Job Closed

This listing is no longer active.

Data Engineering Lead

Data EngineerData EngineerFull TimeRemoteSeniorTeam 1,001-5,000H1B No SponsorCompany SiteLinkedIn

Location

India

Posted

35 days ago

Salary

0

Seniority

Senior

Bachelor Degree5 yrs expEnglishAWSAzureCloudPythonSQLTerraform

Job Description

Data Engineering Lead

Moniepoint Inc. (Formerly TeamApt Inc.)

• Build and maintain robust data pipelines processing large volumes of data • Analysis of large data sets using tools such as Python & SQL • Update and optimize our data platform for speed, scalability and cost • Coordinate with different functional teams to understand and meet their data needs • Develop processes and tools to monitor and analyze model performance and data accuracy • Solve general data-related problems • Setting up new pipelines for the full stream/enrichment/curation process • Upkeep of source code locations • Investigating and utilising ML & AI to improve the cloud offering • Development of junior staff members

Job Requirements

  • Proven experience as a Data Engineer (5-7+ years, can be made up for with accomplishments)
  • Strong Leadership experience
  • Strong problem solving skills
  • Advanced proficiency with SQL
  • Proficiency with Python
  • Experience with cloud platforms (e.g. Google Cloud, AWS, Azure)
  • Experience using version control tools such as git
  • Excellent written and verbal communication skills
  • A drive to learn and master new technologies and techniques
  • A bachelor’s degree in Computer Science, Statistics, Mathematics, Engineering, or any other related field
  • Experience with the following would be a plus:
  • Data governance
  • Building and deploying machine learning models
  • Terraform or other infrastructure as code tools

Benefits

  • Culture - We put our people first and prioritize the well-being of every team member. We have built a company where all opinions carry weight and where all voices are heard. We value and respect each other and always look out for one another. Above all, we are human.
  • Learning - We have a learning and development-focused environment with an emphasis on knowledge sharing, training, and regular internal technical talks.
  • Compensation - You’ll receive an attractive salary, pension, health insurance, annual bonus, plus other benefits.

Related Categories

Related Job Pages

More Data Engineer Jobs

Data Engineer35 days ago
Full TimeRemoteTeam 201-500Since 1997H1B No Sponsor

• Leitung komplexer Data & AI-Projekte im SAP-Umfeld • Umsetzung von der Anforderungsanalyse bis zum Go-Live • Steuerung der Projekte über den gesamten Lebenszyklus • Qualität und Wirtschaftlichkeit der Delivery sicherstellen • Leiten und Entwickeln von Projektteams • Schulungen und Wissenstransfer bei internen und externen Events

Germany
€90K - €110K / year
Full TimeRemoteTeam 201-500Since 2008H1B No Sponsor

• Diseñar arquitecturas de datos modernas, escalables y orientadas a negocio • Liderar la preventa técnica y la defensa de soluciones ante clientes • Traducir tecnología en valor (storytelling + ROI) • Ejecutar assessments, consultoría técnica y PoCs • Actuar como puente entre preventa y delivery • Explorar nuevas tendencias (GenAI, Data Stack moderno, etc.)

Spain
Aker Systems logo

Lead Data Architect

Aker Systems

Delivering Trusted Environments

Data Engineer35 days ago
Full TimeRemoteTeam 51-200Since 2016H1B No Sponsor

• Engage with stakeholders, both internal and external, to understand business requirements, provide strategic guidance, and ensure that data solutions meet their objectives • Support the design, development, and implementation of data architectures that meet the needs of our clients, ensuring alignment with security, performance, and scalability requirements • Utilise extensive experience with AWS tooling and other cloud providers to architect and deploy secure, cloud-native solutions for batch and real-time data processing • Provide technical leadership and guidance to cross-functional teams, ensuring best practices in data architecture, security, and cloud computing • Proficiency in data modelling, ETL processes, data warehousing, distributed systems and metadata systems • Utilise Apache Flink and other streaming technologies to build real-time data processing systems that handle large-scale, high-throughput data • Ensure all data solutions comply with industry standards and government regulations, maintaining the highest levels of data security and integrity • Monitor technical deliverables against the designs, manage and report on design divergences • Support the sales and pre-sales teams by providing expert advice and input on proposals, ensuring technical feasibility and alignment with client needs • Advise and support on breaches of data standards and make recommendations about how they should be resolved • Stay up to date with the latest advancements in cloud technologies, data architecture, and security practices, and apply this knowledge to continuously improve our offerings.

United Kingdom

Role Description We are hiring a Senior Data Engineer / Architect to own the technical execution of our Golden Record platform and the broader data infrastructure that extends from it. The Golden Record is our central identity resolution system, resolving messy, overlapping client and instrument data from five source systems into canonical entities. This is not a “build dashboards” role. You will design and build: - Identity Resolution Platform: - The Golden Record — our central system for answering “who is this client?” and “what is this instrument?” - Entity registry, resolver API, and human-in-the-loop review queue for match confirmation. - Integration with external reference data sources (OpenFIGI, EDGAR, GLEIF/LEI) for automated enrichment. - Event Bus + Integration Architecture: - AWS EventBridge as the firm's enterprise event bus. - Ownership of event contracts, schema enforcement, and expansion into trade, research, CRM, and readership domains. - Data Warehouse + Analytics: - Analytical layer built on dbt — staging models, dimensional marts, and bridge tables. - BI dashboards for client coverage, trading activity, readership analytics, and CRM gap analysis. - Data quality monitoring to track resolution rates, alias coverage, and entity drift. Qualifications - 8+ years building data platforms, backend services, or data engineering infrastructure. - Deep experience with AWS serverless (Lambda, API Gateway, EventBridge, Aurora, CDK). - Strong PostgreSQL skills — schema design, query optimization, migrations. - Production experience with event-driven architecture (EventBridge, SNS/SQS, Kafka, or similar). - Hands-on data warehouse and ETL/ELT experience — designed schemas, built pipelines, and operated a warehouse in production. - dbt proficiency — staging/mart patterns, incremental models, testing, documentation. - TypeScript or Python fluency (ideally both; TypeScript is primary for infrastructure). - Experience with entity resolution, master data management, or identity matching problems. - Active use of AI-assisted development tools (Cursor, Claude Code, Copilot, or similar). - Comfort working autonomously in a small team with direct access to business stakeholders. Requirements - Familiarity with broker-dealer operations, trade lifecycle, or research distribution. - Experience with CRM systems (Tier1/S&P Global, Salesforce, or similar). - Data quality frameworks and monitoring (Great Expectations, dbt tests, custom). - Prior experience at a small firm where you owned the full stack, not just one layer. What this role is not - This is not a data science or ML role; the entity resolution logic is rule-based and human-in-the-loop. - This is not a front-end role; the primary UI is BI dashboards and a lightweight HITL review queue. - This is not a large-team management role; you'll be the primary technical executor. - This is not a “move fast and break things” environment; data accuracy matters more than speed. How we work - Small team, high trust; decisions happen in conversation, not in tickets. - Architecture-first; executing a clear vision with significant input on implementation details. - AI-native development; using LLMs and agentic tools throughout our engineering workflow. - Human-in-the-loop is core; building systems where humans are in the critical path. - Legacy respect; wrapping old systems with a clean architecture.

United States