Alisa Davidson
Printed: July 15, 2026 at 6:57 am Up to date: July 15, 2026 at 6:57 am
Edited and fact-checked:
July 15, 2026 at 6:57 am

Perplexity AI has launched WANDR (Broad ANd Deep Analysis), an open benchmark designed to judge how successfully synthetic intelligence programs carry out large-scale analysis duties that require each broad data discovery and detailed proof assortment. The framework comprises 500 practical data-gathering duties modeled on skilled information work, together with market evaluation, due diligence, literature critiques, aggressive intelligence, product comparisons, and expertise sourcing.
In contrast to conventional AI benchmarks that concentrate on producing a single reply or a written report, WANDR measures an AI system’s capacity to establish giant numbers of related entities and confirm every consequence with supporting proof. The benchmark is meant to mirror real-world analysis workflows, the place success relies upon not solely on discovering correct data but in addition on attaining complete protection throughout lots of and even 1000’s of data.
Based on Perplexity, present AI programs proceed to face vital challenges on this space. Even the highest-performing mannequin within the firm’s analysis achieved a tender F1 rating of 0.363 and a tough F1 rating of 0.133, indicating that wide-scale, evidence-backed analysis stays removed from being absolutely automated. The benchmark contains greater than 170,000 source-backed data throughout its 500 duties, offering a large-scale testing atmosphere for research-oriented AI brokers.
Benchmark Outcomes Spotlight Present AI Analysis Limitations
WANDR makes use of a reference-free analysis course of that verifies every submitted declare towards the proof cited by the AI system, reasonably than evaluating outcomes with a set reply key. Each declare is checked for supply high quality, factual accuracy, relevance, and whether or not the supporting excerpts genuinely substantiate the knowledge offered. This strategy is meant to higher mirror real-world analysis, the place data modifications over time and full reply units are troublesome to take care of.
The benchmark additionally supplies detailed diagnostics to establish the place AI programs fail throughout advanced analysis duties. Efficiency could be measured throughout a number of phases, together with data discovery, information enrichment, id matching, supply validation, and proof extraction, permitting builders to pinpoint weaknesses past total accuracy scores.
Perplexity evaluated six manufacturing AI analysis programs utilizing WANDR beneath similar testing circumstances. Its Search as Code (SaC) platform achieved the best total efficiency, recording a tender F1 rating of 0.363 and a tough F1 rating of 0.133. Anthropic ranked second with scores of 0.249 and 0.072, whereas different evaluated programs didn’t exceed a tender F1 rating of 0.121. The examine additionally discovered that rising computational effort typically improved efficiency for a number of fashions, though increased prices and longer processing occasions didn’t persistently translate into higher outcomes.
The corporate stated the benchmark is meant to function an open useful resource for researchers and builders engaged on AI-powered search and analysis programs. Past benchmarking, WANDR might also assist future reinforcement studying methods by offering structured suggestions at every stage of the analysis course of, enabling AI fashions to enhance not solely factual accuracy but in addition planning, protection, and proof assortment at scale.
Disclaimer
In step with the Belief Challenge pointers, please word that the knowledge offered on this web page just isn’t supposed to be and shouldn’t be interpreted as authorized, tax, funding, monetary, or another type of recommendation. It is very important solely make investments what you’ll be able to afford to lose and to hunt unbiased monetary recommendation in case you have any doubts. For additional data, we propose referring to the phrases and circumstances in addition to the assistance and assist pages offered by the issuer or advertiser. MetaversePost is dedicated to correct, unbiased reporting, however market circumstances are topic to alter with out discover.
About The Writer
Alisa, a devoted journalist on the MPost, makes a speciality of crypto, AI, investments, and the expansive realm of Web3. With a eager eye for rising developments and applied sciences, she delivers complete protection to tell and interact readers within the ever-evolving panorama of digital finance.
Extra articles

Alisa, a devoted journalist on the MPost, makes a speciality of crypto, AI, investments, and the expansive realm of Web3. With a eager eye for rising developments and applied sciences, she delivers complete protection to tell and interact readers within the ever-evolving panorama of digital finance.






