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Nick Schroer

VP
Trailhead Capital

Nick Schroer

VP
Trailhead Capital

Nick Schroer

VP
Trailhead Capital
 

Michael Smith

General Partner
Regeneration VC

Michael Smith

General Partner
Regeneration VC

Michael Smith

General Partner
Regeneration VC
HPRI Orlando Post event report
 

Heinz Zeller

Principal, Sustainability
Hugo Boss

Heinz initially worked in chemical research, first on anti-malaria and later on biodegradable polymers. Moved on to project management and completed a Bachelor of Science in Information Systems.

He joined HUGO BOSS Ticino, South Switzerland, in 1998 with the responsibility to insource all existing textile and leather licensees, taking over the responsibility of logistics and participated at various corporate business-reengineering projects.

Heinz Zeller

Principal, Sustainability
Hugo Boss

Heinz Zeller

Principal, Sustainability
Hugo Boss

Heinz initially worked in chemical research, first on anti-malaria and later on biodegradable polymers. Moved on to project management and completed a Bachelor of Science in Information Systems.

He joined HUGO BOSS Ticino, South Switzerland, in 1998 with the responsibility to insource all existing textile and leather licensees, taking over the responsibility of logistics and participated at various corporate business-reengineering projects.

After the completion of the Cert. Adv. Study (CAS) in CSR, he established the HUGO BOSS sustainability road map and the sustainability strategy. Based on this, the required structures and programs were implemented, and he led the various involved departments to publish the first sustainability report in 2013. The results of this work are many recognitions like CDP DACH sector leader, robecosam industry mover or the listing in the Dow Jones Sustainability Index 2017.

Moreover, he created important public documents like the three whitepapers on Natural Capital Valuation or policies for the environment, plant based materials, animal welfare, responsible products and more with the help of some well-known cotton and fiber experts as well other field experts

Join this moderated roundtable discussion group of 10-20 attendees focusing on efficient edge ML inference.

There will be several moderators per topic area to allow for multiple tables and questions will be prepared in advance. Each group will be multidisciplinary with representation from across the tech stack. Attendees who have registered for the event will be able to sign up for the roundtable discussion groups closer to the event, or via an AI Hardware & Edge AI Summit sales representative.

The subtopics to be discussed will include:

- Efficient edge-based inference on low-power devices: hardware and software optimizations
- Challenges of handling high-dimensional data at the edge for efficient inference
- Adapting machine learning models for low-power edge devices: balancing model accuracy and computational complexity
- Designing efficient edge-to-cloud communication protocols to minimize latency and optimize bandwidth usage

Join this moderated roundtable discussion group of 10-20 attendees focusing on efficient cloud based ML inference.

There will be several moderators per topic area to allow for multiple tables and questions will be prepared in advance. Each group will be multidisciplinary with representation from across the tech stack. Attendees who have registered for the event will be able to sign up for the roundtable discussion groups closer to the event, or via an AI Hardware & Edge AI Summit sales representative.

The subtopics to be discussed will include:

- Optimizing hardware for efficient inference: balancing cost and performance
- Latency and throughput challenges in cloud-based machine learning inference
- Designing distributed systems for scalable and reliable inference

Join this moderated roundtable discussion group of 10-20 attendees focusing on challenges in deploying machine learning into production.

There will be several moderators per topic area to allow for multiple tables and questions will be prepared in advance. Each group will be multidisciplinary with representation from across the tech stack. Attendees who have registered for the event will be able to sign up for the roundtable discussion groups closer to the event, or via an AI Hardware & Edge AI Summit sales representative.

The subtopics to be discussed will include:

- Mitigating challenges from changes between training and production infrastructure
- MLOps workflows for shortening time-to-value
- Navigating compatability, scalability and availabilty of hardware during deployment

AWC 166.1 Post event Report 2022

Join this moderated roundtable discussion group of 10-20 attendees focusing on novel training and learning paradigms for ML. 

There will be several moderators per topic area to allow for multiple tables and questions will be prepared in advance. Each group will be multidisciplinary with representation from across the tech stack. Attendees who have registered for the event will be able to sign up for the roundtable discussion groups closer to the event, or via an AI Hardware & Edge AI Summit sales representative.

The subtopics to be discussed will include:

- Limitations of current training architectures and paradigms
- Use cases and challenges for distributed learning (i.e. federated learning)
- Data centric AI + few & low shot learning methods for efficient training
- Datasets for ML training - Open Source options

Join this moderated roundtable discussion group of 10-20 attendees focusing on novel training and learning paradigms for ML. 

There will be several moderators per topic area to allow for multiple tables and questions will be prepared in advance. Each group will be multidisciplinary with representation from across the tech stack. Attendees who have registered for the event will be able to sign up for the roundtable discussion groups closer to the event, or via an AI Hardware & Edge AI Summit sales representative.

The subtopics to be discussed will include:

- Limitations of current training architectures and paradigms
- Use cases and challenges for distributed learning (i.e. federated learning)
- Data centric AI + few & low shot learning methods for efficient training
- Datasets for ML training - Open Source options