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guidepoint
Страна
Канада
Зарплата
135 000 CA$ – 210 000 CA$
+500% приглашений

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Data/AI Engineer

Оценка ИИ

Отличная вакансия с конкурентной зарплатой, четко прописанными технологиями (Databricks, Azure) и возможностью работать над передовыми AI-продуктами в крупной компании. Прозрачный диапазон компенсации и фокус на R&D делают позицию очень привлекательной.


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Сложность вакансии

ЛегкоСложно
Оценка ИИ

Высокая сложность обусловлена требованием глубоких знаний как в классической бэкенд-разработке (Python, K8s), так и в современных AI-паттернах (RAG, мультиагентные системы). Роль подразумевает лидерство и менторство, что повышает планку ответственности.

Анализ зарплаты

Медиана165 000 CA$
Рынок140 000 CA$ – 220 000 CA$
Оценка ИИ

Предлагаемая зарплата (135k - 210k CAD) полностью соответствует и даже несколько превышает рыночные показатели для Senior Data/AI ролей в Торонто, где медиана составляет около 160k CAD. Верхняя граница диапазона является очень конкурентной для канадского рынка.

Сопроводительное письмо

I am writing to express my strong interest in the Data/AI Engineer position at Guidepoint. With over 6 years of experience in backend software engineering and a deep focus on Generative AI, I am excited about the opportunity to contribute to your Toronto-based AI team. My background in architecting production-grade RAG pipelines and deploying scalable microservices on Azure Kubernetes Service aligns perfectly with Guidepoint's vision for a Next-Gen research enablement platform.

In my previous roles, I have successfully implemented complex agentic systems and optimized LLM performance using frameworks like LangChain and Databricks. I am particularly drawn to Guidepoint’s commitment to responsible AI and MLOps excellence. I am confident that my technical leadership skills and expertise in Python, FastAPI, and vector databases will allow me to drive innovation and mentor junior engineers effectively within your Technology Hub.

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Составьте идеальное письмо к вакансии с ИИ-агентом

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Откликнитесь в guidepoint уже сейчас

Присоединяйтесь к команде Guidepoint в Торонто и создавайте будущее Generative AI в сфере экспертных исследований!

Описание вакансии

Overview:

Guidepoint seeks an experienced Data/AI Engineer as an integral member of the Toronto-based AI team. The Toronto Technology Hub serves as the base of our Data/AI/ML team, dedicated to building a modern data infrastructure for advanced analytics and the development of responsible AI. This strategic investment is integral to Guidepoint’s vision for the future, aiming to develop cutting-edge Generative AI and analytical capabilities that will underpin Guidepoint’s Next-Gen research enablement platform and data products.

This role demands exceptional leadership and technical prowess to drive the development of next-generation research enablement platforms and AI-driven data products. You will develop and scale Generative AI-powered systems, including large language model (LLM) applications and research agents, while ensuring the integration of responsible AI and best-in-class MLOps. The Senior AI/ML Engineer will be a primary contributor to building scalable AI/ML capabilities using Databricks and other state-of-the-art tools across all of Guidepoint’s products.

Guidepoint’s Technology team thrives on problem-solving and creating happier users. As Guidepoint works to achieve its mission of making individuals, businesses, and the world smarter through personalized knowledge-sharing solutions, the engineering team is taking on challenges to improve our internal application architecture and create new AI-enabled products to optimize the seamless delivery of our services.

This is a hybrid position based in Toronto.

What You'll Do

  • Architect and Build Production Systems: Design, build, and operate scalable, low-latency backend services and APIs that serve Generative AI features, from retrieval-augmented generation (RAG) pipelines to complex agentic systems.
  • Own the AI Application Lifecycle: Own the end-to-end lifecycle of AI-powered applications, including system design, development, deployment (CI/CD), monitoring, and optimization in production environments like Databricks and Azure Kubernetes Service (AKS).
  • Optimize RAG Pipelines: Continuously improve retrieval and generation quality through techniques like retrieval optimization (tuning k-values, chunk sizes), using re-rankers, advanced chunking strategies, and prompt engineering for hallucination reduction.
  • Integrate Intelligent Systems: Engineer solutions that seamlessly combine LLMs with our proprietary knowledge repositories, external APIs, and real-time data streams to create powerful copilots and research assistants.
  • Champion LLMOps and Engineering Best Practices: Collaborate with data science and engineering teams to establish and implement best practices for LLMOps, including automated evaluation using frameworks like LLM Judges or MLflow, AI observability, and system monitoring.
  • Evaluate and Implement AI Strategies: Systematically evaluate and apply advanced prompt engineering methods (e.g., Chain-of-Thought, ReAct) and other model interaction techniques to optimize the performance and safety of proprietary and open-source LLMs.
  • Mentor and Lead: Provide technical leadership to junior engineers through rigorous code reviews, mentorship, and design discussions, helping to elevate the team's engineering standards.
  • Influence the Roadmap: Partner closely with product and business stakeholders to translate user needs into technical requirements, define priorities, and shape the future of our AI product offerings.

What You'll Bring

  • Experience: A Bachelor’s degree in Computer Science, Engineering, or a related technical field with 6+ years of professional experience; or a Master’s degree with 4+ years of professional experience in backend software engineering and Generative AI. This must include a proven track record of designing, building, and scaling distributed, production-grade systems.
  • Strong Software Engineering Fundamentals: Deep expertise in Python, a major backend framework (e.g., FastAPI, Flask), and asynchronous programming (e.g., asyncio). Proficiency in designing RESTful APIs, microservices, and the complete operational lifecycle, including comprehensive testing, CI/CD (e.g., ArgoCD), observability, monitoring, alerting, maintaining high uptime, and executing zero-downtime deployments.
  • Cloud & Infrastructure Proficiency: Hands-on experience deploying and managing applications on a major cloud platform (Azure preferred, AWS/GCP acceptable) using containerization (Docker) and orchestration (Kubernetes, Helm).
  • Production AI Application Experience: 2+ years of experience building applications that leverage large language models from providers like OpenAI, Anthropic, or Google Gemini. Direct experience with modern LLM patterns such as retrieval-augmented generation (RAG), hybrid search using vector databases (e.g., Pinecone, Elasticsearch), multi-agent AI systems with tool calls, and prompt engineering is required.
  • AI System Design and Evaluation: Experience designing and implementing robust evaluation frameworks for LLM-based systems, including rubric-based scoring, LLM Judges, or using tools like MLflow, alongside monitoring for performance and drift.
  • Large-Scale Data Processing: Familiarity with large-scale data processing platforms and tools (e.g., Databricks, Apache Spark).
  • Familiarity with the Modern AI Stack: Practical experience with libraries and frameworks like LangChain or LlamaIndex for building LLM-powered applications.
  • Leadership and Mentorship: Demonstrated ability to lead complex technical projects and foster the growth of other engineers.

What We Offer:

The annual base salary range for this position is $135,000 - $210,000. Additionally, this position is eligible for an annual discretionary bonus based on performance.

You will also be eligible for the following benefits:

  • Paid Time Off
  • Comprehensive benefits plan
  • Company RRSP Match
  • Development opportunities through the LinkedIn Learning platform

About Guidepoint:

Guidepoint is a leading research enablement platform designed to advance understanding and empower our clients’ decision-making process. Powered by innovative technology, real-time data, and hard-to-source expertise, we help our clients to turn answers into action.

Backed by a network of nearly 1.75 million experts, and Guidepoint’s 1,600 employees worldwide, we inform leading organizations’ research by delivering on-demand intelligence and research on request. With Guidepoint, companies and investors can better navigate the abundance of information available today, making it both more useful and more powerful.

At Guidepoint, our success relies on the diversity of our employees, advisors, and client base, which allows us to create connections that offer a wealth of perspectives. We are committed to upholding policies that contribute to an equitable and welcoming environment for our community, regardless of background, identity, or experience.

#LI-SP1

#LI-Hybrid

This job post is for a live vacancy. Base salary may vary depending on job-related knowledge, skills, and experience, as well as geographic location.

Compensation

$135,000—$210,000 CAD

+400% к собеседованиям

Создайте идеальное резюме с помощью ИИ-агента

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Навыки

  • Python
  • FastAPI
  • Flask
  • Databricks
  • Apache Spark
  • Azure
  • Kubernetes
  • Docker
  • Helm
  • LangChain
  • LlamaIndex
  • Pinecone
  • ElasticSearch
  • MLflow
  • CI/CD
  • ArgoCD
  • RAG
  • LLM
  • Generative AI

Возможные вопросы на собеседовании

Проверка практического опыта оптимизации RAG-систем, что является ключевой задачей вакансии.

Расскажите о вашем опыте оптимизации RAG-пайплайнов: какие стратегии чанкинга и методы реранжирования вы использовали для уменьшения галлюцинаций?

Вакансия требует опыта работы с облачной инфраструктурой и оркестрацией.

Опишите процесс деплоя LLM-приложения в Azure Kubernetes Service. Как вы обеспечиваете zero-downtime и мониторинг производительности?

Роль предполагает создание сложных систем на базе агентов.

В чем заключаются основные сложности при разработке мультиагентных систем с использованием Tool Calling, и как вы их решали?

Важный аспект роли — внедрение стандартов LLMOps.

Как вы организуете автоматизированную оценку качества ответов LLM (LLM-as-a-judge) в производственной среде?

Проверка лидерских качеств и умения работать с кодом коллег.

Как вы подходите к проведению код-ревью для AI-сервисов и какие архитектурные принципы считаете приоритетными при масштабировании систем?

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guidepoint
Страна
Канада
Зарплата
135 000 CA$ – 210 000 CA$