Inside AI Day Bangalore: Unlocking the Future of AI, One Breakthrough at a Time

April 3, 2025

On 29th March 2025, GINSERV in Bangalore buzzed with excitement as E2E Cloud hosted another successful edition of AI Day—an immersive event that brought together AI professionals, enthusiasts, and innovators under one roof. Designed as a knowledge-sharing and networking platform, AI Day offered a full spectrum of inspiration: from hands-on AI use cases in manufacturing to voice tech for Bharat and the latest on accelerated computing.

Let’s dive into the key sessions and takeaways from the day.

Time Series AI – Predictive Asset Management in Manufacturing- Dr. Sivam Pillai, CTO, Zolnoi

Dr. Sivam Pillai opened the event with a deeply technical and business-relevant session on how AI is revolutionizing the way manufacturers handle equipment maintenance.

Key Highlights:

  • Predictive > Preventive: Dr. Pillai explained how traditional maintenance practices lead to unplanned downtime and increased costs. Predictive AI flips this by enabling real-time health monitoring using time-series data, IoT sensors, and machine learning models.
  • Zolnoi Platform: Their proprietary AI system processes electrical signatures and vibration patterns using a pipeline of AutoML, transformers, and statistical models to detect anomalies early and predict failures.
  • Real-World ROI: A tyre manufacturer using Zolnoi reported projected benefits of $80K+, 15% reduction in maintenance man-hours, and 3-5% savings in energy waste.
  • Use Cases Included:

    • Remaining Useful Life (RUL) prediction for gearboxes.
    • Correlation between machine health and product quality in flour milling.

Predictive maintenance isn't just smart—it's essential for reducing costs, improving safety, and extending asset life in Industry 4.0.

Building Voice AI Agents for Bharat Users- Mayuresh Anil Nirhali, SVP Engineering, Reverie Language Technologies

Mayuresh took the audience into the heart of India’s multilingual digital revolution. His session was a masterclass on how Voice AI can bridge the gap between tech and India’s 650 M+ non-English-speaking users.

Key Highlights:

  • Conversational AI for Governance & Enterprises: From multilingual IVRs to localized WhatsApp bots, Reverie is enabling citizen engagement and enterprise services in 12+ Indian languages.
  • End-to-End Tech Stack: Their stack includes STT (Speech-to-Text), TTS (Text-to-Speech), NLP/NLU, and Language Identification, tailored for Indic languages.
  • Success Stories:
    • JioMart and Decathlon implemented voice search in Hindi, Tamil, and English.
    • Jio Set-Top Box enabled with multilingual voice commands, handled 29 crore API calls.
    • Wadhwani AI used Reverie’s voices to localize educational videos.
  • Architectural Deep Dive: He shared tradeoffs between Chained, Multimodal, and Hybrid voice agent systems, highlighting Reverie's scalable and modular approach.

Voice AI for Bharat isn’t about translation—it’s about deep localization, emotion, and context. The future is conversational and inclusive.

Advancements in Accelerated Computing- Abhishek Upperwal, Founder, Soket AI

Abhishek closed the event with a tour through the bleeding edge of GPU and computing tech, essential for training and deploying next-gen AI models.

Key Highlights:

  • GPU Wars 2020-2025: Compared the Ampere (A100), Hopper (H100), and Blackwell (B100/B200) architectures. Blackwell takes the lead with dual-die GPUs, FP4 support, and up to 8 TB/s bandwidth.
  • DeepSeek V3 Optimizations: Shared cutting-edge techniques like FP8 mixed-precision, DualPipe pipeline parallelism, and Multi-Token prediction (MTP) that enable faster training and inference for massive LLMs.
  • Soket’s COOM Framework: A new training framework inspired by Deepseek to efficiently train large-scale language models, emphasizing sparse computation and memory optimization.
  • Community Building: Called developers to join Soket’s CUDA Discord and explore open-source tools like CUTLASS, Triton, and DeepEP for high-performance model training.

Accelerated computing is the engine powering AI’s future. Understanding the evolving GPU stack is crucial for scaling LLMs, transformers, and real-time AI applications.

The AI Day Experience

Beyond the talks, AI Day featured dynamic networking zones, and many hallway conversations that sparked new ideas and collaborations. Whether you're an AI practitioner or just starting, the event was a goldmine of insights and connections. 

From manufacturing floors to Indian households, from GPU stacks to language barriers, AI is reshaping every layer of our digital experience. And E2E Cloud, by bringing together such diverse minds, continues to be at the forefront of India’s AI ecosystem.

Stay tuned for the next edition. Until then—keep building, experimenting, and innovating.

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Reference Links

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https://medium.com/@jereminuerofficial/a-comprehensive-guide-to-deep-q-learning-8aeed632f52f

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How is GAUDI applied to the content?

The steps of application for GAUDI have been given below:

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  • This simple training process is then scaled to trajectories, thousands of them creating a large number of views. The model samples the radiance fields totally from the previous distribution that the model has learned.
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  • A novel de-noising optimization technique is used to find hidden representations that collaborate in modelling the camera poses and the radiance field to create multiple datasets with state-of-the-art performance in generating 3D scenes by building a setup that uses images and text.

To conclude, GAUDI has more capabilities and can also be used for sampling various images and video datasets. Furthermore, this will make a foray into AR (augmented reality) and VR (virtual reality). With GAUDI in hand, the sky is only the limit in the field of media creation. So, if you enjoy reading about the latest development in the field of AI and ML, then keep a tab on the blog section of the E2E Networks website.

Reference Links

https://www.researchgate.net/publication/362323995_GAUDI_A_Neural_Architect_for_Immersive_3D_Scene_Generation

https://www.technology.org/2022/07/31/gaudi-a-neural-architect-for-immersive-3d-scene-generation/ 

https://www.patentlyapple.com/2022/08/apple-has-unveiled-gaudi-a-neural-architect-for-immersive-3d-scene-generation.html

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