Job Description
Mission:
- Deliver intelligent and scalable data solutions that adapt to the dynamic landscape of the telecom and technology sectors.
- Provide full-spectrum, data-driven approaches to address critical challenges in marketing, operations, and customer experience, enabling the Telco-to-Tech-Co transition.
- Drive innovation through advanced analytics, AI/ML, and Generative AI solutions, including the use of LLMs for automation, personalization, and enhanced decision-making.
- Unlock business value through monetization of internal data assets and enable data-driven products and partnerships aligned with MTNIrancell growth strategy.
Roles & Responsibilities:
- Liaise with various marketing/commercial teams to induct them of data science concepts to address business requirements.
- Collaborate with business partners to specify use cases and work with end users for agile use case improvement.
- Collaborate with subject matter experts to select the relevant sources of information and translate the business requirements into a data-scientific project.
- Work in cross-functional agile/scrum teams alongside product, network, and customer care to co-create and implement solutions aligned with business needs.
- Contribute to conducting undirected research and framing open-ended MTN Irancell business questions.
- Collaborate with the data governance team to ensure that the correct standards align with the data pipeline development process.
- Process huge volumes of data collected from multiple internal and external sources.
- Search and propose various ways to compensate for unavailable required data by conducting scientific experiments.
- Develop models and frames of business scenarios that are meaningful and affect critical business processes and/or decisions.
- Build high-performance algorithms, prototypes, predictive models, and proof of concepts to review data from various perspectives and generate insightful reports.
- Refine and tune data models to be able to respond to various homogeneous data structures.
- Exploit multiple new/existing algorithms for processing data to generate real business value.
- Discover insights and identify opportunities using statistical, algorithmic, machine learning, data mining, and visualization techniques.
- Propose and design data-efficient models that are smartly developed in accordance with the quality of existing data.
- Employ sophisticated analytics programs, machine learning, and statistical methods to do both predictive and prescriptive modeling.
- Implement MLOps practices, including model versioning, monitoring, and CI/CD deployment pipelines for the respective Use cases.
- Leverage advanced machine learning algorithms and models where appropriate.
- Integrate model explainability techniques such as SHAP and LIME to ensure transparent decision-making.
- Stay up to date with the latest trends in Generative AI and experiment with use cases such as automated insight summarization, chatbot enhancement, and personalized content delivery.
- Apply foundational concepts of Large Language Models (LLMs) and prompt engineering for developing and enhancing telecom-focused AI applications such as smart chatbots, virtual assistants, and summarization tools.
- Apply advanced knowledge and conclude the analysis/research around data-scientific opportunities, sales retention opportunities, market demographics, and use cases to achieve company strategies, such as tel-co to tech-co transition, utilizing internal/external market intelligence.
- Deploy scientific approaches to validate built models by quantifying the resulting accuracy.
- Analyze big data and work with related platforms to build data-driven business insights and high-impact data-scientific models to generate significant business value and present them to the management.
- Create and maintain interactive dashboards for visualizing campaign and offer performance.
- Develop strong data storytelling and narrative skills to effectively communicate complex insights to non-technical business stakeholders.
- To build value scoring models, audience insights, and data-as-a-service (DaaS) frameworks formonetization use cases.
Bachelor's degree in Operations Research, Soft Computing, Computer Science, Analytics, Mathematics, Computational Finance, or Statistics.
At least 3 years of experience in an area of specialization (data science/data analysis experience is preferred).Experience working in a medium to large organization.
Reporting and analysis.
Data visualization and presentation
Forecasting.
Statistical analysis.
Data science.
Lead with care.
Can-do with integrity.
Serve with respect.
Collaborate with agility.
Act with inclusion.