Current AI Risk Assessment
Chance of AI Control Loss
Estimated Date of Control Loss
AGI Development Metrics
AGI Progress
Estimated Date of AGI
Risk Trend Over Time
Latest AI News (Last 3 Days)
Sanders and Ocasio-Cortez Propose Moratorium on Large Data Center Construction Pending AI Regulation
Senator Bernie Sanders and Representative Alexandria Ocasio-Cortez have introduced legislation to ban construction of data centers with peak power loads exceeding 20 megawatts until comprehensive AI regulation is enacted. The bill calls for government review of AI models before release, job displacement protections, environmental safeguards, union labor requirements, and export controls on advanced chips to countries lacking similar regulations.
Skynet Chance (-0.08%): The proposed legislation represents a meaningful attempt to implement regulatory oversight and control mechanisms over AI development, including pre-release model certification and infrastructure constraints. If enacted, such measures could reduce risks of uncontrolled AI deployment, though the bill's actual passage remains uncertain given industry opposition and geopolitical pressures.
Skynet Date (+1 days): By proposing a moratorium on large data center construction, the legislation could significantly slow the pace of AI capability scaling if enacted, as compute infrastructure is essential for training advanced models. However, political spending by AI companies and China competition concerns suggest the bill faces substantial obstacles to passage, limiting its likely impact on timelines.
AGI Progress (-0.01%): The proposal represents potential regulatory friction that could constrain AI development infrastructure, though its introduction as legislation rather than enacted law means it currently has minimal concrete impact. The bill signals growing political will to regulate AI, which could eventually slow progress if similar measures gain traction.
AGI Date (+1 days): A moratorium on data center construction would directly restrict the compute infrastructure necessary for scaling to AGI if implemented, potentially delaying timelines. However, the bill's prospects appear limited given industry lobbying power and competitive dynamics with China, so its actual decelerating effect on AGI timelines is moderate at best.
Anthropic Introduces Auto Mode for Claude Code with AI-Driven Safety Layer
Anthropic has launched "auto mode" for Claude Code, allowing the AI to autonomously decide which coding actions are safe to execute without human approval, while filtering out risky behaviors and potential prompt injection attacks. This research preview feature uses AI safeguards to review actions before execution, blocking dangerous operations while allowing safe ones to proceed automatically. The feature is rolling out to Enterprise and API users and currently works only with Claude Sonnet 4.6 and Opus 4.6 models, with Anthropic recommending use in isolated environments.
Skynet Chance (+0.04%): This feature increases AI autonomy in executing code with less human oversight, which raises control and alignment concerns despite safety layers. The admission that it should be used in "isolated environments" and lack of transparency about safety criteria suggests residual risk of unintended autonomous actions.
Skynet Date (-1 days): The deployment of autonomous AI decision-making capabilities accelerates the timeline toward systems operating with reduced human supervision. This represents a meaningful step toward more independent AI systems, though the sandboxing recommendations suggest the industry recognizes and is managing near-term risks.
AGI Progress (+0.03%): This represents progress in AI systems making contextual safety judgments and operating autonomously, which are key capabilities needed for AGI. The ability to evaluate action safety and distinguish between benign and malicious operations demonstrates advancing reasoning and meta-cognitive capabilities.
AGI Date (-1 days): The shift from human-approved to AI-determined actions accelerates progress toward autonomous general systems. This feature, combined with related launches like Claude Code Review and Dispatch, indicates rapid advancement in agent autonomy across the industry, potentially bringing AGI capabilities closer.
Agile Robots Partners with Google DeepMind to Integrate Gemini AI Models into Industrial Robotics
Munich-based Agile Robots has entered a strategic partnership with Google DeepMind to integrate Gemini Robotics foundation models into its robots across industrial sectors including manufacturing, automotive, data centers, and logistics. The collaboration will involve testing and deploying AI-powered robots while using data collected from Agile Robots' 20,000+ installed systems to improve DeepMind's underlying AI models. This partnership follows similar deals between Google DeepMind and other robotics companies like Boston Dynamics, reflecting an industry trend toward combining specialized hardware and AI expertise.
Skynet Chance (+0.04%): The integration of advanced foundation models into large-scale industrial robotics (20,000+ deployed systems) increases the potential for autonomous systems operating with less human oversight, while the feedback loop of robot data improving AI models could accelerate unexpected capability emergence. However, the focus on controlled industrial environments and specific use cases provides some containment.
Skynet Date (-1 days): The strategic partnership accelerates the deployment of AI foundation models into physical robotics at scale, with data feedback loops that could speed capability development. The trend of multiple major robotics partnerships suggests faster real-world integration of advanced AI systems than previously expected.
AGI Progress (+0.03%): This represents significant progress in embodied AI by combining advanced foundation models with physical systems at industrial scale, addressing a critical gap in AGI development. The data feedback loop from 20,000+ robots to improve Gemini models provides valuable real-world grounding that could advance multimodal AI capabilities essential for AGI.
AGI Date (-1 days): The partnership accelerates the "physical AI" frontier identified as crucial for AGI development, with immediate deployment across multiple industrial sectors providing rapid iteration cycles. The growing trend of major AI lab partnerships with robotics companies suggests faster-than-anticipated progress toward embodied general intelligence.
Littlebird Raises $11M for Text-Based Screen Reading AI Assistant
Littlebird, a new AI startup, has raised $11 million for its screen-reading assistant that captures on-screen context in text format rather than screenshots. The tool runs in the background, automatically ignoring sensitive data, and allows users to query their digital activity, take meeting notes, and create automated routines for productivity tasks. Unlike competitors like Rewind and Microsoft Recall that use visual data, Littlebird stores lightweight text-based context in the cloud to power AI workflows.
Skynet Chance (+0.01%): The product introduces pervasive monitoring of user activity that could normalize constant AI surveillance, though current privacy controls and text-only storage somewhat mitigate immediate control risks. The cloud-based storage of comprehensive user context creates potential vulnerabilities for data aggregation.
Skynet Date (+0 days): This is a productivity application focused on personal context capture rather than advancing core AI capabilities or autonomy. It doesn't meaningfully accelerate or decelerate progress toward uncontrollable AI systems.
AGI Progress (+0.01%): The product demonstrates progress in making AI systems more contextually aware of users' digital lives, which is an important component for more generally capable AI assistants. However, this is an application-layer innovation rather than a fundamental breakthrough in AI capabilities.
AGI Date (+0 days): The successful funding and development of context-aware AI tools slightly accelerates the ecosystem development around making AI more useful and integrated into daily workflows. This incremental progress in applied AI contributes modestly to the infrastructure needed for more advanced systems.
Gimlet Labs Raises $80M Series A for Multi-Silicon AI Inference Optimization Platform
Gimlet Labs, founded by Stanford professor Zain Asgar, has raised an $80 million Series A led by Menlo Ventures for its multi-silicon inference cloud platform. The software orchestrates AI workloads across diverse hardware types (CPUs, GPUs, high-memory systems) to improve efficiency by 3x-10x, addressing the massive underutilization of existing data center infrastructure. The company already has eight-figure revenues and partnerships with major chip makers including NVIDIA, AMD, Intel, and Cerebras.
Skynet Chance (-0.03%): Improved efficiency in AI inference makes deployment more economical and accessible, potentially accelerating proliferation of AI systems. However, this is primarily an infrastructure optimization rather than a capability advancement that directly impacts alignment or control mechanisms.
Skynet Date (-1 days): By making AI inference 3x-10x more efficient and reducing infrastructure costs, this technology accelerates the deployment and scaling of AI systems. The efficiency gains lower barriers to running more sophisticated AI workloads sooner than otherwise possible.
AGI Progress (+0.02%): While not advancing core AI capabilities directly, the platform removes a significant bottleneck in AI deployment by dramatically improving inference efficiency. This enables more complex agentic workflows and larger-scale AI applications that were previously economically infeasible.
AGI Date (-1 days): The 3x-10x efficiency improvement and better hardware utilization effectively multiply available compute resources without new infrastructure investment. This acceleration in practical compute availability could speed AGI development timelines by making experimentation and deployment of advanced AI systems more accessible and cost-effective.
AI News Calendar
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.