● Lead the development of predictive analytics, anomaly detection systems, and data-driven insights for Chartmetric’s music intelligence platform, taking ownership of the entire data pipeline from schema design to delivery. ● Design automated data quality frameworks, scalable analytics solutions, and AI-powered insights to enhance artist performance tracking, audience engagement analysis, and market forecasting. ● Build real-time data monitoring systems to detect irregular streaming patterns, fraudulent activities, and unexpected shifts in music consumption. ● Optimize large-scale data pipelines, ensuring seamless integration of data from streaming platforms, social media, and audience engagement sources. ● Collaborate with product, engineering, and business teams to develop AI-driven search and analytics tools, making complex data easily accessible to industry professionals. ● Play a key role in data strategy and cross-functional collaboration, transforming raw data into actionable intelligence for artist managers, labels, and digital marketers. ● Specialize in advanced user data analytics and segmentation, developing sophisticated behavioral clustering models and customer journey analytics frameworks. ● Build and implement churn prevention analytics to drive subscription retention. ● Design and implement complex ETL pipelines specifically for user data integration across multiple platforms, creating a unified user data lake architecture that centralizes consumer information. ● Create dynamic segmentation models that automatically adapt to changing user behaviors and implement real-time cohort analysis frameworks to track segment evolution over time. ● Build cross-platform attribution models to measure marketing effectiveness across user segments, develop custom data visualization dashboards for user segment analysis, and create automated reporting systems to track segment performance metrics. ● Build ETL pipelines in Python to extract and transform data from streaming platforms (Spotify, Apple Music, YouTube) for artist performance analysis. ● Manage centralized data warehousing in Snowflake and AWS Redshift while utilizing PostgreSQL/BigQuery for relational data and MongoDB/Elastic Search for flexible user/music analytics. ● Implement high-performance analytics with Clickhouse for massive datasets and Kafka/Kinesis for real-time streaming data processing. ● Orchestrate data workflows with Airflow and developing predictive models using Scikit-learn, TensorFlow, and Snowpark to identify breakout tracks/artists. ● Create visualization solutions through Tableau, Looker, and Hex for executive dashboards and collaborative data exploration. ● Apply advanced statistical methods and machine learning algorithms to build ranking system for artists, creators and tracks to help prioritize the stats updating in Chartmetric. ● Use Hex to create collaborative Python/SQL workbooks to serve data needs and reduce insight time for faster decisions. ● Leverage the use of LLM APIs to create meaningful workflows using agentic RAGs for building LLM based applications. ● Telecommuting is permitted within the New York Metropolitan area.
Job Requirements:
A Master’s degree in Analytics, Data Science or closely related field with 3 years of experience as an Analytics Engineer or Data Analyst position, which includes minimum of 3 years of experience with Python, Snowflake, PostgreSQL, Clickhouse, AWS, Airflow, Tableau, Looker, Hex, and LLM. Telecommuting is permitted within the New York Metropolitan area.
Job Criteria:
Start Date:
Position Type: Full-Time Permanent
Experience: 3
Education: Masters
Travel:
Vacation:
Company Profile:
Chartmetric is the music industry's leading data analytics platform, helping the industry make smarter and faster music business decisions by providing reliable data, beautiful visuals, in-depth insights, innovative features, and rockstar customer support.