Together AI adds tool calling, reasoning traces, and vision-language fine-tuning to its platform, with 6x throughput gains for 100B+ parameter models. (Read MoreTogether AI adds tool calling, reasoning traces, and vision-language fine-tuning to its platform, with 6x throughput gains for 100B+ parameter models. (Read More

Together AI Upgrades Fine-Tuning Platform With Vision and Reasoning Support

2026/03/19 02:27
3 min read
For feedback or concerns regarding this content, please contact us at [email protected]

Together AI Upgrades Fine-Tuning Platform With Vision and Reasoning Support

Joerg Hiller Mar 18, 2026 18:27

Together AI adds tool calling, reasoning traces, and vision-language fine-tuning to its platform, with 6x throughput gains for 100B+ parameter models.

Together AI Upgrades Fine-Tuning Platform With Vision and Reasoning Support

Together AI rolled out a major expansion to its fine-tuning service on March 18, adding native support for tool calling, reasoning traces, and vision-language models—capabilities that address persistent pain points for teams building production AI systems.

The update arrives as the company reportedly negotiates a funding round that would value it at $7.5 billion, more than doubling its $3.3 billion valuation from its February 2025 Series B.

What's Actually New

The platform now handles three categories of fine-tuning that previously required fragmented workarounds:

Tool calling gets end-to-end support using OpenAI-compatible schemas. The system validates that every tool call in training data matches declared functions before training begins—a safeguard against the hallucinated parameters and schema mismatches that plague agentic workflows.

Reasoning fine-tuning allows teams to train models on domain-specific thinking traces using a dedicated reasoning_content field. This matters because reasoning formats vary wildly across model families, making consistent training difficult without standardization.

Vision-language fine-tuning supports hybrid datasets mixing image-text and text-only examples. By default, the vision encoder stays frozen while language layers update, though teams can enable joint training when visual pattern recognition needs improvement.

Infrastructure Upgrades

Beyond new capabilities, Together AI claims significant performance gains from optimizing its training stack for mixture-of-experts architectures. The company integrated SonicMoE kernels that overlap memory operations with computation, plus custom CUDA kernels for loss computation.

Results vary by model size: smaller models see roughly 2x throughput improvements, while larger architectures like Kimi-K2 hit 6x gains. The platform now handles datasets up to 100GB and models exceeding 100 billion parameters.

New models available for fine-tuning include Qwen 3.5 variants (up to 397B parameters), Kimi K2 and K2.5, and GLM-4.6 and 4.7.

Practical Additions

The update includes cost estimation before job execution and live progress tracking with dynamic completion estimates—features that sound basic but prevent the budget surprises that make experimentation risky.

XY.AI Labs, cited by Together AI as a customer example, reported moving from weekly to daily iteration cycles while cutting costs 2-3x and improving accuracy from 77% to 87% using the platform's fine-tuning and deployment APIs.

Market Context

The timing aligns with a surge in AI infrastructure spending. Startup funding in the AI sector hit $220 billion in the first two months of 2026, per recent reports, with much of that capital flowing toward training and inference infrastructure.

Together AI positions itself as an alternative to building in-house AI infrastructure, offering access to over 200 open-source models through its platform. The company's pitch—removing infrastructure complexity so teams can focus on product development—now extends to increasingly sophisticated post-training workflows that were previously the domain of well-resourced research labs.

Image source: Shutterstock
  • together ai
  • ai infrastructure
  • fine-tuning
  • machine learning
  • enterprise ai
Disclaimer: The articles reposted on this site are sourced from public platforms and are provided for informational purposes only. They do not necessarily reflect the views of MEXC. All rights remain with the original authors. If you believe any content infringes on third-party rights, please contact [email protected] for removal. MEXC makes no guarantees regarding the accuracy, completeness, or timeliness of the content and is not responsible for any actions taken based on the information provided. The content does not constitute financial, legal, or other professional advice, nor should it be considered a recommendation or endorsement by MEXC.

You May Also Like

Ethereum spot ETFs had a total net outflow of $1.8898 million yesterday, with Fidelity FETH leading the way with a net outflow of $29.1892 million.

Ethereum spot ETFs had a total net outflow of $1.8898 million yesterday, with Fidelity FETH leading the way with a net outflow of $29.1892 million.

PANews reported on September 18 that according to SoSoValue data, the total net outflow of Ethereum spot ETF was US$1.8898 million yesterday (September 17, US Eastern Time). The Ethereum spot ETF with the largest single-day net inflow yesterday was Blackrock ETF ETHA, with a single-day net inflow of US$25.8636 million. The current historical total net inflow of ETHA has reached US$13.255 billion. The second is Grayscale Ethereum Mini Trust ETF ETH, with a single-day net inflow of US$6.382 million. The current historical total net inflow of ETH has reached US$1.431 billion. The Ethereum spot ETF with the largest single-day net outflow yesterday was the Fidelity ETF FETH, with a single-day net outflow of US$29.1892 million. The current historical total net inflow of FETH has reached US$2.768 billion. As of press time, the total net asset value of the Ethereum spot ETF was US$29.719 billion, the ETF net asset ratio (market value as a percentage of Ethereum's total market value) reached 5.47%, and the historical cumulative net inflow has reached US$13.659 billion.
Share
PANews2025/09/18 11:54
Michael Saylor Pushes Digital Capital Narrative At Bitcoin Treasuries Unconference

Michael Saylor Pushes Digital Capital Narrative At Bitcoin Treasuries Unconference

The post Michael Saylor Pushes Digital Capital Narrative At Bitcoin Treasuries Unconference appeared on BitcoinEthereumNews.com. The suitcoiners are in town.  From a low-key, circular podium in the middle of a lavish New York City event hall, Strategy executive chairman Michael Saylor took the mic and opened the Bitcoin Treasuries Unconference event. He joked awkwardly about the orange ties, dresses, caps and other merch to the (mostly male) audience of who’s-who in the bitcoin treasury company world.  Once he got onto the regular beat, it was much of the same: calm and relaxed, speaking freely and with confidence, his keynote was heavy on the metaphors and larger historical stories. Treasury companies are like Rockefeller’s Standard Oil in its early years, Michael Saylor said: We’ve just discovered crude oil and now we’re making sense of the myriad ways in which we can use it — the automobile revolution and jet fuel is still well ahead of us.  Established, trillion-dollar companies not using AI because of “security concerns” make them slow and stupid — just like companies and individuals rejecting digital assets now make them poor and weak.  “I’d like to think that we understood our business five years ago; we didn’t.”  We went from a defensive investment into bitcoin, Saylor said, to opportunistic, to strategic, and finally transformational; “only then did we realize that we were different.” Michael Saylor: You Come Into My Financial History House?! Jokes aside, Michael Saylor is very welcome to the warm waters of our financial past. He acquitted himself honorably by invoking the British Consol — though mispronouncing it, and misdating it to the 1780s; Pelham’s consolidation of debts happened in the 1750s and perpetual government debt existed well before then — and comparing it to the gold standard and the future of bitcoin. He’s right that Strategy’s STRC product in many ways imitates the consols; irredeemable, perpetual debt, issued at par, with…
Share
BitcoinEthereumNews2025/09/18 02:12
Trump White House Registers Aliens.gov—Is the UFO File Drop Imminent?

Trump White House Registers Aliens.gov—Is the UFO File Drop Imminent?

The post Trump White House Registers Aliens.gov—Is the UFO File Drop Imminent? appeared on BitcoinEthereumNews.com. In brief The White House registered aliens.gov
Share
BitcoinEthereumNews2026/03/19 05:33