About the RoleWe are looking for a highly skilled AI Engineer with strong hands-on experience across the AWS AI/ML ecosystem. You will design, build, and deploy AI systems, collaborate with cross-functional teams, and contribute to scalable, production-grade solutions using modern AWS-native tooling.Key Responsibilities:AI/ML Solution DevelopmentBuild, deploy, and optimize machine learning models on AWS using SageMaker, Bedrock, Lambda, EC2, ECR, and Step Functions.Develop end-to-end ML pipelines (training, evaluation, deployment, monitoring).Implement vector search, embeddings pipelines, and LLM-based applications using Amazon Bedrock or open-source models.Build RAG (Retrieval-Augmented Generation) workflows using AWS services such as OpenSearch / Aurora / DynamoDB.Data Engineering & MLOpsBuild scalable data pipelines using Glue, EMR, Kinesis, or Lambda.Implement MLOps workflows using SageMaker Pipelines, Model Registry, MLflow (if applicable), and CI/CD.Monitor and optimize model performance, drift detection, retraining triggers.Backend & IntegrationIntegrate models with applications via REST APIs / async APIs.Work with microservices using Python (FastAPI), Node.js, or similar.Build inference endpoints optimized for low latency and cost efficiency.Cloud Architecture & OptimizationArchitect and deploy AI workloads following AWS Well-Architected best practices.Optimize compute, storage, and networking for high performance and cost efficiency.Implement security, IAM policies, data encryption, and compliance practices.Required Skills & Experience:Core AI/ML Skills5+ years of ML/AI engineering experience, preferably in production environments.Strong expertise with:AWS SageMaker (training, inference, Pipelines, Model Monitor, Debugger).Amazon Bedrock (LLMs, embeddings, fine-tuning or instruction tuning).Feature Store, SageMaker JumpStart, Batch Transform.Solid experience with deep learning frameworks: PyTorch, TensorFlow, Hugging Face, LangChain (optional but preferred).Experience building LLM agents, automation workflows, or RAG-based systems.ProgrammingStrong in Python (mandatory)Experience with FastAPI, microservices, containerized ML workloadsExperience with Git, Docker, CI/CD pipelinesData EngineeringGood understanding of data modeling, ETL/ELT conceptsExperience with Glue, Athena, Kinesis, Redshift, or equivalentCloud & DevOpsStrong hands-on with:LambdaECS/EKS (nice to have)API GatewayCloudWatchIAMAWS OpenSearchExperience integrating third-party telephony systems with Amazon Connect.Ironbook AI is a builder-led company focused on solving some of the hardest problems in enterprise AI: data activation, agentic automation, and autonomous data engineering. We operate a dual model — a product business developing AI-native systems like our autonomous data migration agent, alongside a high-impact consulting practice that delivers AI solutions for leading enterprises across APAC. Our teams work hands-on with AWS, Databricks, Confluent, MinIO and modern cloud ecosystems to ship real-world AI at scale. Join us if you want to build meaningful systems, push the boundaries of what AI can do, and help shape the next decade of enterprise technology.
Job Title
Artificial Intelligence Engineer