Unite.AI 05月10日 04:32
Top 10 AI Tools for Embedded Analytics and Reporting (May 2025)
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本文深入探讨了嵌入式分析工具市场,该市场在2024年已达到200亿美元,预计到2032年将增长至750亿美元。文章重点介绍了Explo、ThoughtSpot、Tableau Embedded、Power BI Embedded等领先的AI驱动的嵌入式分析工具,这些工具通过将交互式仪表板、报告和AI驱动的数据洞察直接集成到应用程序中,使用户无需切换到单独的BI工具即可访问分析。文章分析了这些工具的优缺点、定价模式,以及它们如何赋能企业实现自助数据访问和增强的AI功能,从而优化业务决策。

💡嵌入式分析通过将数据分析功能直接整合到应用程序中,使用户能够在熟悉的界面中访问数据洞察,从而提升了用户体验和效率。

🔍Explo、ThoughtSpot、Tableau Embedded和Power BI Embedded等工具,提供了不同的功能和优势,例如Explo的无代码构建器和白标功能、ThoughtSpot的自然语言搜索和SpotIQ AI洞察、Tableau的强大可视化和广泛的连接器、以及Power BI的Azure集成和AI视觉效果。

💰这些工具的定价模式各不相同,包括基于用户、容量和功能的定价,企业需要根据自身的需求和预算选择合适的工具,例如Explo提供免费的内部BI使用,Tableau则按用户收费,而Power BI则提供Azure容量定价。

📈AI在嵌入式分析中的应用,例如自然语言查询和自动化洞察,使得数据分析更易于访问,帮助企业实现自助数据访问,从而加速决策过程。

Embedded analytics refers to integrating interactive dashboards, reports, and AI-driven data insights directly into applications or workflows. This approach lets users access analytics in context without switching to a separate BI tool. It’s a rapidly growing market – valued around $20 billion in 2024 and projected to reach $75 billion by 2032 (18% CAGR).

Organizations are embracing embedded analytics to empower end-users with real-time information. These trends are fueled by demand for self-service data access and AI features like natural language queries and automated insights, which make analytics more accessible.

Below we review top tools that provide AI-powered embedded analytics and reporting. Each tool includes an overview, key pros and cons, and a breakdown of pricing tiers.

AI Tools for Embedded Analytics and Reporting (Comparison Table)

AI ToolBest ForPriceFeatures
ExploTurnkey, white-label SaaS dashboardsFree internal · embed from $795/moNo-code builder, Explo AI NLQ, SOC 2/HIPAA
ThoughtSpotGoogle-style NL search for data in appsDev trial free · usage-based quoteSpotIQ AI insights, search & Liveboards embed
Tableau EmbeddedPixel-perfect visuals & broad connectors$12–70/user/moPulse AI summaries, drag-drop viz, JS API
Power BI EmbeddedAzure-centric, cost-efficient scalingA1 capacity from ~$735/moNL Q&A, AutoML visuals, REST/JS SDK
LookerGoverned metrics & Google Cloud synergyCustom (≈$120k+/yr)LookML model, secure embed SDK, BigQuery native
SisenseOEMs needing deep white-label controlStarter ≈$10k/yr · Cloud ≈$21k/yrElastiCube in-chip, NLQ, full REST/JS APIs
QlikAssociative, real-time data exploration$200–2,750/mo (capacity-based)Associative engine, Insight Advisor AI, Nebula.js
Domo EverywhereCloud BI with built-in ETL & sharingFrom ~$3k/mo (quote)500+ connectors, alerts, credit-based scaling
Yellowfin BIData storytelling & flexible OEM pricingCustom (≈$15k+/yr)Stories, Signals AI alerts, multi-tenant
Mode AnalyticsSQL/Python notebooks to embedded reportsFree · Pro ≈$6k/yrNotebooks, API embed, Visual Explorer

1. Explo

(Source: Explo)

Explo is an embedded analytics platform designed for product and engineering teams to quickly add customer-facing dashboards and reports to their apps. It offers a no-code interface for creating interactive charts and supports white-labeled embedding, so the analytics blend into your product’s UI.

Explo focuses on self-service: end-users can explore data and even build ad hoc reports without needing developer intervention. A standout feature is Explo AI, a generative AI capability that lets users ask free-form questions and get back relevant charts automatically.

This makes data exploration as easy as typing a query in natural language. Explo integrates with many databases and is built to scale from startup use cases to enterprise deployments (it’s SOC II, GDPR, and HIPAA compliant for security).

Pros and Cons

    Drag-and-drop dashboards—embed in minutes Generative AI (Explo AI) for NLQ insights Full white-label + SOC 2 / HIPAA compliance
    Young platform; smaller community Costs rise with large end-user counts Cloud-only; no on-prem deployment

Pricing: (Monthly subscriptions – USD)

Visit Explo →

2. ThoughtSpot



ThoughtSpot is an AI-driven analytics platform renowned for its search-based interface. With ThoughtSpot’s embedded analytics, users can type natural language queries (or use voice) to explore data and instantly get visual answers.

This makes analytics accessible to non-technical users – essentially a Google-like experience for your business data. ThoughtSpot’s in-memory engine handles large data volumes, and its AI engine (SpotIQ) automatically finds insights and anomalies.

For embedding, ThoughtSpot provides low-code components and robust REST APIs/SDKs to integrate interactive Liveboards (dashboards) or even just the search bar into applications. It’s popular for customer-facing analytics in apps where end-users need ad-hoc querying ability.

Businesses in retail, finance, and healthcare use ThoughtSpot to let frontline employees and customers ask data questions on the fly. The platform emphasizes ease-of-use and fast deployment, though it also offers enterprise features like row-level security and scalability across cloud data warehouses.

Pros and Cons

    Google-style NL search for data SpotIQ AI auto-surfaces trends Embeds dashboards, charts, or just the search bar
    Enterprise-grade pricing for SMBs Limited advanced data modeling Setup needs schema indexing expertise

Pricing: (Tiered, with consumption-based licensing – USD)

Visit ThoughtSpot →

3. Tableau Embedded Analytics



Tableau (part of Salesforce) is a leading BI platform known for its powerful visualization and dashboarding capabilities. Tableau Embedded Analytics allows organizations to integrate Tableau’s interactive charts and reports into their own applications or websites.

Developers can embed Tableau dashboards via iFrames or using the JavaScript API, enabling rich data visuals and filtering in-app. Tableau’s strength lies in its breadth of out-of-the-box visuals, drag-and-drop ease for creating dashboards, and a large user community.

It also has introduced AI features – for example, in 2024 Salesforce announced Tableau Pulse, which uses generative AI to deliver automated insights and natural language summaries to users. This augments embedded dashboards with proactive explanations.

Tableau works with a wide range of data sources and offers live or in-memory data connectivity, ensuring that embedded content can display up-to-date info. It’s well-suited for both internal embedded use (e.g. within an enterprise portal) and external customer-facing analytics, though licensing cost and infrastructure must be planned accordingly.

Pros and Cons

    Market-leading visual library New “Pulse” AI summaries & NLQ Broad data connectors + massive community
    License cost balloons at scale Requires Tableau Server/Cloud infrastructure Styling customization via JS API only

Pricing: (Subscription per user, with role-based tiers – USD)

Visit Tableau →

4. Microsoft Power BI Embedded

Microsoft Power BI is a widely-used BI suite, and Power BI Embedded refers to the Azure service and APIs that let you embed Power BI visuals into custom applications. This is attractive for developers building customer-facing analytics, as it combines Power BI’s robust features (interactive reports, AI visuals, natural language Q&A, etc.) with flexible embedding options.

You can embed full reports or individual tiles, control them via REST API, and apply row-level security for multi-tenant scenarios. Power BI’s strengths include tight integration with the Microsoft ecosystem (Azure, Office 365), strong data modeling (via Power BI Desktop), and growing AI capabilities (e.g. the Q&A visual that allows users to ask questions in plain English).

Pros and Cons

    Rich BI + AI visuals (NL Q&A, AutoML) Azure capacity pricing scales to any user base Deep Microsoft ecosystem integration
    Initial setup can be complex (capacities, RLS) Devs need Power BI Pro licenses Some portal features absent in embeds

Pricing: (Azure capacity-based or per-user – USD)

Visit Power BI →

5. Looker (Google Cloud BI)



Looker is a modern analytics platform now part of Google Cloud. It is known for its unique data modeling layer, LookML, which lets data teams define business metrics and logic centrally.

For embedded analytics, Looker provides a robust solution: you can embed interactive dashboards or exploratory data tables in applications, leveraging the same Looker backend. One of Looker’s core strengths is consistency – because of LookML, all users (and embedded views) use trusted data definitions, avoiding mismatched metrics.

Looker also excels at integrations: it connects natively to cloud databases (BigQuery, Snowflake, etc.), and because it’s in the Google ecosystem, it integrates with Google Cloud services (permissions, AI/ML via BigQuery, etc.).

Pros and Cons

    LookML enforces single source of truth Secure embed SDK + full theming Tight BigQuery & Google AI integration
    Premium six-figure pricing common Steep LookML learning curve Visuals less flashy than Tableau/Power BI

Pricing: (Custom quotes via sales; example figures)

Visit Looker →

6. Sisense



Sisense is a full-stack BI and analytics platform with a strong focus on embedded analytics use cases. It enables companies to infuse analytics into their products via flexible APIs or web components, and even allows building custom analytic apps.

Sisense is known for its ElastiCube in-chip memory technology, which can mash up data from multiple sources and deliver fast performance for dashboards. In recent years, Sisense has incorporated AI features (e.g. NLQ, automated insights) to stay competitive.

A key advantage of Sisense is its ability to be fully white-labeled and its OEM-friendly licensing, which is why many SaaS providers choose it to power their in-app analytics. It offers both cloud and on-premises deployment options, catering to different security requirements.

Sisense also provides a range of customization options: you can embed entire dashboards or individual widgets, and use their JavaScript library to deeply customize look and feel. It’s suited for organizations that need an end-to-end solution – from data preparation to visualization – specifically tailored for embedding in external applications.

Pros and Cons

    ElastiCube fuses data fast in-memory White-label OEM-friendly APIs AI alerts & NLQ for end-users
    UI learning curve for new users Quote-based pricing can be steep Advanced setup often needs dev resources

Pricing: (Annual license, quote-based – USD)

Visit Sisense →

7. Qlik Embedded Analytics



Qlik is a long-time leader in BI, offering Qlik Sense as its modern analytics platform. Qlik’s embedded analytics capabilities allow you to integrate its associative data engine and rich visuals into other applications.

Qlik’s differentiator is its Associative Engine: users can freely explore data associations (making selections across any fields) and the engine instantly updates all charts to reflect those selections, revealing hidden insights.

In an embedded scenario, this means end-users can get powerful interactive exploration, not just static filtered views. Qlik provides APIs (Capability API, Nebula.js library, etc.) to embed charts or even build fully custom analytics experiences on top of its engine. It also supports standard embed via iframes or mashups.

Qlik has incorporated AI as well – the Insight Advisor can generate insights or chart suggestions automatically. For developers, Qlik’s platform is quite robust: you can script data transformations in its load script, use its security rules for multi-tenant setups, and even embed Qlik into mobile apps.

Pros and Cons

    Associative engine enables free exploration Fast in-memory performance for big data Robust APIs + Insight Advisor AI
    Unique scripting → higher learning curve Enterprise-level pricing UI can feel dated without theming

Pricing: (USD)

Visit Qlik →

8. Domo



Domo is a cloud-first business intelligence platform, and Domo Everywhere is its embedded analytics solution aimed at sharing Domo’s dashboards outside the core Domo environment. With Domo Everywhere, companies can distribute interactive dashboards to customers or partners via embed codes or public links, while still managing everything from the central Domo instance.

Domo is known for its end-to-end capabilities in the cloud – from data integration (500+ connectors, built-in ETL called Magic ETL) to data visualization and even a built-in data science layer.

For embedding, Domo emphasizes ease of use: non-technical users can create dashboards in Domo’s drag-and-drop interface, then simply embed them with minimal coding. It also offers robust governance so you can control what external viewers see.

Pros and Cons

    End-to-end cloud BI with 500+ connectors Simple drag-and-embed workflow Real-time alerts & collaboration tools
    Credit-based pricing tricky to budget Cloud-only; no on-prem option Deeper custom UI needs dev work

Pricing: (Subscription, contact Domo for quote – USD)

Visit Domo →

9. Yellowfin BI



Yellowfin is a BI platform that has carved a niche in embedded analytics and data storytelling. It offers a cohesive solution with modules for dashboards, data discovery, automated signals (alerts on changes), and even a unique Story feature for narrative reporting.

For embedding, Yellowfin Embedded Analytics provides OEM partners a flexible licensing model and technical capabilities to integrate Yellowfin content into their applications. Yellowfin’s strength lies in its balanced focus: it’s powerful enough for enterprise BI but also streamlined for embedding, with features like multi-tenant support and white-labeling.

It also has NLP query (natural language querying) and AI-driven insights, aligning with modern trends. A notable feature is Yellowfin’s data storytelling – you can create slide-show style narratives with charts and text, which can be embedded to give end-users contextual analysis, not just raw dashboards.

Yellowfin is often praised for its collaborative features (annotations, discussion threads on charts) which can be beneficial in an embedded context where you want users to engage with the analytics.

Pros and Cons

    Built-in Stories & Signals for narratives OEM pricing adaptable (fixed or revenue-share) Multi-tenant + full white-label support
    Lower brand recognition vs. “big three” Some UI elements feel legacy Advanced features require training

Pricing: (Custom – Yellowfin offers flexible models)

Visit Yellowfin →

10. Mode



Mode is a platform geared towards advanced analysts and data scientists, combining BI with notebooks. It’s now part of ThoughtSpot (acquired in 2023) but still offered as a standalone solution.

Mode’s appeal in an embedded context is its flexibility: analysts can use SQL, Python, and R in one environment to craft analyses, then publish interactive visualizations or dashboards that can be embedded into web apps. This means if your application’s analytics require heavy custom analysis or statistical work, Mode is well-suited.

It has a modern HTML5 dashboarding system and recently introduced “Visual Explorer” for drag-and-drop charting, plus AI assist features for query suggestions. Companies often use Mode to build rich, bespoke analytics for their customers – for example, a software company might use Mode to develop a complex report, and then embed that report in their product for each customer with the data filtered appropriately.

Mode supports white-label embedding, and you can control it via their API (to provision users, run queries, etc.). It’s popular with data teams due to the seamless workflow from coding to sharing insights.

Pros and Cons

    Unified SQL, Python, R notebooks → dashboards Strong API for automated embedding Generous free tier for prototyping
    Analyst skills (SQL/Python) required Fewer NLQ/AI features for end-users Visualization options less extensive than Tableau

Pricing: (USD)

Visit Mode →

How to Choose the Right Embedded Analytics Tool

Selecting an embedded analytics solution requires balancing your company’s needs with each tool’s strengths. Start with your use case and audience: Consider who will be using the analytics and their technical level. If you’re embedding dashboards for non-technical business users or customers, a tool with an easy UI could be important. Conversely, if your application demands highly custom analyses or you have a strong data science team, a more flexible code-first tool might be better.

Also evaluate whether you need a fully managed solution (more plug-and-play, e.g. Explo or Domo) or are willing to manage more infrastructure for a potentially more powerful platform (e.g. self-hosting Qlik or Sisense for complete control). The size of your company (and engineering resources) will influence this trade-off – startups often lean towards turnkey cloud services, while larger enterprises might integrate a platform into their existing tech stack.

Integration and scalability are critical factors. Look at how well the tool will integrate with your current systems and future architecture. Finally, weigh pricing and total cost of ownership against your budget and revenue model. Embedded analytics tools vary from per-user pricing to usage-based and fixed OEM licenses. Map out a rough projection of costs for 1 year and 3 years as your user count grows.

FAQs (Embedded Analytics and Reporting)

1. What are the main differences between Tableau and Power BI?

Tableau focuses on advanced visual design, cross-platform deployment (on-prem or any cloud), and a large viz library, but it costs more per user. Power BI is cheaper, tightly integrated with Microsoft 365/Azure, and great for Excel users, though some features require an Azure capacity and Windows-centric stack.

2. How does Sisense handle large datasets compared to other tools?

Sisense’s proprietary ElastiCube “in-chip” engine compresses data in memory, letting a single node serve millions of rows while maintaining fast query response; benchmarks show 500 GB cubes on 128 GB RAM. Competing BI tools often rely on external warehouses or slower in-memory engines for similar workloads.

3. Which embedded analytics tool offers the best customization options?

Sisense and Qlik are stand-outs: both expose full REST/JavaScript APIs, support deep white-labeling, and let dev teams build bespoke visual components or mashups—ideal when you need analytics to look and feel 100 % native in your app.

4. Are there any free alternatives to Tableau and Sisense?

Yes—open-source BI platforms like Apache Superset, Metabase, Redash, and Google’s free Looker Studio deliver dashboarding and basic embedded options at zero cost (self-hosted or SaaS tiers), making them good entry-level substitutes for smaller teams or tight budgets.

The post Top 10 AI Tools for Embedded Analytics and Reporting (May 2025) appeared first on Unite.AI.

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