Full Ownership
The fine-tuned weights are yours, exported in your format of choice. No vendor lock-in, no per-token royalty — just a model you control end to end.
Tscale Fine-Tuning lets you adapt open-source and proprietary foundation models to your domain, your voice, and your workflows — on dedicated GPU clusters with full ownership of the resulting weights.
The fine-tuned weights are yours, exported in your format of choice. No vendor lock-in, no per-token royalty — just a model you control end to end.
LoRA, QLoRA, and DeepSpeed-accelerated training cut convergence time by an order of magnitude compared to vanilla full fine-tuning — without sacrificing quality.
Fine-tune Llama 3, Mistral, Mixtral, Qwen, Phi, Gemma, and domain-specific models — all from a single managed interface.
From parameter-efficient LoRA adapters to full-rank fine-tuning, Tscale supports the entire spectrum of training techniques. Mix and match to balance cost, speed, and quality — without rewriting your pipeline.
The quality of a fine-tuned model is bounded by the quality of its data. Tscale’s managed pipeline handles ingestion, cleaning, augmentation, and version control — so your team can focus on prompt design, not preprocessing.
Tscale’s fine-tuning infrastructure is the same stack we use to train our own models — battle-tested at scale, open by default, and compatible with the tools your team already uses.
LoRA + DeepSpeed + NVLink fabric converges 10x faster than vanilla training stacks.
QLoRA + 4-bit quantisation drops the hardware footprint — and the bill — by 70%.
On average, fine-tuned models score 12 points higher on MMLU than their base counterparts.
Export in any format, host anywhere. No per-token royalty, no vendor lock-in.
The classic recipe: instruction-response pairs, custom tokenisers, and full SFT pipelines — managed end to end by Tscale’s orchestration layer.
Learn MoreDPO, PPO, and RLHF pipelines for aligning models to brand voice, safety policies, and human preferences — with reward models and evaluators built in.
Learn MoreOnce your model is fine-tuned, the rest of the Tscale stack takes over. Serve it, test it, monitor it — all on the same GPU fabric you trained it on.