OpenAI Unveils Prism for Research

Amazon Axes 16,000 Jobs for AI

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AI PlanetX

Welcome to another edition of AI PlanetX.

OpenAI launches Prism for science; Amazon cuts 16,000 jobs amid AI spending; a viral open-source agent raises security concerns.

Inside This Edition: 💎

  • Hottest AI News

  • Top AI & SaaS Tools

  • AI Tutorial: Improve AI Output with Multiple Choice

  • Top AI & Tech News

  • AI Art Spotlight

  • Prompt of the Day: Prompt That Transforms Landing Pages

  • Featured AI Video

  • Course of the Day: AI and Algorithms by MIT

Hottest AI News

OpenAI

OpenAI Launches Prism to Accelerate Scientific Research with GPT 5.2

OpenAI has launched Prism, an AI‑native workspace that integrates GPT‑5.2 across the research workflow, from hypothesis and experiment design to data analysis and paper drafting, to help speed up scientific discovery.

Details:

  • The system works like an AI word processor rather than a chatbot. It supports advanced LaTeX formatting, turns whiteboard sketches into diagrams, and keeps full project context when reviewing or revising research

  • Executives compare it to Cursor, but for science. They point to 8.4 million advanced science queries each week and expect 2026 to be for AI and science what 2025 was for software engineering

  • This release builds on academic breakthroughs where AI helped with long standing Erdos problems and statistical axioms. It shows frontier models can explore proofs in axiom based fields

Available as a F-R-E-E web app for all ChatGPT users, Prism is not designed to conduct autonomous research but to streamline “deep workflow integration.”

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Amazon

Amazon Cuts 16,000 Jobs While Pursuing Massive AI Spending Plans

Amazon confirmed 16,000 global corporate layoffs, shifting spending to fund a $125 billion AI investment after an internal mistake leaked a draft “Project Dawn” email to employees.

Details:

  • The cuts bring total layoffs to 30,000 since October, affecting AWS, Retail, Prime Video, and HR. Amazon is also closing Fresh and Go stores and dropping its palm scan payment tech

  • CEO Andy Jassy said the move is meant to remove bureaucracy and flatten layers. The goal is to replace admin overhead with automation and keep the company operating like the “world’s largest startup”

  • SVP Beth Galetti said affected US staff have 90 days to find an internal role before severance starts. The memo followed the mistaken “Project Dawn” draft that wrongly told some AWS staff they’d already lost their jobs

Amazon says it’s finishing last year’s restructuring, but the move shows its sharp focus on AI infrastructure over its traditional corporate workforce.

Top AI & SaaS Tools

  • ReplySync (Life-time Deal): Automate Instagram DMs using a visual, no-code builder and AI to engage followers, capture and qualify leads, and nurture customers 24/7

  • Remotion: Open‑source framework to build real MP4 videos with React and Node js, letting you generate videos from data and render them locally

  • Manus Skills: Turn any session into a reusable expert Skill or import community-created Skills with one tap [F-R-E-E]

  • Moltbot (formerly Clawdbot): Open‑source, self‑hosted personal AI you run on your own device and chat with through apps you already use [F-R-E-E]

  • FLORA: 50+ image and video models in one subscription—test variations and collaborate with your team in one workspace [F-R-E-E]

Clear financial writing, faster

Turn spoken explanations into accurate, formatted financial copy for reports and investor comms. Wispr Flow saves editing time and keeps messaging consistent. Try Wispr Flow for finance.

AI Tutorial

How to Get Better AI Outputs with Multiple Choice Prompts

Most weak AI results come from messy context. Long explanations and half‑formed ideas confuse the system. This tutorial shows a simple fix: use multiple‑choice questions to create clean context before the AI responds.

  1. Define Goal

    Write one line describing the final outcome.

    Example Goal: “Create 3 strong taglines for my AI newsletter.”

  2. Set Task

    Tell the AI its job is to interview you to build context, not guess.

    Example Task: “Interview me using multiple choice questions to collect the context you need.”

  3. Control flow (Next Steps)

    Give clear rules so it asks questions first, then waits.

    Example Next Steps:

    • Ask 8 to 12 MCQs

    • Each has A, B, C, D options

    • After the last question, stop and wait for my answers

    • Do not generate outputs before I reply

  4. Use interview prompt

    Prompt example:

    “Goal: Write a landing page headline + subheadline for my AI prompts course.

    Task: Interview me to build the minimum required context using multiple choice questions.

    Next Steps: Ask 10 MCQs with A to D options. Keep questions short. After Q10, stop and wait. Do not write anything until you get my choices.”

  5. Reply with letters

    Answer like: “A, D, B, B, C, A, D, C, B, A”. This removes miscommunication and keeps context tight.

  6. Generate concepts from choices

    After you answer, tell it to produce a small set of options based on your selections.

    Example: “Using my choices, generate 4 concept options with a name and 2 line description each.”

  7. Compress previews with grid

    Once it generates concepts, ask for a compact comparison to save tokens.

    Prompt example:

    “Generate a 4x4 grid, one concept per grid cell, with name, 1 line idea, and 3 keywords. Then ask which cells I want as standalone versions.”

Note: If the output still feels off, do not rewrite everything. Ask for 3 more MCQs targeting what is missing.

Top AI & Tech News

  • Open‑source AI agent Moltbot goes viral after running 24/7 inside Telegram and WhatsApp — experts warn full system control poses serious security risks

  • DeepSeek open‑sourced OCR 2, a highly efficient document text extraction model that leads benchmarks with fewer tokens

  • Google announced Agentic Vision in Gemini 3 Flash, which turns image understanding into an active, multi-step process by combining visual reasoning with code execution

  • Anthropic has reportedly increased its planned VC raise from $10 billion to $20 billion, potentially valuing the company at $350 billion

AI Art Spotlight

Create Your Own Photo Like This Using the Prompt Below:

A hyper-realistic travel advertisement in square format (1080x1080), featuring a hand holding a sleek, ultra-thin smartphone or tablet in portrait orientation, tilted slightly sideways to create a striking 3D portal effect. The screen displays a high-resolution image of the most famous dish [FOOD] from [COUNTRY], which continues into the real background, blending seamlessly. The dish appears to emerge from the screen. Birds fly nearby and a commercial airplane passes through a bright blue sky with soft white clouds. Bold, clean sans-serif text reading "COUNTRY" is placed prominently above. The lighting is warm and natural, casting soft shadows across the landscape. The surroundings reflect the region’s natural environment (like meadows, coastlines, or city skylines). The device is glossy and minimal-bezel, enhancing realism and depth. Include a flagpole of the country flag, fairly visible.

Model: Nano Banana Pro

Prompt of the Day

Prompt That Takes Landing Pages from 60s to 90s

This prompt technique revolutionizes the quality of marketing assets by building an iterative review process directly into Claude's workflow. Instead of accepting the first draft, the prompt instructs Claude to simulate feedback from 10 world-class experts in design, copywriting, psychology, and conversion rate optimization.

Featured AI Video

Did Claude Just Replace Video Editors? (Remotion Breakdown)

AI Course of the Day

AI and Algorithms by MIT

This course introduces the principles, algorithms, and applications of machine learning from the perspective of modeling and prediction. It covers the formulation of learning problems; representation, overfitting, and generalization; classification, regression, reinforcement learning, sequence learning, and clustering; as well as classical and neural network methods.