U
AI Architect
Singapore, Singapore
Contract
Posted 3 weeks ago
Mid-Senior level
Hybrid
AIMLLLM OpsOtherIT Services and IT Consulting
Job Description
Responsibilities
Agentic AI Systems
Required Experience
Agentic AI Systems
- Design reusable patterns for Agentic AI systems including RAG, Multi-Agent Orchestration, and Human-in-the-loop systems
- Define how different agents communicate, share state, and hand off tasks to one another
- Architect long-term and episodic memory layers using Vector Databases, embedding pipelines, and knowledge graphs
- Decide when to use high-reasoning models vs. worker models to optimise cost and performance
- Predict and control token usage; architect systems with semantic caching to prevent redundant LLM spend
- Set architectural standards for explainability, auditability, and guardrails to prevent hallucinations and bias
- Ensure data governance, privacy compliance, and responsible AI practices across all systems
- Design scalable AI infrastructure including model serving, inference architecture, AI microservices, and APIs
- Architect distributed systems supporting AI workloads
- Define MLOps and CI/CD pipelines for AI systems
- Architect containerised and cloud-native deployments; design monitoring and observability for AI services
- Optimise for cost, performance, and scalability across the AI stack
- Architect enterprise-scale Agentic AI frameworks using LangGraph, Model Context Protocol (MCP), multi-agent orchestration frameworks, and memory-driven AI systems
- Design and implement RAG pipelines (Hybrid RAG, Graph-RAG), embeddings pipelines (open-source and enterprise models), prompt orchestration, guardrails, and fine-tuning pipelines (PEFT, LoRA, domain adaptation)
- Build secure LLM deployments across on-prem, air-gapped, and cloud-agnostic environments
- Define LLMOps lifecycle covering evaluation harness, hallucination detection, observability (tracing, telemetry), and model governance
- Hands-on experience with agentic AI frameworks — LangChain, LlamaIndex, AutoGen, CrewAI
- Design and govern modern data platforms built on Medallion (Bronze-Silver-Gold) architecture with Delta tables and ACID transactional layers
- Architect multi-tenant platforms with cost governance and data mesh or federated data architecture patterns
- Work across the core stack: Databricks, Apache Spark (batch & streaming), Delta Live Tables, Apache Druid, Dremio, Kubeflow Pipelines, Airflow
- Drive schema evolution and versioning, metadata and lineage management, data quality frameworks, dimensional modelling for analytics, and Kafka-based streaming ingestion
- Architect ML systems using TensorFlow, PyTorch, Scikit-Learn, XGBoost, LSTM, CNN, Transformer models, and Vision-Language Models (VLMs)
- Design time-series forecasting and anomaly detection solutions for industrial telemetry
- Cloud-native AI architecture on Azure and AWS
- Containerisation using Docker and Kubernetes (Helm, Operators)
- Infrastructure as Code using Terraform
- CI/CD for ML pipelines with secure DevSecOps integration
- Hybrid and on-prem deployments under compliance constraints
- RDBMS: PostgreSQL; NoSQL: MongoDB
- Graph Databases: Neo4j for ontology and knowledge graph modelling
- Vector Databases: Pinecone, FAISS, Milvus, and enterprise vector DB solutions
- Context modelling and semantic search frameworks
Required Experience
- 15+ years in Data, AI, and Platform Engineering
- 5+ years in an AI Architecture leadership role
- Proven delivery of enterprise-scale AI platforms in production environments
- Experience in industrial or engineering AI ecosystems
- Strong background in distributed systems and scalable data processing
Source: LinkedIn
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