About this job
- MS degree in a related technical field or equivalent practical experience.
- Experience running quality experiments with objective metrics. Experience implementing software projects.
- Experience collaborating on projects involving multiple teams, managing an ongoing relationship with different groups.
- Experience in machine learning in speech and/or natural language processing. Programming experience.
- PhD in Computer Science or a related technical field.
- Experience with end-to-end modeling.
- Experience with large scale TensorFlow projects.
- Experience with speech and/or natural language research with proven publications and/or product launches and success in driving product quality.
- Experience with training large scale systems on large data sets.
- Strong programming skills in C++ and Python.
About the job
The Speech group at Google applies advanced machine learning to various problems related to the Google Home smart speaker and related speech products. As a Research Scientist in this team, you work closely with Software Engineers to take on real-world problems with novel machine learning ideas. The real-world setting of this work means there is ample data to develop novel algorithms on and to see your work have real impact on end-users. The complexity and scope of the problems ask for truly innovative solutions. As such, you will continue to have a large amount of freedom as our aim is for you to develop novel ideas and to keep interacting with the wider research community, for example by publishing papers. A Research Scientist in this group can come from a speech or natural language processing background but might also come form a more general machine learning background.
The Google Assistant attempts to provide a natural speech interface to actions to be taken on the users behalf. This general formulation of the assistant function provides a particularly challenging machine learning problem that involves not just speech but a tight integration with natural language processing and a suite of actionable tasks. Making such systems accurate and efficient by learning from large data provides a wide spectrum of modeling options to explore. Of particular interest are algorithms that attempt to provide a singular machine learning solution to the more general assistant problem; an “end-to-end” model. Such solutions are of particular interest given that they would reduce the amount of manual design and allow for a truly joint optimization; a key need for the assistant function to be useful to the user. Given that large scope, the emphasis is on pushing the envelope of machine learning without siloing it to a limited application domain such as speech recognition or natural language understanding alone.
The Speech team in Google provides a unique opportunity to execute on such a large vision. Not only will you have access to data from a very large user engagement and hence data sets at a scale not likely to be seen in other places. In addition, a very close collaboration between the speech and Google Brain efforts provides direct support from more general machine learning research scientists, in terms of providing a fertile ground for developing novel ideas but also in terms of a large amount of machine learning infrastructure and models. This combination of data, resources and existing machine learning infrastructure and research makes for a unique mixture of innovation and impact and makes for an exhilarating working environment.
There is always more information out there, and the Research and Machine Intelligence team has a never-ending quest to find it and make it accessible. We're constantly refining our signature search engine to provide better results, and developing offerings like Google Instant, Google Voice Search and Google Image Search to make it faster and more engaging. We're providing users around the world with great search results every day, but at Google, great just isn't good enough. We're just getting started.
- Derive novel machine learning algorithms and document/communicate such models in terms of motivation, implementation detail and complexity.
- Implement novel algorithms in Tensorflow.
- Devise and implement data set development and curation.
- Perform empirical studies of algorithm accuracy on large data sets.
- Develop a large codebase, by design, review, maintenance and collaboration with outside code.
Life at Google
- The best tools - workstations, tablets, phones and datacenters.
- Travel insurance and emergency assistance - even on vacation!
- New parents get time off and some extra spending money.
- We reimburse you for classes or degree programs.
- Legal advice at no cost and, in the U.S., discount legal services.
- Gourmet breakfast, lunch and dinner. Every day. Free.
- On-site equipped gyms, swimming pools, (may vary by location).
- On-site doctors and comprehensive health care coverage.