    You own the code, models, and pipelines. Our involvement decreases by design. We leave your team self-sufficient, available when you need us.

Compare the options

FDE vs hiring in-house vs a traditional consultancy.

In-house AI hire

Time to value
6 to 9 months (recruit and ramp)
Deliverable
Depends on the hire
Seniority on the work
One person's ceiling
Tech choices
Limited by one skillset
IP ownership
Yours
Risk if it does not fit
Severance, re-hire

Traditional consultancy

Time to value
Months of discovery first
Deliverable
Strategy deck
Seniority on the work
Juniors under a partner
Tech choices
Whatever they resell
IP ownership
Often locked in frameworks
Risk if it does not fit
Sunk fees, no system

Recommended

Sarvaswa FDE

Time to value
PoC in 2 to 4 weeks
Deliverable
Production system in your infra
Seniority on the work
Senior engineers who ship
Tech choices
Best tool for the job
IP ownership
Yours, full source
Risk if it does not fit
Scoped engagement, working system

Selected work

Embedded engagements, measurable results

A predictive GPU auto-scaling engine paired with a domain-trained SLM.

A domain-trained SLM kept all inference inside the client's regulated infrastructure. Predictive autoscaling forecasts load and scales the GPU fleet ahead of demand.

~40%

Lower monthly compute

100%

Inference inside client infra

24/7

Observability

The Sarvaswa team was professional, responsive, and technically deep on our chatbot build. They communicated clearly, shipped regular updates, and handled every change request with a positive, problem-solving attitude. We'd work with them again on similar projects without hesitation.

Ramesh - Director of Engineering

BillionApps Inc

Sarvaswa has been excellent to work with. They built the AI app at the heart of FixMyAir end-to-end. Their depth in AI agents and machine learning is the real deal. Genuine experts who treat your business like their own.

John B. - Founder

FixMyAir

Questions worth answering

Forward Deployed Engineer FAQ.

A senior engineer who embeds in your team to build and ship production AI systems. They write real code in your environment, not deliver a strategy document. The term was popularised by Palantir and is now used across leading AI companies, including OpenAI and Anthropic.
Book a call. We scope your use case, match you with a senior FDE or pod, and get them embedded in your team, typically within two weeks. You meet the engineer before committing.
A staffing agency rents you a contractor and leaves the management and outcome to you. Our FDEs are accountable for a working system in production, scoped to measurable outcomes, with knowledge transfer built in. You get an engineer who owns delivery, not a body you have to manage.
Yes. Full ownership, full source. The competitive moat is yours, not ours. At handover you have everything you need to run, extend, and operate the system without us.
Remote-first and deeply integrated into your standups, Slack, and repos. On-site time happens when an engagement calls for it. Our base in India means strong cost efficiency and broad timezone coverage for teams across the Americas, Europe, and Asia.
A working proof of concept in 2 to 4 weeks against your real data. Production in 8 to 14 weeks for most engagements. We start narrow on the highest-value use case rather than boiling the ocean.
FDEs work inside your cloud and your data boundaries. Sensitive data does not leave your perimeter. SOC 2, HIPAA, and region-specific requirements are scoped at the start of every engagement so your security team approves the architecture before any code ships.
Both. For startups we act as an embedded technical AI team and a co-founder-grade engineering bench. For enterprises we ship agentic and machine learning systems that integrate with legacy stacks, governance, and existing data infrastructure.

Embed an engineer who ships.

Whether you have a clear spec or just a use case, we will match you with a Forward Deployed Engineer who builds it the right way, inside your team.