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Registration: 22.05.2025

Kolade Atanseiye

Specialization: AI Engineer
— Accomplished AI Engineer with 5+ years of experience developing and deploying advanced AI solutions in industries including real estate, analytics, and AI services. — Proven ability to lead cross-functional teams and mentor emerging talent, translating complex technical concepts into actionable strategies for C-level stakeholders at companies such as NkenneAI, Analytics Intelligence, and Ade’s Realestate.
— Accomplished AI Engineer with 5+ years of experience developing and deploying advanced AI solutions in industries including real estate, analytics, and AI services. — Proven ability to lead cross-functional teams and mentor emerging talent, translating complex technical concepts into actionable strategies for C-level stakeholders at companies such as NkenneAI, Analytics Intelligence, and Ade’s Realestate.

Skills

Python
Pandas
NumPy
Scikit-learn
TensorFlow
Airflow
OpenAI
API
Kubeflow
Docker
PostgreSQL
MongoDB
GCP
Azure
Git

Work experience

Lead AI Engineer
since 11.2024 - Till the present day |Nkenne
GCP, NLP, Python, Scikit-learn, TensorFlow, PyTorch
● Led end-to-end development of a multilingual LLM-powered translation system, expanding dataset size by 1,650% and improving BLEU score performance by 50%. ● Integrated AI-powered user suggestion and follow-up systems, boosting daily active users by 20% and increasing subscriptions by 25%. ● Reduced model training time by 80%, thereby reducing cloud costs by 40% via optimization of training pipelines on GCP. ● Built and deployed content moderation models using NLP classification and sentiment analysis, cutting moderation latency by 30%. Project: Yoruba Version LLM. ● Yoruba LLM – Transformer-based LLM trained for native language generation tasks. Managed full architecture, tokenizer prep, and evaluation metrics.
LLMOps Engineer
since 11.2024 - Till the present day |Nkenne
Docker, GCP, NLP, Python, Scikit-learn, TensorFlow, PyTorch
● Orchestrated a production-grade Kubeflow pipeline deployed on Google Vertex AI, automating the full LLM lifecycle, including data loading from GCS, preprocessing, model training, evaluation, and conditional deployment. ● Used Cloud Build, Docker, and Vertex Pipelines to enable reproducible and automated LLM workflows in a cloud environment. ● Implemented automated decision logic to deploy models only when evaluation metrics surpass defined thresholds.
AI Engineer
08.2024 - 11.2024 |Outlier
Docker, GCP, NLP, Python, Scikit-learn, TensorFlow, PyTorch
● Curated and quality-checked large-scale training datasets, enhancing accuracy in generative LLM systems. ● Evaluated model performance using cross-validation and offline metrics, identifying bias and adjusting labeling schemes. ● Collaborated in shaping AI roadmap for multilingual NLP products, integrating ethical considerations and responsible model usage practices.
Data Scientist
11.2023 - 11.2024 |Analytics Intelligence
Hadoop, Spark, SQL, R, Python, PyTorch, NLP
● Fine-tuned LLMs (Mistral, Llama2) for text summarization and content generation using PEFT techniques, reducing fine-tuning compute costs by 40% while improving text coherence by 25% (measured by ROUGE scores), leading to higher user engagement and content adoption rates. ● Built an AI-powered document retrieval system with LangChain, OpenAI GPT, and vector embeddings, reducing manual search time by 60%, which enhanced workflow efficiency and cut operational costs by minimizing time spent on information retrieval. ● Collaborated with co-engineers on best practices of NLP model deployment, improving team proficiency in fine-tuning and productionizing AI models, leading to faster model iteration cycles and more scalable AI solutions, ultimately reducing development costs by 10%.

Educational background

Computer Science (Bachelor’s Degree)
2019 - 2024
Federal University of Technology Akure

Languages

EnglishProficient