Vetted Grafana Professionals

Pre-screened and vetted.

NP

Mid-Level Full-Stack Product Engineer specializing in TypeScript/React, Java, and AI integration

Austin, TX3y exp
Jozuna Data Services LLCUniversity of Cincinnati

Full-stack product engineer who builds and owns production features across Next.js/React/TypeScript and Java Spring Boot, with strong Postgres data modeling and performance tuning. Has delivered measurable improvements (60%+ faster renders, 2s→100ms queries, 50% lower workflow latency) and built reliable Kafka-based workflows with robust observability (Prometheus/Grafana/Alertmanager) and high test coverage.

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TT

Engineering Director for AV infrastructure and large-scale backend systems

Palo Alto, CA18y exp
imoShahjalal University of Science and Technology

Engineering leader/player-coach who redesigned A/B testing and observability infrastructure for real-time audio/video features at 90M+ DAU scale, using Kafka-based ingestion and horizontally scalable aggregation for near real-time metrics. Managed 10–15 engineers, drove >20% infrastructure cost reduction without user-experience regressions, and led major peak-traffic incident response with lasting reliability improvements (load testing, capacity planning, alerting, pre-mortems).

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Muhammad Waqas Ashraf - Senior Full-Stack Engineer specializing in AI, cloud infrastructure, and DevOps in Lahore, Pakistan

Senior Full-Stack Engineer specializing in AI, cloud infrastructure, and DevOps

Lahore, Pakistan7y exp
Devline SolutionsNational University of Sciences and Technology

Frontend engineer focused on building and scaling data-heavy, real-time dashboards with React/Next.js/TypeScript. Emphasizes performance and reliability at scale through modular architecture, centralized state (Zustand/Redux), strict API contracts, automated testing, and production monitoring (Grafana/CloudWatch), and has experience shipping quickly with feature-flagged rollouts and rapid iteration from user feedback.

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

Vaishnavi M

Screened

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

5y exp
Liberty MutualUniversity of Maryland, Baltimore County

At Liberty Mutual, built a production underwriting decision assistant combining LLM reasoning with quantitative models and strong auditability. Implemented a claims-based response verification pipeline that cut hallucinations from 18% to 3% and materially improved user trust/validation scores. Experienced orchestrating ML/LLM workflows end-to-end with Airflow, Kubeflow Pipelines, and Jenkins, including SLA-focused pipeline hardening.

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Aditi Deshpande - Mid-level Software/AI Engineer specializing in GenAI, AWS, and microservices in Remote, United States

Mid-level Software/AI Engineer specializing in GenAI, AWS, and microservices

Remote, United States4y exp
LegalPro+Arizona State University

Built a production AI pipeline at EyCrowd to automatically grade shaky outdoor user-submitted brand videos using CV + CLIP/BLIP and a LangChain RAG layer per brand, with GPT-4 generating structured JSON explanations and grades. Optimized for latency and cost (batch PyTorch inference, caching), cutting review time from ~8 minutes to <2 minutes while reaching ~90% alignment with human graders and supporting thousands of videos/day.

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Thanmayi Ravuri - Entry Software Engineer specializing in cloud backend and microservices in Tempe, AZ

Entry Software Engineer specializing in cloud backend and microservices

Tempe, AZ1y exp
Miraki TechnologiesArizona State University

Built production-oriented LLM agent systems for incident investigation and CRM workflows using LangGraph, FastAPI, AWS, and retrieval grounding. Stands out for treating agents like real software systems—adding schema enforcement, retries, fallbacks, monitoring, and eval loops—and tying that work to measurable gains in accuracy, latency, and analysis speed.

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Kunal Sanghvi - Mid-level Data Engineer specializing in AI, NLP, and LLM systems in USA

Kunal Sanghvi

Screened

Mid-level Data Engineer specializing in AI, NLP, and LLM systems

USA3y exp
Unique DesignsPace University

Built and deployed a production AI customer support chatbot at Unique Design Inc. using FastAPI, AWS, Docker, and retrieval-based grounding on internal documents. Stands out for hands-on ownership across discovery, deployment, incident debugging, and post-launch iteration, with a strong focus on making LLM systems reliable and safe in real business workflows.

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CK

Mid-level Conversational AI Engineer specializing in enterprise chatbots and workflow automation

Miami, FL4y exp
Lid VizionUniversity of South Dakota

Built a production LLM/RAG document extraction and game/quiz content workflow using LLaMA 2, LangChain/LangGraph, and FAISS, achieving ~94% accuracy and reducing turnaround from hours to minutes. Demonstrates strong applied MLOps/orchestration (CI/CD, MLflow, Databricks/PySpark), robust handling of noisy/variable document layouts (layout chunking + OCR fallbacks), and practical reliability practices (human-in-the-loop routing, drift monitoring, A/B testing).

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HC

Hiti Chouhan

Screened

Mid-level Full-Stack Software Engineer specializing in FinTech and cloud-native microservices

5y exp
Kube It. INCWayne State University

Backend/data engineer with production experience in financial payroll, tax, and compensation platforms, building Python microservices and AWS-based data pipelines for high-volume, peak-driven workloads. Strong reliability focus (OAuth2 auth, retries/timeouts, structured logging, incident response) and proven performance wins, including cutting complex report queries from ~8 minutes to under 30 seconds.

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AW

Junior Full-Stack & AI Engineer specializing in computer vision and cloud platforms

Buffalo, NY2y exp
FILMIC TECHNOLOGIESUniversity at Buffalo

Early-career backend engineer and solo builder of FrameFindr, an AI/OCR-based marathon photo tagging product used at live events. Demonstrated pragmatic scaling under tight infrastructure constraints (2GB VPS) and hands-on ownership of architecture, API design, auth (Google OAuth/JWT), and a MongoDB-to-MySQL migration with data-integrity safeguards.

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AM

Azem Meer

Screened

Senior Full-Stack Engineer specializing in cloud-native microservices and AI/ML integration

United States10y exp
SaplingNational University of Sciences and Technology (Pakistan)
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KD

Kevin Delong

Screened

Senior Full-Stack Software Engineer specializing in React/Node and cloud-native platforms

Grand Blanc, MI11y exp
PrimeCodoLawrence Technological University

Backend/data engineer with hands-on production experience building a real-time notification API on Flask/Celery/Postgres and scaling it on AWS with Docker, Redis queuing, and SQLAlchemy query optimization. Also delivered AWS serverless deployments (Lambda) using Terraform + GitHub Actions and built AWS Glue ETL pipelines from S3 to Redshift with CloudWatch monitoring and DataBrew data quality checks.

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NH

Senior Full-Stack Developer specializing in React, Node.js, and AWS

Los Angeles, CA9y exp
SmartiStackUniversity of South Florida

Backend/data engineer with hands-on production experience across Python/Flask microservices and AWS serverless/data platforms (Lambda, DynamoDB, S3, Glue/PySpark). Demonstrated strong reliability and operations mindset (JWT/RBAC, retries/timeouts/circuit breakers, CloudWatch/SNS alerting) and measurable performance wins (SQL report runtime cut from 10 minutes to 30 seconds). Seeking ~$150k base and cannot travel for onsite meetings for the next 5–6 months due to family medical constraints.

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AM

Mid-level Full-Stack Developer specializing in healthcare and scalable web platforms

USA6y exp
CitiusTechUniversity of Central Florida

Software engineer experienced delivering customer-facing, real-time industrial monitoring dashboards (motors/shafts/turbines) by partnering directly with end users to refine charts, alerts, and performance. Strong in API/platform integrations and production troubleshooting—uses feature flags, logging, validation/mapping, containerization, and performance testing to keep systems stable while iterating quickly.

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VM

Venkata Morla

Screened

Mid-level Full-Stack Software Engineer specializing in cloud-native microservices

USA4y exp
State FarmUniversity of Bridgeport

DevOps engineer (State Farm) with hands-on ownership of Python backend services and data pipelines, deploying microservices and workers on Kubernetes using GitOps (Argo CD). Has led complex cloud-to-on-prem/hybrid migrations with staged cutovers and rollback planning, and built Kafka-based real-time streaming pipelines with schema governance, autoscaling, and strong observability.

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BP

Senior Machine Learning Engineer specializing in LLMs, RAG, and agentic AI systems

Fort Worth, Texas8y exp
Ingram MicroUniversity of North Texas

LLM/RAG practitioner who has taken a support-ticket triage automation system from prototype to production, building the full pipeline (fine-tuned models, FastAPI inference services, vector storage, monitoring) and delivering measurable impact (~40% reduction in triage time). Demonstrates strong operational troubleshooting of LLM/agentic workflows (observability-driven debugging, fixing agent routing/looping) and supports adoption through tailored demos and sales-aligned technical communication.

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AF

Mid-Level Software Engineer specializing in FinTech and LLM-powered data products

Los Angeles, California3y exp
California State University, Long BeachCalifornia State University, Long Beach

Full-stack engineer with payments/settlement domain experience who modernized a payment tracking workflow from REST to GraphQL and delivered a production payment status dashboard using Next.js App Router + TypeScript. Strong in performance and reliability work (Postgres indexing/Explain Analyze, Redis caching, Datadog observability) and in durable event-driven processing with Kafka (DLQs, idempotency, reconciliation, event replay).

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DK

Mid-level Software Engineer specializing in AI RAG systems and full-stack cloud applications

Alpharetta, GA3y exp
Compusoft Integrated SolutionsArizona State University

AI/LLM engineer who shipped a production RAG-based knowledge assistant at SparkPlug serving 10,000+ daily users, streaming GPT-4 answers with inline citations over WebSockets. Demonstrated measurable impact (support resolution time cut 18→12 minutes; retrieval precision +~20%) and strong production rigor across ingestion, monitoring/alerting, evaluation, and messy ERP-style data integration with validation, RBAC, and idempotent operations.

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Anudeep Reddy Veerla - Mid-Level Software Engineer specializing in cloud-native microservices in Boston, MA

Mid-Level Software Engineer specializing in cloud-native microservices

Boston, MA3y exp
Tech MahindraUniversity of the Potomac

Built and shipped both a solo real-time multiplayer Spades game (TypeScript monorepo with shared client/server engine) and a production internal LLM-powered document Q&A tool for a SaaS company. Demonstrates strong RAG pipeline design (Pinecone + embeddings + reranking), rigorous eval/regression practices, and pragmatic data ingestion/observability work across Confluence, Notion, and messy PDFs/OCR—backed by clear metric improvements (P@1 61%→78%, escalations 40%→22%).

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Mayur Agrawal - Entry-Level Backend Engineer specializing in analytics automation and cloud data pipelines in Bengaluru, India

Mayur Agrawal

Screened

Entry-Level Backend Engineer specializing in analytics automation and cloud data pipelines

Bengaluru, India1y exp
Bicycle AIIIIT Nagpur

Forward Deployment Engineer focused on application security and production integrations, with hands-on experience hardening API-driven ticketing systems (JWT/RBAC/rate limiting/log redaction) and implementing CI/CD security controls (Bandit SAST, SCA, container hardening). Strong in diagnosing peak-load production issues using logs/metrics/infra signals and driving durable fixes like adaptive throttling and backoff, while aligning engineering, business, and leadership stakeholders on risk and SLA impact.

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Vishesh Kumar - Intern Software & AI Engineer specializing in distributed systems and LLM applications in Palo Alto, CA

Vishesh Kumar

Screened

Intern Software & AI Engineer specializing in distributed systems and LLM applications

Palo Alto, CA1y exp
AmpUpStony Brook University

Stony Brook Fall 2024 capstone contributor who built a ROS2-based warehouse mobile robot prototype, owning perception and SLAM integration end-to-end. Strong in real-time robotics optimization on Jetson Orin (TensorRT/CUDA, ROS2 tracing/Nsight) and in distributed ROS2 communications (DDS discovery/QoS, MAVLink-to-ROS2 bridging), with a full simulation/testing/deployment toolchain (Gazebo, CI tests, Docker/K3s).

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Yash Prakashbhai Shah - Senior Backend Software Engineer specializing in Java, microservices, and cloud infrastructure in Santa Clara, CA

Senior Backend Software Engineer specializing in Java, microservices, and cloud infrastructure

Santa Clara, CA6y exp
AryakaSan Diego State University

Backend/platform engineer at Aryaka Networks who built a centralized resiliency and security Spring Boot library to standardize Keycloak RBAC and fault-tolerance across 25+ Kubernetes-migrated microservices. Uses profiling and observability (Prometheus/Grafana) to drive measurable performance and reliability gains (25% faster APIs, 70% faster environment setup) and accelerates adoption via golden-path starter repos and Swagger/OpenAPI live docs.

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SV

Mid-level Full-Stack Java Developer specializing in Spring microservices and AWS

Glenwood Springs, CO3y exp
Alpine BankColorado State University

Software engineer (Alpine Bank) focused on modernizing high-traffic customer-facing systems with React/TypeScript frontends and Spring Boot microservices. Has hands-on experience stabilizing and scaling event-driven architectures with Kafka (idempotent consumers, partitioning, retry queues) and building internal observability dashboards that materially sped up post-deployment verification and improved release confidence.

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