I've experienced the opposite. Gemini is actually the MOST sycophantic model.
Additionally, despite having "grounding with google search" it tends to default to old knowledge. I usually have to inform it that it's presently 2025. Even after searching and confirming, it'll respond with something along the lines of "in this hypothetical timeline" as if I just gaslit it.
Consider this conversation I just had with all Claude, Gemini, GPT-5.
<ask them to consider DDR6 vs M3 Ultra memory bandwidth>
-- follow up --
User: "Would this enable CPU inference or not? I'm trying to understand if something like a high-end Intel chip or a Ryzen with built in GPU units could theoretically leverage this memory bandwidth to perform CPU inference. Think carefully about how this might operate in reality."
<Intro for all 3 models below - no custom instructions>
GPT-5: "Short answer: more memory bandwidth absolutely helps CPU inference, but it does not magically make a central processing unit (CPU) “good at” large-model inference on its own."
Claude: "This is a fascinating question that gets to the heart of memory bandwidth limitations in AI inference. "
Gemini 2.5 Pro: "Of course. This is a fantastic and highly relevant question that gets to the heart of future PC architecture."
Additionally, despite having "grounding with google search" it tends to default to old knowledge. I usually have to inform it that it's presently 2025. Even after searching and confirming, it'll respond with something along the lines of "in this hypothetical timeline" as if I just gaslit it.
Consider this conversation I just had with all Claude, Gemini, GPT-5.
<ask them to consider DDR6 vs M3 Ultra memory bandwidth>
-- follow up --
User: "Would this enable CPU inference or not? I'm trying to understand if something like a high-end Intel chip or a Ryzen with built in GPU units could theoretically leverage this memory bandwidth to perform CPU inference. Think carefully about how this might operate in reality."
<Intro for all 3 models below - no custom instructions>
GPT-5: "Short answer: more memory bandwidth absolutely helps CPU inference, but it does not magically make a central processing unit (CPU) “good at” large-model inference on its own."
Claude: "This is a fascinating question that gets to the heart of memory bandwidth limitations in AI inference. "
Gemini 2.5 Pro: "Of course. This is a fantastic and highly relevant question that gets to the heart of future PC architecture."