Comparison
DeepSeek-R1 vs P-tuning-v2
Verdict
Pick DeepSeek-R1 when license: DeepSeek-R1 is MIT, P-tuning-v2 is Apache-2.0; pick P-tuning-v2 when license: P-tuning-v2 is Apache-2.0, DeepSeek-R1 is MIT.
Markdown twin · DeepSeek-R1 alternatives · P-tuning-v2 alternatives
GraphCanon updated today
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Trust & integrity
| Signal | DeepSeek-R1 | P-tuning-v2 |
|---|---|---|
| Maintenance | Dormant (379d since push) As of today · github_public_v1 | Dormant (968d since push) As of today · github_public_v1 |
| Provenance | Not a fork · Organization 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 | 50 low (50 low) As of today · osv@v1 |
Tagline
- DeepSeek-R1
- Repository contains distilled LLM models derived from Qwen and LLaMA series for various commercial uses.
- P-tuning-v2
- An optimized deep prompt tuning strategy comparable to fine-tuning across scales and tasks
Stars
- DeepSeek-R1
- 92k
- P-tuning-v2
- 2.1k
Forks
- DeepSeek-R1
- 12k
- P-tuning-v2
- 212
Open issues
- DeepSeek-R1
- 45
- P-tuning-v2
- 35
Language
- DeepSeek-R1
- -
- P-tuning-v2
- Python
Adopt for
- DeepSeek-R1
- DeepSeek-R1 provides a set of distilled LLMs from Qwen and LLaMA series that support commercial use.
- P-tuning-v2
- -
Persona
- DeepSeek-R1
- -
- P-tuning-v2
- -
Runtime
- DeepSeek-R1
- -
- P-tuning-v2
- -
License
- DeepSeek-R1
- MIT
- P-tuning-v2
- Apache-2.0
Last pushed
- DeepSeek-R1
- Jun 27, 2025
- P-tuning-v2
- Nov 16, 2023
Categories
- DeepSeek-R1
- Model Training, LLM Frameworks
- P-tuning-v2
- LLM Frameworks, Vector Databases, Model Training
Trust and health
Days since push
- DeepSeek-R1
- 379d
- P-tuning-v2
- 968d
Open issues (now)
- DeepSeek-R1
- 45
- P-tuning-v2
- 35
Security scan
- DeepSeek-R1
- No lockfile
- P-tuning-v2
- 50 low (50 low)
Full report
- DeepSeek-R1
- Trust report
- P-tuning-v2
- Trust report
Choose DeepSeek-R1 if…
- License: DeepSeek-R1 is MIT, P-tuning-v2 is Apache-2.0.
- Pricing: The repository allows for commercial use under the MIT License or respective original licenses with no explicit monetary costs outlined in the repository..
- Requirements: Min 4 GB RAM; This is a rough estimate based on common model requirements. Specific models within DeepSeek-R1 may have different resource needs..
- Tags unique to DeepSeek-R1: derived models, mit license, distilled models, commercial use.
- When you need to work with pre-trained models derived specifically from the Qwen-2.5 and Llama3.x series, benefiting from their unique characteristics.
When NOT to use DeepSeek-R1
- Avoid if you need foundational models rather than distilled versions, as DeepSeek-R1 specializes in providing smaller, more efficient models suitable for resource-constrained environments.
- If your project is tightly regulated or requires models from a different lineage, as DeepSeek-R1 exclusively provides derivatives of Qwen and LLaMA series.
Choose P-tuning-v2 if…
- License: P-tuning-v2 is Apache-2.0, DeepSeek-R1 is MIT.
- Tags unique to P-tuning-v2: p-tuning, python, prompt-tuning, parameter-efficient-learning.
- Also covers Vector Databases.
When NOT to use P-tuning-v2
- Last GitHub push was 969 days ago (dormant maintenance, Nov 16, 2023). Validate activity before betting a new project on P-tuning-v2.
- LLM Frameworks: Avoid a framework for a single prompt-and-retrieve call; the abstraction can cost more than it saves.
- Vector Databases: Don't reach for a dedicated vector DB under ~100k vectors; pgvector on your existing Postgres is simpler to operate.
- Model Training: Try prompting and RAG first; fine-tuning is the answer to style/format, not missing knowledge.
Explore
Sources
Every stat on this page traces to a dated GitHub sync, license file, enrichment field, or trust scan.
- GitHub stars (deepseek-ai/DeepSeek-R1) · observed Jul 12, 2026
- GitHub forks (deepseek-ai/DeepSeek-R1) · observed Jul 12, 2026
- Last push (deepseek-ai/DeepSeek-R1) · observed Jun 27, 2025
- License file (MIT) · observed Jul 12, 2026
- Decision facts (enrichment) · observed Jul 11, 2026
- Trust scan (lockfile / OSV) · observed Jul 11, 2026
- GitHub stars (THUDM/P-tuning-v2) · observed Jul 11, 2026
- GitHub forks (THUDM/P-tuning-v2) · observed Jul 11, 2026
- Last push (THUDM/P-tuning-v2) · observed Nov 16, 2023
- License file (Apache-2.0) · observed Jul 11, 2026
- Trust scan (lockfile / OSV) · observed Jul 11, 2026
GitHub stars on cards: DeepSeek-R1 92k · P-tuning-v2 2.1k (synced Jul 12, 2026).
Common questions
- What is the difference between DeepSeek-R1 and P-tuning-v2?
- DeepSeek-R1: Repository contains distilled LLM models derived from Qwen and LLaMA series for various commercial uses.. P-tuning-v2: An optimized deep prompt tuning strategy comparable to fine-tuning across scales and tasks. See the comparison table for live GitHub stats and shared categories.
- When should I choose DeepSeek-R1 over P-tuning-v2?
- Choose DeepSeek-R1 over P-tuning-v2 when License: DeepSeek-R1 is MIT, P-tuning-v2 is Apache-2.0; Pricing: The repository allows for commercial use under the MIT License or respective original licenses with no explicit monetary costs outlined in the repository.; Requirements: Min 4 GB RAM; This is a rough estimate based on common model requirements. Specific models within DeepSeek-R1 may have different resource needs.; Tags unique to DeepSeek-R1: derived models, mit license, distilled models, commercial use; When you need to work with pre-trained models derived specifically from the Qwen-2.5 and Llama3.x series, benefiting from their unique characteristics.
- When should I choose P-tuning-v2 over DeepSeek-R1?
- Choose P-tuning-v2 over DeepSeek-R1 when License: P-tuning-v2 is Apache-2.0, DeepSeek-R1 is MIT; Tags unique to P-tuning-v2: p-tuning, python, prompt-tuning, parameter-efficient-learning; Also covers Vector Databases.
- When should I avoid DeepSeek-R1?
- Avoid if you need foundational models rather than distilled versions, as DeepSeek-R1 specializes in providing smaller, more efficient models suitable for resource-constrained environments. If your project is tightly regulated or requires models from a different lineage, as DeepSeek-R1 exclusively provides derivatives of Qwen and LLaMA series.
- When should I avoid P-tuning-v2?
- Last GitHub push was 969 days ago (dormant maintenance, Nov 16, 2023). Validate activity before betting a new project on P-tuning-v2. LLM Frameworks: Avoid a framework for a single prompt-and-retrieve call; the abstraction can cost more than it saves. Vector Databases: Don't reach for a dedicated vector DB under ~100k vectors; pgvector on your existing Postgres is simpler to operate. Model Training: Try prompting and RAG first; fine-tuning is the answer to style/format, not missing knowledge.
- Is DeepSeek-R1 or P-tuning-v2 more popular on GitHub?
- DeepSeek-R1 has more GitHub stars (91,991 vs 2,075). Stars measure visibility, not whether either tool fits your constraints.
- Are DeepSeek-R1 and P-tuning-v2 open source?
- Yes - both are open-source projects on GitHub (DeepSeek-R1: MIT, P-tuning-v2: Apache-2.0).
- Where can I find alternatives to DeepSeek-R1 or P-tuning-v2?
- GraphCanon lists graph-backed alternatives at DeepSeek-R1 alternatives and P-tuning-v2 alternatives (DeepSeek-R1 markdown twin, P-tuning-v2 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, DeepSeek-R1 or P-tuning-v2?
- DeepSeek-R1: Dormant. P-tuning-v2: Dormant. 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 DeepSeek-R1 and P-tuning-v2?
- GraphCanon publishes per-repo trust reports with dated maintenance, provenance, and scan summaries: DeepSeek-R1 trust report; P-tuning-v2 trust report.