Job Description
Job Title:
D&T Lead - Data Science
Posting Start Date:
7/13/26
Job Description:
Purpose of the Job
The Lead – Data Science is a senior hands-on role within Data & Analytics, responsible for designing, building, deploying, and operationalizing end-to-end AI/ML and Generative/Agentic AI solutions that drive business value. The role leads initiatives from experimentation to scalable, production-grade deployment on GCP (Vertex AI).
Key purpose:
- Deliver end-to-end AI/ML and GenAI/Agentic AI solutions across the MLOps lifecycle.
- Build scalable training, serving, and monitoring pipelines on GCP/Vertex AI.
- Apply Agentic AI frameworks and tokenomics best practices to optimize performance, reliability, and cost
- Partner with business and engineering teams to translate complex problems into production-ready data science solutions, particularly in supply chain and logistics.
Job Description
AI/ML & GenAI Solution Delivery
- Design, develop, and deploy end-to-end AI/ML and GenAI/Agentic AI solutions, owning the complete lifecycle from data preparation and model development to deployment and monitoring.
- Build and optimize Agentic AI workflows using modern frameworks, applying best practices for agent orchestration, tool use, and multi-step reasoning.
- Apply tokenomics expertise to optimize prompt design, context management, and model selection for cost efficiency and performance at scale.
MLOps & Engineering
- Establish and maintain robust MLOps practices, including automated model training, versioning, deployment, and continuous monitoring.
- Build and manage CI/CD pipelines for ML models and AI applications to enable reliable, repeatable, and automated releases.
- Develop and orchestrate data and ML workflows using Apache Airflow (DAGs) to ensure timely, dependable pipeline execution.
Cloud & Platform
- Build and operate solutions on GCP, leveraging Vertex AI for model training, tuning, deployment, and serving.
- Utilize GCP services such as AlloyDB, Cloud Run, Cloud Batch, and Cloud SQL to build scalable, performant, and cost-effective solutions.
- Implement monitoring solutions to track model health, performance, drift, and resource utilization in production.
Collaboration & Ownership
- Work closely with data engineers, product teams, and business stakeholders to understand requirements and deliver fit-for-purpose AI/ML solutions.
- Take end-to-end ownership of assigned initiatives, enhancements, and issues through to closure.
- Participate in design and architecture discussions, providing practical, solution-oriented recommendations.
Continuous Improvement
- Contribute to improving data science and MLOps standards, best practices, and documentation.
- Stay current with advances in GenAI, Agentic AI, and the broader ML tooling ecosystem.
- Support knowledge sharing and mentor team members on AI/ML best practices.
Job Requirements - Experience and Education
Core Technical Skills
- 3–4 years of hands-on experience in AI/ML, with demonstrable experience in GenAI and Agentic AI.
- Bachelor's degree in Computer Science, Data Science, Engineering, or a related field (Master's preferred).
- Proven ability to build end-to-end AI/ML solutions, including full MLOps implementation (training, deployment, monitoring, retraining).
- Hands-on experience building and managing CI/CD pipelines for ML/AI workloads.
- Working experience with Vertex AI for model development, training, and serving.
- Strong working experience on Google Cloud Platform (GCP).
- Expertise in tokenomics and best practices for Agentic AI frameworks.
- Familiarity with GCP services such as AlloyDB, Cloud Run, Cloud Batch, and Cloud SQL.
- Hands-on experience building and orchestrating workflows with Apache Airflow (DAGs).
- Strong proficiency in Python for model development, data processing, and automation.
- Strong analytical and troubleshooting skills with the ability to think quickly under pressure.
- Ability to translate ambiguous business problems into workable technical solutions.
- Proven track record of driving initiatives to completion with minimal supervision.
- Clear communication skills, with the ability to explain complex AI/ML concepts in a simple, practical manner.
Leadership Behaviors
Building Outstanding Teams
Setting a clear direction
Simplification
Collaborate & break silos
Execution & Accountability
Growth mindset
Innovation
Inclusion
External focus
Skills
Adaptability
Resilience
Attention To Details
Communication Skills
Cross-Functional Collaboration
Change Management
Problem Solving
Analytical Thinking
Collaborative Mindset
Problem Diagnosis and Resolution