fb

Holistics vs Domo: AI-Powered BI Comparison

Compare Holistics and Domo for AI-powered business intelligence. See which tool is better for your data team.
LAST UPDATED August 28, 2025
AUTHOR Holistics Team

Feature-by-Feature Comparison Table

Scroll to the right to see more
Dimension
Holistics logo Holistics
Domo logo Domo
Demo Playground
Learn more

Availability and quality of demo playground for testing the tool before purchase.

Demo Playground
Available
Free 14-day trial with sandbox demo environment for evaluation. source 1 , source 2 , source 3
30-Day Free Trial
Full platform access for unlimited users with onboarding support and self-service education. source 1 , source 2
Pricing Structure
Learn more

Pricing model and cost structure of the BI tool.

Pricing Metric
Feature Tier
Feature-tier pricing with user-based licensing and usage-based for embedded. source 1 , source 2
Consumption-Based Credit System
Pay for what you use with credit system and base user fee starting at $750/year per user. source
Pricing Estimate
$9,000+/year
Entry plan starts at $800/month. Enterprise plans available for larger teams. source
$50,000-200,000/year
Small businesses $30,000/year, enterprise-level organizations can exceed $100,000 annually. source
Visualizations
Learn more

Chart and visualization capabilities of the tool.

Built-in Visualizations
40+ Chart Types
Preview
Native chart types with Canvas Dashboard for free-form narrative reports. source 1 , source 2 , source 3
150+ Native Chart Types
Over 150 native chart types including pie, line, bar charts, maps, scatter plots, and Gantt charts. source
Custom Visualizations
Vega & Vega-Lite
Preview
Custom visualizations via Vega and Vega-Lite integration with Highcharts support. source 1 , source 2
Extensive Customization
Customize visuals and dashboards with no-code design approach for personalized layouts and themes. source
Custom Styling
Custom Theming
Comprehensive theming with custom CSS for brand alignment and styling. source
Personalized Branding
Extensive custom styling and branding with user-friendly no-code design interface. source
Data Storytelling & Annotations
AI Narratives & Annotations
GenAI data stories (Alpha) with manual chart annotations and text blocks. source 1 , source 2
AI-Enhanced Data Stories
Conversational AI (AI Chat) for natural language questions and automated alerts for key data changes. source
Ease of Use & Self-Service
Learn more

How user-friendly and self-service oriented the tool is for non-technical users.

Drilldown & Cross Filtering
Interactive Dashboards
Drilldown, cross-filtering, and drill-through with dynamic date granularity. source 1 , source 2 , source 3
Interactive Data Exploration
Interactive dashboards with filters and customizable views for intuitive data analysis. source
Search & Discovery
Search & Discovery
Keyword search, filtering, bookmarking, and tagging for content organization. source 1 , source 2
AI-Driven Data Exploration
AI Chat for natural language questions and instant actionable insights through conversational AI. source
Built-in Calculation
1-Click Calculations
Preview
Native support for PoP, moving calculations, percent of total, and statistical operations. source 1 , source 2 , source 3 , source 4
No explicit built-in calculation features mentioned in documentation. source
Ease of Report Building
Canvas Dashboard
Preview
Drag-and-drop interface for creating charts and arranging visuals on free-form canvas. source 1 , source 2 , source 3
No explicit report building features mentioned in documentation. source
AI-Assisted Data Analytics
AI Chat Interface
Preview
Natural language queries with AI assistant for data exploration and insights. source
No explicit AI-assisted analytics features mentioned in documentation. source
Data Delivery
Learn more

How data and reports are delivered to end users.

Alerts & Subscriptions
Alerts & Subscriptions
Data alerts and scheduled subscriptions via Email, Slack, and SFTP. source 1 , source 2 , source 3
Automated Alerts
Automated alerts for key data changes to keep users updated on important information. source
Sharing & Distribution
Secure Sharing
Internal RBAC sharing and external distribution with multiple export formats. source
No explicit sharing or distribution features mentioned in documentation. source
Embedded Analytics
Learn more

Capabilities for embedding analytics into other applications.

Embedding Mechanism
Iframe + API
Basic dashboard embedding and self-service embedding for report creation. source
Embedded Analytics
Embed analytics into any application, portal, or website to extend data reach and deliver insights. source
White-Labeling
Custom Theming
Visual customization with custom CSS for client-ready embedded analytics. source 1 , source 2
Custom Branding
White-labeling and custom theming for embedded content to reflect brand's look and feel. source
Embedded Report Builder
Self-Service Embedding
Embedded users can create and edit their own reports and dashboards. source
Self-Serve Analytics
Simple drag-and-drop tools for teams to create visualizations within embedded content. source
Reliability & Performance
Learn more

System reliability, performance optimization, and monitoring capabilities.

Query Optimisation
Smart Caching & Pushdown
Smart caching, query pushdown, pre-aggregations, and high-performance streaming engine. source 1 , source 2 , source 3 , source 4
No specific information on query optimization, caching, pushdown, or pre-aggregation mentioned. source
Monitoring & Alerting
Performance Monitoring
Preview
Jobs monitoring dashboard, usage monitoring, and error alerts via email. source 1 , source 2 , source 3
Automated Alerts
Automated alerts for key data changes, but no explicit freshness indicators or error alerts mentioned. source
Semantic Modeling
Learn more

Data modeling and semantic layer capabilities.

Semantic Layer
Data Modeling Layer
Preview
Centralized semantic layer for consistent metrics, KPIs, and business definitions. source 1 , source 2
No explicit semantic layer or consistent metrics enforcement mechanisms mentioned in documentation. source
Git Version Control
Native Git Control
Preview
Native Git version control for models and dashboards with standard development workflows. source 1 , source 2
No information about Git version control for managing semantic models or BI artifacts mentioned. source
Automated Metadata Sync
dbt Metadata Sync
Preview
Integrates with dbt to sync metadata from manifest.json to BI layer. source 1 , source 2
No explicit automated metadata synchronization from dbt or data warehouses mentioned. source
Analytics-as-Code
Analytics as Code
Preview
AML/AMQL DSL for defining BI artifacts with CI/CD workflows and version control. source 1 , source 2 , source 3
No information about defining dashboards or models in YAML/DSL formats or CI/CD workflows mentioned. source
Security and Governance
Learn more

Security features and governance capabilities.

Access Control
RBAC & SSO
Role-based access control with RLS/CLS and SSO integration via SAML. source 1 , source 2 , source 3 , source 4
Enterprise-Level Security
Enterprise-level security, compliance, and governance with SSO and encryption capabilities. source
Audit & Compliance
SOC2 Type II & GDPR
SOC2 Type II certified with GDPR/CCCP compliance. Audit logs for user actions and data access via SFTP/SQL export. source 1 , source 2 , source 3 , source 4
No explicit audit compliance features mentioned in documentation. source
Data Masking & Encryption
Column Security & AES
Column-level security for data masking. AES encryption for credentials, decrypted only in memory during queries. source 1 , source 2
No explicit data masking or encryption features mentioned in documentation. source
Monitoring & Logging
Built-in Monitoring
Usage monitoring, activity logs, and job monitoring dashboard. Export audit logs for external SIEM integration. source 1 , source 2 , source 3
No explicit monitoring or logging capabilities mentioned in documentation. source

Community Discussions

Discover what other practitioners are discussing about this topic.

r/analytics
Posted on April 2025 View source
What is the future of Business Intelligence? What should I expect in the next 5 years?
Whats the future of Business Intelligence gonna look like in the next 5 years im kinda curious but also confused like will BI tools get smarter or just more complicated how much will AI and automation actually change the game can we expect Business Intelligence to predict trends before they happen or is that just hype and what about data privacy with all these new techs coming up should we be worried also will small businesses finally get access to pro-level Business Intelligence without needing a PhD to understand it or is it gonna stay expensive and elite im really wondering if anyone else feels both excited and a bit nervous about where BI is headed.
okay-caterpillar April 2025

Generative AI has gotten pretty good at descriptive analytics. i recently tried Gemini in Looker and as long as the tables had descriptive column names, it did a great job answering business questions that my stakeholders usually will go to a dashboard for.

I've been in analytics for 16 years, I have used most top models for interacting with data on the analytics maturity spectrum by now. Any job where the core KRA is building dashboards/ reports is already at risk as long as there's an appetite in your company to use AI.

okay-caterpillar April 2025

It's garbage in garbage out process. If the underlying table has false/no data description or column names or misleading column names, it's set to come up with incorrect insights. No surprises there and it's more of a data problem than a Gen AI problem.

Reg: first layer, that's what I meant with the descriptive analytics. I've had a bit of success having AI explain what contributed to a spike or drop in a kpi but then I made sure proactively that it had access to data needed to derive that.

It's not able to do exploratory analysis...yet but we've barely crossed 2 years and the capabilities multiplied rapidly. It's just a matter of time it does a decent job on exploratory analysis and once that is accomplished, predictive analytics wouldn't be a far-fetched dream.

Having said this, it's a lot dependent on human governance (prompting, supplying credible data etc.) but those wouldn't be limited to just analysts. Anyone would be able to use natural language to interact with data.

r/BusinessIntelligence
Posted on June 2025 View source
Anyone using AI in Business Intelligence?
Show more
LessWerewolf June2025

Yes, mostly I use it for refining my SQL queries or to see what are the different ways in which I can solve the same problem. It's quite helpful in that sense.

I also use it to review queries of my juinor team members. To see if I may have missed out on anything. It helps with that extra set of eyes at times.

And to create documentation for dashboards/reports.

I also use it to ask questions which I can use in stakeholder meetings for requirement gathering. For eg, I explain the context of the meeting and then ask the AI to roleplay with regards to what questions I should be asking in that specific meeting. Helps me prepare and also helps understand perspectives from different POVs.

r/BusinessIntelligence
Posted on March 2025 View source
So has your company actually embraced AI for BI and analytics, or naw?
The C-suite constantly goes on and on about how we're AI-first, etc., but the rubber doesn't seem to meet the road. We have some AI resources like CoPilot on top of MS Office, Salesforce Agent Force, and some people are using their own personal AI accounts -- just curious -- how has it been where you work?
sjjafan March 2025

My guess is that the bulk of the companies are just bull$#!7ing with the buzzword. To successfully introduce AI into your BI, you need clean orderly data.


Go ahead and tell me the last time everyone cheered when the data governance team came through the door.

People mostly rool their eyes and crawl into a ball.

jdsmn21 April 2025

So - C suite seems to think AI can “answer all their questions”.
So I respond with “what are the questions you are wondering? I can pull data, schedule reports, to your inbox, or build live dashboards with graphs in any color of the rainbow!” - which is usually met with blank stares.
That’s why I know AI isn’t worth the trouble. It’s a solution to a problem we don’t have.

r/BusinessIntelligence
Posted on July 2024 View source
Has anyone used any AI-powered BI tools? What was the experience like?
Not going to post them here but there has been a lot of 'chat with your data' apps recently.

I am not a professional analyst but I have use ChatGPT in the past to help me write SQL queries, so I can see some appeals with them, although I also can't imagine how these tools can deal with the messy nature of badly maintained tables with duplicated names and nonsensical field names etc.

I also see some of these tools advocate for dynamically generated dashboards (since you can just ask questions to drill down etc.) though in my experience I don't usually need to adjust the dashboard often.

I am curious if anyone here has used these tools? What was the experience like?
jallabi July 2024

Some of the tools are getting better, but I can't help but think they still aren't really solving a problem.

If you're technically minded with some experience in data, then none of them are doing anything better/faster than what you can do with SQL or a BI tool.

If you're on the business side, they still aren't good enough because as the other poster said, you are reliant on a semantic layer so it's not that much better/faster than asking someone for a new dashboard.

vroomx July 2024

The only way these tools can be halfway effective is if they sit on top of a well manicured semantic layer. I also think that the real winner will be the platform that figures out how to invoke an action from the insight. I.e. the analysis picks up on repeat customers and be able to recommend an action to take for those customers and then kick off the process with a simple push of a button …or if the action is low risk enough to do it automatically.

r/BusinessIntelligence
Posted on Feb 2025 View source
Who is actually using AI + BI tools like Thoughtspot, Zenlytic, etc. ?
Bombarded nonstop with talk of AI everything, and a couple of case studies here and there with small companies that I've never heard of. Even Databricks, one of the big guys, keeps mentioning the same customer (Sega) whenever they talk about their BI genie.

So my question is - who is actually using this stuff? Is anyone?

Second question - if you or your company use any of these tools - when did you start using them? How has the experience been so far?
beck_rad Feb 2025

I seriously think that at the end of the day maybe 1% or less of companies at any given point are at a data maturity stage where they could truly leverage cookie-cutter BI-AI solutions. The rest of us are still cleaning up messy data and figuring out what the proper business logic is.