Inventive Scientist (Labs - Data Science and AI Research)
AT & T
: $102,930.00 - $200,310.00 /year *
: Scientific Research
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Inventive Scientist in AT&T Labs - Data Science and AI Research
In AT&T Labs' Data Science and AI Research organization, we tackle some of the worlds biggest and richest datasets to enable industry-leading services and deliver superior customer experiences. As a pioneer in big data technologies, we offer challenging research opportunities in statistics and machine learning, statistical computing, data visualization, text mining, time series modelling, data stream and database management, data quality and anomaly detection, and data privacy.
We focus on the companys most challenging business problems that inspire exciting research opportunities, across diverse areas such as advertising, mobility network data, and video and multimedia analytics. Our researchers work directly with business unit leaders to directly impact AT&Ts products and services. All have opportunities to invent novel, publishable methodology that address real-world problems. Increasingly we contribute to multiple data science disciplines through open source software projects, led by AT&T.
Our Inventive Scientists are typically hired as recent PhD graduates or early career researchers. They are on a path to be technical leaders in their field. An AT&T Labs Research career allows them to establish external recognition while creating innovative, business-impacting solutions. Researchers with 5+ years of relevant experience may be considered for a more senior position. We encourage applications from candidates with experience and strong interest in any of these areas:
Advertising and Media Consumption Analytics - With our purchase of Warner Media, AT&T is now a global media and entertainment leader, with exciting opportunities for data science applications that model consumer media consumption, develop personalized content, and optimize advertising effectiveness and delivery.
Spatial and spatio-temporal data analysis- The AT&T network generates billions of records per day from handheld devices, each one providing a data point in time and space. Understanding the dynamics of this mobility data through time series and spatial statistics helps AT&T better serve its customers, improve its network, and develop new products and services.
Statistical computation - AT&T is developing high-performance statistical models and algorithms to leverage modern streaming and storage technologies. One example is the AT&T collaborative coding project RCloud
Text mining - AT&T mines free-form text from millions of customer surveys, representative notes, and live chats as one way to manage our business in real time and include the customer perspective in everything we do. New methods are needed to keep up with the volume and complexity of this data.
Data visualization - AT&T creates algorithms, systems, and techniques for visualizing new data sets at increasingly large scale. AT&T is especially interested in interactive visualization of very large geospatial and temporal data. One example is our open source project Nanocubes
Predictive Modeling We build models to predict customer behavior and sentiment, service disruptions, and event impacts. Models serve to both target, and to gain insight into variable relationships, allowing analysts to positively affect business outcomes. Testing incremental gains from newer machine learning algorithms with minimal sacrifice in interpretability is an active and growing research area with publishing opportunities.
Database management and data quality - AT&T is building high-performance and low latency systems to manage high velocity data streams. These systems are critical for accurate processing and analysis of data from the AT&T mobile network. Analyzing the data to identify glitches, and cleaning the data to minimize distortion while preserving maximal underlying variation, are essential to ensure meaningful big data analytics.
Please visit learn more about AT&T Research.
Qualifications - Required Experience and passion for finding solutions to real world, applied problems from complex datasets.PhD or equivalent in a data science field, including these most commonly: Statistics, Computer Science, Machine Learning, Operations Research, Engineering, and Mathematics. Established aptitude for applied research as demonstrated through publications, new research techniques, open source contributions, internship experience, or patents.Demonstrated ability to generate new ideas, and develop them from your concept to a solution.Demonstrated ability to use software to manipulate data, prototype new tools, and extract actionable insights from that data.Capable of presenting outcomes of analytic solutions in a format easily understood by a non-technical audience.
* The salary listed in the header is an estimate based on salary data for similar jobs in the same area. Salary or compensation data found in the job description is accurate.