Intern - Artificial intelligence
Dubai - TECOM, United Arab Emirates
Signify
Signify ist Weltmarktführer für vernetzte LED-Beleuchtungssysteme sowie Software und Dienstleistungen im Beleuchtungsbereich. Wir nutzen das außerordentliche Potenzial von Licht, um für ein angenehmeres Leben und eine bessere Welt zu sorgen.Job Title
Intern - Artificial intelligenceJob Description
About Signify
Through bold discovery and cutting-edge innovation, we lead an industry that is vital for the future of our planet: lighting. Through our leadership in connected lighting and the Internet of Things, we're breaking new ground in data analytics, AI, and smart solutions for homes, offices, cities, and beyond.
At Signify, you can shape tomorrow by building on our incredible 125+ year legacy while working toward even bolder sustainability goals. Our culture of continuous learning, creativity, and commitment to diversity and inclusion empowers you to grow your skills and career.
Join us, and together, we’ll transform our industry, making a lasting difference for brighter lives and a better world. You light the way.
More about the role
How we learn the people count sensor today
- Trial & error, experience based estimating where a line crossing and detection box should be defined
- This is an art, more than rule based
- Needs to be done for every sensor again, time consuming, not scalable
Scope
- Train a Recurrent Neural Network on labeled datasets, and the sensor will learn when people walk in or out, in all kinds of different situations.
Benefit
- No configuration required, the sensor is "smart" enough.
Why we believe it works
- The situation is always more or less the same: the sensor looking at a door or an entrance.
- The information that a RNN needs as input is available in the cloud, The RNN inference can be cloud based.
- The latest RNN's are very powerful. (e.g. bi-directional Long-Short Term Memory LSTM)
What is needed
- Large annotated dataset of people count sensor output sequences of people walking in and out of doors/entrances.
Approach for Proof of Concept
- Collect datasets of people walking in and out. Annotate each set by a human.
- Mount a people count sensor above a door.
- Mount an occupancy sensor above the door, log the occupancy data
- Videotape the door 24/7
- Human checks the video tape every time the occupancy sensor was triggered and stores an annotated sensor data piece.
- Machine Learning engineer trains a RNN with the annotated dataset.
- Testing of the RNN inference happens with a separate dataset that is unseen by the RNN
- Test real-time inference
- If successful, implement inference in VBI
More about you
Background in machine learning.
Ideal for students looking for a graduation assignment in the direction of AI Technology Architect.
Everything we’ll do for you
List out benefits and anything else on offer for this role.
You can grow a lasting career here. We’ll encourage you, support you, and challenge you. We’ll help you learn and progress in a way that’s right for you, with coaching and mentoring along the way. We’ll listen to you too, because we see and value every one of our 30,000+ people.
We believe that a diverse and inclusive workplace fosters creativity, innovation, and a full spectrum of bright ideas. With a global workforce representing 99 nationalities, we are dedicated to creating an inclusive environment where every voice is heard and valued, helping us all achieve more together.
Tags: Data Analytics LSTM Machine Learning RNN Testing
Perks/benefits: Career development
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