Senior Manager – Data Engineer.Group Enterprise Management needed at MTN
Job title : Senior Manager – Data Engineer.Group Enterprise Management
Job Location : Gauteng, Roodepoort
Deadline : December 20, 2025
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Responsibilities
AI Model Product ionisation & Deployment
- Oversee the industrialisation of AI models, ensuring enterprise readiness, performance optimisation, and regulatory compliance.
- Establish robust MLOps frameworks that support versioning, monitoring, drift detection, and automated retraining across diverse market contexts.
- Translate raw network and customer data into ADR structures optimised for analytics APIs, visualisation layers, and external data services.
- Optimise storage tiering (hot vs cold vs archival), processing costs, and compute scheduling for high-volume workloads.
- Enterprise Data & AI Infrastructure
- Lead the design and governance of a multi-OpCo, multi-cloud AI and data estate that supports real-time, high-volume telco, geospatial, and behavioural data streams.
- Ensure infrastructure is optimised for scalability, cross-market interoperability, and commercialisation.
- Develop production-grade, reusable pipelines (batch + streaming) for CDRs, DPI, location, financial, and digital channels.
- Architect and operationalise cloud-native (GCP / Azure / on-prem hybrid) data platforms supporting ingestion, transformation, and ADR creation.
- Drive automation, metadata cataloguing, and data quality frameworks leveraging tools like Databricks, Airflow, BigQuery, and Terraform.
Scalability & Reliability Leadership
- Anticipate and solve complex performance bottlenecks in high-throughput AI workloads.
- Champion cost optimisation, resilience engineering, and observability practices to guarantee uptime and trusted AI delivery.
- Lead a team of data engineers, guiding design reviews, CI/CD standards, and alignment with Data Science, Privacy, and Legal teams.
Cross-Functional Orchestration
- Partner with Group CIOs, Data Science, Product, Networks, and Commercial leadership to align AI engineering outputs with business-critical use cases and monetisation pathways.
- Act as a trusted advisor to OpCos, ensuring rapid adoption of production-ready AI capabilities.
- Integrate IAM, KMS, VPC Service Controls, and data lineage logging to meet POPIA / GDPR / ISO 27001 standards.
Innovation & Thought Leadership
- Drive continuous innovation in geospatial AI, telco intelligence, and federated learning frameworks to maintain MTN’s competitive edge.
- Position MTN DataCo as a leading AI engineering hub, setting benchmarks for responsible, explainable, and ethical AI adoption.
Key Deliverables
- Production-grade, monitored, and retrainable AI models serving both internal (OpCos, Group functions) and external (enterprise clients, consulting engagements) markets.
- Standardised MLOps toolkits, reusability frameworks, and onboarding assets to accelerate AI deployment.
- Scalable AI-enabled platforms that support predictive and prescriptive use cases across telco and adjacent industries.
- Performance scorecards measuring AI reliability, deployment speed, cost efficiency, and market impact.
Qualifications
Education:
- Bachelor’s degree in Computer Science, Software Engineering, Information Systems, or a related technical discipline (required)
- Master’s degree in Data Engineering, Cloud Infrastructure, or Big Data Architecture (preferred)
- Industry certifications in cloud platforms (Azure, GCP, AWS), big data frameworks (Spark, Hadoop), or DevOps/DataOps tools are strongly advantageous
Experience:
- 8–10+ years in large-scale data engineering, with at least 5 years in a senior or lead capacity.
- Proven track record in productionising AI models at enterprise scale, ideally in telco, geospatial, or similarly high-volume domains.
- Demonstrated leadership in building AI/ML infrastructure and CI/CD pipelines in complex, hybrid environments.
- Experience influencing C-level stakeholders and translating data/AI strategy into operational and commercial outcomes.
Competencies:
- Data Pipeline Mastery: Expert in building and scaling real-time and batch data pipelines using Spark, Kafka, SQL, and Python
- Big Data Infrastructure Leadership: Deep knowledge of distributed systems (Hadoop, Databricks, Hive) and hybrid cloud environments
- Privacy & Governance: Data Anonymisation & Privacy Techniques (k-Anonymity, Differential Privacy)
- Cloud & DevOps Integration: Skilled in CI/CD, containerisation (Docker, Kubernetes), IaC, and observability tools for data systems
- Governance & Compliance Alignment: Designs pipelines that embed data lineage, security tagging, access control, and policy enforcement
- System Optimisation: Drives performance tuning, cost efficiency, fault tolerance, and workload automation at scale
- Team Enablement: Mentors data engineers, drives capability uplift across OpCos, and standardises reusable engineering components
- Cross-functional Influence: Proactively engages with IT, security, architecture, and analytics functions to accelerate delivery and integration
Key Deliverables:
Internal:
- Production-grade, scalable data pipelines for telco, geospatial, and behavioural datasets
- Observability dashboards, automated recovery scripts, and runbooks for performance and system health
- Internal artefacts for reusability: transformation scripts, standard schema libraries, onboarding guides
- Metrics reports on pipeline uptime, latency, cost performance, and consumption across OpCos
External:
- Integration artefacts and onboarding toolkits for third-party and client data sources
- AI/analytics-ready feature sets delivered to downstream product, consulting, and data science teams
- Technical documentation and data pipeline references embedded into data monetisation offers
- Collaborative PoV datasets and artefacts aligned with consulting engagements or client delivery tracks
Apply Before 12/17/2025
How to Apply for this Offer
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