
Apple Machine Learning Engineer Job| Hybrid Work| Apply
- Job Title: Machine Learning Engineer
- Salary: Not Disclosed
- Location: Bengaluru
- Company: Apple
- Qualifications: B.Tech/B.E. in Any Specialization
- Experience: 8 – 13 years
ABOUT APPLE
Apple Inc. Is a global-era enterprise famend for designing, manufacturing, advertising, and marketing and advertising progressive consumer electronics, software programs, and services. Founded by Steve Jobs, Steve Wozniak, and Ronald Wayne in 1976, Apple is nicely identified for its iconic products alongside the iPhone, iPad, Mac computers, Apple Watch, and AirPods. The organization moreover develops strolling systems like iOS, macOS, watchOS, and tvOS, along with aspect offerings at the side of the App Store,
Apple Music, iCloud, and Apple TV+. Apple is devoted to sustainability, incorporating eco-friendly materials and lowering its carbon footprint. With a strong emphasis on layout, individual enjoyment, and innovation, Apple has come to be one of the global’s maximum valuable businesses. Headquartered in Cupertino, California, Apple has an international presence, shaping the tech corporation with groundbreaking services and products.
Job Overview:
A Machine Learning Engineer designs builds and deploys machine learning fashions and algorithms to remedy complicated troubles. They paint with huge datasets to educate and check fashions, making sure of high common overall performance and accuracy. Key duties include statistics preprocessing, feature engineering, model choice, and evaluation. They collaborate with facts scientists and software program engineers to integrate system reading answers into programs. Proficiency in programming languages like Python, information in gadget studying frameworks, and a strong understanding of facts and algorithms are critical. The role requires non-forestall studying to stay updated with improvements in AI and gadget studying strategies.
Role and Responsibilities For Machine Learning Engineer:
- Model Development: Design and enlarge tools gaining knowledge of algorithms and fashions to remedy particular commercial agency or technical problems. This consists of choosing suitable algorithms, quality-tuning hyperparameters, and comparing model common performance.
- Data Preprocessing: Clean, preprocess, and redesign uncooked facts into codecs suitable for the system to get to now. This may additionally moreover include coping with missing data, normalizing values, and developing new functions to improve version accuracy.
- Feature Engineering: Identify and create relevant features from raw datasets, that are critical for enhancing the model’s typical overall performance. This includes operating with area specialists and data in the enterprise context.
- Model Evaluation & Tuning: Assess model overall performance with the use of strategies like move-validation, hyperparameter tuning, and universal performance metrics (e.g., accuracy, precision, endure in mind). Continuously enhance fashions to decorate their generalizability.
- Deployment: Collaborate with software program software engineers to combine device learning models into production systems or applications. This regularly involves operating with cloud structures, APIs, or deploying models on aspect devices.
- Collaboration: Work alongside information scientists, researchers, and builders to translate commercial employer troubles into machine-studying solutions and ensure the scalability and maintainability of fashions.
- Staying Updated: Stay updated with today’s studies, strategies, and high-quality practices in system analysis AI, and associated fields. Engage in non-stop mastering and comply with new strategies to optimize fashions.
Skills:
- Programming Languages: Proficiency in Python, R, or Java is crucial. Python is particularly vital due to its robust system studying libraries (e.g., TensorFlow, PyTorch, scikit-studies).
- Machine Learning Frameworks: Experience with popular frameworks that incorporate TensorFlow, PyTorch, Keras, and Scikit-learn how to put into effect and optimize machine analyzing fashions.
- Mathematics & Statistics: Strong foundation in linear algebra, opportunity, and statistics, vital for knowledge and improving machine studying algorithms.
- Data Engineering: Knowledge of records wrangling, statistics pipelines, and operating with huge data technology like Hadoop, Spark, and SQL databases.
- Model Deployment: Familiarity with deployment tools like Docker, Kubernetes, and cloud structures (AWS, Azure, GCP).
- Software Development Practices: Experience in model manipulation structures (e.g., Git), trying out, debugging, and strolling in Agile development environments.
- Problem-Solving: Ability to interrupt complex issues, find out patterns, and study device mastering solutions successfully.
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