Machine Learning, Applied Data Science Program
Apple
                            
                            Cambridge, Massachusetts, U.S.
                        
                        
                            
                            Full-time, Regular
                        
                        
                            
                            
                                Posted Aug 15, 2025
                            
                        
                    Onsite
                        
                    Compensation
                                    
                                    Loading salary analysis...
                                
                            About the role
Join the Applied Data Science Program and make a positive impact on one of the most influential technology leaders in the industry
Responsibilities
- Translate ambiguous business problems into technical solutions
- Create tools to support self-service analytics
- Develop, deploy, and operationally support machine-learning models
- Apply data science to core finance processes
Requirements
- Bachelors or Masters in Data Science, Computer Science, or related Engineering field
- Proficient in at least one programming language (Python/Scala/Java preferred)
- Practical experience with querying language such as SQL and extracting insights from complex data sets
- Theoretical understanding of data modeling concepts, data structures, and machine learning algorithms
Benefits
- Comprehensive medical and dental coverage
- Retirement benefits
- Discounted products and free services
- Reimbursement for certain educational expenses
- Discretionary bonuses or commission payments
- Relocation assistance
About the Company
Apple is committed to working with and providing reasonable accommodation to applicants with physical and mental disabilities
Job Details
Salary Range
$114,100 - $171,800/yearly
Location
Cambridge, Massachusetts, U.S.
Employment Type
Full-time, Regular
Original Posting
View on company website