AI Engineer – Infrastructure & Agentic Systems (4+yrs)

6 years

0 Lacs

Posted:23 hours ago| Platform: Linkedin logo

Apply

Work Mode

On-site

Job Type

Full Time

Job Description

Position:

Experience Required:

Employment Type:

About the Role

We are seeking a strong AI Engineer with a heavy focus on infrastructure and production-grade AI systems. This role is ideal for someone who enjoys building scalable AI backends, setting up robust data and MLOps pipelines on GCP, and deploying agentic AI applications end-to-end. If you are passionate about AI infrastructure, cloud-native systems, and real-world AI deployment—not just experimentation—this role is for you.

Key Responsibilities

• Design and build AI infrastructure using Python or Rust with a strong focus on performance and scalability.

• Set up end-to-end data pipelines from APIs to storage layers such as AlloyDB or CloudSQL.

• Design and manage data models to support AI workloads and application requirements.

• Build and maintain GCP-based MLOps pipelines for training, deployment, monitoring, and versioning.

• Develop and deploy AI applications using Vertex AI, including RAG-based and agentic workflows.

• Implement agentic tool usage and orchestration for multi-step AI workflows.

• Build FastAPI-based backend services and token-streaming endpoints for real-time AI responses.

• Ensure reliability, observability, and security of AI systems in production environments.

• Collaborate closely with product, data, and frontend teams to deliver scalable AI solutions.

Skills & Requirements

• Strong programming background in Python or Rust.

• Hands-on experience with GCP, especially Vertex AI and cloud-native services.

• Solid experience in MLOps, including model deployment, monitoring, and pipeline automation.

• Strong understanding of data modeling and backend data pipelines.

• Experience setting up API-driven data ingestion and storage using AlloyDB or CloudSQL.

• Hands-on experience with FastAPI and building production-grade APIs.

• Practical experience with RAG architectures and agentic AI workflows.

• Understanding of token streaming, latency optimization, and scalable AI serving.

Nice to Have

• Experience with containerization and orchestration (Docker, Kubernetes).

• Familiarity with vector databases and embedding pipelines.

• Exposure to LLM observability, evaluation, and cost optimization strategies.

• Prior experience building AI systems at scale in production environments.

Mock Interview

Practice Video Interview with JobPe AI

Start Python Interview
cta

Start Your Job Search Today

Browse through a variety of job opportunities tailored to your skills and preferences. Filter by location, experience, salary, and more to find your perfect fit.

Job Application AI Bot

Job Application AI Bot

Apply to 20+ Portals in one click

Download Now

Download the Mobile App

Instantly access job listings, apply easily, and track applications.

coding practice

Enhance Your Python Skills

Practice Python coding challenges to boost your skills

Start Practicing Python Now

RecommendedJobs for You