Skip to content

Commit e235b24

Browse files
committed
role update
1 parent 3a438ba commit e235b24

2 files changed

Lines changed: 7 additions & 4 deletions

File tree

content/authors/federico-di-menna/_index.md

Lines changed: 7 additions & 4 deletions
Original file line numberDiff line numberDiff line change
@@ -6,15 +6,15 @@ title: Federico Di Menna
66
superuser: false
77

88
# Role/position
9-
role: PhD Student
9+
role: Postdoctoral Researcher
1010

1111
# Organizations/Affiliations
1212
organizations:
1313
- name: University of L'Aquila
1414
url: "https://disim.univaq.it"
1515

1616
# Short bio (displayed in user profile at end of posts)
17-
bio: My research interests include AIOps for performance engineering.
17+
bio: My research interests include AI for software performance engineering.
1818

1919
interests:
2020
- Performance analysis
@@ -23,6 +23,9 @@ interests:
2323

2424
education:
2525
courses:
26+
- course: Ph.D. in Information and Communication Technology
27+
institution: University of L'Aquila
28+
year: 2026
2629
- course: M.Sc. in Computer Science
2730
institution: University of L'Aquila
2831
year: 2022
@@ -64,8 +67,8 @@ highlight_name: false
6467
user_groups:
6568
- Team
6669
---
67-
Federico Di Menna is an industrial PhD Student at the University of L'Aquila, Italy.
70+
Federico Di Menna is an Postdoctoral Researcher at the University of L'Aquila, Italy. He received his Ph.D. in ICT from the University of L'Aquila in 2026.
6871

69-
His primary research focus centers on the domains of AIOps (Artificial Intelligence for Operations) applied to Performance Engineering and data-driven monitoring for industrial processes, aiming to advance performance and quality assurance techniques for software-hardware systems. He is committed to collaborating with industry professionals to ensure the practical applicability and real-world impact of research findings.
72+
His primary research focus centers on the domains of AIOps (Artificial Intelligence for Operations) applied to Software Performance Engineering and data-driven monitoring for industrial processes, aiming to advance performance and quality assurance techniques for software-hardware systems. He is committed to collaborating with industry professionals to ensure the practical applicability and real-world impact of research findings.
7073

7174
He is a member of the <a href="https://spencerlab-uaq.github.io" target="_blank">SPENCER</a> research group.
44.8 KB
Loading

0 commit comments

Comments
 (0)