Give your AI real world context.

Factori helps enterprise AI teams plug clean, real‑world data into their models and applications—so predictions, copilots, and agents understand how people move, shop, work, and live in the physical world.

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Why AI that only run on internal data falls short

Most enterprise AI runs on logs and tables from inside the business. That misses the thing your users care about most: what’s happening out there.

Factori adds that outside‑in layer, so you can:

Improve forecast and decision quality

Make AI outputs easier to explain and trust

Re‑use one set of external signals across many models and apps

No more one‑off scrapes, spreadsheets, or fragile vendor feeds.

Build AI that understands the real world

Better forecasting models

Demand, labor, risk, and supply models that move with events, mobility, economics, and local conditions.

Location‑aware copilots

Assistants for ops, real estate, and planning that can answer “what’s happening around this site?” from data, not guesses.

Geo‑aware LLM apps

Agents that can reason about markets, neighborhoods, and routes using structured context, not just text.

Decision support for the field

Simple tools that give regional leaders and store/branch managers real‑world context alongside their KPIs.

Reusable feature pipelines

One external data layer that supports many use cases instead of a different feed for every project.

Real world inputs your models can be grounded on

You bring the models and use cases. Factori brings consistent real‑world signals.

Each dataset is designed to be easy for data teams to understand and simple to join to your own locations and markets.

Mobility

Mobility

How people move around your locations and service areas.

Places

Places

Clean information about stores, venues, and points of interest.

People

People

Aggregated neighborhood‑level audience profiles (privacy‑safe).

Events

Events

Local events that move demand and traffic.

Retail

Retail

Where category and brand spend is rising or falling.

Business

Business

Competitors, anchors, and complementary brands around each site.

Property

Property

How neighborhoods and industrial areas are built and changing.

Market

Market

Search and commerce interest by brand, product, and category.

How AI teams plug in real world data

Upgrade existing models

Add external signals around stores, branches, hotels, depots, routes, and markets to cut error and explain variance.

Standardize context across use cases

Use the same real‑world layer to support forecasting, pricing, site selection, workforce, and supply chain models.

Ground LLMs and agents

Feed copilots and decision agents with structured location, event, and market context so answers are specific and defensible.

Prototype faster

Skip months of sourcing and cleaning external data; start from documented, production‑ready datasets.

Align with the business

Build models on top of concepts everyone understands: traffic, events, nearby businesses, local income, and spend.

Questions your AI team can now answer confidently

What changed around this store that might explain last week’s drop?

Which new sites look most like our top performers in the real world?

If we open a depot here, how does that affect service levels and cost?

Where should we test this promo next, based on demand and competition?

What’s the risk profile of this branch or region compared to similar areas?

Who needs this data

Heads of Data, AI, and ML Platforms

Pick a flagship use case

For example: demand forecasting, site selection, workforce planning, or a planning copilot for operators.

Choose a small set of datasets

Start with 2–4 that clearly match your use case—for example, Mobility + Events + Economic for demand, or Places + People + Business for site planning.

Run a side‑by‑side

Compare your current approach to “current + Factori data,” and review impact on accuracy, explanations, and user trust.