AI decision platform for financial institutions automating credit, fraud, and compliance workflows
Taktile builds an agentic decision platform purpose-built for regulated financial services—combining Python + FastAPI + AWS Lambda with LLM integrations (OpenAI, Anthropic, Claude) to automate high-stakes decisions like customer approval and fraud detection. The stack shape (heavy API and data infrastructure, sparse adopting/replacing signals) and project list (low-latency decision APIs, case management, entity layers) reveal a company focused on embedding AI into existing decisioning workflows rather than replacing them wholesale. Hiring is engineering-heavy and accelerating across six countries, with visible gaps in go-to-market professionalization—matching stated pain points around sales pipeline and customer acquisition.
Notable leadership hires: Account Director
Taktile operates a decision platform for financial institutions, targeting workflows across onboarding, credit, AML, compliance, and fraud detection. Founded in 2020 and headquartered in New York with offices in London, Berlin, and Iasi, the company serves over 200 financial institutions. The platform is designed for highly regulated environments where speed and human oversight must coexist—automating routine decisions while maintaining audit trails and compliance controls. Core infrastructure runs on AWS (Lambda, DynamoDB, PostgreSQL, Aurora) with backend services and SDKs handling integration into existing bank systems. The organization spans 51–200 employees with accelerating hiring velocity across engineering, sales, and distributed regional teams.
Python, FastAPI, AWS (Lambda, DynamoDB, Aurora), React, TypeScript, PostgreSQL, OpenAI, Anthropic, and Apache ecosystem tools (Iceberg, Spark, Athena) for data processing and decision logic.
Headquartered in New York, NY with additional offices in London, Berlin, and Iasi. Active hiring spans six countries including the US, UK, Germany, Romania, Brazil, and Canada.
Other companies in the same industry, closest in size