AI Spectrum

Siemens Digital Industry Software
AI Spectrum

AI Spectrum podcasts cover a wide range of artificial intelligence and machine learning topics. Listen to experts within Siemens and their customers talk about the impact of AI, success stories, and the future of AI. Gain insight into real world applications so that you can potentially apply AI within your world.

  1. الحلقة ٥

    Understanding the Role of AI and How to Use Data

    Artificial intelligence is becoming increasingly more common in the workplace. To really understand how it works and the benefits that it can bring about, talking to people with first-hand experience is key. To learn more about how AI technology is being used, we turn to our very own experts here at Siemens.   In today’s episode, I’m talking to Roberto D'Ippolito, Senior Technical Product Manager of the HEEDS team at Siemens Digital Industries Software based in Belgium. We’ll discuss the range of possibilities within AI, where all that data comes from, and how to create value from it. AI has the potential to offer big advantages over the competition, and machine learning puts all of the information into focus.  You’ll also learn where HEEDS fits into the simulation equation, the key benefits of using the technology, and the process of designing automated vehicles so that unpredictable situations are accounted for. We’ll wrap up by touching on a few misconceptions about AI, and where it might lead us in the future.   In this episode, you will learn: How we can utilize AI industrially and in general (1:48) The role of HEEDS (2:57) The key benefit of AI and machine learning technology (6:51) How the adaptive sampling strategy is being used (9:06) How machine learning meets the challenge of designing autonomous vehicles (11:02) The AV design process (14:13) Where all of the data is coming from (18:16) Challenging beliefs and misconceptions about AI (23:21) The future of AI in engineering (25:00) Connect with Roberto D'Ippolito: LinkedIn Connect with Thomas Dewey: LinkedIn

    ٢٧ من الدقائق
  2. الحلقة ٦

    Deploying AI’s Object Recognition in Factories

    Computer vision is one of the fastest-growing AI fields. This has been fuelled by the progress made in data models training and its widespread adoption. Automation that results from this increases the quality of products and lowers the cost of production. In today’s episode, I’m talking to Shahar Zuler, a data scientist and machine learning engineer at Siemens. We'll discuss object recognition in factories and the unique challenges being faced in its deployment.  Tune in and learn more about computer vision in machine learning as well as the use of synthetic data in model training. Some Questions I Ask: How do you see AI impacting the industrial industry? (3:06) What are the unique challenges of employing AI/ML in the industrial environment? (10:59) What are you doing at Siemens to help solve the industrial environment’s AI/ML challenges? (19:33) What do you do to validate the correctness of synthetic data? (23:15) Can you predict what you think will happen with machine learning in the next 10 years? (26:57) In this episode, you will learn: Different tasks of computer vision machine learning (11:30) How to train an object detection model (16:34) How synthetic images are used in ML model training (20:56) How to validate synthetic data (23:38) The benefits of partnerships between Siemens and their customers (25:08) Connect with Shahar Zuler:  LinkedIn Connect with Thomas Dewey:  LinkedIn

    ٣١ من الدقائق

حول

AI Spectrum podcasts cover a wide range of artificial intelligence and machine learning topics. Listen to experts within Siemens and their customers talk about the impact of AI, success stories, and the future of AI. Gain insight into real world applications so that you can potentially apply AI within your world.

للاستماع إلى حلقات ذات محتوى فاضح، قم بتسجيل الدخول.

اطلع على آخر مستجدات هذا البرنامج

قم بتسجيل الدخول أو التسجيل لمتابعة البرامج وحفظ الحلقات والحصول على آخر التحديثات.

تحديد بلد أو منطقة

أفريقيا والشرق الأوسط، والهند

آسيا والمحيط الهادئ

أوروبا

أمريكا اللاتينية والكاريبي

الولايات المتحدة وكندا