The ideal candidate will have a total of 12+ years of IT experience with an extensive expertise in Python and leading AI/ML libraries (e.g., TensorFlow, PyTorch, Scikit-learn) and will be adept at open-source optimization (e.g., Pyomo, OR-Tools) to handle complex scheduling, routing, and resource allocation tasks. Data engineering proficiency—including Apache Spark, Hadoop, and Kafka—is paramount for building and managing data lakes that store both structured and unstructured data, supporting real-time data processing and analytics. This individual should also have experience deploying AI solutions in on-premises (Docker, Kubernetes) and cloud environments (AWS, GCP) with strong knowledge of DevOps (CI/CD, Git), security, and performance optimization. Familiarity with LLM and NLP frameworks such as SpaCy and NLTK is critical for developing Generative AI, chatbots, and automated customer service systems. Ultimately, expertise in a broad range of data engineering and AI technologies is essential for driving innovation and optimizing planning processes within the logistics industry, particularly in port and terminal operations.
Responsibilities :
1.Develop multi-agent AI frameworks geared toward container terminal operations and large-scale
logistics optimization.
2. Design and implement end-to-end ML pipelines, including data ingestion, feature engineering,
and real-time model deployment.
3. Optimize machine learning and deep learning algorithms for scheduling, resource allocation, and
route planning in port environments.
4. Research and evaluate emerging AI techniques (e.g., generative models) to identify potential
improvements in logistics workflows.
5. Collaborate with cross-functional teams to integrate AI solutions seamlessly into existing
operational and IT infrastructures.
6. Build and maintain robust data pipelines (data lakes, streaming frameworks) using Spark,
Hadoop, and Kafka for large-scale data handling.
7. Deploy AI solutions on both cloud platforms (AWS, GCP) and on-premises infrastructures,
ensuring reliability, security, and compliance in high-volume environments.
8. Implement and fine-tune optimization models and solvers (OR TOOLS, COIN OR, SCIP etc.) for
complex port planning and container yard operations.
9. Conduct in-depth research and prototyping in reinforcement learning, agent-based modeling,
and specialized ML techniques.
10. Apply reverse engineering methods to debug, interpret, and enhance existing ML models for
continuous performance gains.
11. Monitor and report key metrics (KPIs, ROI) to assess the effectiveness of AI-driven solutions in real-world operations.
12. Integrate NLP and LLMs for customer service, documentation automation, and large-scale text analysis in logistics.
13. Collaborate on system integrations to ensure end-to-end functionality of AI modules across port operations.
14. Enable real-time intelligence for vessel scheduling, yard operations, and gate control using streaming data and on-the-fly analytics.
15. Maintain comprehensive domain knowledge of port and terminal terminologies to align AI solutions with operational realities.
16. Contribute technical insights to the organization’s digital transformation roadmap, supporting strategic AI initiatives.
17.Align AI R&D initiatives with the organization’s strategic vision, monitoring long-term impacts of AI-driven innovations, and influencing the overall digital transformation roadmap in the port and shipping sector.
Key Skills
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- Posted
- Mar 18, 2025
- Type
- Contract
- Level
- Mid-Senior
- Location
- Dubai
- Company
- Dautom
Industries
Categories
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