Posted on: 25/11/2025
Description :
Technical Leadership & Innovation :
- ETA Modeling Excellence : Design and implement state-of-the-art predictive models for shipment ETAs across FTL, LTL, Parcel, and multi-stop delivery scenarios
- Cross-Modal Optimization : Develop unified frameworks that account for mode-specific characteristics while maintaining consistency across transportation types
- Time Series Mastery : Lead development of advanced time series models incorporating seasonality, weather, traffic, and operational constraints
- Geospatial Analytics : Implement cutting-edge location-based models combining GPS tracking, route optimization, and historical patterns
- Feature Engineering Innovation : Create novel features from telematics data, driver behavior, carrier performance, and external data sources
- Uncertainty Quantification : Develop probabilistic models that provide confidence intervals and risk assessments for ETA predictions
Strategic Technical Influence
- Architecture Design : Define the technical roadmap for ETA prediction systems, balancing accuracy, scalability, and operational efficiency
- Cross-Functional Collaboration : Partner with Product, Engineering, and Operations teams to translate business requirements into technical solutions
- Industry Leadership : Represent the company at conferences, publish research, and establish thought leadership in transportation analytics
- Mentorship & Knowledge Transfer : Guide junior data scientists and establish best practices for transportation modeling
Required Qualifications :
Education & Experience :
- Master's degree in Data Science, Statistics, Computer Science, Mathematics, Operations Research, Industrial Engineering, or related quantitative field (required)
- 8+ years of data science experience with at least 2+ years in transportation, logistics, or supply chain analytics (Good to have)
Core Data Science Mastery :
- Expert-level EDA skills : Advanced proficiency in transportation data analysis, anomaly detection, and pattern recognition
- Advanced Regression Modeling : Deep expertise in time series regression, spatial regression, and hierarchical modeling
- Deep Learning Expertise : Hands-on experience with sequence models, attention mechanisms, and transformer architectures for temporal prediction
- Statistical Modeling : Mastery of Bayesian methods, survival analysis, and probabilistic forecasting
Specialized Transportation Skills :
- Geospatial Analytics : Proficiency with PostGIS, spatial indexing, routing algorithms, and map-matching techniques
- Time Series Forecasting : Advanced knowledge of ARIMA, state-space models, neural forecasting (LSTM, GRU, Transformers)
- Optimization Methods : Experience with route optimization, network flow problems, and multi-objective optimization
- Real-time Systems : Understanding of streaming data processing, model serving, and low-latency prediction systems
Technical Infrastructure :
- Programming Mastery : Expert-level Python/R with pandas, numpy, scikit-learn, TensorFlow/PyTorch, and transportation-specific libraries
- Big Data Platforms : Experience with Spark, Kafka, and distributed computing for large-scale transportation data
- Database Systems : Advanced SQL skills with time-series databases (InfluxDB, TimescaleDB) and spatial databases
- Cloud & MLOps : Proficiency with cloud platforms (AWS, GCP, Azure), containerization, and ML deployment pipelines
Preferred Qualifications :
- Advanced Degree : PhD in Data Science, Statistics, Computer Science, Mathematics, Operations Research, Industrial Engineering, Transportation Engineering, or related quantitative field
- Domain Certifications : Professional certifications in supply chain, logistics, or transportation (APICS, CSCMP, SOLE, etc.)
- Industry Recognition : Publications in transportation/logistics conferences (INFORMS, TRB) or top-tier ML venues
- Leadership Experience : Track record of leading technical initiatives and influencing product strategy
- Open Source Contributions : Contributions to transportation analytics or forecasting libraries
Transportation Domain Challenges You'll Solve :
Multi-Modal ETA Complexity :
- FTL Challenges : Long-haul routing with driver hours-of-service, fuel stops, and carrier-specific performance patterns
- LTL Complexity : Hub-and-spoke networks with consolidation delays, sorting times, and terminal-specific processing
- Data Fusion : Integrating GPS tracking, weather data, traffic patterns, carrier performance, and operational constraints
- Uncertainty Modeling : Providing confidence intervals and risk assessments for critical shipments
- Real-time Adaptation : Updating predictions as new information becomes available during transit
- Performance Optimization : Balancing model complexity with sub-second prediction requirements
What We Offer :
- Competitive Compensation : Comprehensive package including base salary, equity, and performance bonuses
- Technical Excellence : Access to cutting-edge infrastructure, datasets, and research resources
- Industry Impact : Opportunity to shape the future of transportation analytics and supply chain optimization
- Professional Growth : Conference speaking opportunities, research publication support, and industry networking
- Innovation Environment : Collaborative culture with world-class engineering and product teams
Did you find something suspicious?