Graphite Note
No-code decision intelligence platform that uses an AutoML engine to build predictive and causal models, applied in lending and real estate finance for lead scoring and conversion forecasting.
Best for: Lending and real estate finance teams that want no-code predictive lead scoring and forecasting without an in-house data science team
Last reviewed 6/2/26
- Pricing
- Sandbox tier free (no-code predictive templates, limited rows/models, no causal or prescriptive features); Enterprise Suite starting at $50,000/year
- Integrations
- CSV upload, MySQL, MariaDB, Oracle, Google BigQuery, REST API
- Property types
- Residential, Commercial
- Geography served
- Global; offices in Ireland, United States, and Mexico
How Graphite Note uses AI[1][2]
Graphite Note runs a no-code AutoML engine that automatically selects and tunes predictive and causal models to forecast outcomes like demand, churn, customer lifetime value, and price sensitivity, then layers prescriptive playbooks on top. For real estate and lending, it is used for predictive lead scoring and conversion forecasting on mortgage and property data, and its REST APIs let teams push datasets and pull predictions into existing systems.
- • Proprietary AutoML engine auto-selects and tunes predictive and causal algorithms per business question, no coding required
- • Forecasts demand, churn risk, customer lifetime value, and price sensitivity, with prescriptive next-step recommendations
- • Applied to mortgage and real estate lead scoring to rank and prioritize leads on behavioral and historical data
- • Public REST APIs (Dataset, Prediction, Model Results, Model Info) for pushing data and pulling predictions into other tools
AI type: No-code AutoML / predictive and prescriptive analytics
API: yes MCP: no
Key numbers[1][5][6]
- • Raised EUR 1.2 million seed round (May 2024) to fund international growth and add 25 jobs at the RDI Hub
- • company-reported case studies cite a telco conversion rate increased to 5.2%, up to 10% reduction in manufacturing scrap, and a 77% reduction in operational time in one engagement
Credibility[1][5][6][7]
- Founders
- Co-founded in 2020 by Hrvoje Smolic (CEO) and Vinnie Lynch (CRO); the founders met through the NDRC pre-accelerator at the RDI Hub in Kerry
- Customers
- Used across retail, CPG, manufacturing, telco, finance, SaaS, and hospitality; ISO 27001 and ISO 42001 certified and GDPR compliant
- Investors
- Enterprise Ireland and angel investors led by Gerry Devitt (CEO of Harvest Financial)
Founded
2020
Headquarters
Killarney, County Kerry, Ireland
Stage
Seed
Employees
11-50
Sources
- Graphite Note official site
- Graphite Note REST API documentation
- Graphite Note company LinkedIn
- Graphite Note pricing page
- Graphite-Note secures EUR 1.2m (company blog)
- Graphite Note raises EUR 1.2M seed round (Discover Kerry)
- How a meeting of minds sparked Graphite-Note (ThinkBusiness)
- Graphite Note data source documentation
Related companies
Blooma
AI-powered CRE lending platform that automates deal origination, underwriting, and portfolio monitoring. ML models assess risk and forecast cash flows, cutting underwriting time by 3x.
Blooma applies machine learning and OCR to automate commercial real estate underwriting, parsing deal documents and scoring risk across thousands of data points per deal.
Homesage.ai
API-first property intelligence platform using computer vision and predictive analytics for automated valuations, rent estimates, and property condition assessments across 140M+ U.S. properties.
Grades property condition from listing photos and forecasts rental income with neural networks.
Kiavi
Tech-enabled lender that prices and approves loans for residential real estate investors using proprietary machine learning, including an after-repair-value model that scores fix-and-flip and rental deals in seconds.
Kiavi prices and approves loans for residential real estate investors with proprietary machine learning models trained on its own lending data, including an after-repair-value model that scores fix-and-flip and rental deals in seconds.