Monte Carlo Recognized as the #1 Data Observability Platform by G2 for Third Quarter in a Row
For the 3rd quarter in a row, Monte Carlo was named the #1 Data Observability Platform by G2. Find out why.
For the third consecutive quarter, Monte Carlo was named the #1 Data Observability Platform by product review site G2. And since G2 is powered by real user feedback and ratings, based on their day-to-day experience, this recognition is especially gratifying.
Our teams work hard to provide great experiences and improve real business outcomes, so we’re thrilled that our customers’ reviews earned us 15 Winter 2024 Awards, including Easiest to Do Business With, Most Implementable, and Best Estimated ROI.
We keep earning rave reviews because we never stop investing in helping teams operationalize data reliability workflows at scale. Over the last few months, we’ve launched new features like Performance, which helps teams optimize data pipeline performance and cost, and our Data Product Dashboard, which enables organizations to manage the data quality of assets powering critical applications.
Our customer success team goes beyond providing support to truly partner with our customers. We continually share best practices for observability and incident management — driving meaningful results and impactful business outcomes for their data teams. “Monte Carlo has been of the better value adds in our entire data platform,” said Sam Cvetkovski, Director of Data & Analytics at TOCA, a technology-enabled training experience for soccer players. “Data observability allowed us to eliminate data distrust and build a partnership with the business.”
Andy Owens, Vice-President of Analytics at omnichannel advertising company Kargo, agrees. “Data quality can be death by 1,000 cuts, but with Monte Carlo, we have meaningfully increased our reliability levels in a way that has a real impact on the business.”
Over the summer, our commitment to providing educational content for the wider data community never wavered, including our release with Wiley of the first-ever Data Observability for Dummies®. We were also delighted to be recognized as a Leader in the GigaOm Radar for Data Observability.
We’ve recently doubled down on our core partnerships, ensuring Monte Carlo integrates seamlessly with our customers’ favorite tools to provide as much value as possible across their entire tech stack. In late June, we were named as the only data observability solution to achieve Snowflake Elite Partner status. And our many shared customers with Databricks and Amazon can now access the Monte Carlo platform through the Databricks Partner Portal and the AWS Partner Marketplace, respectively. Partnerships like these make it easier than ever for data teams to discover, use, and benefit from our data observability platform.
If you can’t tell, we’re proud of the results our customers have achieved — and of our team’s hard work. On that note, we’re excited to announce 15 G2 Awards, including:
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#1 Overall, Data Observability
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Easiest to Do Business With, Database Monitoring (Enterprise)
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Best Estimated ROI, DataOps Platforms
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Leader, Database Monitoring (Enterprise)
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Most Implementable, Database Monitoring (Enterprise)
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Leader, Database Monitoring (Mid-Market)
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EMEA Momentum Leader
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Easiest Set Up
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Best Support
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Users Love Us (Earned more than 20x 4+ ⭐ reviews)
Want to hear exactly what our customers have to say? Check out our G2 reviews:
If you’d like to learn more about how data observability expedites data reliability at scale, reach out to Sydney and the rest of the Monte Carlo team!
Our promise: we will show you the product.
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