Model Madness; Code Dies This Year? Laundry Folding Bot
Today's AI Outlook: ☀️
MiniMax M2.5 Shakes X And Resets The Cost Curve
Chinese AI lab MiniMax dropped its new M2.5 model in the early hours, and by breakfast it had taken over X. Benchmark screenshots citing 80.2 percent on SWE-Bench Verified and strong agent and search scores clocked more than 1.8 million views within hours.
MiniMax positioned M2.5 as an open-source frontier model built for productivity, with two API variants and pricing that undercuts Western rivals by a wide margin.
Developers immediately began comparing it to Opus 4.6 and GPT-5.2, with early claims suggesting parity on coding benchmarks at a fraction of the cost.

Why it matters
Performance always grabs attention. Price changes behavior.
MiniMax says M2.5 runs about 37 percent faster, with execution pricing hovering near $1 per hour at 100 TPS for certain configurations. That math dramatically lowers the cost of running long-lived agents, and for startups carefully managing burn, this is meaningful.
If the benchmarks translate into real-world reliability, agent deployment shifts from experimental to default infrastructure.
The Deets
- 80.2 percent on SWE-Bench Verified
- Roughly even with Opus 4.6 and GPT-5.2 across key coding tasks
- Two APIs:
- M2.5-Lightning at $2.40 per million output tokens
- Standard M2.5 at $1.20 per million output tokens
- MiniMax claims the model now handles 30 percent of its internal daily tasks and 80 percent of new code commits
- Open-source weights and license not yet published
Key takeaway
The frontier model race is no longer just about IQ. It is about unit economics. If intelligence becomes cheap enough, orchestration and distribution become the real moat.
🧩 Jargon Buster - SWE-Bench: A benchmark that evaluates how well AI models can fix real-world software issues pulled from GitHub repositories.
Musk: Intent Will Kill Coding
Elon Musk thinks coding dies this year.
— Dustin (@r0ck3t23) February 12, 2026
Not evolves. Dies.
By December, AI won’t need programming languages. It generates machine code directly. Binary optimized beyond anything human logic could produce. No translation. No compilation. Just pure execution.
Musk: “You don’t… pic.twitter.com/yscrssiGfr
Elon Musk says programming dies this year.
(He's predicted a lot of things we're still waiting for, but let's go with it...)
By December, AI will skip coding languages and compilers and generate machine instructions directly. No writing syntax. No debugging scripts. Just describe what you want and the system builds it. Linked with Neuralink, he calls it imagination to software.
Today’s software runs in layers. Humans write Python or C++, which compiles into the machine instructions CPUs actually execute. Even AI coding tools operate inside that stack, generating traditional code under the hood while massively accelerating output.
Musk is proposing to remove that middle layer entirely. If AI moves straight from intent to optimized machine-level execution, the compression would be extreme. What feels fast now would look primitive.
Why it matters
Programming has always been about abstraction. Each generation moves humans further from raw hardware. Assembly to C. C to Python. Frameworks on top of frameworks. AI copilots on top of that. Musk is suggesting collapsing the stack altogether.
If intent replaces syntax, the leverage shifts. The scarce skill is no longer writing elegant code. It becomes defining problems with precision. Clear thinking becomes the new engineering. The bottleneck moves upstream into problem formulation and downstream into compute infrastructure.
In that world, the advantage tilts toward companies with the best chips, lowest latency systems and most optimized AI infrastructure. Software talent does not disappear, but it becomes more architectural than syntactic.
The Deets
• Today’s AI coding tools still output human readable code that compiles through traditional pipelines.
• Musk’s vision skips compilers entirely, generating optimized machine instructions directly.
• He hints at a future link to Neuralink, suggesting direct human to machine software generation.
• The compression effect could make current workflows look bloated by comparison.
Key takeaway
If this shift happens, programming becomes less about syntax and more about clarity of intent and infrastructure control. The winners are not the fastest typists. They are the clearest thinkers and the owners of the most efficient compute.
🧩 Jargon Buster - Compiler: Software that translates human written programming languages like Python or C++ into machine instructions a computer’s processor can execute.
Google’s Deep Think Breaks Reasoning Barriers

Google reminded everyone why it still looms large over the AI landscape. Its upgraded Gemini 3 Deep Think reasoning mode posted dominant scores across math, coding and science benchmarks, including 84.6 percent on ARC-AGI-2 and 48.4 percent on Humanity’s Last Exam.
The company also introduced Aletheia, a math-focused research agent capable of autonomously solving open problems and verifying proofs. Deep Think is now live for Google AI Ultra subscribers, with API access for researchers through early programs.
Why it matters
OpenAI and Anthropic have owned the 2026 headlines so far. Google just reinserted itself into the conversation with benchmark results that are difficult to ignore.
An AI scoring gold medal levels on Physics and Chemistry Olympiads and hitting a 3,455 Elo on Codeforces signals something bigger than leaderboard bragging. The frontier of scientific reasoning is shifting toward autonomous research agents, not just chat interfaces.
The Deets
- 84.6 percent on ARC-AGI-2
- 48.4 percent on Humanity’s Last Exam
- Gold medal marks on 2025 Physics and Chemistry Olympiads
- 3,455 Elo on Codeforces
- Aletheia designed for autonomous math research and proof verification
Key takeaway
We are moving from models that answer questions to models that advance knowledge. That changes how science itself gets done.
🧩 Jargon Buster - ARC-AGI: A benchmark designed to test abstract reasoning and general intelligence capabilities beyond memorized patterns.
🏛 Power Plays
Pentagon Pushes Frontier AI Into Classified Networks

The U.S. Department of Defense is pressing OpenAI, Anthropic, Google and xAI to deploy frontier models onto classified military systems, with fewer built-in restrictions than civilian deployments.
Officials want AI operating across all classification levels, including mission planning and potentially weapons-related systems.
Why it matters
Millions of defense personnel already use AI on unclassified systems. Classified networks contain targeting data, operational plans and sensitive intelligence. Generative models could synthesize these streams faster than human teams.
But mistakes in this environment are measured in lives, not bug reports.
The Deets
- Frontier models requested on classified networks
- Fewer guardrails than civilian deployments
- Focus areas include mission planning and operational intelligence
Key takeaway
This is a negotiation over boundaries. The military wants speed and dominance. AI firms want control and safety constraints. The balance struck here will shape how AI integrates into sovereign defense infrastructure.
🧩 Jargon Buster - Classified Network: A secure computing environment used by governments to handle sensitive or secret information.
💻 Tools & Products
OpenAI Launches GPT-5.3-Codex-Spark
OpenAI released GPT-5.3-Codex-Spark, a speed-optimized coding model running on Cerebras hardware. It generates more than 1,000 tokens per second and represents OpenAI’s first AI product powered outside its traditional Nvidia stack.
Why it matters
Codex has been criticized for latency. Spark trades some intelligence for real-time responsiveness, making it ideal for fast interactive edits while heavier models handle longer autonomous tasks.
It also signals OpenAI’s serious push to diversify compute partners.
The Deets
- 1,000+ tokens per second
- Built on Cerebras chips
- Research preview for ChatGPT Pro
- Limited enterprise API rollout
Key takeaway
Speed is a feature. Real-time coding shifts developer workflows from batch thinking to continuous iteration.
🧩 Jargon Buster - Token Per Second: A measure of how fast an AI model generates text or code, directly affecting responsiveness.
🏗 Research & Robotics
A $8,000 Laundry Robot Enters The Chat
Weave Robotics opened orders for Isaac 0, a mobile home robot that folds laundry and tidies basic household items (likely saving people... minutes!) It is currently limited to Bay Area buyers and costs $8,000 up front or $450 per month.
Deliveries begin this month.
Why it matters
Isaac combines computer vision, grasp planning and wheeled mobility, backed by remote human operators for edge cases. It reportedly takes about two minutes per garment.
At that speed and price, the economics may remain tough for most compared with human labor.
The Deets
- $8,000 upfront or $450 per month
- Roughly two minutes per item
- Remote human backup for difficult folds
- Limited regional rollout
Key takeaway
This is a premium gadget, not a productivity revolution. Throughput and autonomy still define the gap between demo and deployment.
🧩 Jargon Buster - Grasp Planning: The process by which a robot calculates how to pick up and manipulate objects without dropping or damaging them.
⚡ Quick Hits
- ByteDance officially launched Seedance 2.0, its viral SOTA video model, though access remains restricted.
- Anthropic announced a $30B funding round at a $380B valuation, with a $14B revenue run rate.
- OpenAI is retiring GPT-4o, GPT-4.1 and o4-mini from ChatGPT amid user pushback.
- India will require platforms to label all AI-generated content by Feb. 20.
- A Malaysian owner sold AI.com for roughly $75M to $80M after buying it in 1993 for about $4.
Today’s Sources: AI Secret, The Rundown AI, Robotics Herald