wamlm-kdd23: The Second Workshop on Applied Machine Learning Management @ KDD 2023 KDD 2023 Long Beach CA, CA, United States, August 5-13, 2023 |
Conference website | https://wamlm-kdd.github.io/wamlm/index.html |
Submission link | https://easychair.org/conferences/?conf=wamlmkdd23 |
Abstract registration deadline | May 23, 2023 |
Submission deadline | May 23, 2023 |
Overview
Machine learning applications are rapidly adopted by industry leaders in any field. The growth of investment in AI-driven solutions created new challenges in managing Data Science and ML resources, people and projects as a whole. The discipline of managing applied machine learning teams, requires a healthy mix between agile product development tool-set and a long term research oriented mindset. The abilities of investing in deep research while at the same time connecting the outcomes to significant business results create a large knowledge based on management methods and best practices in the field. The Workshop on Applied Machine Learning Management brings together applied research managers from various fields to share methodologies and case-studies on management of ML teams, products, and projects, achieving business impact with advanced AI-methods.
Important Dates
Paper submission deadline | May 23rd, 2023 |
Notification of acceptance | June 23rd, 2023 |
Workshop on Applied Machine Learning Management | Most workshops are scheduled on 8/7/2023 with a few exceptions on 8/8/2023 |
How to attend
The workshop is a part of the ACM SIGKDD CONFERENCE ON KNOWLEDGE DISCOVERY AND DATA MINING that will happen in Long Beach Convention & Entertainment center 6-10 August, 2023, more information can be found on the official site of the conference: https://kdd.org/kdd2023/. In order to attend the workshop you need to register to the main conference. Registration will open soon. You don’t need to submit a paper if you want to attend. The conference will be in person.
Call for talk proposals
The workshop focuses on main aspects of a successful ML resource management: project lifecycle, people management and ML quality and excellence. We focus on a combination of soft skills applications along with data-driven and empirical approaches to efficiently resolve ML management challenges.
The ML projects life-cycle management include research resources allocation and collaboration with product development, to achieve innovative and applicable outcomes. We solicit presenting real case-studies and high level working model proposals. At the same time, the people management aspects include the unique properties of ML talents and the specific challenges in building AI organisations, fostering research culture and growing research driven individuals in a business driven environment. Finally, the ML excellence topic include aspects of high-quality ML models and working processes, together with tooling and best practices to ensure them.
We solicit talk proposals for the plenary talks session. The proposals should be 0.25-1 page. We also invite panel round-table discussion proposals. Please include in the submission:
- Description of the talk/panel discussion:
- Title
- Abstract of the talk proposal or round table proposal
- Potential discussion points
- An explanation about relevance of this talk/panel discussion to the workshop
- Infor about the presenter:
- A short bio of the main presenter (~100 words)
- A brief company or project portrait (~60 words)
- Optional:
- References to any existing public materials by the authors on the discussed topic
Proposals should be submitted electronically by TBD via Easychair. Link for submission will be available soon.
Topics of Interest
The key target audience for this workshop are ML leaders, in different industries and academia, ranging from small teams to department and company leaders. Moreover, the workshop can provide unique insights to any ML practitioner about the processes of managing applied research and share knowledge and ideas between different organisations. While hosted at an academic venue, the applied nature of the workshop allows to apply data-driven approaches on the art of machine learning management.
- Managing Machine Learning Projects
- ML Projects life-cycle management
- Research management
- Collaboration with product development
- Integration of ML solution in organization
- Agile Data Science
- Case studies and evaluation
- Presenting ML solutions
- People Management in ML
- Hiring and building ML teams
- ML talent development
- Building mission based teams
- Culture of applied ML
- Community building
- Stakeholder management in ML
- Measuring success in DS team
- ML Excellence
- Maintaining quality in ML
- System and infrastructure management
- Best practices in ML workflow
- Knowledge management
- ML assets management
- ML as a product
- How to make a successful product from ML tech
- Challenges of measuring value of ML
- Stages of ML product development
- **Generative AI for ML managment
- GenAI tools for team managment
- GenAI effects on delivery and time managment
Invited speakers
We are finalising list of invited speakers and will publish it soon.
Tentative Program
Opening Remarks | 15 mins |
Invited talks | 60 mins |
Coffee Break and registration for round tables | 15 mins |
Talks session 1 | 45 mins |
Coffee Break | 15 mins |
Round-table discussions | 45 mins |
Talks session 2 | 30 mins |
Closing Remarks | 5 mins |