Job ID · 16188
Sr. Data Scientist · Gurugram
ORANGEBUSINESS · ORANGE BUSINESS SERVICES INDIA TECHNOLOGYPRIVATE LIMITED
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Job highlights
Designation Offered
Sr. Data Scientist
Job Role
Data Scientist
Department
AI Machine Learning and Data Analytics
Job Type
Fulltime
Salary
19.00Lacs
Experience
3–6 years
Job Location
Gurugram
Education
Bachelors/Undergraduate Degree
Posted by
ORANGE BUSINESS SERVICES INDIA TECHNOLOGYPRIVATE LIMITED
Posted On
10 Mar 2026
Valid until
9 May 2026
Skillset required
Data VisualisationMachine LearningPower BIPythonSQLTableauDeep LearningNo-SQLStatisticsNational Language Processing (NLP)
Job Description for Sr. Data Scientist
A role-focused description with responsibilities, expectations, and qualifications for this opening.
AI Machine Learning and Data Analytics
Key accountabilities
- Manage and deliver all assigned projects as per agreed time frame, allocated budget, resource and quality criteria.
- Managing project risks, including the development of contingency plans
- Responsible for Identification & all the communication with the stakeholders.
- Project plan adherence with a view on coordination of multiple projects/activities in the team.
- Timely interaction with stakeholders and update the progress of activity, risks, completion status
- Regular tracking of project risks and share with relevant stakeholders
- Work with product, Technical and Customer Support on identifying problems in different areas where machine learning/statistics can help.
- Present your findings to both technical and non-technical audiences.
- Lead traversal technical discussion with Sales, Operation, Technology and Platform and archicture teams.
- Participate in the entire LLM development lifecycle, from problem definition and data preparation to model training, evaluation, and deployment.
- Identify and own Use case coming from Different BU and lead it from doing POC till industrialization
- Design and implement novel LLM architecture and training techniques, leveraging deep learning frameworks like TensorFlow and PyTorch.
- Build and share technical architecture with Business SPOC
- Develop and maintain efficient pipelines for data preprocessing, training, and inference.
- Collaborate with data scientists to curate, clean, and prepare high-quality training data for LLMs.
- Develop, contribute and Lead technical framework for AI use case environment
- Evaluate LLM performance using appropriate metrics and identify opportunities for improvement.
- LLM performance evaluation and define metrices
- Apply advanced machine learning algorithms, statistical methods and predictive modeling techniques on large and varied data sets that include application logfiles, other online application telemetry, structured and unstructured data sources
- Building machine Learning model and application.
- help and act as Technical support to Other DS within team.
- Act as technical consultant for Data & AI use case.
- Deploy LLMs to production environments and monitor their performance for accuracy, fairness, and efficiency
- Building machine Learning model and application.
- help and act as Technical support to Other DS within team.
- Act as technical consultant for Data & AI use case.
- Design and develop front-end interfaces for AI-powered applications using modern web technologies such as HTML, CSS, JavaScript, and frameworks like React or Angular.
- Lead and Research and development initiative within Team and come up industry standard practice within team to follow in ongoing projects.
- Stay up to date on the latest advancements in LLM research and identify opportunities to incorporate them into your work
- Act as SPOC from data & AI team to leverage AI capabilities with Business team.
- Build scalable back-end systems and APIs to support AI model integration and data processing using languages such as Python, Java, or Node.js.
- Collaborate with researchers to explore new applications for LLMs in various domains.
- Define Solution design proposal for business
- Manage the infrastructure needed for data scientists to run their experiments and deploy models. This includes setting up computer clusters with GPUs or TPUs for computationally intensive tasks, configuring cloud storage for datasets, and managing containerized environments for model deployment
- Document your work clearly and concisely, including research papers, technical reports, and code documentation.About you
- A minimum of 6 years’ hands-on applied research experience developing and implementing machine learning models on large scale data sets. Experience in Developing GenAI product (Advance RAG, AI Agents..)
- Expertise in machine learning and statistical analysis approaches such as classification, clustering, regression, statistical inference, collaborative filtering.
- Hands-on experience in conducting analyses on unstructured structured / semi-structured data
- Ability to drive initiatives from within the team and realize them for organization and/or team’s benefit.
- Excellent interpersonal and communication skills.
- Sound Knowledge and Understanding of Framework like Langgraph, Langchain, Pytorch..
- You bring rigor, passion for challenges, and determination. You seek the opportunity to expand your expertise, achieve your goals, and thrive.