Qorvo, Inc

Staff Data Science Engineer

Qorvo, Inc$120K — $150K *
Technical Services
8 - 10 years of experience
Job Overview by Ladders

Qualifications

  • Bachelor's degree in Data Science, Computer Science, Statistics, Engineering, Applied Mathematics, or a related field.
  • 8+ years of experience in data science, machine learning, or analytics engineering with a focus on business-facing solutions.
  • Proficient in Python and SQL programming languages.
  • Expertise in statistical analysis and machine learning modeling techniques.
  • Extensive experience in building data pipelines and using modern cloud analytics platforms.
  • Strong communication skills to convey complex concepts to diverse audiences.
  • Proven track record of mentoring team members and leading projects without formal authority.

Responsibilities

  • Lead architecture and implementation of machine learning and analytics solutions from inception to deployment.
  • Develop scalable data products and decision-support tools using statistical and machine learning methods.
  • Collaborate with various teams to identify high-impact business opportunities and prioritize initiatives.
  • Convert ambiguous business challenges into structured analytical plans and outcomes.
  • Create and maintain reliable data and feature pipelines, as well as experiment frameworks.
  • Facilitate responsible AI adoption by creating reusable frameworks and best practices across the organization.
  • Support technical growth within the team by mentoring peers and enhancing coding and documentation standards.

Benefits

  • Access to advanced tools and technologies in a collaborative environment.
  • Opportunities for ongoing education and professional development.
  • Flexible work arrangements to support work-life balance.
  • Strong emphasis on mentoring and career growth.
  • Support for health, wellness, and work-life initiatives.
Full Job Description
Role Summary

We are looking for a Staff Data Science Engineer to lead the design and delivery of scalable data science, machine learning, and analytics solutions that create measurable business value across the enterprise. This role sits at the intersection of data science, data engineering, analytics engineering, and AI productization. The right person will pair strong technical depth with practical business judgment, helping turn complex data into decisions, tools, and systems that improve operations, reduce cost, accelerate insight, and scale AI adoption.

This is a senior individual contributor role for someone who can operate as a technical leader across functions, influence stakeholders from engineers to executives, and build robust solutions in environments where data quality, governance, speed, and return on investment all matter.

In the current integration environment, this role must also work effectively within approved collaboration and information-sharing processes, including formal handling of cross-company meetings, data requests, documentation, and CSI-sensitive workflows described in the Project Comet guidance.

What You'll Do
  • Lead the architecture and implementation of production-grade data science and machine learning solutions, from problem framing through deployment and adoption.
  • Build scalable data products, models, and decision-support tools using statistical methods, machine learning, optimization, and modern analytics engineering practices.
  • Partner with business leaders, engineering, IT, manufacturing, quality, finance, and other cross-functional teams to identify high-value opportunities and prioritize work with clear business impact.
  • Translate ambiguous business problems into structured analytical approaches, measurable success criteria, and deliverable roadmaps.
  • Design and maintain reliable data pipelines, feature pipelines, experimentation frameworks, and model monitoring practices.
  • Drive the responsible use of AI across the organization by developing reusable frameworks, templates, evaluation approaches, and best practices for enterprise adoption.
  • Serve as a technical mentor to data scientists, analysts, and engineers; raise the bar on coding, experimentation, documentation, and stakeholder communication.
  • Create executive-ready narratives, visualizations, and recommendations that connect technical findings to business outcomes.
  • Partner with data platform and governance teams to ensure solutions meet requirements for security, compliance, and maintainability.
  • Help shape standards for model lifecycle management, MLOps, analytics engineering, and AI solution delivery.
  • Contribute to integration planning and enterprise analytics initiatives while following approved protocols for meetings, shared materials, data requests, and CSI/non-CSI handling where applicable. Project Comet guidance requires legally approved agendas for certain new cross-company meetings, use of the Data Request List for shared data, and routing potentially sensitive data through the appropriate review path or clean room process.


What Success Looks Like
  • You deliver analytics and AI solutions that produce measurable operational or financial impact.
  • You help the team focus on high-return opportunities that leadership can easily justify and support.
  • You raise technical quality while also improving speed, reuse, and maintainability.
  • You make data science more accessible to the business through better tools, communication, and enablement.
  • You influence decisions well beyond your direct project work.
  • You help the organization use data and AI more effectively without compromising governance, security, or compliance.


Required Qualifications
  • Bachelor's degree in Data Science, Computer Science, Statistics, Engineering, Applied Mathematics, or a related technical field.
  • 8+ years of experience in data science, machine learning, analytics engineering, or data platform development, including experience delivering business-facing solutions in production.
  • Strong programming skills in Python and SQL.
  • Deep experience with statistical analysis, machine learning, feature engineering, model evaluation, and experimental design.
  • Strong experience building data pipelines and working with modern data platforms and cloud analytics ecosystems.
  • Demonstrated ability to own ambiguous, high-impact problems and drive them through to adoption.
  • Experience partnering with senior stakeholders and influencing decisions across technical and non-technical groups.
  • Strong written and verbal communication skills, including the ability to explain complex concepts clearly to executives and business partners.
  • Proven ability to mentor others and lead technically without direct authority.


Preferred Qualifications
  • Advanced degree in a quantitative or technical field.
  • Experience in semiconductor, manufacturing, operations, supply chain, quality, or related industrial domains.
  • Experience building and operationalizing AI/ML solutions at enterprise scale.
  • Experience with MLOps, model monitoring, and deployment workflows.
  • Experience with Databricks, Spark, orchestration tools, BI platforms, and modern software engineering practices.
  • Familiarity with secure data environments and regulated data handling.
  • Experience working in environments that require balancing innovation with compliance, governance, and business urgency.
  • Exposure to enterprise AI enablement, internal tooling, or organization-wide adoption programs.


Technical Skills
  • Python, SQL
  • Machine learning, statistics, optimization, experimentation
  • Data modeling, ETL/ELT, analytics engineering
  • Cloud and distributed data platforms
  • BI and visualization tools
  • Git-based development workflows and production-quality software practices
  • MLOps and model lifecycle management
  • Data governance, documentation, and reproducibility


Leadership Expectations
  • Acts like an owner and focuses on business value, not just technical elegance.
  • Brings an abundance mindset and collaborates across organizational boundaries.
  • Balances strategic thinking with hands-on execution.
  • Pushes for clarity, rigor, and practical outcomes.
  • Elevates the team through mentorship, standards, and example.
  • Exercises strong judgment around sensitive data, stakeholder alignment, and enterprise constraints.


Sample Responsibilities by Problem Type
  • Build predictive and optimization models that improve yield, quality, throughput, cost, or planning.
  • Develop AI-enabled tools that scale analyst and engineer productivity.
  • Create reusable data products that standardize metrics, reduce manual effort, and improve decision speed.
  • Lead diagnostic and exploratory analyses on complex manufacturing, product, or enterprise datasets.
  • Establish frameworks for model governance, evaluation, and business adoption.


This position is not eligible for visa sponsorship by the Company.

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About Qorvo, Inc

Qorvo, Inc is a semiconductor company that designs, manufactures, and supplies radio frequency (RF) solutions for smartphones, tablets, wireless infrastructure, defense and aerospace applications, and Internet of Things (IoT) applications. The company's products include amplifiers, filters, switches, and integrated modules that support a range of wireless communications standards. Qorvo was formed in 2015 as a result of the merger between RF Micro Devices and TriQuint Semiconductor. The company is headquartered in Greensboro, North Carolina.
Learn more about Qorvo, Inc
Size
8,900 employees
Market Cap
$9.1 billion
Industry
Net Income
$485.2 million
Founded
2013
5 Year Trend
+8.9%
Revenue
$3.7 billion
NASDAQ

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