Data Science Consultant - Remote

Blue Yonder
London
1 month ago
Applications closed

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About Blue Yonder 

Blue Yonder is a leading SaaS and AI-driven Global Supply Chain Solutions software product company. Our solutions are used by:

81 of the global STORES Top 100 Retailers

79 of the global Consumer Goods Registry Top 100

20 of the Gartner Supply Chain Top 25

Blue Yonder employs over 5500 of the industry’s most experienced demand and supply chain experts globally to develop, deliver and support its solutions.

We continue to grow a team of the most advanced Supply Chain experts. Members of this team participate in on-site consulting and business software implementation projects for the largest and most advanced Retail, Manufacturing, and Distribution companies across Europe. Our consultants create the future standards of their core business processes.

Job Summary

We are seeking a highly skilled and motivated Data Science Consultant to join our Supply Chain Planning team. The ideal candidate will leverage data-driven insights to optimize supply chain processes, improve decision-making, and drive business results. You will work closely with cross-functional teams, utilizing advanced data analytics, machine learning, and optimization techniques to enhance supply chain efficiency, forecast demand, and solve complex operational challenges.

Key Responsibilities

Data Analysis & Modeling: Analyze large, complex data sets related to demand forecasting, supply planning to uncover actionable insights.

Machine Learning: Apply statistical and machine learning techniques to forecast demand which would include:

Data ingestion, data visualization and insights, verifying the integrity of data used for analysis

Feature engineering, configuring forecasting models

Fine tune forecasting model

Present results in a clear manner to external customers

Supply Chain Optimization: Implement optimization algorithms to improve supply chain efficiency, reduce costs, and enhance service levels.

Consulting & Advisory: Serve as a subject matter expert (SME) for supply chain analytics, advising stakeholders on best practices, tools, and strategies for effective supply chain management.

Process Improvement: Identify inefficiencies within the supply chain and recommend data-driven strategies for continuous improvement.

Technical Expertise & Contributions

Desirable to have a background in statistical analysis or forecasting

Desirable to have Retail supply and demand forecasting experience

Ensure high-quality deliverables and best practices

Build relationships and support business development

Stay up-to-dateon ML and Data Engineering trendsto ensure you continue to advance in your role

Knowledge and skills, we are looking for:

Educational Background: Bachelor’s or Master’s degree in Data Science, Computer Science, Industrial Engineering, Operations Research, Supply Chain Management, or a related field.

Experience: 5+ years of experience in data science or Supply Chain Operations Analytics, or worked on forecasting projects leveraging statistical/ML models; experience with data visualization tools

Technical Skills: Proficiency in data science tools and programming languages such as Python, R, SQL, and experience with supply chain management platforms/processes. Good, applied statistics skills, such as distributions, statistical testing, regression, etc

Machine Learning: Hands-on experience with machine learning techniques/algorithms (e.g., regression, classification, clustering) and optimization models.

Industry Knowledge: Familiarity with supply chain processes such as demand forecasting, inventory management, procurement, logistics, and distribution.

Analytical Thinking: Strong problem-solving skills with the ability to analyze complex data sets and translate insights into actionable recommendations. 

Personal profile we are looking for:

Interpersonaland communication skills, with a focus on influencing and inspiring.

Excellent problem-solving skills.

Organized, self-motivated, and able to manage multiple priorities independently.

Passion for continuous learning and team development.

Fluent in English (German or French is a plus).

Eligible to live and work in the EU.

Pragmatism, we won’t always have the perfect solution but so we focus on finding the most practical alternative.

Blue Yonder Offers

Highly professional environment of top international industry experts

Chance to deal with the best-in-class supply chain solutions and work on-site with the most prestigious and advanced companies in the world

Strong investment in employee skills development

Excellent development and further growth opportunities

Clear independence and empowerment

Permanent job contract

Competitive salary and benefits package, aligned with your skills and expertise

Our Values


If you want to know the heart of a company, take a look at their values. Ours unite us. They are what drive our success – and the success of our customers. Does your heart beat like ours? Find out here: Core Values

All qualified applicants will receive consideration for employment without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, disability or protected veteran status.

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