We know that Tata is committed to using AKIDA.
" Tata Elxsiâs partnership with BrainChip will be driving Akida⢠technology into medical devices and industrial applications by leveraging BrainChipâs first-to-market, fully digital, neuromorphic technology to provide intelligent, low-power solutions to these demanding target markets."
link:
https://brainchip.com/brainchip-and-tata-elxsi-partner-to-provide-intelligent-ultralow-power-solutions/#:~:text=Laguna Hills, Calif. â August 28, 2023 â,as a partner to its Essential AI ecosystem.
Arijit Mukherjee of Tata (TCS) co authored several papers that focus on BrainChipâs Akida neuromorphic platform and Edge AI.
I asked AI " What are the potential uses that TATA can put the findings of the reports to and what is the liklihood of this happenning and timeframes for development up to commercial launch"
Its AI so take care especially with estimated dates of commercial readiness of products.
The real take away is it gives us confidence that Tata will produce the 'goods' as it said in the partnership ann.
Text below:
Potential Applications of the Findings
Below is an overview of how Tata (TCS/Tata Elxsi) can leverage each reportâs results, the likelihood of adoption, and estimated timelines from development to commercial rollout.
1. On-board Cloud-Cover Detection for Small Satellites
Key Capability: Real-time, low-power filtering of cloudy frames before downlink using Akidaâs spiking neural network.
- Use Cases
- Earth-observation nanosatellite constellations for agricultural monitoring, disaster response and environmental sensing
- Unmanned aerial vehicles (UAVs) performing on-the-fly scene selection to conserve bandwidth
- Likelihood of Adoption ⢠MediumâââHigh. TCS has deep ties with satellite integrators and government space programs; initial pilots likely within R&D divisions.
- Timeframe
- 2024â2025: Prototype integration on demonstration CubeSat platforms
- 2026â2027: First commercial small-sat constellations offering âsmart downlinkâ as a service
2. Embedded Edge-AI Engines for Autonomous Systems
Based on: âCreating Futuristic Edge Systems with Neuromorphic Computingâ white paper
- Use Cases
- Autonomous vehicles: event-driven obstacle and gesture detection to boost safety and reduce latency
- Industrial robots and factory automation: ultra-low-power vision tasks (defect detection, motion tracking)
- Smart cameras and wearables: always-on sign-language translators and interactive HMI
- Likelihood of Adoption ⢠High. Tata Elxsiâs current partnership with BrainChip targets medical and industrial segments, indicating strong commercial intent.
- Timeframe
- 2024: Edge-AI dev kits with Akida engines for select OEMs
- 2025â2026: Full-scale deployment in automotive ADAS modules and factory vision systems
- 2026â2028: Consumer-grade wearables and AR/VR devices with embedded spiking-NN inference
3. Real-Time Gesture Recognition in Human-Machine Interfaces
Demo: NeurIPS 2019 hands-on (DVS camera â Akida SNN)
- Use Cases
- Touchless controls in smart homes, medical consoles, and public kiosks
- VR/AR gesture interfaces with sub-millisecond response
- Sign-language detection for accessibility tools
- Likelihood of Adoption ⢠Medium. While the demo proves feasibility, embedding into mass-market devices requires partnerships with HMI vendors and UI standards bodies.
- Timeframe
- 2024: Pilot integrations with niche HMI/medical console suppliers
- 2025â2026: SDK release for consumer-electronics partners
- 2026â2027: Products shipping with turnkey gesture-AI features
Summary Table
Application Domain | Likelihood | Prototype Phase | Commercial Launch |
---|
Satellite cloud-cover filtering | MediumâHigh | 2024â2025 | 2026â2027 |
Edge-AI for autonomous vehicles & industry | High | 2024 | 2025â2026 (industry), 2026â2028 (consumer) |
Real-time touchless gesture recognition | Medium | 2024 | 2025â2027 |
By capitalizing on its R&D white papers, NeurIPS demonstrations and strategic partnerships, Tata stands poised to deliver ultra-efficient, neuromorphic-powered solutions across space, industry and consumer markets within the next 2â4 years. Would you like deeper insight into any specific verticalâs go-to-market strategy?