Bosch Research and Technology in Pittsburgh is seeking a motivated student intern to join our research team exploring advanced machine learning applications in IoT and smart home systems. This position is part of an exciting effort to explore intelligent multi-modal sensing at the intersection of deep learning and signal processing with projects spanning smart home automation connected appliances and innovative ways to enhance everyday user experiences. You will contribute to building testing and refining machine learning models for sensor data analysis and work alongside experienced researchers to translate innovative ideas into practical applications.
Responsibilities:
- Assist in research and development of multi-sensor data fusion techniques using data such as acoustic vibration radar lidar image Wi-Fi time series and ultrasound signals.
- Support the design training and evaluation of multi-modal machine learning models for smart home IoT or manufacturing use cases.
- Collaborate with cross-functional teams to help prototype and test new sensing solutions.
- Document and communicate research findings clearly contributing to internal reports presentations and potential publications or patents.
- Stay up-to-date with emerging technologies and assist in exploring novel applications for IoT and smart home systems.
Benefits:
- Hands-on experience with cutting-edge multi-sensor and machine learning research.
- Mentorship from experienced researchers in IoT home appliances and cyber-physical systems.
- Opportunity to contribute to real-world projects with potential impact on products and processes.
Qualifications :
Qualifications
Required:
- Currently pursuing a PhD in Computer Science Electrical Engineering Data Science or a related technical field.
- Broad knowledge of machine- and deep-learning algorithms and principles and state-of-the-art methods.
- Familiarity with sensors IoT devices or cyber-physical systems is a plus.
- Proficiency in Python and experience with ML frameworks such as PyTorch or TensorFlow.
- Strong communication skills and an ability to work collaboratively in a research environment.
- Enthusiasm for learning and applying new technologies.
Desired:
- Experience using raw sensor data (eg. Radar acoustic etc.) in machine learning projects.
- Knowledge of digital signal processing principle and methods multimodal representation learning.
- Publication record in top machine learning and signal processing venues.
- Experience with additional programming languages (C C) or embedded systems.
- Interest in computer systems networking or signal processing.
Additional Information :
Equal Opportunity Employer including disability / veterans.
Please note that employment is contingent upon the successful completion of a drug screen and background check. Candidates who have been offered the position must pass both screenings before their start date.
#LI-JM1
Remote Work :
No
Employment Type :
Full-time
Bosch Research and Technology in Pittsburgh is seeking a motivated student intern to join our research team exploring advanced machine learning applications in IoT and smart home systems. This position is part of an exciting effort to explore intelligent multi-modal sensing at the intersection of de...
Bosch Research and Technology in Pittsburgh is seeking a motivated student intern to join our research team exploring advanced machine learning applications in IoT and smart home systems. This position is part of an exciting effort to explore intelligent multi-modal sensing at the intersection of deep learning and signal processing with projects spanning smart home automation connected appliances and innovative ways to enhance everyday user experiences. You will contribute to building testing and refining machine learning models for sensor data analysis and work alongside experienced researchers to translate innovative ideas into practical applications.
Responsibilities:
- Assist in research and development of multi-sensor data fusion techniques using data such as acoustic vibration radar lidar image Wi-Fi time series and ultrasound signals.
- Support the design training and evaluation of multi-modal machine learning models for smart home IoT or manufacturing use cases.
- Collaborate with cross-functional teams to help prototype and test new sensing solutions.
- Document and communicate research findings clearly contributing to internal reports presentations and potential publications or patents.
- Stay up-to-date with emerging technologies and assist in exploring novel applications for IoT and smart home systems.
Benefits:
- Hands-on experience with cutting-edge multi-sensor and machine learning research.
- Mentorship from experienced researchers in IoT home appliances and cyber-physical systems.
- Opportunity to contribute to real-world projects with potential impact on products and processes.
Qualifications :
Qualifications
Required:
- Currently pursuing a PhD in Computer Science Electrical Engineering Data Science or a related technical field.
- Broad knowledge of machine- and deep-learning algorithms and principles and state-of-the-art methods.
- Familiarity with sensors IoT devices or cyber-physical systems is a plus.
- Proficiency in Python and experience with ML frameworks such as PyTorch or TensorFlow.
- Strong communication skills and an ability to work collaboratively in a research environment.
- Enthusiasm for learning and applying new technologies.
Desired:
- Experience using raw sensor data (eg. Radar acoustic etc.) in machine learning projects.
- Knowledge of digital signal processing principle and methods multimodal representation learning.
- Publication record in top machine learning and signal processing venues.
- Experience with additional programming languages (C C) or embedded systems.
- Interest in computer systems networking or signal processing.
Additional Information :
Equal Opportunity Employer including disability / veterans.
Please note that employment is contingent upon the successful completion of a drug screen and background check. Candidates who have been offered the position must pass both screenings before their start date.
#LI-JM1
Remote Work :
No
Employment Type :
Full-time
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