Disclaimer: As a Google Developer Expert (GDE), I was incredibly fortunate to be invited by Google DeepMind to test these models internally before their public release. The capabilities I'm sharing today are based on my hands-on early access. Have you ever stared at a dense, 15-page academic paper and wished you could just see what the researchers were talking about? As someone who frequently reads and writes heavy technical research, I face this constantly. Today, Google is introducing Nano Banana 2 (Gemini 3.1 Flash Image) . It is the latest state-of-the-art image model, and it is here to completely change how we interact with complex information. By bringing advanced world knowledge and reasoning to the high-speed Flash lineup, Nano Banana 2 dramatically closes the gap between lightning-fast generation speed and breathtaking visual fidelity. To put this to the test, I took two of my own highly technical research papers, uploaded the PDFs directly into the work...
Author: Rabimba Karanjai Scope: Problem statement + data methodology + model training (no deployment discussion) Abstract Real‑time coaching in motorsport is a safety‑critical learning problem : a system must map noisy, high‑frequency telemetry to short, actionable guidance that remains physically consistent and avoids hazardous recommendations . This paper proposes a “Split‑Brain” training formulation that separates (i) a semantic coaching target (what action/critique should be expressed) from (ii) a reflexive interface (how actions are represented as compact, verifiable tokens). The approach trains a Small Language Model (SLM) in the Gemma family [1] using QLoRA fine‑tuning [2] , and introduces a telemetry tokenizer plus teacher‑student synthesis pipeline to generate instruction‑action pairs at scale. Core contribution: a reproducible method to convert “ golden lap ” differential tel...