Simor

Data Infrastructure for Production AI

Practical writing on AI data engineering, feature stores, and the infrastructure choices that determine whether AI systems work in production.

AI Assistants in the Enterprise: Implementation Guide
AI Assistants in the Enterprise: Implementation Guide
16 May, 2024 | 03 Mins read

# AI Assistants in the Enterprise: Implementation Guide Enterprise AI assistants differ from consumer chatbots - they require integration with internal systems, governance frameworks, and security co

Scaling Machine Learning Infrastructure: From POC to Production
Scaling Machine Learning Infrastructure: From POC to Production
10 May, 2024 | 04 Mins read

# Scaling Machine Learning Infrastructure: From POC to Production Moving a machine learning model from notebook to production exposes gaps that notebooks hide. Data scientists produce working models

Deploying ML Models on Kubernetes: Best Practices
Deploying ML Models on Kubernetes: Best Practices
06 May, 2024 | 03 Mins read

# Deploying ML Models on Kubernetes: Best Practices ML models in production need orchestration, scaling, and monitoring infrastructure. Kubernetes provides these capabilities, though the learning cur

Fine-Tuning LLMs for Domain-Specific Applications
Fine-Tuning LLMs for Domain-Specific Applications
27 Apr, 2024 | 04 Mins read

# Fine-Tuning LLMs for Domain-Specific Applications General-purpose LLMs handle broad tasks, but business applications often need specialized terminology and knowledge. Fine-tuning adapts pre-trained

Change Data Capture (CDC) for Real-Time Analytics
Change Data Capture (CDC) for Real-Time Analytics
10 Apr, 2024 | 02 Mins read

Traditional ETL processes operate on batch schedules, identifying changes through comparison mechanisms. Change Data Capture (CDC) identifies and captures changes as they occur, enabling immediate pro

Streaming Data Processing for Fraud Detection
Streaming Data Processing for Fraud Detection
03 Apr, 2024 | 02 Mins read

Fraud detection requires analyzing events as they happen. Batch processing that examines data hours after transactions cannot prevent fraud. Streaming data processing analyzes events in real-time, ena

Data Pipelines for Time Series Forecasting
Data Pipelines for Time Series Forecasting
21 Mar, 2024 | 02 Mins read

Time series forecasting requires specialized pipeline architecture. Unlike standard batch processing, time series work demands strict chronological ordering, historical context, time-based feature eng

Semantic Layer Implementation: Challenges and Solutions
Semantic Layer Implementation: Challenges and Solutions
20 Mar, 2024 | 02 Mins read

A semantic layer provides business-friendly abstraction over technical data structures, enabling self-service analytics and consistent metric interpretation. Implementing one involves technical challe

Edge AI: Deployment Strategies for Real-World Applications
Edge AI: Deployment Strategies for Real-World Applications
13 Mar, 2024 | 02 Mins read

Edge AI deploys AI algorithms on edge devices, enabling local processing without constant cloud connectivity. This approach addresses latency, bandwidth, privacy, and reliability challenges that cloud