Excel remains the operating system of finance – powering financial modeling, diligence, and portfolio operations for investment banks, private equity firms and hedge funds. Here’s deeper, analyst-centric guidance for the top Excel-adjacent tools.
1) Endex
Pros
- Endex AI operates as an add-in within Excel, allowing users to access its features directly in their existing workflow without switching applications
- Endex is backed by OpenAI
- Auditable workflows: Endex has in-line references back to cells, ranges, and documents; trace/undo features reduce review time.
- All citations are referenced with direct sources.
- Finance-aware “agent” behavior: spots inconsistent links and assumptions, surfaces anomalies, and can help reconcile inputs.
- Useful ingestion: PDF-to-table for getting binder content onto “Inputs” tabs
- Endex directly integrates with trusted public data sources across the financial services domain, such as CapIQ, VisibleAlpha, FactSet, SEC filings and company earnings, bringing the web to Excel. It unifies internal files, external data, and trusted sources into a single searchable interface.
- Enterprise posture: strong encryption and published security practices; designed for governed use.
Cons
- Newer product with limited general availability; features and documentation are still evolving.
- Analyst judgment still required for edge cases and sign-off on live deal models.
Use Cases: Building financial models from scratch (DCF, LBO, P&L, Three Statement Models), asking/reasoning over existing models, and auditing previously built models.
2) Microsoft Copilot for Excel
Pros
- On-grid natural-language prompts to explain formulas, draft new formulas, summarize tables, and create basic charts.
- Runs within Microsoft 365, aligning with tenant governance, OneDrive/SharePoint storage, and audit logs.
- Great for first-pass ratio analysis and data exploration on structured tabs.
Cons
- Requires the correct Copilot license and IT enablement; features can vary by org policy.
- Outputs are drafts – analysts must validate results and tie back to sources for IC.
- Less helpful for bespoke LBO mechanics and intricate transaction logic.
- Not able to build complex models.
Use Cases: Quick ratio/trend passes on targets, turning messy tabs into usable summaries, and starting formulas you then harden.
3) Power BI
Pros
- Creates interactive dashboards from Excel data with automatic refresh and drill-down capabilities
- Row-level security for LP reporting and controlled portfolio data access
- Combines Excel models with live feeds from CRMs, ERPs, and market data providers
- Mobile-responsive visualizations for board meetings and IC presentations
Cons
- Separate licensing and IT setup required; learning curve for DAX and data modeling
- Version control between Excel sources and published reports can get complex
- Less flexible than Excel for ad-hoc analysis during live deal discussions.
Use Cases: Portfolio KPI dashboards, secure LP reporting portals, deal pipeline tracking, and interactive IC presentations where members can stress-test scenarios.
4) Cube
Pros
- Spreadsheet-native planning: push/pull/drill between Excel/Google Sheets and a governed data model.
- Faster to stand up than full EPM suites; familiar grid experience for analysts.
- Versioning, approvals, and audit history help cross-team governance.
Cons
- Not a diligence/VDR extractor; custom LBO work remains in your Excel model.
- Best for standardized planning/reporting versus ad-hoc buy-side builds.
Use Cases: Portfolio forecasting, budget-to-actuals analysis, KPI rollups across OpCos with controlled workflows.
5) Alteryx
Pros
- No/low-code ETL to clean and join messy target datasets before they hit Excel; supports many sources and transforms.
- Big time saver when combining multiple targets’ GLs, SKUs, or customer files into a single modelable structure.
- Reusable workflows reduce repeated manual prep across deals.
Cons
- Separate application outside Excel; someone must own pipelines, monitoring, and governance.
- Learning curve for building/maintaining flows; you still do the modeling in Excel afterward.
Use Cases: Normalize trial balances and cohorts, map SKUs/customers, and build repeatable “data-to-model” pipelines for multi-target rollups.
6) FactSet Excel Add-In
Pros
- Formula-driven pulls (e.g., =FDS) for financials, estimates, ownership, credit, and more; refreshable with templates.
- Cuts manual scraping; speeds comps and market updates with consistent data definitions.
- Screening and model templates help you spin up workbooks faster.
Cons
- Requires licensing/entitlements; coverage varies by issuer/region.
- This feeds data – you still design model structure and logic.
Use Cases: Comparable company sets, ownership checks, market snapshot tabs, and scheduled pre-meeting refreshes.
7) S&P Capital IQ Pro Excel Plug-In
Pros
- Excel functions and a formula builder to pull financials, transactions, ownership, and pricing data. ‘
- Broad private/public data coverage for PE sourcing and modeling needs.
- Good for keeping a live “Inputs” layer current with one-click refresh.
Cons
- Entitlements/admin can be a hurdle; desktop Excel typically works best.
- Consistency rules are on you – different analysts may pull slightly different fields if not standardized.
Use Cases: LBO input gathering, transaction/public comps, ownership structure checks, and pipeline trackers linked to live data.
8) Datarails
Pros
- Excel add-in for consolidation, reporting, and planning – strong fit for portfolio company finance stacks.
- Automates recurring board packs and management reporting; audit trails support close processes.
- Keeps Excel as the front end, lowering training burden.
Cons
- Built primarily for FP&A; less useful for any financial modeling at the deal-team level.
- Shines when portfolio companies are fully onboarded with ERP/GL connectors.
Use Cases: Portfolio monitoring packs, covenant dashboards, multi-entity rollups you can refresh before reviews.
9) PitchBook Excel Plug-In
Pros
- Private-markets focus: deals, investors, and sponsor activity directly into Excel via formulas/builder.
- Vendor templates and training make it easier to get productive fast.
- Great for theme work and mapping sponsors ahead of deep modeling.
Cons
- Potential overlap with CapIQ/FactSet – coordinate coverage to avoid redundancy.
- Some entities have patchy fields; always sanity-check critical items.
Use Cases: Deal sourcing lists, sector deep dives, sponsor/LP mapping, and refreshable comps libraries in-sheet.
10) Daloopa
Pros
- AI extracts structured tables from SEC filings into Excel; reduces hand-copying from 10-Ks/10-Qs.
- Repeatable templates make quarterly updates and comps maintenance faster.
- Helpful during earnings season to keep models current.
Cons
- Footnotes and non-GAAP mapping still need analyst judgment.
- Reconcile edge cases back to the source PDF before IC to avoid surprises.
Use Cases: Public-comps updates, QoE tie-outs, and building standardized “Financials” tabs quickly from filings.
