Home/Compare/LLMs-from-scratch vs KnowledgeEditingPapers

Comparison

LLMs-from-scratch vs KnowledgeEditingPapers

Verdict

Pick LLMs-from-scratch if lLMs-from-scratch is a project-oriented repository aimed at building PyTorch-based language models from the ground up, with detailed step-by-step instructions; pick KnowledgeEditingPapers if a specialized collection of foundational papers and reports that delve into the editing and manipulation of knowledge within large language models, making it a valuable resource for researchers looking to understand and斧.

Markdown twin · LLMs-from-scratch alternatives · KnowledgeEditingPapers alternatives

GraphCanon updated today

LLMs-from-scratch logo

LLMs-from-scratch

rasbt/LLMs-from-scratch

99kpushed Jun 2, 2026
vs
KnowledgeEditingPapers logo

KnowledgeEditingPapers

zjunlp/KnowledgeEditingPapers

1.2kpushed Jun 25, 2026

Trust & integrity

SignalLLMs-from-scratchKnowledgeEditingPapers
Maintenance
Steady (38d since push)
As of today · github_public_v1
Active (16d since push)
As of today · github_public_v1
Provenance
Not a fork · Personal account
As of today · github_public_v1
Not a fork · Organization account
As of today · github_public_v1
Security (OSV)
No lockfile
As of today · none
No lockfile
As of today · none

Tagline

LLMs-from-scratch
Implement a ChatGPT-like LLM in PyTorch from scratch, step by step
KnowledgeEditingPapers
Must-read Papers on Knowledge Editing for Large Language Models

Stars

LLMs-from-scratch
99k
KnowledgeEditingPapers
1.2k

Forks

LLMs-from-scratch
15k
KnowledgeEditingPapers
79

Open issues

LLMs-from-scratch
4
KnowledgeEditingPapers
0

Language

LLMs-from-scratch
Jupyter Notebook
KnowledgeEditingPapers
-

Adopt for

LLMs-from-scratch
LLMs-from-scratch is a project-oriented repository aimed at building PyTorch-based language models from the ground up, with detailed step-by-step instructions.
KnowledgeEditingPapers
A specialized collection of foundational papers and reports that delve into the editing and manipulation of knowledge within large language models, making it a valuable resource for researchers looking to understand and斧

Persona

LLMs-from-scratch
-
KnowledgeEditingPapers
-

Runtime

LLMs-from-scratch
-
KnowledgeEditingPapers
-

License

LLMs-from-scratch
Other
KnowledgeEditingPapers
MIT

Last pushed

LLMs-from-scratch
Jun 2, 2026
KnowledgeEditingPapers
Jun 25, 2026

Categories

LLMs-from-scratch
LLM Frameworks, Model Training
KnowledgeEditingPapers
LLM Frameworks, Model Training

Trust and health

Maintenance

LLMs-from-scratch
Steady (60%)
KnowledgeEditingPapers
Active (82%)

Days since push

LLMs-from-scratch
38d
KnowledgeEditingPapers
16d

Open issues (now)

LLMs-from-scratch
4
KnowledgeEditingPapers
0

Owner type

LLMs-from-scratch
User
KnowledgeEditingPapers
Organization

Full report

LLMs-from-scratch
Trust report
KnowledgeEditingPapers
Trust report

Choose LLMs-from-scratch if…

  • License: LLMs-from-scratch is Other, KnowledgeEditingPapers is MIT.
  • Tags unique to LLMs-from-scratch: ai, artificial-intelligence, attention mechanism, deep-learning.
  • - You are an advanced practitioner aiming to fully understand the underpinnings of LLMs using PyTorch as your primary framework.

When NOT to use LLMs-from-scratch

  • - If you are looking for a rapid deployment of an LLM without understanding its intricate structure - this tool requires extensive manual and conceptual work.
  • - You prefer frameworks with automatic model generation or other high-level abstractions that simplify the process. This repository emphasizes manual creation, which is more time-consuming but offers丰
  • a deeper learning experience.

Choose KnowledgeEditingPapers if…

  • License: KnowledgeEditingPapers is MIT, LLMs-from-scratch is Other.
  • Tags unique to KnowledgeEditingPapers: knowledge-editing, large-language-models, model-editing, natural-language-processing.
  • You are specifically interested in recent advancements in knowledge editing techniques for large language models.

When NOT to use KnowledgeEditingPapers

  • You are looking for a broad overview of machine learning or AI in general, as this repository focuses narrowly on knowledge editing within large language models.
  • If you seek practical tooling or implementation guidance rather than theoretical insights and review papers.
  • Your focus is more on data preprocessing or model training techniques unrelated to the specific modification of knowledge mechanisms in LLMs.

Explore

Sources

Every stat on this page traces to a dated GitHub sync, license file, enrichment field, or trust scan.

GitHub stars on cards: LLMs-from-scratch 99k · KnowledgeEditingPapers 1.2k (synced Jul 11, 2026).

Common questions

What is the difference between LLMs-from-scratch and KnowledgeEditingPapers?
LLMs-from-scratch: Implement a ChatGPT-like LLM in PyTorch from scratch, step by step. KnowledgeEditingPapers: Must-read Papers on Knowledge Editing for Large Language Models. See the comparison table for live GitHub stats and shared categories.
When should I choose LLMs-from-scratch over KnowledgeEditingPapers?
Choose LLMs-from-scratch over KnowledgeEditingPapers when License: LLMs-from-scratch is Other, KnowledgeEditingPapers is MIT; Tags unique to LLMs-from-scratch: ai, artificial-intelligence, attention mechanism, deep-learning; - You are an advanced practitioner aiming to fully understand the underpinnings of LLMs using PyTorch as your primary framework.
When should I choose KnowledgeEditingPapers over LLMs-from-scratch?
Choose KnowledgeEditingPapers over LLMs-from-scratch when License: KnowledgeEditingPapers is MIT, LLMs-from-scratch is Other; Tags unique to KnowledgeEditingPapers: knowledge-editing, large-language-models, model-editing, natural-language-processing; You are specifically interested in recent advancements in knowledge editing techniques for large language models.
When should I avoid LLMs-from-scratch?
- If you are looking for a rapid deployment of an LLM without understanding its intricate structure - this tool requires extensive manual and conceptual work. - You prefer frameworks with automatic model generation or other high-level abstractions that simplify the process. This repository emphasizes manual creation, which is more time-consuming but offers丰 a deeper learning experience.
When should I avoid KnowledgeEditingPapers?
You are looking for a broad overview of machine learning or AI in general, as this repository focuses narrowly on knowledge editing within large language models. If you seek practical tooling or implementation guidance rather than theoretical insights and review papers. Your focus is more on data preprocessing or model training techniques unrelated to the specific modification of knowledge mechanisms in LLMs.
Is LLMs-from-scratch or KnowledgeEditingPapers more popular on GitHub?
LLMs-from-scratch has more GitHub stars (98,899 vs 1,235). Stars measure visibility, not whether either tool fits your constraints.
Are LLMs-from-scratch and KnowledgeEditingPapers open source?
Yes - both are open-source projects on GitHub (LLMs-from-scratch: Other, KnowledgeEditingPapers: MIT).
Where can I find alternatives to LLMs-from-scratch or KnowledgeEditingPapers?
GraphCanon lists graph-backed alternatives at LLMs-from-scratch alternatives and KnowledgeEditingPapers alternatives (LLMs-from-scratch markdown twin, KnowledgeEditingPapers markdown twin), 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 mirrors this page for agents and LLM crawlers, with the same stats table and FAQ answers.
Which is better maintained, LLMs-from-scratch or KnowledgeEditingPapers?
LLMs-from-scratch: Steady. KnowledgeEditingPapers: Active. 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 LLMs-from-scratch and KnowledgeEditingPapers?
GraphCanon publishes per-repo trust reports with dated maintenance, provenance, and scan summaries: LLMs-from-scratch trust report; KnowledgeEditingPapers trust report.