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Vetted pandas Professionals

Pre-screened and vetted.

pandasPythonDockerSQLNumPyAWS
SR

Swarag Reddy Pingili

Screened ReferencesStrong rec.

Junior AI/ML Software Engineer specializing in LLM agents and RAG systems

Frisco, TX2y exp
WorldLinkUniversity of Texas at Arlington

“AI/back-end engineer at Canon who helped build and operate an internal production LLM platform that acts as a secure middle layer between users and models, defending against jailbreaks/prompt injection while enabling RAG, memory, and grounded responses over company data. Experienced with LangChain/LangGraph orchestration, vector DB retrieval, and reliability practices (testing, monitoring, adversarial prompts) to run high-throughput, low-latency AI workflows in production.”

PythonJavaScriptTypeScriptCC++PHP+114
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MU

Maneesh Ujji

Screened ReferencesStrong rec.

Junior Machine Learning & Data Science professional specializing in AI agents and applied ML

Cleveland, OH2y exp
AramarkCleveland State University

“IT Analyst/research background with hands-on experience deploying and hardening a multi-agent AI support/triage system (ticket ingestion + knowledge-base retrieval) with strong emphasis on reliability and observability. Has debugged real production issues spanning backend services and network latency (sync failures/partial writes) and is comfortable in Linux environments; also has academic exposure to robotics simulation and ROS2.”

Artificial IntelligenceCC++ChatGPTClaudeClassification+115
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PR

Pranava Reddy Kothapally

Screened ReferencesStrong rec.

Junior Data Engineer specializing in Azure, CRM data pipelines, and marketing personalization

Hyderabad, India2y exp
TechwaveCleveland State University

“LLM/AI engineer who has deployed production RAG conversational analytics and Text-to-SQL systems over Snowflake and curated data marts, emphasizing enterprise-grade guardrails for accuracy, security, and cost. Notable for a structured approach to reducing hallucinations (curated metric/table registry, SQL validation, RBAC, and citation-backed responses) and for building resilient, observable multi-step agent workflows using LangChain/LlamaIndex and Airflow.”

AgileAPI IntegrationAudit LoggingAzure Data FactoryAzure DevOpsBatch Processing+168
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VP

Vikesh Patel

Screened ReferencesStrong rec.

Senior AI/ML Engineer & Data Scientist specializing in LLMs, RAG, and MLOps

Eagan, MN8y exp
Intertech, Inc.Metropolitan State University

“ML/NLP practitioner who has delivered production systems in regulated domains, including a healthcare compliance pipeline using RAG (GPT-4/Claude) plus TF-IDF retrieval that increased document review throughput 4.5x. Also has hands-on experience improving fraud detection data quality via entity resolution (Levenshtein, Dedupe.py) validated with A/B testing, and building scalable, monitored workflows with Airflow, CI/CD, and AWS SageMaker.”

PythonJavaScriptNode.jsVue.jsTypeScriptGo+179
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SR

Swapnil Ramanna

Screened ReferencesModerate rec.

Mid-level Data Scientist specializing in Generative AI and Healthcare Analytics

3y exp
AdvocateIndiana University-Purdue University

“Built a LangGraph-based, tool-routing LLM chatbot to deliver fast, trustworthy investment-stock insights (including tariff impact) and deployed it to production on Snowflake after initially developing in Azure with AI Search and the Microsoft Agent Framework. Improved routing robustness by moving from LLM-based decisions to a deterministic router backed by schema-relationship graphs and YAML metadata, and ran the project iteratively with non-technical stakeholders over an 8-month engagement.”

A/B TestingAnomaly DetectionAWSCI/CDDeep LearningDocker+109
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AS

Adithya Sharma

Screened ReferencesModerate rec.

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

Remote, USA5y exp
EncoraUniversity of Michigan-Dearborn

“Built and deployed a production LLM-powered text-to-SQL/document intelligence chatbot on AWS that lets non-technical business users query complex enterprise databases in plain English. Demonstrates deep practical expertise in schema-aware prompting, embeddings-based schema retrieval, SQL safety/validation guardrails, and rigorous offline/online evaluation with human-in-the-loop approvals for risky queries.”

PythonSQLRJavaC++Bash+149
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PJ

Priyank Jhaveri

Screened ReferencesModerate rec.

Junior AI/ML & Mobile Engineer specializing in LLMs, synthetic data, and React Native

New York, United States1y exp
Uplifty AIDrexel University

“Currently at Uplift AI shipping production LLM features that generate personalized growth insights from user reflections using BERT + embeddings + RAG, with strong safety/guardrail practices for sensitive contexts. Also built an end-to-end React Native UGC challenge submission/moderation system that improved repeat submissions and 7-day retention, and has applied rigorous clinical-style evaluation methods on a dental X-ray disease detection project to reduce false negatives.”

AngularJSAuthenticationAutomationCI/CDCData Pipelines+118
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SS

Sawyer Sweet

Screened ReferencesModerate rec.

Mid-Level Full-Stack Developer specializing in civic tech and data-driven web apps

6y exp
LawBee

“Built and owned an end-to-end Python/Postgres job-tracker backend that scrapes job postings (including LinkedIn) using Selenium-driven real-browser automation, with deduplication and data-quality filtering. Has practical experience migrating deployments from DigitalOcean to Vercel and emphasizes documentation, roadmapping, and testing as part of an iterative delivery cycle.”

PythonHTMLCSSJavaScriptC++R+89
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AS

Ashish Shah

Screened

Mid-level Data Engineer / Software Engineer specializing in streaming and cloud data platforms

Arlington, TX3y exp
The University of Texas at ArlingtonUniversity of Texas at Arlington

“Backend engineer with deep Kafka/FastAPI microservices experience who redesigned a notification pipeline to cut end-to-end latency from ~5s to ~3s (including custom partition assignment and consumer tuning). Led a high-stakes ClickUp-to-Oracle migration of 1M+ records using idempotent ETL, reconciliation, and shadow deployment to achieve >99% integrity with zero downtime, and has hands-on production security implementation with Django/DRF (JWT + RBAC).”

PythonTypeScriptJavaScriptJavaSQLDjango+100
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SM

srisindhu manchikanti

Screened

Mid-level Machine Learning Engineer specializing in multimodal and time-series AI systems

6y exp
WatlowMissouri University of Science and Technology

“Backend engineer who rebuilt and refactored high-traffic systems at Phenom using Java/Spring Boot/Play and also designs Python/FastAPI services. Focused on measurable reliability and performance gains through DB/query optimization, async processing, and strong observability, with disciplined rollout practices (feature flags, parallel runs, rollback) and security patterns including token auth and row-level security.”

PythonJavaSQLSpring BootREST APIsMicroservices+96
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AG

Ainesh Gunturu

Screened

Junior Data Analyst specializing in marketing analytics and machine learning

Dallas, Texas1y exp
Maverick Digital TechnologiesUniversity of Texas at Arlington

“Built and deployed a production LLM-assisted recommendation and insights platform that unifies structured, semi-structured, and unstructured data via a modular ingestion pipeline, canonical schemas, embeddings, and late-fusion modeling. Experienced in operationalizing ML/LLM systems with Airflow and Kubernetes (Dockerized services, autoscaling, rolling updates) and emphasizes reliability through layered testing, guardrails, monitoring, and A/B experimentation while partnering closely with non-technical stakeholders.”

PythonRSQLJavaPredictive AnalyticsGenerative AI+86
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GA

Gautam Agrawal

Screened

Mid-Level Software Engineer specializing in backend systems, cloud, and applied LLM/NLP

IN, USA4y exp
Project 990Indiana University Bloomington

“Applied LLMs to classify long nonprofit mission statements into 8 segments without labeled data, using an ensemble of clustering/embedding methods plus zero-shot RoBERTa/BART and a Tree-of-Thought prompting pipeline with LLM-as-judge evaluation (Gemma). Also built LangChain/LlamaIndex agentic RAG workflows including a text-to-SQL data analysis assistant grounded on DB schema with retries and performance optimizations on an HPC cluster.”

PythonJavaC#JavaScriptTypeScriptHTML+121
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SS

Sree Sai Preetham Nandamuri

Screened

Mid-level Data Scientist specializing in Generative AI and LLMOps

Dover, USA4y exp
Visual TechnologiesUniversity of Houston

“Built a production-grade, semi-automated document recognition and classification system for large volumes of scanned PDFs, starting from little/no labeled data and handling highly variable scan quality. Deployed on AWS using SageMaker + Docker and orchestrated on EKS with a microservices design that scales CPU-heavy OCR separately from GPU inference, with strong reliability controls (validation, fallbacks, retries, readiness probes).”

A/B TestingAPI GatewayAWSAWS LambdaBERTCI/CD+124
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SP

Sri Polavarapu

Screened

Mid-level Software Engineer specializing in full-stack development, data engineering, and GenAI

Portland, OR3y exp
Portland State UniversityPortland State University

“Built and deployed an LLM product called "Content Craft" combining BART-based summarization with a RAG Q&A chatbot using LangChain, embeddings, and a vector database. Has hands-on MLOps experience containerizing and serving models with FastAPI and running them on Kubernetes with monitoring, self-healing, and autoscaling, and has practical experience reducing hallucinations through structured prompting.”

JavaPythonC#JavaScriptTypeScriptNode.js+64
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SV

Sasaunk Vanamali

Screened

Mid-Level Full-Stack Software Engineer specializing in cloud-native apps and ML services

Bowling Green, OH4y exp
Senecio Software IncBowling Green State University

“Software engineer who deployed and stabilized a real-time analytics platform at Senecio Software, focusing on production reliability, observability, and performance under load. Experienced debugging issues spanning distributed services and networking (e.g., tracing timeouts to packet loss from misconfiguration) and extending Python (FastAPI/Django) APIs for customer-specific analytics features in a configurable, maintainable way.”

JavaPythonPHPJavaScriptTypeScriptSQL+139
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AK

Ajith Kumar

Screened

Mid-level AI Data Engineer specializing in GenAI, RAG, and cloud data pipelines

Irving, TX5y exp
Mouri TechGeorge Mason University

“LLM/agentic AI builder who deployed a production ITSM automation agent on Google ADK integrating ServiceNow and FreshService, with strong safety guardrails (human-approval gating and runbook-only command execution) and rigorous evaluation (500 synthetic tickets; 80%+ false-positive reduction). Also partnered with finance to deliver an AI agent that automated invoice/SOW retrieval and monthly reporting to account managers, reducing manual back-and-forth.”

PythonRSQLC#.NETAngular+124
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LS

Lakshmi Swathi Sreedhar

Screened

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

Grand Ledge, MI3y exp
ChainSysUniversity of Michigan-Dearborn

“Built and deployed a production-grade, multi-agent Text-to-SQL assistant that lets non-technical stakeholders query large enterprise databases in natural language. Uses Pinecone-based schema retrieval + LLM reasoning (Gemini/Claude/GPT) with a dedicated validation agent (schema/syntax checks and safe dry runs) to reduce hallucinations and improve reliability, while optimizing latency and cost via async execution and embedding caching.”

A/B TestingAgileAPI IntegrationApache AirflowAzure Data FactoryAzure Machine Learning+172
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RJ

Rohit Jaiswal

Screened

Junior Software Engineer specializing in full-stack web and AWS cloud automation

Syracuse, NY2y exp
SUNY Upstate Medical UniversitySyracuse University

“Software developer with experience delivering and deploying customer-facing web applications, including an investment-focused platform requiring PostgreSQL/SQL optimization and hierarchical (adjacency list) data modeling. Has integrated payment APIs for a retail/antique shop use case, factoring in rate limits and documentation-driven implementation, and has handled time-sensitive production bugs via rapid replication and hotfix deployment.”

ReactNext.jsReduxNode.jsExpressREST APIs+86
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CC

Cade Cermak

Screened

Entry-Level Machine Learning Engineer specializing in credit risk and time series

Hoboken, NJ2y exp
Propel HoldingsStevens Institute of Technology

“Graduate student taking advanced coursework in NLP, generative image modeling, and computer vision; built a PPO reinforcement-learning agent for a Super Mario platformer with careful reward shaping and metric-driven evaluation. In a recent internship designing credit risk models, created a 10-method feature-selection voting framework and achieved ~10% out-of-sample performance improvement while reducing features to mitigate overfitting.”

PythonSQLJavaC++JavaScriptR+45
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VP

Vengalarao Pachava

Screened

Junior AI Data Engineer specializing in Azure Databricks lakehouse and GenAI RAG systems

Irving, TX2y exp
Cloud Rack SystemsIllinois Institute of Technology

“Backend/applied AI engineer from Cloud Rack Systems who built production GenAI/RAG and data platforms on Azure/Databricks at enterprise scale (2.5M records/day). Known for making LLM systems behave like deterministic services via strict retrieval contracts, citation-based validation, and strong observability—shipping a knowledge assistant used daily by 50+ users while driving hallucinations near zero and materially improving latency and cost.”

AgileAlgorithmsAPI IntegrationAudit LoggingAWSAWS Glue+197
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NT

Nikhitha Todeti

Screened

Mid-level AI Engineer specializing in ML, LLM applications, and data automation

Atlanta, GA4y exp
Exus Renewables North AmericaGeorgia State University

“Data/ML practitioner who has built a production RAG-based knowledge assistant integrated into Microsoft 365/internal dashboards to help employees query internal documents in plain English. Experienced orchestrating and hardening ETL pipelines with Airflow and Azure Data Factory (validation, retries, monitoring) and running end-to-end model evaluation and production performance tracking via Power BI.”

A/B TestingAgileAPI IntegrationAzure Data FactoryClassificationClustering+81
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ES

Eranda Sooriyarachchi

Screened

Mid-level AI Engineer specializing in RAG, conversational AI, and agentic systems

Remote6y exp
MedLibIowa State University

“Built and deployed a production RAG-based clinical decision support assistant at MedLib, focused on fast, trustworthy answers from large medical documents. Demonstrates deep practical experience improving retrieval accuracy (semantic chunking + metadata-aware search), controlling hallucinations with grounded generation and thresholds, and adding clinician-requested citations using chunk metadata, with evaluation driven by healthcare professional review.”

API GatewayAWSAWS LambdaCI/CDComputer VisionC+94
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KJ

Kanva Jaydeep Trivedi

Screened

Junior Full-Stack & LLM Engineer specializing in AI agents and cloud document intelligence

Scottsdale, AZ1y exp
Power Diagnostic Instrument CompanyArizona State University

“Backend engineer specializing in event-driven/serverless systems and Python/FastAPI APIs. Built a scalable PDF-to-structured-data pipeline on AWS (S3, Lambda, Step Functions, Textract, DynamoDB, SNS) with strong observability (p50/p90/p99) and reliability patterns (idempotency, retries/DLQs), and has led zero-downtime migrations using feature flags, dual writes, and incremental rollouts.”

PythonJavaScriptNode.jsReactSQLR+105
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DJ

Dylan Jaworski

Screened

Intern Software Engineer specializing in Python data pipelines and backend systems

Tallahassee, FL0y exp
Florida Department of TransportationFlorida State University

“Software engineering intern at the Florida Department of Transportation who built validation/anomaly-detection logic for a live operational telemetry + system log processing pipeline. Emphasizes fault-tolerant, state-driven system design (degraded modes, data freshness tracking, safe fallbacks) and debugs time-sensitive behavior via logging/latency analysis and replay-based testing—skills that translate well to robotics-style architectures despite no direct ROS/robot experience.”

PythonFlaskPandasNumPySQLMySQL+63
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