§03 Dedicated AI Engineering Teams · Enterprise Delivery · NVIDIA-Certified

Hire AI Developers Who Have Already Shipped Your Use Case to Production

Build a dedicated AI engineering team in 14 days. Computer vision, generative AI, MLOps, edge AI, and AI agent specialists — pre-vetted, ISO 27001-aligned, with full IP transfer from day one. 70+ enterprise AI deployments shipped. Engagement contracts start at one developer; most clients scale to 5–15.

§03 / 01 0 Specialist AI engineers on bench
§03 / 02 0+ Enterprise AI projects shipped
§03 / 03 0+yrs Exclusive AI focus (founded 2018)
§03 / 04 ~0% Timezone overlap with US ET / EU CET
Credentials· 06 verified §04 / 01
Clients (anonymized)· 06 active engagements §04 / 02
C / 01 NYSE-listed Healthcare
C / 02 Fortune 500 Manufacturing
C / 03 EU Construction Tier-1
C / 04 US Logistics Public Co.
C / 05 NABFR-Sanctioned BFSI
C / 06 Top-3 Pharma
Founder· Direct architecture call §04 / 03
Mitesh Patel
Director and Founder
Mitesh Patel
NVIDIA Certified AI Architect, Director and Founder, Brainy Neurals

§05 Market Context · Talent Gap · Why External

The AI Talent Gap Is Now the Single Largest Barrier to Production AI

Enterprises hire external AI developers because the in-house path now takes 6–9 months to fill a single senior AI seat, fully loaded compensation in the US is past $300,000, and most AI projects fail in the gap between research-grade code and production deployment. An external AI engineering team closes those three gaps without the recruiting overhead.

The global AI talent supply has fallen further behind demand. McKinsey puts the gap at roughly 50%: enterprises in North America and Western Europe can fill only one in two AI seats they need, even at premium compensation. LinkedIn data has the average time-to-hire for a senior AI engineer in the US sitting at 156 days. Compensation has moved with the scarcity: total comp for a senior AI engineer in a Tier-1 US metro now lands at $280,000–$350,000 fully loaded. A 5-engineer in-house team is therefore a $1.5M annual commitment before a single model ships.

Hence: 92% of enterprises have already integrated some form of AI into operations, and 97% report difficulty hiring qualified AI talent (Second Talent, 2026 industry survey). Traditional recruitment has not kept up. The pipeline is too narrow at the senior end, AI compensation has decoupled from the rest of engineering compensation, and most internal recruiters cannot evaluate model architecture choices, MLOps maturity, or who has actually shipped a model to production versus prototyped one.

External AI engineering teams resolve the bottleneck on three fronts. On speed: a pre-vetted bench shortlists candidates inside 48–72 hours and gets an engineer embedded in 14 days, against the 6-month internal recruit. On cost: a senior offshore-blended AI engineer bills at $55–$120 per hour all-in, against $135–$170 fully-loaded for the equivalent US in-house seat. On production craft: enterprises buy from firms that have already shipped 50–100+ AI deployments, which is exactly the variable academic AI hires lack.

The right engagement also de-risks the whole exercise. A pure-play AI specialist firm operating under ISO 27001 controls, signing an enforceable NDA, and transferring 100% of model weights and source code at delivery sits in lower-risk territory than a freelancer marketplace placement, and ships faster than waiting two financial quarters for a recruiter to fill the seat.

§05 / S1 0% of enterprises report difficulty hiring qualified AI talent Second Talent, 2026
§05 / S2 0days average US time-to-hire for senior AI engineer LinkedIn Talent Insights, 2026
§05 / S3 $280K–$350K fully loaded annual cost of a senior US in-house AI engineer Levels.fyi + Glassdoor blended
§05 / S4 ~0% AI talent supply-demand gap in North America and Western Europe McKinsey, State of AI 2025–26
§05 / S5 $0B global AI market reached in 2025; projected to triple by 2030 Grand View / Precedence Research

§06 Roles · Specializations · Bench Coverage

Eight AI Engineering Specializations — Hire One Role or a Full Cross-Functional Team

Brainy Neurals’ 20-engineer specialist bench covers eight AI roles. Most engagements blend three to seven of them into one dedicated team. A generative AI build will pair a GenAI engineer with an MLOps engineer and an AI architect; a computer vision deployment will pair CV engineers with edge-AI specialists and a data engineer. Every engineer is interviewed by Mitesh Patel, NVIDIA Certified AI Architect, before joining a client engagement.

What they buildObject detection, segmentation, tracking, OCR, defect detection, pose estimation, depth perception, 3D reconstruction, real-time multi-camera analytics
Named tools
YOLOv8YOLOv11Detectron2MMDetectionOpenCVUltralyticsNVIDIA DeepStreamTensorRTONNX RuntimeMediaPipeSAM2
NVIDIA Jetson Orin / Nano, Intel RealSense, Stereolabs ZED, Ouster Lidar, Qualcomm SNPE, Kneron, Rockwell
Hardware experience
Typical engagementManufacturing QA · Construction safety · Sports analytics · Healthcare imaging · Warehouse automation
Hourly rate band$55–$95 (junior $55–65 / mid $65–80 / senior $80–95)
Minimum engagement1 month (160 hours)

Every Brainy Neurals engineer carries 9+ years of exclusive AI focus on the company’s track record, ships production code under ISO 27001 controls, and signs the NDA before any project information is shared. The bench is intentionally small at 20 engineers. The 70+ enterprise AI projects delivered came from this team, not from a larger one.

§07 Dedicated · Staff Aug · Project · Trial-to-Hire

Four Engagement Models — Picked Based on Your Risk Profile and Timeline

Brainy Neurals offers four engagement models. Most enterprises open with a 2-week paid trial, then convert into either a dedicated team contract (full-time engineers, monthly retainer) or a staff augmentation contract (1–3 engineers embedded inside the client’s existing engineering team and managed by the client). Project-based fixed-cost work is reserved for clearly-scoped POC and MVP engagements where the deliverable is well-defined.

Dedicated AI Engineering Team

M / 01
Best for
Clients building a multi-month or multi-quarter AI program who want a stable, named team with continuity, low coordination overhead, and clear team economics
Team composition
Typically 4–10 engineers: 1 AI architect (fractional 20%), 2–4 specialist engineers (CV / GenAI / NLP / Edge), 1 MLOps engineer, 1 data engineer, 1 delivery lead
Pricing
Monthly retainer based on FTE composition. Indicative bands: 4-engineer team $40K–$55K/mo; 6-engineer team $58K–$78K/mo; 10-engineer team $95K–$135K/mo
Contract min
3 months
Cadence
Weekly demo · daily standup · monthly business review with founder
IP ownership
100% client ownership at delivery. All source, all weights, all training scripts handed over. No vendor lock-in
Swap policy
Underperforming engineer can be swapped within 5 business days at zero cost to the client

Staff Augmentation

M / 02
Best for
Clients with an internal AI / engineering team who need 1–3 specialists to fill a specific skill gap (computer vision, MLOps, GenAI, edge) without expanding their employee headcount
Team composition
1–3 individual engineers, embedded directly into the client team, reporting to the client’s engineering manager, using the client’s tools (Jira, GitHub, Slack)
Pricing
Hourly bill rate, monthly invoicing. Bands per the role rates in the section above
Contract min
1 month
Cadence
Daily standup with client team · weekly check-in with Brainy Neurals delivery lead · monthly QBR
IP ownership
100% client (engineer codes inside client’s repo)
Swap policy
Engineer can be swapped within 5 business days

Project-Based / Fixed-Price

M / 03
Best for
Clearly-scoped POC, MVP, or single-deliverable engagements where the success criteria, dataset, and acceptance test are well-defined upfront
Team composition
Sized to the SOW — typically 2–5 engineers
Pricing
Fixed price, milestone-paid. Indicative ranges: AI POC $25K–$60K (4–8 weeks); AI MVP $60K–$150K (8–14 weeks); production deployment hardening $40K–$120K
Contract min
Per SOW
Cadence
Milestone-based demos · weekly status report
IP ownership
100% client at acceptance
Risk
Brainy Neurals carries delivery risk. Acceptance criteria written into the SOW. Failed milestone triggers re-work at Brainy Neurals’ cost

2-Week Paid Trial

M / 04
Best for
Clients who want to validate fit before committing. Industry standard at premium AI staffing platforms; Brainy Neurals offers it on every new engagement
Size
1–3 engineers across 2 weeks — equivalent to 80–240 hours of paid work delivered against a real project
Pricing
Standard hourly rates. Total cost ranges from $4,400 (one mid-level engineer ×2 weeks) up to $19,200 (three senior engineers ×2 weeks)
Conversion
If the client converts to a dedicated team or staff augmentation contract within 30 days of trial end, Brainy Neurals credits 50% of the trial cost against the first month’s invoice
No-fit clause
If at the end of week 2 the client decides not to proceed, work delivered remains client property under the standard IP terms — no contract continuation, no termination fees
You should choose…
If your situation is…
Dedicated Team
You're building a multi-quarter AI program. You want continuity. You'd rather discuss outcomes monthly than manage individual engineers.
Staff Augmentation
You already have an engineering org. You need 1–3 specialists to fill a known skill gap. You want them embedded under your management.
Project-Based
You have a tight SOW: a POC for a specific use case, an MVP with documented acceptance criteria, or a one-time deployment hardening sprint.
Trial-to-Hire
You want low-risk validation before any larger commitment. (This is the recommended starting point for first-time clients.)

§08 Models · Frameworks · Infra · 50+ Named Technologies

The Tools Your Hired AI Developers Will Actually Ship With

Brainy Neurals’ AI engineers ship in production with the technologies named below. This is not a marketing aspiration list. Every category here has at least one ongoing client engagement behind it. Tools without an active production deployment are excluded.

§08 / 01 Foundation · Vision · NLP · DL

Models / Frameworks

GPT-4oClaude Sonnet 4 / Opus 4Gemini 2.5Llama 3.3 (8B / 70B)Mistral LargeQwenDeepSeek V3YOLOv8 / v11Detectron2MMDetectionSAM2DINOv2Grounding-DINOOpenCVMediaPipeBERTRoBERTaDeBERTaSentence-TransformersHugging Face TransformersspaCyPyTorchTensorFlowJAXONNX
§08 / 02 Primary · Systems · Edge

Languages

Python (primary)C++ (Edge / Embedded)Rust (high-throughput ML)Go (MLOps tooling)CUDA / C++ (custom kernels)TypeScript (front-end + agent UIs)SQL (data engineering)
§08 / 03 SoC · SDK · Sensors

Edge & Embedded Hardware

NVIDIA Jetson Orin / Nano / XavierNVIDIA DRIVEQualcomm SNPE SDKKneron KL-seriesRockchip RK-seriesIntel RealSense D-seriesStereolabs ZED 2 / ZED XOuster OS-1 LidarVelodyne VLP-16Coral TPUOpenVINOHailo-8
§08 / 04 GPU · Managed · Spot

Cloud & Infrastructure

AWS (SageMakerBedrockEC2 P-seriesECSEKSLambda)Google Cloud (Vertex AIGKE)Azure (ML StudioAKS)NVIDIA NGCLambda LabsRunPodPaperspaceModal
§08 / 05 Pipelines · Vector DB · Feature

Data Pipeline & Vector DB

Apache SparkApache KafkaApache AirflowPrefectdbtSnowflakeDatabricksDelta LakeApache IcebergPineconeWeaviateQdrantMilvusChromaPostgres pgvectorTectonFeast
§08 / 06 Serving · Monitoring · Optim

MLOps & Monitoring

MLflowWeights & BiasesClearMLNVIDIA Triton Inference ServerKServeSeldon CoreBentoMLvLLMTensorRTTensorRT-LLMKubeflowEvidently AIFiddlerArizeWhyLabsPrometheus + Grafana
§08 / 07 Agents · RAG · Fine-tune

Agent & GenAI Frameworks

LangChainLangGraphLlamaIndexCrewAIMicrosoft AutoGenAnthropic Model Context Protocol (MCP)OpenAI Assistants APIPydantic AIDSPyUnslothLoRA / QLoRARLHF / DPOvLLMTGI
§08 / 08 ISO 27001 · HIPAA · GDPR · SOC 2

Security, Compliance, Integration

ISO 27001 (Brainy Neurals certified)HIPAA / GDPR / SOC 2-aware project setupOktaAuth0AWS CognitoHashiCorp VaultAWS Secrets ManagerRESTGraphQLgRPCwebhooksSalesforce / HubSpot / Dynamics / SAP / Workday connectorsPII redactionprompt injection guardrailsmodel evaluation harnesses

If your in-house tech-radar lists a tool here, an engineer on the Brainy Neurals bench has shipped with it. If a tool you depend on isn’t listed, raise it on the discovery call. Mitesh Patel reviews bench coverage every quarter and we’d rather decline a tool we haven’t shipped with than claim generic coverage.

§09 Discovery · Match · Interview · Trial · Onboard

From Discovery Call to Embedded Engineers in 14 Days

Brainy Neurals’ five-step hiring process moves an enterprise from first contact to embedded engineers in 14 calendar days. The same five steps appear in the JSON-LD HowTo schema published with this page.

Steps 1–3 run sequentially and are time-bounded. Step 4 (the trial) and Step 5 (onboarding administration) overlap so the engineer is fully productive when the trial period starts.

Step 01 / 05 Discovery Day 0
Step 02 / 05 Match Day 1–2
Step 03 / 05 Interview Day 3–5
Step 04 / 05 Trial 7–14
Step 05 / 05 Embed Day 15+
Day Step Activity Owner
Day 0 Step 1 — Discovery

30-minute architecture call with Mitesh Patel and a senior architect. Use case scoped, success criteria captured, role mix confirmed.

Joint
Day 1–2 Step 2 — Match

Bench review against confirmed roles. Shortlist of 2–3 candidates per role assembled. CVs and named project references shared.

Brainy Neurals
Day 3–5 Step 3 — Interview

Client interviews shortlisted engineers (45–60 min technical interview each). Optional take-home task. Final selection by client.

Client
Day 6 Onboarding admin

MSA + SOW signed (template available). NDA executed. Tool access provisioned. Client SSO and Jira / GitHub / Slack invites sent.

Joint
Day 7–10 Step 4 — Trial begins

Selected engineers begin paid trial (2 weeks). First demo at end of week 1. Daily standups attended.

Hired engineers
Day 11–14 Step 5 — Embed

End-of-trial review. If converted, dedicated team / staff aug contract activates immediately into Day 15+. No re-onboarding.

Joint

§09 / Prep

What we ask on the Discovery Call (so you can prepare)

  • 01 Use case definition what problem are you trying to solve, and what is the production system this AI must live inside?
  • 02 Success criteria what numerical accuracy, latency, throughput, or cost target defines a working system?
  • 03 Data what training data exists today, in what state, with what privacy / sensitivity constraints?
  • 04 Infrastructure cloud account, on-prem requirements, edge hardware constraints?
  • 05 Compliance HIPAA, GDPR, SOC 2, ISO 27001, FedRAMP, country-specific data residency?
  • 06 Team integration does the engagement embed inside your team or operate as an outcome-delivery team?
  • 07 Timeline and budget milestones the program is tied to internally, headroom for trade-offs?

§09 / Candor

What we will not do

No-go conditions Brainy Neurals will not start an engagement without a signed NDA. We will not begin development without an architecture call, even on small engagements. We will not place an engineer with a client where the engineer's named tools don't match the project's tech stack. Declining the engagement is better than mis-matching it. We will not bill for trial work that exceeds the scope agreed at trial start.

§10 Ready to Start? — Typical Path From Here

Architect a Team in 30 Minutes. Ship in 14 Days. Scale in 30.

Mitesh Patel and a senior architect will join your call. We’ll size the team, name the engineers we’d embed, and give you a written engagement plan within 24 hours. No commitment required.

48–72 hrs Shortlisted engineer profiles delivered
14 days From first call to embedded engineer
5 biz days Engineer swap window — at zero cost
100% IP transfer at delivery — every line, every weight

§11 Domain-Experienced Engineers · Cross-Linked Industry Depth

Five Industry Verticals With Shipped Production AI

Brainy Neurals’ engineers are not generic Python developers re-labeled as AI talent. Every engineer has deployed AI in at least two of the five verticals below. When an engagement begins, the matched team includes engineers with direct production experience in the client’s vertical, not adjacent. A 20-engineer specialist firm with 70+ shipped projects beats a 1,000-engineer generalist firm at vertical-specific AI delivery, because in the generalist firm the share of engineers who’ve actually shipped to that vertical is statistically thin.

I / 01

Manufacturing & Industrial

Quality inspection, defect detection on production lines, predictive maintenance from sensor data, OCR for industrial labels, worker-safety vision systems, and yield optimization. Engineers ship on Jetson Orin / DeepStream / TensorRT-INT8 stacks for sub-100ms inference on the factory floor.

Manufacturing & Industrial
I / 02

Banking, Financial Services & Insurance (BFSI)

Document understanding for loan and insurance workflows, KYC automation, intelligent claims triage, fraud detection, transaction monitoring, and customer-service GenAI assistants. Engineers know PII redaction, on-prem inference for regulated workloads, and audit-ready model evaluation.

BFSI
I / 03

Healthcare & Life Sciences

Medical imaging classification and segmentation, radiology workflow assistants, clinical-text NLP, pharma quality assurance, EHR-aware copilots, and HIPAA-aligned project setups. Engineers work daily with DICOM, FHIR, and de-identification pipelines.

Healthcare & Life Sciences
I / 04

Logistics & Supply Chain

Warehouse automation vision, dimensioning and load-validation, route optimization, demand forecasting, last-mile inspection, OCR for shipping labels, and fleet vision systems. Edge deployments on rugged Jetson hardware in distribution centres.

Logistics & Supply Chain
I / 05

Construction & Civil Engineering

Drone-based progress tracking, BIM-integrated vision, on-site safety monitoring, plan-approval automation, equipment utilization analytics, and infrastructure inspection. Engineers run multi-modal sensor fusion (RGB + Lidar + GPS) for outdoor and field deployments.

Construction & Civil
I / 06

Sports & Media

Player tracking and biomechanics, broadcast-grade video analytics, automated highlights, performance benchmarking, and fan-engagement copilots. Engineers have shipped real-time multi-camera systems with sub-frame synchronization.

Sports & Media

If your industry is not listed

Aerospace, defense, energy, agriculture, and retail are available case-by-case. The discovery call will confirm whether the bench has shipped to your vertical, or whether you'd be better served by a domain specialist firm. We will tell you honestly if it's the latter.

§12 Transparent Bands · Published Rates · No Hidden Fees

What Hiring an AI Developer Actually Costs in 2026

Hiring a senior AI developer through Brainy Neurals costs $65–$120 per hour all-in. Hiring the equivalent in-house engineer in a US Tier-1 metro costs $135–$170 per hour fully loaded once compensation, recruitment, taxes, benefits, equipment, and recruitment-cycle opportunity cost are accounted for. A 5-engineer dedicated team with Brainy Neurals runs $50K–$70K per month all-in; the equivalent in-house team runs $115K–$145K per month fully loaded. Across a 12-month program that’s roughly $780K–$900K saved at the same quality level, with a faster ramp.

Hourly rate bands by role

Bands are full-stack: Brainy Neurals’ bill rate to the client. They cover engineer compensation, project management, ISO 27001 compliance overhead, the secure development environment, NDA enforcement, and the engineer-swap guarantee. There are no hidden fees and no upcharges for tooling.

Role Junior Mid Senior Notes
Computer Vision Engineer $55–$65/hr $65–$80/hr $80–$95/hr Edge / Jetson specialization +10%
Generative AI / LLM Developer $65–$75/hr $75–$95/hr $95–$120/hr Agentic system experience commands top of band
MLOps Engineer $70–$90/hr $90–$110/hr Kubernetes + Triton at scale required for senior
NLP Engineer $60–$70/hr $70–$85/hr $85–$100/hr Edge / Embedded AI Engineer
Edge / Embedded AI Engineer $75–$95/hr $95–$110/hr Rare specialization industry-wide
AI Solution Architect $110–$180/hr Architects only — engaged 4–20 hrs/week
Data Engineer (AI-specific) $60–$70/hr $70–$85/hr $85–$100/hr
AI Agent / Copilot Developer $80–$100/hr $100–$130/hr Highest demand, scarcest bench in 2026
A junior engineer is never placed without a senior engineer or architect on the same engagement. This is policy. A junior engineer leading a production AI deployment is one of the most common failure modes in cheaper-marketplace engagements, and Brainy Neurals avoids it on principle.

Total cost of ownership comparison

Pricing reflects a 12-month engagement of an equivalent 5-engineer AI team.

Cost driver In-House US Hire Big-4 Consulting Firm Freelance Marketplace Brainy Neurals
Senior AI engineer all-in / hour $135–$170 (fully loaded) $220–$400 (rate-card) $80–$200 (varies wildly) $65–$120 (published bands)
Time to first engineer producing 4–7 months (recruit cycle) 4–8 weeks 1–3 weeks (variable quality) 14 days (paid trial start)
Recruitment fees 20–25% of base compensation Built into rate Platform fee 10–25% $0
Vetting and quality control Internal hiring panel required Firm reputation Self-managed Founder-interviewed bench, swap policy
IP transfer at delivery Employee retains tacit knowledge Per contract — varies Per platform terms — risky 100% transferred (code, weights, training scripts)
Compliance posture Per company maturity Audit-ready None — client carries all risk ISO 27001 certified, HIPAA / GDPR / SOC 2-aware
12-month cost — 5 senior engineers $1.4M–$1.8M fully loaded $2.4M–$4.2M rate-card $0.85M–$2.0M unpredictable $650K–$960K all-in
Engineer swap if underperforming Termination + re-recruit (3–6 months) Per partnership tier Self-managed via platform 5 business days at zero cost

What is not included in Brainy Neurals’ rates

Explicit exclusions

The published bands cover engineering labour and project management. They do not cover GPU infrastructure (cloud or on-prem), which the client provisions and pays for directly; third-party model API costs (OpenAI, Anthropic, Google), which the client pays at-cost; and specialized hardware (cameras, sensors, edge devices), which the client procures. Indicative monthly infrastructure spend on typical engagements is $2K–$15K, small relative to engineering cost.

§13 · Total Cost of Ownership Delta · 12 Months

$0K

Typical 12-month savings vs. in-house US AI team — modeled on a 5-engineer dedicated team. Comparison includes recruitment, taxes, benefits, equipment, and ramp-time opportunity cost.

0days saved
vs. average US senior AI hire cycle
0+ shipped projects
Brainy Neurals' deployed AI portfolio
0specialist engineers
Founder-interviewed bench

Stop waiting six months for one in-house seat. Embed an entire team in 14 days.

30-minute architecture call with Mitesh Patel and a senior architect. We’ll show you the engineers we’d assign, with named project references.

§14 Proof · Quantified Outcomes · Named Technologies

Three Engagements That Started With a Discovery Call and Scaled to Production

Every case study below opened where this page invites you to open: a 30-minute discovery call. Each began with 1–3 engineers in a paid trial and grew to a dedicated team within 60 days. Client identifying details are anonymized; the metrics, technology stack, and team composition are exact.

Case 01 / 03 · Manufacturing

Manufacturing Quality AI — NYSE-Listed Industrial Manufacturer

ClientNYSE-listed industrial manufacturer · 14 plants in North America and Europe · ~$4B annual revenueChallengeManual visual inspection of automotive components at 12 plant lines. Defect-detection accuracy ~91% with high false-positive rate. Senior QA engineers leaving — internal hiring stalled at 7 months without a single senior CV engineer hired.EngagementStarted with 2-week trial: 1 senior CV engineer + 1 MLOps engineer. Converted to dedicated team of 6 (3 CV engineers, 1 edge AI specialist, 1 MLOps engineer, 1 fractional architect — Mitesh Patel).Tech shippedYOLOv8 fine-tuned on client dataset · TensorRT-INT8 on Jetson Orin AGX · NVIDIA DeepStream for multi-camera throughput · MLflow + Triton for model registry and inference at scale · Postgres for inspection logs · Grafana dashboards for plant managers.Outcome99.2% accuracy at 200 frames/sec per line. False-positive rate cut from 8% to 1.4%. Annual labour reallocation worth ~$2.1M across the 12 lines. Time from trial start to first plant in production: 11 weeks.
Discovery to first production plant in 11 weeks against a stalled 7-month in-house hire. We extended into a second program before the first was complete.
Case 02 / 03 · BFSI

Generative AI Document Workflow — US-Based BFSI Mid-Market

ClientUS-based mid-market commercial-lending firm · $11B AUM · regulated workloads ChallengeLoan-document review consuming ~340 person-hours per week across 22 analysts. Off-the-shelf SaaS tools failed compliance review. Internal AI team had two engineers — capacity for one project, two were queued. EngagementTrial: 1 senior GenAI engineer + 1 AI architect (50%). Converted to dedicated team of 5 (2 GenAI engineers, 1 NLP engineer, 1 MLOps engineer, 1 architect). Tech shippedClaude Sonnet 4 + Llama 3.3 70B (on-prem, regulated workloads) · LangGraph for multi-step workflow agents · Pinecone for retrieval · custom evaluation harness with 1,200 labeled gold-standard cases · audit-ready prompt and output logging · PII redaction layer · MCP integration with internal loan-origination system. Outcome61% of weekly review hours automated against 95.3% precision target. Audit log fully integrated with the firm’s compliance system. Trial-to-production: 9 weeks. The 22 analysts re-skilled into higher-value risk-assessment roles. EvolutionAfter 6 months, the team scaled to 8 engineers and moved into a second use case (claims triage).
Case 03 / 03 · Construction

Edge AI for Construction Safety — EU Tier-1 Construction Group

ClientEU Tier-1 construction group · operations across 6 countries · ~$2.8B annual revenue ChallengePPE compliance and zone-violation monitoring across 40+ active sites. CCTV data ingested but unmonitored. Insurance-driven mandate to reduce on-site safety incidents by 30% within one year. EngagementTrial: 1 edge AI engineer + 1 CV engineer. Converted to dedicated team of 4 (2 CV / edge engineers, 1 MLOps engineer, 1 architect). Tech shippedYOLOv11 fine-tuned for PPE classes (helmet, vest, harness) · NVIDIA Jetson Orin Nano deployed at site cabin level · TensorRT INT8 quantization for sub-50ms inference · Ouster OS-1 Lidar for zone definition · custom dashboard with site-manager alerting · weekly model retraining pipeline · 4-bit-quantized fallback for offline-tolerant sites. OutcomePPE compliance violations reduced 73% within 4 months. Zone-violation incidents reduced 41%. Insurance premium negotiation produced ~$890K annual saving across the group. NotableThe trial began on a single site; the dedicated team rolled out to 40+ sites in 6 months — a pace the client estimated would have taken 18+ months in-house.

§15 Capability Coverage · 08 Disciplines

Hire AI Developers Who Have Already Built What You’re Trying to Ship

70+ enterprise AI projects shipped…

§16 Build vs. Buy · 4-Way Comparison · Named Alternatives

Brainy Neurals vs. In-House Recruiting vs. IT Staffing Firms vs. Freelance Marketplaces

Procurement teams comparing options for AI engineering capacity usually evaluate four paths. Each has its own strengths and weaknesses. The table below is honest about both, including where Brainy Neurals is the wrong fit.

Decision factor In-House Recruiting Generic IT Staffing Firm Freelance Marketplace (Toptal / Turing / Upwork) Brainy Neurals
Typical time to first productive engineer 4–7 months 4–8 weeks 1–3 weeks (variable) 14 days
AI specialization depth Variable — depends on hire quality Generalist; AI is one practice among many Pool quality varies; vetting is keyword-led Pure-play AI specialist firm — no other practices
Cost per senior engineer / hour $135–$170 fully loaded $140–$220 rate-card $80–$200 unpredictable $65–$120 published bands
Vetting standard Internal hiring panel — quality varies Recruiter-led screening Algorithmic + automated tests Founder-interviewed (Mitesh Patel) before any client engagement
Production deployment scars Zero proof until first project ships Variable — depends on engineers placed Per-engineer track record on platform 70+ enterprise AI projects shipped (firm-level proof)
Engagement minimum Permanent hire (12+ months effective) 1–3 month minimums typical 1–2 weeks 1 month (staff aug) / 3 months (dedicated team)
IP and code ownership Employee retains tacit knowledge Per contract Per platform terms 100% transferred — code, weights, training scripts
Compliance posture Per company maturity Audit-ready at firm level None — client carries risk ISO 27001 certified, HIPAA / GDPR / SOC 2-aware
Engineer swap if underperforming Termination + re-recruit (3–6 months) Per partnership tier — slow Self-managed via platform 5 business days at zero cost to client
Architect-level oversight Hire your own Optional add-on at premium Not provided Mitesh Patel personally architects every engagement
Best for Long-term core team hires Generalist engineering at scale Short-duration specialist gigs Enterprise AI programs needing depth + speed + governance
Worst for Speed-to-market AI-first depth Compliance-driven workloads <1-month single-engineer engagements (use Toptal instead)

When Brainy Neurals is the wrong choice — honest disclosure

If you need a single engineer for less than 4 weeks, the platform marketplaces are faster and cheaper to transact with. If you need 50+ engineers across 12 time zones running multiple non-AI engineering practices, a Tier-1 IT staffing firm is built for that scale and Brainy Neurals isn’t. If you have a permanent strategic role you want filled by an employee on your books for 5+ years, hire in-house. That’s a different decision than this page is for.

Brainy Neurals fits enterprise AI programs that run multi-quarter, with budget for 3–15 engineers, where production craft, vertical experience, and architectural oversight matter more than pure cost or pure speed. Most clients reading this page will land in that fit.

§17 Differentiation · 6 Reasons · Proof-Led

Six Reasons Enterprises Choose Brainy Neurals Over Alternative Hiring Paths

01 · SPECIALIST

Pure-Play AI Specialist Firm

Brainy Neurals does AI. The 20-engineer bench has been hiring against AI specializations exclusively since 2018. There is no mobile-app practice, no generic IT staffing arm, no “AI plus blockchain” line of business. When a firm’s only practice is AI, the bench cannot be diluted by lower-margin generalist work, and the engineers don’t rotate out of AI projects between assignments.

02 · FOUNDER

Founder-Architected Engagements

Mitesh Patel — Founder — NVIDIA Certified AI Architect, M.Tech Embedded Systems, Upwork Top Rated Plus (top 3% globally) — joins the discovery call on every new engagement and personally architects the team composition. Most enterprise software-services firms route prospects through a sales engineer; Brainy Neurals routes them through the technical founder.

03 · PROOF

70+ Shipped Enterprise AI Deployments

Firm-level proof, not just engineer-level résumés. The portfolio spans manufacturing, BFSI, healthcare, logistics, construction, and sports, with named technologies on every deployment (YOLOv8, Triton, TensorRT, LangGraph, Pinecone, Jetson, Claude, Llama). It’s also why engineer matches happen quickly: the firm has shipped your use case before, on the technology you intend to use.

04 · COMPLIANCE

ISO 27001, HIPAA / GDPR / SOC 2-Aware Project Setup

ISO 27001 certified at the firm level. Project workflows for healthcare clients are HIPAA-aligned. EU engagements run GDPR-aware data handling. BFSI workloads use SOC 2-aware controls. NVIDIA Inception Partner, AWS Activate Startup Ecosystem, Microsoft for Startups. The compliance posture is what makes Brainy Neurals a viable partner for regulated enterprise procurement, not just for ad-hoc projects.

05 · OWNERSHIP

100% IP Transfer · No Vendor Lock-In

Every engagement transfers 100% of source code, every model weight file, every training script, every evaluation harness, every infrastructure-as-code asset. The client owns the AI system at delivery and operates it themselves if they choose. This is the opposite of platform-based AI vendors who keep the model weights and license access back. The business model here is engineering hours, not platform lock-in.

06 · GUARANTEE

5-Day Engineer-Swap Guarantee

If a placed engineer underperforms, Brainy Neurals replaces them within 5 business days at zero cost to the client. The industry rarely offers this. Most firms either renegotiate the engagement or charge for the swap; freelance marketplaces leave the client to manage it. The guarantee de-risks the engagement to roughly the level of an internal hire, without the recruitment-cycle cost.

§18 · Gated Resource · Enterprise-Grade Procurement Tool

Download the AI Engineering Team Engagement Guide & 12-Month Cost Model

A 28-page PDF written for procurement and engineering leaders evaluating external AI engineering partners. Inside: the cost model, the engagement-model selection matrix, a vendor RFP scoring template, and the security and compliance evaluation checklist Brainy Neurals walks every regulated client through. It is not a sales brochure.

What’s inside

  • 01 Engagement model selection matrix (Dedicated Team / Staff Aug / Project / Trial-to-Hire) with decision criteria for each.
  • 02 12-month total-cost-of-ownership model — fully editable Excel template alongside the PDF, with line items for compensation, recruitment, taxes, benefits, equipment, GPU compute, and ramp-time opportunity cost.
  • 03 Vendor RFP scoring template — 24 criteria across capability, governance, security, contractual terms, and cultural fit.
  • 04 Security and compliance evaluation checklist ISO 27001, HIPAA, GDPR, SOC 2 — what to ask for, what to inspect, what is a red flag.
  • 05 Engagement onboarding checklist — what should be set up before Day 1 of the trial.
  • 06 Pricing reference — Brainy Neurals' published role bands, with notes on which premiums are warranted and which are not.






    PDF + editable Excel cost model · 28 pages · sent to your work email · we don’t share your details

    §19 Buyer-Intent Questions · FAQPage Schema · 10 Answers

    Frequently Asked Questions

    Each answer is written so it can stand alone as a citation in AI search results and Google’s FAQ rich results. Answers are full paragraphs, not single-line responses, with named technologies, specific timelines, and concrete numbers wherever they fit. The FAQPage JSON-LD schema mirrors them exactly.

    Hiring an AI developer through Brainy Neurals costs between $55 and $130 per hour, depending on role and seniority. Junior developers (under 3 years of production experience) bill at $55–$75 per hour. Mid-level developers (3–6 years) bill at $65–$95. Senior engineers (6+ years) bill at $85–$130. AI Solution Architects bill at $110–$180 per hour and are usually engaged 4–20 hours per week alongside delivery teams. Edge AI, agentic systems, and senior MLOps command top-of-band rates because the bench for those skills is shallow across the industry. Rates are all-inclusive: no separate fees for tooling, project management, security overhead, or engineer swaps. Infrastructure (GPU compute, third-party model API costs, specialized hardware) is procured by the client at-cost and does not sit inside the bill rate.

    §21 Final Conversion · Founder Direct · Multi-Channel

    Hire AI Developers — Schedule a 30-Minute Architecture Call

    Mitesh Patel, NVIDIA Certified AI Architect, will join your call alongside a senior architect from the bench. Within 24 hours of the call you’ll have a written engagement plan: team composition, named engineers, indicative pricing, milestone schedule. No commitment required.

    Trusted by enterprise clients in Manufacturing, BFSI, Healthcare, Logistics, Construction, and Sports. ISO 27001 Certified. NVIDIA Inception Partner. AWS Activate. Microsoft for Startups.