Softeq

Senior Machine Learning Engineer (Sports Tech / Edge AI)

Posted: 3 hours ago

Job Description

About Softeq: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.We are looking for a hands-on Senior Machine Learning Engineer to spearhead the development of an on-device AI solution for sports analytics. You will architect, train, and deploy lightweight, high-performance models that process dual-leg sensor data (IMU) to recognize complex movement patterns in real-time. This is a pure engineering role requiring deep expertise in time-series analysis and edge optimization.Location: Vilnius, Lithuania (employment contract/B2B contract, hybrid)ORLocation: Warsaw, Poland (B2B contract, fully remote)KEY SKILLS AND REQUIREMENTS1. ML Architectures & Time SeriesDeep Learning for Sequences: Deep understanding of modern architectures for time-series processing, specifically:TCN (Temporal Convolutional Networks): Dilated 1D Convolutions, Residual blocks, Causal padding.RNN Variants: Bi-directional LSTM / GRU, layer stacking.Hybrid / Attention Models: 1D-CNN + Attention mechanisms (Transformer-lite), Projection heads.Classical ML Baselines: Experience with Random Forest and XGBoost based on strong feature engineering (windowed stats, spectral energy).Metric Design: Ability to design robust evaluation metrics (Macro-F1, Confusion Matrix analysis) and handle severe Class Imbalance in real-world datasets.2. Model Optimization & Edge DeploymentOptimization Techniques: Hands-on experience compressing models for mobile:Quantization: Post-training quantization (PTQ) to INT8.Pruning: Structured pruning of convolutional and recurrent layers.=Knowledge Distillation: Training lightweight "student" models based on heavy "teacher" models.Deployment Stack:Interoperability: Expert-level knowledge of the ONNX ecosystem (export, validation, versioning, opset compatibility).Mobile Runtimes: Experience preparing models for Core ML (iOS), TFLite / NNAPI (Android), and ONNX Runtime.Constraint Management: Proven ability to optimize models for strict hardware constraints: Inference < 50–80ms, Model Size < 5–10MB.3. Signal Processing & Data HandlingSensor Data (IMU): extensive experience working with raw accelerometer and gyroscope data (6-axis / 9-axis) and understanding motion physics.DSP Techniques:Sensor Calibration & Gravity removal.Resampling & Synchronization (NTP time sync alignment).Normalization techniques (Min-Max, Z-score per session).Feature Extraction: RMS energy, Jerk, Spectral Centroid.Data Augmentation (Time-Domain): Implementation of Time-warping, Jittering (Gaussian noise), Random window shifts, and Channel dropout.4. Engineering & MLOpsCore Stack: Production-quality Python, expert proficiency in PyTorch or TensorFlow.Infrastructure: Experience managing cloud training environments (AWS/GCP), GPU resources, and Docker for reproducible training.Validation Strategy: Implementation of strict Subject-exclusive validation schemes (preventing specific user data leakage into test sets).Data Pipelines: Building pipelines for multimodal data synchronization (Video + Sensor timestamps) and automated window slicing.Tooling: Proficiency with experiment tracking tools (e.g., MLflow, Weights & Biases) to benchmark multiple architecture iterations.5. Soft / Lead Skills (Technical Context)Decision Making: Ability to justify architectural choices (e.g., LSTM vs. TCN) through the lens of the "Accuracy vs. Latency" trade-off.Cross-Team Integration: Ability to bridge the gap between Data Science and Mobile Engineering, ensuring Python preprocessing logic is correctly replicated in Swift/Kotlin/C++ on the device.Documentation: Skills in writing technical specifications (Recording protocols, Model cards, API contracts).

Job Application Tips

  • Tailor your resume to highlight relevant experience for this position
  • Write a compelling cover letter that addresses the specific requirements
  • Research the company culture and values before applying
  • Prepare examples of your work that demonstrate your skills
  • Follow up on your application after a reasonable time period

You May Also Be Interested In