Posted on: 30/01/2026
Job Description :
- Design, develop, and implement robust, scalable, and optimized machine learning and deep learning models, with the ability to iterate with speed
- Write and integrate automated tests alongside models or code to ensure reproducibility, scalability, and alignment with established quality standards
- Implement best practices in security, pipeline automation, and error handling using programming and data manipulation tools
- Identify and implement the right data-driven approaches to solve ambiguous and open-ended business problems, leveraging data engineering capabilities
- Research and implement new models, technologies, and methodologies and integrate these into production systems, ensuring scalability and reliability
- Apply creative problem-solving techniques to design innovative tools, develop algorithms and optimized workflows
- Independently manage and optimize data solutions, perform A/B testing, evaluate performance and evaluate performance of systems
- Understand technical tools and frameworks used by the team, including programming languages, libraries, and platforms and actively support debugging or refining code in projects
- Contribute to the design and documentation of AI/ML solutions, clearly detailing methodologies, assumptions, and findings for future reference and cross-team collaboration
- Collaborate across teams to develop and implement high-quality, scalable AI/ML solutions that align with business goals, address user needs, and improve performance
Foundational Skills :
- Have mastered the concepts and can demonstrate Programming skills in complex scenarios.
- Understands the below skills beyond the fundamentals and can demonstrate in most situations without guidance
1. AI & Machine Learning
2. Data Analysis
3. Machine Learning Pipelines
4. Model Deployment and Tuning
Specialized Skills :
- To be able to understand beyond the fundamentals and can demonstrate in most situations without guidance for the following skills :
1. Simulation and Optimization Techniques
2. Statistical Analysis
3. Data Engineering
4. Deep Learning
5. Big Data Technologies
6. Data Architecture
7. Data Processing Frameworks
- Understands the basic fundamentals of Technical Documentation and can demonstrate in common scenarios with some guidance
Qualifications & Requirements :
- BSc/MSc/PhD in computer science, data science or related discipline with 5+ years of industry experience building cloud-based ML solutions for production at scale, including solution architecture and solution design experience
- Good problem solving skills, for both technical and non-technical domains
- Good broad understanding of ML and statistics covering standard ML for regression and classification, forecasting and time-series modelling, deep learning
- 4+ years of hands-on experience building ML solutions in Python, incl knowledge of common python data science libraries (e.g. scikit-learn, PyTorch, etc)
- 2+ years of experience with simulation methods (Monte Carlo, Discrete Event or Agent Based) and respective Python libraries (e.g. SimPy)
- Strong foundational experience with Reinforcement Learning and multi-agent systems for decision-making in dynamic environments.
- Hands-on experience building end-to-end data products based on AI/ML technologies
- Experience with collaborative development workflow : version control (we use github), code reviews, DevOps (incl automated testing), CI/CD
- Expertise in neural networks, optimization techniques and model evaluation is a plus, as well as experience with LLMs, Transformer architectures (BERT, GPT, LLaMA, Mistral, Claude, Gemini, etc.). Proficiency in Python, LangChain, Hugging Face transformers, MLOps
- Team player, eager to collaborate and good collaborator
Preferred Experiences :
In addition to basic qualifications, would be great if you have :
- Hands-on experience with common OR solvers such as Gurobi
- Experience with a common dashboarding technology (we use PowerBI) or web-based frontend such as Dash, Streamlit, etc.
- Experience working in cross-functional product engineering teams following agile development methodologies (scrum/Kanban/)
- Experience with Spark and distributed computing
- Strong hands-on experience with MLOps solutions, including open-source solutions.
- Experience with cloud-based orchestration technologies, e.g. Airflow, KubeFlow, etc
- Experience with containerization (Kubernetes & Docker)
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Posted by
Sapna N
Technology Sourcing Specialist at MaerskGlobalServicesCentres(India)PvtLtd
Last Active: 23 Feb 2026
Posted in
AI/ML
Functional Area
Data Science
Job Code
1608073