ML Jobs Newsletter

By Comet.ml

Sign up to receive this biweekly curated list of data science job openings at the best companies in the industry. Roles include data scientist, machine learning engineer, and research scientist positions.

Sign up to receive this biweekly curated list of data science job openings at the best companies in the industry. Roles include data scientist, machine learning engineer, and research scientist positions.

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952

subscribers

20

issues

#20・

ML Jobs Newsletter - Issue #20

Comet is doing for ML what GitHub did for code. We allow data science teams to automatically track their datasets, code changes, experimentation history and production models creating efficiency, transparency, and reproducibility.Find out more

 
#19・

ML Jobs Newsletter - Issue #19

Comet is doing for ML what GitHub did for code. We allow data science teams to automatically track their datasets, code changes, experimentation history and production models creating efficiency, transparency, and reproducibility.Find out more

 
#18・

ML Jobs Newsletter - Issue #18

Comet is doing for ML what GitHub did for code. We allow data science teams to automatically track their datasets, code changes, experimentation history and production models creating efficiency, transparency, and reproducibility.Find out more

 
#17・

ML Jobs Newsletter - Issue #17

Comet is doing for ML what GitHub did for code. We allow data science teams to automatically track their datasets, code changes, experimentation history and production models creating efficiency, transparency, and reproducibility.Find out more

 
#16・

ML Jobs Newsletter - Issue #16

Does your loss function look like this? If yes, you might find this article 'Checklist for debugging neural networks' useful.

 
#15・

ML Jobs Newsletter - Issue #15

Comet is doing for ML what GitHub did for code. We allow data science teams to automatically track their datasets, code changes, experimentation history and production models creating efficiency, transparency, and reproducibility.Find out more

 
#14・

ML Jobs Newsletter - Issue #14

Comet is doing for ML what GitHub did for code. We allow data science teams to automagically track their datasets, code changes, experimentation history and production models creating efficiency, transparency, and reproducibility.Find out more

 
#13・

ML Jobs Newsletter - Issue #13

We're feeling the polar vortex this week, but that didn't stop us from hosting the Enigma team for our monthly NYC AI & ML meetup on knowledge graphs and ontology mapping! For those in the NY area, we'd love to invite you to join us for our next meetup. (…

 
#12・

ML Jobs Newsletter - Issue #12

Comet is doing for ML what GitHub did for code. We allow data science teams to automagically track their datasets, code changes, experimentation history and production models creating efficiency, transparency, and reproducibility.Find out more

 
#11・

ML Jobs Newsletter - Issue #11

Comet is doing for ML what GitHub did for code. We allow data science teams to automagically track their datasets, code changes, experimentation history and production models creating efficiency, transparency, and reproducibility.Find out more

 
#10・

ML Jobs Newsletter - Issue #10

Comet is doing for ML what GitHub did for code. We allow data science teams to automagically track their datasets, code changes, experimentation history and production models creating efficiency, transparency, and reproducibility.Find out more

 
#9・

ML Jobs Newsletter - Issue #9

Comet is doing for ML what GitHub did for code. We allow data science teams to automagically track their datasets, code changes, experimentation history and production models creating efficiency, transparency, and reproducibility.Find out more

 
#8・

ML Jobs Newsletter - Issue #8

Comet is doing for ML what GitHub did for code. We allow data science teams to automagically track their datasets, code changes, experimentation history and production models creating efficiency, transparency, and reproducibility.Find out more

 
#7・

ML Jobs Newsletter - Issue #7

Comet is doing for ML what GitHub did for code. We allow data science teams to automagically track their datasets, code changes, experimentation history and production models creating efficiency, transparency, and reproducibility.Find out more

 
#6・

ML Jobs Newsletter - Issue #6

Comet is doing for ML what GitHub did for code. We allow data science teams to automagically track their datasets, code changes, experimentation history and production models creating efficiency, transparency, and reproducibility.Find out more

 
#5・

ML Jobs Newsletter - Issue #5

Comet is doing for ML what GitHub did for code. We allow data science teams to automagically track their datasets, code changes, experimentation history and production models creating efficiency, transparency, and reproducibility.Find out more

 
#4・

ML Jobs Newsletter - Issue #4

Comet is doing for ML what GitHub did for code. We allow data science teams to automagically track their datasets, code changes, experimentation history and production models creating efficiency, transparency, and reproducibility.Find out more

 
#3・

ML Jobs Newsletter - Issue #3

Comet is doing for ML what GitHub did for code. We allow data science teams to automagically track their datasets, code changes, experimentation history and production models creating efficiency, transparency, and reproducibility.Find out more

 
#2・

ML Jobs Newsletter - Issue #2

Welcome to the second edition of the Machine Learning Jobs Newsletter and thank you for your support thus far! We've already doubled our number of subscribers since the first edition - definitely seems like we've tapped a need in the ecosystem for visibility …

#1・

ML Jobs Newsletter - Issue #1

Comet is doing for ML what GitHub did for code. We allow data science teams to automagically track their datasets, code changes, experimentation history and production models creating efficiency, transparency, and reproducibility.Find out more