Together AI adds Inkling multimodal model

Together AI integrates Inkling, a new multimodal AI model from Thinking Machines Lab, offering text, image, and audio processing with controllable reasoning.

6 min read
Abstract visualization representing multimodal AI data streams feeding into a central processing core.
Together AI integrates Thinking Machines Lab's Inkling, a multimodal AI model supporting text, image, and audio.· Together AI

Visual TL;DR. Together AI Integrates adds Inkling Multimodal Model. Inkling Multimodal Model uses Advanced Architecture. Advanced Architecture enables Efficient Reasoning. Inkling Multimodal Model generates Text Outputs. Efficient Reasoning provides Developer Access. Developer Access allowing Fine-tune Reasoning.

  1. Together AI Integrates: integrating a new multimodal AI model from Thinking Machines Lab
  2. Inkling Multimodal Model: novel model processing text, image, and audio inputs with controllable reasoning
  3. Advanced Architecture: features query-conditioned relative attention, convolutions, and MoE design
  4. Efficient Reasoning: engineered for efficient reasoning and native understanding across various data types
  5. Developer Access: offering developers access to Inkling on a production-ready inference platform
  6. Fine-tune Reasoning: developers can fine-tune reasoning depth and resource utilization per task
  7. Text Outputs: unifying diverse inputs through a single decoder architecture to produce text outputs
Visual TL;DR
Visual TL;DR, startuphub.ai Together AI Integrates adds Inkling Multimodal Model. Efficient Reasoning provides Developer Access adds provides Together AI Integrates Inkling Multimodal Model Efficient Reasoning Developer Access From startuphub.ai · The publishers behind this format
Visual TL;DR, startuphub.ai Together AI Integrates adds Inkling Multimodal Model. Efficient Reasoning provides Developer Access adds provides Together AIIntegrates InklingMultimodal Model EfficientReasoning Developer Access From startuphub.ai · The publishers behind this format
Visual TL;DR, startuphub.ai Together AI Integrates adds Inkling Multimodal Model. Efficient Reasoning provides Developer Access adds provides Together AI Integrates integrating a new multimodal AI model fromThinking Machines Lab Inkling Multimodal Model novel model processing text, image, andaudio inputs with controllable reasoning Efficient Reasoning engineered for efficient reasoning andnative understanding across various datatypes Developer Access offering developers access to Inkling on aproduction-ready inference platform From startuphub.ai · The publishers behind this format
Visual TL;DR, startuphub.ai Together AI Integrates adds Inkling Multimodal Model. Efficient Reasoning provides Developer Access adds provides Together AIIntegrates integrating a newmultimodal AI modelfrom Thinking… InklingMultimodal Model novel modelprocessing text,image, and audio… EfficientReasoning engineered forefficient reasoningand native… Developer Access offering developersaccess to Inklingon a… From startuphub.ai · The publishers behind this format
Visual TL;DR, startuphub.ai Together AI Integrates adds Inkling Multimodal Model. Inkling Multimodal Model uses Advanced Architecture. Advanced Architecture enables Efficient Reasoning. Inkling Multimodal Model generates Text Outputs. Efficient Reasoning provides Developer Access. Developer Access allowing Fine-tune Reasoning adds uses enables generates provides allowing Together AI Integrates integrating a new multimodal AI model fromThinking Machines Lab Inkling Multimodal Model novel model processing text, image, andaudio inputs with controllable reasoning Advanced Architecture features query-conditioned relativeattention, convolutions, and MoE design Efficient Reasoning engineered for efficient reasoning andnative understanding across various datatypes Developer Access offering developers access to Inkling on aproduction-ready inference platform Fine-tune Reasoning developers can fine-tune reasoning depthand resource utilization per task Text Outputs unifying diverse inputs through a singledecoder architecture to produce textoutputs From startuphub.ai · The publishers behind this format
Visual TL;DR, startuphub.ai Together AI Integrates adds Inkling Multimodal Model. Inkling Multimodal Model uses Advanced Architecture. Advanced Architecture enables Efficient Reasoning. Inkling Multimodal Model generates Text Outputs. Efficient Reasoning provides Developer Access. Developer Access allowing Fine-tune Reasoning adds uses enables generates provides allowing Together AIIntegrates integrating a newmultimodal AI modelfrom Thinking… InklingMultimodal Model novel modelprocessing text,image, and audio… AdvancedArchitecture featuresquery-conditionedrelative attention,… EfficientReasoning engineered forefficient reasoningand native… Developer Access offering developersaccess to Inklingon a… Fine-tuneReasoning developers canfine-tune reasoningdepth and resource… Text Outputs unifying diverseinputs through asingle decoder… From startuphub.ai · The publishers behind this format

Together AI is now offering developers access to Inkling, a novel multimodal model developed by Thinking Machines Lab. This integration marks a significant step in making advanced AI reasoning accessible on a production-ready inference platform.

Inkling is engineered for efficient reasoning and native understanding across various data types. It accepts text, image, and audio inputs, unifying them through a single decoder architecture to produce text outputs. Developers can fine-tune the model's reasoning depth and resource utilization per task, balancing performance with latency and cost.

Inkling's Architectural Innovations

The Inkling model features architectural advancements beyond standard Transformer models. These include query-conditioned relative attention, short causal convolutions, and a mixture-of-experts (MoE) design with a shared expert sink. These components are intended to enhance both reasoning capabilities and multimodal processing efficiency.

Together AI highlights its optimized inference stack, which specifically supports Inkling's unique attention mechanisms, ensuring practical efficiency gains for production workloads.

Broad Task Versatility and Performance

Inkling has been post-trained across a wide spectrum of tasks, including scientific reasoning, coding, agentic workflows, forecasting, and calibrated prediction. Preliminary evaluations show strong performance on graduate-level scientific reasoning and mathematics benchmarks.

This versatility extends to applications requiring uncertainty representation and calibrated estimation, moving beyond traditional question-answering tasks.

Day-Zero Access and Developer Benefits

Developers can access Inkling immediately via Together AI Serverless, eliminating the need for infrastructure provisioning or complex setup. The platform offers a unified API endpoint for all multimodal inputs, simplifying development pipelines.

The controllable reasoning effort feature allows for per-request tuning of depth, latency, and token expenditure, providing granular control over cost and speed.

Inkling's architecture, boasting 975 billion total parameters with 40 billion active per token and a 1 million token context window, utilizes a novel query-conditioned relative bias for positional encoding. It also incorporates sliding-window and full causal attention layers, alongside a lightweight causal convolution (sconv) for enhanced local context processing.

The MoE architecture with a shared expert sink dynamically routes tokens to specialized experts while allowing shared experts to compete for mixture weight, optimizing computation. Lightweight embedding towers seamlessly integrate image patches and quantized audio into the model's sequence, enabling joint reasoning over diverse data types.

This unified approach powers applications like visual question answering, document analysis, and multimodal agentic systems. Developers can begin building with Inkling on Together AI Serverless today, scaling from experimentation to dedicated production capacity.

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