Sydney, NSW - AI Engineer

Sumneet Kaur

I build AI systems that ship.

My background spans enterprise technology at Infosys and startup work at Kifaayat, where I build LLM workflows, RAG experiments, multi-agent pipelines, APIs, dashboards, and automation close to real users and business problems.

RAG Pipelines Multi-agent Systems FastAPI LLM Infrastructure

The journey so far

A quick thread from electronics engineering to enterprise systems, Sydney, and production-minded AI engineering.

2016-2020

B.Tech Electronics & Communication Engineering

GGSIPU Delhi.

Nov 2020-Dec 2023

Technology Analyst, Infosys

Enterprise data and cloud systems.

Feb 2024

Moved to Sydney

Started Master of Computer Science at the University of Sydney.

Feb 2024-Present

Kifaayat

Personalising marketing with LLM-powered user insights.

2025

SafeMedAI and TeachSmart

Built clinical AI deployed on Railway, plus TeachSmart for a hackathon and Cambridge EduX 2026.

December 2025

Graduated

Master of Computer Science, Data Science & AI, University of Sydney. Distinction, WAM 76.5.

2026

Marketing intelligence

Building AI systems that turn social and user signals into next-best actions.

What I build

Multi-agent systems, RAG pipelines, production LLM infrastructure, and social signal tools that turn noisy behaviour into useful decisions.

AI Systems

  • Hands-on experience with LLM systems, RAG pipelines, agent workflows, APIs, dashboards, and data products
  • FastAPI services, Python pipelines, async workflows, embeddings, retrieval, and evaluation experiments
  • LangGraph and multi-agent orchestration for turning messy signals into structured recommendations
  • Strong intuition for where AI adds leverage, where evaluation is needed, and where simpler software wins

Production Delivery

  • Enterprise foundations across Azure, AWS, CI/CD, Docker, Kubernetes, ETL pipelines, and REST integrations
  • Startup operating experience across engagement systems, automation, internal tools, and reporting
  • Written and analytical foundation from CS, AI/data science, NLP publications, dashboards, and research projects
  • Commercial judgement from Kifaayat: growth loops, user behaviour, experiments, and impact measurement

Selected Work Gallery

A cinematic case wall of AI systems, growth experiments, retrieval pipelines, and social signal tools. Pick a card to open the episode notes.

Experience

Startup AI automation work layered on enterprise technical foundations.

AI Engineer

Kifaayat | Sydney, NSW | Feb 2024 - Present

  • AI ops Designed lifecycle, engagement, and follow-up automations using Zapier, AI APIs, and backend workflow orchestration.
  • Growth Built contextual re-engagement flows from behaviour, market gaps, and activity signals.
  • Data Shipped dashboards and reporting workflows for engagement trends, experiments, and startup performance.
50k+Social audience supported by engagement workflows and content systems
15k+Platform users reached through acquisition and lifecycle automation
23%Conversion improvement through segmentation and outreach experiments
60%Manual analysis reduced through AI reporting and dashboards

Technology Analyst

Infosys | Nov 2020 - Dec 2023

  • Lead Led a 6-person team on an enterprise migration project, coordinating delivery across cloud, data, and release workstreams.
  • Data Implemented ETL pipelines and REST API integrations for analytics and downstream platforms.
  • DevOps Built CI/CD and deployment automation supporting containerised workloads across Azure and AWS.
6-personMigration team lead
3 yrsEnterprise delivery
MigrationWorkstream coordination
2 awardsDelivery recognition

Education

Computer science, data science, AI, and engineering foundations, anchored by postgraduate study at the University of Sydney.

Master of Computer Science - Data Science & AI

University of Sydney | Feb 2024 - graduated December 2025 | Distinction, WAM 76.5

Bachelor of Technology - Electronics & Communication Engineering

GGSIPU Delhi | 2016 - 2020 | CGPA 8.25/10

Publications

Research threads across NLP, sentiment analysis, IoT, automation, and ambient computing.

Literature Review of Twitter Sentiment Analysis

Journal of Emerging Technologies and Innovative Research (JETIR) | Jun 2019

Published in an international open access journal. Surveys NLP techniques for sentiment classification on social media data, including feature extraction, model architectures, and benchmark patterns across Twitter datasets.

Read paper

Smart Mirror: A Hub for Ambient IoT Environments

International E-Conference on Recent Innovations in Engineering and Technology | May 2021

Conference paper on AI-powered gesture-controlled home automation using ambient IoT systems, presented at an international engineering conference.

Public link unavailable

Let’s build useful AI systems.

Always happy to talk about LLM systems, agents, RAG pipelines, clinical and education AI, marketplace workflows, and social signal tools.