Data Scientist - Business Process Re-Engineering

Apple Inc.
Austin, United States of America
5 days ago

Role details

Contract type
Permanent contract
Employment type
Full-time (> 32 hours)
Working hours
Regular working hours
Languages
English
Experience level
Senior

Job location

Austin, United States of America

Tech stack

Java
Artificial Intelligence
Big Data
C++
Cluster Analysis
Continuous Integration
Data Integrity
Data Mining
Data Presentation
Data Visualization
Relational Databases
Python
Machine Learning
MySQL
Natural Language Processing
Cloud Services
TensorFlow
Software Engineering
SQL Databases
Tableau
Workflow Management Systems
Data Processing
Sql Optimization
PyTorch
Large Language Models
Snowflake
Deep Learning
Containerization
Scikit Learn
Kubernetes
Information Technology
Machine Learning Operations
Front End Software Development
Streamlit Framework
Artificial Intelligence Markup Language (AIML)
Software Version Control
Docker
Programming Languages

Requirements

PhD in Computer Science, Statistics, Applied Math, Data Science, Operations Research or a related field and 5+ years of industry experience OR MS in related field with 8+ years hands-on industry experience\nDemonstrated experience in forecasting, optimization, or simulation within supply chain or operations domains\nAbility to work well in a fast-paced, iterative environment and deliver projects under timeline pressures\nProven experience building and deploying large-scale data science and machine learning models, including anomaly detection, NLP, and deep learning techniques with MLOps practices, model versioning, and CI/CD pipelines for implementing, deploying and managing production AIML workflows and projects\nExperience prototyping and developing software in programming languages (Python, etc.) as well as leveraging advanced SQL for data manipulation\nExperience building out scalable solutions using GenAI technologies with an emphasis on Agentic solutions using MCP servers, agents, and skills\nExperience with data acquisition tools (e.g. SQL), data mining and data visualization. Strong background in AIML libraries and frameworks such as Scikit Learn, TensorFlow, PyTorch\nExperience prototyping, developing software and implementing data science pipelines and applications in programming languages (Python/Java/C++)\nTrack record of staying current with industry best practices, rapidly adopting emerging technologies (e.g., LLMs, RAG, vector databases), and building functional prototypes to validate concepts\nChampion a culture of experimentation and continuous learning, bringing innovative and strategic thinking to reporting, business analytics, and AI-powered automation\nProven ability to own and deliver end-to-end projects from scoping through deployment and post-launch iteration\nProficiency with cloud data platforms (e.g., Snowflake), relational databases (e.g., MySQL), interactive front-end frameworks (e.g., Streamlit, Tableau, ThoughtSpot), and containerization/orchestration tools (Docker, Kubernetes)\nWorking knowledge of predictive modeling and classification algorithms, regression, clustering, and anomaly detection\nPassionate about understanding and solving problems and exceptional ability to translate complex AI and ML concepts into clear business narratives, with a talent for data storytelling and presenting analysis effectively to influence senior leadership and cross-functional partners\nSelf-sufficient with an ability to thrive in an environment of autonomy amidst ambiguity\nStrong interpersonal and collaboration skills to partner effectively across functions, share knowledge, communicate findings, and integrate diverse feedback

Meticulous attention to detail, data integrity, and data wrangling\nAbility to get things done, experience in delivering end-to-end projects\nHigh intellectual curiosity to learn and understand business needs\nSelf-sufficient with an ability to thrive in an environment of autonomy amidst ambiguity\nStrong interpersonal and collaboration skills to partner effectively across functions, share knowledge, communicate findings, and integrate diverse feedback

About the company

Apple is where extraordinary people do their best work. If making a real impact excites you, a career here might be your dream - just be prepared to dream big.\\n\\nApple's growing supply chain complexity demands innovative approaches beyond traditional analytics. You'll join a team designing and developing advanced analytics solutions using GenAI, Agentic AI, and modern data science methods to drive decisions. You're passionate about turning data into impactful insights, staying ahead of technology trends, and thrive navigating ambiguity in a fast-paced environment. If this sounds like you, we'd love to talk. Engage with business teams to identify opportunities through in depth conversations and being able to translate those requirements into technical solutions and drive critical projects\nDesign and architect end-to-end data science solutions-selecting from established techniques or engineering novel algorithms tailored to complex supply chain business problems\nCollaborate with data engineers and infrastructure partners to implement robust solutions and operationalize models.\nContinuously enhance and evolve deployed solutions through monitoring, feedback loops, and iteration to meet changing business needs with agility\nPresent key findings to leadership to evaluate business impact, in non-technical terms\nResearch and evaluate emerging technologies-including GenAI, agentic frameworks, and advanced visualization tools-to expand the team's technical capabilities and accelerate innovation\nChampion a culture of experimentation and continuous learning, bringing innovative and strategic thinking to reporting, business analytics, and AI-powered automation\nDevelop custom models, algorithms, and interactive visualizations-including dashboards and self-service tools-to deliver actionable Supply Chain insights at scale\nWrangle and analyze data to identify patterns, trends, and feature engineering\nDefine and track key performance metrics to quantify the business value of deployed data science solutions

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