Senior Lead Data Scientist
-
Missions
Lead Machine Learning Engineer
Responsibilities
-
Lead and own the
end‑to‑end production lifecycle of ML and LLM models
(must have), ensuring models are deployable, scalable, observable,
and maintainable.
-
Define and enforce
ML engineering and MLOps standards
across teams (must have).
-
Design and maintain
CI/CD pipelines for ML workloads
(must have).
-
Act as
technical lead and mentor
for ML engineers and contributors (must have).
-
Partner with Data Scientists to
industrialize research into production systems
(must have).
-
Collaborate with Platform, Cloud, and Data Engineering teams on
infrastructure and runtime alignment
(must have).
-
Own
model monitoring, drift detection, testing, rollback, and incident
analysis
(must have).
-
Evaluate and introduce
new ML, GenAI, and MLOps tools
with a pragmatic, enterprise mindset (good to have).
-
Contribute to
ML governance, reproducibility, and responsible AI practices
(good to have).
Key Skills & Expertise
-
Cloud & DevOps
: Azure (must have), CI/CD using Jenkins, GitHub Actions, ArgoCD
(must have)
-
Container & Orchestration
: Docker, Kubernetes (must have)
-
Workflow Orchestration
: Airflow (must have)
-
Programming
: Production‑grade Python (must have)
-
ML Engineering & GenAI
: LLM integration, prompt engineering, model packaging and lifecycle
management (must have)
-
Testing & Quality
: Pytest, integration and system testing for ML systems (must have)
-
Data
: SQL, relational databases, basic reporting and dashboards (must
have)
-
ML Platforms
: MLflow, Databricks (good to have)
-
LLM Frameworks
: LangChain, LangGraph, agent‑based patterns (good to have)
-
Data Science Awareness
: ML algorithms, feature engineering, evaluation metrics,
bias/leakage awareness (awareness required)
-
Specialized Use Cases
: OCR and document processing pipelines (good to have)
-
Frontend / Visualization
: Streamlit, widgets, lightweight UI layers (good to have)
-
Mindset
: Awareness of emerging technologies and new tooling (good to have)
Profile
Lead Machine Learning Engineer
Responsibilities
-
Lead and own the
end‑to‑end production lifecycle of ML and LLM models
(must have), ensuring models are deployable, scalable, observable,
and maintainable.
-
Define and enforce
ML engineering and MLOps standards
across teams (must have).
-
Design and maintain
CI/CD pipelines for ML workloads
(must have).
-
Act as
technical lead and mentor
for ML engineers and contributors (must have).
-
Partner with Data Scientists to
industrialize research into production systems
(must have).
-
Collaborate with Platform, Cloud, and Data Engineering teams on
infrastructure and runtime alignment
(must have).
-
Own
model monitoring, drift detection, testing, rollback, and incident
analysis
(must have).
-
Evaluate and introduce
new ML, GenAI, and MLOps tools
with a pragmatic, enterprise mindset (good to have).
-
Contribute to
ML governance, reproducibility, and responsible AI practices
(good to have).
Key Skills & Expertise
-
Cloud & DevOps
: Azure (must have), CI/CD using Jenkins, GitHub Actions, ArgoCD
(must have)
-
Container & Orchestration
: Docker, Kubernetes (must have)
-
Workflow Orchestration
: Airflow (must have)
-
Programming
: Production‑grade Python (must have)
-
ML Engineering & GenAI
: LLM integration, prompt engineering, model packaging and lifecycle
management (must have)
-
Testing & Quality
: Pytest, integration and system testing for ML systems (must have)
-
Data
: SQL, relational databases, basic reporting and dashboards (must
have)
-
ML Platforms
: MLflow, Databricks (good to have)
-
LLM Frameworks
: LangChain, LangGraph, agent‑based patterns (good to have)
-
Data Science Awareness
: ML algorithms, feature engineering, evaluation metrics,
bias/leakage awareness (awareness required)
-
Specialized Use Cases
: OCR and document processing pipelines (good to have)
-
Frontend / Visualization
: Streamlit, widgets, lightweight UI layers (good to have)
-
Mindset
: Awareness of emerging technologies and new tooling (good to have)