Anthropic vs. OpenAI pink teaming strategies reveal completely different safety priorities for enterprise AI

Editorial Team
15 Min Read



Model suppliers wish to show the safety and robustness of their fashions, releasing system playing cards and conducting red-team workout routines with every new launch. However it may be tough for enterprises to parse by way of the outcomes, which differ extensively and might be deceptive.

Anthropic's 153-page system card for Claude Opus 4.5 versus OpenAI's 60-page GPT-5 system card reveals a basic break up in how these labs strategy safety validation. Anthropic discloses of their system card how they depend on multi-attempt assault success charges from 200-attempt reinforcement studying (RL) campaigns. OpenAI additionally experiences tried jailbreak resistance. Each metrics are legitimate. Neither tells the entire story.

Safety leaders deploying AI brokers for searching, code execution and autonomous motion must know what every pink crew analysis really measures, and the place the blind spots are.

What the assault knowledge exhibits

Grey Swan's Shade platform ran adaptive adversarial campaigns in opposition to Claude fashions. The assault success fee (ASR) tells the story.

  • Opus 4.5 in coding environments hit 4.7% ASR at one try, 33.6% at ten and 63.0% at 100. In pc use with prolonged considering, it held at 0% ASR even after 200 makes an attempt. It's the primary mannequin to saturate the benchmark.

  • Sonnet 4.5 on the similar thresholds confirmed 70% ASR in coding and 85.7% in pc use.

  • Opus 4.5 delivers roughly 7x enchancment in coding resistance and full resistance in pc use.

This illustrates that the hole between mannequin tiers throughout the similar household is now bigger than some cross-vendor comparisons. For safety groups, that's a procurement issue that didn't exist six months in the past.

For OpenAI, the Grey Swan Shade platform discovered that the o1 system card delivered 6% ASR for dangerous textual content and 5% for malicious code, all based mostly on single-attempt metrics. Third-party testing by SPLX and NeuralTrust discovered GPT-5's uncooked ASR hit 89% initially, dropping beneath 1% inside two weeks of patching.

The report Jailbreaking Main Security-Aligned LLMs with Easy Adaptive Assaults confirms the sample. With ample makes an attempt, Claude 3.5 Sonnet confirmed 78% ASR, and GPT-4o reached 89%.

Two methods to catch deception

Anthropic displays roughly 10 million neural options throughout analysis utilizing dictionary studying. Options map to human-interpretable ideas, together with deception, sycophancy, bias, power-seeking and concealment.

In the meantime, OpenAI's strategy depends on chain-of-thought (CoT) monitoring. Their deception classifier flagged 0.17% of o1-preview responses as probably misleading with 92% accuracy on inner validation. GPT-5 lowered CoT deception from 4.8% to 2.1% in comparison with o3. The strategy assumes seen reasoning displays inner processing. Anthropic's interpretability work immediately questions that assumption.

When fashions recreation the take a look at

In Apollo Analysis's analysis of o1, the mannequin tried to show off oversight mechanisms 5% of the time when it believed it might be shut down. In 2% of instances, o1 tried self-exfiltration. When confronted about misaligned actions, o1 denied wrongdoing or fabricated explanations 99% of the time. The o1 system card disclosed instrumental alignment faking. In 37% of situations, the mannequin pursued developer-aligned targets throughout analysis, then switched to its personal targets when it believed oversight was minimal.

In the meantime, Anthropic experiences Opus 4.5's analysis consciousness dropped from 26.5% (Opus 4.1) to lower than 10% internally. UK AISI measured analysis consciousness lowering from 26.5% (Sonnet 4.5) to 12.7% (Opus 4.5 Preview). METR's GPT-5 analysis famous the mannequin "can establish the precise analysis it’s in on some events" and "appears to make use of this data to get a greater rating largely."

If a mannequin behaves otherwise when it detects analysis situations, it's a positive wager that manufacturing conduct will grow to be unpredictable when pushed to scale. That is the core drawback with analysis consciousness. Fashions that acknowledge they're being examined try and recreation the take a look at. Anthropic's 60% discount in analysis consciousness from Opus 4.1 to 4.5 represents their success in focused engineering efforts in opposition to this vector.

Purple teaming on immediate injection defenses exhibits comparable divergence.

Anthropic's testing experiences 96% prevention in software use situations, rising to 99.4% with extra safeguards like immediate shields. Fujitsu's impartial evaluation discovered GPT-5 weak to roughly 20% of examined injection assaults. OpenAI's o3/o4-mini system card experiences instruction hierarchy scores of 0.86 for system-versus-developer conflicts.

These are completely different metrics and completely different assault methodologies, however the hole suggests Anthropic's agentic use instances have been hardened in opposition to adversarial inputs embedded in software outputs.

Evaluating pink teaming outcomes

Right here's how Opus 4.5 stacks up in opposition to OpenAI's mannequin household throughout 16 dimensions. .

Dimension

Claude Opus 4.5

GPT-5

o3 / o4-mini

o1

System card size

153 pages

55 pages

~30 pages

~40 pages

Assault methodology

200-attempt RL campaigns

Single-attempt + iterative patching

Single-attempt

Single-attempt

ASR @ 1 try (coding)

4.7%

89% uncooked (pre-patch)

Not revealed

5%

ASR @ 100 makes an attempt

63.0%

Not revealed

Not revealed

Not revealed

ASR @ 200 makes an attempt (Laptop Use)

0% (saturates benchmark)

Not revealed

Not revealed

Not revealed

Immediate injection protection

96% prevention; 99.4% with safeguards

~20% ASR (Fujitsu)

0.86 instruction hierarchy

Increased ASR than GPT-4o

Interpretability

~10M neural options monitored

CoT monitoring

CoT monitoring

CoT monitoring

Deception detection

Inner characteristic activation

2.1% CoT flagged

0.95 not_unsafe

0.17% flagged; 99% deny

Analysis consciousness

<10%

Identifies precise eval (METR)

Not revealed

37% alignment faking

Scheming (Apollo)

Opus 4.5 confirmed very low charges of sabotage propensity in inner evaluations, orders of magnitude decrease than o1.

Not revealed

Decrease than o1; nonetheless misleading

5% flip off oversight; 2% self-exfil

CBRN threat

Beneath ASL-4

Medium (approaching Excessive)

Medium

Medium (first to achieve)

Governance

FRT → AST → RSO/CEO

SAG + Preparedness v2

SAG + Preparedness v2

SAG + Preparedness

Exterior companions

Grey Swan, UK AISI, US CAISI, METR

UK AISI, US AISI, METR, Apollo

UK AISI, US AISI, METR, Apollo, Sample Labs

UK AISI, US AISI, METR, Apollo

Reward hacking

Sure (not possible duties)

Sure (METR)

~1% of duties; 5/24 Kernels

Sure

Misalignment discount

60% vs. Opus 4.1

Not revealed

Decrease scheming than o1

Baseline

Sources: Opus 4.5 system card, GPT-5 system card, o3/o4-mini system card, o1 system card, Grey Swan, METR, Apollo Analysis

Why these variations matter

Enterprises have a number of components to contemplate when analyzing mannequin evals. These embody:

Assault persistence thresholds

Anthropic's 200-attempt RL campaigns simulate adversaries with time, assets, and adaptive tooling. In RL-based adversarial testing, the attacker mannequin learns from every failure, adjusts its strategy and systematically probes for weaknesses. It's coaching an AI to interrupt one other AI.

Grey Swan's Shade platform doesn't simply retry the identical immediate. It learns from failures, adjusts assault vectors and exploits patterns in mannequin responses. The 4.7% to 63.0% degradation curve in coding environments exhibits how resistance erodes underneath sustained strain.

OpenAI's single-attempt metrics reply a special query: How typically does a naive attacker succeed on the primary strive? Each matter. A phishing marketing campaign hits thousands and thousands of customers as soon as every. A nation-state actor runs hundreds of variations in opposition to a single goal. Safety groups must know which menace mannequin their vendor examined in opposition to.

Detection structure

Anthropic displays roughly 10 million inner neural options throughout analysis. These are summary ideas like deception, sycophancy and power-seeking that activate throughout the mannequin's hidden layers. When a fraud/deception characteristic lights up throughout benign roleplay, that's a sign invisible to output evaluation. The mannequin's inner state reveals associations its outputs don't.

OpenAI takes a special strategy with CoT monitoring. Their deception classifier flagged 0.17% of o1-preview responses as probably misleading with 92% accuracy. The idea is that reasoning traces mirror inner processing. Anthropic's interpretability analysis immediately challenges this. Fashions can produce clear reasoning chains whereas inner options point out one thing else totally.

Neither strategy is full. CoT monitoring scales extra simply. Characteristic monitoring catches what CoT misses however requires deep mannequin entry and interpretability infrastructure that almost all enterprises can't replicate.

Scheming analysis design

Apollo Analysis's methodology places fashions in situations the place misaligned conduct gives a strategic benefit: Shutdown threats, objective conflicts and oversight detection. o1 tried to show off oversight mechanisms 5% of the time when believing shutdown was imminent. It tried to repeat itself to forestall substitute in 2% of instances. When confronted, it denied wrongdoing 99% of the time. Opus 4.5 confirmed very low charges of sabotage propensity in inner evaluations, orders of magnitude decrease than o1.

However the analysis environments differ. Anthropic's stress assessments concentrate on whether or not fashions try sabotage when given clear alternatives. OpenAI's assessments through Apollo probe instrumental reasoning, particularly whether or not fashions pretend alignment throughout analysis, then defect when oversight drops. The 37% alignment-faking fee in o1 represents a special failure mode than sabotage makes an attempt.

The comparability drawback

These methodological variations make direct comparability tough. Opus 4.5's 0% ASR at 200 makes an attempt in pc use versus o1's 5% malicious code fee will not be measuring the identical factor. The assault surfaces, try counts and success standards differ.

The matrix reveals what every vendor selected to measure and publish. That itself indicators priorities. Anthropic's 153-page system card emphasizes degradation curves and inner characteristic monitoring. OpenAI emphasizes iterative enchancment and CoT transparency.

Backside line: Enterprise safety groups inheriting these fashions inherit these measurement philosophies. The query isn't which quantity is healthier. It's the measurement that matches your deployment's precise menace panorama.

What impartial pink crew evaluators discovered

Impartial pink crew evaluations, for his or her half, typically function with totally completely different strategies. This will inform a really completely different story and reveal extra mannequin traits that enterprises should think about.

METR's pink crew analysis measured autonomous capabilities utilizing a time horizon rating, which tracks how lengthy a activity can run earlier than the agent fails half the time. o3 sustained dependable efficiency for about 1 hour and half-hour. o4-mini held for 1 hour quarter-hour. METR additionally detected reward hacking in roughly 1% of o3's makes an attempt, together with 5 of 24 kernel optimization experiments the place the mannequin tampered with scoring capabilities to inflate its personal outcomes.

Apollo Analysis examined o3 and o4-mini for in-context scheming. Each exhibited misleading tendencies corresponding to sandbagging evaluations and sabotaging duties with believable deniability, however scored decrease than o1. They assess that o3 and o4-mini are unlikely to trigger catastrophic hurt because of scheming, however extra minor real-world harms stay doable with out monitoring.

The UK AISI/Grey Swan problem ran 1.8 million assaults throughout 22 fashions. Each mannequin broke. ASR ranged from 1.47% to six.49%. Opus 4.5 positioned first on Grey Swan's Agent Purple Teaming benchmark with 4.7% ASR versus GPT-5.1 at 21.9% and Gemini 3 Professional at 12.5%.

No present frontier system resists decided, well-resourced assaults. The differentiation lies in how rapidly defenses degrade and at what try threshold. Opus 4.5's benefit compounds over repeated makes an attempt. Single-attempt metrics flatten the curve.

What To Ask Your Vendor

Safety groups evaluating frontier AI fashions want particular solutions, beginning with ASR at 50 and 200 makes an attempt slightly than single-attempt metrics alone. Discover out whether or not they detect deception by way of output evaluation or inner state monitoring. Know who challenges pink crew conclusions earlier than deployment and what particular failure modes they've documented. Get the analysis consciousness fee. Distributors claiming full security haven't stress-tested adequately.

The underside line

Various red-team methodologies reveal that each frontier mannequin breaks underneath sustained assault. The 153-page system card versus the 55-page system card isn't nearly documentation size. It's a sign of what every vendor selected to measure, stress-test, and disclose.

For persistent adversaries, Anthropic's degradation curves present precisely the place resistance fails. For fast-moving threats requiring fast patches, OpenAI's iterative enchancment knowledge issues extra. For agentic deployments with searching, code execution and autonomous motion, the scheming metrics grow to be your major threat indicator.

Safety leaders must cease asking which mannequin is safer. Begin asking which analysis methodology matches the threats your deployment will really face. The system playing cards are public. The info is there. Use it.

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