News Room

OpsLyft raises $500k in seed funding from unicorn founders, Anand Chandrasekaran, and marquee angels from Freshworks, Oyo, Innovaccer, and others

OpsLyft, a San Francisco and Noida-based DevOps startup, has raised $500k in seed funding from unicorn founders, Anand Chandrasekaran, and marquee angels from Freshworks, Oyo, Innovaccer, other angel investors based in India and the US. The list of angel investors includes Anand Chandrasekaran, former Executive VP, Five9 and former CPO @ Snapdeal, Shailendra Singh, board member, MarketsandMarkets, Rajesh Yabaji, Co-Founder & CEO, Blackbuck; Ravish …

OpsLyft raises $500k in seed funding from unicorn founders, Anand Chandrasekaran, and marquee angels from Freshworks, Oyo, Innovaccer, and others Read More »

This startup helps enterprises save on cloud spends and tech infrastructure

Noida-based OpsLyft is a DevOps focussed technology startup that allows enterprises to effectively monitor their spends on cloud and usage of infrastructure to enable better return on investments. A D2C soonicorn saved around Rs 30 lakh on its infrastructure technology spends and a healthcare focussed unicorn bought down costs on its cloud platforms from double …

This startup helps enterprises save on cloud spends and tech infrastructure Read More »

Get used to hearing about machine learning operations startups

Welcome to The TechCrunch Exchange, a weekly startups-and-markets newsletter. It’s inspired by the daily TechCrunch+ column where it gets its name. Want it in your inbox every Saturday? Sign up here.  Yeah, I’m struggling a little bit this Friday afternoon. If you aren’t in the United States, it’s a little hard to explain. In short, certain deficiencies in our …

Get used to hearing about machine learning operations startups Read More »

OpsLyft Recognized as One of The Top 6 MLOps Startups in 2021

In the wake of the pandemic, enterprises across the world have doubled down on artificial intelligence (AI) and machine learning to accelerate their digital journeys. The digitisation demand has called for new processes to split, train, test, develop, and deploy machine learning models. MLOps, or machine learning operations, is born out of this need.