---
title: "FineTuningLLMs vs llm-course"
type: "comparison"
canonical_url: "https://www.graphcanon.com/compare/dvgodoy-finetuningllms-vs-mlabonne-llm-course"
tools: ["dvgodoy-finetuningllms", "mlabonne-llm-course"]
---

# FineTuningLLMs vs llm-course

*GraphCanon updated Jul 11, 2026*

## Verdict

Pick FineTuningLLMs when license: FineTuningLLMs is MIT, llm-course is Apache-2.0; pick llm-course when license: llm-course is Apache-2.0, FineTuningLLMs is MIT.

[FineTuningLLMs](https://github.com/dvgodoy/FineTuningLLMs) reports 848 GitHub stars, 114 forks, and 4 open issues, last pushed Feb 28, 2026. [llm-course](https://mlabonne.github.io/blog/) has 81k stars, 9.4k forks, and 84 open issues, last pushed Feb 5, 2026. Figures are from public GitHub metadata via [FineTuningLLMs's repository](https://github.com/dvgodoy/FineTuningLLMs) and [llm-course's repository](https://github.com/mlabonne/llm-course).

| | [FineTuningLLMs](/tools/dvgodoy-finetuningllms.md) | [llm-course](/tools/mlabonne-llm-course.md) |
| --- | --- | --- |
| Tagline | Official repository of my book "A Hands-On Guide to Fine-Tuning LLMs with PyTorch and Hugging Face" | Course to get into Large Language Models (LLMs) with roadmaps and Colab notebooks. |
| Stars | 848 | 80,839 |
| Forks | 114 | 9,421 |
| Open issues | 4 | 84 |
| Language | Jupyter Notebook | - |
| Adopt for | - | The llm-course provides a comprehensive guided course on Large Language Models (LLMs), divided into three parts: LLM Fundamentals, The LLM Scientist, and The LLM Engineer. It includes resources such as Colab notebooks to |
| Persona | - | - |
| Runtime | - | - |
| License | MIT | Apache-2.0 |
| Categories | Inference & Serving, LLM Frameworks, Model Training | Evaluation & Observability, Inference & Serving, LLM Frameworks, Model Training |

## Trust and health

_Sourced signals - not a safety guarantee. No winner column._

| | [FineTuningLLMs](/tools/dvgodoy-finetuningllms.md) | [llm-course](/tools/mlabonne-llm-course.md) |
| --- | --- | --- |
| Days since push | 132d | 155d |
| Open issues (now) | 4 | 84 |
| Full report | [trust report](/tools/dvgodoy-finetuningllms/trust.md) | [trust report](/tools/mlabonne-llm-course/trust.md) |

## Decision facts: llm-course

- **Requirements:** Course materials are available in Colab notebooks; access requires a Google account
- **Adopt for:** The llm-course provides a comprehensive guided course on Large Language Models (LLMs), divided into three parts: LLM Fundamentals, The LLM Scientist, and The LLM Engineer. It includes resources such as Colab notebooks to
- **License detail:** Apache-2.0

## Choose when

### Choose FineTuningLLMs if…

- License: FineTuningLLMs is MIT, llm-course is Apache-2.0.
- Tags unique to FineTuningLLMs: bitsandbytes, fine-tuning, finetuning, finetuning-llms.
- More recently updated (last pushed Feb 28, 2026).

### Choose llm-course if…

- License: llm-course is Apache-2.0, FineTuningLLMs is MIT.
- Requirements: Course materials are available in Colab notebooks; access requires a Google account.
- Tags unique to llm-course: colab-notebooks, course, machine-learning, roadmap.
- Also covers Evaluation & Observability.
- - When you want a comprehensive roadmap for understanding large language models including fundamental knowledge

## When NOT to use FineTuningLLMs

- Last GitHub push was 133 days ago (slowing maintenance, Feb 28, 2026). Validate activity before betting a new project on FineTuningLLMs.
- Inference & Serving: Self-hosting rarely beats a hosted API on cost until you have steady, high-volume traffic.
- LLM Frameworks: Avoid a framework for a single prompt-and-retrieve call; the abstraction can cost more than it saves.
- Model Training: Try prompting and RAG first; fine-tuning is the answer to style/format, not missing knowledge.

## When NOT to use llm-course

- - If you only require a quick introduction to LLMs without deep dive into core components
- - When you prefer working directly with commercial platforms that provide complete services rather than following detailed steps on building and deploying models yourself through this course's open,DI

## Common questions

### What is the difference between FineTuningLLMs and llm-course?

FineTuningLLMs: Official repository of my book "A Hands-On Guide to Fine-Tuning LLMs with PyTorch and Hugging Face". llm-course: Course to get into Large Language Models (LLMs) with roadmaps and Colab notebooks.. See the comparison table for live GitHub stats and shared categories.

### When should I choose FineTuningLLMs over llm-course?

Choose FineTuningLLMs over llm-course when License: FineTuningLLMs is MIT, llm-course is Apache-2.0; Tags unique to FineTuningLLMs: bitsandbytes, fine-tuning, finetuning, finetuning-llms; More recently updated (last pushed Feb 28, 2026).

### When should I choose llm-course over FineTuningLLMs?

Choose llm-course over FineTuningLLMs when License: llm-course is Apache-2.0, FineTuningLLMs is MIT; Requirements: Course materials are available in Colab notebooks; access requires a Google account; Tags unique to llm-course: colab-notebooks, course, machine-learning, roadmap; Also covers Evaluation & Observability; - When you want a comprehensive roadmap for understanding large language models including fundamental knowledge.

### When should I avoid FineTuningLLMs?

Last GitHub push was 133 days ago (slowing maintenance, Feb 28, 2026). Validate activity before betting a new project on FineTuningLLMs. Inference & Serving: Self-hosting rarely beats a hosted API on cost until you have steady, high-volume traffic. LLM Frameworks: Avoid a framework for a single prompt-and-retrieve call; the abstraction can cost more than it saves. Model Training: Try prompting and RAG first; fine-tuning is the answer to style/format, not missing knowledge.

### When should I avoid llm-course?

- If you only require a quick introduction to LLMs without deep dive into core components - When you prefer working directly with commercial platforms that provide complete services rather than following detailed steps on building and deploying models yourself through this course's open,DI

### Is FineTuningLLMs or llm-course more popular on GitHub?

llm-course has more GitHub stars (80,839 vs 848). Stars measure visibility, not whether either tool fits your constraints.

### Are FineTuningLLMs and llm-course open source?

Yes - both are open-source projects on GitHub (FineTuningLLMs: MIT, llm-course: Apache-2.0).

### Where can I find alternatives to FineTuningLLMs or llm-course?

GraphCanon lists graph-backed alternatives at [FineTuningLLMs alternatives](/tools/dvgodoy-finetuningllms/alternatives) and [llm-course alternatives](/tools/mlabonne-llm-course/alternatives) ([FineTuningLLMs markdown twin](/tools/dvgodoy-finetuningllms/alternatives.md), [llm-course markdown twin](/tools/mlabonne-llm-course/alternatives.md)), ranked by typed relationship edges rather than popularity votes.

### Is there a machine-readable version of this comparison?

Yes. The markdown twin at [this comparison](/compare/dvgodoy-finetuningllms-vs-mlabonne-llm-course.md) mirrors this page for agents and LLM crawlers, with the same stats table and FAQ answers.

### Which is better maintained, FineTuningLLMs or llm-course?

FineTuningLLMs: Slowing. llm-course: Slowing. Compare maintenance labels, days since push, and release cadence in the trust section below - stars alone do not measure maintenance.

### Where are the full trust reports for FineTuningLLMs and llm-course?

GraphCanon publishes per-repo trust reports with dated maintenance, provenance, and scan summaries: [FineTuningLLMs trust report](/tools/dvgodoy-finetuningllms/trust); [llm-course trust report](/tools/mlabonne-llm-course/trust).

---

**Machine-readable endpoints**

- JSON: [`/api/graphcanon/graph?tool=dvgodoy-finetuningllms`](/api/graphcanon/graph?tool=dvgodoy-finetuningllms)
- LLM index: [/llms.txt](/llms.txt)
- Full corpus: [/llms-full.txt](/llms-full.txt)

_GraphCanon - The knowledge graph for AI development. https://www.graphcanon.com/_
