refresh

트렌딩 기업

트렌딩 기업

채용

채용Apple

Lead Big Data Engineer - Wallet, Payments & Commerce

Apple

Lead Big Data Engineer - Wallet, Payments & Commerce

Apple

Austin, TX

·

On-site

·

Full-time

·

1d ago

Apple is where individual imaginations gather together, committing to the values that lead to great work. Every new product we build, service we create, or Apple Store experience we deliver is the result of us making each other's ideas stronger. That happens because every one of us shares a belief that we can make something wonderful and share it with the world, changing lives for the better. It's the diversity of our people and their thinking that inspires the innovation that runs through everything we do. When we bring everybody in, we can do the best work of our lives. Here, you'll do more than join something - you'll add something!

Apple Pay brought mobile payment to millions of customers, and it's just the beginning! We are looking for engineers who enjoy both hands-on technical work and designing thoughtful, scalable services for Wallet and Apple Pay. Our team's vision is to be the engine of intelligent transformation, leveraging a unified, reliable data platform to build and deploy innovative and solutions that drive significant business impact and enable data-driven decision-making throughout the organization.

Description

We are seeking a pragmatic Senior Big Data Engineer to help build and optimize data, analytics, and ML enablement solutions. You will design and deliver privacy-first, reliable, and quality-focused data products and platforms that enable trusted, compliant data usage across the organization. You will collaborate with cross-functional teams across time zones to ensure our data platforms meet the highest standards of trust, accuracy, and regulatory compliance.","responsibilities":"Instrument APIs, user journey, and interaction flows to systematically collect behavioral, transactional, and operational data, enabling robust analytics and insightful reporting.

Design, develop, and maintain scalable data & ML pipelines and architectures for Wallet, Payments & Commerce products.

Optimize data workflows and pipelines to enhance data processing efficiency and reliability.

Design and implement automated data quality frameworks (data validation, continuous data quality, data profiling, anomaly detection, reconciliation, etc.).

Develop and scale QA automation frameworks for data engineers, including reusable test suites for schema validation, pipeline regression, and performance benchmarking.

Uphold the highest standards for user privacy, ensuring all data engineering practices and designs embed privacy by default and by design.

Work closely with legal and compliance teams to anticipate and ensure continuous adherence to regulations and industry-specific mandates

Collaborate closely with a diverse set of partners to gather requirements, prioritize use cases, and ensure high-quality data products delivery.

Preferred Qualifications

Experience authoring technical and instrumentation specs, and working with APIs and message schemas (MSDs).

Proven ability to design reusable frameworks, tools, and automation to accelerate platform adoption.

Hands-on experience with distributed querying (Trino), real-time analytics (OLAP), near-real-time processing (NRT), and data mesh architectures.

Familiarity with Generative AI/LLM applications for test generation, anomaly detection, documentation automation, and privacy-safe synthetic data creation.

Demonstrated ability to mentor engineers in data quality, privacy, and compliance best practices.

Experience in Fintech, Wallet, Payments, or Digital Commerce domains, including regulatory considerations.

Track record of independent problem-solving, sound technical judgment, and delivering impactful results at scale.

Minimum Qualifications

Bachelor's degree in Computer Science or a related technical field or equivalent experience

5-10 years of experience in designing, developing, and deploying data engineering for analytics or ML & AI pipelines.

Expertise with data governance, security protocols, and compliance in financial data systems.

Strong proficiency in SQL, Scala, Python, or Java, with hands-on experience in data pipeline tools (e.g., Apache Spark, Kafka, Airflow), CI/CD practices, and version control.

Familiarity with cloud platforms (AWS, Azure, GCP) and data management and analytics tools like Snowflake, Databricks and Tableau.

Strong understanding of data warehousing, data modeling (dimensional/star schemas), and metric standardization.

Proven experience building data quality frameworks (validation, profiling, anomaly detection, synthetic data generation).

In-depth knowledge of privacy-preserving techniques and compliance in financial systems.

Excellent problem-solving and analytical skills, with the ability to influence stakeholders and drive adoption of best practices.

Apple is an equal opportunity employer that is committed to inclusion and diversity. We seek to promote equal opportunity for all applicants without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, disability, Veteran status, or other legally protected characteristics. Learn more about your EEO rights as an applicant .

총 조회수

0

총 지원 클릭 수

0

모의 지원자 수

0

스크랩

0

Apple 소개

Apple

Apple

Public

Apple Inc. is an American multinational technology company headquartered in Cupertino, California, in Silicon Valley, best known for its consumer electronics, software and online services.

10,001+

직원 수

Cupertino

본사 위치

$3.5T

기업 가치

리뷰

3.9

10개 리뷰

워라밸

2.5

보상

4.2

문화

3.8

커리어

3.5

경영진

3.2

72%

친구에게 추천

장점

Great benefits and compensation

Talented colleagues and supportive teams

Learning opportunities and mentorship

단점

Work-life balance challenges

High stress and pressure

Fast-paced environment

연봉 정보

11,365개 데이터

L2

L3

L4

L5

L6

L2 · Business Analyst L2

0개 리포트

$114,215

총 연봉

기본급

$45,686

주식

$57,108

보너스

$11,422

$79,951

$148,480

면접 경험

3개 면접

난이도

3.3

/ 5

소요 기간

28-42주

합격률

33%

경험

긍정 33%

보통 0%

부정 67%

면접 과정

1

Application Review

2

Recruiter Screen

3

Technical Phone Screen

4

Onsite/Virtual Interviews

5

Team Matching

6

Offer

자주 나오는 질문

Coding/Algorithm

System Design

Behavioral/STAR

Technical Knowledge

Past Experience