Attention
This website is best viewed in portrait mode.
-
design digital
- machine learning and advanced analytics
-
Edge AI Solutions
Edge AI Solutions
Innovate|Design|Scale
Edge AI Solutions
Innovate|Design|Scale
Trending
Edge AI is here to stay! Artificial intelligence (AI) is powering many real-world applications which we see in our daily lives. AI, once seen as an emerging technology, has now successfully penetrated every industry (B2B & B2C) Banking, logistics, healthcare, defence, manufacturing, retail, automotive, and consumer electronics. Smart Speakers like Echo, and Google Nest, are such examples of Edge AI solutions in the consumer electronics sector.
AI technology is powerful, and humankind has set its eye on the path of harnessing its potential to the fullest. Intelligence brought to the device can be very useful and creative through edge computing solutions.
The key requirements that need to be factored in designing Edge AI architecture are — bandwidth, latency, privacy, security, and power consumption. While envisioning an Edge AI computing solution, these requirements need to be thoroughly weighed in terms of what features can be traded off and yet be effective.
Edge AI solutions enable machines to perform cognitive functions such as perceiving, reasoning, and learning similar to humans but much faster and more accurately. AI implementation is majorly classified into two phases — Learning and Inference.
Globally, the AI chipset market size is expected to be valued at USD 7.6 billion in 2020 and likely to reach USD 57.8 billion by 2026, at a CAGR of 40.1% during this period. Implementation of edge computing solutions is the current trend in chip technology, and it’s going to stay that way. Many leading semiconductor companies and venture capitalists see it as the right tech-front for investment.
Celebrating 3 years of engagement with Panasonic
Tata Elxsi celebrates 3 years of partnership with Panasonic in strengthening their appliances business and maintain the philosophy of A Better Life, A Better World. We believe that it is necessary to provide end-to-end digital solutions for manufacturers to re-imagine and innovate products from the end user's point of view, helping them deliver unique next-generation appliances. With its Japanese reputation of technology and innovation, Panasonic India is an important partnership for us, and together with technologies like AI and IoT (Internet of Things), we aim to drive the next generation of home appliances from India to the global market.
Panasonic India established an R&D partnership with Tata Elxsi in 2017, and since then, we have been instrumental in developing innovative and futuristic solutions for Panasonic in their consumer electronics products.
Opportunities & Challenges
Changing dynamics in terms of hardware consideration for learning and inference have led to the Edge AI hardware market being segmented into CPU, GPU, ASIC, and FPGA. ASICs enable high processing capability with low power consumption, making them perfectly suited for Edge devices in many applications. It is estimated that an Edge AI architecture inference implemented on ASIC will grow from 30% to 70% and 20% on GPU by 2025. Edge AI solutions for devices are embedded products with resource constraints, and hence, Edge AI implementation needs to be thought of as an application-specific use case. AI-based applications for Edge devices are intelligent robots, autonomous vehicles, and smart home appliances, among others. The primary applications that run over Edge AI solutions are related to image/video, sound, and speech, natural language processing, device control systems, and high-volume computing.
The global Edge AI software market is estimated to cross $3 Billion by 2027. At this juncture of technology innovations, Semiconductor companies enable AI solutions to realize newer strategies to grow their business and find wider hardware adoption. Many semiconductor companies are no longer seen as just component providers but as complete platform solution providers. Semiconductor companies realize value gained from software and services associated with the chipsets that allow for the rapid adoption of their platforms by the device manufacturer.
To increase their hardware market adoption, semiconductor companies are investing heavily in software development toolkits integrated with ML/DL frameworks to deliver a package that allows developers to quickly get started with all components for embedded systems development at ease. This allows the device manufacturer to effectively utilize the silicon resources in a shorter time span and gain an advantage by being first to market. The Edge AI chipset market is witnessing software and associated technology stacks facilitating wider adoption and a faster development cycle.
AI processing at the Edge has allowed semiconductor companies and electronic device manufacturers to look beyond the horizon and redefine themselves with innovative solutions. It would be safe to say that Edge AI computing is driving digital transformation and guarantees immense potential.
Edge AI Service Framework
Framework
This 4 step framework of Scoping, Assessment, Prototyping, and Commercialization enables us to solve real-world problems through innovative approaches. Through this Edge AI framework, we deliver:
- Solutions beyond deducing insights
- Enhanced product and Service Experiences to improve overall customer experience
- Competitive Advantage
- Corporate Culture and Operating Model Transformation
Differentiated offerings
- Embedded Edge AI Solutions
- Explainable AI
- Advance Data Analytics
- Edge Video Cognition Services
- Intelligent Virtual Assistants
- Robotics
Differentiators
Technology
- A wide spectrum of technology services under one roof: AI/ML, Data Governance, Robotics, IoT, Cloud technologies, AR/VR & Automation for a complete digital experience.
- Multi-Disciplinary Team inclusive of digital experts, domain experts, Architects & research engineers
- Deep Learning framework to generate platform-agnostic models
Uniqueness
- State-of-the-art computing infrastructure and transfer learning capabilities on established AI models such as Inception, VGG, ResNet etc. for rapid prototyping
- Edge AI modules on MCU, MPU, GPU & FPGA
- Customized AI/Ml solutions for specific problems
- Self-learning AI engine for historic corrections/annotations
Data Handling Capabilities
- Signal Analytics - Sensor data such as Vibration, Proximity, Accelerometer
- Machine Vision - Visual data analytics for Mono Camera, Stereo Camera, IR Camera
- Natural Language Processing - ASR, Unstructured Text, Unstructured Language, Voice
Benefits to the Customer
- Delivering high accuracy models extremely close to human experts while significantly reducing episodes of errors and discrepancies
- AI-based predictive analytics to proactively monitor and gather insights
- Integrated AI-driven solutions to improve overall efficiency, thereby reducing operational costs
- Scalable & Customizable Solutions
- Chronic Problem Resolutions
- Fast digital technology adoption
- Creating a Digital Organization, Focused on the Digital Consumer
- End-to-End solutions for actual Business problems
Discover More
Subscribe
To subscribe to the latest updates & newsletter