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Vetted Matplotlib Professionals

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ST

Sarthak Talwadkar

Screened

Mid-level Robotics & ML Engineer specializing in perception, control, and scalable systems

Mumbai, India3y exp
TCSNortheastern University

“Robotics software engineer/researcher focused on perception, SLAM, and sensor fusion, with hands-on experience taking systems from simulation to embedded/real-time deployment. Led transparent-surface (glass) detection using GDNet and achieved a major real-time speedup (~7–9 FPS to ~30 FPS) while preserving >90% recall, and has built ROS-based EKF GPS-IMU fusion plus profiled/optimized Visual SLAM for performance and memory stability. Also brings production-style deployment skills via Docker/Kubernetes orchestration of ML inference services with autoscaling and model update rollouts.”

PythonC++LinuxDockerCI/CDDistributed Systems+110
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HW

Hsi-Chun Wang

Screened

Mid-level Data Scientist specializing in LLM development and scalable ML pipelines

Remote4y exp
GearFactory.aiUniversity of Maryland, College Park

“Built and deployed production LLM pipelines for evidence-based scoring in two domains: biomedical literature mining (scoring ~2700 drug compounds vs gene targets/mechanisms) and long-horizon news analytics (35 years of Chinese articles). Emphasizes reliability at scale (retries/checkpointing/validation), rigorous empirical model benchmarking (GPT-4o/mini/5), and translating results into stakeholder-friendly visual narratives.”

A/B TestingAWSAWS IAMAWS LambdaClassificationClustering+80
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DZ

Dylan Zhu

Screened

Mid-level Machine Learning Engineer specializing in computer vision and generative AI

Hoboken, NJ7y exp
Stevens Institute of TechnologyPurdue University

“Built and deployed an LLM/RAG system that uses differential privacy and distributional similarity checks to transform private data into a non-sensitive knowledge base while preserving utility. Also has experience demonstrating adversarial ML concepts (FGSM) to non-technical audiences by focusing on observable model behavior rather than implementation details.”

PythonNumPySciPyPyTorchScikit-learnTensorFlow+89
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ST

Srinivas Tenneti

Screened

Mid-level AI/ML Engineer specializing in GenAI and predictive modeling

Fullerton, California5y exp
UnitedHealth GroupGeorge Washington University

“Built and deployed a GPT-4-powered medical assistant for clinical staff to reduce time spent searching guidelines and EHR information, with a strong emphasis on safety and compliance. Uses strict RAG, confidence thresholds, and fallback behaviors to prevent hallucinations, and runs production-grade workflows orchestrated with LangChain/LangGraph plus Docker/Kubernetes/MLflow and monitoring for reliability and cost.”

A/B TestingAmazon ECSApache SparkAWSAWS GlueBigQuery+110
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VK

Vamsi Koppala

Screened

Mid-level Machine Learning Engineer specializing in Generative AI and RAG systems

Barrington, IL4y exp
ComericaTexas Tech University

“LLM/ML engineer who has shipped an enterprise RAG-based Q&A system (LangChain/LlamaIndex, FAISS + Azure Cognitive Search, GPT-3.5/4 via OpenAI/Azure OpenAI) to production on Docker + Kubernetes/OpenShift, tackling hallucinations, retrieval quality, latency/cost, and RBAC/IAM security. Also partnered with operations leaders to turn manual reporting into an LLM-powered summarization and forecasting dashboard driven by real KPIs and iterative stakeholder feedback.”

AgileApache SparkAzure Blob StorageBashBERTBitbucket+178
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SA

Sathwik Alavala

Screened

Mid-level Data Scientist specializing in AI/ML, MLOps, and LLM-powered analytics

Charlotte, NC6y exp
Bank of AmericaCampbellsville University

“Built and deployed a production LLM-powered document Q&A system enabling natural-language querying of large PDFs, focusing on retrieval quality (overlapped chunking) and low-latency performance (optimized embeddings + vector search). Experienced with scaling ML/LLM workflows using async/batch processing, caching, cloud storage, and orchestration via Apache Airflow with robust testing, monitoring, and failure handling.”

A/B TestingAnomaly DetectionAPI DevelopmentAWSAzure Machine LearningChromaDB+94
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PK

Parth Kasat

Screened

Mid-level Forward Deployed Engineer specializing in AI automation for finance and data platforms

Remote2y exp
ArganoGeorge Washington University

“LLM/agentic workflow specialist with healthcare deployment experience who has taken LLM-based automation from prototype to production using operator-in-the-loop validation, RAG-style retrieval, RBAC, and monitoring for sensitive data compliance. Demonstrated real-time incident resolution (retrieval timeouts due to network/proxy misconfig) and strong GTM support—hands-on developer workshops and sales demos translating technical safeguards and real-time ETL into measurable ROI (70% ops reduction, ~$200K/year savings).”

A/B TestingAPI IntegrationAzure Data FactoryAzure DevOpsC++Containerization+124
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NK

Nikitha Kommidi

Screened

Mid-level AI/ML Engineer specializing in fraud detection, NLP, and MLOps

6y exp
CitibankUniversity of Texas at Arlington

“Built a production real-time fraud detection and customer-support automation platform at Citibank, tackling extreme class imbalance (reported ~1:5000) and strict latency constraints. Combines hands-on MLOps (Airflow, Kubernetes, MLflow; Snowflake/Spark/S3 integrations; CI/CD model promotion) with cross-functional delivery to Risk & Compliance focused on interpretability and reducing false positives.”

PythonSQLBashCJavaScriptPHP+154
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PV

Prithviraju Venkataraman

Screened

Mid-level AI/ML Engineer specializing in MLOps, NLP, and Computer Vision

Long Beach, CA5y exp
Dell TechnologiesCal State Long Beach

“Built and deployed a production LLM-powered text extraction/classification system that converts messy unstructured reports into searchable insights, running on AWS SageMaker with automated retraining and monitoring. Strong in orchestration (Step Functions/Kubernetes/Airflow patterns) and reliability practices (gold datasets, prompt/tool unit tests, shadow/canary/A-B testing, guardrails/rollback), and has experience translating non-technical stakeholder needs into an NLP workflow plus dashboard.”

PythonRTensorFlowPyTorchScikit-learnKeras+110
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AK

AnilKumar Kanakadandila

Screened

Mid-level Data & AI Engineer specializing in data engineering, analytics, and LLM/RAG apps

San Francisco Bay Area, CA5y exp
VerizonCalifornia State University

“Built a production RAG-based “unified assistant” that consolidates siloed company documents into a single chatbot while enforcing fine-grained access control via RBAC/metadata filtering with OAuth2/JWT. Experienced orchestrating LLM workflows with LangChain/LangGraph + FastAPI (async + caching) and measuring performance via retrieval accuracy and response-time SLAs. Also delivered a churn analytics solution with dashboards and automated retention campaigns using n8n.”

PythonPandasNumPyScikit-learnSQLMySQL+105
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AN

Alex Nguyen

Screened

Junior Applied AI Engineer specializing in LLMs, RAG, and agentic systems

La Jolla, CA2y exp
Uniwise.aiUC San Diego

“Co-founded a healthcare AI startup building and deploying software directly with end users, emphasizing rapid shipping, deep user interviews, and workflow-first adoption. Has hands-on production deployment experience on AWS (including diagnosing a silent AWS App Runner failure caused by an ARM vs amd64 Docker build mismatch) and is motivated by customer-facing, travel-heavy roles to keep engineering tightly connected to real-world usage.”

PythonPyTorchPandasNumPyScikit-learnHugging Face+83
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CB

Cary Burdick

Screened

Senior Data Scientist specializing in data engineering and analytics

Chicago, IL6y exp
USDAAuburn University

“Data/NLP practitioner with experience in both financial services (Truist) and government (USDA), including an NLP-driven analysis of EU regulations to anticipate US regulatory focus and a major redesign/cleaning of complex pathogen lab-test public datasets. Built production data-quality pipelines with Dagster, Pandera, and Azure Synapse, and is comfortable validating hypotheses with historical backtesting and SME-driven quality controls.”

PythonPySparkPandasNumPyRSciPy+53
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CV

Cristian Vega

Screened

Senior AI/ML Engineer specializing in Generative AI and RAG

California, null9y exp
Morf HealthUniversity of Texas at Austin

“ML/NLP practitioner at Morf Health focused on unifying fragmented healthcare data by linking structured patient/encounter records with unstructured clinical notes. Has hands-on experience with transformer embeddings, vector databases, and domain fine-tuning, plus rigorous evaluation (precision/recall) and human-in-the-loop validation with clinical SMEs to make pipelines production-grade.”

PythonRJavaJavaScriptSQLMySQL+154
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AR

Anurag Reddy

Screened

Mid-level Data Scientist specializing in ML, MLOps, and Generative AI

TX, USA5y exp
CaterpillarUniversity of Illinois Chicago

“ML/NLP engineer who built a RAG-based technical assistant for Caterpillar field engineers, transforming PDF keyword search into intent-based semantic retrieval across manuals, logs, sensor reports, and technician notes. Strong in productionizing data/ML systems (Airflow, PySpark) with rigorous preprocessing, entity resolution, and evaluation—delivering measurable gains in accuracy, relevance, and duplicate reduction.”

A/B TestingAgileAnomaly DetectionAnsibleApache AirflowApache Hadoop+138
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AB

Ananya Bojja

Screened

Mid-level AI/ML Engineer specializing in healthcare analytics and MLOps

USA4y exp
CignaUniversity of New Hampshire

“AI/ML engineer at Cigna Healthcare building a production, HIPAA-compliant LLM-powered clinical insights platform that summarizes unstructured medical notes using a fine-tuned transformer + RAG on AWS. Demonstrates strong end-to-end MLOps and cloud optimization (distillation, Spot/Lambda/Auto Scaling) with quantified outcomes (~28% accuracy lift, ~40% less manual review, ~25% lower ops cost) and strong clinician-facing explainability via SHAP and dashboards.”

A/B TestingAgileAPI IntegrationApache AirflowApache KafkaApache Spark+148
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SG

Sai Ganesh nelluri

Screened

Mid-level Generative AI Engineer specializing in LLM systems and RAG

5y exp
Huntington BankCentral Michigan University

“Currently at Huntington Bank, built a production-grade RAG system that helps business/operations teams get grounded answers from large volumes of internal enterprise documents. Owns ingestion and FastAPI backend, tuned hybrid BM25+vector retrieval and chunking for relevance, and evaluates reliability with metrics and observability (LangSmith, CloudWatch, Prometheus/Grafana) while partnering closely with non-technical stakeholders.”

PythonSQLJavaBashShell ScriptingR+169
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IK

Ishwari Kulkarni

Screened

Intern IT & Data Analytics professional specializing in automation, cloud operations, and dashboards

Dallas, TX2y exp
RichemontUniversity of Texas at Dallas

“AppSec-focused engineer with experience spanning Accenture and a digital operations support internship, emphasizing secure SDLC and CI/CD security automation (SAST/DAST/SCA). Has hands-on troubleshooting experience using logs/metrics/APM traces (e.g., resolving DAST timeouts caused by rate limiting) and designs AWS/Kubernetes scanning integrations with least-privilege IAM, private networking, secrets management, and observability.”

PythonPandasNumPySciPyMatplotlibSQL+110
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HV

Hruday Vuppala

Screened

Junior Software Engineer specializing in Full-Stack and ML for FinTech

Hyderabad, Telangana1y exp
Volksoft TechnologiesUSC

“Full-stack engineer with fintech trading-platform experience who shipped and operated a real-time portfolio P&L/performance feature end-to-end (React + Node/WebSockets + MongoDB) on AWS, including significant performance tuning under peak trading load. Also built a Spark-based trading analytics pipeline with idempotency and reconciliation for auditability, and has a personal React/TS + Node/Express project (Artsy) with JWT auth and schema-evolution practices.”

PythonJavaScriptTypeScriptCC++SQL+92
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RK

Rohith kollu

Screened

Senior Software Engineer specializing in backend microservices, cloud, and full-stack systems

Dallas, TX7y exp
CiscoIndiana Wesleyan University

“Backend/platform engineer who has built and scaled production Java/Spring Boot + Kafka services on AWS/Kubernetes (1M+ msgs/day) and led reliability/performance fixes that restored SLAs (25–30% latency improvement; 99.9% uptime). Also shipped an AI customer-support chatbot end-to-end using retrieval + guardrails and rigorous evaluation/observability, improving resolution time 40% and satisfaction 25%, with a strong plan/execute/verify approach to agentic workflow reliability.”

Amazon CloudFrontAmazon CloudWatchAmazon EC2Amazon RDSAmazon S3Apache Hadoop+154
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SW

Shashank Walke

Screened

Mid-level Software Engineer specializing in systems, cloud, and applied machine learning

Raleigh, NC3y exp
North Carolina State UniversityNorth Carolina State University

“Robotics software engineer focused on ROS 2 localization/SLAM: built a particle-filter (Monte Carlo) localization system in Python with likelihood-field modeling to handle noisy LiDAR and dynamic environments. Strong in debugging ROS 2 integration issues (tf2 frame sync, DDS/QoS message reliability) and in profiling/optimizing pipelines to reach real-time performance (~10 Hz) using precomputation and KD-trees.”

PythonCC++JavaGoJavaScript+120
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UG

Utkarsh Gupta

Screened

Junior Robotics & ML Engineer specializing in perception, navigation, and VLA models

Los Angeles, CA1y exp
PSI Lab, USCUSC

“Robotics software engineer with hands-on AGV/AMR experience at ERIC Robotics, building ROS2-based LiDAR perception and localization on NVIDIA Jetson for real-time deployment. Improved unstable localization in challenging environments (e.g., tunnels/bushes along rail tracks) via scan-matching, filtering, and consistency checks, and cut latency by moving from rclpy to rclcpp and leveraging CUDA. Comfortable across the stack from simulation (MuJoCo/Isaac Sim/Gazebo, domain randomization) to deployment tooling (Docker, basic CI) and distributed ROS2/DDS systems.”

CUDAC++ClassificationKerasLinuxMachine Learning+80
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DA

Divyansh Agarwal

Screened

Junior Machine Learning Engineer specializing in computer vision and LLM applications

New York, NY3y exp
AdeptmindNYU

“Built and led an autonomous driving software effort for Formula Student, owning the full autonomy stack (perception, planning, control) orchestrated in ROS. Implemented stereo depth + YOLO object detection, RRT/RRT* planning, and a robust SLAM pipeline (Kalman filter, submapping) while leveraging Gazebo simulation and modern deployment tooling (Docker/Kubernetes, AWS, GitHub Actions CI/CD).”

API GatewayArtificial IntelligenceAWSAWS LambdaC++Celery+105
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YJ

Young Joon Suh

Screened

Senior Research Scientist specializing in AI for autonomous driving and semiconductors

Seoul, Korea5y exp
Korea Institute of Science and TechnologySan José State University

“Robotics perception engineer focused on autonomous driving 3D detection, integrating PETR embeddings into BEVFormer and tackling hard orientation/temporal alignment issues in multi-camera BEV pipelines. Uses Gazebo with custom sensor plugins to validate calibration, timing, and transforms, and blends synthetic labels with real imagery for scalable 3D box generation.”

Artificial IntelligenceDeep LearningMachine LearningReinforcement LearningData EngineeringRecommender Systems+62
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PK

PHANINDRA KETHAMUKKALA

Screened

Senior GenAI/ML Engineer specializing in LLMs, RAG, and multimodal generative AI

USA4y exp
GE HealthCareFranklin University

“LLM/RAG engineer with production deployments in highly regulated domains (Frost Bank and GE Healthcare). Built secure, explainable document-grounded Q&A systems using LoRA fine-tuning, strict RAG with confidence thresholds, and citation-based responses; also established evaluation/monitoring (golden QA sets, hallucination tracking, drift) and achieved ~40% latency reduction through retrieval/prompt tuning.”

A/B TestingAgileApache KafkaApache SparkAWS GlueAWS Lambda+170
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