
-
Justice orders release of migrants deported to Costa Rica by Trump
-
Vietnam tycoon will not face death penalty over $27 bn fraud: lawyer
-
Vietnam abolishes death penalty for spying, anti-state activities
-
Over 80,000 people flee severe flooding in southwest China
-
AI fakes duel over Sara Duterte impeachment in Philippines
-
UK carbon emissions cut by half since 1990: experts
-
Delap off mark as Chelsea ease into Club World Cup last 16
-
UK to reintroduce nuclear weapon-capable aircraft under NATO
-
Upstart socialist stuns political veteran in NYC mayoral primary
-
China's premier warns global trade tensions 'intensifying'
-
Chelsea through to Club World Cup knockouts, Benfica beat Bayern
-
Cummins says Green 'long-term option' as Australia face new-look Windies
-
Chelsea east past Esperance and into Club World Cup last 16
-
Stocks rally as Iran-Israel ceasefire holds, oil claws back some losses
-
Trump whirlwind to test NATO summit unity
-
Israel claims victory as US intel says Iran nuclear sites not destroyed
-
Benfica beat Bayern at Club World Cup as Auckland City hold Boca
-
RFK Jr's medical panel to revisit debunked vaccine claims
-
Sean Combs trial: Takeaways from testimony
-
Messi and Miami relishing reunion with PSG and Enrique
-
At least 10 dead in Colombia landslide
-
Extreme heat, storms take toll at Club World Cup
-
France's Versailles unveils AI-powered talking statues
-
Child vaccine coverage faltering, threatening millions: study
-
Club World Cup winners team who handles weather best: Dortmund's Kovac
-
FIFA launch probe into Rudiger racism allegation
-
Trump rattles NATO allies as he descends on summit
-
Three things we learned from the first Test between England and India
-
Saint Laurent, Vuitton kick off Paris men's fashion week
-
Amateurs Auckland City hold Boca Juniors to Club World Cup draw
-
Neymar signs for six more months with Santos with an eye on World cup
-
Grok shows 'flaws' in fact-checking Israel-Iran war: study
-
Both sides in Sean Combs trial rest case, closing arguments next
-
Benfica beat Bayern to top group C
-
Trump plays deft hand with Iran-Israel ceasefire but doubts remain
-
England knew they could 'blow match apart' says Stokes after India triumph
-
Lyon appeal relegation to Ligue 2 by financial regulator
-
US intel says strikes did not destroy Iran nuclear program
-
Nearly half the US population face scorching heat wave
-
Israel's Netanyahu vows to block Iran 'nuclear weapon' as he declares victory
-
Saint Laurent kicks off Paris men's fashion week
-
Arbitrator finds NFL encouraged teams to cut veteran guarantees: reports
-
India, Poland, Hungary make spaceflight comeback with ISS mission
-
Piot, dropped by LIV Golf, to tee off at PGA Detroit event
-
US judge backs using copyrighted books to train AI
-
Russian strikes kill 19 in Ukraine region under pressure
-
Raducanu's tears of joy, Krejcikova survives match points at Eastbourne
-
Duplantis dominates at Golden Spike in Czech Republic
-
Prosecutors of Sean Combs rest their case, eyes turn to defense
-
Duckett and Root star as England beat India in thrilling 1st Test

Sama Launches Agentic Capture, a Robust Data Capture Framework for Multi-Modal Agentic AI
SAN FRANCISCO, CA / ACCESS Newswire / February 18, 2025 / Sama, the leader in purpose-built, responsible enterprise AI with agile data labeling for model development and supervised fine-tuning, today announced the launch of Agentic Capture, a feedback framework for multi-modal agentic AI. Built on Sama's configurable capture platform, this new framework is capable of managing the types of multi-modal, complex use cases necessary for agentic AI across a variety of industries. Agentic Capture, built on Sama's extensible data labeling platform, ensures consistent, accurate annotation through the use of high-quality rubrics and instructions. The framework's precision insights and transparent reporting provide a deeper understanding of the AI agent's behaviors and its impact on model goals, and offers the human in the loop (HITL) validation necessary to effectively iterate on model performance.

AI agents are models that can act autonomously to make decisions, take actions and learn from interactions to help solve problems or achieve specific goals. The agentic AI market is expected to explode over the next five years, moving from a current value of USD 5.1 billion to USD 47.1 billion by 2030. The success of these agents will hinge on their ability to effectively mimic human behavior, which will require ingesting data from multiple modalities, including text, images, audio or video. This new functionality is a step change from today's current large language models (LLMs) which, while useful in augmenting human capabilities, are limited by their inability to process multiple modalities. Sama's Agentic Capture framework makes it easier to integrate multiple types of data into the AI model, while providing the consistent human judgement needed to effectively utilize that data.
"Sama works with some of the leading AI model builders in the world, and that has placed us at the forefront of innovation. While LLMs have taken center stage for AI models, they are not without their limitations. We are in the early stages now of seeing the impact AI agents will have on the industries and companies we work with," said Duncan Curtis, SVP of AI product and technology at Sama. "Agentic AI is on the precipice of exploding in capabilities and use cases, and our new framework is designed to make it easier to leverage data - whether text-based, images, audio or video - to enable AI agents to autonomously complete their tasks. We're excited to continue working closely with our partners to build out a robust framework that meets the burgeoning needs of this technology."
Use cases for AI agents run the gamut from human-like customer service in retail and insurance; to optimizing production in manufacturing; fraud detection in finance; resume screening, recruitment and training in human resources; analyzing consumer behaviors in marketing and much more. Sama's data capture framework builds on the company's decades of experience assessing and improving AI models.
For over 16 years, Sama's proprietary HITL approach has consistently provided models with feedback from expert annotators, validating a model's behavior and ensuring it is performing to standards. This feedback is woven throughout the entire model development process, including data creation, supervised fine-tuning, LLM optimization and ongoing model evaluation, ensuring clients can develop models in a more responsible way. Sama's work is backed by SamaAssure™, the industry's highest quality guarantee, which routinely delivers a 98% first batch acceptance rate.

About Sama
Sama is a global leader in data annotation solutions for computer vision, generative AI and large language models. Our solutions minimize the risk of model failure and lower the total cost of ownership through an enterprise ready ML-powered platform and SamaIQ™, actionable data insights uncovered by proprietary algorithms and a highly skilled on-staff team of over 5,000 data experts. 40% of FAANG companies and other major Fortune 50 enterprises, including GM, Ford and Microsoft, trust Sama to help deliver industry-leading ML models.
Driven by a mission to expand opportunities for underserved individuals through the digital economy, Sama is a certified B-Corp and has helped more than 68,000 people lift themselves out of poverty. An MIT-led Randomized Controlled Trial has validated its training and employment program. For more information, visit www.sama.com.
Sama Media Contact:
LinkedIn Announcements:
Lisa:
Training AI agents is even more complex than training LLMs, which is why I'm excited to announce the launch of Agentic Capture, a framework built for training multi-modal AI agents.
Even in well-established procedural workflows, the actions taken by human agents are often cryptic and cluttered with superfluous information, making interpretation challenging. When issues arise, it's frequently unclear why they occurred or how to address them-leading to AI agents that fail to recover and adapt.
Agentic Capture transforms raw agent traces into interpretable steps, enabling effective oversight and meaningful improvements in AI agent performance. The solution includes:
Strategic guidance that helps organizations develop a clear roadmap by defining the data and workflows necessary for effective feedback and alignment.
A process-focused feedback system that enables continuous improvement based on detailed performance analysis.
Proactive error detection that identifies model behavior gaps early and improves model understanding.
If you're in the process of training an AI agent - let's chat!
Wendy:
I am excited to announce the launch of @Sama's Agentic Capture, a feedback framework specifically designed for multi-modal agentic AI.
This framework addresses a critical gap in the AI industry: the ability to effectively build, monitor, and improve AI agents while maintaining comprehensive oversight.
The solution combines strategic guidance with a sophisticated monitoring interface, enabling organizations to track AI processes and implement meaningful improvements based on detailed performance analysis.
Our consultative approach, process-focused feedback system, and seamless integration with existing infrastructure help improve gaps in model understanding resulting in higher performance.
If you're struggling with your AI Agent's performance, reach out and I can connect you with our team of solution engineers.
#AIAgent #Enterprise #AIStrategy
Duncan:
Product teams know the struggle: building reliable AI agents is hard, and debugging them is even harder.
When your AI agent makes a mistake, the logs are often a maze of cryptic traces and superfluous information. You're left wondering not just what went wrong, but how to fix it-and how to prevent it from happening again.
Here's what makes our framework a game-changer for product teams:
A powerful trace analysis system that converts complex agent logs into clear, actionable insights-making debugging intuitive rather than overwhelming.
Built-in tools that allow domain experts (not just engineers) provide meaningful feedback on agent behavior
Proactive error detection to identify model behavior issues before they hit production.
An implementation approach that integrates seamlessly with your existing cloud infrastructure, requiring minimal setup time.
We built this because we faced many of the same problems. If you're looking to make your AI agent development more transparent and effective, let's talk.
#AIAgent #ProductManagement #AIStrategy
SOURCE: Sama
View the original press release on ACCESS Newswire
R.Shaban--SF-PST