JOB OVERVIEW:
As an AI Engineer you will leverage cutting-edge AI to solve complex industry-specific problems particularly within the maritime sector. You will be instrumental in a rapidly evolving client-centric organization making a significant impact by thinking critically articulating a compelling vision and guiding both technical and non-technical stakeholders. Your role requires a proven ability to architect complex AI/ML solutions from problem framing to production-ready design a profound understanding of diverse business models and strong consultative sales skills to identify strategic pain points solvable by AI. You will build functional AI/ML prototypes with clean modular code for production assess data readiness identify data gaps and recommend robust data governance frameworks. Additionally you will identify emerging trends synthesize complex information and present strategic recommendations to senior leadership and external audiences. Success hinges on your ability to translate complex technical concepts into clear business value build strong client relationships and drive consensus across diverse teams. You must be highly motivated to drive initiatives independently in a dynamic startup environment with a passion for continuous learning and innovation.
DUTIES AND RESPONSIBILITIES:
Proactively identify and engage with high-value business opportunities and potential clients who can significantly benefit from advanced AI and machine learning solutions. Deeply understand client business challenges pain points and strategic goals translating them into clear solvable AI/ML problems.
Design end-to-end AI solutions articulating compelling value propositions and the strategic roadmap for adoption.
Conduct in-depth assessments of client data infrastructure data governance data quality and overall data maturity.
Make expert judgment calls on data "AI-readiness" and provide actionable recommendations for data improvement gap identification and strategic data capitalization opportunities.
Rapidly develop functional AI prototypes and Proof-of-Concepts (POCs) that are architecturally sound adhere to best practices for maintainability and are designed for production.
Continuously research and evaluate the latest AI advancements including Generative AI Large Language Models (LLMs) Deep Learning and MLOps methodologies. Synthesize findings into actionable insights influencing our companys strategic roadmap service offering development and contributing to industry thought leadership through presentations to leadership and external forums (moderate to high emphasis).
Collaborate effectively with the internal AI Production team ensuring prototypes and solution designs are well-documented understood and seamlessly integrated into the full development lifecycle.
Clearly define the business case expected return on investment (ROI) and measurable benefits of proposed AI/ML implementations simplifying complex technical concepts for non-technical audiences.
QUALIFICATIONS AND EXPERIENCES:
Minimum Bachelor s degree in Computer Science Data Science Engineering Mathematics Statistics or a related quantitative field. Masters or Ph.D. preferred.
At least 5 years of progressive experience in AI/ML solution design data science or AI engineering with a significant portion in a client-facing or consulting capacity.
Proven experience in designing developing and deploying functional AI/ML prototypes that demonstrate business value and are engineered for production.
Expert proficiency in Python and extensive experience with core AI/ML libraries (e.g. scikit-learn TensorFlow PyTorch).
Demonstrated hands-on experience with Generative AI and Large Language Models (LLMs) including frameworks like LangChain for designing and prototyping novel applications.
Strong practical experience with Google Cloud Platform (GCP) services relevant to AI/ML (e.g. Vertex AI BigQuery Cloud Storage Dataflow Cloud Functions).
Proficiency with Docker for containerization and a foundational understanding of container orchestration (e.g. Kubernetes concepts for GKE).
Solid understanding of MLOps principles for reproducibility experiment tracking (e.g. MLfl ow Vertex AI ML Metadata/Model Registry) and model versioning.
High-level expertise in data governance frameworks data quality assessment (including tools/libraries like Great Expectations) metadata management (e.g. Google Cloud Data Catalog) and data architecture principles.
Strong expertise in distributed computing and parallel processing techniques is vital for handling large-scale AI workloads.
A proven track record of innovations and executions in deep learning demonstrated through shipping products or first-author publications at leading AI conferences is a strong differentiator.
Experience in the container shipping industry or related logistics/supply chain domains is highly advantageous.
Excellent presentation documentation and stakeholder management skills.
Working hours:
Mon to Fri 8:30am to 5:30pm