Temus is a Singapore-based transformation consultancy built around three pillars: value architecture (upfront design and business case), management consulting (change and process), and in-house IT delivery. The tech stack reveals heavy investment in test automation (Playwright, Selenium, Robot Framework, Cypress, UFT) and ML/AI infrastructure (PyTorch, TensorFlow, Hugging Face, SageMaker, Vertex AI, Bedrock, DataRobot)—backed by engineering hiring that skews senior and technical. Active projects span AI system implementation, core modernization, and financial data workflows, while pain points cluster around system monitoring, compliance, and ecosystem integration, suggesting clients are large enterprises with complex regulatory and operational requirements.
Temus helps public and private sector organizations across Southeast Asia navigate digital transformation through a combination of business consulting, value-driven architecture, and hands-on IT delivery. Founded in 2021 and based in Singapore, the firm positions itself at the intersection of strategy (how to create value from technology change) and execution (building and integrating systems). The team spans 201–500 employees, with consistent hiring in Singapore and Vietnam. Core service areas include low-code platforms (OutSystems), data and AI implementation, and system modernization, typically for mid-to-large enterprises dealing with legacy infrastructure, regulatory complexity, and organizational change.
Test automation (Playwright, Selenium, Cypress, Robot Framework, UFT), low-code (OutSystems), ML/AI (PyTorch, TensorFlow, Hugging Face, SageMaker, Vertex AI, AWS Bedrock), infrastructure (Kubernetes, Terraform, Docker), and monitoring (Datadog). Also uses DataRobot and Dataiku for analytics.
AI system design and implementation, core system modernization, financial data workflow transformation, ecosystem integration, technical strategy and roadmapping, and risk management strategy development for enterprise clients.
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