Meta - Austin, TX

posted 2 months ago

Full-time - Mid Level
Remote - Austin, TX
5,001-10,000 employees
Web Search Portals, Libraries, Archives, and Other Information Services

About the position

Meta Platforms, Inc. (Meta), formerly known as Facebook Inc., is seeking a Software Engineer specializing in Machine Learning to join our innovative team. In this role, you will be responsible for researching, designing, developing, and testing operating systems-level software, compilers, and network distribution software that addresses massive social data and prediction challenges. You will work on a variety of problems including ranking, classification, recommendation, and optimization, which are critical to enhancing user experience and business outcomes. Your contributions will directly impact areas such as payment fraud detection, click-through or conversion rate prediction, and ads/feed/search ranking. As a Software Engineer, you will develop highly scalable systems and algorithms that leverage deep learning, data regression, and rules-based models. You will be expected to suggest, collect, analyze, and synthesize requirements while identifying bottlenecks in technology, systems, and tools. Your role will involve developing solutions that significantly improve efficiency and explore state-of-the-art deep learning techniques. You will collaborate closely with the engineering team, receiving general instructions from your supervisor while delivering code that meets project requirements. This position allows for telecommuting from anywhere in the US, providing flexibility in your work environment. You will be part of a dynamic team that is pushing the boundaries of social technology, moving beyond traditional 2D screens to immersive experiences in augmented and virtual reality. Join us in building the next evolution of social technology and making a meaningful impact on how people connect and interact.

Responsibilities

  • Research, design, develop, and test operating systems-level software, compilers, and network distribution software for massive social data and prediction problems.
  • Work on a range of ranking, classification, recommendation, and optimization problems such as payment fraud detection and click-through rate prediction.
  • Develop highly scalable systems, algorithms, and tools leveraging deep learning, data regression, and rules-based models.
  • Analyze and synthesize requirements and identify bottlenecks in technology, systems, and tools.
  • Develop solutions that improve efficiency and leverage large amounts of data using state-of-the-art deep learning techniques.
  • Collaborate with the engineering team to deliver code based on general instructions from the supervisor.
  • Adapt standard machine learning methods to exploit modern parallel environments like distributed clusters and GPUs.

Requirements

  • Master's degree in Computer Science, Computer Software, Computer Engineering, Applied Sciences, Mathematics, Physics, or related field.
  • Three years of work experience in the job offered or in a computer-related occupation.
  • Experience with machine learning frameworks such as PyTorch, MXNet, or TensorFlow.
  • Experience in machine learning, recommendation systems, computer vision, natural language processing, data mining, or distributed systems.
  • Ability to translate insights into business recommendations.
  • Experience with Hadoop, HBase, Pig, MapReduce, Sawzall, Bigtable, or Spark.
  • Proficiency in scripting languages such as Perl, Python, PHP, or shell scripts.
  • Experience with relational databases and SQL.
  • Familiarity with Linux, UNIX, or other *nix-like operating systems.
  • Experience in building highly-scalable performant solutions.
  • Knowledge of data processing, programming languages, databases, networking, operating systems, computer graphics, or human-computer interaction.

Benefits

  • Bonus
  • Equity
  • Health benefits
  • Flexible work environment
  • Telecommuting options
  • Professional development opportunities
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