When joining PerkinElmer, you select an experienced and trusted leader in scientific solutions, with the support of a global service network and distribution centers, providing the right solution, at the right time, to meet critical customer needs. With over an 80+ year legacy of advancing science and a mission of innovating for a healthier world, our dedicated team collaborates closely with commercial, government, academic and healthcare customers to deliver our broad portfolio of analytical solutions, and OneSource services.
Job Title Director - Data Analytics
Location(s) Mumbai
Preferred Characteristics
- Experience within Life Sciences, Diagnostics, Healthcare, or related scientific industries.
- Direct experience in designing and implementing solutions specifically for data platform modernization.
- Experience managing globally distributed teams.
- Experience implementing DataOps and CI/CD practices within a data engineering context.
- Ability to balance operational excellence with innovation, driving both cost efficiency and business value creation.
- Ability to drive outcomes in a highly complex matrix environment which is often amorphous.
- Lead and develop a high-performing global team of functional experts, technical leads, and application managers.
- Foster a culture of accountability, collaboration, innovation, and customer focus.
- Continuously upskill the team to stay aligned with evolving technology trends and business needs.
Key Responsibilities:
Platform Stabilization & Operational Excellence:
- Accountable for stable, reliable, and secure operations across all Datawarehouse applications, ensuring adherence to defined SLAs and KPIs.
- Assess the current data platform architecture, identify bottlenecks, and implement solutions to ensure high availability, reliability, performance, and scalability.
- Establish robust monitoring, alerting, and incident management processes for all data pipelines and infrastructure.
- Drive initiatives to improve data quality, consistency, and trustworthiness across the platform.
- Oversee the operational health and day-to-day management of existing data systems during the transition period.
- Manage relationships with strategic vendors across the enterprise applications landscape, ensuring strong performance, innovation contributions, and commercial value.
Platform Modernization & Architecture:
- Define and execute a strategic roadmap for modernizing PerkinElmers data platform, leveraging cloud-native technologies (AWS, Azure, or GCP) and modern data stack components (e.g., data lakes/lakehouses, Data Fabric/Mesh architectures, streaming platforms like Kafka/Kinesis, orchestration tools like Airflow, ELT/ETL tools, containerization).
- Lead the design and implementation of a scalable, resilient, and cost-effective data architecture that meets current and future business needs. (DaaS)
- Champion and implement DataOps principles, including CI/CD, automated testing, and infrastructure-as-code, to improve development velocity and reliability.
- Stay abreast of emerging technologies and industry trends, evaluating and recommending new tools and techniques to enhance the platform.
Leadership & Strategy:
- Build, mentor, and lead a world-class data engineering team, fostering a culture of innovation, collaboration, and continuous improvement.
- Develop and manage the data engineering budget, resources, and vendor relationships.
- Define the overall data engineering vision, strategy, and multi-year roadmap in alignment with PerkinElmers business objectives.
- Effectively communicate strategy, progress, and challenges to executive leadership and key stakeholders across the organization.
- Drive cross-functional collaboration with IT, Security, Enterprise Apps, R&D, and Business Units.
Data Monetization Enablement:
- Partner closely with business leaders, enterprise app teams, and other business teams to understand data needs and identify opportunities for data monetization.
- Architect data solutions, APIs, and data products that enable the creation of new revenue streams or significant internal efficiencies derived from data assets.
- Ensure robust data governance, security, and privacy controls are embedded within the platform design and data products, adhering to relevant regulations (e.g., GDPR, HIPAA where applicable).
- Build the foundational data infrastructure required to support advanced analytics, machine learning, and AI initiatives.
Required Qualifications & Experience
- Bachelors or Masters degree in Computer Science, Engineering, Information Technology, or a related quantitative field.
- 15+ years of experience in data engineering, data architecture and/or data warehousing.
- 5+ years of experience in a leadership role, managing data engineering teams and driving large-scale data initiatives.
- Proven track record of successfully leading the stabilization, modernization, and scaling of complex data platforms.
- Deep expertise in modern data architecture patterns (Data Lakes, Data Warehouses, Lakehouses, Lambda/Kappa architectures).
- Extensive hands-on experience with cloud data platforms (AWS, Azure, or GCP - specify preferred if applicable) and their associated data services (e.g., S3/ADLS/GCS, Redshift/Synapse/BigQuery, EMR/Dataproc/Databricks, Kinesis/Kafka/Event Hubs, Glue/Data Factory/Dataflow).
- Strong experience with big data technologies (e.g., Spark, Hadoop ecosystem) and data processing frameworks.
- Proficiency with data pipeline orchestration tools (e.g., Airflow, Prefect, Dagster).
- Solid understanding of SQL and NoSQL databases, data modeling techniques, and ETL/ELT development.
- Experience with programming languages commonly used in data engineering (e.g., Python, Scala, Java).
- Excellent understanding of data governance, data security, and data privacy principles and best practices.
- Exceptional leadership, communication, stakeholder management, and strategic thinking skills.
- Demonstrated ability to translate business requirements into technical solutions.