Description
You will engineer advanced AI capabilities to support Research Digitization, Banking, and Global Market solutions.
Responsibilities
- Evaluate and implement Data/Model Parallelism libraries, AI Observability, monitoring solutions, vector databases, and inference engines.
- Deploy, manage, and performance tune containerized applications using Kubernetes.
- Architect clusters using hardware optimized for AI workloads.
- Analyze ML and data processing workloads to identify latency and compute inefficiencies.
- Automate AI infrastructure provisioning and generate usage and cost reports.
Required Skills
- Minimum 2 years of hands-on AI Engineering experience.
- Degree in Computer Science or Engineering.
- Experience building, scaling, managing, and monitoring ML pipelines.
- Proficiency in Python and Kubernetes.
- Experience with distributed computing and parallel computing.
- Solid understanding of machine learning, generative AI, agents, multi-agent collaboration, and MCP servers.
- Proficiency in CI/CD principles and version control for production AI workloads.
Preferred Skills
- Experience with Azure Databricks, Spark, Snowflake, NVIDIA NIM, or MLflow.
- Experience building and deploying MCP Servers and AI Agents.
- Experience with vector databases or Terraform.