
Sign up to save your podcasts
Or
Data Analytics is something that has been growing in importance within Talent Acquisition for the last few years. Most companies are just starting out on their journey with data but there are some who are now sophisticated enough to benefit from a more predictive and data-driven talent acquisition mindset.
One of these pioneers in this area is Cisco and my guest this week is Ian Bailie their Global Head of Talent Acquisition Operations.
In the interview we discuss:
• How Cisco and built and scaled an in house talent trends division
• The key performance metrics they measure and how this is evolving
• What they have learnt from the data and what has surprised them
• The move towards to predictive analytics and how Talent Acquisition is able to influence higher level decisions in the wider business
Ian also talks about the plans for the future and gives his tips on how to get started with talent analytics
Thanks to HR Tech World for helping to organize the interview
Subscribe to this podcast on iTunes
4.7
7777 ratings
Data Analytics is something that has been growing in importance within Talent Acquisition for the last few years. Most companies are just starting out on their journey with data but there are some who are now sophisticated enough to benefit from a more predictive and data-driven talent acquisition mindset.
One of these pioneers in this area is Cisco and my guest this week is Ian Bailie their Global Head of Talent Acquisition Operations.
In the interview we discuss:
• How Cisco and built and scaled an in house talent trends division
• The key performance metrics they measure and how this is evolving
• What they have learnt from the data and what has surprised them
• The move towards to predictive analytics and how Talent Acquisition is able to influence higher level decisions in the wider business
Ian also talks about the plans for the future and gives his tips on how to get started with talent analytics
Thanks to HR Tech World for helping to organize the interview
Subscribe to this podcast on iTunes
1,647 Listeners
1,830 Listeners
381 Listeners
323 Listeners
487 Listeners
676 Listeners
708 Listeners
86 Listeners
3,995 Listeners
9,189 Listeners
662 Listeners
141 Listeners
85 Listeners
419 Listeners
423 Listeners
406 Listeners
36 Listeners
794 Listeners
53 Listeners
2,189 Listeners
61 Listeners
5,448 Listeners
26 Listeners
151 Listeners