Role Overview :
We are looking for an experienced
MLOps Engineer
who will bridge
AI / ML model development with production deployment and monitoring
, ensuring models are scalable, reliable, and performant in production environments.
Key Responsibilities :
Build and manage
MLOps pipelines
for AI / ML models (segmentation, Next Best Action, recommendations).
Deploy and monitor models across
Dev / SIT / PROD environments
Implement
model versioning, drift detection, and retraining workflows
Optimize
model inference performance
for low-latency responses.
Collaborate with infrastructure teams to ensure
hardware and cloud readiness for GenAI
Establish
observability and logging
for model behavior and system performance.
Required Skills : 7–10 years
of experience in MLOps or related roles.
Strong knowledge of
ML lifecycle management
CI / CD for ML
, and
model deployment frameworks
(e.g., MLflow, Kubeflow, Airflow).
Expertise in
Python
Docker
, and
Kubernetes
Experience with
cloud platforms
(AWS / Azure / GCP) and GPU-based infrastructure.
Familiarity with
monitoring tools
(Prometheus, Grafana) and
logging systems
Understanding of
model drift detection
and
retraining strategies
Good to Have : Exposure to
GenAI model deployment
Experience with
data pipelines
and
feature stores
Machine Learning Engineer • Delhi, India