-
1 Comment
From a valuation standpoint, the stock is 57.7% cheaper than other stocks from the Technology sector with a price to sales ratio of 10.7.
Based on the above factors, Sprinklr, Inc gets an overall score of 1/5.
Sector | Technology |
---|---|
Industry | Software - Application |
Exchange | NYSE |
CurrencyCode | USD |
ISIN | US85208T1079 |
Beta | 0.77 |
---|---|
Market Cap | 2B |
PE Ratio | 17.64 |
Target Price | 10 |
Dividend Yield | None |
Sprinklr, Inc. provides enterprise cloud software products worldwide. The company operates Unified Customer Experience Management platform, a software that enables customer-facing teams to collaborate across internal silos, communicate across digital channels, and leverages AI to deliver customer experiences. Its products include Sprinklr Service, a suite of artificial intelligence (AI) based products and solutions that unifies customer service across voice, digital, and social channels; Sprinklr Social, a suite of AI-powered products and solutions that unifies social media publishing, engagement, and analytics across various channels; Sprinklr Insights, a suite of AI-based products and solutions that delivers consumer intelligence and helps to manage customer feedback; and Sprinklr Marketing, a suite of AI-based products and solutions that unifies content production and content lifecycle management with paid campaigns across various channels. The company also provides professional, implementation, managed, training, and consultancy services. Sprinklr, Inc. was founded in 2009 and is headquartered in New York, New York.
Learn MoreHere's how to backtest a trading strategy or backtest a portfolio for CXM using our backtest tool. PyInvesting provides the backtesting software for you to backtest your investment strategy. Our backtest software is written using Python code and allows you to backtest stock, backtest etf, backtest options, backtest crypto and backtest forex online. Our backtesting Python framework is highly robust and gives you a realistic simulation of how your strategy would have performed in the past using backtest data.
© PyInvesting 2025