Home/Compare/ColossalAI vs awesome-mlops

Comparison

ColossalAI vs awesome-mlops

Verdict

Pick ColossalAI when tags unique to ColossalAI: deep-learning, big-model, heterogeneous-training, foundation-models; pick awesome-mlops when tags unique to awesome-mlops: awesome, data-science, ml, mle.

Markdown twin · ColossalAI alternatives · awesome-mlops alternatives

GraphCanon updated today

ColossalAI logo

ColossalAI

hpcaitech/ColossalAI

41kpushed May 25, 2026
vs
awesome-mlops logo

awesome-mlops

kelvins/awesome-mlops

5.2kpushed Apr 29, 2026

Trust & integrity

SignalColossalAIawesome-mlops
Maintenance
Steady (46d since push)
As of today · github_public_v1
Steady (73d since push)
As of today · github_public_v1
Provenance
Not a fork · Organization account
As of today · github_public_v1
Not a fork · Personal account
As of today · github_public_v1
Security (OSV)
No lockfile
As of today · none
No lockfile
As of today · none

Tagline

ColossalAI
Making large AI models cheaper, faster and more accessible
awesome-mlops
:sunglasses: A curated list of awesome MLOps tools

Stars

ColossalAI
41k
awesome-mlops
5.2k

Forks

ColossalAI
4.5k
awesome-mlops
757

Open issues

ColossalAI
501
awesome-mlops
67

Language

ColossalAI
Python
awesome-mlops
Python

Adopt for

ColossalAI
ColossalAI is a Python library that leverages advanced parallelism techniques for more efficient and cost-effective development of large-scale AI models.
awesome-mlops
-

Persona

ColossalAI
-
awesome-mlops
-

Runtime

ColossalAI
-
awesome-mlops
-

License

ColossalAI
Apache-2.0
awesome-mlops
-

Last pushed

ColossalAI
May 25, 2026
awesome-mlops
Apr 29, 2026

Categories

ColossalAI
Model Training, Inference & Serving
awesome-mlops
Model Training, Inference & Serving, Computer Vision

Trust and health

Days since push

ColossalAI
46d
awesome-mlops
73d

Open issues (now)

ColossalAI
501
awesome-mlops
67

Owner type

ColossalAI
Organization
awesome-mlops
User

Full report

ColossalAI
Trust report
awesome-mlops
Trust report

Shared compatibility

  • Python · ColossalAI: Python runtime · awesome-mlops: Python runtime

Choose ColossalAI if…

  • Tags unique to ColossalAI: deep-learning, big-model, heterogeneous-training, foundation-models.
  • You require handling extremely large AI models with massive context windows, such as over 2M tokens.
  • More GitHub stars (41k vs 5.2k) - visibility, not fit.

When NOT to use ColossalAI

  • You are working in an environment that does not support Linux OS, as ColossalAI currently offers no support for other operating systems.
  • Your current CUDA version is less than 11.0 or your GPU compute capability is below 7.0 (pre-V100/RTX20 series).
  • You cannot satisfy the minimum hardware and software requirements specified, such as PyTorch >= 2.2 and Python >= 3.7.

Choose awesome-mlops if…

  • Tags unique to awesome-mlops: awesome, data-science, ml, mle.
  • Also covers Computer Vision.
  • Leaner open-issue backlog (67).

When NOT to use awesome-mlops

  • Model Training: Try prompting and RAG first; fine-tuning is the answer to style/format, not missing knowledge.
  • Inference & Serving: Self-hosting rarely beats a hosted API on cost until you have steady, high-volume traffic.

Explore

Sources

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

GitHub stars on cards: ColossalAI 41k · awesome-mlops 5.2k (synced Jul 11, 2026).

Common questions

What is the difference between ColossalAI and awesome-mlops?
ColossalAI: Making large AI models cheaper, faster and more accessible. awesome-mlops: :sunglasses: A curated list of awesome MLOps tools. See the comparison table for live GitHub stats and shared categories.
When should I choose ColossalAI over awesome-mlops?
Choose ColossalAI over awesome-mlops when Tags unique to ColossalAI: deep-learning, big-model, heterogeneous-training, foundation-models; You require handling extremely large AI models with massive context windows, such as over 2M tokens; More GitHub stars (41k vs 5.2k) - visibility, not fit.
When should I choose awesome-mlops over ColossalAI?
Choose awesome-mlops over ColossalAI when Tags unique to awesome-mlops: awesome, data-science, ml, mle; Also covers Computer Vision; Leaner open-issue backlog (67).
When should I avoid ColossalAI?
You are working in an environment that does not support Linux OS, as ColossalAI currently offers no support for other operating systems. Your current CUDA version is less than 11.0 or your GPU compute capability is below 7.0 (pre-V100/RTX20 series). You cannot satisfy the minimum hardware and software requirements specified, such as PyTorch >= 2.2 and Python >= 3.7.
When should I avoid awesome-mlops?
Model Training: Try prompting and RAG first; fine-tuning is the answer to style/format, not missing knowledge. Inference & Serving: Self-hosting rarely beats a hosted API on cost until you have steady, high-volume traffic.
Is ColossalAI or awesome-mlops more popular on GitHub?
ColossalAI has more GitHub stars (41,408 vs 5,208). Stars measure visibility, not whether either tool fits your constraints.
Are ColossalAI and awesome-mlops open source?
Yes - both are open-source projects on GitHub.
Where can I find alternatives to ColossalAI or awesome-mlops?
GraphCanon lists graph-backed alternatives at ColossalAI alternatives and awesome-mlops alternatives (ColossalAI markdown twin, awesome-mlops 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, ColossalAI or awesome-mlops?
ColossalAI: Steady. awesome-mlops: Steady. 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 ColossalAI and awesome-mlops?
GraphCanon publishes per-repo trust reports with dated maintenance, provenance, and scan summaries: ColossalAI trust report; awesome-mlops trust report.