Bestkaam Logo
MyCareernet Logo

Junior AI Engineer - Generative AI & Cloud_96666

Actively Reviewing the Applications

MyCareernet

India, Tamil Nadu, Chennai Full-Time On-site
Posted 1 day ago Apply by June 11, 2026

Job Description

Key Skills: LLM, Python, Generative AI, AWS, Azure

Roles and Responsibilities:

Generative AI Development

* Build and integrate applications using Large Language Models (LLMs).

* Develop RAG (Retrieval-Augmented Generation) pipelines.

* Implement prompt engineering and structured output generation.

* Integrate AI services via APIs (OpenAI, Azure OpenAI, AWS Bedrock, etc.).

* Build AI-powered chatbots, assistants, and internal productivity tools.

Python Engineering

* Write clean, scalable Python code for AI workflows.

* Develop REST APIs using FastAPI or Flask.

* Work with JSON, structured data, embeddings, and vector stores.

* Build data processing scripts for AI pipelines.

Cloud & Deployment

* Deploy AI applications using:

o AWS (S3, Lambda, Bedrock, EC2, API Gateway) OR

o Azure (Azure OpenAI, Functions, Blob Storage, App Services)

* Containerize applications using Docker (basic level).

* Support CI/CD pipelines and cloud deployments.

Data & Integration

* Work with structured and unstructured data sources.

* Build connectors to databases (PostgreSQL, MySQL, SQL Server).

* Assist in creating vector databases (FAISS, Pinecone, OpenSearch, etc.).

* Support model evaluation and logging.

Skills Required:

  • 1-3 years of experience in software engineering or AI development
  • Strong proficiency in Python.
  • Experience working with APIs and JSON-based integrations.
  • Basic understanding of:
  • o LLMs and Generative AI
  • o Prompt engineering
  • o Embeddings & vector search
  • Hands-on experience in AWS or Azure.
  • Familiarity with Git and collaborative development workflows.
  • Experience with:
  • o LangChain, LlamaIndex, or similar frameworks
  • o Azure OpenAI or AWS Bedrock
  • o FastAPI
  • o Vector databases
  • Basic understanding of:
  • o RAG architecture
  • o AI model evaluation
  • o MLOps fundamentals
  • Exposure to Databricks is a plus.


  • Python programming for AI/ML workflows
  • LLM integration and prompt engineering
  • RAG pipeline development
  • REST API development (FastAPI/Flask)
  • Cloud platforms: AWS or Azure
  • Working with embeddings and vector databases
  • API integrations and JSON data handling
  • Docker basics and cloud deployment
  • Git version control and collaborative development
  • Basic understanding of MLOps and AI model evaluation

Education: Bachelor's Degree in related field

Check Qualification

Quick Tip

Customize your resume and cover letter to highlight relevant skills for this position to increase your chances of getting hired.