---
title: "AI and machine learning office space in Tampa"
description: "Where ai and machine learning occupiers cluster in Tampa, what they pay, and what the typical fit-out looks like."
canonical: https://classa.info/cities/tampa/industries/ai-machine-learning
pageType: city-industry
lastUpdated: 2026-04-15T00:00:00.000Z
license: "CC BY 4.0 with attribution to Class A Atlas (https://classa.info)."
---

> AI and machine learning occupiers in Tampa typically cluster in Westshore, plan ~150 sqft per seat at high-end fit-out ($165–235/sqft), and pay around 38 USD/sqft ($38 USD) on Class A.

## TL;DR

- Preferred submarket: Westshore.
- Typical fit-out spec: High-end ($165–235/sqft).
- Plan ~150 sqft per seat for headcount sizing.
- Class A rent context: 38 USD/sqft ($38 USD).
- Typical lease: 10 years with 12 months rent-free.
- Talent depth in Tampa: 72/100.

# AI and machine learning office space in Tampa

**AI and machine learning occupiers in Tampa typically cluster in Westshore, plan ~150 sqft per seat at high-end [fit-out](/topics/fit-out-capex)">fit-out ($165–235/sqft), and pay around 38 USD/sqft ($38 USD) on [Class A](/glossary/class-a).**

## TL;DR

- Preferred submarket: Westshore.
- Typical fit-out spec: High-end ($165–235/sqft).
- Plan ~150 sqft per seat for headcount sizing.
- Class A rent context: 38 USD/sqft ($38 USD).
- Typical lease: 10 years with 12 months rent-free.
- Talent depth in Tampa: 72/100.

## Where they cluster

AI and machine learning occupiers in Tampa typically anchor in Westshore. Insurance (Citi, BofA back-office), professional services, healthcare HQs.

## What they pay

Class A rent in Tampa runs 38 USD/sqft ($38 USD) on a 10-year lease with 12 months free. Prime submarkets sit at or modestly above the city index.

## Spec and fit-out

Typical ai and machine learning fit-out targets high-end specification at $165–235/sqft. Branded reception, full client-facing programming, premium furniture, and specialist AV are standard.

## Headcount sizing

Plan around 150 sqft per seat blended (workstation + circulation + amenity). A 100-headcount ai office in Tampa typically targets 15,000 sqft of leasable area.

## Talent angle

Frontier research talent clusters near top-tier ML programs and adjacent compute / GPU supply; loft-style trophy stock is the normal fit. Strong banking, insurance, healthcare, and cybersecurity talent. University of South Florida and University of Tampa anchor the local pipeline. Strong in-migration from the Northeast continues to broaden the talent base.

## Tax and lease context

Headline corporate tax: 22.5%. Modified-gross structures. 10-year terms standard. Free rent of 10-14 months and TI of $90-$130/sqft typical on a 10-year Class A deal.

## Key facts

| city | Tampa|
| industry | AI and machine learning|
| naics | 541715, 541511, 518210|
| preferredSubmarket | Westshore|
| preferredFitoutSpec | High-end|
| fitoutBand | $165–235/sqft|
| sqftPerSeat | 150|
| classARentLocal | 38 USD/sqft/yr|
| classARentUsd | $38/sqft/yr|
| vacancyPct | 18.6%|
| typicalLeaseYears | 10|
| typicalRentFreeMonths | 12|
| talentIndex | 72|
| corporateTaxPct | 22.5%|

## Frequently asked questions

****Where do ai and machine learning occupiers lease office space in Tampa?****
: Most cluster in Westshore. Rent runs ~38 USD/sqft ($38 USD) for trophy and prime stock.

****What fit-out spec do ai and machine learning occupiers run in Tampa?****
: Typically high-end at $165–235/sqft.

****How much office space per seat should a ai and machine learning occupier plan in Tampa?****
: Plan ~150 sqft per seat blended. A 100-person team typically takes 15,000 sqft.

****What NAICS codes describe the ai and machine learning vertical?****
: Representative NAICS 2022 codes: 541715, 541511, 518210.

****What is the talent index in Tampa?****
: 72/100. Use the city profile for full detail.

## Related

- [**AI and machine learning — global overview**](/industries/ai-machine-learning)
- [**Tampa — full city profile**](/cities/tampa)
- [**Financial services in Tampa**](/cities/tampa/industries/financial-services)
- [**Asset management in Tampa**](/cities/tampa/industries/asset-management)
- [**Investment banking in Tampa**](/cities/tampa/industries/investment-banking)
- [**Legal services in Tampa**](/cities/tampa/industries/legal-services)

## Editorial provenance

Reviewed by [**Class A Atlas Editorial Desk**](/about/authors/class-a-atlas-editorial-desk) — House byline · global editorial team. Last updated 2026-04-15. See our [methodology](/about/methodology) and [editorial standards](/about/editorial-standards).

### Primary sources for this page

- [CBRE Marketview reports](https://www.cbre.com/insights) — CBRE
- [JLL Office Insight](https://www.jll.com/en/trends-and-insights) — JLL
- [Cushman & Wakefield Marketbeat](https://www.cushmanwakefield.com/en/insights) — Cushman & Wakefield
- [Savills World Research](https://www.savills.com/research_articles/) — Savills
- [Colliers Global Office Outlook](https://www.colliers.com/en/research) — Colliers

[Full sources index](/about/sources) · [Submit a correction](/about/corrections)

## Related topics

- [**Class A Lease Negotiation**](/topics/class-a-lease-negotiation) — How to negotiate a Class A office lease — the playbook from LOI to signed deal.
- [**Hybrid Workplace Strategy**](/topics/hybrid-workplace-strategy) — How to size, structure, and lease a Class A office for a hybrid workforce.
- [**ESG / LEED for Tenants**](/topics/esg-leed-tenants) — How tenants evaluate, negotiate, and report on ESG performance in a Class A office lease.
- [**Cross-border Expansion**](/topics/cross-border-expansion) — How to run a coordinated Class A office search across multiple geographies.
- [**Fit-out Capex**](/topics/fit-out-capex) — How to budget, sequence, and govern Class A office fit-out capex.
- [**Lease vs Flex**](/topics/lease-vs-flex) — When premium flex (coworking, [managed office](/glossary/managed-office)) beats a conventional Class A lease — and vice versa.

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Citation: Source: Class A Atlas (https://classa.info/cities/tampa/industries/ai-machine-learning), updated 2026-04-15T00:00:00.000Z.
