As a Data Science Tech Lead, you will build our data capabilities end to end: collecting, analyzing, driving insights, and delivering machine learning solutions that enhance our offerings. You will play a pivotal role in building the organization’s “data muscle,” empowering Operational and Network teams to use data for smarter decisions, operational excellence, and innovation. The role requires a seasoned professional with deep expertise in data strategy, analytics, and governance, paired with a hands-on mindset to deliver results.
As a Data Science Tech Lead, you will build our data capabilities end to end: collecting, analyzing, driving insights, and delivering machine learning solutions that enhance our offerings. You will play a pivotal role in building the organization’s “data muscle,” empowering Operational and Network teams to use data for smarter decisions, operational excellence, and innovation. The role requires a seasoned professional with deep expertise in data strategy, analytics, and governance, paired with a hands-on mindset to deliver results.
,[Ensure key business drivers are captured during the design of Machine Learning solutions in collaboration with product stakeholders., Lead data science projects and mentor data scientists, establish standards for code quality, experimentation, documentation, and reproducibility., End-to-end ownership of ML models on Data Science platform, from data ingestion and feature engineering to training, deployment, monitoring, and retraining., Drive data strategy and governance: data contracts, quality, privacy, security, and compliance across the model lifecycle., Ensure reliability of models in production (SLOs/SLAs, observability, retraining schedules, alerts)., Extract and analyze network and business data to identify trends, detect anomalies, and recommend improvements in service performance and customer experience., Apply advanced analytical techniques and develop predictive models and algorithms that support telecom operations across the value chain., Collaborate with cross-functional teams including engineering, product, and operations., Maintain and enhance the model development environment including pipelines and orchestration frameworks., Visualize and explain the outcomes of the work in a way that is understandable for diverse audiences Requirements: Data science, Machine Learning, Python, scikit-learn, TensorFlow, PyTorch, Big Data, Spark, Hadoop, Data analytics, Data visualization, SQL, Relational database, Git, Jira, Confluence, Cloud, AWS, GCP, ETL, Stakeholder management, Communication skills