AI/ML Engineer
Brak informacji o wynagrodzeniu
SeniorFull-time
#374788·Dodano dziś·0
Źródło: nofluffjobs.comTech Stack / Keywords
PythonGenerative AILLMDatabricks
Firma i stanowisko
Lingaro is a company operating since 2008 with over 1800 talents across 7 global sites. The company offers a diverse, inclusive, and values-driven community with opportunities for internal promotion and professional growth.
Wymagania
- At least 5+ years of Data engineering experience with the last 3 years in building data processing.
- At least 5+ years of experience in production-ready Python code development (e.g., microservices, APIs).
- At least 3+ years of experience in production-ready ML-related code development.
- At least 1+ years of experience with Generative AI (ChatGPT, Gemini, RAGs, prompt engineering).
- Practical experience in MLOps/LLMOps tools like AzureML/AzureAI.
- Practical experience with Databricks.
- Good understanding of ML/AI concepts including algorithms, frameworks, model efficiency metrics, model life-cycle, and AI architectures.
- Good understanding of Cloud concepts and architectures, preferably Azure or GCP.
- Experience in domains such as Data Warehouse, Data Lake, Data Integration, Data Governance, Machine Learning, Deep Learning, MLOps.
- Practical experience in Spark/PySpark and Hive within Big Data platforms like Databricks or EMR.
- Experience in designing and implementing data pipelines.
- Good communication skills and ability to work in a team.
- Taking responsibility for tasks and deliverables.
- Great problem-solving skills and critical thinking.
- Fluency in written and spoken English.
Nice to have:
- Experience in designing and programming ML algorithms and data processing pipelines using Python.
- Good understanding of CI/CD and DevOps concepts with experience in tools like GitHub Actions, GitLab, or Azure DevOps.
- Experience in productizing ML solutions using technologies like Spark/Databricks or Docker/Kubernetes.
Obowiązki
- Working with Data Science teams to implement Machine Learning models into production.
- Designing and delivering Generative AI solutions.
- Practical and innovative implementations of LLM/ML/AI automation for scale and efficiency.
- Designing, delivering, and managing industrialized processing pipelines.
- Defining and implementing best practices in ML model life cycle and ML/LLM operations.
- Implementing AI/MLOps/LLMOps frameworks and supporting Data Science teams in best practices.
- Gathering and applying knowledge on modern techniques, tools, and frameworks in ML Architecture and Operations.
- Gathering technical requirements and estimating planned work.
- Presenting solutions, concepts, and results to internal and external clients.
- Creating technical documentation.
Benefity
- Stable employment with a company operating since 2008.
- “Office as an option” model allowing remote or office work.
- Workation opportunities.
- Great Place to Work® certified employer.
- Flexibility regarding working hours and contract form.
- Comprehensive online onboarding with a “Buddy” from day 1.
- Cooperation with top-tier engineers and experts.
- Unlimited access to Udemy learning platform from day 1.
- Certificate training programs with 500+ technology certificates earned yearly.
- Upskilling support with 110+ training opportunities yearly.
- Opportunities for internal promotion.
- Diverse and inclusive community.
- Autonomy in work methods.
- Referral bonuses.
- Activities supporting well-being and health.
- Opportunities to donate to charities and support the environment.
- Modern office equipment provided or available to borrow.
- Sport subscription.
- Training budget.
- Private healthcare.
- International projects.
- Free coffee, snacks, lunch, and breakfast.
- Playroom and modern office facilities.
Karta sportowa
Dofinansowanie szkoleń
Opieka zdrowotna
Napoje w biurze
Darmowe przekąski
Lingaro
4 aktywne oferty