Job Search and Career Advice Platform

Enable job alerts via email!

Data Science Lead

Aarorn Technologies Inc

Remote

CAD 80,000 - 100,000

Full time

Today
Be an early applicant

Generate a tailored resume in minutes

Land an interview and earn more. Learn more

Job summary

A technology solutions company is seeking a Data Science Lead to manage multiple analytics teams and drive data-driven solutions strategically. The ideal candidate will have over 11 years of experience in data science, a robust understanding of machine learning, and the ability to manage and mentor diverse teams. Responsibilities include overseeing data management, developing scalable solutions, and communicating insights effectively. This role is remote and offers the opportunity to work in a dynamic and innovative environment.

Qualifications

  • 11+ years in data science, analytics, or operations research, including experience managing multiple technical teams.
  • Proven ability to deliver scalable, production-ready solutions in predictive modeling, optimization, or advanced analytics.
  • Hands-on experience with cloud-based analytics platforms and data engineering pipelines.

Responsibilities

  • Manage multiple data science and analytics teams, driving strategic initiatives.
  • Oversee data ingestion, cleaning, transformation, and storage.
  • Lead creation of dashboards and visualizations.

Skills

Leadership & Multi-Team Management
Machine Learning
Data Engineering
Predictive Modeling
Optimization
Cloud-based Analytics Platforms
Excellent Communication Skills

Tools

PySpark
SQL
Azure Databricks
Gurobi
Matplotlib
Plotly
Jupyter Notebooks
Job description

Job Title: Data Science Lead

Location: Canada (Remote)

Employment Type: Full Time Opportunity

Job Description

The Data Science Lead is responsible for managing multiple data science and analytics teams, driving strategic initiatives, and delivering high-impact data-driven solutions. This role blends technical expertise, leadership, and strategic oversight, ensuring analytics efforts are aligned with business objectives, scalable, and reproducible.

The ideal candidate has extensive experience in machine learning, optimization, predictive modeling, and data engineering, combined with cross‑functional leadership and stakeholder management.

Key Responsibilities
  • Leadership & Multi‑Team Management
  • Lead, mentor, and manage multiple teams of data scientists, ML engineers, and data engineers.
  • Allocate resources, define priorities, and oversee delivery across concurrent projects.
  • Establish technical standards, best practices, and reproducible workflows for all teams.
  • Foster a collaborative, innovative, and learning‑oriented culture.
  • Align analytics strategy with business objectives through close collaboration with senior leadership and stakeholders.
  • Data Management & Infrastructure
  • Oversee large‑scale data ingestion, cleaning, transformation, and storage.
  • Ensure robust pipelines using PySpark, Pandas, NumPy, and SQL for distributed and vectorized processing.
  • Manage cloud‑based environments and services (Azure Databricks, Blob Storage, Synapse Analytics).
  • Optimization & Operations Research
  • Guide teams in designing optimization models for scheduling, routing, demand forecasting, and resource allocation.
  • Oversee solver selection and implementation, including Gurobi.
  • Advise on geospatial routing and analysis using OSMR.
  • Reporting, Visualization & Communication
  • Lead creation of dashboards, KPIs, and visualizations using Plotly, Matplotlib, and Excel/SharePoint integration.
  • Communicate analytical insights and model results effectively to stakeholders at all levels.
  • Track operational and model performance via Azure Application Insights and other monitoring tools.
  • Technology & Execution Oversight
  • Ensure teams effectively use development tools and environments, including Python 3.x, Poetry, Bash, Jupyter/Databricks Notebooks, and Git.
  • Guide deployment and orchestration of pipelines via CI/CD, Databricks clusters, and cloud‑based solutions.
  • Promote scalable, reproducible, and maintainable architectures across all data science and analytics initiatives.
Experience / Expertise
  • 11+ years in data science, analytics, or operations research, including experience managing multiple technical teams.
  • Proven ability to deliver scalable, production‑ready solutions in predictive modeling, optimization, or advanced analytics.
  • Hands‑on experience with cloud‑based analytics platforms (Azure Databricks, Blob, Synapse) and data engineering pipelines.
  • Strong background in machine learning, statistical modeling, operations research, and optimization algorithms.
  • Advanced algorithms and techniques applied in experience include:
  • Mixed‑Integer Linear Programming (MILP), Constraint Programming (CP)
  • Traveling Salesman Problem (TSP) / Vehicle Routing Problem (VRP)
  • Regression and Classification models, Gradient Boosting (LightGBM), Logistic Regression
  • SHAP and feature importance for explainability.
  • Excellent communication skills for translating complex models and algorithms into actionable business insights
Get your free, confidential resume review.
or drag and drop a PDF, DOC, DOCX, ODT, or PAGES file up to 5MB.