Charger Logistics Inc logo
Lead Data Science Engineer
full-timeBrampton

Summary

Location

Brampton

Type

full-time

Claim this Company

Are you the employer? Manage your company page directly.

Explore Jobs

About this role

Charger Logistics Inc. is a leading asset-based transportation company with operations across North America. With more than 20 years of experience delivering innovative logistics solutions, Charger Logistics has evolved into a world-class transport provider and continues to expand its footprint.

We are deeply committed to our people, investing in their development by fostering an environment where learning, growth, and career advancement are encouraged. As an entrepreneurial organization, we value initiative and actively support new ideas and forward-thinking strategies.

We are currently looking for a senior, hands-on Lead Data Science Engineer to join our team in Brampton, Ontario. This role will lead the design and implementation of large-scale machine learning and AI systems for fleet analytics and logistics optimization. The position focuses on production-grade ML, real-time streaming analytics, and AI-driven decision systems built on Google Cloud (Vertex AI, BigQuery), Kafka, and RisingWave.

In this role, you will architect, develop, and scale advanced ML and AI solutions supporting real-time fleet optimization, predictive maintenance, anomaly detection, and intelligent decision-making. This is a deeply technical data science and ML engineering role, tackling complex logistics and telematics challenges using cloud-native and streaming technologies.

As the technical lead for ML initiatives, you will own system architecture, model strategy, and production deployments, while working closely with product, engineering, and DevOps teams to deliver impactful, scalable solutions.

Responsibilities:

  • Architect, build, and deploy production-grade machine learning and AI systems for fleet optimization, including route optimization, ETA prediction, fuel efficiency, capacity planning, and predictive maintenance.
  • Develop advanced anomaly detection and forecasting models to identify trip deviations, fuel theft, vehicle health issues, driver behavior risks, and demand fluctuations using time-series and statistical techniques.
  • Design and implement real-time and streaming ML systems with low-latency inference, feature engineering, and live anomaly detection using Kafka and RisingWave.
  • Build adaptive, online learning and reinforcement learning models to enable dynamic routing and continuously optimized operational decisions.
  • Integrate large language models (OpenAI, Google MCP, Ollama, Hugging Face) to deliver conversational analytics, automated insights, and AI-powered operational decision-support.
  • Design and implement retrieval-augmented generation (RAG) systems for fleet intelligence, anomaly explanations, and knowledge discovery.
  • Architect scalable ML platforms and MLOps workflows on Google Cloud using Vertex AI Pipelines, Feature Store, and Model Registry, supporting automated training, deployment, experimentation, monitoring, and drift detection.
  • Ensure model explainability, governance, reliability, and cost-efficient production serving.
  • Design and optimize analytical data models in BigQuery and AlloyDB PostgreSQL, and build scalable ETL/ELT pipelines for high-volume telematics and IoT data.
  • Optimize data partitioning, clustering, and SQL-based feature engineering for performance at scale.
  • Lead ML initiatives end-to-end, defining system architecture, standards, and best practices.
  • Mentor data scientists and ML engineers, and communicate complex ML concepts effectively to both technical and non-technical stakeholders.
  • 5+ years of hands-on experience in data science and machine learning, delivering production-grade solutions.
  • Expert-level proficiency in Python (3.9+), with strong software engineering, testing, and code quality practices.
  • Deep hands-on experience with modern ML frameworks and libraries including scikit-learn, XGBoost, LightGBM, TensorFlow, and PyTorch.
  • Strong expertise in anomaly detection, time-series forecasting, optimization, and applied statistical modeling.
  • Proven experience deploying, monitoring, and experimenting with ML models in production environments, including A/B testing.
  • 3+ years of hands-on experience with Google Cloud, including:
  • Vertex AI (model training, pipelines, deployment, and feature stores)
  • BigQuery (advanced SQL, performance tuning, and optimization)
  • Kafka and real-time streaming architectures
  • Experience building and integrating LLM-based systems, including embeddings, vector search, and retrieval-augmented generation (RAG).
  • Domain experience in logistics, fleet management, telematics, IoT, or similar large-scale operational data environments.
  • Nice to Have
  • Experience with reinforcement learning, bandits, or advanced optimization techniques.
  • Computer vision experience for driver monitoring or dashcam analytics.
  • Exposure to geospatial or graph-based ML, including routing and GPS trajectory analysis.
  • Experience deploying ML solutions across multiple cloud platforms (AWS and/or Azure).
  • Background in sustainability initiatives, EV fleet optimization, or regulatory compliance.
  • Competitive Salary
  • Healthcare Benefit Package
  • Career Growth

Other facts

Tech stack
Machine Learning,AI,Python,Data Science,Google Cloud,BigQuery,Kafka,Anomaly Detection,Time-Series Forecasting,Statistical Modeling,MLOps,ETL,Reinforcement Learning,Logistics,Fleet Management,Telematics

About Charger Logistics Inc

Charger Logistics'​ strives to offer the best client focused logistics solution. We start with flexibility. By offering various safe and efficient solutions for all product sizes, weights and sensitivities our limits are minimal. Additionally, our network, various locations throughout North America and fleet size allow us to offer our clients what they need every time.

Charger Logistics was founded in the early 2000's and has grown by leaps and bounds since then. From owning a single truck to owning a fleet of over eight-hundred trucks, two-thousand trailers including reefers, dry vans, chassis, flat beds, step decks and more! A lot has changed however, our commitment to our clients will never change.

Team size: 501-1,000 employees
LinkedIn: Visit
Industry: Truck Transportation

What you'll do

  • The Lead Data Science Engineer will architect, build, and deploy production-grade machine learning and AI systems for fleet optimization. This includes developing advanced models for anomaly detection and real-time analytics.

Join Clera's Talent Pool

Get matched with similar opportunities at top startups

This role is hosted on Charger Logistics Inc's careers site.
Join our talent pool first to get notified about similar roles that match your profile.

Frequently Asked Questions

What does a Lead Data Science Engineer do at Charger Logistics Inc?

As a Lead Data Science Engineer at Charger Logistics Inc, you will: the Lead Data Science Engineer will architect, build, and deploy production-grade machine learning and AI systems for fleet optimization. This includes developing advanced models for anomaly detection and real-time analytics..

Why join Charger Logistics Inc as a Lead Data Science Engineer?

Charger Logistics Inc is a leading Truck Transportation company.

Is the Lead Data Science Engineer position at Charger Logistics Inc remote?

The Lead Data Science Engineer position at Charger Logistics Inc is based in Brampton, Ontario, Canada. Contact the company through Clera for specific work arrangement details.

How do I apply for the Lead Data Science Engineer position at Charger Logistics Inc?

You can apply for the Lead Data Science Engineer position at Charger Logistics Inc directly through Clera. Click the "Apply Now" button above to start your application. Clera's AI-powered platform will help match your profile with this opportunity and guide you through the application process. You can also learn more about Charger Logistics Inc on their website.