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Jobs at Greyparrot (Now Hiring) — 4 open

Greyparrot logoGreyparrot

Lead Data Scientist

London, England, United Kingdom · Hybrid

Senior$31M raised

About the Role The world is in a waste crisis. Currently we produce 2.1 billion tons of solid waste per year. Data collection of the waste we produce is non-existent, meaning no systematic transparency and no accountabil…

Skills: Data Science, Python, SQL, Statistical Modelling, Computer Vision

Greyparrot logoGreyparrot

Executive Assistant to the CEO

London, England, United Kingdom · Hybrid

Senior$31M raised

About the role We're hiring an Executive Assistant to support our CEO. This is a part-time role - 16 to 24 hours a week, spread across 4 or 5 days rather than condensed into two long days - mostly remote, with occasional…

Skills: Calendar Management, Inbox Triage, Executive Support, Stakeholder Management, Travel Coordination

Greyparrot logoGreyparrot

VP Product

London, England, United Kingdom · Hybrid

Senior+$31M raised

About Greyparrot At Greyparrot, we are on a mission to solve the global waste crisis by introducing transparency and automation to a traditionally opaque sector. As the pioneer of AI-powered waste intelligence, our techn…

Skills: Product Strategy, Product Roadmap, AI/ML Lifecycle, Computer Vision, Data Platform Architecture

Greyparrot logoGreyparrot

Commercial Strategy & Market Intelligence Consultant

London, England, United Kingdom · Remote OK

Senior$31M raised

The Team & Environment Reporting Line: You will report to Anne-Sophie, Director of Revenue & Operations. Open to Part-Time and Flexible working arrangements About the role We are seeking an experienced freelance consulta…

Skills: Market Intelligence, Commercial Strategy, Customer Segmentation, Ideal Customer Profile Design, Market Mapping

Greyparrot logo

Lead Data Scientist

Greyparrot

London, England, United Kingdom • Hybrid

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SeniorHybrid · 1 day in office

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  • Full-time
  • Posted 9d ago
  • ~40 hrs/week

Responsibilities

Lead the development of a statistical metric engine to transform raw computer vision outputs into actionable waste management insights. Manage the delivery of contracted client analytics and reports while mentoring a Data Analyst.

Requirements

Requires 5+ years of experience working with large-scale, noisy real-world data and proficiency in Python and SQL. Must have a practical understanding of deep learning implications and experience owning external client deliverables.

Full job description

About the Role

The world is in a waste crisis. Currently we produce 2.1 billion tons of solid waste per year. Data collection of the waste we produce is non-existent, meaning no systematic transparency and no accountability. It means that recycling targets are not upheld, dumping of waste into our oceans remains nobody’s responsibility, recyclables get sent to landfill or incineration, and producers have little visibility of how their packaging performs at end of life. Recycling rates remain at 10% and, unless we change, by 2040 the plastic stock in the ocean will have quadrupled - a problem that already costs society $1.5 trillion each year.

Our mission is to increase transparency and automation in waste management to accelerate the circular economy. Greyparrot's camera and AI systems generate granular, real-time waste composition data across facilities worldwide. That data is only valuable if it can be turned into insight that clients trust and act on.

We are looking for a Lead Data Scientist to act as the “engine room” of our data methodology, transforming raw computer vision outputs into insights the industry can rely on.

The near-term priority is delivery; owning the contracted Deepnest client analytics, the reports and data clients have paid for, shipped on time and to a high standard. The metric engine work is what makes delivery scalable and trusted; developing the statistical methodology that turns raw computer vision outputs into defensible, quantified waste metrics. Both matter from day one.
Longer term will support other customer & marketing facing work as well.

You will report directly to the CTO and have one direct report, Data Analyst, with scope to grow as the business scales. You will sit alongside the Head of Data R&D who owns longer-term structural research upstream of the metric engine.

The data is physical-world data: noisy, incomplete, and derived from computer vision models running in live recycling facilities. This is not a clean-warehouse role. It suits someone who treats messy data as the problem to solve, not a reason to wait.

This role will ideally be based in our London office at least one day a week, and reports to our CTO.

Outcomes

These are the results you will be held to. How you achieve them is yours to figure out.

1. The metric engine advances

The next iteration of Greyparrot's statistical modelling framework is implemented; strengthening how we reconcile process flows, extrapolate across coverage gaps, and quantify confidence in outputs. At 12 months, a credible path toward a confidence-aware, probabilistic foundation is underway. The methodology is documented, defensible, and ready to be productionised by ML Ops.

2. Contracted deliverables ship on time, every time

Deepnest clients receive their analytical reports and insight outputs to a consistently high standard and on schedule. The methodology behind the numbers is defensible, the findings are actionable, and clients trust what they receive. There are no surprises at delivery.

3. Insight delivery is repeatable, not heroic

A documented framework - templates, quality standards, methodology - exists so output quality does not depend on starting from scratch each engagement. The process is written down, transferable, and does not live in your head.

4. R&D and delivery are in sync

The Head of Data, R&D has a clear, consistent picture of which model outputs translate to client value. You provide that feedback loop reliably, and it shapes what gets prioritised on the research roadmap. There is no gap between what the models produce and what clients actually need.



Experience & Background

  • Physical-world data: 5+ years in data science working with large-scale, noisy real-world data - environments where data quality and fail modes are constant challenges.

  • Background in high-volume, complex real-world data industries: satellite and geospatial, weather forecasting, industrial IoT, manufacturing, is a bonus.

  • Deep learning familiarity: A strong practical understanding of the implications of working with data derived from deep learning models; specifically the nuances of integrating computer vision outputs into broader statistical simulations. You know where the model can mislead you and how to account for it.

  • Python and SQL: You build analysis pipelines and get to robust outputs independently, without needing a data engineering team to do it for you. This is not an expectation of production ready output.

  • Owned external deliverables: Reports or data products that clients or senior stakeholders have relied on. You understand what makes insight land versus what gets ignored.

  • Built from scratch: You have built methodology and process where none existed, not just inherited and executed. You are comfortable setting standards and navigating ambiguity at pace.

  • People leadership: You have managed or mentored at least one person and have a clear view of what good looks like. You can set a standard and give others the structure to work within it.

What Success Looks Like

90 days: You have owned at least one contracted Deepnest deliverable end-to-end. Your team has clear scope and is working effectively. You have a clear picture of the current methodology, where the metric engine stands, and where the gaps are.

6 months: The next iteration of the proprietary metric engine and data modelling framework is implemented. A repeatable delivery process is in place and documented.

____

About Greyparrot

The world is in a waste crisis. Currently we produce 2.1 billion tons of solid waste per year. Data collection of the waste we produce is non-existent, meaning no systematic transparency and no accountability. It means that recycling targets are not upheld, dumping of waste into our oceans remains nobody's responsibility, recyclables get sent to landfill or incineration, and producers get away with sub-standard packaging. Thus, recycling rates stubbornly remain at 10% and, unless we change, by 2040 the plastic stock in the ocean will have quadrupled - a problem that already costs society $1.5 trillion each year.

Our mission is to digital waste flows to accelerate the circular economy. Currently, our camera system and AI software are deployed in recycling plants and waste facilities around the world to measure material flows and provide waste analytics. We have compiled a team of experts to deploy our technology and we’re looking to expand our team.

Related keywords

Computer VisionDeep LearningPythonSQLStatistical ModellingCircular EconomyWaste ManagementData PipelinesProbabilistic FoundationML OpsIoTGeospatial DataIndustrial IoTManufacturingData AnalyticsMetric Engine

About Greyparrot

LinkedInVisit site

Greyparrot is using AI waste analytics to unlock a new understanding of discarded resources called waste intelligence.

Industry
Software Development
Company size
11-50 employees
Founded
2019
Headquarters
London
LinkedIn followers
10,682
Total funding
$31M

Greyparrot [greyparrot.ai], the leader in AI waste analytics, is applying AI to globally scale recycling and save millions of tonnes of waste from landfills and incinerators. By providing deeper, more intelligent insights about waste stream composition and financial value, Greyparrot is helping the waste sector recover more value from waste processing lines and reduce the environmental impact of waste. The company’s waste intelligence platform, including Greyparrot Analyzer and Greyparrot Sync (API), reveals real-time insights on over 70 waste categories across seven layers of data, including financial value, brand, and GHG emissions, captured at multiple locations across a recycling facility. In 2023, Greyparrot analysed over 25 billion waste objects helping drive efficiency to save hundreds of thousands, to millions, of dollars per facility – while diverting millions of tonnes of waste away from landfills, oceans, and incinerators. Using Greyparrot insights, recycling professionals, plant builders, packaging producers, and FMCG brands can make decisions to help them increase recycling efficiency, comply with recycling regulations, and improve recyclable packaging design. Greyparrot is recognised as: - Global Cleantech 100 2024 - World Economic Forum “Tech Pioneer” 2021 - PWC “NetZero Future 50” 2022 - WIRED “Europe's 100 Hottest Startups” 2021 - CB Insights “Top 100 most promising AI company globally” 2021

Offices: 100 Drummond Road, A401, London, SE16 4DG, GB

computer visiondeep learningaiautomationmachine visionmachine learningwaste managementrecyclingsustainabilitycleantech
View all jobs at Greyparrot

About Greyparrot

LinkedInVisit site

Greyparrot is using AI waste analytics to unlock a new understanding of discarded resources called waste intelligence.

Industry
Software Development
Company size
11-50 employees
Founded
2019
Headquarters
London
LinkedIn followers
10,682
Total funding
$31M

Greyparrot [greyparrot.ai], the leader in AI waste analytics, is applying AI to globally scale recycling and save millions of tonnes of waste from landfills and incinerators. By providing deeper, more intelligent insights about waste stream composition and financial value, Greyparrot is helping the waste sector recover more value from waste processing lines and reduce the environmental impact of waste. The company’s waste intelligence platform, including Greyparrot Analyzer and Greyparrot Sync (API), reveals real-time insights on over 70 waste categories across seven layers of data, including financial value, brand, and GHG emissions, captured at multiple locations across a recycling facility. In 2023, Greyparrot analysed over 25 billion waste objects helping drive efficiency to save hundreds of thousands, to millions, of dollars per facility – while diverting millions of tonnes of waste away from landfills, oceans, and incinerators. Using Greyparrot insights, recycling professionals, plant builders, packaging producers, and FMCG brands can make decisions to help them increase recycling efficiency, comply with recycling regulations, and improve recyclable packaging design. Greyparrot is recognised as: - Global Cleantech 100 2024 - World Economic Forum “Tech Pioneer” 2021 - PWC “NetZero Future 50” 2022 - WIRED “Europe's 100 Hottest Startups” 2021 - CB Insights “Top 100 most promising AI company globally” 2021

Offices: 100 Drummond Road, A401, London, SE16 4DG, GB

computer visiondeep learningaiautomationmachine visionmachine learningwaste managementrecyclingsustainabilitycleantech
View all jobs at Greyparrot

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