Capabilities
7-day heat trend
+1.7%Pricing breakdown
Typical 3:1 output-to-input mix, per 1M tokens
Estimated monthly cost by workload
Market position
- Cheaper than 43% of tracked models
- Faster than 84% of tracked models
- Efficiency rank: #958 of 1105
Best suited for
General-purpose text generation, chat, summarization and content workloads where broad capability and low cost matter most.
About black-forest-labs/flux-kontext-max
FLUX Kontext Max on Replicate is an official higher-quality image editing model for prompt-directed transformations.
black-forest-labs/flux-kontext-max is a Text model from Replicate (US). HotON.ai tracks it at $0.00 per 1M input tokens and $0.00 per 1M output tokens, with a 1K-token context window, ~166 tokens/sec throughput and 99.8% availability. Its composite efficiency score is 88/100 at an estimated $0.000 per successful task.
Compare black-forest-labs/flux-kontext-max
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Frequently asked questions
How much does black-forest-labs/flux-kontext-max cost per 1M tokens?+
black-forest-labs/flux-kontext-max is tracked at $0.00 per 1M input tokens and $0.00 per 1M output tokens. A typical 3:1 output-to-input workload blends to roughly $0.00 per 1M tokens. Figures are illustrative demo data.
What is black-forest-labs/flux-kontext-max best for?+
General-purpose text generation, chat, summarization and content workloads where broad capability and low cost matter most.
How fast is black-forest-labs/flux-kontext-max?+
black-forest-labs/flux-kontext-max delivers about 166 tokens/sec with 99.8% tracked availability, suitable for latency-sensitive, real-time applications.
Is black-forest-labs/flux-kontext-max cheaper than other AI models?+
Within the HotON.ai tracked set, black-forest-labs/flux-kontext-max is cheaper than 43% of models on input price and ranks #958 of 1105 by overall efficiency.
Related models
Pricing is real (via the TestKey catalog, updated daily). Quality (Arena Elo) is real where the model is ranked on LMArena. Speed, availability and efficiency are modeled estimates.