Description
Global Data Insights and Analytics ( GDI&A ) navigates Ford Motor Company through the disruptions of the information age unleashing the power of Data Advanced Analytics and AI to drivevalue and help transform Ford Motor Company through proactive actionable evidence-based decision making. GDI&A delivers data-driven platforms advanced analytics and AI / ML solutions to support Fords Industrial System Sales Service Marketing Strategy Finance and Ford Credit.
We are seeking an initiative-taking and experienced candidate to lead and mentor a multi-skilled product team comprising of data scientists machine learning engineers product designers and software engineers through the entire lifecycle of complex analytical and AI / ML data science products. This role demands strong technical expertise hands-on experience with cutting-edge analytical tools (including AI / ML) strong understanding of software craftmanship & software development cycle thought leadership and ability to translate business needs into analytical formulations and a proven track record of success in creating impactful and insightful data science products.
Ideal candidate for this role possesses a strong theoretical foundation in statistical analysis machine learning simulation econometrics optimization data platforms AI and software design & development. Given the dynamic nature of data analytics and AI a commitment to continuous learning upskilling and being hands-on is essential. This role requires a blend of technical expertise hands-on experience strategic thinking business domain knowledge thought leadership and strong leadership skills.
Responsibilities
Technical Leadership : Provide expert technical guidance and mentorship to data scientists & software engineers in the product team actively contribute to code reviews design discussions algorithm selection architecting scalable data science solutions (including pipelines model training infrastructure and deployment strategies) evaluating and selecting appropriate technologies and maintain coding standards and best practices. Leverage ML Ops principles to ensure model accuracy stability and regulatory compliance through robust risk assessment and independent validation processes where required.
Team Leadership & Mentorship : Lead mentor and develop a high-performing team comprising of highly skilled data scientists software engineers and ML engineers fostering best practices in software development and data science. Provide thought leadership and oversight on best practices code reviews and technical design. Collaborate closely with data engineers to seamlessly integrate data pipelines and infrastructure while ensuring data quality consistency and accuracy.
Innovation : Contribute to the development and implementation of the teams innovation strategy focusing on identifying opportunities for new product development process improvement and leveraging emerging technologies within AI / ML advanced analytics and software craftmanship. This includes staying informed about the latest research exploring novel algorithms evaluating new tools and techniques and prioritizing user-centered design principles in all aspects of data science product development.
Domain Expertise : Lead engagement with internal business partners understand the business domain (e.g. marketing manufacturing after-sales service credit) for which data science products are being developed converse in the language of business partners efficiently translate business requirements into data & analytical problem formulations.
Communication : Clearly and concisely communicate technical information to both technical and non-technical audiences. Effectively communicate compelling data-driven recommendations to senior management and foster strong relationships with key business partners.
GenAI Implementation : Lead the problem formulation research development and implementation of GenAI to enhance existing solutions and create new innovative applications. This includes exploring and implementing various GenAI models (e.g. Large Language Models Diffusion Models) and integrating them into data pipelines and workflows.
Cross-functional Collaboration : Work effectively with various teams and stakeholders to achieve business objectives.
Qualifications
Required :
Masters degree (PhD preferred) in Engineering Data Science Computer Science Statistics Industrial Engineering or a related field.
5 years of hands-on experience applying supervised and unsupervised machine learning algorithms deep learning architectures and statistical modeling techniques (Automotive OEM experience preferred).
5 years of leading a team of cross-functional technical experts.
Proficiency in R and Python along with experience with ML frameworks (e.g. TensorFlow PyTorch Scikit-Learn XGBoost).
Experience with cloud-based platforms (e.g. GCP) and data related technologies (e.g. SQL Spark Hive).
Strong technical & people leadership communication and collaboration skills.
Understanding of business principles and critical thinking skills to translate business needs into impactful data science solutions.
Preferred :
Experience with NLP deep learning neural network architectures computer vision reliability survival analysis and anomaly detection techniques.
Familiarity with computationally intensive statistical methods Jira system architecture principles.
Google certifications on developing and deploying AI / ML models on GCP.
Experience with various software development methodologies (Agile DevOps) CI / CD pipelines and testing frameworks. Proficiency in one of AngularJS ReactJS or any other front-end technologies.
Required Experience :
Manager
Key Skills
Adobe Analytics,Data Analytics,SQL,Attribution Modeling,Power BI,R,Regression Analysis,Data Visualization,Tableau,Data Mining,SAS,Analytics
Employment Type : Full-Time
Experience : years
Vacancy : 1
Design Manager • Chennai, Tamil Nadu, India