We are looking for an innovative AI Engineer who will design, develop, and deploy artificial intelligence (AI) and data analytics-based applications aligned with our organization's strategic goals.
Qualifications:
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Bachelor's degree in Computer Engineering, Software Engineering, Data Science, or related fields
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Minimum 3 years of experience in AI and data analytics.
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Advanced programming skills in Python, R, or related languages.
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Experience in RAG architectures, agentic chatbot systems, and LLM models.
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Knowledge of vector databases (Pinecone, Qdrant, Pgvector, etc.).
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Experience with workflow tools such as Flowise, n8n, or similar.
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Competency in API development and microservice architectures.
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Proficiency in SQL, including querying, creating views/tables, functions, and stored procedures
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Strong problem-solving, analytical thinking, and communication skills.
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Fluent in English, both written and spoken.
Responsibilities:
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Develop Retrieval-Augmented Generation (RAG) architectures and agentic chatbot systems, integrating them with existing corporate information systems.
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Utilize vector databases such as Pinecone, Qdrant, and Pgvector to create data indexing, semantic search, information retrieval, and recommendation systems.
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Design, develop, and implement corporate process automation solutions using workflow automation tools such as Flowise, n8n, and similar platforms.
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Manage fine-tuning or training processes of large language models (LLM) tailored to organizational needs; actively participate in data collection, preprocessing, model training, and evaluation phases.
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Collect and analyze structured and unstructured data from various sources to generate actionable insights that add value to the organization.
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Participate in API development, microservices, and integration processes for AI and data analytics applications; ensure the sustainability, performance, and security of systems.
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Create decision-support systems using data visualization and reporting tools, and provide data-driven reports to management and stakeholders.
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Continuously monitor the performance of applications and models, develop optimization suggestions, and manage improvement processes.
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Prepare technical documentation for AI and data projects, documenting processes and integration steps in detail.
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Stay updated on current AI and data analytics technologies and methodologies, evaluate their applicability within the organization, and develop pilot projects.
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Share knowledge within the team, providing technical consultancy and guidance as needed.
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Build and maintain data pipelines to connect various data sources and manage the ELT (Extract, Load, and Transform) process using SSIS.
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Develop business performance visualizations and dashboards using SSRS to report on daily, weekly, and monthly activities, identify KPIs, and monitor progress.
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Foster a culture of data-driven decision-making by promoting objectivity over subjectivity and ensuring opinions are not mistaken for facts.
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Adhere strictly to information security, data privacy, and ethical principles, complying fully with relevant legal and corporate standards.