

Toad Data Point and dbt are products in the data analytics and transformation category. Toad Data Point has an upper hand in data preparation and connectivity, whereas dbt is superior in data transformation and modeling within the modern data stack.
Features: Toad Data Point offers extensive data connectivity options, visual data preparation, and automation capabilities. dbt provides a modular transformation framework, efficient management of complex data transformations, and comprehensive documentation tools.
Ease of Deployment and Customer Service: Toad Data Point features on-premise deployment demanding IT infrastructure alignment and provides comprehensive resource materials for support. dbt, with cloud-native deployment, integrates seamlessly with cloud platforms and offers robust community resources and enterprise support for cloud-centric organizations.
Pricing and ROI: Toad Data Point has higher setup costs but can deliver significant ROI if fully utilized. dbt requires a lower initial investment, offering compelling ROI particularly for specialized data transformation tasks, with greater cost-effectiveness when capabilities align with organizational needs.
There is operational efficiency achieved, and data quality and governance have also been achieved with modular SQL and version controlling, which reduced duplication of data and data errors.
I have seen a return on investment as it means we don't have to employ as many people.
Since we migrated from SSIS to dbt model architecture, it takes around four hours only to complete a full refresh.
If they contain duplicate counts or null records or improper data, those records would not be reliable.
Financially, I understand that teams often see a return on investment of one hundred percent plus annually from Toad Data Point through time savings and tool consultation;
If you type your question, you will likely find that someone has already asked it, so we do not need to contact their support directly.
I would rate the technical support a nine out of ten.
We ran dbt Core, which is open-source, so there is no direct vendor support.
The quality of their support is excellent, and the speed is very good, too.
They resolved my issue within a day which was specifically around licensing.
Overall, the service is excellent.
The bottlenecks that we have are not coming from dbt; they are coming from Snowflake.
We were processing large volumes of financial documents, hundreds of trial balances, balance sheets, and invoice sets, and dbt handled the transformation layer without issues.
dbt is quite scalable since it has its own feature set for incorporating business logic.
It does not scale well when considering the high cost of the Mac license.
Some aspects, like scalability, could be improved to avoid writing different codes for each database.
Scalability has not been an issue because so far we have dumped about a billion records per year, and I do not see any issues as such.
Comparing it to tools I have seen in the past, such as Informatica and Alteryx, dbt can easily match up to that rating, specifically for stability.
Every upgrade is a little bit of a risk for us because we do not know if the workarounds that we developed will be available for the next version.
When I conduct dbt tests, the data processed in the data warehouse performs exactly as expected.
I often feel instability locally because it is a heavy application, and I feel some slowness in the response of the user interface.
Improvement is needed in the tool itself in terms of the copilot, in terms of covering outages, in terms of testing, and in terms of quality reasons related to governance and collaboration.
The whole data testing field is not very mature. It is not the same as software testing; for example, you have test suites, test tools, and profilers, but for data testing, it is not yet that advanced.
dbt does not have a native concept of multi-tenant or multi-standard project organization.
Better data visualization tools, improved integrations with modern tools, and enhanced collaboration features such as shared query libraries and real-time collaborations would be beneficial.
Toad Data Point should include more features for utilizing AI, which can automatically perform many tasks.
The application is heavy on my local PC; however, if I connect to a remote server, I think it works better.
The course content that dbt provides is free and excellent for anyone starting out.
dbt is open source for its core modules.
I mentioned the cost as one of the advantages, specifically the license cost.
The Mac licenses are expensive, costing 1,600 dollars each.
The pricing for Toad Data Point is where it gets into trouble.
The pricing is cost-effective; it is neither too cheap nor too expensive, it's a good value.
dbt has positively impacted my organization by allowing us to create our data pipelines much faster, going from ingestion of data to creating a data product in weeks instead of months.
There are the benefits of having code, so you have a software development lifecycle; you can use version control, testing, and documentation.
The tests, especially custom tests for financial data like validating that debits equal credits, caught a lot of our data quality issues early.
I am able to have cross-connection queries, blend and join data from multiple different databases in a single query, with data profiling, automation and scheduling, and export and reporting tools.
I utilize automations in my database with Ansible automations, performing automation data processing units and deployment, which has a positive impact, increasing efficiency and reducing human error, as well as saving time, thus improving productivity and scalability compared to human errors.
There is a feature called Toad Automation, which is a valuable tool.
| Product | Mindshare (%) |
|---|---|
| dbt | 1.4% |
| Toad Data Point | 0.8% |
| Other | 97.8% |


| Company Size | Count |
|---|---|
| Small Business | 2 |
| Midsize Enterprise | 3 |
| Large Enterprise | 6 |
| Company Size | Count |
|---|---|
| Small Business | 2 |
| Midsize Enterprise | 1 |
| Large Enterprise | 6 |
dbt is a transformational tool that empowers data teams to quickly build trusted data models, providing a shared language for analysts and engineering teams. Its flexibility and robust feature set make it a popular choice for modern data teams seeking efficiency.
Designed to integrate seamlessly with the data warehouse, dbt enables analytics engineers to transform raw data into reliable datasets for analysis. Its SQL-centric approach reduces the learning curve for users familiar with it, allowing powerful transformations and data modeling without needing a custom backend. While widely beneficial, dbt could improve in areas like version management and support for complex transformations out of the box.
What are the most valuable features of dbt?
What benefits should you expect from using dbt?
In the finance industry, dbt helps in cleansing and preparing transactional data for analysis, leading to more accurate financial reporting. In e-commerce, it empowers teams to rapidly integrate and analyze customer behavior data, optimizing marketing strategies and improving user experience.
Toad Data Point offers a user-friendly platform for streamlined database management, providing effective tools for data integration and analysis across multiple databases.
With a focus on enhancing database management efficiency, Toad Data Point facilitates smooth SQL querying and data preparation for organizations. Its seamless integration with different databases like Oracle, DB2, and MySQL allows for effective data analysis and workflow automation. Users benefit from drag-and-drop query building and AI-assisted analysis, enhancing productivity while enabling data-driven decision-making.
What are the key features of Toad Data Point?In industries requiring extensive data analysis and reporting, Toad Data Point is deployed to streamline operations. Businesses engage it for SQL queries, data preparation, and cross-database analysis, which are critical for sectors reliant on accurate data and timely insights.
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