MLOps Consulting

Your next bottleneck isn't the model. It's the pipeline.

We build the pipelines, automation, and operational foundations required to move machine learning into production.

Faster experiment iteration
0 x
Higher feature reuse
0 x
Faster model onboarding
0 x
More reproducible pipelines
0 x
Fewer failed training runs
0 %
FRICTION POINTS

Most AI projects don't fail in training. 
They fail in operations.

The organizations winning with AI aren’t building dramatically better models. They’re building better systems around those models. Most failures happen after the model is built.

challenge

Models that work in notebooks but never ship

How we Help

64% of organizations take over a month to deploy a model. We build the infrastructure that accelerates production deployment.

challenge

Data scientists spending half their time on data preparation

How we Help

38-50% of a data scientist’s time is spent preparing data instead of building models. Poor pipelines create friction long before production.

challenge

Models degrading silently in production

How we Help

67% of organizations report unnoticed model issues. We implement monitoring, observability, and drift detection.

challenge

Manual retraining that doesn't scale

How we Help

Growing model portfolios demand automation. We build retraining and deployment pipelines that scale.

challenge

No audit trail for production models

How we Help

Compliance requires traceability. We establish governance, lineage, and audit-ready operations.

DIAGNOSIS

We audit the entire model lifecycle.

Before recommending tools, we evaluate how models move from experimentation to production and identify the bottlenecks slowing delivery.

What we assess

ML workflow maturity

Assess how models move from experimentation to production.

Training and deployment processes

Evaluate automation, repeatability, and release readiness.

Feature engineering and data pipelines

Review data quality, lineage, and pipeline reliability.

Governance and compliance readiness

Measure controls, auditability, and policy alignment.

Infrastructure scalability

Analyze platform capacity, performance, and growth readiness.

Team collaboration between Data Science and Engineering

Identify handoff gaps, ownership issues, and workflow friction.

Deliverables

MLOps Maturity Score

Infrastructure Gap Analysis

Deployment Readiness Assessment

Prioritized Implementation Roadmap

What we Do

From experiment to production. End to end.

Whether you’re deploying your first model or managing dozens in production, we build the systems that make machine learning reliable, scalable, and operational.
001

MLOps Maturity Assessment

Benchmark your current ML operations against industry standards and identify the biggest gaps slowing production adoption.
Deliverables: Maturity scorecard, Infrastructure audit, Governance assessment, Prioritized roadmap
002

Training Pipelines & Automation

Automate model training, validation, testing, and deployment workflows so teams spend less time managing processes and more time improving models.

Deliverables: Reproducible pipelines, Automated retraining
Version control, Experiment tracking

003

Feature Stores & Data Pipelines

Build consistent data foundations that eliminate training-serving skew and reduce duplicated feature engineering work.
Deliverables: Feature stores, Data lineage, Feature reuse, Data quality controls
004

Model Training Infrastructure

Design scalable environments for experimentation, distributed training, hyperparameter tuning, and GPU workloads.
Deliverables: Kubeflow, SageMaker, Vertex AI, Azure ML
005

Model Deployment & Serving

Design scalable environments for experimentation, distributed training, hyperparameter tuning, and GPU workloads.
Deliverables: KServe, BentoML, Triton, Seldon Core
006

Model Monitoring & Drift Detection

Monitor model health, prediction quality, drift, and business impact before performance degradation affects users.
Deliverables: Data drift monitoring, Prediction drift monitoring, Performance tracking, KPI correlation
007

Governance & Compliance

Establish auditability, lineage, approvals, and documentation required for enterprise and regulated environments.
Deliverables: Model cards, Audit trails, Approval workflows, Compliance reporting
008

LLMOps & Generative AI

Operate production-grade AI applications with prompt management, RAG architectures, evaluation frameworks, and cost controls.
Deliverables: RAG pipelines, Prompt versioning, LLM evaluations, Cost monitoring
WHAT WE DO

From experiment to production. End to end.

Whether you’re deploying your first model or managing dozens in production, we build the systems that make machine learning reliable, scalable, and operational.

001

MLOps Maturity Assessment

Benchmark your current ML operations against industry standards and identify the biggest gaps slowing production adoption.

Deliverables: Maturity scorecard, Infrastructure audit, Governance assessment, Prioritized roadmap

002

Training Pipelines & Automation

Automate model training, validation, testing, and deployment workflows so teams spend less time managing processes and more time improving models.

Deliverables: Reproducible pipelines, Automated retraining
Version control, Experiment tracking

003

Feature Stores & Data Pipelines

Build consistent data foundations that eliminate training-serving skew and reduce duplicated feature engineering work.

Deliverables: Feature stores, Data lineage, Feature reuse, Data quality controls

004

Model Training Infrastructure

Design scalable environments for experimentation, distributed training, hyperparameter tuning, and GPU workloads.

Deliverables: Kubeflow, SageMaker, Vertex AI, Azure ML

005

Model Deployment & Serving

Design scalable environments for experimentation, distributed training, hyperparameter tuning, and GPU workloads.

Deliverables: KServe, BentoML, Triton, Seldon Core

006

Model Monitoring & Drift Detection

Monitor model health, prediction quality, drift, and business impact before performance degradation affects users.

Deliverables: Data drift monitoring, Prediction drift monitoring, Performance tracking, KPI correlation

007

Governance & Compliance

Establish auditability, lineage, approvals, and documentation required for enterprise and regulated environments.

Deliverables: Model cards, Audit trails, Approval workflows, Compliance reporting

008

LLMOps & Generative AI

Operate production-grade AI applications with prompt management, RAG architectures, evaluation frameworks, and cost controls.

Deliverables: RAG pipelines, Prompt versioning, LLM evaluations, Cost monitoring

IMPACT

Turning AI investment into measurable outcomes.

The goal isn’t more tooling. It’s faster delivery, lower operational overhead, and reliable AI systems that create measurable business impact.

In days

Model deployment timelines reduced through automation.

More data science capacity focused on model development.
0 -50%
Reduction in ML operational overhead.
0 %
Traceability in full model lineage, approvals, and auditability.
0 %
Why Techanek

Built for the gap where most ML projects fail. 

The goal isn’t to produce recommendations. It’s to leave your organization stronger than we found it.

We speak both languages

We bridge the gap between data science and engineering to build systems that scale in production.

Tool-agnostic by design

We recommend the platforms and frameworks that fit your environment, not a vendor partnership

Governance built in

Audit trails, approvals, compliance controls, and documentation are designed from day one.

Beyond traditional MLOps

From LLMOps and RAG operations to knowledge transfer and team enablement, we build systems your team can confidently own.

Experiment Tracking & Registry

Your AI investment deserves more than a notebook demo.

FAQs

Frequently asked questions

Honest answers to the questions that matter before you commit to a project, platform, or transformation.

Can't find answers you're looking for?

We have data scientists but no ML engineers. can you help?

Yes. This is one of the most common situations we see. We build the deployment, monitoring, and operational infrastructure so data scientists can focus on model development while automated pipelines handle the rest.

Traditional ML focuses on training pipelines, model registries, and drift detection. GenAI introduces prompt versioning, evaluation frameworks, hallucination monitoring, RAG pipelines, and token cost management. Most organizations need both.

Both are valid. SageMaker offers managed infrastructure and strong AWS integration. Open-source stacks provide flexibility and vendor independence. We help choose based on your team, cloud strategy, and compliance needs.

Financial services, healthcare, and insurance require model documentation, validation records, lineage tracking, and approval workflows. We embed governance directly into the MLOps lifecycle.

Most teams see their first production-ready MLOps foundation within 6-10 weeks. Larger platforms with monitoring, governance, and automated retraining typically take 3-5 months.

Can't find answers you're looking for?

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