Skip to main content
Posted 20 June, 2026

Generative AI Engineer

Talentgigs
Bengaluru, KA, IN Full Time
Reference: ffa31ba4e47f796f

Job Description

AI/ML Architect – Generative AI & Enterprise AI Platforms


Employment - Full-Time

About KogniVera

KogniVera is an ISO/IEC 27001:2022 certified technology consulting and services company specializing in digital transformation, AI-driven solutions, and omnichannel commerce. We partner with global enterprises across Retail, eCommerce, Financial Services, Insurance, and Healthcare to build innovative and scalable technology platforms.


Company Website:


Role Overview

We are looking for an experienced AI/ML Architect with 8–10 years of expertise in Artificial Intelligence, Machine Learning, Data Science, and Enterprise AI Engineering. The ideal candidate will lead the architecture, design, and implementation of scalable AI/ML and Generative AI solutions, driving enterprise-wide AI adoption and innovation.


Experience

8–10 years of experience in AI/ML, Data Science, AI Engineering, or related domains.

Proven experience delivering production-grade AI solutions.


Key Responsibilities

AI/ML Architecture

Design and implement scalable AI/ML architectures for enterprise applications.

Lead end-to-end AI solution delivery from data pipelines to deployment and monitoring.

Build reusable AI frameworks and accelerators.


Generative AI & Agentic AI

Develop and architect LLM-based applications.

Design and implement RAG solutions using vector databases and semantic search.

Build AI agents, tool-calling workflows, multi-agent systems, and MCP integrations.

Develop conversational assistants, coding assistants, automation agents, and enterprise copilots.


Machine Learning Solutions

Recommendation Systems

Demand Forecasting

Price Prediction

Customer Segmentation

Fraud Detection

Predictive Analytics

Search Relevance & Ranking

Behavioral Analytics

Optimization Problems


Cloud & MLOps

Lead AI implementations on GCP using Vertex AI, BigQuery, GKE, Cloud Run, Pub/Sub, Dataflow, and Vector Search.

Establish MLOps best practices including model monitoring, experiment tracking, feature stores, CI/CD, drift detection, and automated retraining.

Deploy scalable AI services using FastAPI, Docker, Kubernetes, and Microservices.


Programming & ML

Python

NumPy, Pandas, Polars

Scikit-learn, XGBoost

TensorFlow, PyTorch


Generative AI

Large Language Models (LLMs)

RAG Architecture

Prompt Engineering

Embedding Models

Semantic & Hybrid Search

AI Agents & Tool Calling

MCP Integrations


Frameworks

LangChain

LangGraph

LlamaIndex

CrewAI

AutoGen

Vector Databases

Pinecone

Weaviate

FAISS

Milvus

Elasticsearch

Vertex AI Vector Search


Cloud & Infrastructure

Google Cloud Platform (GCP)

Docker

Kubernetes

GKE

Serverless & Event-Driven Architectures


Preferred Experience

Retail, eCommerce, Financial Services, Analytics, Customer Experience, or Enterprise Automation domains.

Experience with Vertex AI Search, Google Commerce Search, Dialogflow CX, OR-Tools.

Knowledge of Responsible AI and Enterprise AI Governance.


What You'll Drive

Enterprise AI Strategy & Roadmap

Scalable AI/ML Platforms

Generative AI Adoption

Customer Personalization & Automation

AI Engineering and MLOps Best Practices

Sign up for Job Alerts