Jeff Hammerbacher — From data science to biomedicine
Skills:
Startup Basics60%
Jeff talks about building Facebook's early data team, founding Cloudera, and transitioning into biomedicine with Hammer Lab and Related Sciences.
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Jeff Hammerbacher is a scientist, software developer, entrepreneur, and investor. Jeff's current work focuses on drug discovery at Related Sciences, a biotech venture creation firm that he co-founded in 2020.
Prior to his work at Related Sciences, Jeff was the Principal Investigator of Hammer Lab, a founder and the Chief Scientist of Cloudera, an Entrepreneur-in-Residence at Accel, and the manager of the Data team at Facebook.
Connect with Jeff:
📍 Twitter: https://twitter.com/hackingdata
📍 LinkedIn: https://www.linkedin.com/in/jhammerb/
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⏳ Timestamps:
0:00 Sneak peek, intro
1:13 The start of Facebook's data science team
6:53 Facebook's early tech stack
14:20 Early growth strategies at Facebook
17:37 The origin story of Cloudera
24:51 Cloudera's success, in retrospect
31:05 Jeff's transition into biomedicine
38:38 Immune checkpoint blockade in cancer therapy
48:55 Data and techniques for biomedicine
53:00 Why Jeff created Related Sciences
56:32 Outro
🌟 Transcription: http://wandb.me/gd-jeff-hammerbacher 🌟
Links:
1. Ipilimumab, the first checkpoint antibody approved by the FDA
- https://en.wikipedia.org/wiki/Ipilimumab
2. MHCflurry, an open-source package for predicting neoantigens
- https://pubmed.ncbi.nlm.nih.gov/29960884/
3. Immune Epitope Database, a catalog of experimental data on antibody and T cell epitopes
- https://www.iedb.org/
4. Hammer Lab, a lab working to understand and improve the immune response to cancer
- https://www.hammerlab.org/
5. Related Sciences, a biotech venture creation firm that Jeff co-founded
- https://www.related.vc/
---
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Chapters (11)
Sneak peek, intro
1:13
The start of Facebook's data science team
6:53
Facebook's early tech stack
14:20
Early growth strategies at Facebook
17:37
The origin story of Cloudera
24:51
Cloudera's success, in retrospect
31:05
Jeff's transition into biomedicine
38:38
Immune checkpoint blockade in cancer therapy
48:55
Data and techniques for biomedicine
53:00
Why Jeff created Related Sciences
56:32
Outro
🎓
Tutor Explanation
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