Job Description - AIML Engineer

AI/ML Engineer (Mid)

Magnasoft · Bengaluru · Hybrid(WFO - 3Days)

Hands -on model building and the AI backend + pipelines

Why this role exists

Magnasoft is twenty years into building one of the world’s deepest
geospatial data assets — and is now turning that asset into AI -powered software
products. Our products turn complex real -world documents and imagery into
structured, usable data using computer vision, OCR, and a human -in -the -loop
review loop
.

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. Important to be clear up front: this is not a train -a -model -and -hand -it -off role. You build the models and the product code they live in — the AI backend, the post -processing and
pipeline logic, and the data layer. If not the AI team, no one writes that
code. Expect your time to split roughly half model work, half
backend/pipeline work.


What you’ll do

             Build and ship production
models
— object detection, segmentation, OCR/text
extraction, and classification models behind our products. Not notebooks that
die in a repo: models real customers depend on.

             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 (cost -of -error, reviewer effort saved), not just headline
accuracy.

             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

What we’re
looking for (must -haves)

             ~3–5 years hands -on building
production ML/AI
— you’ve shipped models that real
users or customers rely on, not only POCs or coursework.

             Strong Python for both model
and product code.
You write the backend and
pipeline logic around your models — post -processing, data structures, pipeline
stages, APIs — not just training scripts.

             Strong PyTorch (or
TensorFlow) and solid ML fundamentals, with the full lifecycle in your own
hands
: data preparation → training → evaluation → deployment.

             MongoDB: comfortable — you can design document schemas and write non -trivial
aggregation queries
.

             PostgreSQL — working knowledge; comfortable enough to be productive, with room
to deepen on the job.

             Docker and Kubernetes (we run AWS EKS), and hands -on AWS — you ship and run your own code, you don’t hand it to someone else to deploy.

             Genuinely hands -on and eager
to grow
— you’ll ramp fast under a strong Principal and take on more over
time.

Our stack

Python
across the board — modeling and the AI backend / pipelines; PyTorch for modeling; a document store (MongoDB) and PostgreSQL; Docker
/ Kubernetes on AWS EKS
; AWS for cloud and GPU -backed
training/inference. Depth in ML and the Python backend/data layer
matters most — we expect on -the -job growth on the rest.

Strong
plus (any of these moves you up the stack)

             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 (annotation tooling, active
learning).

             Fluency with AI -assisted
coding
(e.g., Claude Code, Copilot, Cursor) to move faster.

You might not be a fit if

             You only train models and
hand them off.
This role writes the product/backend/pipeline code the
models run inside, and works daily in the data layer.

             Your background is mostly analytics
/ BI / dashboards
rather than building and shipping models.

             Your ML is purely academic
or POC
with nothing in production.

             You want a lead or architect
seat now
— this is a hands -on, build -and -grow IC role under the Principal
(a great runway, but not a leadership title on day one).


Team & reporting

             Works under the Principal AI
Engineer
technically (architecture, design, code review, mentoring);
reports administratively to the VP & Head of Technology.

             One of two Mid AI/ML
Engineers
being hired to build the AI product core, alongside the Principal
and the Senior Applied ML Engineer.

Location & work mode

             Bengaluru -based. Hybrid — up to ~40% work -from -home (roughly 3 days/week in office).


How to apply:



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About the Company

Magnasoft Consulting India Pvt Ltd

Magnasoft is your go-to destination for geospatial services. Discover why we're among the top geospatial data companies, offering tailored solutions to meet your needs.

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