●

Available

Lead AI Product Manager at the HEINEKEN company

The Randstad, Netherlands

Work Happiness

What we match on

Set commute

Set direction

32 - 40 hours

Work week

Set salary

What's not a match

Set sectors

Set shifts

Bio

Lead AI/ML Product Manager, leading a team to develop and scale AI solutions that solve real customer pain points and deliver business value. Proven track record in creating and embedding AI tools globally. Focused on aligning data, tech, and business to drive measurable impact. Passionate about building AI products that make a difference. This summary was written by a robot.

Add education level

Add salary info

Search Status

Opportunity Type

32-40

Hours per week

Add experience

Commute

Add commute preferences

Sector & Company Preferences

Add sector and company preferences

Personal Qualities

Add your personal qualities to stand out

Skills & Certificates

Artificial Intelligence (AI)

Dataproducten

Team Management

Data Science

Big Data Analytics

Data-driven Decision Making

Pricing Strategy

D2C

Direct to Consumer Marketing

E-Commerce

Web Analytics

Agile Project Management

Digital Marketing

Exploratory Data Analysis

Text Mining

Data Engineering

Dashboards

Machine Learning Algorithms

consultancy

ICT Consultancy

Data Analytics

Data Storytelling

Research Skills

Research Support

Collaborative Problem Solving

Data Visualization

Data Analysis

Data Manipulation

Data Processing

Regression Models

Machine Learning

Customer Service

Problem Solving

Human Resources (HR)

Strategy

Political Communication

Political Science

Political Analysis

Business Ownership

Productroadmaps

Data-strategieën

Teammanagement

R

Research

Microsoft Office

Teamwork

Dutch

English

PYTHON

Web scraping

Microsoft Certified: Azure AI Engineer Associate

Microsoft Certified: Azure AI Fundamentals

Microsoft Certified: Azure Data Scientist Associate

Microsoft Certified: Azure Data Fundamentals

SP850-Az: Structured Streaming (Azure Databricks)

SP863-Az: MLflow: Managing the Machine Learning Lifecycle (Azure Databricks)

SP822: ETL Part 3: Production (Azure Databricks)

SP821-Az: ETL Part 2: Transformations and Loads (Azure Databricks)

SP820-Az: ETL Part 1: Data Extraction (Azure Databricks)

SP805-Az: Getting Started with Apache Spark SQL (Azure Databricks)

Languages

Add languages you speak