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Comparison · Analytics

Maze vs Holistics

Side-by-side trajectory, velocity, and editorial themes.

M
Maze
ANALYTICS
3.8

UX research platform is reshaping itself around AI moderation and AI-driven analysis.

◆ Current state

Maze is shipping aggressively across two adjacent fronts: AI-driven research execution (AI Moderator with adaptive conversation styles, visual stimulus support) and AI-driven analysis (thematic analysis now generated automatically across every study type). Around the AI core, recent releases also tighten panel recruitment with Fresh Eyes participant-freshness controls, expand Global Search to blocks and interview sessions, and improve Variant Comparison reliability for A/B prototype tests.

◆ Where it's heading

The product is moving from 'research tool researchers operate' to 'research platform that runs and interprets studies on the researcher's behalf'. AI Moderator handles unmoderated conversation; AI thematic analysis turns transcripts into highlights without a researcher manually coding. The core wager is that the analysis bottleneck — not study design — is what limits the volume of research a team can do, and Maze is going after that bottleneck directly.

◆ Prediction

Expect AI Moderator to keep absorbing more interview style options and stimulus types, and the analysis side to push from theme-extraction toward auto-generated synthesis or report drafts. Panel-quality controls like Fresh Eyes are likely to expand into broader participant-cohort management.

Holistics logo
Holistics
ANALYTICS
6.3

Holistics turns the BI dashboard into a conversational AI surface, on customer-owned models.

◆ Current state

Holistics is well into a BI-meets-AI productization phase, layering conversational analytics on top of its existing modeling and dashboard core. Recent releases mix consumer-grade dashboard polish (auto-run filters, K/M/B number formatting, percentile calculations) with deeper AI plumbing: bring-your-own Claude and Gemini keys, per-user AI access controls, and now an Ask AI that asks clarifying questions back. The GitHub App integration also signals enterprise-readiness work alongside the AI push.

◆ Where it's heading

The product is being repositioned from a self-service BI tool to an AI-mediated analytics workspace where natural-language exploration is the headline interaction. Crucially, the team is pushing AI as an infrastructure layer customers can own — BYO LLM keys, granular access policies — rather than locking customers into a vendor-managed model. The dashboard improvements look incremental, but read as ground prep for AI agents to consume and manipulate dashboards more reliably.

◆ Prediction

Expect the next quarter to bring agentic dashboard editing — Ask AI not just answering but proposing dashboards and saving them — plus expanded BYO LLM coverage (likely Azure OpenAI or open-weights via OpenRouter) to widen procurement options for enterprise buyers.

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See more alternatives to Holistics