Gemini 3.5 Flash is now available — frontier-level coding and agentic performance at Flash-tier speed. Claude Sonnet 4.6, Claude Opus 4.6, Gemini 3.1 Pro, GPT 5.4, and Mistral Large 3 are also available!What is this feature?
You can now build on top of even more LLMs in Playlab! There are now more than a dozen available AI models for you to build your Playlab apps on top of. We will try our best to always provide the latest models for you to build on top of.Rationale for the feature
This feature allows Playlab users to experiment with and leverage the unique strengths of various AI models from different providers all within Playlab. As you build, you might find that certain models perform better at different tasks. This will allow Playlab users to select the model that fits their needs better. The more available models, the more likely you are to find one that meets your needs. We believe that Playlabbers should have access to frontier models as we build in community.Understanding Model Types
Before selecting a model, it’s helpful to understand the different categories of AI models available:How do I access these models?
Click the LLM selector

Choose your model
Build and Test
Available Models
Now that you know how to select models, here are the currently available models with their strengths and tradeoffs:Claude Opus 4.6 (Anthropic)
Description: The most powerful and intelligent model in the Claude family. Designed for the most demanding tasks requiring exceptional reasoning, creativity, and nuanced understanding.
Knowledge Cutoff: Aug 2025
Plus Strengths: Unmatched intelligence and reasoning depth. Superior performance on complex multi-step problems. Exceptional creative and analytical capabilities. Best-in-class instruction following and nuance understanding.
Minus Trade Offs: Slower response times and higher cost. Best reserved for tasks that truly require maximum capability.
Claude Sonnet 4.6 (Anthropic)
Description: Latest and most advanced version of Claude Sonnet. The new default model for all Playlab apps, offering breakthrough performance for everyday use.
Knowledge Cutoff: Aug 2025
Plus Strengths: State-of-the-art intelligence and reasoning. Superior instruction following and nuance understanding. Exceptional balance of speed and capability. Best-in-class for most applications requiring high quality output.
Minus Trade Offs: More expensive than smaller models. May be more than needed for very simple tasks.
Claude Haiku 4.5 (Anthropic)
Description: Latest and fastest model in the Claude family, optimized for speed and efficiency on everyday tasks.
Knowledge Cutoff: July 2025
Plus Strengths: Fastest response times among Claude models. Excellent for quick questions and lightweight tasks. Strong performance for its speed tier.
Minus Trade Offs: Less capable than Sonnet or Opus models. May struggle with complex multi-step reasoning and advanced analysis.
Claude 4 Sonnet (Reasoning) (Anthropic)
Description: Work through difficult problems using careful, step-by-step reasoning.
Knowledge Cutoff: Aug 2025
Plus Strengths: Exceptional step by step reasoning capabilities. Stronger at math and coding. Very good at explaining thought process
Minus Trade Offs: Slower response times. Not as optimized for creative tasks. Consider Claude Sonnet 4.6 or Claude Opus 4.6 for better overall performance.
GPT 5.4 (OpenAI)
Description: OpenAI’s latest flagship model with breakthrough capabilities in reasoning, creativity, and multimodal understanding.
Knowledge Cutoff: Aug 2025
Plus Strengths: State-of-the-art performance across all domains. Exceptional reasoning and problem-solving. Advanced creative capabilities. Superior instruction following and nuance understanding.
Minus Trade Offs: Slower response times and higher cost. May be unnecessary for simple tasks. Premium pricing for cutting-edge capabilities.
GPT-5 Mini (OpenAI)
Description: A balanced version of GPT-5 optimized for everyday use with improved speed and efficiency.
Knowledge Cutoff: Aug 2025
Plus Strengths: Excellent balance of GPT-5 capabilities with faster response times. Cost-effective for regular applications. Strong performance across most tasks without premium overhead.
Minus Trade Offs: Slightly reduced capabilities compared to GPT 5.4. May not excel at the most complex reasoning challenges requiring maximum model capacity.
Gemini 3.1 Pro (Google)
Description: Google’s latest and most advanced model featuring superior multimodal capabilities, enhanced reasoning, and improved creative performance.
Knowledge Cutoff: Jan 2025
Plus Strengths: State-of-the-art multimodal understanding. Exceptional reasoning and problem-solving. Superior performance on complex analytical tasks. Enhanced creative and coding capabilities. Best-in-class for applications requiring advanced Google AI.
Minus Trade Offs: Slower response times compared to Flash models. Higher cost for premium capabilities. May be unnecessary for simple tasks.
Gemini 3.5 Flash (Google)
Description: Google’s frontier-tier Flash model, purpose-built for agentic and coding workflows. Outperforms Gemini 3.1 Pro on Terminal-Bench 2.1 (76.2%), MCP Atlas (83.6%), and CharXiv Reasoning (84.2%) while running roughly four times faster than other frontier models.
Knowledge Cutoff: Jan 2026
Plus Strengths: Frontier-level performance on coding and agentic tasks at Flash-tier speed. Strong multimodal understanding across text, image, audio, and video. 1M-token input context window for long-horizon, multi-step workflows. Dynamic thinking on by default.
Minus Trade Offs: Roughly 3x the per-token cost of Gemini 3 Flash (9 per 1M tokens vs 3). Thinking-on default may add latency on very simple prompts.
Gemini 3 Flash (Google)
Description: Google’s latest fast model optimized for quick response times with strong general capabilities.
Knowledge Cutoff: Jan 2025
Plus Strengths: Extremely fast response times. Strong general-purpose performance. Good for simple instruction following and high volume tasks.
Minus Trade Offs: Not ideal for multi-step problem solving or complex instruction following. May miss nuance in instructions.
Mistral Large 3 (Mistral)
Description: Mistral’s latest large language model with strong reasoning and multilingual capabilities.
Knowledge Cutoff: Oct 2024
Plus Strengths: Strong reasoning and analytical capabilities. Excellent multilingual support. Open weight flexibility for customization and deployment.
Minus Trade Offs: May not match top frontier models on the most demanding tasks. Performance varies by domain.
Kimi K2.5 (Moonshot)
Description: Advanced open weight model that excels in using tools.
Knowledge Cutoff: ~Apr 2024
Plus Strengths: Excellent tool usage capabilities. Good for applications requiring API integrations. Strong technical reasoning.
Minus Trade Offs: May be specialized for tool use rather than general conversation. Performance varies on creative tasks.
DeepSeek R1 (DeepSeek)
Description: Open-source model designed for efficiency.
Knowledge Cutoff: July 2024
Plus Strengths: Cost-effective and efficient. Good for applications where budget is a primary concern. Open-source flexibility.
Minus Trade Offs: May not match performance of frontier models on complex tasks. Limited compared to more advanced models.
Llama 4 Maverick (Meta)
Description: Advanced open-weight model for reasoning, math, and general knowledge.
Knowledge Cutoff: Aug 2024
Plus Strengths: Improved reasoning capabilities over Llama 3.3. Strong performance in general knowledge tasks. Open weight benefits.
Minus Trade Offs: Not as fast as smaller models. May require more specific prompting for best results.
Llama 4 Scout (Meta)
Description: Powerful for multi-document analysis, cross-lingual understanding, and context-aware reasoning.
Knowledge Cutoff: Aug 2024
Plus Strengths: Excellent at analyzing multiple documents simultaneously. Strong cross-lingual capabilities. Advanced contextual understanding.
Minus Trade Offs: May be slower for simple tasks. Specialized for document analysis rather than general usage.
Llama 3.3 70B Instruct (Meta)
Description: Advanced model for reasoning, math, and general knowledge.
Knowledge Cutoff: Dec 2023
Plus Strengths: Strong general well balanced use cases. Performs well in math. Effective at following clear instructions. Open weight flexibility.
Minus Trade Offs: Slower than smaller models. Does not follow instructions as well as Claude/GPT models.
Qwen 3 (Alibaba)
Description: Advanced open weight model with strong multimodal and multilingual capabilities.
Knowledge Cutoff: Oct 2023
Plus Strengths: Excellent multilingual support. Strong performance on reasoning tasks. Good balance of performance and efficiency. Open weight flexibility.
Minus Trade Offs: May not match frontier model performance on highly specialized tasks. Performance varies depending on language and domain.
Tips for Selecting the Right Model
Selecting can be tricky. That’s why we encourage you to play and experiment as you build to find the model that is best fit for your context.Selection Considerations
Ask yourself what is an ideal response time for your app?
Ask yourself what is an ideal response time for your app?
Identify what complexity level is your task?
Identify what complexity level is your task?
What is the level of accuracy you are requiring of your app?
What is the level of accuracy you are requiring of your app?
Do you need open weights or source code access?
Do you need open weights or source code access?
Best Practices
Try to match your model with your use case:
Try to match your model with your use case:
Test out multiple models for apps that you are building:
Test out multiple models for apps that you are building:
Additional best practices:
Additional best practices:
FAQ
Will switching models affect my existing app?
Will switching models affect my existing app?
How do I know which model is best for my specific use case?
How do I know which model is best for my specific use case?
What is the default model for new apps?
What is the default model for new apps?
When should I choose Claude Opus 4.6 vs Claude Sonnet 4.6 vs Claude Haiku 4.5?
When should I choose Claude Opus 4.6 vs Claude Sonnet 4.6 vs Claude Haiku 4.5?
What's the difference between GPT 5.4 and GPT-5 Mini?
What's the difference between GPT 5.4 and GPT-5 Mini?
What's the difference between frontier, open weight, and open source models?
What's the difference between frontier, open weight, and open source models?
When should I consider open weight models like Llama 4, Qwen 3, Mistral Large 3, or DeepSeek R1?
When should I consider open weight models like Llama 4, Qwen 3, Mistral Large 3, or DeepSeek R1?
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Last updated: 05/22/2026