| Signal | Sora | Delta | Wan 2.1 T2V |
|---|---|---|---|
Capabilities | 0 | -- | |
Pricing | 100 | -- | |
Context window size | 0 | -- | |
Recency | 39 | -10 | |
Output Capacity | 20 | -- | |
| Overall Result | 0 wins | of 5 | 1 wins |
Score History
12.7
current score
Wan 2.1 T2V
right now
15.1
current score
OpenAI
Wan AI
| Metric | Sora | Wan 2.1 T2V | Winner |
|---|---|---|---|
| Overall Score | 13 | 15 | Wan 2.1 T2V |
| Rank | #4 | #1 | Wan 2.1 T2V |
| Quality Rank | #4 | #1 | Wan 2.1 T2V |
| Adoption Rank | #4 | #1 | Wan 2.1 T2V |
| Parameters | -- | -- | -- |
| Context Window | -- | -- | -- |
| Pricing | Free | Free | -- |
| Signal Scores | |||
| Capabilities | 0 | 0 | Sora |
| Pricing | 100 | 100 | Sora |
| Context window size | 0 | 0 | Sora |
| Recency | 39 | 49 | Wan 2.1 T2V |
| Output Capacity | 20 | 20 | Sora |
Our score (0-100) is driven by benchmark performance (90%) from Arena Elo ratings, MMLU, GPQA, HumanEval, SWE-bench, and 15+ standardized evaluations. Capabilities and context window serve as tiebreakers (10%). Learn more about our methodology.
Scores 13/100 (rank #4), placing it in the top 99% of all 290 models tracked.
Scores 15/100 (rank #1), placing it in the top 100% of all 290 models tracked.
With only a 2-point gap, these models are in the same performance tier. The practical difference in output quality is minimal - your choice should depend on pricing, latency requirements, and specific feature needs.
Both models are priced similarly, so the decision comes down to quality and features rather than cost.
Both models have comparable response speeds. For most applications, the latency difference is negligible.
When latency matters most: Interactive chatbots, IDE code completion, real-time translation, and user-facing applications where response time directly impacts experience. For batch processing, background summarization, or offline analysis, latency is less critical.
Code generation & review
Based on overall model capabilities and architecture for coding tasks like generating functions, debugging, and refactoring
Customer support chatbot
Suitable for user-facing chat with competitive response times. Sora also offers lower per-token costs for high-volume support
Long document analysis
Larger context window (0K tokens) can process longer documents, contracts, and research papers in a single pass
Batch data extraction
Lower output pricing ($0.00/M) reduces costs when processing thousands of records daily
Creative writing & content
Higher overall composite score (15/100) correlates with better nuance, coherence, and style in long-form content
Sora and Wan 2.1 T2V are extremely close in overall performance (only 2.4000000000000004 points apart). Your best choice depends entirely on which specific strengths matter most for your use case.
Best for Quality
Sora
Marginally better benchmark scores; both are excellent
Best for Cost
Sora
0% lower pricing; better value at scale
Best for Reliability
Sora
Higher uptime and faster response speeds
Best for Prototyping
Sora
Stronger community support and better developer experience
Best for Production
Sora
Wider enterprise adoption and proven at scale
by OpenAI
| Capability | Sora | Wan 2.1 T2V |
|---|---|---|
| Vision (Image Input) | ||
| Function Calling | ||
| Streaming | ||
| JSON Mode | ||
| Reasoning | ||
| Web Search | ||
| Image Output |
OpenAI
Wan AI
Assumes 60% input / 40% output token ratio per request. Actual costs may vary based on your usage pattern.
| Parameter | Sora | Wan 2.1 T2V |
|---|---|---|
| Context Window | -- | -- |
| Max Output Tokens | -- | -- |
| Open Source | No | Yes |
| Created | Dec 9, 2024 | Feb 1, 2025 |
The 6-position rank gap likely reflects OpenAI's established ecosystem and enterprise trust factors not captured in raw performance scores. Both models share identical text-to-video capabilities and 10/100 scores, suggesting the ranking algorithm weighs provider reputation and support infrastructure beyond pure technical metrics.
Both show $0/M for input and output, but Wan 2.1 T2V explicitly advertises a FREE tier while Sora's $0 likely indicates unpublished or invite-only pricing. The 0-token context window for both models suggests they're designed for single-prompt video generation rather than conversational workflows, making per-token pricing models irrelevant.
With identical 10/100 scores and text-to-video capabilities, the open vs closed source distinction becomes critical: Wan 2.1 T2V allows self-hosting and customization while Sora locks you into OpenAI's infrastructure. The 6-rank difference suggests Sora offers better reliability or quality consistency that benchmarks don't capture.
Video generation models process prompts differently than LLMs - the 0-token metrics indicate these systems don't use traditional token-based architectures. Both Sora and Wan 2.1 T2V likely measure constraints in seconds of video or resolution rather than text tokens, making standard LLM metrics inapplicable.
The shared 10/100 score across a 6-rank gap suggests current video generation benchmarks lack granularity - both models likely hit a quality floor where distinguishing outputs requires subjective evaluation. Without capability differences listed and identical modalities (text-to-video), the ranking system appears to weight non-performance factors like provider ecosystem and production readiness.