metriql VS cube.js

Compare metriql vs cube.js and see what are their differences.

metriql

The metrics layer for your data. Join us at https://metriql.com/slack (by metriql)
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metriql cube.js
7 86
284 17,120
0.4% 1.1%
1.9 9.9
about 1 year ago about 17 hours ago
Kotlin Rust
Apache License 2.0 GNU General Public License v3.0 or later
The number of mentions indicates the total number of mentions that we've tracked plus the number of user suggested alternatives.
Stars - the number of stars that a project has on GitHub. Growth - month over month growth in stars.
Activity is a relative number indicating how actively a project is being developed. Recent commits have higher weight than older ones.
For example, an activity of 9.0 indicates that a project is amongst the top 10% of the most actively developed projects that we are tracking.

metriql

Posts with mentions or reviews of metriql. We have used some of these posts to build our list of alternatives and similar projects. The last one was on 2023-03-05.
  • Getting started with a metrics store
    2 projects | dev.to | 5 Mar 2023
    Some of the companies that operate in space are Cube Dev; Transform(currently acquired by dbt); metriql. See more companies at https://www.moderndatastack.xyz/companies/metrics-store.
  • Launch HN: Hydra (YC W22) – Query Any Database via Postgres
    4 projects | news.ycombinator.com | 23 Feb 2022
    Presto is pretty successful but its focus is to be distributed query engine, not a proxy layer for the existing query engines. We use Trino ( formerly Presto) as our query layer and do something similar to Hydra at Metriql [1] with a fairly different use-case. Data people provide a semantic layer with the mecrics and expose them to 18+ downstream tools.

    [1]: https://metriql.com

  • How do you separate ML from analytics in your data pipeline?
    1 project | /r/dataengineering | 16 Feb 2022
    This is why metrics store tooling have started appearing recently (e.g. TransformData, SuperGrain, Metriql, dbt Metrics) - to solve the problem of this table / metric disorganization across an org's data landscape.
  • Open source Business intelligence platform made with Python
    7 projects | news.ycombinator.com | 28 Nov 2021
    We're using Superset to enable our analysts to explore our clients' SEM/SEO/analytics data. It also posts alerts to Slack when, say, the daily session count of a website isn't what was expected given the historical data.

    Yeah, it's a little rough to get going, but once it is, we've found it to be a really powerful (and actively developed!) BI tool. It's even better with dbt + MetriQL [0], which can automatically sync Superset's dataset metadata directly with properties you set up in dbt.

    Adding custom visualizations is much harder than it should be, but they're very much aware of that, and working to address it. Their Slack community is super-helpful, too.

    [0]: https://metriql.com

  • Show HN: Low-Code Metrics Store
    2 projects | news.ycombinator.com | 8 Sep 2021
    As a current Looker power-user, this looks really solid.

    One thing I’m not sure about though: can you use the metrics outside of the native tool, and if so how?

    That is, I see Looker as a BI tool, not a metrics layer, since you mainly use the metrics you define inside Looker, not in other tools. On the other hand, something like MetriQL[0] is a pure metrics layer that can supposedly be used anywhere.

    Is this both? If so, some better documentation around how to use the metrics layer would be helpful (or maybe I just didn’t look in the right place).

    [0] https://metriql.com/

  • Notes on the Perfidy of Dashboards
    2 projects | news.ycombinator.com | 27 Aug 2021
    3. Define metrics in one place on top of your data models and expose the metrics to all the data tools. (This layer is new, and we're tapping it at https://metriql.com)
  • Launch HN: Evidence (YC S21) – Web framework for data analysts
    4 projects | news.ycombinator.com | 25 Aug 2021
    We use BSL license and metriql is free with a single database target. If you want to connect multiple dbt projects in a single deployment, you need to go through the sales cycle.

    We work with ETL vendors that use metriql to make revenue with our BI tool integrations so we picked BSL license to be able to structure our business model in a way that you should be required to pay only if you're reselling metriql to your customers.

    You can find the license here: https://github.com/metriql/metriql

cube.js

Posts with mentions or reviews of cube.js. We have used some of these posts to build our list of alternatives and similar projects. The last one was on 2024-04-07.
  • MQL – Client and Server to query your DB in natural language
    2 projects | news.ycombinator.com | 7 Apr 2024
    I should have clarified. There's a large number of apps that are:

    1. taking info strictly from SQL (e.g. information_schema, query history)

    2. taking a user input / question

    3. writing SQL to answer that question

    An app like this is what I call "text-to-sql". Totally agree a better system would pull in additional documentation (which is what we're doing), but I'd no longer consider it "text-to-sql". In our case, we're not even directly writing SQL, but rather generating semantic layer queries (i.e. https://cube.dev/).

  • Show HN: Spice.ai – materialize, accelerate, and query SQL data from any source
    5 projects | news.ycombinator.com | 28 Mar 2024
    I'm not too familiar with https://cube.dev/ - but my initial impression is they are focused more on providing APIs backed by SQL. They have a SQL API that emulates the PostgreSQL wire protocol, whereas Spice implements Arrow and Flight SQL natively. Their pre-aggregations are a similar concept to Spice's data accelerators. It also looks like they have their own query language, whereas Spice is native SQL as well.
  • Show HN: Delphi – Build customer-facing AI data apps (that work)
    1 project | news.ycombinator.com | 22 Mar 2024
    Hey HN!

    Over the past year, my co-founder David and I have been building Delphi to let developers create amazing customer-facing AI experiences on top of their data. We're excited to share it with you.

    David and I have spent our careers leading data and engineering teams. After ChatGPT got popular, we saw a rush of "chat with your data" startups launch. Most of these are "text-to-SQL" and use an LLM like GPT-4 to generate SQL queries that run directly against a data warehouse or database.

    However, the general perception now is most of them make for nice demos but are hard to make work in the real world. The reason is data complexity. Even smart LLMs find it difficult to reason about messy databases with hundreds of tables, thousands of columns, and complex schemas that have been built up piece-meal for years. Text-to-SQL can be a fine dev tool for data scientists and analysts, but we've seen many organizations hesitate to deploy it to end users, who never know if the answer they get one day will be the same the next.

    David and I found a better way. From our time in the data engineering world, we were familiar with a type of tool called "semantic layers." Think of them like an ORM for analytics. Basically, they sit between databases (or data warehouses) and data consumers (data viz tools like Tableau or APIs) and map real-world concepts (entities like "customers" and metrics like "sales") to database tables and calculations.

    Semantic layers are often used for "embedded analytics" (e.g. when you're building customer-facing dashboards into your application) but are increasingly also used for traditional business intelligence. Cube (https://cube.dev) is a prominent example, and dbt has also recently released one. They're useful because with a semantic layer, the consumer doesn't have to think about questions like "how do we define revenue?" when running a query. They just get consistent, governed data definitions across their business.

    We realized that semantic layers could be just as useful for LLMs as for humans. After all, LLMs are built on natural language, so a system that deterministically translates natural language concepts into code has obvious power when you're working with LLMs. With a semantic layer, we've found that companies can get AI to answer much more complex questions than without it.

    For a year now, we've been building Delphi to do just that. We've gone through a few iterations/pivots (initially we were focused on building a Slack bot for internal analytics) and are now seeing our developer-first approach resonate. We're being used to power customer-facing fintech applications, recruiting software, and more.

    How do you use Delphi? The first step is connecting your database; then, we build your semantic layer on top of it. Right now we do this manually, but we're moving more and more of it over to AI. Once that's done, we have 3 main ways of using Delphi: 1) white-labeling our AI analytics platform and providing it to your customers; 2) a streaming REST API and SDKs; and 3) React components to easily drop a "chat with your data" experience into your app.

    If this is interesting to you, drop us a line at [email protected] or sign up at our website (https://delphihq.com) to get in touch. Thanks for reading! Would love to hear any thoughts and feedback.

  • Apache Superset
    14 projects | news.ycombinator.com | 26 Feb 2024
    We use https://cube.dev/ as intermediate layer between data warehouse database and Superset (and other "terminal" apps for BI like report generators). You define your schema (metrics, dimensions, joins, calculated metrics etc) in cube and then access them by any tool that can connect to SQL db
  • Need to reduce costs - which service to use?
    1 project | /r/dataengineering | 5 Dec 2023
    also check out cube.dev. they can do the semantic layer and cache it so you are not hitting Snowflake all the time.
  • Anyone with experience moving to Cube.dev + Metabase/Superset from Looker ?
    1 project | /r/BusinessIntelligence | 3 Dec 2023
    We need metrics to live in source control with reviews. Metabase doesn't have a git integration for metrics, which is why we are convinced to use cube.dev as a semantic layer.
  • GigaOm Sonar Report Reviews Semantic Layer and Metric Store Vendors
    1 project | news.ycombinator.com | 8 Sep 2023
    https://github.com/cube-js/cube comes out very well at the end as a promising open source system, getting rather close to the bullseye. Would love to know more & hear people's experience with it.
  • Show HN: VulcanSQL – Serve high-concurrency, low-latency API from OLAP
    4 projects | news.ycombinator.com | 5 Jul 2023
    How is this different from something like https://cube.dev/
  • Best Headless Chart Library?
    2 projects | /r/reactjs | 29 May 2023
    Have a look to cube.js
  • Advice / Questions on Modern Data Stack
    1 project | /r/dataengineering | 20 May 2023
    For now, I've been thinking on using self-hosted Rudderstack both for ingestion and reverse ETL, cube.dev as the abstraction later for building webapps and providing catching for the BI layer, and dbt for transformations. But I have doubts with the following elements:

What are some alternatives?

When comparing metriql and cube.js you can also consider the following projects:

evidence - Business intelligence as code: build fast, interactive data visualizations in pure SQL and markdown

Apache Superset - Apache Superset is a Data Visualization and Data Exploration Platform [Moved to: https://github.com/apache/superset]

steampipe - Zero-ETL, infinite possibilities. Live query APIs, code & more with SQL. No DB required.

Elasticsearch - Free and Open, Distributed, RESTful Search Engine

mlcraft - Synmetrix – open source semantic layer / Boost your LLM precision

Redash - Make Your Company Data Driven. Connect to any data source, easily visualize, dashboard and share your data.

examples - Example apps and instrumentation for Honeycomb

Druid - Apache Druid: a high performance real-time analytics database.

csv-metabase-driver - A CSV metabase driver

Metabase - The simplest, fastest way to get business intelligence and analytics to everyone in your company :yum:

Multicorn - Data Access Library

GoAccess - GoAccess is a real-time web log analyzer and interactive viewer that runs in a terminal in *nix systems or through your browser.