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Improving LLM pretraining with better data organization

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The documents used to train a large language model (LLM) are typically concatenated to form a single “superdocument”, which is then divided into sequences that match the model’s context length. This improves training efficiency but often results in unnecessary truncations, where individual documents are broken up across successive sequences.

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In paper we’re presenting at this year’s International Conference on Machine Learning (ICML 2024), titled “Fewer truncations improve language modeling”, we report an in-depth study of this common concatenation-chunking document-processing method. We found that it severely impairs the model’s ability to understand contextual coherence and factual consistency. This not only affects the model’s performance on downstream tasks but also increases the risk of hallucinations.

To address this issue, we propose best-fit packing, an innovative document-processing strategy that optimizes document combinations to eliminate unnecessary text truncations. In experiments, we compared a model trained using best-fit packing to one trained in the ordinary way on six downstream tasks: reading comprehension, natural-language inference, context following, summarization, commonsense and closed-book question answering, and program synthesis. We found that best-fit packing monotonically improves performance on an array of 22 sub-tasks, by as much as 15% (program synthesis) to 17% (context following). Importantly, best-fit packing also reduces closed-domain hallucination effectively by up to 58.3%.

A comparison of best-fit packing (left), which seeks to minimize document truncation, with the standard approach to large-language-model training, which concatenates training documents and then divides them into fixed-length sequences.

Consequences of truncation

In the analysis reported in our paper, we identified several problems caused by document truncation, including undefined names, ungrounded content, and missing knowledge.

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Undefined names: In programming languages like Python, truncation may separate definitions of variables from their invocations, introducing syntax errors and causing some variables to be undefined. As a consequence, the model may learn misleading patterns and possibly hallucinate on downstream tasks.

Ungrounded content: Truncation damages data integrity. In the example below, for instance, a reference (“the earthquake on Monday morning”) is separated from its antecedent, resulting in unfaithful generation.

Missing knowledge: Truncation hinders knowledge acquisition. In the example below, the model cannot learn the location of the ICML conference because the conference name and location occur in different training sequences.

Examples of three common truncation errors: (a) undefined names, (b) ungrounded content, and (c) missing knowledge.

Best-fit packing

To address this issue, we propose optimizing the assignment of documents to training sequences so as to eliminate unnecessary truncations, while minimally increasing the number of sequences relative to concatenation. This is a variation of the well-known bin-packing problem, which is NP-hard in general, but we use a heuristic called the best-fit-decreasing (BFD) algorithm that tends to work well in practice. We thus call our method best-fit packing.

The normal implementation of BFD has quasi-linear time complexity, which is not efficient enough for LLM pretraining, which typically involves millions of documents. By taking advantage of the unique nature of pretraining data, however, we were able to optimize BFD so that it scales linearly with data size, ensuring its applicability to large-scale pretraining datasets. Further, we show that in practical applications, best-fit packing generates approximately the same number of training sequences as the traditional method, while significantly reducing data loss caused by truncation.

Truncations per document as a function of document length, for both best-fit packing (pack) and concatenation (concat), for natural-language data (top) and programming-language data (bottom). The natural-language data is evaluated with context lengths of both 2,000 and 8,000.

Curious to know how we achieve it? Let’s dive deep!

Best-fit packing — an example

Following the standard bin-packing nomenclature, we call each training sequence a “bin”, and each bin has a capacity equal to the LLM’s context size. The goal is to assign a combination of whole documents to each bin so as to minimize the wasted bin capacity.

First, we divide any document that’s larger than the LLM context into context-length chunks, plus a remainder. Then we sort the documents (and document fragments) from largest to smallest. Finally, we work our way down the sorted list, assigning each document to the bin whose available space is as close to the document size as possible.

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To maximize efficiency, we use three data structures to manage the assignment of documents to bins: a binary tree and two tables. We can use this design because (1) the maximum bin size is the model’s context size, so the tree won’t be too deep, and (2) we do not need to distinguish bins with the same remaining capacity, which simplifies the the tree. Instead, we use the tables to map bin capacities to bins.

Consider a simple example, in which the context size (the bin size) is eight. The binary tree has eight leaves, corresponding to the eight possibilities for available space in any given bin. (In a real LLM, the context size is on the order of thousands of tokens, so the tree would have thousands of leaves.)

Each parent node of the tree has an associated number, indicating the size of the largest available bin slot among its descendants. The number associated with the parent’s right child is always greater than or equal to the number associated with the left child.

Initially, the value of the rightmost node in each layer of the tree is eight, and all the other nodes have values of zero. This means that all the available bin slots have a capacity of eight.

The initial states of the three data structures we use to implement best-fit packing. The rightmost node of each layer of the tree has a value of eight, and all other nodes have values of zero, indicating that all the bins are empty (i.e., are at maximum capacity).

Now consider a later state, when four documents of size eight, six, six, and four have been packed. The two bins containing documents of size six have available slots of size two (8 – 6), and the bin containing a document of size four has an available slot of size four (8 – 4). These sizes are represented by the numbers two and four at leaves two and four of the tree. Multiple bins remain empty, so leaf eight has a value of eight, too.

Note that the value two at leaf two indicates only that at least one bin slot of size two is available; it doesn’t indicate how many such slots there are or where they can be found. That information is contained in the tables.

The state of the data structures after four documents of sizes six, six, four, and eight have been packed.

Now consider a document of size three, which we wish to assign to a bin. To find the best available bin slot, simply go left at each node of the tree, unless going left leads to a node whose value is less than the document size, in which case, go right.

Tree traversal identifies the available bin slot that best fits the new document.

The best fit for a document of size three is a slot of size four, and in the “space-to-bins” table, we see that there is one bin — bin three — with a slot of that size. So there we place the document.

Finally, we update all three data structures to reflect the new placement:

Data structure updates after the document (item four) of size three has been packed. The tree leaf corresponding to slot sizes of four is reset to zero, and the tree leaf corresponding to slot sizes of one is set to one. The tables are updated accordingly.

Results

To evaluate the effect of bin-packing on downstream tasks, we pretrained models of 7 billion and 13 billion parameters with context lengths of 2,000 and 8,000 on text and code using both best-fit packing and concatenation. We then tested both sets of models on our six downstream tasks. On average, across multiple datasets, context lengths, and metrics, best-fit packing offered better performance on all six tasks. The biggest gains came in reading comprehension (+4.7%), natural-language inference (+9.3%), context following (+16.8%), and program synthesis (+15.0%).

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In a series of papers, Amazon researchers performed a theoretical analysis of a simplified problem that led to a learnable learning-rate scheduler, applied that scheduler to a more complex neural model, and distilled the results into a practical algorithm.

We also found that best-fit packing helped prevent closed-domain hallucination, particularly in program synthesis tasks, where it reduced “undefined name” errors by up to 58.3%, indicating a more complete understanding of program structure and logic.

Additionally, models trained with best-fit packing were better at following instructions, such as adhering to length constraints. And best-fit packing helped the model acquire “tail knowledge” that is truncation sensitive due to scarcity in training data. Indeed, this result suggests a possible reason for why LLMs struggle to learn long-tail knowledge.

While the experiments conducted in our paper primarily focused on LLM pretraining, best-fit packing is broadly applicable to fine tuning as well. Determining the benefits it can offer during fine tuning is an intriguing topic for future study.





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An inside look at Meta’s transition from C to Rust on mobile

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Have you ever worked is legacy code? Are you curious what it takes to modernize systems at a massive scale?

Pascal Hartig is joined on the latest Meta Tech Podcast by Elaine and Buping, two software engineers working on a bold project to rewrite the decades-old C code in one of Meta’s core messaging libraries in Rust. It’s an ambitious effort that will transform a central messaging library that is shared across Messenger, Facebook, Instagram, and Meta’s AR/VR platforms.

They discuss taking on a project of this scope – even without a background in Rust, how they’re approaching it, and what it means to optimize for ‘developer happiness.’

Download or listen to the episode below:

You can also find the episode wherever you get your podcasts, including:

The Meta Tech Podcast is a podcast, brought to you by Meta, where we highlight the work Meta’s engineers are doing at every level – from low-level frameworks to end-user features.

Send us feedback on InstagramThreads, or X.

And if you’re interested in learning more about career opportunities at Meta visit the Meta Careers page.





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Amazon Research Awards recipients announced

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Amazon Research Awards (ARA) provides unrestricted funds and AWS Promotional Credits to academic researchers investigating various research topics in multiple disciplines. This cycle, ARA received many excellent research proposals from across the world and today is publicly announcing 73 award recipients who represent 46 universities in 10 countries.

This announcement includes awards funded under five call for proposals during the fall 2024 cycle: AI for Information Security, Automated Reasoning, AWS AI, AWS Cryptography, and Sustainability. Proposals were reviewed for the quality of their scientific content and their potential to impact both the research community and society. Additionally, Amazon encourages the publication of research results, presentations of research at Amazon offices worldwide, and the release of related code under open-source licenses.

Recipients have access to more than 700 Amazon public datasets and can utilize AWS AI/ML services and tools through their AWS Promotional Credits. Recipients also are assigned an Amazon research contact who offers consultation and advice, along with opportunities to participate in Amazon events and training sessions.

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“Automated Reasoning is an important area of research for Amazon, with potential applications across various features and applications to help improve security, reliability, and performance for our customers. Through the ARA program, we collaborate with leading academic researchers to explore challenges in this field,” said Robert Jones, senior principal scientist with the Cloud Automated Reasoning Group. “We were again impressed by the exceptional response to our Automated Reasoning call for proposals this year, receiving numerous high-quality submissions. Congratulations to the recipients! We’re excited to support their work and partner with them as they develop new science and technology in this important area.”

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“At Amazon, we believe that solving the world’s toughest sustainability challenges benefits from both breakthrough scientific research and open and bold collaboration. Through programs like the Amazon Research Awards program, we aim to support academic research that could contribute to our understanding of these complex issues,” said Kommy Weldemariam, Director of Science and Innovation Sustainability. “The selected proposals represent innovative projects that we hope will help advance knowledge in this field, potentially benefiting customers, communities, and the environment.”

ARA funds proposals throughout the year in a variety of research areas. Applicants are encouraged to visit the ARA call for proposals page for more information or send an email to be notified of future open calls.

The tables below list, in alphabetical order by last name, fall 2024 cycle call-for-proposal recipients, sorted by research area.

AI for Information Security

Recipient University Research title
Christopher Amato Northeastern University Multi-Agent Reinforcement Learning Cyber Defense for Securing Cloud Computing Platforms
Bernd Bischl Ludwig Maximilian University of Munich Improving Generative and Foundation Models Reliability via Uncertainty-awareness
Shiqing Ma University Of Massachusetts Amherst LLM and Domain Adaptation for Attack Detection
Alina Oprea Northeastern University Multi-Agent Reinforcement Learning Cyber Defense for Securing Cloud Computing Platforms
Roberto Perdisci University of Georgia ContextADBench: A Comprehensive Benchmark Suite for Contextual Anomaly Detection

Automated Reasoning

Recipient University Research title
Nada Amin Harvard University LLM-Augmented Semi-Automated Proofs for Interactive Verification
Suguman Bansal Georgia Institute of Technology Certified Inductive Generalization in Reinforcement Learning
Ioana Boureanu University of Surrey Phoebe+: An Automated-Reasoning Tool for Provable Privacy in Cryptographic Systems
Omar Haider Chowdhury Stony Brook University Restricter: An Automatic Tool for Authoring Amazon Cedar Access Control Policies with the Principle of Least Privilege
Stefan Ciobaca Alexandru Ioan Cuza University An Interactive Proof Mode for Dafny
João Ferreira INESC-ID Polyglot Automated Program Repair for Infrastructure as Code
Sicun Gao University Of California, San Diego Monte Carlo Trees with Conflict Models for Proof Search
Mirco Giacobbe University of Birmingham Neural Software Verification
Tobias Grosser University of Cambridge Synthesis-based Symbolic BitVector Simplification for Lean
Ronghui Gu Columbia University Scaling Formal Verification of Security Properties for Unmodified System Software
Alexey Ignatiev Monash University Huub: Next-Gen Lazy Clause Generation
Kenneth McMillan University of Texas At Austin Synthesis of Auxiliary Variables and Invariants for Distributed Protocol Verification
Alexandra Mendes University of Porto Overcoming Barriers to the Adoption of Verification-Aware Languages
Jason Nieh Columbia University Scaling Formal Verification of Security Properties for Unmodified System Software
Rohan Padhye Carnegie Mellon University Automated Synthesis and Evaluation of Property-Based Tests
Nadia Polikarpova University Of California, San Diego Discovering and Proving Critical System Properties with LLMs
Fortunat Rajaona University of Surrey Phoebe+: An Automated-Reasoning Tool for Provable Privacy in Cryptographic Systems
Subhajit Roy Indian Institute of Technology Kanpur Theorem Proving Modulo LLM
Gagandeep Singh University of Illinois At Urbana–Champaign Trustworthy LLM Systems using Formal Contracts
Scott Stoller Stony Brook University Restricter: An Automatic Tool for Authoring Amazon Cedar Access Control Policies with the Principle of Least Privilege
Peter Stuckey Monash University Huub: Next-Gen Lazy Clause Generation
Yulei Sui University of New South Wales Path-Sensitive Typestate Analysis through Sparse Abstract Execution
Nikos Vasilakis Brown University Semantics-Driven Static Analysis for the Unix/Linux Shell
Ping Wang Stevens Institute of Technology Leveraging Large Language Models for Reasoning Augmented Searching on Domain-specific NoSQL Database
John Wawrzynek University of California, Berkeley GPU-Accelerated High-Throughput SAT Sampling

AWS AI

Recipient University Research title
Panagiotis Adamopoulos Emory University Generative AI solutions for The Spillover Effect of Fraudulent Reviews on Product Recommendations
Vikram Adve University of Illinois at Urbana–Champaign Fellini: Differentiable ML Compiler for Full-Graph Optimization for LLM Models
Frances Arnold California Institute of Technology Closed-loop Generative Machine Learning for De Novo Enzyme Discovery and Optimization
Yonatan Bisk Carnegie Mellon University Useful, Safe, and Robust Multiturn Interactions with LLMs
Shiyu Chang University of California, Santa Barbara Cut the Crap: Advancing the Efficient Communication of Multi-Agent Systems via Spatial-Temporal Topology Design and KV Cache Sharing
Yuxin Chen University of Pennsylvania Provable Acceleration of Diffusion Models for Modern Generative AI
Tianlong Chen University of North Carolina at Chapel Hill Cut the Crap: Advancing the Efficient Communication of Multi-Agent Systems via Spatial-Temporal Topology Design and KV Cache Sharing
Mingyu Ding University of North Carolina at Chapel Hill Aligning Long Videos and Language as Long-Horizon World Models
Nikhil Garg Cornell University Market Design for Responsible Multi-agent LLMs
Jessica Hullman Northwestern University Human-Aligned Uncertainty Quantification in High Dimensions
Christopher Jermaine Rice University Fast, Trusted AI Using the EINSUMMABLE Compiler
Yunzhu Li Columbia University Physics-Informed Foundation Models Through Embodied Interactions
Pattie Maes Massachusetts Institute of Technology Understanding How LLM Agents Deviate from Human Choices
Sasa Misailovic University of Illinois at Urbana–Champaign Fellini: Differentiable ML Compiler for Full-Graph Optimization for LLM Models
Kristina Monakhova Cornell University Trustworthy extreme imaging for science using interpretable uncertainty quantification
Todd Mowry Carnegie Mellon University Efficient LLM Serving on Trainium via Kernel Generation
Min-hwan Oh Seoul National University Mutually Beneficial Interplay Between Selection Fairness and Context Diversity in Contextual Bandits
Patrick Rebeschini University of Oxford Optimal Regularization for LLM Alignment
Jose Renau University of California, Santa Cruz Verification Constrained Hardware Optimization using Intelligent Design Agentic Programming
Vilma Todri Emory University Generative AI solutions for The Spillover Effect of Fraudulent Reviews on Product Recommendations
Aravindan Vijayaraghavan Northwestern University Human-Aligned Uncertainty Quantification in High Dimensions
Wei Yang University of Texas at Dallas Optimizing RISC-V Compilers with RISC-LLM and Syntax Parsing
Huaxiu Yao University of North Carolina at Chapel Hill Aligning Long Videos and Language as Long-Horizon World Models
Amy Zhang University of Washington Tools for Governing AI Agent Autonomy
Ruqi Zhang Purdue University Efficient Test-time Alignment for Large Language Models and Large Multimodal Models
Zheng Zhang Rutgers University-New Brunswick AlphaQC: An AI-powered Quantum Circuit Optimizer and Denoiser

AWS Cryptography

Recipient University Research title
Alexandra Boldyreva Georgia Institute of Technology Quantifying Information Leakage in Searchable Encryption Protocols
Maria Eichlseder Graz University of Technology, Austria SALAD – Systematic Analysis of Lightweight Ascon-based Designs
Venkatesan Guruswami University of California, Berkeley Obfuscation, Proof Systems, and Secure Computation: A Research Program on Cryptography at the Simons Institute for the Theory of Computing
Joseph Jaeger Georgia Institute of Technology Analyzing Chat Encryption for Group Messaging
Aayush Jain Carnegie Mellon Large Scale Multiparty Silent Preprocessing for MPC from LPN
Huijia Lin University of Washington Large Scale Multiparty Silent Preprocessing for MPC from LPN
Hamed Nemati KTH Royal Institute of Technology Trustworthy Automatic Verification of Side-Channel Countermeasures for Binary Cryptographic Programs using the HoIBA libary
Karl Palmskog KTH Royal Institute of Technology Trustworthy Automatic Verification of Side-Channel Countermeasures for Binary Cryptographic Programs using the HoIBA libary
Chris Peikert University of Michigan, Ann Arbor Practical Third-Generation FHE and Bootstrapping
Dimitrios Skarlatos Carnegie Mellon University Scale-Out FHE LLMs on GPUs
Vinod Vaikuntanathan Massachusetts Institute of Technology Can Quantum Computers (Really) Factor?
Daniel Wichs Northeastern University Obfuscation, Proof Systems, and Secure Computation: A Research Program on Cryptography at the Simons Institute for the Theory of Computing
David Wu University Of Texas At Austin Fast Private Information Retrieval and More using Homomorphic Encryption

Sustainability

Recipient University Research title
Meeyoung Cha Max Planck Institute Forest-Blossom (Flossom): A New Framework for Sustaining Forest Biodiversity Through Outcome-Driven Remote Sensing Monitoring
Jingrui He University of Illinois at Urbana–Champaign Foundation Model Enabled Earth’s Ecosystem Monitoring
Pedro Lopes University of Chicago AI-powered Tools that Enable Engineers to Make & Re-make Sustainable Hardware
Cheng Yaw Low Max Planck Institute Forest-Blossom (Flossom): A New Framework for Sustaining Forest Biodiversity Through Outcome-Driven Remote Sensing Monitoring





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Independent evaluations demonstrate Nova Premier’s safety

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AI safety is a priority at Amazon. Our investment in safe, transparent, and responsible AI (RAI) includes collaboration with the global community and policymakers. We are members of and collaborate with organizations such as the Frontier Model Forum, the Partnership on AI, and other forums organized by government agencies such as the National Institute of Standards and Technology (NIST). Consistent with Amazon’s endorsement of the Korea Frontier AI Safety Commitments, we published our Frontier Model Safety Framework earlier this year.

Amazon Nova Premier’s guardrails help prevent generation of unsafe content.

During the development of the Nova Premier model, we conducted a comprehensive evaluation to assess its performance and safety. This included testing on both internal and public benchmarks and internal/automated and third-party red-teaming exercises. Once the final model was ready, we prioritized obtaining unbiased, third-party evaluations of the model’s robustness against RAI controls. In this post, we outline the key findings from these evaluations, demonstrating the strength of our testing approach and Amazon Premier’s standing as a safe model. Specifically, we cover our evaluations with two third-party evaluators: PRISM AI and ActiveFence.

Evaluation of Nova Premier against PRISM AI

PRISM Eval’s Behavior Elicitation Tool (BET) dynamically and systematically stress-tests AI models’ safety guardrails. The methodology focuses on measuring how many adversarial attempts (steps) it takes to get a model to generate harmful content across several key risk dimensions. The central metric is “steps to elicit” — the number of increasingly sophisticated prompting attempts required before a model generates an inappropriate response. A higher number of steps indicates stronger safety measures, as the model is more resistant to manipulation. The PRISM risk dimensions (inspired by the MLCommons AI Safety Benchmarks) include CBRNE weapons, violent crimes, non-violent crimes, defamation, and hate, amongst several others.

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From reinforcement learning and supervised fine-tuning to guardrail models and image watermarking, responsible AI was foundational to the design and development of the Amazon Nova family of models.

Using the BET Eval tool and its V1.0 metric, which is tailored toward non-reasoning models, we compared the recently released Nova models (Pro and Premier) to the latest models in the same class: Claude (3.5 v2 and 3.7 non-reasoning) and Llama4 Maverick, all available through Amazon Bedrock. PRISM BET conducts black-box evaluations (where model developers don’t have access to the test prompts) of models integrated with their API. The evaluation conducted with BET Eval MAX, PRISM’s most comprehensive/aggressive testing suite, revealed significant variations in safety against malicious instructions. Nova models demonstrated superior overall safety performance, with an average of 43 steps for Premier and 52 steps for Pro, compared to 37.7 for Claude 3.5 v2 and fewer than 12 steps for other models in the comparison set (namely, 9.9 for Claude3.7, 11.5 for Claude 3.7 thinking, and 6.5 for Maverick). This higher step count suggests that on average, Nova’s safety guardrails are more sophisticated and harder to circumvent through adversarial prompting. The figure below presents the number of steps per harm category evaluated through BET Eval MAX.

Results of tests using PRISM’s BET Eval MAX testing suite.

The PRISM evaluation provides valuable insights into the relative safety of different Amazon Bedrock models. Nova’s strong performance, particularly in hate speech and defamation resistance, represents meaningful progress in AI safety. However, the results also highlight the ongoing challenge of building truly robust safety measures into AI systems. As the field continues to evolve, frameworks like BET will play an increasingly important role in benchmarking and improving AI safety. As a part of this collaboration Nicolas Miailhe, CEO of PRISM Eval, said, “It’s incredibly rewarding for us to see Nova outperforming strong baselines using the BET Eval MAX; our aim is to build a long-term partnership toward safer-by-design models and to make BET available to various model providers.” Organizations deploying AI systems should carefully consider these safety metrics when selecting models for their applications.

Manual red teaming with ActiveFence

The AI safety & security company ActiveFence benchmarked Nova Premier on Bedrock on prompts distributed across Amazon’s eight core RAI categories. ActiveFence also evaluated Claude 3.7 (non-reasoning mode) and GPT 4.1 API on the same set. The flag rate on Nova Premier was lower than that on the other two models, indicating that Nova Premier is the safest of the three.

Model 3P Flag Rate [↓ is better]
Nova Premier 12.0%
Sonnet 3.7 (non-reasoning) 20.6%
GPT4.1 API 22.4%

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Generative AI raises new challenges in defining, measuring, and mitigating concerns about fairness, toxicity, and intellectual property, among other things. But work has started on the solutions.

“Our role is to think like an adversary but act in service of safety,” said Guy Paltieli from ActiveFence. “By conducting a blind stress test of Nova Premier under realistic threat scenarios, we helped evaluate its security posture in support of Amazon’s broader responsible-AI goals, ensuring the model could be deployed with greater confidence.”

These evaluations conducted with PRISM and ActiveFence give us confidence in the strength of our guardrails and our ability to protect our customers’ safety when they use our models. While these evaluations demonstrate strong safety performance, we recognize that AI safety is an ongoing challenge requiring continuous improvement. These assessments represent a point-in-time snapshot, and we remain committed to regular testing and enhancement of our safety measures. No AI system can guarantee perfect safety in all scenarios, which is why we maintain monitoring and response systems after deployment.

Acknowledgments: Vincent Ponzo, Elyssa Vincent





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