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PeoplePilot

AI/ML Engineer

Actively Reviewing

PeoplePilot

Bengaluru Full-Time 2–4 yrs exp Posted 6 hours ago  · Apply by Sep 14, 2026

Role Overview

We’re building the small, senior AI team that builds these products. This is one of two core hands-on AI/ML engineer seats, working directly under our Principal AI Engineer. Expect your time to split roughly half model work, half backend/pipeline work.


Key Responsibilities

  • Build and ship production models — object detection, segmentation, OCR/text extraction, and classification models behind our products.
  • Build the AI backend the models live in. Run the models on incoming data, then write the post-processing and pipeline logic that turns raw model output into clean, structured product data. All in Python.
  • Work in the data layer. Detected and human-corrected results are stored in a document store (MongoDB) — you design document structures and write the queries and aggregations your pipeline and the retraining loop depend on.
  • Feed the data flywheel — the annotation → correction → retraining loop that makes the models better release over release.
  • Own evaluation for your work — benchmarks, error analysis, and quality metrics tied to real product outcomes.
  • Deploy and run your models and your pipeline code — Docker, Kubernetes on AWS EKS — and iterate on what production tells you.
  • Work under the Principal AI Engineer’s technical direction, and partner with the Senior Applied ML Engineer on data quality and the eval harness.


Requirements

Must-Haves

  • 3–5 years hands-on building production ML/AI — you’ve shipped models that real users or customers rely on.
  • Strong Python for both model and product code.
  • Strong PyTorch (or TensorFlow) and solid ML fundamentals.
  • MongoDB: comfortable designing document schemas and writing non-trivial aggregation queries.
  • PostgreSQL: working knowledge.
  • Docker and Kubernetes (AWS EKS), and hands-on AWS experience.


Strong Plus

  • Computer vision (detection/segmentation — YOLO, Detectron2, Mask R-CNN) or OCR / document AI.
  • Geospatial / GIS exposure (imagery, GDAL/geopandas, remote sensing).
  • MLOps depth — MLflow, model registry, monitoring, data/label versioning.
  • RAG / GenAI / agentic exposure, or data-centric ML.
  • Fluency with AI-assisted coding.


Location & Work Mode

This role is based in Bengaluru and follows a hybrid work model, with approximately 3 days per week in office and up to 40% work-from-home flexibility.