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Vetted pandas Professionals

Pre-screened and vetted.

pandasPythonDockerSQLNumPyAWS
VS

Vighanesh Sharma

Screened

Mid-level Software Engineer specializing in cloud-native platforms and healthcare systems

Dallas, TX3y exp
PlayStationUniversity of Texas at Dallas

“Backend engineer with healthcare-domain experience building a security-critical RBAC identity/authentication/authorization microservice suite used across hospital imaging platforms (X-Ray, Ultrasound, etc.). Demonstrates strong security mindset (mTLS, cert hygiene, JWT, pen-testing collaboration) and pragmatic scaling/reliability practices (Nginx load balancing, Redis caching, automated tests, canary rollouts).”

AgileAlgorithmsAngularAWSAWS LambdaBigQuery+101
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RS

Rohith Sadanala

Screened

Mid-level Machine Learning Engineer specializing in Generative AI and MLOps

Missouri, USA3y exp
AirbnbUniversity of South Florida

“LLM/agent engineer who has shipped production RAG chatbots in sustainability-focused domains, including a packaging recommendation assistant that standardized messy user inputs and used Pinecone-backed retrieval over product/regulatory data. Experienced orchestrating end-to-end ML workflows with Airflow and AWS Step Functions/Lambda, emphasizing reliability (property-based testing, circuit breakers, OpenTelemetry) and measurable performance (latency/cost). Partnered closely with non-technical leadership to ship 3 weeks early, driving adoption by 150+ businesses and ~20% reported waste reduction.”

A/B TestingAmazon BedrockAmazon EC2Amazon EKSAmazon RDSAmazon S3+154
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AC

Ashutosh Choudhari

Screened

Mid-level AI/ML Engineer specializing in LLM applications and cloud-native systems

Remote2y exp
PYRAMYDCarnegie Mellon University

“LLM engineer who has shipped production AI systems, including an RFP requirements extraction platform (OpenAI o4-mini + Azure AI Search + FastAPI) achieving 90%+ accuracy and ~5x throughput through grounding, structured outputs, parallelization, and caching. Also partnered with legal/compliance stakeholders at Nexteer Automotive to deliver an AI document comparison tool with traceability and confidence indicators, adopted by non-technical users and saving ~2 FTEs of review time.”

PythonJavaSQLRJavaScriptHTML+116
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DV

Devisri Veeramachaneni

Screened

Senior Software Engineer specializing in cloud backend systems and LLM-powered agents

Seattle, WA5y exp
AmazonSan José State University

“Amazon Fire TV Devices engineer who built and shipped a production LLM-powered lab triage and validation system that grounds recommendations in internal runbooks/known-issue data and pushes evidence-based actions via dashboards and Slack. Emphasizes safety and measurability with structured JSON outputs, replay-based evaluation on historical incidents, and production metrics (e.g., disagreement rate and time-to-first-action), plus cost/latency optimizations like caching, batching, and rule-based fast paths.”

PythonJavaJavaScriptTypeScriptC++Bash+130
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KS

Karan Shah

Screened

Mid-level Software & Robotics Engineer specializing in autonomous systems and ROS 2

USA3y exp
Boston DynamicsUniversity of Texas at Arlington

“Robotics software engineer focused on production-grade autonomy in GPS-denied environments, building full navigation stacks (perception, EKF/UKF sensor fusion, planning, control) in ROS2. Integrated YOLOv8/semantic segmentation/RL policies into real-time NAV2 pipelines via a custom perception-aware costmap layer, with emphasis on deterministic control loops, embedded GPU performance, and robust system observability/fault tolerance.”

PythonC++CROS 2LinuxGazebo+174
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NS

Nagatheja Sharaf

Screened

Mid-Level Software Engineer specializing in cloud-native systems, automation, and LLM-enabled robotics

Sunnyvale, CA6y exp
AmazonIndiana University Bloomington

“React-focused engineer who built a full-stack analytics/test-metrics dashboard (React frontend + Python backend) and turned common UI pieces (data tables, filter panels, chart wrappers) into a reusable internal component library with docs, examples, and basic tests. Strong on profiling-driven performance optimization (React Profiler, memoization) and on owning ambiguous internal-tool projects end-to-end; now planning to package internal patterns into public open-source components.”

PythonPandasNumPySciPyJavaScriptC+126
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SS

Sahithi S

Screened

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

Texas, USA6y exp
NVIDIAKennesaw State University

“Built and deployed a production generative AI chatbot at NVIDIA using LangChain + GPT-3 integrated with internal data sources, cutting response time nearly in half and improving CSAT by ~12 points. Also delivered LLM-driven QA tools by fine-tuning Hugging Face transformer models and deploying via an AWS-based pipeline (Lambda/Glue/S3) with orchestration (Airflow/Step Functions), CI/CD, Kubernetes, and monitoring (MLflow/Splunk/Power BI).”

PythonSQLJavaSpring BootFastAPIFlask+108
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PP

Prafull Prajapati

Screened

Mid-Level Backend/Cloud Engineer specializing in AWS/Azure microservices

Richardson, TX4y exp
AmazonUniversity of Texas at Dallas

“Full-stack engineer who built a smart loan approval workflow for a Goldman Sachs hackathon (React/Node/Express/Postgres) including KYC handling, reviewer queues, and an ML-based pre-scoring/auto-reject step. Also has Amazon internship experience driving a customer-facing long-polling change that reduced empty requests by 84%, and demonstrates strong system design depth in real-time voice + LLM streaming architectures.”

.NETAPI GatewayAngularAWSAWS CloudFormationAWS IAM+87
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AA

Akanksha Agrawal

Screened

Mid-Level Full-Stack Software Engineer specializing in event-driven data platforms

Bangalore, India5y exp
SAPUniversity of Illinois Urbana-Champaign

“Backend engineer with SAP experience modernizing a legacy Flask/PostgreSQL product master data platform into a modular, stateless, containerized service with Kafka-based background processing and improved observability. Also has hands-on academic/side-project experience operationalizing ML (NLP retrieval with TF-IDF/BERT via FastAPI and CV lane-edge detection inference APIs using PyTorch).”

AgileAngularApache CassandraAPI DesignAWSAWS Lambda+110
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BP

Byron Pineda

Screened

Staff/Lead Data Scientist specializing in Generative AI, NLP/LLMs, and MLOps

Pascagoula, MS10y exp
TuringMississippi State University

“Lead Data Scientist (10+ years) with recent work in healthcare data: built production pipelines that unify EHR, genomics, and clinical notes using NLP (spaCy/BERT/BioBERT) and scalable Spark-based processing. Also led development of domain-specific LLM/NLP systems for chatbots and semantic search, deploying models via FastAPI/Flask and improving retrieval with FAISS-backed, fine-tuned clinical embeddings and RAG-style workflows.”

PythonRSQLPandasNumPyScikit-learn+132
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RR

Rushi Reddy Lambu

Screened

Mid-level AI/ML Engineer specializing in Generative AI and MLOps

Remote, USA5y exp
McKinsey & CompanyUniversity of North Texas

“GenAI/LLM engineer and architect who built and deployed a production generative AI financial forecasting and scenario analysis platform at McKinsey, leveraging Claude (Anthropic), LangChain, Airflow, MLflow, and AWS SageMaker. Demonstrates strong LLMOps/MLOps rigor (monitoring, drift detection, automated retraining) and deep experience implementing global privacy controls (GDPR, differential privacy, audit trails) while partnering closely with finance executives and legal/IT stakeholders.”

PythonSQLRJavaC++Bash+192
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TS

Travoy Spelling

Screened

Senior Data Scientist / ML Engineer specializing in GenAI, LLMs, and NLP

Texarkana, TX10y exp
TredenceUniversity of Texas at Austin

“ML/NLP engineer focused on production GenAI and data linking systems: built a large-scale RAG pipeline over millions of support docs using LangChain/Pinecone and added a LangGraph-based validation layer to cut hallucinations ~40%. Also built scalable PySpark entity resolution (95%+ accuracy) and fine-tuned Sentence-BERT embeddings with contrastive learning for ~30% relevance lift, with strong CI/CD and observability practices (OpenTelemetry, Prometheus/Grafana).”

A/B TestingAPI DevelopmentAWSAWS LambdaAWS Step FunctionsAzure Data Factory+247
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SK

Sai Krishna Yemineni

Screened

Mid-level AI/ML Engineer specializing in healthcare NLP, real-time risk systems, and ML platforms

Massachusetts, USA5y exp
Johnson & JohnsonRivier University

“LLM-focused customer-facing engineer who repeatedly takes document Q&A and agentic prototypes into secure, monitored production systems. Experienced in reducing hallucinations via RAG + guardrails, diagnosing retrieval/embedding issues in real time, and partnering with sales to run metrics-driven PoCs that overcome accuracy/security objections and drive adoption.”

PythonRC++SQLBashTensorFlow+107
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CR

Chetana Reddy Yellareddy

Screened

Mid-Level Software Engineer specializing in distributed systems and cloud-native platforms

Austin, TX5y exp
AMDNortheastern University

“Backend/AI engineer who built and scaled an internal AMD semiconductor manufacturing microservice platform (SMR), reworking a synchronous lot-request workflow into an event-driven RabbitMQ/Celery/FastAPI pipeline. Diagnosed and fixed peak-load reliability issues using deep observability and Kubernetes autoscaling, cutting notification latency back to sub-second and reducing duplicates via idempotency/DLQs. Also shipped an LLM-powered natural-language search with schema-constrained JSON outputs and guardrails, plus a plan-execute-verify Jira bug-resolution agent that can propose fixes and raise PRs under restricted permissions.”

AlgorithmsAPI GatewayAsynchronous ProcessingAWSAWS IAMAWS Lambda+118
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CK

ChinmaySanjay Kawle

Screened

Junior Software Engineer specializing in cloud developer tools and backend APIs

Seattle, WA2y exp
Amazon Web ServicesUniversity of Illinois Chicago

“Summer intern on AWS Lambda tooling team who shipped Finch support in AWS SAM CLI, adding OS/runtime detection and robust fallback behavior to preserve Docker compatibility across developer environments. Also built an end-to-end RAG system for querying arXiv quantitative finance papers using Postgres/pgvector with two-stage retrieval, citation-grounded prompting, and rigorous evaluation loops driven by IR metrics and user feedback.”

PythonJavaCC++JavaScriptTypeScript+83
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YL

Yuqi Lei

Screened

Mid-level Software Engineer specializing in financial data platforms and quantitative research tooling

New York City, NY3y exp
BloombergWashington University in St. Louis

“Owned and built Bloomberg’s end-to-end bitemporal dividend & dividend-forecast data platform powering BQL for 400k+ terminal users. Architected real-time Kafka ingestion (5k–10k msgs/sec) across 100k+ tickers with strong correctness guarantees (PIT/bitemporal time-travel, immutable history to avoid look-ahead bias) and achieved sub-100ms p95 query latency through indexing and caching, deployed with Kubernetes + DLQ and robust monitoring.”

PythonSQLJavaJavaScriptC++Pandas+60
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JA

Jisvitha Athaluri

Screened

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

McKinney, TX6y exp
Globe LifeTexas A&M University

“Built a production LLM/RAG-based “model excellence scoring” system at Uber to automatically evaluate hundreds of ML models, standardizing quality assessment and cutting evaluation time from days to minutes on GCP. Also delivered an NLP document classification solution for insurance claims at Globe Life, partnering closely with compliance/operations and improving routing accuracy from ~85% manual to 93% with the model.”

A/B TestingApache SparkBERTChromaDBData EngineeringData Pipelines+90
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KJ

Krishi Jain

Screened

Junior Implementation Manager / Solution Engineer specializing in AI, ERP integrations, and predictive maintenance

Chicago, IL2y exp
Continuum AIWestcliff University

“LLM/agentic workflow practitioner (Continuum AI) who productionized an LLM system for manufacturing RMA intake and warranty claims by moving from a brittle prompt to a modular pipeline with RAG, function-calling extraction, deterministic validation, and strong observability. Also diagnosed and fixed an agentic ticket-triage misrouting issue by tracing failures to retrieval timeouts, adding guardrails/fallbacks, and implementing retries plus continuous evaluation—bringing misroutes near zero while creating a repeatable debugging playbook.”

PythonJavaSwiftC++CJavaScript+84
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SD

Shreyas Darade

Screened

Mid-level Data Scientist specializing in business intelligence and machine learning

Pittsburgh, PA2y exp
Armada PartnersCarnegie Mellon University

“Internship experience building a production LLM-powered podcast operations agent that automated lead intake (HubSpot), guest research, scheduling (Calendly), meeting-summary evaluation (Gemini), and human approval via Slack bot—while retaining rejected candidates for future outreach. Also contributed to ideation of a multi-agent orchestration framework with parsing and task routing, and emphasized reliability via structured prompts, HITL feedback, and prompt-based test sets.”

A/B TestingAnalyticsBusiness IntelligenceClassificationClusteringData Analytics+84
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CS

Chaitanya Sachdeva

Screened

Mid-level Applied AI Engineer specializing in LLM infrastructure and model optimization

San Jose, CA3y exp
AMDUSC

“LLM engineer who has deployed privacy-preserving, real-time workplace risk monitoring over massive enterprise chat/email streams, tackling latency, hallucinations, and extreme class imbalance with model benchmarking, RAG + fine-tuning, and a pre-filter alerting layer. Also built an agentic legal contract drafting system (Jurisagent) using LangGraph/LangChain with deterministic multi-agent control flow, structured outputs, and reliability-focused evaluation/telemetry.”

PythonC++BashLangChainLangGraphNumPy+104
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ML

Mengyu Liu

Screened

Senior Data Scientist specializing in GenAI agents and causal inference

Remote, USA10y exp
HumanaUniversity of Miami

“Built and deployed a production healthcare medical review agent that automates call-transcript summarization and medication reconciliation using a hybrid deterministic + LangGraph-orchestrated LLM workflow. Demonstrates strong reliability engineering (guardrails, schema validation, confidence thresholds, golden/adversarial eval, Langfuse monitoring) in a regulated environment, delivering 60% lower latency and 70%+ efficiency gains while partnering closely with care managers and operations.”

PythonRSQLNumPyPandasMatplotlib+129
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