AI Tech Lead

Описание вакансии

Stealth-mode AI-powered Cloud-Native Health-Tech. The Business Domain revolves around providing Better Care for the US Patients; meaning, it’s about Treating Patients well. The company was founded more than five years ago.

It’s not vaporware, their platform supports US Physician Networks (IPAs) by enabling Smarter, Risk-Adjusted, and more Predictive Care that improves real patient outcomes.

Compensation and Benefits:

Paid Time Off

The company has Unlimited PTOs Policy and compensated New Years Holidays on top of that. The misuse of the policy isn’t welcomed, though it’s definitely possible to take at least two weeks – and fully compensated – vacation, or more.

Corporate Hardware

The company provides Corporate Hardware for employees who completed their Probationary Period, as well as proven their value.

Cloud-Native

There’s real ability to make most solutions in a Cloud-Native and Third-Party Integrations manner, rarely spinning something self-hosted (e.g., over GKE). Fully Serverless Approach, based on Cloud Functions and Cloud Run is definitely not welcomed.

Relocation

Relocation assistance to a desired country may be provided after the probationary period, based on business needs and demonstrated performance.

Team Building

The company partially compensates Team Building events, when multiple teammates are located in nearby countries.

Location and timezone:

  • We are focused on hiring in time zones overlapping with the US (Portugal, Spain) or Western Europe. Also consider additional locations where time zone overlap and payroll compliance can be reliably supported, including certain Eastern European and Middle Eastern countries (Bulgaria, UAE, etc.).

Team Size

15 Data Scientists, ML Engineers, Data Engineers, Data Analysts, and Medical Experts.

Target Stack:

Core Infrastructure (GCP Services)

  • Google Cloud Platform (GCP)

  • Google Kubernetes Engine (GKE)

  • BigQuery

  • Cloud Composer (Airflow, DBT)

  • Dataproc Serverless (PySpark, SparkML, PyTorch)

  • Bigtable; Spanner; Pub/Sub.

Development & Deployment

  • Python (SciPy, Pandas, pytest, FastAPI); Git (GitHub); Google Cloud Build; Terraform; SonarSource.

AI & Advanced Analytics

  • Vertex AI; LLMs and GenAI; Agent Development Kit (ADK).

Collaboration & Productivity

  • GSuite; LucidChart; Slack; Jira.

NOTE: Similar Cloud-Native Experience is always an option.

Responsibilities:

  • Leading and Mentoring a multidisciplinary AI team. A Tech Product Manager will be assisting with the day-to-day work.

  • Leading R&D initiatives and Productivization.

  • Assisting with Architectural and Engineering decisions. Assisting with choices of Tech Standards, Code Quality, and MLOps Best Practices.

  • Ensuring Scalability, Reliability, and Alignment of the AI Infrastructure with GCP. Meaning, application of sensible Cloud-Native technologies, such as BigQuery, Vertex AI, Cloud Composer, etc; instead of writing self-hosted homemade solutions running on Virtual Machines.

  • Overseeing Engineering of Classical ML, Agentic and GenAI products, including:

    • Disease Prediction and Patients Scoring over Structured and Unstructured Data

    • Financial Forecasts

    • Time-Series Big Data Anomaly Detection Systems

    • Agentic and Generative Tools for Healthcare operations

    • LLM-powered Summarization, Insights Extraction, Data Analysis

  • Gathering and Translating Clinical and Business Requirements to robust AI Solutions. A Tech Product Manager and Medical Experts will be assisting with the job.

Required Experience:

AI & Leadership

  • 7+ years of Experience in Applied ML and AI engineering, including 3+ years in a Technical Leadership role.

  • Proven track record of Leading ML initiatives; from R&D and Prototyping to Shipment, Deployment, and Productivization.

  • Strong Communication and Mentoring skills across Tech and Business Domains.

  • English B2 or higher; ability to present work and lead discussions with US-based teammates, customers, and stakeholders.

Cloud-Native & GCP

  • 3+ years Cloud-Native Experience is required. Preferably, GCP.

  • This role requires working in a Unix-like Development Environment (e.g., macOS, Linux).

Business Domain

  • Experience in Healthcare, Health-Tech, and MedTech is a major advantage.

Engineering & Fundamentals

  • Deep knowledge of Fundamentals, such as Mathematics, Statistics, Machine Learning, Algorithms and Data Structures, etc, is required.

  • Cloud-Native (GCP) is always prioritized higher than self-hosted, on-premise, or homemade over Virtual Machines solutions.

  • Familiarity with Managed AI (e.g., Vertex AI) is a strong advantage.

  • Experience with Generative AI and LLMs, such as OpenAI, Gemini, Claude, Seedream, GPT Image, Veo3, Sora, is required.

  • Experience with Industry Standards, i.e., PyTorch, Pandas, XGBoost, LightGBM, CatBoost, Temporal Models, Classification, Transformer Architecture, SOTA Models and the Hugging Face Ecosystem.

  • Strong Productivization skills are required - the ability to take ML and LLM solutions beyond prototypes and into real, production environments.

  • Ability to adhere to an Iterative Development and Shipment of MVPs is required at the same time. It’s not possible to work in a Waterfall-like manner.

  • Proficiency with MLOps and DevOps Solutions, such as Google Kubernetes Engine, Docker, Google Cloud Build. Other examples are MLFlow and ClearML, Feature Storing, and Grafana.

  • Strong knowledge of Python and SQL. The focus is on writing Pythonic Solutions and a Style Guide-compliant SQL over BigQuery. SonarSource software is a ready-to-use helper. It’s definitely possible to write some bits in Go or Scala, where those PLs are really applicable, though the default PL is Python.

  • Strong knowledge of Data Architecture and DBs Internals, including DDL, Clustering, Partitioning, Query Optimization, etc.

  • Lakehouse-first Data Engineering (BigQuery, Cloud Composer, DBT) and Decoupled Distributed Data Processing are always prioritized higher than running Imperative Solutions over GKE or Coupled Massively Parallel Processing Compute.

  • Imperative Code Solutions – including Classical Algorithms and Data Structures –, implemented over Dataflow or Spark are expected to come up only when the Lakehouse-first Approach isn’t applicable or is too costly.

Компания, занимающаяся разработкой облачных технологий для здравоохранения на базе искусственного интеллекта, ищет талантливого Senior AI Tech Lead для долгосрочного сотрудничества.

Требуемый опыт:

  • Более 7 лет опыта в области прикладного машинного обучения и инженерии ИИ, в том числе более 3 лет в роли технического руководителя

  • Требуется опыт работы с Cloud-Native 3+ лет. Предпочтительно с GCP

  • Опыт в Unix-подобной среде разработки

  • Глубокое знание математики, статистики, машинного обучения, алгоритмов и структуры данных

  • Облачные решения (GCP)

  • Знание управляемого искусственного интеллекта (например, Vertex AI) является большим преимуществом

  • Опыт работы с генеративным ИИ и LLM, такими как OpenAI, Gemini, Claude, Seedream, GPT Image, Veo3, Sora

  • Опыт работы с PyTorch, Pandas, XGBoost, LightGBM, CatBoost, временными моделями, классификацией, архитектурой трансформеров, моделями SOTA и экосистемой Hugging Face

  • Владение решениями MLOps и DevOps, такими как Google Kubernetes Engine, Docker, Google Cloud Build

  • Хорошее знание Python и SQL

  • Глубокие знания в области архитектуры данных и внутреннего устройства баз данных, включая DDL, кластеризацию, разбиение на разделы, оптимизацию запросов

Навыки
  • ML
  • AI engineering
  • GCP
  • Generative AI
  • LLM
  • PyTorch
  • pandas
  • CatBoost
  • Transformer Architecture
  • Hugging Face
  • Google Kubernetes Engine
  • Docker
  • Google Cloud Build
  • Python
  • SQL
  • BigQuery
  • DBT
Посмотреть контакты работодателя

Похожие вакансии

Хотите оставить вакансию?

Заполните форму и найдите сотрудника всего за несколько минут.
Оставить вакансию