For more than 20 years, Exadel has been delivering Digital Transformation services, enterprise and custom software solutions for Fortune 500 clients, including HPE, Deloitte, Home Depot and McKesson. With 20+ locations and delivery centers across the US and Europe, Exadel solves the most complex engineering problems using Agile methodologies, offering a scalable and skilled mix of multi-shore resources at the industry's most competitive price. Exadel’s digital transformation solutions and services help chart new strategies that are built upon creative thinking, cutting-edge design, and technical innovation, designed for the growing digital landscape of business. Enterprise Services - Digital Transformation Experts - Developing mission-critical software and mobile applications - Advising companies on how best to leverage open source technology - Helping companies plan and implement migrations to better technology stacks - Providing QA, automation, and testing services for application development - Supporting and maintaining applications and systems for companies - Providing on-line training and mentoring to companies - Assisting companies in evaluating their current enterprise software architecture and planning for improvements or new systems.
Senior/Lead Machine Learning Engineer
Location
Bulgaria + 1 moreAll locations: Bulgaria | Poland
Posted
54 days ago
Salary
0
Seniority
Lead
No structured requirement data.
Job Description
Senior/Lead Machine Learning Engineer
Exadel
We are looking for a Senior ML Engineer to join us at Exadel. This role works closely with data scientists, software engineers, and subject matter experts in different business areas to build production systems capable of processing multi-document PDFs, with automated document type detection and field extraction at scale. Why Join Exadel We’re an AI-first global tech company with 25+ years of engineering leadership, 2,000+ team members, and 500+ active projects powering Fortune 500 clients, including HBO, Microsoft, Google, and Starbucks. From AI platforms to digital transformation, we partner with enterprise leaders to build what’s next. What powers it all? Our people are ambitious, collaborative, and constantly evolving. About the Client The leading provider of vehicle lifecycle solutions, with headquarters in Chicago, enables the companies that build, insure, and replace vehicles to power the next generation of transportation. Its platform delivers advanced mobile, artificial intelligence, and car technologies. It connects a network of 350+ insurance companies, 24,000+ repair facilities, hundreds of parts suppliers, and dozens of third-party data and service providers. The customer's collective solutions enhance productivity and help clients deliver better experiences for end consumers. What You’ll Do - Design and implement end-to-end document intelligence pipelines on AWS - Develop and optimize ML models for document classification,segmentation, and field extraction - Build scalable data processing systems handling PDFs up to 2000 pages - Collaborate with subject matter experts to create and refine requirements for extraction - Own features from research through production deployment and monitoring - Establish evaluation frameworks and quality metrics for extraction accuracy What You Bring - Advanced knowledge of Python (native, Pandas, ScikitLearn, Tensorflow or Pytorch, PyStats, Pydantic) - Experience with AWS tools for ML Engineering and ML deployment (Sagemaker, Lambda, Cloudformation/CDK, Step Functions) - Advanced knowledge of SQL and Data Modeling - Experience with GenAI for document intelligence, including prompt engineering, RAG (Retrieval Augmented Generation), multi-modal models (vision + text), and production deployment using AWS Bedrock or Azure OpenAI APIs - Experience in experiment design (power analysis and hypothesis testing) - Proficiency in both written and verbal communication, required for a remote and largely asynchronous work environment - Demonstrated capacity to clearly and concisely communicate complex technical problems and propose iterative solutions - Experience owning a feature from concept to production, including proposal, discussion, and execution Nice to have - Experience with document processing tools (AWS Textract, Azure Document Intelligence, or similar OCR/layout detection systems) - Experience with PDF and Image processing libraries (e.g. PyMuPDF, opnecv, pillow) - Experience in Machine Learning/ Data Science (e.g., ML algorithm selection, feature engineering, model training, hyperparameter tuning, supervised and unsupervised learning implementation, building a model pipelines, using Machine Learning tools/libraries/frameworks) - Experience working with AWS big data technologies (Redshift, S3, EMR, Glue, etc.) English level Intermediate+ Legal & Hiring Information - Exadel is proud to be an Equal Opportunity Employer committed to inclusion across minority, gender identity, sexual orientation, disability, age, and more - Reasonable accommodations are available to enable individuals with disabilities to perform essential functions - Please note: this job description is not exhaustive. Duties and responsibilities may evolve based on business needs Your Benefits at Exadel Exadel benefits vary by location and contract type. Your recruiter will fill you in on the details. - International projects - In-office, hybrid, or remote flexibility - Medical healthcare - Recognition program - Ongoing learning & reimbursement - Well-being program - Team events & local benefits - Sports compensation - Referral bonuses - Top-tier equipment provision Exadel Culture We lead with trust, respect, and purpose. We believe in open dialogue, creative freedom, and mentorship that helps you grow, lead, and make a real difference. Ours is a culture where ideas are challenged, voices are heard, and your impact matters.
Related Guides
Related Job Pages
More Machine Learning Engineer Jobs
Internship - Failure Mode Discovery and Mitigation for Machine Learning Models (f/m/d) Internship - Failure Mode Discovery and Mitigation for Machine Learning Models (f/m/d) Internship - Failure Mode Discovery and Mitigation for Machine Learning Models (f/m/d)
Volkswagen AGVolkswagen Group of America is an Equal Opportunity Employer. We welcome and encourage applicants from all backgrounds, and do not discriminate based on race, sex, age, disability, sexual orientation, national origin, religion, color, gender identity/expression, marital status, veteran status, or any other characteristics protected by applicable laws. This role description is a guideline and does not create contractual rights between the Company and any of its applicants. The Company does not enter into any type of employment contract, implied or written, with its applicants regarding job security. This Organization participates in E-Verify. We maintain a drug free workplace and perform pre-employment substance abuse testing.
We are CARIAD, the automotive software company of the Volkswagen Group. Our teams build automotive software platforms and digital customer functions for iconic brands like Audi, Volkswagen, and Porsche – supporting the Volkswagen Group in becoming the leading automotive technology company. With CARIDIANS in Germany, the USA, China, Estonia, and India, we are transforming automotive mobility for everyone. Join us and be part of this exciting journey! YOUR TEAM To support our "AI Performance Management" team, we are currently looking for an intern. In your role you get first-hand experience in developing model/data debugging/debiasing methods and will be an integral part of the team that works on providing certifications of performance related requirements relevant to our full software stack. WHAT YOU WILL DO - Research and assess novel methods for model/data debugging/debiasing enhancing the model robustness for the perception task in Automated Driving - Investigate, train and evaluate neural networks for different downstream tasks (e.g. classification, object detection or beyond) - Implement, apply, and evaluate model/data debugging/debiasing methods on trained perception models and on popular benchmarks - Develop algorithmic ideas addressing open research challenges related to your topic WHO YOU ARE - Enrolled student in the area of computer science, electrical engineering, data science, robotics or similar field (please specify the expected date of your graduation or end of enrollment) - Profound knowledge in machine learning, especially deep neural networks in safety and robustness aspects - Proficiency in Python and deep learning frameworks, e.g., PyTorch - Experience in perception tasks like object detection, or beyond - Strong communication skills and analytical understanding NICE TO KNOW - Remote work options within Germany - Duration: 3 - 6 months - 35 hours/week - Salary: 13,90 €/hour At CARIAD, we embrace individuality and diversity because we believe our differences make us stronger. We actively seek to build teams with a variety of backgrounds, perspectives, and experiences. Our goal is to create an environment where everyone feels valued and empowered to contribute. If you need assistance with your application due to a disability, please reach out to us at careers@cariad.technology - we are happy to support you.
Internship - Failure Mode Discovery and Mitigation for Machine Learning Models (f/m/d) Internship - Failure Mode Discovery and Mitigation for Machine Learning Models (f/m/d) Internship - Failure Mode Discovery and Mitigation for Machine Learning Models (f/m/d)
Volkswagen AGVolkswagen Group of America is an Equal Opportunity Employer. We welcome and encourage applicants from all backgrounds, and do not discriminate based on race, sex, age, disability, sexual orientation, national origin, religion, color, gender identity/expression, marital status, veteran status, or any other characteristics protected by applicable laws. This role description is a guideline and does not create contractual rights between the Company and any of its applicants. The Company does not enter into any type of employment contract, implied or written, with its applicants regarding job security. This Organization participates in E-Verify. We maintain a drug free workplace and perform pre-employment substance abuse testing.
Wir sind CARIAD, das Automotive-Software-Unternehmen der Volkswagen Group. Unsere Teams entwickeln Softwareplattformen und digitale Kundenfunktionen für legendäre Marken wie Audi, Volkswagen und Porsche – und unterstützen so die Volkswagen Group auf ihrem Weg zum führenden automobilen Technologiekonzern. CARIDIANS in Softwarezentren in Deutschland, den USA, China, Estland und Indien arbeiten daran, die Automobilität für alle neu zu gestalten. DEIN TEAM Zur Unterstützung unseres Teams „AI Performance Management“ suchen wir derzeit eine:n Praktikant:in. In deiner Rolle erhältst du Einblicke in die Entwicklung von Methoden zur Modell-/Daten-Debugging und -Debiasing und bist Bestandteil des Teams, das an der Zertifizierung leistungsbezogener Anforderungen für unseren gesamten Software-Stack arbeitet. DEINE AUFGABEN - Recherche und Bewertung neuer Methoden für Modell-/Daten-Debugging und -Debiasing zur Verbesserung der Modellrobustheit bei Wahrnehmungsaufgaben im automatisierten Fahren - Untersuchung, Training und Evaluierung neuronaler Netzwerke für verschiedene nachgelagerte Aufgaben (z. B. Klassifikation, Objekterkennung oder darüber hinaus) - Implementierung, Anwendung und Bewertung von Modell-/Daten-Debugging- und Debiasing-Methoden auf trainierten Wahrnehmungsmodellen sowie auf gängigen Benchmarks - Entwicklung algorithmischer Ansätze zur Lösung offener Forschungsfragen in deinem Themengebiet DAS BRINGST DU MIT - Laufendes Studium im Bereich Informatik, Elektrotechnik, Data Science, Robotik oder einem vergleichbaren Studiengang (bitte gib dein voraussichtliches Abschlussdatum bzw. das Ende deiner Einschreibung an) - Fundierte Kenntnisse im Bereich Machine Learning, insbesondere tiefer neuronaler Netzwerke im Hinblick auf Sicherheit und Robustheit - Gute Kenntnisse in Python und Deep-Learning-Frameworks, z. B. PyTorch - Erfahrung mit Wahrnehmungsaufgaben wie Objekterkennung oder ähnlichen Bereichen - Starke Kommunikationsfähigkeiten und analytisches Denkvermögen NICE TO KNOW - Möglichkeit für Remote-Arbeit innerhalb Deutschlands - Dauer: 3–6 Monate - 35 Stunden/Woche - Vergütung: 13,90 €/Stunde Bei CARIAD schätzen wir Individualität und Vielfalt – denn wir sind überzeugt, dass uns unsere Unterschiede stärker machen. Wir setzen uns aktiv dafür ein, Teams mit unterschiedlichen Hintergründen, Perspektiven und Erfahrungen aufzubauen. Unser Ziel ist ein Arbeitsumfeld, in dem sich alle wertgeschätzt fühlen und ihre Stärken einbringen können. Wenn du aufgrund einer Behinderung Unterstützung bei deiner Bewerbung brauchst, melde dich gerne bei uns unter careers@cariad.technology – wir helfen dir gerne weiter.
Data & AI Warsaw Tech Summit 2026: Machine Learning Engineer – From Models to Production
CapcoCapco, a Wipro company, is a management & technology consultancy dedicated to the financial services & energy industries
Capco at Data & AI Warsaw Tech Summit 2026About Capco Capco drives digital transformation across the financial industry. A global consulting firm focused on financial services, Capco partners with leading banks, fintechs, and financial institutions to design and deliver next-generation data platforms, AI solutions, and digital ecosystems. From data strategy and modern platforms to AI-powered decision systems and GenAI innovation, teams unlock measurable value from data. What defines Capco? A fast, flexible, and entrepreneurial environment. Quick decision-making, creative thinking, and real ownership enable people to push the boundaries of what technology can achieve. Capco stands for: • Trusted partnerships with banks, payments providers, and financial institutions • Delivery of modern data platforms and AI-powered systems • Innovation across cloud, data engineering, machine learning, and GenAI • A community of engineers, architects, and consultants solving complex challenges Meet Capco at the Data & AI Warsaw Tech Summit 🚀At this year’s Data & AI Warsaw Tech Summit, Capco will share how financial institutions can move from experimentation to production-grade AI and scalable data ecosystems. Our experts will explore how organizations can: • Build AI-native architectures on modern cloud platforms • Scale machine learning and generative AI solutions across enterprise environments • Transform fragmented data into high-value data products • Embed AI into real business workflows and decision-making systems Capco Speakers at Data & AI Warsaw Tech Summit 🚀Andrzej Worona & Laura Żusin-KaczmarekTopic: From Data to Meaning: Educating AI in Banking with Ontologies: Lessons from FIBO and Conversational Banking Time: 11:50-12:10 CET Intro: Many AI solutions still fall short when it comes to understanding and reasoning about complex financial concepts. The real challenge is about how financial knowledge is represented and shared with machines. Why does AI still misunderstand basic banking terms despite having access to vast amounts of data? How can AI truly understand financial concepts? Using the Financial Industry Business Ontology (FIBO) as an example of structured domain knowledge, we will discuss how formal, machine-readable definitions can provide the contextual foundation AI needs. By analysing selected conversational banking scenarios and example solutions, we will invite participants to reflect together on what the right semantic layer for AI in banking should look like. Join us to discover why the next leap in AI for banking isn’t just about more data or better models, but about building a structured understanding of financial meaning. Looking for ML EngineerRole OverviewWe are looking for a Machine Learning Engineer to design, build, and deploy scalable machine learning solutions. In this role, you will work closely with data scientists, data engineers, and product teams to bring ML models into production and ensure their performance, reliability, and scalability. Key Responsibilities - Design, develop, and deploy machine learning models into production - Build and maintain scalable ML pipelines and workflows - Collaborate with data scientists to operationalize models (MLOps) - Optimize model performance, scalability, and latency - Monitor, evaluate, and retrain models in production - Work with large datasets and feature engineering processes - Implement best practices for versioning, testing, and deployment of ML models - Integrate ML solutions into existing systems and applications - Document models, pipelines, and processes Requirements - Proven experience as a Machine Learning Engineer or similar role (X+ years) - Strong programming skills in Python (or similar language) - Experience with ML frameworks (e.g., TensorFlow, PyTorch, scikit-learn) - Solid understanding of machine learning algorithms and statistics - Experience with data processing tools (e.g., Pandas, Spark) - Familiarity with MLOps practices and tools (e.g., MLflow, Kubeflow, Airflow) - Experience with cloud platforms (AWS, Azure, or GCP) - Knowledge of APIs and microservices architecture - Strong problem-solving and communication skills Nice to Have - Experience with deep learning and NLP or computer vision - Familiarity with Docker and Kubernetes - Experience with CI/CD pipelines for ML - Knowledge of data engineering concepts and tools - Experience with real-time or streaming data systems Online Recruitment Process - Screening call with the Recruiter - Hiring Manager Technical Interview - Feedback - Offer We offer a flexible collaboration model based on a B2B contract with the opportunity to work on diverse projects.
Senior MLOps Engineer – Digital Transformation
Truelogic SoftwarePremium boutique software development company that helps brands with big ideas to make a difference in people’s lives.
• Design and maintain robust ML deployment pipelines to ensure seamless model delivery. • Automate model training, deployment, and monitoring workflows to increase operational efficiency. • Collaborate closely with Data Scientists and Engineering teams to integrate models into production environments. • Optimize cloud-based infrastructure to enhance the scalability and reliability of ML systems. • Implement CI/CD best practices specifically tailored for machine learning lifecycles. • Monitor production systems and proactively troubleshoot performance or governance issues.


