Senior PyTorch Research Engineer
GQ Forge Systems and Engineers India Pvt Ltd
All India, Pune • 2 months ago
Experience: 3 to 7 Yrs
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Job Description
**Job Description:**
As a Deep Learning Engineer, your role will involve implementing and benchmarking Liquid Neural Networks (LNNs) for a Doctoral Scholar's thesis on Industrial Edge AI. This project focuses on evaluating the robustness of Neural Circuit Policies (NCPs) and Closed-form Continuous-time (CfC) networks against standard architectures like LSTMs and Transformers using noisy industrial sensor data from NASA CMAPSS.
**Key Responsibilities:**
- **Data Pipeline Engineering:**
- Pre-process the NASA CMAPSS (Turbofan) dataset.
- Convert raw sensor logs into sliding-window 3D Tensors (Batch, Time_Steps, Features) suitable for recurrent models.
- **Model Implementation (PyTorch):**
- Implement a Liquid Neural Network using the ncps (Neural Circuit Policies) library.
- Implement baseline models for comparison: Vanilla LSTM and a Lightweight Transformer.
- **Robustness Experiments (The Core Task):**
- Design a testing loop that injects Gaussian Noise, Signal Dropouts, and Jitter into the test set.
- Benchmark inference speed and accuracy degradation across all three models.
- **Visualization:**
- Generate confusion matrices and RMSE convergence plots.
- Use ncps plotting tools to visualize the sparse wiring diagram of the trained Liquid Network.
**Qualification Required:**
- **Expertise in:**
- Python, PyTorch.
- **Specific Library Knowledge:**
- ncps (by Ramin Hasani/MIT CSAIL) or torchdiffeq.
- **Domain Knowledge in:**
- Time-Series Anomaly Detection, Recurrent Neural Networks (RNNs).
**Bonus Skills:**
- Experience with Differential Equations (ODEs) in ML or Edge AI deployment.
**Deliverables (Milestone Based):**
- **Milestone 1:**
- Clean Data Pipeline (NASA CMAPSS) + LSTM Baseline training code.
- **Milestone 2:**
- Functional Liquid Network (CfC/NCP) training with comparative results.
- **Milestone 3:**
- Final Robustness Report (Graphs showing Performance vs. Noise Level) + Clean Jupyter Notebooks. **Job Description:**
As a Deep Learning Engineer, your role will involve implementing and benchmarking Liquid Neural Networks (LNNs) for a Doctoral Scholar's thesis on Industrial Edge AI. This project focuses on evaluating the robustness of Neural Circuit Policies (NCPs) and Closed-form Continuous-time (CfC) networks against standard architectures like LSTMs and Transformers using noisy industrial sensor data from NASA CMAPSS.
**Key Responsibilities:**
- **Data Pipeline Engineering:**
- Pre-process the NASA CMAPSS (Turbofan) dataset.
- Convert raw sensor logs into sliding-window 3D Tensors (Batch, Time_Steps, Features) suitable for recurrent models.
- **Model Implementation (PyTorch):**
- Implement a Liquid Neural Network using the ncps (Neural Circuit Policies) library.
- Implement baseline models for comparison: Vanilla LSTM and a Lightweight Transformer.
- **Robustness Experiments (The Core Task):**
- Design a testing loop that injects Gaussian Noise, Signal Dropouts, and Jitter into the test set.
- Benchmark inference speed and accuracy degradation across all three models.
- **Visualization:**
- Generate confusion matrices and RMSE convergence plots.
- Use ncps plotting tools to visualize the sparse wiring diagram of the trained Liquid Network.
**Qualification Required:**
- **Expertise in:**
- Python, PyTorch.
- **Specific Library Knowledge:**
- ncps (by Ramin Hasani/MIT CSAIL) or torchdiffeq.
- **Domain Knowledge in:**
- Time-Series Anomaly Detection, Recurrent Neural Networks (RNNs).
**Bonus Skills:**
- Experience with Differential Equations (ODEs) in ML or Edge AI deployment.
**Deliverables (Milestone Based):**
- **Milestone 1:**
- Clean Data Pipeline (NASA CMAPSS) + LSTM Baseline training code.
- **Milestone 2:**
- Functional Liquid Network (CfC/NCP) training with comparative results.
- **Milestone 3:**
- Final Robustness Report (Graphs showing Performance vs. Noise Level) + Clean Jupyter Notebooks.
Skills Required
Posted on: March 3, 2026
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