
Lead Machine Learning Engineer at Softeq. Location Information: Warsaw, Poland. . Established in 1997, Softeq was built from the ground up to specialize in new product development and R&D, tackling the most difficult problems in the tech sphere. Now we've expanded to offer early-stage innovation and ideation plus digital transformation business consulting. Our superpower is to deliver all of this under one roof on a global scale. So let's get started and build a better future together!. Location: Poland/EU countries. Type of contract: B2B (fully remote). Responsibilities . • Evaluate and adapt state-of-the-art machine learning (ML), computer vision (CV), generative AI, and time series forecasting algorithms to meet product and client objectives. . • Research, design, and implement innovative ML algorithms for image, video, multimodal, and temporal data. . • Architect and develop full-stack ML . pipelines. —from data acquisition and preprocessing to training, evaluation, and deployment in cloud (AWS) or edge environments. . • Prototype and validate proof-of-concept (POC) solutions for vision, generative AI, and time-series forecasting problems. . • Translate customer requirements into actionable tasks, ensuring a clear understanding of objectives, scope, and expected outcomes. . • Analyze structured and unstructured data to uncover trends, patterns, and anomalies. Apply ML and statistical methods for prediction and forecasting. . • Prepare detailed technical documentation, reports, and presentations for internal and external stakeholders. . • Communicate complex technical topics effectively to both technical and non-technical stakeholders, including clients and business partners. . • Lead projects from prototype to production, ensuring scalability, reliability, and performance of solutions. . • Contribute to internal software development processes and team collaboration initiatives. . Requirements . • Strong hands-on experience in delivering ML solutions, including production-grade computer vision and forecasting models. . • Proven expertise in forecasting and time series data handling (e.g., ARIMA, LSTM, temporal convolutional networks). . • Proficiency in image and video processing, including segmentation, pose estimation, object detection, and multimodal data fusion. . • Experience with generative AI models such as diffusion-based text-to-image/video, multimodal LLMs, and prompt engineering. . • Skilled in reading, interpreting, and applying insights from academic research papers. . • Expertise in deep learning frameworks like . PyTorch. or TensorFlow. . • Strong object-oriented programming skills with clean, production-quality Python code. . • Familiarity with Vision Transformers (ViTs), especially for action recognition, object tracking, and video understanding tasks. . • Cloud deployment experience, particularly with AWS. . • Excellent communication skills in English (C1 or higher), both written and spoken. . • Strong ability to work independently, prioritize tasks, and manage multiple projects simultaneously. . Nice to Have . • Master’s or Ph.D. degree in Machine Learning, Computer Science, Mathematics, or a related field. . • Contributions to open-source ML or CV libraries or participation in Kaggle competitions.. .