Delivering energy to the world, today and tomorrow.
Technical Engineer – MWF
Location
France
Posted
10 days ago
Salary
0
Seniority
Senior
Job Description
Technical Engineer – MWF
bp
• Demonstrate leadership in safety and ensure compliance with and maintenance of HSSE (Health, Safety, Security & Environment) requirements • Conduct field trials for new or reformulated Castrol industrial products and services • Serve as the subject-matter expert for industrial applications to internal and external stakeholders • Actively support sales teams in developing new markets • Work with sales teams to deliver effective, rapid solutions to customer issues (processes and product applications) using structured problem‑solving methods • Design and deliver high-quality technical training to internal and external customers • Document and share best practices through case studies that demonstrate the benefits of Castrol solutions • Contribute to company-wide objectives by participating in or leading projects related to industrial strategy • Mentor and train less-experienced engineers and sales staff • Analyze used-oil analysis reports and provide recommendations to support informed decision-making • Collaborate with global product managers to communicate local market needs and contribute to product developments • Represent Castrol in working groups, technical committees, associations, or with universities as required
Job Requirements
- Bachelor's or Master's degree in engineering or equivalent (mechanical, chemical, lubrication, industrial production, or related field)
- Minimum 3 years of technical experience in an industrial environment
- Good command of IT tools (Microsoft Office, CRM such as Salesforce, technical/commercial tools)
- Expertise in metalworking fluids and high-performance lubricants and their industrial applications
- Strong understanding of lubrication technologies and principles
- Solid value-selling skills and strong customer relationship abilities
- Knowledge of sustainability topics (energy efficiency, water recycling, carbon neutrality, etc.) is a plus
- Proficiency in structured problem-solving methods
Benefits
- Health insurance
- Retirement plans
- Paid time off
- Flexible work arrangements
- Professional development
Related Guides
Related Categories
Related Job Pages
More Engineer Jobs
DIGIT is seeking a System Administrator to manage and maintain printers throughout the enterprise for the General Services Administration. The individual will support the management of devices throughout their entire lifecycle. This includes administering, operating, maintaining, and supporting enterprise device management platforms, tools, systems, and related integrations used to manage network-connected devices. There are over 1,400 printers in the GSA environment that are deployed throughout the country. As a leading provider of advanced information technology solutions and professional services to U.S. federal government agencies, is the prime for an $807m task order in support of the General Services Administration (GSA) Office of Digital Infrastructure Technologies (IDT) DIGIT (Digital Innovation for GSA Infrastructure Technologies) task order driving digital transformation and delivering continuous improvement and business value to its customers. The team is comprised of the best-in-class technology partners to leverage forward-leaning technologies and best practices to transform GSA’s IT capabilities and shift offerings to provide a more flexible service delivery model, completing the agency’s shift to a fully digital experience along with its adoption of advanced, emerging technologies such as intelligent automation, artificial intelligence, and machine learning.
Role Description Performacentric is seeking a Machine Learning Engineer with hands-on experience developing and deploying AI applications using Llama 3 8B, Python, and FastAPI. This role will be responsible for building production-grade AI services, optimizing model performance, developing APIs, integrating business systems, and supporting the evolution of Performacentric's AI agent platform. The ideal candidate combines strong software engineering skills with practical machine learning experience and enjoys working in a fast-paced startup environment where they can directly influence product direction and technical architecture. Responsibilities - AI Model Development & Optimization - Deploy, configure, and optimize Llama 3 8B models for production use. - Develop prompt engineering, retrieval, and agentic workflows. - Fine-tune and evaluate LLM performance for business use cases. - Implement Retrieval-Augmented Generation (RAG) architectures. - Optimize inference performance, latency, and infrastructure utilization. - Monitor model quality and continuously improve response accuracy. - Application Development - Build scalable AI applications using Python and FastAPI. - Design and maintain RESTful APIs for AI services. - Develop backend services supporting AI agents and copilots. - Integrate AI solutions with CRM, ERP, communication, and business systems. - Implement authentication, authorization, and API security controls. - Write clean, maintainable, and well-documented code. - Data & Infrastructure - Build and maintain vector database integrations. - Develop data ingestion and preprocessing pipelines. - Support deployment of AI workloads in cloud and self-hosted environments. - Collaborate on model serving, monitoring, logging, and observability. - Assist with infrastructure automation and CI/CD processes. - Collaboration - Work closely with product, engineering, and leadership teams. - Participate in architecture discussions and technical planning. - Contribute to AI solution design for client implementations. - Mentor junior developers and share best practices. Qualifications - 3+ years of professional software engineering experience. - Strong proficiency in Python. - Experience building APIs with FastAPI. - Experience deploying and working with Llama 3 8B or similar open-source LLMs. - Understanding of prompt engineering and LLM optimization techniques. - Experience consuming and developing REST APIs. - Strong understanding of Git-based development workflows. - Familiarity with Linux environments and command-line tools. - Experience troubleshooting and optimizing production applications. Requirements - Understanding of machine learning fundamentals. - Experience evaluating AI model performance. - Familiarity with embeddings, vector search, and RAG architectures. - Knowledge of model inference optimization techniques. - Experience working with structured and unstructured datasets. Preferred Qualifications - Fine-tuning open-source LLMs. - ML Engineering and MLOps practices. - LangChain, LlamaIndex, Haystack, or similar frameworks. - PostgreSQL database administration and optimization. - Vector databases such as pgvector, Chroma, Pinecone, Weaviate, or Qdrant. - Docker and containerized deployments. - Kubernetes orchestration. - Azure AI infrastructure and GPU environments. - CI/CD pipelines and DevOps automation. - Multi-agent AI architectures. - Knowledge graph implementations. - Business intelligence and analytics platforms. Success Metrics - Deploy and optimize production AI workloads. - Improve AI response quality and accuracy. - Reduce inference latency and infrastructure costs. - Expand Performacentric's AI agent platform capabilities. - Deliver reliable AI integrations for customer environments. - Contribute to the development of new AI-powered products and services. Benefits - Opportunity to work on cutting-edge AI and agentic technologies. - Direct influence on product architecture and technical strategy. - Remote-first work environment. - Competitive compensation based on experience. - Professional growth opportunities in one of the fastest-growing areas of software development. - Ability to help shape the future of AI-powered business transformation. How to Apply - Resume/CV - Brief cover letter - GitHub profile (if available) - Portfolio of AI, machine learning, or software development projects - Examples of LLM, FastAPI, or AI agent implementations (preferred)
Role Description Performacentric is seeking a Machine Learning Engineer with hands-on experience developing and deploying AI applications using Llama 3 8B, Python, and FastAPI. This role will be responsible for building production-grade AI services, optimizing model performance, developing APIs, integrating business systems, and supporting the evolution of Performacentric's AI agent platform. The ideal candidate combines strong software engineering skills with practical machine learning experience and enjoys working in a fast-paced startup environment where they can directly influence product direction and technical architecture. Responsibilities - AI Model Development & Optimization - Deploy, configure, and optimize Llama 3 8B models for production use. - Develop prompt engineering, retrieval, and agentic workflows. - Fine-tune and evaluate LLM performance for business use cases. - Implement Retrieval-Augmented Generation (RAG) architectures. - Optimize inference performance, latency, and infrastructure utilization. - Monitor model quality and continuously improve response accuracy. - Application Development - Build scalable AI applications using Python and FastAPI. - Design and maintain RESTful APIs for AI services. - Develop backend services supporting AI agents and copilots. - Integrate AI solutions with CRM, ERP, communication, and business systems. - Implement authentication, authorization, and API security controls. - Write clean, maintainable, and well-documented code. - Data & Infrastructure - Build and maintain vector database integrations. - Develop data ingestion and preprocessing pipelines. - Support deployment of AI workloads in cloud and self-hosted environments. - Collaborate on model serving, monitoring, logging, and observability. - Assist with infrastructure automation and CI/CD processes. - Collaboration - Work closely with product, engineering, and leadership teams. - Participate in architecture discussions and technical planning. - Contribute to AI solution design for client implementations. - Mentor junior developers and share best practices. Qualifications - 3+ years of professional software engineering experience. - Strong proficiency in Python. - Experience building APIs with FastAPI. - Experience deploying and working with Llama 3 8B or similar open-source LLMs. - Understanding of prompt engineering and LLM optimization techniques. - Experience consuming and developing REST APIs. - Strong understanding of Git-based development workflows. - Familiarity with Linux environments and command-line tools. - Experience troubleshooting and optimizing production applications. Machine Learning Knowledge - Understanding of machine learning fundamentals. - Experience evaluating AI model performance. - Familiarity with embeddings, vector search, and RAG architectures. - Knowledge of model inference optimization techniques. - Experience working with structured and unstructured datasets. Preferred Qualifications - Fine-tuning open-source LLMs. - ML Engineering and MLOps practices. - LangChain, LlamaIndex, Haystack, or similar frameworks. - PostgreSQL database administration and optimization. - Vector databases such as pgvector, Chroma, Pinecone, Weaviate, or Qdrant. - Docker and containerized deployments. - Kubernetes orchestration. - Azure AI infrastructure and GPU environments. - CI/CD pipelines and DevOps automation. - Multi-agent AI architectures. - Knowledge graph implementations. - Business intelligence and analytics platforms. Success Metrics - Deploy and optimize production AI workloads. - Improve AI response quality and accuracy. - Reduce inference latency and infrastructure costs. - Expand Performacentric's AI agent platform capabilities. - Deliver reliable AI integrations for customer environments. - Contribute to the development of new AI-powered products and services. Benefits - Opportunity to work on cutting-edge AI and agentic technologies. - Direct influence on product architecture and technical strategy. - Remote-first work environment. - Competitive compensation based on experience. - Professional growth opportunities in one of the fastest-growing areas of software development. - Ability to help shape the future of AI-powered business transformation. How to Apply - Resume/CV - Brief cover letter - GitHub profile (if available) - Portfolio of AI, machine learning, or software development projects - Examples of LLM, FastAPI, or AI agent implementations (preferred)
• Manage and coordinate all technical aspects of the project including planning, design, development, testing, and deployment. • Develop and execute system build plans accounting for software architecture, information security, and hardware deployment. • Work with the Project Manager and provide technical input into the overall project schedule, budget, resource requirements, and risk management. • Lead engineering workshops on topics such as system design, data conversion, business process reviews, test, and validation planning, and change management. • Installation and configuration of OSI monarch advanced distribution management applications • Design and configure SCADA/GMS/EMS/ADMS/OMS systems to meet the specific needs of our clients. • Deploy and integrate SCADA/GMS/EMS/ADMS/OMS systems with other equipment and software. • Provide training and support to clients during and after the implementation process. • Collaborate with project teams and other stakeholders to ensure successful implementation of the project. • Perform system and acceptance testing with the end customers. • Test and validate system configurations to ensure they meet client requirements and industry standards including NERC CIP. • Develop scripts and other solutions to integrate 3rd party systems. • Identify and troubleshoot any issues that arise during the implementation process. • Keep up to date with the latest developments in the field and ensure systems are implemented in accordance with industry best practices. • Travel to customer sites and work directly with customers to successfully deliver, test, and integrate systems • Contribute to proposals, work plans, budgets, and schedules for services opportunities.


