Building Production-Ready RAG Pipelines
A comprehensive guide to designing and deploying Retrieval-Augmented Generation systems that scale.
Engineering platforms that scale
CoreSyntax Technology designs and builds cloud-native, AI-driven, and platform-grade software systems focused on trust, performance, and long-term maintainability.
From proof-of-concept to production, we engineer systems that teams can trust, operate, and scale — without the typical pitfalls of runaway complexity.
Production-grade LLM systems, RAG pipelines, inference optimisation, and cost-aware AI architectures built to handle real enterprise load.
AWS-native systems, Kubernetes platforms, distributed services, and scalable backends designed for operational clarity from day one.
Greenfield builds and legacy modernisation with clear trade-off documentation and architectures that evolve without chaos.
End-to-end ML pipelines with full observability, zero-downtime model updates, and automated retraining workflows at scale.
A selection of engineering outcomes delivered across enterprise environments — cloud modernisation, AI platforms, and systems built for scale.
Designed and deployed a Retrieval-Augmented Generation platform for an enterprise client — reducing query latency by 50% while serving production traffic at scale. Full observability, cost guardrails, and zero-downtime model rollouts included.
Modernised a high-traffic monolithic system into an event-driven, cloud-native architecture — doubling deployment velocity and cutting infrastructure costs by 30% through right-sizing and autoscaling.
Built a production ML pipeline with automated retraining, model versioning, and A/B rollout — handling 10M+ daily requests with full distributed tracing and alerting from feature ingestion through inference.
Architected an internal developer platform serving 200+ microservices — GitOps workflows, RBAC policies, automated scaling, and a self-service model that reduced onboarding from weeks to hours.
Over 15 years delivering production systems across global technology companies — from telecoms and fintech to cloud-native SaaS. Deep specialisation in AI/ML engineering, distributed systems, and cloud platform architecture.
Practical application of large language models in production environments — building generative AI systems that reduce operational overhead while improving accuracy and reliability.
Distributed systems design with clear trade-off awareness. Modernising legacy monoliths into event-driven, cloud-native architectures that scale under real-world load without breaking.
Consistently recognised across global technology leaders for architectures that move business metrics — from Kubernetes migrations to zero-downtime GenAI deployments at enterprise scale.
Great systems are built by combining deep technical expertise with pragmatic decision-making — no hype, no shortcuts.
Clear trade-offs, documented decisions, and architectures that evolve without chaos.
Every system is designed to be observable, secure, and maintainable from day one.
Performance, cost, and reliability matter more than hype. We measure what matters.
Deep dives into cloud architecture, AI systems, and engineering best practices.
A comprehensive guide to designing and deploying Retrieval-Augmented Generation systems that scale.
Proven techniques to reduce cloud costs without sacrificing performance or reliability.
How to build systems that engineers can understand, debug, and trust in production environments.
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