Популярное

Музыка Кино и Анимация Автомобили Животные Спорт Путешествия Игры Юмор

Интересные видео

2025 Сериалы Трейлеры Новости Как сделать Видеоуроки Diy своими руками

Топ запросов

смотреть а4 schoolboy runaway турецкий сериал смотреть мультфильмы эдисон
dTub
Скачать

AI Engineering at Jane Street - John Crepezzi

Автор: AI Engineer

Загружено: 28 мар. 2025 г.

Просмотров: 46 127 просмотров

Описание:

Programmers using mainstream languages enjoy a wealth of intelligent coding assistants and tools. At Jane Street, where we primarily use OCaml, we faced the challenge of building these tools for a powerful but low-resource functional programming language. This talk explores our journey in creating custom assistants and editor tooling for OCaml, tackling everything from data collection and model training to seamless editor integrations. We'll dive into our end-to-end process: gathering quality training data, developing meaningful evaluations for custom-trained models, building out underlying infrastructure, and creating tools that fit how we work.

Recorded live at the Agent Engineering Session Day from the AI Engineer Summit 2025 in New York. Learn more at https://ai.engineer and purchase tickets to our next event, the AI Engineer World's Fair, in SF June 3 - 5 here: https://ti.to/software-3/ai-engineer-...

About John

John Crepezzi is an engineer at Jane Street, where he works on building LLM-powered coding assistants and the infrastructure to enable others to create applications leveraging large language models. His work focuses on enhancing developer productivity, particularly in Jane Street's OCaml-centric environment.

Before joining Jane Street, John was a Principal Software Engineer at GitHub, where he contributed to several impactful projects in the developer productivity space, including Codespaces, Merge Queues, and Contribution Graphs. With a career dedicated to improving how developers work, John is passionate about creating tools that empower engineers to solve complex problems more effectively

AI Engineering at Jane Street - John Crepezzi

Поделиться в:

Доступные форматы для скачивания:

Скачать видео mp4

  • Информация по загрузке:

Скачать аудио mp3

Похожие видео

How Deep Research Works - Mukund Sridhar & Aarush Selvan, Google DeepMind

How Deep Research Works - Mukund Sridhar & Aarush Selvan, Google DeepMind

RAG Agents in Prod: 10 Lessons We Learned — Douwe Kiela, creator of RAG

RAG Agents in Prod: 10 Lessons We Learned — Douwe Kiela, creator of RAG

Anchoring Enterprise GenAI with Knowledge Graphs: Jonathan Lowe (Pfizer), Stephen Chin (Neo4j)

Anchoring Enterprise GenAI with Knowledge Graphs: Jonathan Lowe (Pfizer), Stephen Chin (Neo4j)

RAG vs Fine-Tuning vs Prompt Engineering: Optimizing AI Models

RAG vs Fine-Tuning vs Prompt Engineering: Optimizing AI Models

Securing CI Environment: Complexity & Inspiration from Runtime Security | Accel Cybersecurity Summit

Securing CI Environment: Complexity & Inspiration from Runtime Security | Accel Cybersecurity Summit

The mind behind Linux | Linus Torvalds | TED

The mind behind Linux | Linus Torvalds | TED

Reinforcement Learning for Agents - Will Brown, ML Researcher at Morgan Stanley

Reinforcement Learning for Agents - Will Brown, ML Researcher at Morgan Stanley

Model Context Protocol (MCP), clearly explained (why it matters)

Model Context Protocol (MCP), clearly explained (why it matters)

AI's Trillion-Dollar Opportunity: Sequoia AI Ascent 2025 Keynote

AI's Trillion-Dollar Opportunity: Sequoia AI Ascent 2025 Keynote

Trust, but Verify: Knowledge Agents for Finance Workflows - Mike Conover

Trust, but Verify: Knowledge Agents for Finance Workflows - Mike Conover

© 2025 dtub. Все права защищены.



  • Контакты
  • О нас
  • Политика конфиденциальности



Контакты для правообладателей: [email protected]