Machine learning in Austin, TX

What is a 

Machine learning

?

Common titles in 
Machine learning
Average salaries for 
Machine learning
 (
P2
)
 in 
Austin, TX
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Decoding job levels: What is a 

P2

?

Pave’s job levels are denoted by their track (P for Professional, M for Management) and their hierarchical level, as denoted by a number. The higher the number, the more senior the role. There are 10 individual levels, broken down as:

Management: M3, M4, M5 & M6
Professional:
P1, P2, P3, P4, P5 & P6

For a full explanation of Pave’s approach to levels visit our FAQ.

Salary comparison for 

Machine learning

 (

P2

)

 by city

Some kind of blurb/write up about the different markets. Like, we looked at the average salary for product managers across nine major metros across the United States. To view additional percentiles or product manager levels, upgrade Pave access

San Francisco, CA
$
149600
$
165630
$
190000
New York, NY
$
165000
$
180000
$
192000
San Francisco, CA
$
165000
$
190000
$
220000
Boston, MA
$
141876
$
158300
$
176354
Austin, TX
$
100,000
$
100,109
$
200,109
P10
93,500
P25
100,000
P40
120,000
P50
100,109
P60
111,109
P75
200,109
P90
183,829
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