Industrial Data Science & AI Manager

Thales

Not Interested
Bookmark
Report This Job

profile Job Location:

Singapore - Singapore

profile Monthly Salary: Not Disclosed
Posted on: Yesterday
Vacancies: 1 Vacancy

Job Summary

Location: Singapore Singapore

Thales is a global technology leader trusted by governments institutions and enterprises to tackle their most demanding challenges. From quantum applications and artificial intelligence to cybersecurity and 6G innovation our solutions empower critical decisions rooted in human intelligence. Operating at the forefront of aerospace and space cybersecurity and digital identity were driven by a mission to build a future we can all trust.

In Singapore Thales has been a trusted partner since 1973 originally focused on aerospace activities in the Asia-Pacific region. With 2000 employees across three local sites we deliver cutting-edge solutions across aerospace (including air traffic management) defence and security and digital identity and cybersecurity sectors. Together were shaping the future by enabling customers to make pivotal decisions that safeguard communities and power progress.

Position Summary :

Thales Avionics (AVS) in Singapore consists of manufacturing and repair activities for aircraft OEM and airlines respectively.

This position is responsible for leading data-driven projects aimed at optimizing industrial processes improving efficiency and driving innovation. They oversee the end-to-end project lifecycle from requirements gathering and data analysis to model development deployment and performance monitoring. This role holds a blend of team and project management expertise technical proficiency in data science and analytics and a deep understanding of industrial operations. He/She will be the initiator influencer and driving the stakeholders to emulate synchronize and connect to make Thales AVS (both production and repair activities) more sustainable and competitive through innovation and collaboration to achieve industrial excellence.

Main Tasks & Responsibilities:

  • Team and data science portfolio management: Responsible for the Roadmap of the data science and manage data science ROI and Portfolio develop requirements and ensure value and benefit the shopfloor operation guide data science engineers to develop and review their work as well to grow their skills and experience.

  • Project Planning: Develop comprehensive project plans defining scope objectives deliverables timelines resource allocation and budget estimates for industrial data science projects.

  • Stakeholder Engagement: Collaborate with stakeholders to understand business needs gathering requirement operational challenges and opportunities for leveraging data science to drive value.

  • Technical capability on Data Science: Work and guide data engineers and domain experts to identify relevant data sources extract clean and preprocess data for analysis and application and modeling Mentor and develop data science and data engineering team members fostering technical excellence knowledge sharing and continuous learning within the team.

  • Data Analysis and Modeling: Lead data exploration statistical analysis and machine learning model development to uncover insights patterns and trends in industrial data.

  • Model Deployment: Oversee the deployment of data science models into production environments ensuring scalability reliability and integration with existing systems. Deploy standards defined and contribute to their improvements.

  • Performance Monitoring: Establish key performance indicators (KPIs) and monitoring mechanisms to track the performance and effectiveness of deployed models over time with business value generated.

  • Cross-Functional Collaboration: Coordinate with cross-functional teams including data scientists engineers IT specialists and business analysts to ensure alignment and synergy in project execution.

  • Risk Management: Identify and mitigate potential risks and challenges associated with data science projects such as data quality issues algorithmic bias and model interpretability.

  • Quality Assurance: Implement quality control measures and validation procedures to ensure the accuracy robustness and reliability of data science solutions.

  • Documentation and Reporting: Maintain detailed documentation of project activities methodologies findings and outcomes and provide regular progress updates and reports to stakeholders.

  • Business Value Delivery: Define measure and keep track of business value deliverables link to the project ROI
  • Data Governance and Data Strategy: Define and enforce data governance standards including data quality data lineage metadata management and security. Establish data strategies that ensure reliable scalable and trusted data pipelines to support industrial analytics and AI initiatives.

  • AI/ML Lifecycle Management (MLOps):Implement and manage the end-to-end machine learning lifecycle including experimentation versioning CI/CD pipelines automated model retraining monitoring for model drift and continuous improvement.

  • Change Management and AI Adoption: Drive adoption of data science solutions by collaborating with operational teams ensuring that developed models and insights are embedded into decision-making processes and shopfloor operations.

Candidate Profile & Qualifications:

  • Bachelors degree in computer science data science industrial engineering or a related field; advanced degree or relevant certifications preferred.
  • At least 8 years proven experience in project management specifically in leading data science or analytics projects in industrial settings.
  • Experience managing small team and data science portfolio
  • Experiences on requirement gathering scoping data mapping and data driven improvement digital transformation projects to deliver business objectives are plus
  • Strong technical proficiency in data science tools and techniques including architecting statistical analysis machine learning predictive modeling and data visualization.
  • Experience with industrial data sources such as sensor data time-series data SCADA systems and IoT devices.
  • Excellent leadership communication and stakeholder management skills with the ability to engage and influence both internal and external stakeholders at all levels of the organization.
  • Proficiency in project management methodologies and tools
  • Knowledge of industrial processes manufacturing operations and relevant industry standards and regulations.
  • Familiarity with data governance privacy and security best practices in industrial environments.
  • Experience with process optimization continuous improvement and lean manufacturing principles is a plus
  • Experience with architecting IS/IT projects or vendors management is a plus
  • Strong disposition toward continuous learning self-starter and passionate on data science to create business value
  • Good attitude open mind and flexibility to adjust and promote change for continuous improvement

At Thales were committed to fostering a workplace where respect trust collaboration and passion drive everything we do. Here youll feel empowered to bring your best self thrive in a supportive culture and love the work you do. Join us and be part of a team reimagining technology to create solutions that truly make a difference for a safer greener and more inclusive world.


Required Experience:

Manager

Location: Singapore SingaporeThales is a global technology leader trusted by governments institutions and enterprises to tackle their most demanding challenges. From quantum applications and artificial intelligence to cybersecurity and 6G innovation our solutions empower critical decisions rooted in...
View more view more

Key Skills

  • Healthcare Attorney
  • General Insurance
  • Attorney At Law
  • Core Banking
  • Import & Export
  • Airlines

About Company

Company Logo

In all critical environments - air, land, sea, space and cyberspace - decision-makers, operators, crews and members of our armed services and security forces are faced with millions of important decisions every day. It is in supporting these people that Thales in the United States ha ... View more

View Profile View Profile