Yolando Logo

Yolando

Data Engineer

Posted Yesterday
Be an Early Applicant
Hybrid
Toronto, ON, CAN
Mid level
Hybrid
Toronto, ON, CAN
Mid level
Design, build, and maintain Databricks/Spark ETL pipelines and Bronze-Silver-Gold architectures; implement event-driven streaming with Pub/Sub and Protocol Buffers; prepare datasets for LLM fine-tuning and embeddings; integrate third-party sources (Shopify, Klaviyo); implement attribution, CLV, and analytics models; ensure data quality, monitoring, and idempotent retry-safe pipelines.
The summary above was generated by AI
About Us

The search bar is becoming a conversation. Brands need to know how to get found by AI, and that's what we do. Yolando is the platform that helps marketers understand and improve how AI models discover, cite, and recommend their brand.

We've raised $8.5M from Drive Capital and MaRS Discovery District. We're 15 people building the standard for Generative Engine Optimization.

Role Overview

We are seeking a skilled Data Engineer to build the backbone of our AI platforms, Yolando and BirdseyePost. You will design and maintain sophisticated ETL pipelines using Databricks and Spark, ensuring the reliable flow of data that powers our insights and ML models. You will implement Bronze-Silver-Gold medallion architectures and build event-driven flows to process streaming data for real-time analytics. In this role, you will prepare datasets for LLM fine-tuning and drive the integration of third-party sources to enable data-driven decision-making at scale.

Key Responsibilities
  • Build and Optimize Data Pipelines: Design, build, and maintain ETL pipelines using Databricks and Spark for processing customer data, campaign analytics, and AI model inputs. Implement Bronze-Silver-Gold medallion architectures for reliable data transformation.

  • Enable Real-Time Data Processing: Build event-driven data flows using GCP Pub/Sub and Protocol Buffers. Process streaming data for real-time analytics, attribution tracking, and AI system inputs.

  • Power AI and ML Systems: Prepare and manage datasets for LLM fine-tuning, embedding generation, and recommendation systems. Build pipelines that feed vector databases (pgvector) with processed embeddings for semantic search.

  • Integrate Third-Party Data Sources: Build reliable ingestion pipelines for platforms like Klaviyo, Shopify, and marketing APIs. Handle incremental loads, schema evolution, and data quality validation.

  • Drive Analytics and Attribution: Implement attribution models, customer lifetime value (CLV) calculations, and campaign performance analytics. Build data models that power dashboards and enable data-driven decision making.

  • Ensure Data Quality and Reliability: Implement data validation, monitoring, and alerting for pipeline health. Build idempotent, retry-safe pipelines that handle failures gracefully.

What We're Looking For
  • 4+ years data engineering experience.

  • Strong proficiency in Python and SQL for data transformation.

  • Production experience with Spark (PySpark) and distributed data processing.

  • Experience with cloud data platforms (Databricks, BigQuery, Snowflake, or similar).

  • Solid understanding of data modeling patterns (dimensional modeling, medallion architecture).

  • Experience with event streaming systems (Pub/Sub, Kafka, or similar).

  • Familiarity with GCP or other major cloud platforms.

  • Track record of building reliable, scalable pipelines in production.

Bonus if you have:
  • Experience with Databricks Asset Bundles or similar deployment frameworks.

  • Background in ML data pipelines: feature engineering, embedding generation, model serving data.

  • Familiarity with Protocol Buffers or other schema evolution tools.

  • Experience with vector databases and embedding workflows.

  • Background in marketing data: attribution, customer analytics, campaign tracking.

  • Experience with e-commerce data sources (Shopify, Klaviyo, marketing platforms).

Our Stack
  • Data Processing: Databricks, Apache Spark, PySpark, dbt

  • Event Streaming: GCP Pub/Sub, Protocol Buffers

  • Storage: BigQuery, AlloyDB (PostgreSQL), Cloud Storage

  • ML/AI Data: pgvector, embedding pipelines, LLM training data

  • Infrastructure: GCP, Terraform, Kubernetes, GitHub Actions

  • Languages: Python 3.11, SQL

Why Join Us?
  • Join an innovative, fast-growing startup building cutting-edge AI marketing solutions.

  • Make a meaningful impact by shaping the platform's user experience, design identity, and overall success.

  • Dynamic environment with opportunities for real ownership, learning, and growth.

  • Competitive salary and support for professional development.

How to Apply
  • Please send your resume, portfolio, and a brief note about why you're interested in joining us.

  • We'd love to see your work and hear your story!

  • This is a hybrid role, with 4 days per week in our downtown Toronto office.

Similar Jobs

Yesterday
Remote or Hybrid
6 Locations
Expert/Leader
Expert/Leader
Cloud • Computer Vision • Information Technology • Sales • Security • Cybersecurity
As a Principal Data Engineer, you will design and implement LLM, AI-powered security data platforms, mentor engineers, and drive the adoption of data solutions across teams.
Top Skills: AirflowAWSBigQueryDaskDockerFlinkGCPKafkaKubeflowKubernetesLangchainLlamaindexMlflowMlops ToolsOciPulsarPythonSagemakerSnowflakeSparkVertex Ai
3 Days Ago
Easy Apply
Remote or Hybrid
Canada
Easy Apply
Senior level
Senior level
Artificial Intelligence • Cloud • Computer Vision • Hardware • Internet of Things • Software
Design, build, and maintain SparkSQL/PySpark data pipelines in the central data lake to ingest IoT, product, and unstructured data (video/audio). Produce reliable computed tables for analytics, model training, and dashboards; integrate external datasets; ensure high data quality and uptime; and collaborate with Data Science, ML, and cross-functional teams.
Top Skills: AirflowAWSAzureDagsterData LakeDatabricksDelta LakeETLGCPGitGitPrefectPysparkPythonRest ApisSparkSparksqlSQL
4 Days Ago
Easy Apply
Remote or Hybrid
Canada
Easy Apply
Senior level
Senior level
Artificial Intelligence • Cloud • Computer Vision • Hardware • Internet of Things • Software
Design, build, and operate scalable data ingestion, replication, and lakehouse infrastructure to move petabytes of data into a Delta Lake on S3. Improve reliability, observability, security, and developer experience for Spark/Databricks processing. Develop internal libraries and tooling (Go/Python), collaborate with cross-functional teams, and help shape long-term data platform and AI-ready infrastructure.
Top Skills: SparkAws DynamodbAws KinesisAws LambdaAws RdsAws S3Aws SqsGoJavaPythonScala

What you need to know about the Toronto Tech Scene

Although home to some of the biggest names in tech, including Google, Microsoft and Amazon, Toronto has established itself as one of the largest startup ecosystems in the world. And with over 2,000 startups — more than 30 percent of the country's total startups — Toronto continues to attract new businesses. Be it helping entrepreneurs manage their finances, simplifying business operations by automating payroll or assisting pharmaceutical companies in launching new drugs, the city's tech scene is just getting started.

Sign up now Access later

Create Free Account

Please log in or sign up to report this job.

Create Free Account