-
Swiss World Cup squad return home to heroes' welcome
-
Pogacar wins Tour de France 10th stage on Bastille Day
-
Too hot: Buttoned-up Tokyo officials ditch suits for 'cool' shorts
-
US Supreme Court justices defiant as threats hit home
-
Arsenal agree Trossard fee for Beskitas switch
-
Brighton sign Croatia defender Veskovic for record fee
-
France flaunts firepower, unity with allies in huge parade
-
US inflation cools in June before renewed Mideast fighting
-
Ticking time bomb? Europe's ageing population brings challenges
-
India spark collapse before Root leads England to 258 in 1st ODI
-
Oil gains on fresh attacks, dollar slides as inflation slows
-
Dua Lipa backs Albanian protests against Trump-linked resort
-
Fire ravages popular forest outside Paris
-
Dangote's mega oil project threatens fragile Kenyan ecosystem: Greenpeace
-
US consumer inflation cools in June on lower energy costs
-
Rose says there's still time to realise British Open dream
-
Israel says ready to move on pilot zones amid new Lebanon talks
-
Ukraine PM resigns in Zelensky-ordered reshuffle
-
Croatia ex-international Simic held in graft case: report
-
Glasner warns 'no button to press' for Forest success
-
SCANDIC TRADE & SNC SCANDIC COIN:
AI Meets Non-Custodial Trading
-
Swiss probe Google dropping search choice on Android phones
-
France and Spain clash in World Cup semi-final
-
MEXC Reports 7.1 Billion USDT in SpaceX Futures Volume as Q2 Closes the Gap to Wall Street
-
Knight wants England women to play more red-ball cricket after India loss
-
DR Congo health workers on Ebola front line threaten strike
-
Oil extends gains after fresh US strikes
-
Turn off addictive features on social media for children, say EU lawmakers
-
EU population to peak in 2029 before long-term decline
-
Bumrah returns for India as England bat in 1st ODI
-
Fire ravages historic forest outside Paris
-
US strikes Iran, vows to reimpose naval blockade
-
57 gored or bruised during Spain's San Fermin bull runs
-
Oil extends gains after fresh US strikes, stocks mostly rise
-
Wildfires advance in forest south of Paris
-
Families claim bodies as Bangkok fire toll rises to 30
-
Ukrainian men in Poland face legal limbo
-
Egg-free school meals scramble politics in India
-
Wildlife rescuers help birds survive Pakistan's hotter summers
-
US strikes Iran for third day, will reimpose blockade
-
Messi meets England at last with World Cup final place on the line
-
Italy's Cannone gets four-match ban for red card against All Blacks
-
Oil extends gains after latest US strikes, tech suffers more losses
-
Co-star says Sam Neill battled pneumonia before death
-
Young Australian men falling victim to online sexual extortion: regulator
-
Armenian apricots become geopolitical battleground with Russia
-
New era for Gibraltar as border controls with Spain set to end
-
Jay-Z pays tribute to NY hometown crowd and his 30-year legacy
-
England face might of Messi's Argentina in World Cup semi-final
-
Birthday boy Yamal stands by 'no fear' comment ahead of France clash
Beyond Work Unveils Next-Generation Memory-Augmented AI Agent (MATRIX) for Enterprise Document Intelligence
Matrix streamlines document processing by cutting manual labor and operational costs, using AI agents in the enterprise.
Today, Beyond Work, an enterprise AI company, announced the record-setting results of Matrix, a novel memory-augmented AI framework for automating business document processing. Developed in collaboration with researchers from Penn State University, Oregon State University, and Kuehne+Nagel, one of the world's largest logistics providers, Matrix addresses the complex, time-intensive task of extracting transport references from Universal Business Language (UBL) invoices.
Comparing the success rates of four methods (CoT, Two-agent, Reflexion, Matrix) across GPT-4o-mini and GPT-4o, with Matrix achieving the highest performance.
By harnessing an iterative, memory-centric learning strategy, Matrix achieves a 30.3% improvement over chain-of-thought prompting, outperforms a standard Large Language Model agent by 35.2%, and surpasses Reflexion by 27.28%-establishing its state-of-the-art capabilities in AI reflection.
"Matrix redefines what's possible for enterprise automation by dramatically improving accuracy while reducing operational costs," said Malte Højmark Bertelsen, co-author and cofounder of Beyond Work.
Matrix's success is the result of an international team of experts, including Jiale Liu, Yifan Zeng, Malte Højmark-Bertelsen, Marie Normann Gadeberg, Huazheng Wang, and Qingyun Wu, an Assistant Professor at Penn State University recognized for her contributions to Automated Machine Learning (AutoML) and Large Language Models (LLMs). Her track record includes high-impact open-source projects, such as AutoGen, that enable complex multi-agent collaborations - foundational principles driving Matrix's memory-augmented approach.
Key Highlights
Real-World Validation: Data from Kuehne+Nagel demonstrates Matrix's impact on global logistics operations.
Iterative Learning: Self-reflection accelerates domain adaptation for specialized documents.
Operational Efficiency: Fewer API calls and reduced cost profile elevate enterprise scalability.
Enhanced Robustness: The system effectively handles larger, more complex documents beyond typical AI baseline models.
An anonymized subset of the dataset is available to catalyze further research in enterprise AI by contacting Beyond Work.
Research Reference
Paper: https://arxiv.org/abs/2412.15274
Open-source data: https://github.com/bwllaming/matrix-paper
About Beyond Work
Co-founded by industry veterans from Uber, Tradeshift, and other unicorn alumni, Beyond Work is an enterprise AI platform that eliminates tedious tasks and drives tangible business outcomes in finance, procurement, and supply chain. Used by Fortune 500 customers in energy, logistics, and life sciences, its state-of-the-art platform leverages agentic networks in business to empower teams to focus on real innovation instead of busy work.
Contact Information
Malte Højmark-Bertelsen
Cofounder, Head of Applied AI and Research
[email protected]
SOURCE: Beyond Work
X.AbuJaber--SF-PST