At FourKites we have the opportunity to tackle complex challenges with real-world impacts. Whether its medical supplies from Cardinal Health or groceries for Walmart, the FourKites platform helps customers operate global supply chains that are efficient, agile and sustainable.
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We are seeking an exceptional Principal Data Scientist with 15+ years of experience to lead technical innovation in Shipments ETA prediction across multiple transportation modes. This senior individual contributor role requires deep expertise in predictive modeling, supply chain analytics, and transportation logistics, with particular strength in regression problems and modern deep learning architectures. You will be the technical authority driving ETA accuracy improvements for Full Truck Load (FTL), Less-than-Truckload (LTL), Parcel, and complex multi-pickup/delivery scenarios.
What you&aposll be doing
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 scenariosCross-Modal Optimization
: Develop unified frameworks that account for mode-specific characteristics while maintaining consistency across transportation typesComplex Routing Intelligence
: Build sophisticated models for multi-pickup and delivery scenarios with dynamic routing optimizationReal-time Prediction Systems
: Architect scalable solutions that provide accurate ETAs with sub-second latency for millions of shipments
Advanced Analytics & Research
Time Series Mastery
: Lead development of advanced time series models incorporating seasonality, weather, traffic, and operational constraintsGeospatial Analytics
: Implement cutting-edge location-based models combining GPS tracking, route optimization, and historical patternsFeature Engineering Innovation
: Create novel features from telematics data, driver behavior, carrier performance, and external data sourcesUncertainty 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 efficiencyCross-Functional Collaboration
: Partner with Product, Engineering, and Operations teams to translate business requirements into technical solutionsIndustry Leadership
: Represent the company at conferences, publish research, and establish thought leadership in transportation analyticsMentorship & Knowledge Transfer
: Guide junior data scientists and establish best practices for transportation modeling
Who You are
Education & Experience
Master&aposs degree in Data Science, Statistics, Computer Science, Mathematics, Operations Research, Industrial Engineering, or related quantitative field
(required)15+ years of data science experience
with at least 5 years in transportation, logistics, or supply chain analyticsDeep ETA/Transportation Knowledge
: Proven track record of building production ETA systems for multiple transportation modesSupply Chain Expertise
: Understanding of logistics operations, carrier networks, and transportation economicsScalable Systems Experience
: Experience with high-volume, real-time prediction systems serving millions of requests
Technical Excellence
Core Data Science Mastery
Expert-level EDA skills
: Advanced proficiency in transportation data analysis, anomaly detection, and pattern recognitionAdvanced Regression Modeling
: Deep expertise in time series regression, spatial regression, and hierarchical modelingDeep Learning Expertise
: Hands-on experience with sequence models, attention mechanisms, and transformer architectures for temporal predictionStatistical 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 techniquesTime 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 optimizationReal-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 librariesBig Data Platforms
: Experience with Spark, Kafka, and distributed computing for large-scale transportation dataDatabase Systems
: Advanced SQL skills with time-series databases (InfluxDB, TimescaleDB) and spatial databasesCloud & 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 fieldDomain 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 venuesLeadership Experience
: Track record of leading technical initiatives and influencing product strategyOpen Source Contributions
: Contributions to transportation analytics or forecasting libraries
Transportation Domain Challenges You&aposll Solv
eMulti-Modal ETA Complexit
yFTL Challenge
s: Long-haul routing with driver hours-of-service, fuel stops, and carrier-specific performance patternsLTL Complexit
y: Hub-and-spoke networks with consolidation delays, sorting times, and terminal-specific processingParcel Dynamic
s: Last-mile delivery optimization with address-level precision and delivery attempt modelingMulti-Stop Scenario
s: Complex pickup/delivery sequences with dynamic routing and time window constraint
sAdvanced Technical Problem
sData Fusio
n: Integrating GPS tracking, weather data, traffic patterns, carrier performance, and operational constraintsUncertainty Modelin
g: Providing confidence intervals and risk assessments for critical shipmentsReal-time Adaptatio
n: Updating predictions as new information becomes available during transitPerformance Optimizatio
n: Balancing model complexity with sub-second prediction requirement
sWhat You can expect from the rol
eTechnical Excellenc
e: Access to cutting-edge infrastructure, datasets, and research resourcesIndustry Impac
t: Opportunity to shape the future of transportation analytics and supply chain optimizationProfessional Growt
h: Conference speaking opportunities, research publication support, and industry networkingInnovation Environmen
t: Collaborative culture with world-class engineering and product team
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