Qrvey is the only solution for embedded analytics with a built-in data lake. Qrvey saves engineering teams time and money with a turnkey solution connecting your data warehouse to your SaaS application.
Qrvey’s full-stack solution includes the necessary components so that your engineering team can build less.
Qrvey’s multi-tenant data lake includes:
Qrvey’s embedded visualizations support everything from: - Standard dashboards and templates - Self-service reporting - User-level personalization - Individual dataset creation - Data-driven workflow automation
Qrvey delivers this as a self-hosted package for cloud environments. This offers the best security as your data never leaves your environment while offering a better analytics experience to users.
The result: Less time and money on analytics.
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Qrvey's answer:
Product Leaders that include Product Management and Engineering Teams and CEO/CTO/CPOs of B2B SaaS Companies
Qrvey's answer:
Qrvey takes a different approach to embedded analytics. Instead of focusing almost completely on the front end, we know that any analytics function starts with data.
Qrvey includes a full-featured data lake powered by Elasticsearch, not a basic relational caching layer. Furthermore, by including a data lake, the cost to scale out is much less than traditional data warehouses.
For the user-facing components of the platform, Qrvey offers more embedded components and APIs to personalize the experience beyond static dashboards. Qrvey offers:
All of this is backed by a semantic layer that makes integrating Qrvey into the security model of SaaS applications simple.
Qrvey's answer:
Customers choose Qrvey for the following reasons:
Based on our record, Userlist should be more popular than Qrvey. It has been mentiond 8 times since March 2021. We are tracking product recommendations and mentions on various public social media platforms and blogs. They can help you identify which product is more popular and what people think of it.
My first thought is that Userlist is already doing email automation for B2B SaaS, so what makes you different, my brave incumbent? Are you targeting a more niche audience than Userlist? Are you solving a problem they aren't? Source: about 1 year ago
- As far as integrating 3rd party APIs: Like most things in software, the answer is "it depends". For example, we're using contentful as the CMS for article pages on our site - for now, that implementation is fairly straightforward, and just added into the next.js package in our turborepo. We're using several external APIs for other things, including Userlist, and Stripe (probably-not-needed disclaimer: I used to... Source: about 1 year ago
Userlist (https://userlist.com/) is specifically built for SaaS automation and handling billing lifecycle-type efforts. Source: about 1 year ago
My vote goes more to userlist.com, but depending I guess on how you collect the data. Source: over 1 year ago
I want to use Zapier to sync data from other sources (like Userlist) into Segment. Has anyone done this before and can give some insight as to how difficult this is, and what would be the best place to find someone who can develop such a connection? Source: over 1 year ago
Since you're on AWS already, check out https://qrvey.com. Source: 7 months ago
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