Transforming financial services with cutting-edge AI technology.
Transforming financial services with cutting-edge AI technology.
Founded by Alan Milligan, former Head of Data and Digital Solutions at ISDA, MACRA.AI brings two decades of financial risk, AI, and infrastructure leadership into a dynamic forecasting platform. Built for institutional users, it fuses Bayesian inference, generative AI, and macroeconomic signal extraction to power scenario-driven decisions across markets, policy, and credit risk.
MACRA.AI combines Bayesian econometrics, machine learning, and LLMs to generate dynamic, scenario-aware U.S. recession forecasts. It delivers multidimensional insights for policymakers, asset managers, and risk professionals.
MACRA.AI delivers forward-calibrated recession probabilities and conditional macro regime insights to power tactical asset allocation, credit stress testing, and central bank policy design. From hedge funds to regulators, MACRA’s scenario-driven architecture enhances forecasting, risk modelling, and behavioural diagnostics across the macro-financial spectrum.
MACRA outperforms traditional recession models by integrating credit stress, policy response, and narrative sentiment into a unified Bayesian forecasting architecture. Unlike static yield curve models, it dynamically adjusts for global spillovers and monetary shifts.
MACRA.AI is not a black box. It is built from the ground up to meet the transparency, auditability, and explainability standards expected by financial institutions, asset managers, central banks, and regulators. Where many machine learning systems obscure their reasoning, MACRA.AI makes every assumption, probability, and forecast path traceable and defensible:
MACRA.AI delivers fluent, data-driven economic forecasts without hallucinations. LLMs interpret trusted sources and explain results, but all forecasts come from rigorous econometric and deep learning models, thus ensuring accuracy, transparency, and reliability.
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