(Sidenote: I am unironically a big fan of trickshot videos. The joy in their faces when they finally get it is fantastic!)
(Sidenote: I am unironically a big fan of trickshot videos. The joy in their faces when they finally get it is fantastic!)
1. Find the link to the scientific paper in the blog post
2. Upload just the paper (not blog post or any other media) into NotebookLM
3. Ask NotebookLM your questions
It's not perfect but (so far) it's pretty decent!
1. Find the link to the scientific paper in the blog post
2. Upload just the paper (not blog post or any other media) into NotebookLM
3. Ask NotebookLM your questions
It's not perfect but (so far) it's pretty decent!
Read more arxiv.org/abs/2503.10510 & share your thoughts!
We welcome feedback, questions, and collaborations. Stay tuned for more insights from our work at QuantumBasel!
Read more arxiv.org/abs/2503.10510 & share your thoughts!
We welcome feedback, questions, and collaborations. Stay tuned for more insights from our work at QuantumBasel!
📊 Essential Outcomes:
AUC increased by over 10%, demonstrating superior detection accuracy.
📊 Essential Outcomes:
AUC increased by over 10%, demonstrating superior detection accuracy.
How have we improve deep MIL models?
1. Instead of using raw feature vectors, we aggregate high-dimensional hidden layer outputs—enhancing representation quality.
How have we improve deep MIL models?
1. Instead of using raw feature vectors, we aggregate high-dimensional hidden layer outputs—enhancing representation quality.
We used individual blood cell images from different patients to create whole slide images (WSIs) of blood —
We used individual blood cell images from different patients to create whole slide images (WSIs) of blood —
What is the challenge?
In multiple instance learning (MIL), individual data points (e.g., single cells) often lack labels, but “bag-level” labels (e.g., entire blood samples) are more accessible.
What is the challenge?
In multiple instance learning (MIL), individual data points (e.g., single cells) often lack labels, but “bag-level” labels (e.g., entire blood samples) are more accessible.
- Future potential: We outline a possible pathway for leveraging quantum algorithms to further enhance MIL-based AI models.
- Future potential: We outline a possible pathway for leveraging quantum algorithms to further enhance MIL-based AI models.
Key results:
- Performance boost: Across multiple metrics - including AUC by over 10%.
Key results:
- Performance boost: Across multiple metrics - including AUC by over 10%.