無料ホワイトペーパー: 「LLMをゼロからトレーニングするためのベストプラクティス」
Note: If you’d like the English language version of this whitepaper, you can access it here.
世界を先駆ける巨大言語モデル(LLM)の開発チームの多くがWeights & Biasesを利用してモデルの学習を行なっています。このホワイトペーパーでは私たちがこれまでに蓄積してきたLLM開発のノウハウをご共有します:
- LLMを自社開発するか、既存のモデルを追加学習するかの意思決定方法
- 競争力のあるLLMを開発するにはどれくらいのデータが必要になるのか
- 並列処理において、メモリと計算効率のバランスを取るには
- テキストデータのトークン化の戦略とトレードオフ
- モデルの評価方法
- バイアスや有害性を取り除くチューニング方法
- などなど
W&BはLLMのように複雑で大きなコストのかかるモデルの開発と実用化に必要とされるコラボレーションを可能にします。無料のホワイトペーパーを入手するには、右側のフォームにご登録後に届くeメール内の、ダウンロードリンクをクリックしてください
Trusted by the teams building state-of-the-art LLMs
Heinrich Kuttler
Research Engineer – Facebook AI Research
Research Engineer – Facebook AI Research
“For us, Weights and Biases was a game-changer. No other MLOps tool available allows for rapid iteration of AI experiments with the same ease of sharing results, annotating interesting behavior, and long-term storage of logging data.”
Peter Welinder
VP of Product- OpenAI
VP of Product- OpenAI
“We use W&B for pretty much all of our model training.”
Ellie Evans
Product Manager- Cohere
Product Manager- Cohere
“W&B lets us examine all of our candidate models at once. This is vital for understanding which model will work best for each customer. Reports have [also] been great for us. They allow us to seamlessly communicate nuanced technical information in a way that’s digestible for non-technical teams.”
Scalable and Secure
We offer solutions that scale up with massive distributed training, and can be hosted in our secure hosted cloud or on your own private cloud in a self-hosted deployment.
With Weights & Biases you can:
Focus critical developer resources on your core business
Launch new machine learning models faster, with less back and forth
Safeguard IP with a central system of record
Onboard new ML engineers fast, and avoid duplicated work
Overview
Toyota Research Institute’s mission is to build the safest mobility in the world. Machine learning teams at TRI are pursuing autonomous driving, and they use the Weights & Biases system of record to make their models reproducible.
- Company size: 300+
- Industry: Autonomous vehicles
Problem
Led by Adrien Gaidon, the ML team built up world-class infrastructure for training models, but lacked a good way to track and version the valuable results.
They quickly realized the need for a central system of record, but building a solution internally was a distraction from the team’s core goals.
“It’s really hard for machine learning right now to provide any guarantees, statistical or otherwise, on how reliable it’s going to be. Putting in a safety critical system, it really has to work. How can we make it safe enough so that we can put it in cars and save lives instead of endanger lives.”
Adrien Gaidon
Toyota Research Institute
Solution
The TRI team compared different solutions for their experiment tracking problem, and settled on Weights & Biases as the best platform to coordinate machine learning projects.
Instead of tinkering with brittle internal tools and ad-hoc solutions for experiment tracking and prediction visualizations, the ML team was able to standardize with W&B’s lightweight experiment tracking and visualization solutions.
The W&B dashboard gave machine learning practitioners a command center to compare across dataset and model versions, maintaining a reliable record of every experiment and result. ML engineers are now free to focus on the valuable work of model development, accelerating project progress.
“You have to define the metrics clearly when you have a robotic system or a self-driving car that is extremely hard to test on the public roads for instance because the safety standards are very high, but at the same time you want continuous deployment and you want rapid iteration.”
Adrien Gaidon
Toyota Research Institute