-
View all jobs
Responsibilities:
- Lead and manage data science teams, overseeing the development and deployment of machine learning models and advanced analytics solutions.
- Define and execute data strategies aligned with business objectives, ensuring actionable insights drive decision-making.
- Collaborate with cross-functional teams, including engineering, product, and business stakeholders, to identify and solve complex data-related challenges.
- Ensure data integrity, governance, and security while optimizing data pipelines and infrastructure for scalability.
- Mentor and develop data scientists, providing technical guidance, performance feedback, and career development support.
- Stay updated on emerging trends, technologies, and best practices in data science and artificial intelligence (AI).
- Communicate findings effectively to both technical and non-technical stakeholders, translating insights into business impact.
- Strong problem-solving and analytical thinking skills to interpret complex data and drive insights.
- Leadership and people management abilities to guide and grow a high-performing data science team.
- Business acumen to align data science initiatives with organizational goals and drive measurable value.
- Effective communication skills for conveying technical concepts to diverse audiences.
- Decision-making capabilities based on data-driven approaches.
- Proficiency in programming languages such as Python, R, or SQL.
- Expertise in machine learning frameworks (TensorFlow, PyTorch, Scikit-Learn).
- Experience with big data technologies (Spark) and cloud platforms (AWS/ Azure/ GCP).
- Strong understanding of statistical modeling, predictive analytics, and deep learning.
- Experience with data visualization tools (Quicksight, Power BI, Matplotlib, Seaborn, Streamlit/Dash).
- GenAI: Experience with GenAI APIs, LLMs, Vectorization, Agentic AI and prompt engineering for domain-specific solutions
- MLOps: Ability to build reusable model pipelines and manage deployments using MLflow and Docker
- Adaptability: Ability to pivot strategies based on evolving business needs and technological advancements.
- Learning Agility: Continuous learning mindset to keep up with emerging data science trends and methodologies.
- Teamwork: Collaborative approach to working with cross-functional teams, fostering knowledge sharing and innovation.
- Certified Data Scientist (CDS) - DASCA
- AWS Certified Machine Learning - Specialty
- Microsoft Certified: Azure AI Engineer Associate
- Coursera/edX Data Science Specializations (e.g., IBM, Stanford, Harvard)
- Data Engineering Certifications
Key Skills
Ranked by relevance
machine learning
ai
artificial intelligence
data visualization
deep learning
tensorflow
matplotlib
power bi
big data
pytorch
seaborn
python
mlflow
cloud
spark
sql
aws
gcp
Related Jobs
3 roles aligned with this opportunity
View Job Details
Related
Lead I - Data Science(Python+AI)
2026-05-27
Full-time
Not Applicable
India
IT Services
Engineering
View Job Details
Related
Data Scientist
2026-05-16
Full-time
Associate
Singapore
Motor Vehicle Manufacturing
Engineering
View Job Details
Related
Machine Learning Engineer, Model Quantization, Tesla AI
2026-05-26
Full-time
Mid-Senior
United States
Motor Vehicle Manufacturing
Engineering
Login to Apply
- Posted
- Jun 10, 2026
- Type
- Full-time
- Level
- Not Applicable
- Location
- Trivandrum
- Company
- Nissan Motor Corporation
Industries
Motor Vehicle Manufacturing
Categories
Engineering
Information Technology
Related Jobs
3 roles aligned with this opportunity
View Job Details
Related
Lead I - Data Science(Python+AI)
2026-05-27
Full-time
Not Applicable
India
IT Services
Engineering
View Job Details
Related
Data Scientist
2026-05-16
Full-time
Associate
Singapore
Motor Vehicle Manufacturing
Engineering
View Job Details
Related
Machine Learning Engineer, Model Quantization, Tesla AI
2026-05-26
Full-time
Mid-Senior
United States
Motor Vehicle Manufacturing
Engineering