Current AI Risk Assessment

27.46%

Chance of AI Control Loss

September 4, 2035

Estimated Date of Control Loss

AGI Development Metrics?

79.42%

AGI Progress

September 15, 2029

Estimated Date of AGI

Risk Trend Over Time

Latest AI News (Last 3 Days)

June 22, 2026
+0.08% Risk

Agentic Loops: The Shift Towards Continuous Self-Improving AI Swarms

The AI industry is transitioning from single-task agents to continuous agentic loops, where swarms of AI agents recursively prompt and oversee each other to perform ongoing work like software optimization. This paradigm shift relies heavily on test-time compute, allowing AI to make constant incremental improvements without human intervention. While highly effective, these continuous background loops consume massive amounts of tokens and require significant trust in AI autonomy.

Groq Raises $650 Million to Expand AI Inference Cloud and Rebuild Team

AI chipmaker Groq has secured a new $650 million funding round to expand its AI inference cloud business and hire new executive leadership. This raise follows a massive $20 billion "not-acqui-hire" deal with Nvidia, which acquired Groq's hardware intellectual property and hired its core leadership. Groq is now pivoting its strategy to focus on its neocloud infrastructure to meet the high demand for AI inference processing.

Open-Source Startup Reflection AI Secures Multi-Billion Dollar Compute Deal with SpaceX

Open-source AI startup Reflection AI has signed a massive compute agreement with SpaceX worth up to $6.3 billion to access Nvidia's advanced GB300 chips. Founded by former Google DeepMind researchers, the startup intends to use this infrastructure to scale its open-weight models as an alternative to closed systems. This deal highlights a growing industry trend of renting out specialized mega-data centers to various AI developers.

June 21, 2026
-0.03% Risk

US Export Control Forces Anthropic to Pull Advanced Models Offline Amid Political and Security Tensions

The US government forced AI safety lab Anthropic to take its advanced models, Fable 5 and Mythos 5, offline following national security concerns and bypassed guardrails. While cybersecurity experts warn that removing these models harms defense capabilities, others view the administration's actions as potentially politically motivated. The shutdown has sparked intense debate over AI regulation, national security, and the competitive landscape among major AI laboratories.

June 20, 2026
-0.03% Risk

Prominent Nobel Laureate John Jumper Shifts from DeepMind to Anthropic

John Jumper, the co-creator of the groundbreaking AlphaFold model and a 2024 Nobel laureate, has announced his departure from Google DeepMind to join competitor Anthropic. His transition coincides with other high-profile talent shifts in the AI industry, including Character AI co-founder Noam Shazeer moving to OpenAI. This high-profile migration highlights the intensifying war for elite talent among frontier AI laboratories.

See More AI News

AI News Calendar

January 2025
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31

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.