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February 24th, 2026

13 Best AI Tools for Financial Analysis: Features & Pricing [2026]

By Tyler Shibata · 26 min read

I tested the best AI tools for financial analysis in 2026, from AI-powered data tools to FP&A platforms. These 13 delivered accurate forecasts, natural language queries, and strong automated reporting.

13 best AI tools for financial analysis: At a glance

AI tools for financial analysis range from AI chat assistants to full financial planning and analysis (FP&A) and enterprise planning platforms. Some connect directly to databases for ad hoc analysis, while others focus on budgeting, forecasting, and financial consolidation.

The table below compares the 13 best tools by use case, pricing, and strength:

Tool
Best For

Starting price
(billed annually)

Key strength
Asking questions about connected financial data
Learns how your database tables connect for more accurate answers over time
Financial modeling and research support
$8/month, billed monthly
Conversational interface for quick summaries and exploratory analysis
Document-heavy due diligence
Handles long financial documents with strong context retention
Financial analysis inside Google Workspace
Built into Google Workspace apps
FP&A planning and reporting
Excel-native planning with structured forecasting workflows
Connected enterprise planning
Scenario modeling across connected business plans
Excel-based budgeting
Excel interface with centralized data and automation
Automated data consolidation
FP&A workflows that stay in Excel
Close and consolidation
Supports financial close workflows and consolidation
Complex data preparation
No-code workflows for blending multiple data sources
Real-time market data
Market data, news, and analytics in one terminal
Investment research
Structured workflows for large-scale document analysis
SEC filings analysis
Extracts and compares financial data from public company filings

1. Julius: Best for asking questions about connected financial data

  • What it does: Julius is an AI data analysis tool that turns questions about your financial data into charts and tables by querying databases or spreadsheets directly. You ask about revenue trends, expense patterns, or budget variances in plain English, and it generates the analysis without requiring you to code. 

  • Who it's for: Finance and marketing teams who need fast answers from their data without SQL skills.

We built Julius to give business teams direct access to their financial data through conversation. When you connect sources like Postgres, Snowflake, or Google Sheets, you can ask questions like "What were our top expense categories last month?" or "How does Q4 revenue compare to Q3?" and get visual answers pulled directly from your tables.

Julius also shows you which tables and columns produced each number, so you can confirm their accuracy before presenting figures to executives or including them in budget reviews.

As you ask questions, the platform maps how your tables connect. It tracks which columns hold revenue data, how customer records link to transactions, and where cost information lives. This understanding allows Julius to pull data from the correct tables so that each query makes the next one more accurate.

The Notebooks feature lets you set up recurring analyses like monthly P&L summaries or weekly cash position updates. Once you set up a notebook, Julius automatically runs it on schedule and sends you the results via email or Slack.

Key features

  • Conversational queries: Type questions about your data and get charts back

  • Multi-source connections: Connects to Postgres, BigQuery, Snowflake, and Google Sheets

  • Automated notebooks: Schedule recurring reports that refresh with current data

  • Delivery options: Results go to Slack, email, or stay in the platform

  • Database learning: Stores table relationships to support consistent queries

Pros

  • No SQL or Python needed so business users can ask questions about financial data directly

  • Learning system improves accuracy for executive reporting and budget forecasts

  • Scheduled Notebooks automate recurring reports without manual work

Cons

  • Requires structured, organized data to work well and some setup may be required

  • Focused on business metrics rather than complex statistical analysis

Pricing

Julius starts at $37 per month.

Bottom line

Julius gives you a faster way to query financial databases and build reports without SQL expertise. If your work focuses on building detailed forecasts across multiple departments rather than ad-hoc data queries, Cube offers more structured planning workflows.

2. ChatGPT: Best for financial modeling and research support

  • What it does: ChatGPT is an AI assistant that answers questions, summarizes documents, and helps with spreadsheet analysis through conversation. You can upload financial statements, ask it to explain formulas, or request help building models in Excel or Google Sheets.

  • Who it's for: Finance professionals who need quick explanations, document summaries, or help building financial models.  

I tested ChatGPT by uploading quarterly reports and asking it to pull out key revenue drivers and margin trends. The summaries highlighted the most important changes without requiring me to read through pages of dense text.

ChatGPT also handled spreadsheet work when I uploaded a budget file and asked it to calculate variance percentages. It returned the results with explanations, though I noticed it sometimes misread formulas in complex files.

After getting an initial cash flow summary, I asked it to explain why operating cash flow dropped, and it highlighted the line items that appeared to contribute to the change. That follow-up capability helped me dig deeper without switching tools.

Key features

  • Document summarization: Upload financial reports and get key points extracted

  • Spreadsheet analysis: Upload Excel files and run calculations through natural language prompts

  • Conversational follow-ups: Ask clarifying questions to dig deeper into results

Pros

  • Handles a wide range of financial tasks

  • Good at explaining complex concepts in simpler terms

  • Works well for quick research and exploratory analysis

Cons

  • Can produce inaccurate calculations if prompts aren't specific

  • Limited ability to connect directly to live databases

Pricing

ChatGPT starts at $8 per month

Bottom line

ChatGPT works well for one-off financial research tasks and getting quick explanations without leaving your workflow. If you need automated reporting on connected data sources, Julius handles that more directly.

3. Claude: Best for document-heavy due diligence

  • What it does: Claude is an AI assistant that reads and analyzes long documents, extracts key information, and answers questions about uploaded files. You can upload contracts, financial reports, or legal documents and ask it to summarize terms, compare versions, or pull out specific clauses.

  • Who it's for: Finance teams handling due diligence, contract review, or analysis of lengthy reports.

I uploaded a 200-page merger agreement to Claude and asked it to identify all the financial covenants and payment terms. It pulled the relevant sections and organized them into a clear list, including clauses buried in the appendices.

I also tested it on quarterly earnings reports by asking it to compare revenue recognition policies across three filings. Claude highlighted where the language changed. However, it sometimes missed context when policies appeared on non-consecutive pages.

The context window handled multiple documents at once. I uploaded five vendor contracts and asked which ones included automatic renewal clauses, and it returned the answer with page references so I could verify each one.

Key features

  • Large document processing: Handles hundreds of pages in a single upload

  • Multi-document analysis: Compare terms across multiple files at once

  • Source citations: Returns page numbers and exact quotes for verification

Pros

  • Handles complex financial and legal documents well

  • Strong at finding specific clauses or terms across long files

  • Security-focused deployment options for sensitive documents

Cons

  • Cannot connect to live databases or external data sources

  • Requires well-formatted documents for accurate extraction

Pricing

Claude starts at $17 per month.

Bottom line

Claude handles document-heavy work like contract analysis and due diligence more thoroughly than general AI assistants. If you need to query live financial databases instead of static documents, Julius offers more direct data access.

4. Gemini: Best for financial analysis inside Google Workspac

  • What it does: Gemini is Google's AI assistant built into Workspace apps like Sheets, Docs, and Slides. You can ask it to analyze data in spreadsheets, generate formulas, create charts, or draft financial reports without leaving your existing Google tools.

  • Who it's for: Teams already using Google Workspace who want AI help without switching platforms.

I tested Gemini by asking it to create pivot tables and variance calculations in a Google Sheet with budget data. It generated the formulas and formatted the results quickly, saving me time on repetitive setup work.

Gemini also helped draft executive summaries in Google Docs. I gave it a spreadsheet of quarterly metrics and asked it to write a three-paragraph summary highlighting revenue growth and expense trends. The output needed minor editing but provided a solid starting point.

The integration across Workspace apps helped me move data from Sheets into Slides and generate charts without manually recreating them. However, it struggled when I asked it to format multiple charts consistently or handle tasks that required several steps in sequence.

Key features

  • Workspace integration: Available inside Sheets, Docs, and Slides

  • Formula generation: Creates spreadsheet formulas based on descriptions

  • Cross-app workflows: Pulls data between Google apps

Pros

  • No need to learn a new platform if you use Google Workspace

  • Quick formula and chart creation in Sheets

  • Helpful for drafting financial narratives

Cons

  • Limited to Google's ecosystem

  • Struggles with complex multi-step analysis

Pricing

Gemini starts at $7.99 per month.

Bottom line

Gemini fits teams already invested in Google Workspace who want AI capabilities without adding new tools. If you work with databases outside Google Sheets or need more advanced data analysis, Julius offers broader connectivity.

5. Cube: Best for FP&A planning and reporting

  • What it does: Cube is an FP&A platform that connects to your ERP, HRIS, and CRM systems and works directly inside Excel or Google Sheets. You can build budgets, run forecasts, and generate reports using your existing spreadsheet workflows with centralized data and version control.

  • Who it's for: Finance teams who need structured planning processes but want to keep working in Excel.

I built a quarterly forecast in Cube by connecting it to sample financial data in Excel. The platform pulled data from the connected systems and let me model scenarios directly in the sheet without switching tools. I also tested it in Google Sheets and found the experience worked similarly across both platforms.

The AI forecasting feature analyzed historical trends and suggested a baseline projection. I adjusted the assumptions, and Cube recalculated the entire model based on those changes. That saved me time compared to manually updating linked cells across multiple tabs.

Version control helped during review cycles. When I shared the budget with others, Cube tracked who made changes and when, though the learning curve for setting up initial workflows was steeper than expected for less technical users.

Key features

  • Excel and Sheets integration: Build models in Excel or Google Sheets while pulling from centralized data

  • AI forecasting: Suggests baseline projections based on historical data

  • Version tracking: Logs changes and maintains audit trails

Pros

  • Keeps familiar Excel workflows intact

  • Centralized data reduces manual consolidation

  • Strong collaboration features for budget reviews

Cons

  • Setup requires some technical knowledge

  • Custom pricing may be high for smaller teams

Pricing

Cube uses custom pricing.

Bottom line

Cube lets you keep working in spreadsheets while adding centralized data and version control. If you need quick queries on your data rather than building full planning cycles, Julius handles ad-hoc analysis more directly.

6. Anaplan: Best for connected enterprise planning

  • What it does: Anaplan is an enterprise planning platform that connects financial, operational, and workforce planning in a shared model. You can build models that link budgets, headcount, and revenue forecasts so changes in one area update related plans across departments based on the model structure.

  • Who it's for: Large finance teams managing complex planning processes across multiple business units.

I tested Anaplan by building a sample scenario model that linked sales projections to hiring plans and operating expenses. When I changed the revenue assumption, the platform recalculated headcount needs and adjusted the budget based on the connections I had set up.

The scenario planning tools let me compare multiple versions side by side. I created three forecast scenarios with different growth rates and reviewed how each one affected cash flow and staffing requirements. However, setting up these connections between models required more upfront work than using simpler tools.

Anaplan handled cross-departmental planning well. Finance, operations, and HR teams could work in the same model simultaneously, and changes from one team updated related plans across departments.

Key features

  • Connected planning models: Links budgets, forecasts, and operational plans

  • Scenario comparison: Tests multiple assumptions side by side

  • Cross-functional collaboration: Multiple teams work in shared models

Pros

  • Handles complex, multi-department planning

  • Strong scenario modeling capabilities

  • Coordinated updates across connected plans

Cons

  • Steep learning curve for new users

  • Requires significant setup and configuration

Pricing

Anaplan uses custom pricing.

Bottom line

Anaplan works well for enterprises that need tightly integrated planning across departments and scenarios. If you need quick analysis on existing data rather than building connected planning models, Julius provides faster results with less setup.

Special mentions

The tools above cover most financial analysis workflows, but other platforms also handle specific tasks well. These tools didn't make the main list due to narrower use cases or higher complexity, but they deliver strong results in their specific areas.

Here are 7 more tools for financial analysis:

  • Vena: An Excel-based FP&A platform with built-in workflow automation and audit trails. I tested it on budget consolidation and found the Excel interface made adoption easier for teams already comfortable with spreadsheets, though performance slowed with larger data sets.

  • Datarails: A financial planning tool that automates data consolidation from multiple sources into Excel. During testing, it consolidated data from various systems into a single workbook. This saved time on manual work, though setup required mapping each data source individually.

  • Planful: A cloud FP&A platform for planning, budgeting, forecasting, and reporting. It also includes features for consolidation and workflow automation. I tested it on month-end close tasks and saw how it tracked completion status, though the interface felt more complex than simpler planning tools.

  • Alteryx: A data preparation platform with no-code workflows for blending data from multiple sources. Testing showed it handled complex data transformations well, though it's built more for data teams than general business users.

  • Bloomberg Terminal: A widely used platform for real-time market data, news, and analytics. I used it to pull historical pricing data and market indicators, which offered specialized market coverage beyond what general AI chat tools focus on.

  • Hebbia: An AI research platform designed for investment analysis and document review. During testing, it handled multi-document analysis across earnings calls and filings, with strong citation tracking for audit trails.

  • Fintool: A specialized tool for analyzing SEC filings and public company data. I tested it on 10-K extractions and found it pulled financial statement data and organized it for comparison across companies.

How I tested these AI tools for financial analysis

I ran each platform through common financial tasks to see how they handled typical workflows, not marketing demos. That meant uploading sample budget files, connecting supported tools to test databases, querying mock financial data, and building reports that resembled what finance teams produce daily.

Here's what I evaluated:

  • Speed to useful results: How long it took to get a chart, summary, or answer that moved the work forward

  • Accuracy verification: Whether I could trace numbers back to the source data and confirm calculations

  • Data handling: How well the tool processed spreadsheets, PDFs, and database connections

  • Follow-up capability: Whether deeper questions produced better answers or hit limitations

  • Workflow fit: How much the tool interrupted existing processes versus working within them

  • Learning curve: Time needed to get productive results without extensive training

Which AI tool for financial analysis should you choose?

Your choice depends on whether you need quick data queries, structured planning workflows, document analysis, or spreadsheet-based forecasting.

Choose:

  • Julius if you want to query financial databases conversationally and get charts that refresh based on your connected data without writing SQL.

  • ChatGPT if you need help explaining financial concepts, summarizing reports, or getting quick assistance with spreadsheet formulas.

  • Claude if your work involves reviewing long contracts, merger documents, or comparing terms across multiple financial filings.

  • Gemini if your team works primarily in Google Workspace and you want AI help without leaving Sheets or Docs.

  • Cube if you need structured FP&A planning that works inside Excel but pulls from centralized data sources.

  • Anaplan if you manage complex enterprise planning that connects budgets, headcount, and forecasts across departments.

  • Vena if your team prefers Excel-based budgeting with backend automation and audit trails.

  • Datarails if you need to consolidate financial data from multiple systems into a single Excel workbook.

  • Planful if your focus is on automating the financial close process and account reconciliations.

  • Alteryx if you work with complex data transformations that require blending sources before analysis, like merging sales data from multiple regional databases.

  • Bloomberg Terminal if you need live market data, pricing feeds, and financial news in one platform.

  • Hebbia if you analyze investment documents and need to review multiple files with strong citation tracking.

  • Fintool if you regularly extract and compare data from SEC filings and public company reports.

My final verdict

My testing showed me that ChatGPT and Claude handle document summaries and spreadsheet explanations well. Cube and Anaplan support structured planning cycles across departments. Gemini fits teams that work primarily in Google Workspace, and Bloomberg Terminal remains widely used for market data feeds.

Julius gives you conversational access to your financial databases without SQL, automated reporting on a schedule, and a system that stores your table structure to maintain consistent results across queries. I think that combination helps finance teams get faster answers from their own data without waiting for analyst support or building complex dashboards.

Want to analyze financial data without SQL? Try Julius

The best AI tools for financial analysis help you move from raw numbers to clear insights faster, but many focus on documents, planning workflows, or standalone environments. With Julius, you can query your financial databases directly and get charts, summaries, and scheduled reports by asking questions conversationally.

Here’s how Julius helps:

  • Direct connections: Link databases like Postgres, Snowflake, and BigQuery, or integrate with Google Ads and other business tools. You can also upload CSV or Excel files. Your analysis can reflect live data, so you’re less likely to rely on outdated spreadsheets.

  • Smarter over time with the Learning Sub Agent: Julius learns your database structure, table relationships, and column meanings as you use it. With each query on connected data, it gets better at finding the right information and delivering more accurate answers without manual configuration.

  • Quick single-metric checks: Ask for an average, spread, or distribution, and Julius shows you the numbers with an easy-to-read chart.

  • Built-in visualization: Get histograms, box plots, and bar charts on the spot instead of jumping into another tool to build them.

  • Recurring summaries: Schedule analyses like weekly revenue or delivery time at the 95th percentile and receive them automatically by email or Slack.

  • One-click sharing: Turn a thread of analysis into a PDF report you can pass along without extra formatting.

Ready to see how Julius can help your team make better decisions? Try Julius for free today.

Frequently asked questions

Can AI tools for financial analysis replace Excel?

No, AI tools can't fully replace Excel. Many finance teams still use Excel for detailed financial modeling and custom formulas, while AI tools speed up analysis and help you generate insights. Tools like Julius and Cube work directly inside Excel or Google Sheets, adding AI capabilities without replacing your existing workflows.

Do AI tools for financial analysis work with real-time data?

Yes, some AI tools for financial analysis can work with real-time data when they connect directly to databases or live data feeds. Tools connected to warehouses or APIs can reflect updated figures based on their data refresh settings, while file-based tools only analyze the data you upload and do not refresh automatically.

What’s the difference between AI tools for financial analysis and traditional BI tools?

AI tools for financial analysis let you ask questions in natural language and generate charts or summaries on demand, while traditional BI tools require you to build dashboards and define metrics in advance. BI focuses on structured reporting and recurring dashboards, whereas AI tools prioritize flexible, on-demand analysis through conversation.

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