Jannik PRO

MJannik

AI & ML interests

None yet

Recent Activity

Organizations

Hugging Face Discord Community's profile picture Langfuse's profile picture

MJannik's activity

published an article 2 days ago
view article
Article

πŸͺ’ Langfuse and πŸ€— Hugging Face: 5 Ways to use them Together

By MJannik β€’
β€’ 11
posted an update 2 days ago
view post
Post
1584
I've published an article showing five ways to use πŸͺ’ Langfuse with πŸ€— Hugging Face.

My personal favorite is Method #4: Using Hugging Face Datasets for Langfuse Dataset Experiments. This lets you benchmark your LLM app or AI agent with a dataset hosted on Hugging Face. In this example, I chose the GSM8K dataset ( openai/gsm8k) to test the mathematical reasoning capabilities of my smolagent :)

Link to the Article here on HF: https://huggingface.co/blog/MJannik/hugging-face-and-langfuse
reacted to Kseniase's post with πŸ‘ 12 days ago
view post
Post
9568
8 Free Sources about AI Agents:

Agents seem to be everywhere and this collection is for a deep dive into the theory and practice:

1. "Agents" Google's whitepaper by Julia Wiesinger, Patrick Marlow and Vladimir Vuskovic -> https://www.kaggle.com/whitepaper-agents
Covers agents, their functions, tool use and how they differ from models

2. "Agents in the Long Game of AI. Computational Cognitive Modeling for Trustworthy, Hybrid AI" book by Marjorie McShane, Sergei Nirenburg, and Jesse English -> https://direct.mit.edu/books/oa-monograph/5833/Agents-in-the-Long-Game-of-AIComputational
Explores building AI agents, using Hybrid AI, that combines ML with knowledge-based reasoning

3. "AI Engineer Summit 2025: Agent Engineering" 8-hour video -> https://www.youtube.com/watch?v=D7BzTxVVMuw
Experts' talks that share insights on the freshest Agent Engineering advancements, such as Google Deep Research, scaling tips and more

4. AI Agents Course from Hugging Face -> https://huggingface.co/learn/agents-course/en/unit0/introduction
Agents' theory and practice to learn how to build them using top libraries and tools

5. "Artificial Intelligence: Foundations of Computational Agents", 3rd Edition, book by David L. Poole and Alan K. Mackworth -> https://artint.info/3e/html/ArtInt3e.html
Agents' architectures, how they learn, reason, plan and act with certainty and uncertainty

6. "Intelligent Agents: Theory and Practice" book by Michael Wooldridge -> https://www.cs.ox.ac.uk/people/michael.wooldridge/pubs/ker95/ker95-html.html
A fascinating option to dive into how agents were seen in 1995 and explore their theory, architectures and agent languages

7. The Turing Post articles "AI Agents and Agentic Workflows" on Hugging Face -> https://huggingface.co/Kseniase
We explore agentic workflows in detail and agents' building blocks, such as memory and knowledge

8. Our collection "8 Free Sources to Master Building AI Agents" -> https://www.turingpost.com/p/building-ai-agents-sources
Β·
upvoted an article 12 days ago
upvoted an article about 1 month ago
view article
Article

Open-source DeepResearch – Freeing our search agents

β€’ 1.17k
reacted to cfahlgren1's post with πŸ”₯ 2 months ago
view post
Post
1762
Wow, I just added Langfuse tracing to the Deepseek Artifacts app and it's really nice πŸ”₯

It allows me to visualize and track more things along with the cfahlgren1/react-code-instructions dataset.

It was just added as a one click Docker Space template, so it's super easy to self host πŸ’ͺ
reacted to andrewrreed's post with πŸ€—πŸ”₯ 2 months ago
view post
Post
2784
πŸš€ Supercharge your LLM apps with Langfuse on Hugging Face Spaces!

Langfuse brings end-to-end observability and tooling to accelerate your dev workflow from experiments through production

Now available as a Docker Space directly on the HF Hub! πŸ€—

πŸ” Trace everything: monitor LLM calls, retrieval, and agent actions with popular frameworks
1⃣ One-click deployment: on Spaces with persistent storage and integrated OAuth
πŸ›  Simple Prompt Management: Version, edit, and update without redeployment
βœ… Intuitive Evals: Collect user feedback, run model/prompt evaluations, and improve quality
πŸ“Š Dataset Creation: Build datasets directly from production data to enhance future performance

Kudos to the Langfuse team for this collab and the awesome, open-first product they’re building! πŸ‘ @marcklingen @Clemo @MJannik

πŸ”— Space: langfuse/langfuse-template-space
πŸ”— Docs: https://huggingface.co/docs/hub/spaces-sdks-docker-langfuse
  • 1 reply
Β·