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Machine Learning Engineer - Fixed Term Contract London

Oddbox

London

Hybrid

GBP 40,000 - 80,000

Full time

8 days ago

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Job summary

An innovative company is seeking a talented Machine Learning Engineer to join their mission-driven team. This role involves designing, building, and deploying machine learning models to optimize supply chain efficiency and enhance customer experience. With a commitment to reducing food waste, this forward-thinking organization offers a unique opportunity to make a significant impact in the food industry. As part of a collaborative environment, you'll work closely with cross-functional teams to implement data-driven solutions. If you're passionate about using your expertise to drive meaningful change, this position is perfect for you.

Qualifications

  • Experience in developing and deploying machine learning models in commercial settings.
  • Familiarity with cloud-based ML platforms and tools.

Responsibilities

  • Develop machine learning models to enhance operational efficiency.
  • Collaborate with teams to integrate ML solutions into tech stack.

Skills

Machine Learning
Problem-Solving
Communication Skills
Data Analysis
Attention to Detail

Tools

AWS
Azure
Google Cloud
LightFM

Job description

Location: Hybrid, at least one day per week in our office in Vauxhall, London.

Working Pattern: Full-time, fixed term contract for 3 months

Salary: Competitive, based on experience.

Oddbox continues to revolutionise the fruit and veg subscription market with our commitment to reducing food waste and promoting sustainable eating. We've saved over 50 million kilograms of produce from going to waste, but we're not stopping there. As we expand our tech-driven approach, we're looking for a talented Machine Learning Engineer to join our innovative team.

About the Role

As a Machine Learning Engineer, you will rapidly design, build, and deploy machine learning forecasting and recommendation models that directly reduce waste and optimise supply chain efficiency through accurate prediction of customer behavior and preferences. You'll work closely with cross-functional teams to implement data-driven solutions that enhance customer experience and optimise our supply chain processes. This is a unique opportunity to contribute to a mission-driven company on a fixed-term basis, with the potential for future opportunities.

Key Responsibilities
  1. Develop cutting-edge machine learning models to enhance operational efficiency and improve the customer experience.
  2. Collaborate with data scientists, software engineers, and product managers to integrate ML solutions into our tech stack.
  3. Analyse large datasets to extract meaningful insights and predictive analytics.
  4. Continuously evaluate and improve model performance through rigorous testing and validation.
  5. Stay updated with the latest industry trends to ensure our ML techniques remain at the forefront.
  6. Document processes, methodologies, and findings for internal knowledge sharing.
Qualifications and Skills

Proven experience in developing and deploying machine learning models in a commercial setting.
Familiarity with LightFM and recommender system deployment at scale.
Experience with cloud-based ML platforms and tools (AWS, Azure, or Google Cloud).
Strong problem-solving abilities and attention to detail.
Excellent communication skills, capable of explaining complex technical concepts to non-technical stakeholders.
Familiarity with data pipelines, ETL processes, and big data technologies.

Application Process
  1. A quick intro call with our team (c. 15 minutes)
  2. Take home technical task + async review
  3. Combo technical live review + ways of working interview (c. 1 hour)

Are you ready to apply your machine learning expertise to make a difference in the food industry? Join the Oddbox team and support our mission to reduce food waste. Apply today!

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