Machine Learning Engineer

MetaMenlo Park, CA

About The Position

Meta Platforms, Inc. (Meta), formerly known as Facebook Inc., builds technologies that help people connect, find communities, and grow businesses. When Facebook launched in 2004, it changed the way people connect. Apps and services like Messenger, Instagram, and WhatsApp further empowered billions around the world. Now, Meta is moving beyond 2D screens toward immersive experiences like augmented and virtual reality to help build the next evolution in social technology. To apply, click “Apply to Job” online on this web page.

Requirements

  • Requires a Bachelor's degree (or foreign equivalent) in Computer Science, Engineering, Applied Sciences, Mathematics, Physics or related field
  • Requires completion of a university-level course, research project, internship, or thesis in the following:
  • Machine Learning Framework(s): PyTorch, MXNet, or Tensorflow
  • Machine Learning Algorithms and their applications: recommendation systems, computer vision, natural language processing, or data mining
  • Translating insights into business recommendations
  • Hadoop, HBase, Pig, MapReduce, Sawzall, Bigtable, or Spark
  • Deep Neural Networks, Probability theory, Linear Algebra, Calculus, Data Analysis
  • Understanding of agile methodologies such as: Scrum, Kanban
  • Developing and debugging in C, C++, and Java
  • Scripting languages: Perl, Python, PHP, or shell scripts
  • Relational databases and SQL
  • Software development tools: Code editors (VIM or Emacs), and revision control systems (Subversion, GIT, or Perforce)
  • Linux, UNIX, or other nix-like OS including file manipulation and simple commands
  • Distributed systems, including sharding, consistency, and availability
  • Building highly-scalable performant solutions
  • Data structures and Algorithms

Responsibilities

  • Research, design, develop, and test operating systems-level software, compilers, and network distribution software for massive social data and prediction problems.
  • Have industry experience working on a range of ranking, classification, recommendation, and optimization problems, e.g. payment fraud, click-through or conversion rate prediction, click-fraud detection, ads/feed/search ranking, text/sentiment classification, collaborative filtering/recommendation, or spam detection.
  • Work on problems of large scope, develop highly scalable systems, algorithms and tools leveraging deep learning, data regression, and rules based models.
  • Suggest, collect, analyze and synthesize requirements and bottlenecks in technology, systems, and tools.
  • Develop solutions that iterate with a higher efficiency, efficiently leverage orders of magnitude more data, and explore state-of-the-art deep learning techniques.
  • Demonstrate strong engineering skills and require minimal guidance on engineering craft.
  • Apply advanced machine learning methods to best exploit modern parallel environments (e.g. distributed clusters, multicore SMP, and GPU).
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