AI Risk Decisioning™ platform that helps organizations manage onboarding, fraud, credit, and compliance risks
Product Manager - Orchestration Platform
Location
Worldwide
Posted
1 day ago
Salary
$265K - $297.5K / year
Seniority
Lead
Job Description
Product Manager - Orchestration Platform
Oscilar
Role Description We are seeking an innovative Product Manager to lead the development of our next-generation risk orchestration platform. You will be building the future of risk decisioning - a visual workflow automation platform meets cutting-edge AI, specifically designed for financial risk workflows. This platform will combine no-code visual workflow builders with Generative AI and Agentic AI capabilities to automate complex real-time decisioning for fraud, credit, onboarding, and AML use cases. This is a unique opportunity to define how financial institutions will orchestrate risk operations. What You'll Build - Visual Risk Orchestration Platform - Drag-and-Drop Risk Nodes: Pre-built components for common risk operations (KYC checks, transaction monitoring, credit scoring, sanctions screening) that connect seamlessly. - Real-Time Execution Canvas: Visual feedback showing live data flow, with ability to inspect outputs at each node and test individual steps without running entire workflows. - AI-Powered Decision Trees: Visual branching logic that adapts based on risk signals, with AI suggesting optimal paths and thresholds. - Risk-Specific Templates: Pre-built workflows for common scenarios like "High-Risk Transaction Investigation" or "Enhanced Due Diligence Flow". - Enterprise-Grade Execution Engine - Sub-100ms Performance: Real-time execution handling millions of decisions daily with queue management and worker distribution. - Error Recovery Workflows: Visual error handling with automatic retry logic and fallback paths for failed services. - Compliance Recording: Every decision path logged with full explainability for regulatory review. - Version Control Integration: Git-based workflow management with staging/production environments. Key Responsibilities - Product Strategy & Vision: - Define the product vision for an AI-first risk orchestration platform that revolutionizes how FIs manage risk workflows. - Develop the roadmap that balances no-code accessibility with sophisticated AI capabilities. - Research and analyze competitive landscape (n8n, Zapier, Temporal) to identify differentiation opportunities. - Create the strategy for transitioning from traditional rule engines to AI-orchestrated decisioning. - Define success metrics and KPIs that demonstrate value across fraud, credit, AML, and onboarding use cases. - Platform Architecture & Design: - Node Library Development: Design 200+ pre-built risk nodes including: - Data ingestion nodes (core banking APIs, bureau connectors, blockchain analyzers). - Enrichment nodes (identity verification, device fingerprinting, graph analytics). - Decision nodes (ML scoring, rules engines, policy tables). - Action nodes (case creation, alert generation, automated responses). - AI nodes (investigation agents, narrative generators, anomaly detectors). - Workflow Studio Features: Create an intuitive builder with: - Split-screen design showing workflow logic and live data flow. - Node search with AI-powered recommendations ("nodes similar to velocity checks"). - Sticky notes and documentation directly on the canvas. - Workflow simulation with synthetic data for testing. - Performance profiling showing latency at each node. - Template Marketplace: Curate risk-specific workflows: - "FATF-Compliant Transaction Monitoring" template. - "SaaS Fraud Prevention Suite" with pre-configured rules. - "Instant KYC + Credit Decision" for lending. - Community-contributed workflows with security vetting. - Developer Experience: Enable power users with: - JavaScript/Python code nodes for custom logic. - Webhook nodes for real-time event triggering. - API nodes with OAuth management. - Git sync for workflow version control. - CLI tools for workflow deployment. - Cross-Functional Leadership: - Collaborate with engineering to build a platform that's both powerful and performant. - Work with risk domain experts (fraud, AML, credit) to ensure workflows meet practitioner needs. - Partner with customer success to gather feedback and iterate on platform capabilities. - Coordinate with sales and marketing to articulate the platform's unique value proposition. - Lead agile ceremonies and maintain clear communication across all stakeholders. Qualifications - 5+ years of product management experience, with at least 3 years in B2B SaaS platforms. - Proven track record building workflow automation, orchestration, or integration platforms. - Background in fintech, risk management, or financial services preferred. - Demonstrated success launching technical products for non-technical users. Requirements - Deep understanding of workflow orchestration patterns, event-driven architectures, and state machines. - Experience with visual programming concepts and node-based editors (Node-RED, Retool Workflows, Pipedream). - Knowledge of AI/ML concepts including LLMs, embeddings, vector databases, RAG, and agent architectures. - Understanding of real-time systems, message queuing (Kafka, RabbitMQ), and streaming data processing. - Familiarity with API design, webhooks, OAuth flows, and integration patterns. - Experience with workflow execution engines (Temporal, Airflow, Camunda). - Understanding of no-code/low-code platforms and visual programming paradigms. - Understanding of risk decisioning workflows across fraud, AML, credit, and onboarding. - Knowledge of regulatory requirements for automated decision-making (FCRA, GDPR Article 22). - Familiarity with risk operations including case management and investigation workflows. - Understanding of financial services infrastructure and data sources. Preferred Qualifications - Technical background in Computer Science or Engineering. - Experience with specific technologies: Node-RED, Apache Airflow, Temporal, or similar workflow engines. - Knowledge of specific risk platforms (Actimize, SAS, Feedzai, etc.). - Experience building developer platforms or tools. - Understanding of MLOps and model deployment pipelines. - Background in building real-time, mission-critical systems. Benefits - Compensation: Competitive salary and equity packages, including a 401k plan. - Flexibility: Remote-first culture — work from anywhere. - Health: 100% Employer covered comprehensive health, dental, and vision insurance with a top tier plan for you and your dependents (US). - Balance: Unlimited PTO policy. - Technical: AI First company; both Co-Founders are engineers at heart; and over 50% of the company is Engineering and Product. - Culture: Family-Friendly environment; Regular team events and offsites. - Development: Unparalleled learning and professional development opportunities. - Impact: Making the internet safer by protecting online transactions.
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