Current AI Risk Assessment

25.48%

Chance of AI Control Loss

October 31, 2035

Estimated Date of Control Loss

AGI Development Metrics?

76.91%

AGI Progress

November 20, 2029

Estimated Date of AGI

Risk Trend Over Time

Latest AI News (Last 3 Days)

April 17, 2026
+0.05% Risk

OpenAI Loses Key Research Leaders as Company Pivots Away from Moonshot Projects

OpenAI's Kevin Weil (head of science research initiative) and Bill Peebles (Sora AI video tool creator) have announced their departures as the company consolidates around enterprise AI. The exits follow OpenAI's decision to cut "side quests" including Sora, which was losing $1 million daily in compute costs, and the absorption of OpenAI for Science into other research teams. The departures signal a strategic shift away from exploratory research toward commercial enterprise products.

OpenAI's Acquisition Strategy and Anthropic's Powerful Unreleased Model Highlight Growing AI Industry Divide

OpenAI is aggressively acquiring companies across various sectors including finance apps and media properties, while a shoe company has repositioned itself as an AI infrastructure provider. Anthropic has developed a model deemed too powerful for public release but suitable for demonstration to Federal Reserve Chair Jerome Powell, highlighting a widening gap between AI insiders and the general public.

AI Industry Consolidation Accelerates as OpenAI Expands and Anthropic Withholds Powerful Model

OpenAI is aggressively acquiring companies across various sectors while competitors pivot toward AI infrastructure. Anthropic has developed a model deemed too powerful for public release but is demonstrating it to high-level government officials like Federal Reserve Chair Jerome Powell, highlighting growing concerns about AI capabilities and control.

April 16, 2026
+0.13% Risk

Physical Intelligence Unveils Robot AI with Emergent Task Generalization Capability

Physical Intelligence has released research on its π0.7 model, demonstrating that the robot brain can perform tasks it was never explicitly trained on through compositional generalization. The model successfully combined fragmented training data to operate an air fryer and perform other novel tasks, surprising even the researchers who knew the training data intimately. While promising, the system still requires step-by-step verbal coaching for complex tasks and lacks standardized benchmarks for validation.

OpenAI Enhances Codex with Desktop Control and Multi-Agent Capabilities to Compete with Anthropic

OpenAI has significantly upgraded Codex, its AI coding assistant, with new features including background desktop control, multi-agent parallel processing, an in-app browser, and memory capabilities. These updates appear designed to compete directly with Anthropic's Claude Code, which has been gaining market share among businesses. The enhanced Codex can now autonomously control desktop applications, manage multiple tasks simultaneously, and integrate with 111 third-party plugins for expanded workflow automation.

Roblox Unveils Agentic AI Assistant with Multi-Step Planning and Autonomous Testing Capabilities

Roblox is significantly upgrading its AI Assistant with agentic features that enable multi-step planning, autonomous building, and self-testing of games. The new "Planning Mode" acts as a collaborative partner that analyzes code, asks clarifying questions, creates editable action plans, and uses AI tools to generate 3D meshes and procedural models. The system includes autonomous playtesting capabilities that can identify bugs and self-correct, with future plans to enable multiple AI agents working in parallel on complex workflows.

Antioch Raises $8.5M to Build Simulation Platform for Physical AI and Robotics Development

Antioch, a startup founded in 2025, has raised $8.5 million to develop simulation tools that help robotics companies train AI systems in virtual environments before deploying them in the physical world. The company aims to close the "sim-to-real gap" by creating high-fidelity simulations that allow developers to test robots, generate training data, and perform reinforcement learning without expensive physical testing infrastructure. Antioch positions itself as the "Cursor for physical AI," enabling smaller companies to access simulation capabilities previously available only to well-funded firms like Waymo.

April 15, 2026
-0.03% Risk

OpenAI Launches Enhanced Agents SDK with Sandboxing for Safer Enterprise AI Agent Deployment

OpenAI has updated its Agents SDK to help enterprises build AI agents with new safety features including sandboxing capabilities that allow agents to operate in controlled environments. The update includes an in-distribution harness for frontier models and aims to enable development of long-horizon, complex multi-step agents while mitigating risks from unpredictable agent behavior. Initial support is available in Python with TypeScript and additional features planned for future releases.

See More AI News

AI News Calendar

April 2026
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January 2025
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AI Risk Assessment Methodology

Our risk assessment methodology leverages a sophisticated analysis framework to evaluate AI development and its potential implications:

Data Collection

We continuously monitor and aggregate AI news from leading research institutions, tech companies, and policy organizations worldwide. Our system analyzes hundreds of developments daily across multiple languages and sources.

Impact Analysis

Each news item undergoes rigorous assessment through:

  • Technical Evaluation: Analysis of computational advancements, algorithmic breakthroughs, and capability improvements
  • Safety Research: Progress in alignment, interpretability, and containment mechanisms
  • Governance Factors: Regulatory developments, industry standards, and institutional safeguards

Indicator Calculation

Our indicators are updated using a Bayesian probabilistic model that:

  • Assigns weighted impact scores to each analyzed development
  • Calculates cumulative effects on control loss probability and AGI timelines
  • Accounts for interdependencies between different technological trajectories
  • Maintains historical trends to identify acceleration or deceleration patterns

This methodology enables data-driven forecasting while acknowledging the inherent uncertainties in predicting transformative technological change.