Team
Avianya AI
Project Concept
No description has been added yet.
Entry
Status: Not Started
Team Roster
Message board not available for this team yet.
Prasad Hajare Team Lead RSVP Approved
Founder at Avianya AI Pvt Ltd
Prasad Hajare is the Founder of Avianya AI, an AI-powered conversational automation platform for WhatsApp, RCS, and SMS. He is currently leading projects involving marketing automation, CRM workflows, and official WhatsApp API integrations. Prasad's technical expertise includes Flutter/Dart for mobile, Python (Flask) for backend services, and applied ML for conversational features. He has also built invoice risk prediction models using stacking ensembles and LightGBM with D3.js dashboards. Prasad has 3 years of experience and his education includes institutions like Great Lakes Institute of Management and G.H. Raisoni College of Engineering. He is looking for investors and is open to introductions.
Hiring, GTM, investors, conversational AI, WhatsApp API integration, marketing automation, CRM workflows, Flutter/Dart development, Python backend services, applied machine learning, RCS and SMS automation.
Currently leading Avianya AI, an AI-powered conversational automation platform for WhatsApp, RCS, and SMS. The project involves building marketing automation, CRM workflows, and official WhatsApp API integrations. Technical work includes leveraging a stack of Flutter/Dart for mobile, Python (Flask) for backend services, and applied ML for conversational features. Previous tactical work includes building invoice risk prediction models using stacking ensembles and LightGBM with D3.js dashboards.
d******r@a**********m RSVP Approved
Prasad Hajare, founder of Avianya AI, is a hands-on builder with a strong ML research background. He leads the development of a multi-channel AI platform integrating WhatsApp, RCS, SMS, and Meta Ads, demonstrating significant engineering leadership and product shipping experience.
Building Avianya AI, a multi-channel platform integrating WhatsApp API, RCS, SMS, Meta Ads, and native AI agents. The technical architecture involves managing over 180 APIs to bridge machine learning research with market-ready AI product delivery.