AI tool comparison
Brilliant vs Dive into LLMs
Which one should you ship with? Here is the side-by-side panel verdict, pricing read, reviewer split, and community vote comparison.
Education
Brilliant
Learn math, data, and computer science interactively
100%
Panel ship
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Community
Free
Entry
Brilliant teaches math, computer science, and data science through interactive problem-solving. Visual, hands-on approach that builds intuition before formulas.
Education & Research
Dive into LLMs
University-grade open curriculum for understanding (not just using) LLMs
50%
Panel ship
—
Community
Free
Entry
Dive into LLMs is a structured LLM programming tutorial series from Shanghai Jiao Tong University covering fine-tuning, RLHF alignment, RAG pipelines, jailbreak attacks and defenses, watermarking techniques, GUI agents, and multimodal models. Each module includes slides, Jupyter notebooks with runnable code, and accompanying video lectures. The curriculum is designed for developers and researchers who want to go beyond prompt engineering into actually understanding how large language models work, how they're trained, and how to modify and deploy them. Topics span from transformer fundamentals through modern alignment techniques like DPO and GRPO. Recent additions cover GUI agents and multimodal architectures. The course has partnered with Huawei's Ascend community for localized deployment content. With 29k+ GitHub stars and trending hard today, this is one of the most-starred educational resources in the LLM ecosystem. Unlike blog posts and YouTube tutorials, the Jupyter notebooks mean you can run and modify every example yourself — making abstract concepts like RLHF tangible in a way that passive reading can't match.
Reviewer scorecard
“The interactive approach to learning CS fundamentals is more effective than video courses. Great for visual learners.”
“Every dev who uses LLMs in production should understand fine-tuning and alignment at the level this curriculum teaches. The Jupyter notebooks are the key — being able to run RLHF examples on a small model changes your mental model for how alignment actually works.”
“Actually teaches understanding, not just memorization. The problem-based approach builds real skills.”
“There are dozens of LLM curricula on GitHub — fast.ai, Andrej Karpathy's videos, the Stanford CS224N lectures. Unless you specifically need SJTU's framing or the Huawei Ascend content, it's hard to argue this is uniquely worth your time over the better-known alternatives.”
“Beautiful interactive lessons that make complex topics engaging. The design quality is exceptional.”
“This is squarely for researchers and ML engineers, not creative practitioners. I appreciate the effort but nothing here helps me do my work better today — it's a long-form learning investment that most creators won't need to make.”
“The world needs millions more people who understand LLMs at the fine-tuning and alignment level — not just the API level. Open curricula like this are how that happens. The jailbreak and watermarking modules are especially forward-looking for an increasingly adversarial AI landscape.”
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