Kipi Tech's machine-learning platform fuses dozens of alternative and traditional data streams into graded insights on company health — how well a company is really doing, where it's gaining or losing momentum, and how that's changing — often before it appears in the reported numbers.
Earnings, filings, and guidance are lagging indicators — by the time results are reported, the underlying story is months old. And once they're public, everyone is reading the same picture at the same time.
Meanwhile, companies emit a continuous stream of publicly observable operational evidence, long before it consolidates into a quarterly print. It's abundant — and it's also unstructured, noisy, fragmented across sources, and far too large for human analysis.
That's the problem Kipi Tech was built to solve. Our models read alternative and traditional data together, continuously, and translate them into structured insights and company-level grades — a living picture of how each company is really doing.
One platform, three layers: a multi-source data engine, a proprietary AI modeling core, and insight delivery built for analytical workflows.
Continuous ingestion across dozens of alternative and traditional streams, normalized into a longitudinal, point-in-time view of each company.
The heart of the company: a proprietary model stack that fuses heterogeneous raw data into company health grades and the insights behind them.
Grades and insights delivered the way analytical teams consume them — structured, versioned, and point-in-time correct.
Every week, the platform re-reads its full data universe end to end. Four stages, fully automated, cloud-native.
Tens of millions of data points per month across alternative and traditional sources — structured feeds, public documents, high-frequency streams — ingested and quality-scored on arrival.
ML-based entity resolution maps every record to the right company and point in time, reconciling inconsistent identifiers across heterogeneous sources into one clean longitudinal graph.
Transformer-based NLP models read unstructured public text at scale, extracting themes, tone, and operational evidence that no keyword system can catch.
Ensemble models fuse all signal families into an overall health grade and per-dimension insights for each company — continuously validated against subsequent real-world outcomes.
Kipi Tech exists because this problem cannot be solved without machine learning: the inputs are massive, unstructured, noisy, and fragmented. Every layer of the platform is a model.
The richest inputs we process are text. Transformer-based models perform aspect-level analysis, theme extraction, and tone scoring across millions of public documents — handling context, nuance, and domain-specific language that defeats classical NLP.
Alternative data is fragmented and inconsistent by nature. Our matching models resolve companies and events across heterogeneous sources into a single coherent graph — the foundation every downstream model depends on.
Company grades come from ensembles of gradient-boosted and deep time-series models, trained on years of point-in-time data. Every model version is evaluated against strict walk-forward tests before it ships — no look-ahead, no survivorship bias.
The full pipeline — ingestion, feature computation, model training, and weekly inference across the coverage universe — runs on managed cloud infrastructure, letting a small team retrain and re-grade hundreds of companies routinely.
Research teams use Kipi grades as an early, independent read on company health — evidence that leads reported results and complements the datasets everyone already has.
Strategy teams track how the companies around them are really executing — momentum, efficiency, and positioning quantified consistently and comparable across a sector.
Analysts and researchers use aggregated signal histories to study how momentum builds and fades across the market — and where it's building next.
Trust in the data is trust in the signal. Our data practices are simple and strict.
Every input is publicly available or properly licensed — public documents, disclosures, and compliant data streams. No scraping behind logins, no gray-market data, no privately obtained information.
Signals describe companies, never people. Where source data originates with individuals, it is used solely as anonymous, aggregated input — no individual is identified, profiled, scored, or resold, ever.
Point-in-time data discipline, walk-forward evaluation, and versioned models. We hold our signals to the standard our clients hold their own research to.
Traditional financial data had its infrastructure revolution decades ago. Most of the data the world produces about companies still goes unread. We're building the models — and the market — that change that.
Hundreds of US companies graded weekly across seven signal families, with multi-year point-in-time history and production API delivery.
Extending coverage across the broader US company universe, and adding real-time detection of operational inflection events — the moments when a company's trajectory visibly bends, days or weeks before it becomes broadly visible.
A generative-AI research interface over the signal base: ask any question about any company's health and direction in plain language, grounded in our models' evidence.
Kipi Tech was founded by a builder of large-scale data systems and a finance and operations veteran — the two disciplines this product demands.
Veteran engineering leader (Google, Dell) with 13 patents in distributed systems. Architect of Kipi's signal-processing pipeline, data platform, and ML model stack.
CPA and former fund manager with an investment banking and Big 4 M&A background. Leads Kipi Tech's commercial strategy, partnerships, and operations.
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