Unleash the Power of Chooch Computer Vision AI for Retail on Intel Architecture
Chooch empowers retailers with industry-leading AI-powered computer vision solutions to analyze video and image data, transforming it into clear actionable insights to help drive better business decisions. By unlocking the value of visual data, retailers are improving store operations, increasing team efficiency, saving costs, and ultimately delivering exceptional shopping experiences.
The Chooch Vision AI platform delivers precision detection, workflow automation, and powerful AI algorithms for smart analytics. Chooch has seamlessly integrated their ImageChat foundation model, which provides generative AI prompt technology to automate the review of visual data. ImageChat combines computer vision and large language models to systematically and scalably query visual data, extracting deeper context and meaning.
Chooch makes it easy to deploy and scale computer vision applications across multiple use cases:
In-Store Analytics: Chooch Vision AI provides retailers with valuable insights into customer behavior, such as navigation patterns, dwell times, and product interactions. This information helps optimize store layout, product placement, and marketing strategies.
Inventory Management: Chooch Vision AI enables real-time tracking of inventory levels, helping retailers avoid stockouts, improve inventory accuracy, and reduce the risk of lost sales.
Loss Prevention and Safety: Chooch Vision AI detects suspicious behavior to prevent shoplifting and other crimes. It also enhances safety by identifying hazards such as weapons and slip-and-fall risks, protecting both employees and shoppers.
Leveraging Intel Architecture
For maximum performance and efficiency, Chooch Vision AI Platform and ImageChat solutions have been optimized for 英特尔 Architecture leveraging Intel AI tools such as OpenVINO and oneAPI AI Analytics Toolkit on 3rd and 4th Generation Intel? Xeon? Scalable Processors.
The Chooch AI Vision Platform’s full Retail AI pipeline was optimized with OpenVINO by updating the backend of the Inference Server to leverage the latest OpenVINO packages. This provided significant speed up in performance for all of the tested models while maintaining accuracy.
By Leveraging Intel oneAPI AI Analytics Toolkit and Intel Extension for Transformers (ITREX) Chooch was able to see fantastic improvement in token generation speed on the LLM leveraged by ImageChat. Itrex was also able to help resolve one of the major bottle necks, passing the inputs embeds into the generation function, which is needed for Multimodal LLM Token Generation.
Intel? Xeon? Scalable Processors are renowned for their robust performance and reliability and offer an extensive ecosystem of tools and libraries that further streamline the development and deployment of AI solutions. The flexibility they provide to run complex AI workloads on the same hardware as existing workloads makes them an ideal choice for Chooch to deploy with their customers.
About Chooch
Recognized by industry analysts as a leader in AI-powered computer vision, Chooch delivers innovative solutions enabling cameras to see, detect, act, and predict. For over seven years, Chooch has empowered businesses with AI technology that analyzes video and image data, transforming it into actionable insights. With a focus on research and development, Chooch continues to push the boundaries of what's possible with artificial intelligence vision.
For more information about Chooch Vision AI Solutions for Retail, please visit our website at https://www.chooch.com/solutions/retail-analytics/.
For more information about ImageChat, please visit our website at https://www.chooch.com/imagechat/.
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Managing Director AI and Innovation | Entrepreneur | Investor | Energy Expert | Global Industry Affairs
8 个月Bravo Michael Liou and Emrah Gultekin!!!
Senior Lead Enabling Manager for Intel at MarketStar
8 个月It has been a pleasure working with you on this.
Love it