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Senior Machine Learning Engineer

Hybrus AB

Sverige · Data scientist

Publicerad 29 juni 2026Sista ansökan 29 juli 2026Heltid

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Matchningssignal

58/100

Kan passa dig som söker distans eller flexibelt upplägg.

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Matchningssignalen är ett stöd, inte en garanti. Kontrollera alltid originalannonsen och fråga arbetsgivaren om kommunikation, arbetsmiljö och viktiga anpassningar.

Översikt

Arbetsgivare

Hybrus AB

Plats

Sverige

Omfattning

Heltid

Sista ansökan

29 juli 2026

Varför jobbet kan passa

Kan passa dig som söker distans eller flexibelt upplägg.

  • distans eller flexibelt upplägg

Kognitivt stöd

55/100

Annonsen kan behöva mer information om struktur, introduktion och arbetsledning.

Fysisk miljö

70/100

Annonsen nämner fysisk tillgänglighet, distans eller flexibilitet.

Inkludering

50/100

Annonsen kan bli tydligare kring stöd, kultur och inkluderande arbetssätt.

Distans

Tydligare sammanfattning

Kortare och tydligare version för snabbare läsförståelse.

Kort och tydligt: - Roll: Senior Machine Learning Engineer - Arbetsgivare: Hybrus AB - Plats: Sverige - Yrke: Data scientist - Omfattning: Heltid - Anställning: 6 månader – upp till 12 månader - Sista ansökningsdag: 2026-07-29 Det som verkar viktigt i annonsen: - distans eller hybrid nämns. Bra frågor att ställa arbetsgivaren: - Hur ofta kan arbetet göras på distans? Kom ihåg: - Läs alltid originaltexten innan du söker. - AI-texten är ett stöd och kan missa detaljer.

Originaltext

We are looking for a Senior ML Engineer for our client in Stockholm for a long term assignment. Employment type: Fixed Term Contract Duration : 6 Months - 1 Year Location : Stockholm Work type : Onsite ( potential hybrid options) As a Senior ML Engineer, you will be working hands-on to optimise training and deployment of ML models to be quick and cost-efficient. You will also be at the forefront of putting our ML models on mobile devices to enhance data privacy and customer experience. To achieve this, you will need to collaborate with teams to establish best practices and tools for efficient ML model development and deployment, particularly on mobile platforms. You will be expected to help Client reach and stay at the cutting edge of ML training and deployment, as well as explore new frontiers such as federated learning. The impact you will create: ● Lead the technical evaluation and implementation of Federated Learning (FL) initiatives . ● Work closely with Data Science, Android, and Backend teams to design and validate end-to-end FL workflows. ● Define and execute experimentation plans to assess the effectiveness of FL for use cases. ● Develop and optimize language models and on-device training pipelines for privacy-preserving machine learning. ● Establish model evaluation frameworks, success metrics, and validation strategies for FL-based systems. ● Identify technical risks, assumptions, and limitations, and provide recommendations on architecture and future direction. ● Help shape the roadmap for scaling FL from experimentation to production-ready systems What you bring in: ● 5+ years of experience in Machine Learning Engineering, Applied Machine Learning, or related fields. ● Hands-on experience with Federated Learning frameworks such as TensorFlow Federated, Flower, FedML, OpenFL, or equivalent. ● Strong understanding of distributed machine learning, model training, and model evaluation techniques. ● Experience working with NLP, language models, embeddings, or text classification systems. ● Hands-on experience deploying ML models on mobile devices (e.g., TensorFlow Lite, Core ML, ONNX Runtime Mobile). ● Strong knowledge of machine learning frameworks such as TensorFlow and PyTorch. ● Experience designing and executing ML experiments, analyzing results, and driving data-driven decisions. ● Familiarity with privacy-preserving machine learning concepts and challenges. ● Ability to work across multiple teams and communicate complex technical concepts to both technical and non-technical stakeholders. ● Strong problem-solving skills and ability to operate in an exploratory research and PoC environment. It would be great if you also have: ● Experience deploying or operating Federated Learning systems in production environments. ● Hands-on experience with on-device machine learning technologies such as TensorFlow Lite, ONNX Runtime Mobile, or Core ML. ● Experience building machine learning solutions for mobile applications. ● Experience in messaging, spam detection, fraud detection, trust & safety, or similar domains. ● Familiarity with the challenges of running ML workloads on mobile devices. ● Experience with MLOps, model monitoring, and automated training/deployment pipelines. Please let us know if you are interested and if yes, then apply to careers@hybrus.se with your CV, including details about Salary, Notice period and Visa Status.

Jobbfakta

Arbetsgivare
Hybrus AB
Plats
Sverige
Omfattning
Heltid
Anställning
6 månader – upp till 12 månader
Distans
Hybrid

Bra frågor att ställa

  • Hur ser introduktion, rutiner och arbetsledning ut i rollen?
  • Hur ofta kan arbetet göras på distans eller med flexibla tider?
  • Vem kan jag prata med om praktiska anpassningar innan start?