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Bashir M. Al-Hashimi

Bashir M. Al-Hashimi contributes to research discovery and scholarly infrastructure.

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Published work

2 published item(s)

preprint2026arXiv

Covariance-Aware Goodness for Scalable Forward-Forward Learning

The Forward-Forward algorithm eliminates global gradient flow and full network activations storage. However, in convolutional settings, existing BP-free FF methods significantly under-perform backpropagation on complex benchmarks such as ImageNet-100 and Tiny-ImageNet. We identify this gap as a structural bottleneck in goodness extraction: standard sum-of-squares formulation collapses feature volumes into channel-wise activation energies which omits critical second-order dependencies. To address this, we propose a framework centered on three key components. First, Bi-axis Covariance Goodness(BiCovG) explicitly augments the standard goodness function with structured second-order information along two axes: cross-channel projections that model inter-feature covariance, and nested multi-scale aggregation that encodes spatial correlation statistics. This provides a tractable approximation to covariance-aware goodness without the prohibitive O(C^2) complexity of explicit matrix estimation. Second, a lightweight Logistic Fusion module aggregates layer-wise predictions, amplifying the contribution of deeper representations. Third, the Feature Alignment Layer(FAL) introduces a zero-initialized correction at block boundaries to mitigate representation misalignment in deep locally trained networks. By introducing these three components, we effectively double the depth of viable Forward-Forward learning, extending robust layer utilization from shallow baselines to 16 layer architectures like VGG-16. The resulting BP-free model achieves 73.01% on ImageNet-100 and 50.30% on Tiny-ImageNet. As a practical extension, Hybrid Goodness Blocks control the scope of gradient propagation via configurable block sizes, further narrowing the ImageNet-100 gap to 3.6% and matching BP on Tiny-ImageNet, while still reducing peak memory by approximately 50% relative to BP.

preprint2022arXiv

Dynamic DNNs Meet Runtime Resource Management on Mobile and Embedded Platforms

Deep neural network (DNN) inference is increasingly being executed on mobile and embedded platforms due to low latency and better privacy. However, efficient deployment on these platforms is challenging due to the intensive computation and memory access. We propose a holistic system design for DNN performance and energy optimisation, combining the trade-off opportunities in both algorithms and hardware. The system can be viewed as three abstract layers: the device layer contains heterogeneous computing resources; the application layer has multiple concurrent workloads; and the runtime resource management layer monitors the dynamically changing algorithms' performance targets as well as hardware resources and constraints, and tries to meet them by tuning the algorithm and hardware at the same time. Moreover, We illustrate the runtime approach through a dynamic version of 'once-for-all network' (namely Dynamic-OFA), which can scale the ConvNet architecture to fit heterogeneous computing resources efficiently and has good generalisation for different model architectures such as Transformer. Compared to the state-of-the-art Dynamic DNNs, our experimental results using ImageNet on a Jetson Xavier NX show that the Dynamic-OFA is up to 3.5x (CPU), 2.4x (GPU) faster for similar ImageNet Top-1 accuracy, or 3.8% (CPU), 5.1% (GPU) higher accuracy at similar latency. Furthermore, compared with Linux governor (e.g. performance, schedutil), our runtime approach reduces the energy consumption by 16.5% at similar latency.