You will get complete bioinformatics deep learning project

Project details
Biological data is expanding faster than our ability to analyze it manually. To turn complex datasets into actionable insights, you need a specialized approach combining biological rigor with advanced computational power.
I am Sheraz, a professional Bioinformatics Researcher and Machine Learning Engineer. Specializing in Deep Learning (DL) and Multi-omics integration, I help researchers and biotech firms decode biological complexity. Whether handling high-dimensional genomic sequences or real-time signal processing, I provide publication-quality analysis and robust predictive models.
My mission is to deliver high-fidelity, reproducible results that bridge the gap between big data and biological discovery. I specialize in:
Genomics & Sequence Analysis (CNNs/Transformers)
Proteomics (Protein folding & interaction)
Multi-Omics Integration (Transcriptomics, Metabolomics, Clinical)
Signal Processing (EEG, EKG, Medical Imaging)
Graph Neural Networks (Metabolic pathways & Drug-target interactions)
Single-Cell Analysis (scRNA-seq clustering & trajectory)
Computer Vision (Automated pathology & cell counting)
Biomedical NLP (Text mining)
I am Sheraz, a professional Bioinformatics Researcher and Machine Learning Engineer. Specializing in Deep Learning (DL) and Multi-omics integration, I help researchers and biotech firms decode biological complexity. Whether handling high-dimensional genomic sequences or real-time signal processing, I provide publication-quality analysis and robust predictive models.
My mission is to deliver high-fidelity, reproducible results that bridge the gap between big data and biological discovery. I specialize in:
Genomics & Sequence Analysis (CNNs/Transformers)
Proteomics (Protein folding & interaction)
Multi-Omics Integration (Transcriptomics, Metabolomics, Clinical)
Signal Processing (EEG, EKG, Medical Imaging)
Graph Neural Networks (Metabolic pathways & Drug-target interactions)
Single-Cell Analysis (scRNA-seq clustering & trajectory)
Computer Vision (Automated pathology & cell counting)
Biomedical NLP (Text mining)
Data Tool
PythonWhat's included
| Service Tiers |
Starter
$150
|
Standard
$300
|
Advanced
$450
|
|---|---|---|---|
| Delivery Time | 3 days | 6 days | 8 days |
Number of Revisions | 3 | 5 | 7 |
Number of Graphs/Charts | 3 | 6 | 8 |
Number of Scenarios | 1 | 2 | 2 |
Number of Model Variations | 2 | 4 | 4 |
Model Documentation | |||
Data Source Connectivity | - | - | |
Model Validation/Testing |
Frequently asked questions
5 reviews
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This project doesn't have any reviews.
MF
Mohd F.
Sep 15, 2025
Step-by-Step HTGNN Code Explanation and Tutorial
Sheraz is a professional expert in his field. He attends to all project requirements and delivers them successfully.
PP
Paulina P.
Apr 1, 2025
bioinformatics
AA
Amal A.
Apr 6, 2024
Multiple datasets integration
Sheraz integrated different omics datasets for various tissue types. he was patient, understood the task well, and provided helpful advice. The work was completed on time. I'd gladly work with him again for similar tasks.
TN
Technique N.
Jan 20, 2024
Mobility Prediction with Deep Learning: help needed for a proposal
HF
Hend F.
Oct 23, 2023
GraphSage model
Sheraz is flexible and a quick responder and learner. He have experience in GNN and GraphSage for normal size graph. i liked working with him although we couldn't finish the whole work as large graphs needs dealing with big data not just graph algorithms.
Thanks Sheraz
Thanks Sheraz
About Sheraz
Bioinformatics | NGS | scRNA-seq | Multi-omics | Machine Learning
100%
Job Success
Multan, Pakistan - 10:00 am local time
My work spans RNA-seq, multi-omics integration, and AI-driven biological modeling, from raw data processing to predictive modeling and publication-ready results.
Most clients come to me when they:
• Have large-scale biological data but need structured analysis
• Want to apply machine learning or deep learning to biological problems
• Need scalable, reproducible pipelines
• Require biologically meaningful interpretation of results
Core Bioinformatics Expertise
Transcriptomics & NGS Analysis
• Bulk RNA-seq (DESeq2 / edgeR / limma)
• scRNA-seq (Seurat / Scanpy / Monocle)
• Differential expression & biomarker discovery
• Functional enrichment & pathway analysis
NGS & Data Processing Pipelines
• FASTQ → QC → Alignment → Quantification workflows
• Variant calling & genomic analysis
• Automated, scalable pipeline development
• High-throughput data processing
Machine Learning & Deep Learning
AI for Biology
• Deep learning models for biological data
• CNNs, RNNs, and Transformer-based architectures
• Predictive modeling for genomics & drug discovery
• Feature extraction from high-dimensional datasets
Advanced Modeling
• Graph Neural Networks (GNNs) for biological networks
• Gene regulatory network modeling
• Multi-omics data integration (genomics, transcriptomics, proteomics)
• Explainable AI for biological interpretation
Reproducible Research & Engineering
• End-to-end R/Python workflows
• Clean, well-documented, GitHub-ready code
• Publication-quality figures & visualizations
• Methods writing and result interpretation support
Tools & Stack
R • Python • Bioconductor • Seurat • Scanpy
PyTorch • TensorFlow • scikit-learn
FASTQC • STAR • Salmon • GATK • BLAST
Linux • AWS / GCP
What You Can Expect
• Clear communication and realistic timelines
• Scientifically rigorous and reliable analysis
• Scalable and reproducible solutions
• Insights that connect data to biology
Steps for completing your project
After purchasing the project, send requirements so Sheraz can start the project.
Delivery time starts when Sheraz receives requirements from you.
Sheraz works on your project following the steps below.
Revisions may occur after the delivery date.
Data Preprocessing & Quality Control
I will clean the raw biological data, handle missing values, and perform normalization (e.g., Min-Max scaling or Z-score) to ensure the data is ready for deep learning architectures.
Model Architecture Design & Training
Selecting the best-fit model (CNNs for signal data, GNNs for molecular graphs, or Transformers for sequencing). I will implement the training pipeline using PyTorch or TensorFlow, including hyperparameter tuning.
