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Industry-Academia AI Summit @AWS Tel Aviv

Monday, Jun 1, 2026 at 1:30 PM to 6:00 PM IDT

AWS Tel Aviv, Floor28, Derech Menachem Begin, Tel Aviv-Jaffa, Tel Aviv District, 6701203, Israel

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Event Information

Monday, Jun 1, 2026 at 1:30 PM to 6:00 PM IDT

AWS Tel Aviv, Floor28, Tel Aviv-Jaffa, Tel Aviv District, 6701203, Israel.

Industry and Academia AI Community, is delighted to invite you to our next event that will take place on June 1st @AWS, Tel Aviv.

This Industry–Academia AI event brings together decision makers, AI engineers, leading researchers, policymakers, and industry innovators to explore how artificial intelligence is reshaping research, industry, and society. The event aims to bridge the gap between cutting-edge academic research and real-world industrial applications, fostering collaboration, knowledge exchange, and joint innovation. Participants will engage in discussions about today’s most pressing AI challenges —while also highlighting the opportunities and best practices for overcoming these hurdles. Through keynotes and technical sessions, the event will inspire long-term partnerships that accelerate successful and impactful AI development.

Event Location

About Organizer

IGTCloud Organizer name

Speakers

Head of the university's AI research   
Research areas: Multi-agent systems; human-agent interaction

https://u.cs.biu.ac.il/~krauss/
About Prof. Sarit Kraus
Head of the university's AI research
Bar-Ilan University
Jun 01, 2026
02:00 PM

Smarter Together? Teams of AI agents and Humans

02:00 PM - 02:15 PM
About Yaakov Tayeb, PhD
Sr. ML/AI/GenAI Solution Architect
AWS
Jun 01, 2026
02:15 PM

Agentic landscape on AWS AI

02:15 PM - 02:30 PM
About Nitzan Yogev
Head of AI and Machine Learning
Israel Electric Company
Jun 01, 2026
02:30 PM

Processes for employee and organizational training for AI adoption

02:30 PM - 02:45 PM
About Sarel Weinberger, PhD
AI Director
PWC
Jun 01, 2026
02:45 PM

Challenges in Training Large Language Models for Hebrew

02:45 PM - 03:00 PM
About Yonatan Molad-Hayo, MD, MBA
Director of Research Platform
Aidoc
Jun 01, 2026
04:00 PM

PANEL: 10x R&D productivity Challenges - Moderator: Avner Algom

04:00 PM - 04:25 PM
About Liron Shtraichman
VP R&D
Monday.com
Jun 01, 2026
04:00 PM

PANEL: 10x R&D productivity Challenges - Moderator: Avner Algom

04:00 PM - 04:25 PM
About Hilik Paz
Co-Founder, CTO
arato.ai
Jun 01, 2026
04:00 PM

PANEL: 10x R&D productivity Challenges - Moderator: Avner Algom

04:00 PM - 04:25 PM
About Yosef Gedalyahu
Director of the AI Policy & Regulation Center
Ministry of Innovation, Science and Technology
Jun 01, 2026
03:00 PM

Israel's AI Strategy in a Global Perspective

03:00 PM - 03:15 PM
About Naama Meroz
AI Transformation Lead | Innovation & Technology
Ministry of Education
Jun 01, 2026
04:25 PM

AI Adoption in the Real World What’s happening now, what’s working, and what it takes to scale

04:25 PM - 05:10 PM

Automatic, Efficient, and General Agent Evaluation

Evaluating LLM-based agents is becoming increasingly important as these systems grow more capable and complex. However, the current evaluation landscape is highly fragmented, costly, and often focused on domain-specific tasks. In this talk, I present a line of work aimed at making agent evaluation more automatic, efficient, and general.

In our survey on the evaluation of LLM-based agents, we highlight key gaps in the field [1]. Building on this analysis, the Agentic CLEAR framework and package introduce automated, fine-grained evaluation of agent traces across multiple levels [4]. To address the high cost of benchmarking agents, we propose an approach for efficient agent evaluation using difficulty-based splits, which significantly reduces evaluation cost while maintaining reliability [5]. Finally, we argue in a position paper that agentic systems should be general [3], and introduce a framework for benchmarking such systems, namely General Agent Evaluation [2].

References

[1] Survey on Evaluation of LLM-based Agents (https://arxiv.org/abs/2503.16416)

[2] General Agent Evaluation (https://arxiv.org/abs/2602.22953)

[3] Position: Agentic Systems Should be General (https://papers.ssrn.com/sol3/papers.cfm?abstract_id=6176178)

[4] Agentic CLEAR: Automating Multi-Level Evaluation of LLM Agents (under review)

[5] Efficient Agent Evaluation using Wisdom of the Crowds (to be submitted to COLM)

About Asaf Yehudai, PhD
NLP researcher
IBM
Jun 01, 2026
05:10 PM

Automatic, Efficient, and General Agent Evaluation

05:10 PM - 05:25 PM
About Ofer Kenig
Learning Solutions Lead – AI & Technologies
AppsFlyer
Jun 01, 2026
04:25 PM

AI Adoption in the Real World What’s happening now, what’s working, and what it takes to scale

04:25 PM - 05:10 PM

SLMs are way too big

In this talk we will showcase SLMs and their different architecture.

We will start by analyzing the current market state of SLMs vs LLMs, what triggers companies to make the transition and what needs to be considered when doing so. We will show how to train SLMs, discuss current challenges, and explain how knowledge distillation can be used to overcome them. Then, we will examine the different SLMs architectures, encoder-only (bi-directional) vs decoder-only (autoregressive) models, and demonstrate on what use cases encoders prevail.

About Chaked Sayedoff
Co-Founder & CEO
Specific AI
Jun 01, 2026
05:25 PM

SLMs are way too big

05:25 PM - 05:40 PM

 

 

 

About Yanay Zaguri
CEO & faculty member
ExperTeam & HIT
Jun 01, 2026
04:25 PM

AI Adoption in the Real World What’s happening now, what’s working, and what it takes to scale

04:25 PM - 05:10 PM

Event Schedule

Session Date
Clear all ×

Sessions on Jun 01, 2026

01:30 PM
Networking

Gathering & Networking

01:30 PM - 02:00 PM
02:00 PM
    speaker

    Prof. Sarit Kraus

    Head of the university's AI researchBar-Ilan University

    Head of the university's AI research   
    Research areas: Multi-agent systems; human-agent interaction

    SocialLink
    02:15 PM
    Keynote

    Agentic landscape on AWS AI

    02:15 PM - 02:30 PM
      speaker

      Yaakov Tayeb, PhD

      Sr. ML/AI/GenAI Solution ArchitectAWS
      SocialLink
      02:30 PM
        speaker

        Nitzan Yogev

        Head of AI and Machine LearningIsrael Electric Company
        SocialLink
        02:45 PM
          speaker

          Sarel Weinberger, PhD

          AI DirectorPWC
          SocialLink
          03:00 PM
            speaker

            Yosef Gedalyahu

            Director of the AI Policy & Regulation CenterMinistry of Innovation, Science and Technology
            SocialLink
            03:15 PM
            Networking

            Coffee Networking Break

            03:15 PM - 04:00 PM
            04:00 PM
              speaker

              Yonatan Molad-Hayo, MD, MBA

              Director of Research PlatformAidoc
              SocialLink
              speaker

              Liron Shtraichman

              VP R&DMonday.com
              SocialLink
              speaker

              Hilik Paz

              Co-Founder, CTOarato.ai
              SocialLink
              04:25 PM
                speaker

                Naama Meroz

                AI Transformation Lead | Innovation & TechnologyMinistry of Education
                SocialLink
                speaker

                Ofer Kenig

                Learning Solutions Lead – AI & TechnologiesAppsFlyer
                SocialLink
                speaker

                Yanay Zaguri

                CEO & faculty memberExperTeam & HIT

                 

                 

                 

                SocialLink
                05:10 PM
                  speaker

                  Asaf Yehudai, PhD

                  NLP researcherIBM

                  Automatic, Efficient, and General Agent Evaluation

                  Evaluating LLM-based agents is becoming increasingly important as these systems grow more capable and complex. However, the current evaluation landscape is highly fragmented, costly, and often focused on domain-specific tasks. In this talk, I present a line of work aimed at making agent evaluation more automatic, efficient, and general.

                  In our survey on the evaluation of LLM-based agents, we highlight key gaps in the field [1]. Building on this analysis, the Agentic CLEAR framework and package introduce automated, fine-grained evaluation of agent traces across multiple levels [4]. To address the high cost of benchmarking agents, we propose an approach for efficient agent evaluation using difficulty-based splits, which significantly reduces evaluation cost while maintaining reliability [5]. Finally, we argue in a position paper that agentic systems should be general [3], and introduce a framework for benchmarking such systems, namely General Agent Evaluation [2].

                  References

                  [1] Survey on Evaluation of LLM-based Agents (https://arxiv.org/abs/2503.16416)

                  [2] General Agent Evaluation (https://arxiv.org/abs/2602.22953)

                  [3] Position: Agentic Systems Should be General (https://papers.ssrn.com/sol3/papers.cfm?abstract_id=6176178)

                  [4] Agentic CLEAR: Automating Multi-Level Evaluation of LLM Agents (under review)

                  [5] Efficient Agent Evaluation using Wisdom of the Crowds (to be submitted to COLM)

                  SocialLink
                  05:25 PM
                  Session

                  SLMs are way too big

                  05:25 PM - 05:40 PM
                    speaker

                    Chaked Sayedoff

                    Co-Founder & CEOSpecific AI

                    SLMs are way too big

                    In this talk we will showcase SLMs and their different architecture.

                    We will start by analyzing the current market state of SLMs vs LLMs, what triggers companies to make the transition and what needs to be considered when doing so. We will show how to train SLMs, discuss current challenges, and explain how knowledge distillation can be used to overcome them. Then, we will examine the different SLMs architectures, encoder-only (bi-directional) vs decoder-only (autoregressive) models, and demonstrate on what use cases encoders prevail.

                    SocialLink