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Sr. Associate Data and Analytics Engineer @ Pfizer

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Pfizer  Sr. Associate Data and Analytics Engineer

Job Description

ROLE SUMMARY

Use Your Power for Purpose

At Pfizer, our purpose Breakthroughs that change patients lives drives every decision we make. Digital & Technology accelerates this mission by turning data into insights that power smarter science, stronger operations, and an exceptional colleague experience. Within this organization, the Enabling Functions Creation Center (EFCC) supports HR, Finance, Global Business Services, and Legal with the digital capabilities they need to operate effectively and unlock value.

As a hands on Sr. Associate - Data & Analytics Engineer , you will build innovative data and analytics solutions that strengthen our enterprise data foundation, empower our enabling function partners, and help unleash the power of our people ultimately supporting the breakthroughs that matter most to patients.

ROLE RESPONSIBILITIES

  • As a hands-on engineer, you will build scalable data pipelines to provide accurate and impactful business analytics and insights

  • Design and implementation of data architecture and infrastructure.

  • Implement data management strategies and policies.

  • Ensure data quality and integrity across all data platforms.

  • Collaborate with cross-functional teams to align data initiatives with business goals.

  • Develop and maintain data governance frameworks.

  • Integrate / utilize new data technologies and tools.

  • Ensure compliance with data privacy regulations and standards.

  • Optimize of data processing workflows and pipelines.

  • Develop of analytics solutions to support business decision-making.

  • Work with and maintain relationships with external data vendors and partners.

  • Create and maintain data documentation and metadata.

  • Develop and monitor key performance indicators for data initiatives.

  • Ensure the scalability and performance of data systems.

BASIC QUALIFICATIONS

  • Candidates should possess a BA/BS or MBA/MS/M. Tech with at least 3-5 years of experience, a PhD with any years of experience Data Architecture Design: Designing and structuring modern databases and modern data systems: Advanced

  • Data Warehousing: Building and managing data warehouses (Preferably Snowflake): Expert

  • SQL: Advanced querying and database management: Expert

  • Data pipelines / ETL Processes: Designing and managing modern ETL (Extract, Transform, Load) processes and data engineering pipelines: Expert

  • Data Integration: Combining and transforming data from different sources: Expert

  • Cloud Platforms (e. g. , AWS, Azure, Google Cloud): Managing data infrastructure on cloud platforms: Advanced

  • Big Data Technologies (e. g. , SnowFlake, Data Bricks, Spark): Handling and processing large datasets: Expert

  • Data Modeling: Creating data models to support analytics: Advanced

  • Visual Analytics and Business Intelligence Tools: Using BI tools to derive insights from data: Advanced

  • Data Governance: Implementing policies and procedures for data management: Intermediate

  • Data Visualization Tools (e. g. , Tableau, Power BI): Creating visual representations of data and data story telling: Advanced

  • Hands on experience with vibe coding and Generative AI based data pipeline and analytics solutions development to increase efficiency, reduce overall delivery cost and reduce time to market: Intermediate

  • Programming Languages (e. g. , Python, R): Writing code for data manipulation and analysis: Intermediate

  • Data Security: Implementing security measures to protect data: Intermediate

  • Data Quality Management: Ensuring accuracy and consistency of data: Advanced

  • Statistical Analysis: Applying statistical methods to analyze data: Intermediate

  • Strategic Thinking: Planning and executing long-term data strategies: Intermediate

  • Communication: Clearly conveying complex data concepts to stakeholders: Advanced

  • Problem Solving: Identifying and resolving data-related issues: Advanced

  • Collaboration: Working effectively with cross-functional teams: Advanced

PREFERRED QUALIFICATIONS

  • People Analytics experience using SaaS tools such asVisier, One Model, Perceptyx, Workday Prism Analytics, Workday People Analytics, SAP Success Factors Workforce Analytics is a big plus. Familiarity with cloud/SaaS-based Human Capital Management (HCM) systems such as Workday is a big plus.

  • Experience with Global HR data integration and prior experience with Mergers, Acquisitions, and Divestitures is a plus.

  • Familiarity with SoX, EU Global Data Privacy Regulations (GDPR) and other related international regulations is nice to have. Prior experience with data architecture designs and data engineering development related to the GDPR and data privacy guiding principles such as data minimization, right to be forgotten, etc is nice to have.

  • Experience with Software engineering best practices, including but not limited to version control (Git/GitHub, TFS, Subversion, etc. ), CI/CD (Jenkins, Maven, Gradle, etc. ), automated unit testing, Dev Ops is highly beneficial but not required.

  • Experience with sourcing and modeling data from application APIs and publishing data and analytics services via APIs / Data Services is highly beneficial but not required Experience deploying through an agile methodology and working in a SCRUM or SAFe team is highly beneficial but not required.

  • 6 or more years of experience with one or more general-purpose data processing programming languages, including but not limited to: SQL, Scala, Python, Java, etc

  • Architected end-to-end data pipelines with a major cloud stack is a plus Experience in Cloud computing, machine learning, text analysis, NLP, and developing and deploying data and analytics services such as recommendation engines experience is a plus

  • Domain experience in the Human Resources field

Emerging skills:

  • Machine Learning: Applying machine learning techniques for data analysis: Intermediate

  • Adaptability: Adjusting to new technologies and methodologies: Intermediate

  • Critical Thinking: Analyzing data critically to derive insights: Advanced

  • Time Management: Prioritizing tasks to meet deadlines: Advanced

  • Decision Making: Making informed decisions based on data insights: Advanced


Work Location Assignment: Hybrid

Information & Business Tech

Job Classification

Industry: Pharmaceutical & Life Sciences
Functional Area / Department: Data Science & Analytics
Role Category: Data Science & Analytics - Other
Role: Data Science & Analytics - Other
Employement Type: Full time

Contact Details:

Company: Pfizer
Location(s): Mumbai

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Keyskills:   Data analysis SAP Publishing Data modeling Coding Business analytics Data processing Business intelligence Analytics SQL

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Pfizer

Pfizer careers are like no other. In our culture of individual ownership, we believe in our ability to improve future healthcare, and potential to transform millions of lives. We’re looking for new talent to join our global community, to unearth new innovative therapies that make the world a ...