Job Closed
This listing is no longer active.
Data-driven solutions for pricing, forecasting and reporting.
Algorithm Engineer
Location
Belgium
Posted
63 days ago
Salary
0
Seniority
Senior
Job Description
Algorithm Engineer
Gorilla - Decisions, based on data
• Build scalable algorithms: Contribute to forecasting, pricing, and optimisation solutions that perform across large and complex data sets. • Contribute to technical direction: Take part in design discussions for high-volume data processing. • Collaborate and grow: Work closely with Product, Data, and Delivery teams. • Improve and evolve systems: Help improve the robustness, performance, and scalability of models, workflows, and distributed systems.
Job Requirements
- Engineering experience: Hands-on experience designing, developing, or deploying algorithms or data models (e.g., forecasting, pricing, optimisation).
- Technical foundations: Solid working knowledge of Python and parts of the modern data stack (e.g., SQL, Pandas, Polars, DuckDB, NumPy, SciPy; exposure to Dask or PySpark is a plus).
- Data interest: Curiosity about working with large-scale or high-frequency data sources such as smart meter, weather, or IoT data.
- Communication and collaboration: A clear communicator who works well with others, asks good questions, and shares progress openly.
- Curiosity for energy and impact: Background in SaaS or software environments is helpful; energy-sector experience or strong motivation to learn the domain is a plus.
Benefits
- Flexible work options - whether you choose Office Mix or Remote First Mix (currently available within certain timezones and locations).
- A job with purpose
- Remuneration Approach
- Core Benefits - Wherever your location, you can expect a generous PTO allowance and health insurance coverage.
- Career Growth opportunities
- International Travel
Related Guides
Related Categories
Related Job Pages
More Engineer Jobs
Aerospace Analysis Engineer
North WindThe nation's leading independent supplier of hypersonic and mission critical RDT&E systems and services.
• Develop, set-up, and execute CFD simulations using commercial or open-source solvers for high-speed aerospace system problems, including external and internal flows. • Create aerodynamic databases for vehicle trajectory simulations and performance models. • Perform analysis of internal flows of airbreathing propulsion flowpaths. • Develop and recommend design solutions to optimize aerodynamic performance and operability for high-speed systems. • Apply advanced data science techniques with machine learning to build surrogate models of CFD simulation results. • Support multidisciplinary design optimization (MDO) efforts. • Interpret and validate CFD simulation results against experimental data.
Chief Manufacturing Engineer
GKN AerospaceLeading global tier one aerospace supplier with a mission to be the most trusted and sustainable partner in the sky
• Lead the development, industrialisation and improvement of Manufacturing Systems • Serve as the customer-facing representative of the ME function • Focus on delivery of non-recurring engineering projects, including New Product Introductions (NPI), Transfers of Work (ToW), Major Modifications (Mods), Technology Insertions and resolving manufacturing process related quality and delivery challenges • Lead deployed ME resources to deliver manufacturing systems in compliance with identified requirements • Ensure adherence to Zero Defect Manufacturing (ZDM) standards • Validate and approve the proposed definition of the Manufacturing System and its associated performance targets • Review output for technical risks and communicate these to the Programme • Own the Non-Recurring Engineering cost estimate for the ME technical content delivery • Deliver a Manufacturing System that fulfills all agreed stakeholder requirements • Govern and oversee a portfolio of Manufacturing Systems • Accountable for delivery of the non-recurring ME activities within a given programme or project • Drive technical leadership and direction using project management fundamentals • Maintain positive and functional working relationships with internal and external customers
• Lead customer engagements • Run technical discovery workshops with customer architects, data leaders, and AI teams, mapping data sources, MCP Workspace scoping, and agent tooling requirements • Own the scoping for AI deployments with clear acceptance criteria around agent accuracy, data coverage, and governance • Translate complex AI + data concepts into executive-ready architecture proposals; defend trade-offs to CxO-level stakeholders • Architect AI data connectivity end-to-end • Design solutions across Connect AI’s 350+ sources covering MCP server configuration, semantic context modeling, and governance integration • Architect agent orchestration using Connect AI Toolkits, defining which data, schemas, and actions each agent can access in production • Design governed access patterns for AI agents: RBAC, OAuth 2.1, semantic scoping, and audit-trail requirements • Define AI Best practices using agents, skills and LLMs to drive successful customer outcomes • Shape the evolution of the Connect AI platform through real-world deployments • Identify architectural and product gaps during live enterprise engagements and partner with Product and Engineering to define scalable solutions • Author technical specifications and implementation recommendations for Connect AI enhancements, including both features and core architectural improvements • Build reusable reference architectures, deployment patterns, and MCP blueprints that reduce implementation friction and accelerate future customer deployments • Translate recurring customer deployment challenges into scalable platform capabilities and architectural standards • Mentor FDEs on AI integration patterns, semantic data modeling, and customer-facing technical delivery • Serve as the first level technical escalation point for customer engagements • Partner with Product, Engineering, Solutions Engineering, and Customer Success on architectural standards • Codify field patterns into shared assets, playbooks, templates, sample agents, that the broader team can reuse (SE, CS, support etc.)
• Embed with customer teams to deploy Connect AI, configure MCP servers, connect data sources, and validate agent workflows in production • Build and test AI agent integrations using Connect AI Workspaces and Toolkits with correctly scoped data access • Configure semantic context and governance layers for accurate, permission-aware agent responses across connected sources • Build and ship AI integrations • Write production code in Python, Java, or C# connecting customer systems to Connect AI via MCP, REST, OData, and CData drivers • Implement the integration patterns and security configurations defined with the engagement architect • Contribute to and reuse the FDE team's reference architectures, blueprints, and sample agents • Build and deliver iterative solutions on a multi sprint cadence with weekly customer demos, validation checkpoints, and AI workflow refinement • Own deployment health for your engagements, monitor MCP performance, troubleshoot agent accuracy, and ensure a smooth Customer Success handoff • Triage and resolve production issues with appropriate escalation to the architect or product team • Document product gaps and agent behavior patterns from the field; feed prioritized insights to the Connect AI product team • Capture reusable patterns from your engagements, code snippets, deployment recipes, and troubleshooting notes that compound across the FDE team



