PyData Tel Aviv Meetup: SHAP Values for ML Explainability - Adi Watzman
PyData Tel Aviv Meetup #28
2 January 2020
Sponsored and Hosted by PayPal
How do ML models use their features to make predictions?
SHAP opens up the ML black box by providing feature attributions for every prediction of every model. Being a relatively new method ([masked]) , SHAP is gaining popularity extremely quickly thanks to its user-friendly API and theoretical guarantees.
In this talk I will guide your intuition through the exciting theory SHAP is
4 views
54
23
3 years ago 00:24:54 8
Generating Synthetic Data at Scale w/Help of Modern Execution Technologies (PyData Tel-Aviv Dec21)
3 years ago 00:10:06 3
Semantic column matching w/embeddings (Ran Dan / ) - PyData Tel-Aviv Dec 21
5 years ago 00:39:15 4
PyData Tel Aviv Meetup: SHAP Values for ML Explainability - Adi Watzman
5 years ago 00:29:31 1
PyData Tel Aviv Meetup: Delivering Python AI-Products for Businesses at Massive Scale - Eleanor Ainy
5 years ago 00:25:46 12
PyData Tel Aviv Meetup: Monitoring Machine Learning at Scale - Naama Horesh and Anna Reznikov
5 years ago 00:23:32 6
PyData Tel Aviv Meetup: Deep Visual Inference: Teaching Computers to See - Giora Simchoni
5 years ago 00:27:36 2
PyData Tel Aviv Meetup: Modeling Multi-Destination Trips with RNNs Sarai Mizrachi
5 years ago 00:07:47 1
PyData Tel Aviv Meetup: Light Field Refocusing based on Sparse Information - Shachar Ben Dayan
6 years ago 00:25:02 6
PyData Tel Aviv Meetup: Shaky Ground (truth): Learning with Label Noise - Yaniv Katz
6 years ago 00:29:23 14
PyData Tel Aviv Meetup: Deep Learning for Named Entity Recognition - Kfir Bar
6 years ago 00:26:57 4
PyData Tel Aviv Meetup: Deep Learning for NLP Workshop