The Palantirization of everything
Pairing enterprise software with high-touch delivery
There’s a new aspiration in startup pitch decks: “We’re basically Palantir, but for X.”
Founders talk about embedding forward-deployed engineers (FDEs) with customers, building deeply customized workflows, and operating more like a special-forces unit than a traditional software company. Job postings for “forward-deployed engineers” are up hundreds of percent this year as companies copy the model that Palantir pioneered in the early 2010s.
I get why this is attractive. Enterprises are feeling seriously overwhelmed when considering which technology products they should buy off the shelf; everything now markets itself as AI, and it’s never been harder to parse signal from noise. The Palantir pitch — parachute a small team into a messy environment, wire together homegrown, siloed systems, and ship a customized working platform in months — is compelling. And for a startup trying to win its first seven-figure deals, “we’ll send engineers to sit inside your org and make this work” is a powerful promise.
But I’m skeptical that “Palantirization” scales as a universal playbook. Palantir is a “category of one” (just look at how it trades!), and most companies copying the aesthetic are setting themselves up to become expensive services businesses with a software valuation multiple and no compounding competitive advantage. It kind of reminds me of how every startup pitched itself as a “platform” in the 2010s, when there are in fact very few true platform companies due to how difficult they are to build!
This post is an attempt to separate what’s actually portable in the Palantir model from what’s idiosyncratic — and to offer a more pragmatic blueprint for founders looking to pair enterprise software with high-touch delivery.
What “Palantirization” Actually Means
“Palantirization” has started to mean a few related things:
Forward-deployed, embedded engineering
Forward-deployed engineers (“Deltas” and “Echoes” in Palantir’s internal jargon) sit inside the customer’s organization (often for months), to understand domain context, stitch systems together, and ship custom workflows on top of Foundry (or Gotham in higher-security situations). Since pricing is fixed fee, there are no “SKUs” in a traditional sense. Engineers are responsible for building and maintaining those capabilities.
Highly opinionated, integrated platform
Under the hood, Palantir’s products are not a toolkit of loose components. They’re opinionated platforms for data integration, governance, and operational analytics — closer to an operating system for an organization’s data. The stated goal is to convert fragmented data into real-time, high confidence decisions.
Upmarket, high-touch GTM
“Palantirization” also describes a go-to-market style: long, high-touch sales cycles into mission-critical environments (e.g. defense, policing, intelligence). Regulatory complexity and the magnitude of the “stakes” in the industry are features, not bugs.
Outcomes, not licenses
Revenue is driven by multi-year, outcome-aligned contracts where software, services, and ongoing optimization blend together. Engagements can be worth tens of millions of dollars per year.
A recent analysis of Palantir framed it as a “category of one” because it simultaneously excels at: (a) building integrated product platforms, (b) embedding elite engineers in customer operations, and (c) proving itself in mission-critical government and defense environments. Most companies can manage one of these, maybe two — not all three at once.
Yet in 2025, everyone wants to borrow the brand halo of this model.
Why Everyone Wants to Copy Palantir Right Now
Three big forces are converging:
Enterprise AI has a production problem.
A large fraction of AI projects still stall before they ever reach production environments, often due to messy data, integration headaches, and lack of internal ownership. While buying behavior is still frenzied (with real top-down pressure from boards and C-Suites to “buy AI”), actual implementation and subsequent ROI often requires lots of handholding.Forward-deployed engineers look like the missing bridge.
Media coverage and data on job postings show FDE roles exploding — up 800–1000% this year, depending on the source — as AI startups embed engineers in an effort to make deployments actually work.Rapid growth has become the norm (and it’s easier to grow quickly with 7 figure deals than 5!)
If putting engineers on planes is what it takes to land a $1M+ deal with a Fortune 500 or government agency, many early-stage companies will gladly trade gross margin for momentum. Investors are also increasingly comfortable with suboptimal gross margins given novel AI experiences with lots of inference often require them. The bet is that you’ll earn the position and the trust with client leadership to deliver outcomes, and price accordingly.
So the narrative becomes: “We’ll do what Palantir did. We’ll send a small elite team, build something magical, and turn that into a platform over time.”
That story can be true in very specific circumstances. But there are some hard constraints founders often gloss over.
Where the Analogy Breaks
Trying to Sell Outcomes from Day 1
Palantir’s flagship product, Foundry, is a combination of 100s of microservices that get put to work towards an outcome. These services constitute productized + opinionated approaches to problems commonly experienced across enterprises in each domain. Having now met hundreds of AI apps founders over the past two years, I can tell you where the analogy in their pitch breaks: startups come in and pitch a bunch of lofty outcome-based goals, whereas Palantir built intentional microservices that form the bedrock of their core capabilities. These are what separate Palantir from regular consulting firms (and contribute to it trading at 77x next year’s revenue).
Palantir Gotham is a defense and intelligence platform that helps military, intelligence, and law enforcement agencies integrate and analyze disparate data for mission planning and investigations.
Palantir Apollo is a software deployment and management platform that autonomously and securely delivers updates and new features to any environment, including multi-cloud, on-premises, and disconnected systems.
Palantir Foundry is a cross-industry data operations platform that integrates data, models, and analytics to power operational decision-making across an enterprise.
Palantir Ontology is the dynamic, actionable digital model of an organization’s real-world entities, relationships, and logic that powers applications and decision-making within Foundry.
Palantir AIP (Artificial Intelligence Platform) connects AI models, like Large Language Models (LLMs), with an organization’s data and operations via the Ontology to create production-ready AI-powered workflows and agents.
To quote the recent Everest report again: “Palantir’s contracts start small. A first engagement might cover a short bootcamp and limited licenses. If value is proven, additional use cases, workflows, and data domains are layered in. Over time, the revenue mix tilts toward software subscription rather than services. Unlike consulting firms, services are a means to drive product adoption, not the primary revenue stream. Unlike most software vendors, Palantir is willing to fund its own engineering time upfront to land a meaningful customer.”
On the one hand, AI apps companies I’m seeing today are often able to skip straight to seven-figure contracts. But on the other, that is largely because they are in full fledged customization mode – they’re tackling whichever problems their early customers surface, and hoping they uncover themes on which to build core capabilities or “SKUs” later on.
Not every problem is a “Palantir-grade” problem
Palantir’s early deployments were in domains where the alternative was “nothing works”: counterterrorism, fraud detection, battlefield logistics, high-stakes healthcare operations. The value of solving the problem was measured in billions of dollars, number of human lives saved, or geopolitical outcomes, not incremental efficiency.
If you’re selling to a mid-market SaaS company to optimize sales workflows by 8%, you can’t afford the same level of bespoke deployment. The ROI envelope simply doesn’t justify months of on-site engineering.
Most customers don’t want to be your R&D lab forever
Palantir’s customers implicitly sign up to co-evolve the product with them; they tolerate a lot because the stakes are high and alternatives are limited.
Most enterprises, particularly outside of defense and regulated sectors, do not want to feel like a long-running consulting project. They want predictable implementations, interoperability with existing software tools, and fast time-to-value.
Talent density and culture don’t generalize
Palantir has spent over a decade recruiting and training unusually strong generalist engineers who are comfortable writing production code, navigating bureaucracies, and sitting in rooms with colonels, CIOs, and regulators. Turnover from that role has produced an entire “Palantir mafia” of founders and operators. Many of these people are unicorns in that they are both highly technical and highly effective with customers.
Most startups cannot assume they’ll hire hundreds of people wired this way. In practice, “we’ll build a Palantir-style FDE team” often degrades into:
Pre-sales solution engineers relabeled as “FDEs”
Junior generalists asked to do product, implementation, and account management simultaneously
Leadership teams that have never actually seen a Palantir deployment up close, but like the vibe
To be clear, there is an immense ocean of extremely talented individuals out there, and the ability to ship code is being democratized to formerly non-technical employees with tools like our portfolio company Cursor. But to nail the Palantir motion at scale requires an exceptionally rare blend of business and technical talent, and it really helps to have actually been there given it is such a unique company. But that n is limited!
The services trap is real
Palantir works because there is a real platform underneath the bespoke work. Thoughtful observers point out that if you only copy the embedded-engineer part, you end up with thousands of bespoke deployments that are impossible to maintain or upgrade. Even in a world in which AI tooling allows companies to achieve software-caliber gross margins in this model, the ones that over-rotate into forward deployment without a strong product spine may fail to generate increasing returns to scale and durable moats. The undiscerning investor may see hockey stick growth from 0 to $10M in contract value with large enterprise deals and clamor to get involved. But the question I keep asking is what happens when dozens (or even hundreds) of these $10M startups start to bump into each other with the exact same pitch?
At that point, you aren’t “Palantir for X.” You’re “Accenture for X” with a nicer front-end.
What Palantir Actually Did Differently
If you strip away the mythology, there are a few elements worth studying carefully:
Platform-first, not project-first
Palantir’s forward-deployed teams build on a small set of reusable primitives (data models, access controls, workflow engines, visualization components) rather than writing fully bespoke systems per client.Opinionated about how work should happen
The company doesn’t just automate existing processes; it often pushes customers into new ways of working, with the software embodying those opinions. That’s rare courage for a vendor, and it allows reuse.Long time horizons and capital
Being Palantir-like required long periods of negative sentiment, political controversy, and unclear near-term monetization while the platform and go-to-market matured.A very specific market mix
The early footprint in intelligence and defense was a feature, not a bug: high willingness to pay, high switching costs, high stakes, and relatively small numbers of extremely large accounts. Not to mention a set of antiquated incumbents who barely had to compete to win business in decades.
In other words, Palantir is not just “software company + consulting.” It’s “software company + consulting + political project + extremely patient capital.”
That’s not something you casually bolt onto a vertical SaaS product and expect it to generalize.
A More Realistic Framework: When Does “Palantirization” Make Sense?
Instead of asking “How do we be like Palantir?” it’s more useful to ask a series of gating questions:
Problem criticality
Is this problem mission-critical (lives, national security, billions of dollars) or nice-to-have (10–20% efficiency)?
The higher the stakes, the more a forward-deployed model can be justified.
Customer concentration
Are you selling to dozens of huge customers or thousands of small ones?
Embedded engineering scales much better with a concentrated, high-ACV base.
Domain fragmentation
Do customers share similar workflows/use similar software tools, or is every deployment fundamentally different?
If every client is a snowflake, it’s hard to build a consistent platform. Some level of homogeneity helps.
Regulatory and data gravity
Are you operating in highly regulated domains with significant data-integration pain (defense, healthcare, financial crime, critical infrastructure)?
That’s where Palantir-style integration work adds real value.
If you’re mostly in the bottom-left corner of these dimensions (low criticality, fragmented customers, relatively simple integration), a full “Palantirization” is almost certainly the wrong model. Those circumstances constitute a perfect setup for more of a bottoms-up, PLG motion.
What Is Worth Copying
Despite my skepticism that every early stage company can successfully deploy the Palantir model, there are pieces of the playbook that are worth considering.
1. Treat forward deployment as scaffolding, not the house
It can be absolutely correct to:
Embed engineers alongside early design partners
Do whatever it takes to get the first 3–5 customers into production
Use those engagements to pressure-test your primitives and abstractions
But this needs explicit constraints:
Time-boxed deployments (e.g., “90-day sprint to production”)
Clear ratios (e.g., max engineering headcount per $1M of ARR on a given account)
A goal to recycle bespoke code into reusable configurations or templates each quarter
Otherwise, “we’ll productize later” becomes “we never quite got around to it.”
2. Build on strong primitives, not custom workflows
The real lesson from Palantir is about product architecture:
Unified data model and permissioning layer
Common workflow engine and UI primitives
Configuration over code wherever possible
Forward-deployed teams should spend their time choosing and validating which primitives to assemble — not building net-new ones for each customer. Leave the net-new builds to the engineers.
3. Make FDEs part of product, not just delivery
In the Palantir world, forward-deployed engineers are deeply involved in product discovery and iteration, not only implementation. Strong product orgs and platform teams feed on what FDEs learn at the front lines.
If your FDEs sit in a separate “professional services” unit, you lose that feedback loop and drift toward a pure services business.
4. Be honest about your margin structure
If your pitch presumes 80%+ software gross margins and 150% net dollar retention, but your go-to-market model actually requires long on-site projects, be transparent — at least internally — about the tradeoffs.
For some categories, a structurally lower-margin, higher-ACV model is entirely rational. The problem is pretending you’re SaaS when you’re really services with a platform. Investors are typically looking for the path to the most gross profit dollars possible, and one way to achieve that is orders of magnitude larger contracts with more significant COGS.
How I’d Pressure-Test a “Palantirized” Startup
When I meet a founder who says “we’re like Palantir for X,” the questions in my notebook look something like:
Show me an opinionated platform boundary.
Where does the shared product end and customer-specific code begin? How fast is that boundary moving?Walk me through a deployment timeline.
How many engineer-months from signed contract to first production use? What has to be bespoke?What does year-3 margin look like on a mature customer?
Does the amount of forward-deployed effort go down meaningfully over time? If not, why not?What breaks if you sign 50 customers next year?
Hiring? Onboarding? Product? Support? I want to see where the model cracks.How do you decide not to customize?
The willingness to say “no” to custom work is often what separates a product company from a services firm with a nice demo.
If those answers are crisp, grounded in real deployments, and architecturally coherent, then some amount of Palantir-style forward deployment might be a genuine advantage.
If the answers are hand-wavy or it’s clear that every engagement to date has been entirely unique, it’s very difficult for us to underwrite repeatability or the potential for true scale.
The Takeaway
Palantir’s success has created a powerful aura dominating the venture-backed entrepreneurial zeitgeist: small teams of elite engineers parachuting into complex environments, wiring up chaotic data, and shipping systems that change how organizations make decisions.
It’s tempting to believe every AI or data startup should look like this. But for most categories, full-blown “Palantirization” is a treacherous fantasy:
The problems aren’t critical enough
The customers are too fragmented
The talent model doesn’t scale
The economics quietly collapse into services
The more useful question for founders isn’t “How do we become Palantir?” It’s:
“What is the minimum amount of Palantir-style forward deployment we need to bridge the AI adoption gap for our category — and how quickly can we convert that into a true platform business?”
Get that right, and you can borrow the parts of the playbook that matter, without inheriting the parts that will break you.
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Marc nailed it. Rich piece! The Palantir aesthetic is seductive, but the model isn't suitable for everyone or every problem.
Buyers & sellers both benefit when you bring primitives (your Legos that ALREADY fit & function together - more than just IP and expertise). Bring your ontology. Say no to known missteps - or drift without impact.