We identify what isn’t yet known,
Assemble normalized datasets
and deliver core value through a multidimensional approach.

FROM DATA TO INSIGHT,

FROM INSIGHT TO RESULTS

Syntrix is a data crawling and analytics firm specialized in the manufacturing and financial industries. We collect and cleanse data of any form, then fuse it with clients’ internal databases using advanced algorithms and Large Language Model (LLM) analysis to produce actionable insights. Our consulting services operationalize these insights to drive measurable revenue improvement.

Display of electronics including a television showing a nature scene, a smart refrigerator, and a washing machine in an appliance store.

What Our Clients Say

“We now see the demand-flip window 2–3 weeks before each event. Syntrix bound collect–clean–model–decision into one pipeline, so inventory and advertising look at the same picture.”

Former client “A”
E-commerce Director (Manufacturing)

A modern table lamp with a metallic finish, turned on and casting light on a wooden table in a minimalistic setting.

“Syntrix didn’t argue buy or don’t buy; it quantified at what price and under which covenants. We agreed the risk guardrails—and operated within them.”

Former client “B”
Real Estate investor (Financial Services)

Our Services

01

Strategic
Data Crawling

A person walking on a rainy city street at night, using a laptop with digital light streaks emanating from it, surrounded by illuminated storefronts and pedestrians with umbrellas.

Policy-compliant acquisition of heterogeneous sources—web, open-data portals, APIs, document stores, and system logs—via distributed crawlers with change-detection scheduling. We enforce the Robots Exclusion Protocol, then de-duplicate, normalize, and canonicalize into standard packets engineered for downstream pipelines and immediate client interoperation.

02

A man stands in front of a futuristic display in a city at night, viewing a large digital Christmas tree decorated with glowing, colorful geometric shapes, with tall city buildings in the background.

Reliability is elevated through schema mapping, type normalization, entity resolution, and rigorous Quality Assurance, controls for missing values and outliers. Personally Identifiable Information, masking, role-based access control, and auditable lineage/validation deliver complete, accurate datasets provisioned to the enterprise Data Warehouse.

Data Cleansing

03

We Decision-grade insight is produced by fusing statistical methods and machine learning with LLM (Large Language Model) pipelines for unstructured text. Through XAI (Explainable AI), results are tied directly to KPI and written back as predictions, labels, and alerts to client databases to close the loop.

Data Analytics & Interpretation

A person observing a large, holographic, neon-lit 3D cube with glowing blue and pink digital patterns inside, set in a dark, high-tech environment.

Your Questions, Answered

How easily can Syntrix connect to our existing systems and data? What safeguards cover security and privacy?

Syntrix is system-agnostic. We connect to any enterprise stack—on-premises or cloud—and align our controls one-for-one with your existing policies, including identity governance, network segmentation, encryption in transit/at rest, logging, and change control. Data remains your property. We neither repurpose nor disclose client data, and we do not train models on it. Access is least-privilege, fully audited, and—if required—confined to your environment.


What types of data can you collect, and from which sources? Can you work with unstructured files like spreadsheets, PDFs, and logs?

If your team can observe it, we can operationalize it: structured, semi-structured, and unstructured assets such as documents, spreadsheets, PDFs, images, logs, and web pages. Beyond internal stores, Syntrix continuously captures external signals—web events, price changes, competitor activities, news and policy shifts—then normalizes, time-stamps, and quantifies them into features suitable for analysis and decisioning.


When should we expect visible results, and how will success be measured?

Within 90 days of scope lock, we stand up the initial corpus and baseline analytics. Thereafter, precision, coverage, and automation mature on 6 to 12 month cycles aligned to your use cases and data cadence. Milestones, metrics, and success criteria are defined upfront and validated at each increment.

Data-Driven Decisions to your company

Move from potential to results

Engage top-tier specialists with demonstrated results. Define an evidence-based plan that turns potential into performance.