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Together AI brings Thinking Machines Lab’s new model Inkling on day 0

Today, Thinking Machines Lab released Inkling, a new multimodal mixture-of-experts model built for token-efficient reasoning, native multimodal understanding, and broad task versatility. Together AI is excited to collaborate with the Thinking Machines Lab team to make Inkling available to developers on our inference platform. Inkling accepts text, image, and audio inputs and produces text outputs through a unified decoder architecture. It supports controllable inference effort, allowing developers to adjust how much reasoning the model applies based on the needs of each task. Its post-training also spans a wide range of capabilities, including scientific reasoning, coding, agentic workflows, forecasting, and calibrated prediction.Under the hood, Inkling introduces several architectural innovations beyond a conventional decoder-only Transformer, including query-conditioned relative attention, short causal convolutions throughout the model, and a mixture-of-experts architecture with a shared expert sink. Together, these components are designed to support strong reasoning and multimodal capabilities while maintaining efficient model execution. Serving it efficiently at scale is nontrivial, and it's exactly the kind of workload Together AI's inference stack is built to optimize, so you get the model's efficiency gains in practice for production inference. On Together AI, Inkling runs with an optimized FlashAttention-4–based attention kernel designed to efficiently support its query-conditioned relative attention mechanism in production.Congratulations to the Thinking Machines Lab team on the release.Inkling at a glanceToken-efficient, controllable reasoning: Developers can adjust inference effort to balance reasoning depth, token usage, and latency for different workloads.Native multimodal inputs: Inkling accepts audio, image, and text inputs and generates text outputs through a single model.Broad task versatility: The model is post-trained across reasoning, coding, agentic, forecasting, and calibrated prediction tasks.A differentiated architecture: Inkling combines grouped-query attention, learned relative-position bias, short causal convolutions, and shared-sink MoE routing.Strong preliminary evaluations: At its highest evaluated effort setting, Inkling shows strong results across scientific reasoning, mathematics, coding, agentic, vision, and audio benchmarks.Available on Together AI: Developers can access Inkling through serverless, with 1M context window, and OpenAI-compatible APIs.Strong performance on challenging reasoning tasksPreliminary evaluations of the current Inkling checkpoint show strong performance across graduate-level scientific reasoning and competition mathematics:The results point to one of Inkling’s defining characteristics: versatility. The same model performs strongly across knowledge-intensive reasoning, mathematical problem solving, software engineering, browser-based tasks, visual document understanding, and audio comprehension.Inkling is also post-trained on forecasting and calibrated prediction tasks. This expands the model’s usefulness beyond conventional question answering to applications where representing uncertainty and producing well-calibrated estimates are important.‍Why run Inkling on Together?Day 0 access, zero setup: Inkling is live on Together AI Serverless today. No waiting for capacity, no infrastructure to provision, no GPUs to manage. Full multimodal input support, one endpoint: Since Inkling natively accepts text, image, and audio, you don't need separate pipelines or preprocessing services, Together AI Serverless handles all three input types through a single API call. This is powerful as Together’s unified solution removes the tradeoff between latency, speed and operational stability.Controllable reasoning effort, without managing your own infra: Inkling's adjustable inference-effort setting lets you trade off depth, latency, and token spend per request. On Together AI, you control that dial through the API directly, so cost and speed tuning happens at the request level, not the infrastructure level.‍A new architecture for reasoning and multimodalityInkling is a decoder-only mixture-of-experts model with 975B total parameters, 40B active parameters per token, and a context window of 1M tokens.Rather than using RoPE or absolute position embeddings, Inkling incorporates token position directly into attention through a learned, query-conditioned relative bias. Each attention layer combines the conventional query-key similarity score with an additional score based on the relative distance between tokens. This gives the model a flexible mechanism for representing token order and nearby context.Inkling mixes sliding-window and full causal attention throughout the network. The standard architecture uses five local-attention layers followed by one full-attention layer, allowing most layers to focus efficiently on recent context while periodically integrating information across the full sequence.The model also introduces sconv, a lightweight channelwise causal convolution with a four-token receptive field. Sconv is applied to the key and value streams before attention, as well as to the outputs of the attention and feed-forward sublayers. These short convolutions give each layer an additional mechanism for combining information across adjacent tokens without the cost of another full attention operation.Inkling’s feed-forward layers use a mixture-of-experts architecture with shared expert sink. For every token, the router selects a small number of routed experts while also assigning weight to shared experts. Unlike conventional shared-expert MoE designs, Inkling normalizes the shared experts and selected routed experts together, allowing the shared path to dynamically compete for mixture weight on each token.Inkling also supports image and audio inputs. Lightweight embedding towers transform image patches and quantized audio features into embeddings with the same width as text tokens. These embeddings are inserted directly into the model’s input sequence and processed by the same decoder stack.Unified text, image, and audio inputsInkling accepts three input modalities: text, images, audio. All three modalities are processed by the same decoder stack, with text generated as the output.Lightweight embedding towers transform image patches and quantized audio features into embeddings with the same width as text-token embeddings. These representations are inserted directly into the model’s input sequence, allowing the language model to reason jointly over text, visual, and audio information.This unified design enables applications such as visual question answering, document analysis, audio comprehension, multimodal agents, and workflows that combine multiple input types within the same conversation.Start building with Inkling on Together ServerlessInkling is available through Together AI Serverless today.Developers can:Build text, image, and audio applications using a unified modelScale from initial experimentation to dedicated production capacity

Raccontata datogether.aidatabricks.comtechcrunch.comwired.comtheverge.comcryptobriefing.comventurebeat.com

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6 prospettive sulla stessa storia
AI · summaries
together.aiStai leggendo2 g fa

Together AI brings Thinking Machines Lab’s new model Inkling on day 0

Today, Thinking Machines Lab released Inkling, a new multimodal mixture-of-experts model built for token-efficient reasoning, native multimodal understanding, and broad task versatility. Together AI is excited to…

originale

Timeline cronologica

  1. mercoledì 15 luglio 2026·together.ai

    Together AI brings Thinking Machines Lab’s new model Inkling on day 0

    Today, Thinking Machines Lab released Inkling, a new multimodal mixture-of-experts model built for token-efficient reasoning, native multimodal understanding, and broad task…

  2. mercoledì 15 luglio 2026·databricks.com

    Inkling model from Thinking Machines Lab now on Databricks

    Get day zero access to Thinking Machines Lab's Inkling open-weights model on Databricks. Learn how to power coding workflows and build AI agents with Unity AI Gateway.

computerworld.com
marktechpost.com
newsbytesapp.com
siliconrepublic.com
the-decoder.com
+2 altre
computerworld.com
1 g fa

Thinking Machines Lab offers enterprises a US alternative in open-weight AI

Inkling, a 975-billion-parameter model, can be customized through Tinker and supports a 1-million-token context window, but it enters a market where Chinese models lead several coding and reasoning benchmarks.

Leggi questa versione → originale
gadgetsnow.indiatimes.com16 h fa

Mira Murati’s Thinking Machines Launches Inkling, a 975B AI Model You Can Download and Fine-Tune

<br />Inkling gives developers downloadable weights, native text, image and audio understanding, a one-million-token context window and adjustable reasoning. Its 975-billion-parameter size also means that “open” should…

Leggi questa versione → originale
venturebeat.com1 g fa

Thinking Machines open sources first multimodal language model, Inkling, focused on low cost and 'resistance…

An Apache 2.0 designation makes Inkling a true open-source foundation. This gives developers the legal freedom to download, modify, integrate, and commercialize the model weights.

Leggi questa versione → originale
wired.com1 g fa

Thinking Machines Lab Drops Its First Model

Inkling, a 975-billion-parameter open source model, was trained to understand video and audio. It could help Thinking Machines establish itself among competitors like Anthropic and OpenAI.

Leggi questa versione → originale
techcrunch.com1 g fa

Thinking Machines amps up its bet against one-size-fits-all AI with its first open model, Inkling | TechCrunch

It's the company's first public proof point after a year and a half spent building AI infrastructure largely out of public view.

Leggi questa versione → originale
  • mercoledì 15 luglio 2026·techcrunch.com

    Thinking Machines amps up its bet against one-size-fits-all AI with its first open model, Inkling | TechCrunch

    It's the company's first public proof point after a year and a half spent building AI infrastructure largely out of public view.

  • mercoledì 15 luglio 2026·wired.com

    Thinking Machines Lab Drops Its First Model

    Inkling, a 975-billion-parameter open source model, was trained to understand video and audio. It could help Thinking Machines establish itself among competitors like Anthropic…

  • mercoledì 15 luglio 2026·theverge.com

    Mira Murati’s Thinking Machines Lab has debuted its first AI model.

    Murati, OpenAI’s former CTO (and, briefly, CEO during Sam Altman’s ouster in 2023), wrote on X that the open-weight model, called “Inkling,” was trained from scratch. Judging by…

  • mercoledì 15 luglio 2026·cryptobriefing.com

    Thinking Machines unveils Inkling, its first open model, after 18 months of stealth building

    Mira Murati's Thinking Machines Lab debuts Inkling, its first open-weights AI model, after raising a record $2B seed round at a $12B valuation.

  • mercoledì 15 luglio 2026·venturebeat.com

    Thinking Machines open sources first multimodal language model, Inkling, focused on low cost and 'resistance to censorship'

    An Apache 2.0 designation makes Inkling a true open-source foundation. This gives developers the legal freedom to download, modify, integrate, and commercialize the model weights.

  • giovedì 16 luglio 2026·computerworld.com

    Thinking Machines Lab offers enterprises a US alternative in open-weight AI

    Inkling, a 975-billion-parameter model, can be customized through Tinker and supports a 1-million-token context window, but it enters a market where Chinese models lead several…

  • giovedì 16 luglio 2026·marktechpost.com

    Thinking Machines Lab Releases Inkling: A 975B-Parameter Open-Weights Multimodal MoE With 41B Active Parameters And Controllable Thinking…

    Thinking Machines Lab released Inkling, a 975B-parameter open-weights multimodal MoE with 41B active parameters and controllable thinking effort

  • giovedì 16 luglio 2026·cryptobriefing.com

    Mira Murati's Thinking Machines Lab drops massive open-weight AI model with 975 billion parameters

    Mira Murati's Thinking Machines Lab launches Inkling, a 975 billion parameter open-weight AI model under Apache 2.0 license, challenging OpenAI and

  • giovedì 16 luglio 2026·newsbytesapp.com

    Meet Inkling: 1st AI model from Mira Murati's start-up

    Thinking Machines Lab, led by ex-OpenAI CTO Mira Murati, launched Inkling—its first open-weight AI model—allowing developers to freely download and customize it.

  • giovedì 16 luglio 2026·siliconrepublic.com

    Mira Murati’s AI start-up unveils customisable model Inkling

    Mira Murati’s Thinking Machines Lab has unveiled the first of its family of multimodal open-source models called Inkling.

  • giovedì 16 luglio 2026·the-decoder.com

    Ex-OpenAI CTO Murati's Thinking Machines drops Inkling, a 975B parameter model that leads US labs but trails China

    Thinking Machines Lab, founded by former OpenAI CTO Mira Murati, has released Inkling, a multimodal open-weights model with 975 billion parameters. It leads U.S. open-weights…

  • giovedì 16 luglio 2026·gadgetsnow.indiatimes.com

    Mira Murati’s Thinking Machines Launches Inkling, a 975B AI Model You Can Download and Fine-Tune

    <br />Inkling gives developers downloadable weights, native text, image and audio understanding, a one-million-token context window and adjustable reasoning. Its…

  • giovedì 16 luglio 2026·aibusiness.com

    Thinking Machines Rolls Out Broad but Efficient Model

    The AI startup, founded by OpenAI’s former CTO, released Inkling, a general-purpose model that keeps token use in mind.

  • giovedì 16 luglio 2026·cryptobriefing.com

    Thinking Machines Lab releases first fully open source AI model with 975 billion parameters

    Mira Murati's Thinking Machines Lab releases Inkling, a 975 billion parameter open-source AI model under Apache 2.0, with major implications for crypto-AI