Sytex Reports
by Sytex
|
Skill Details
Repository Files
2 files in this skill directory
name: sytex-reports description: | This skill should be used when the user asks about Sytex data: tasks, projects, forms, sites, clients, materials, workflows, users, or AI credits consumption. Trigger phrases: "how many tasks", "tasks completed by", "AI credits consumed", "report from Sytex", "statistics for [org name]", "data from [instance]". Covers organizations in: app, claro, ufinet, dt, adc, atis, exsei, integrar, torresec, telesoluciones. allowed-tools:
- Bash(~/.claude/skills/database/:)
- Read
Sytex Reports
Generate reports from Sytex using the Data Warehouse (primary) or instance databases.
Decision Flow
What type of report?
├── Business (tasks, forms, projects, sites, clients...) → Data Warehouse
├── Metrics/AI consumption → sytex_*/metrics_* tables
└── Other/Unknown → Discovery in sytex_*
1. Data Warehouse (Primary Source)
Pre-aggregated, denormalized tables. No JOINs needed.
Architecture
Database: data_warehouse
Tables: {org_id}_dw_{entity}
Example: 113_dw_task = Tasks for org 113 (IHS Towers)
Find org_id by Name
Search across all instances:
for db in sytex_app sytex_claro sytex_ufinet sytex_dt sytex_adc sytex_atis sytex_exsei sytex_integrar sytex_torresec sytex_telesoluciones; do
~/.claude/skills/database/database --db us --database $db query "
SELECT '$db' as instance, id as org_id, name
FROM organizations_organization
WHERE name LIKE '%SEARCH_TERM%' AND is_inactive = 0
" table 2>/dev/null | grep -v "mysql:" | grep -v "^$"
done
Available Entities
| Entity | Description |
|---|---|
task |
Tasks (includes project, workflow, client, sites, staff) |
form |
Forms |
workstructure |
Workflows/WBS |
site |
Sites |
networkelement |
Network elements |
client |
Clients |
material / materialstock |
Materials and stock |
profile |
User profiles |
purchaseorder / purchaseorderitem |
Purchase orders |
quotation / quotationitem |
Quotations |
simpleoperation / simpleoperationitem |
Simple operations |
entryanswer |
Form answers |
customfield |
Custom fields |
taskstatushistory / formstatushistory |
Status history |
chatmetrics |
Chat metrics |
stopper |
Stoppers |
taskdocument |
Task documents |
siteaccessrequest |
Site access requests |
Example Query
# Tasks completed this month for org 113
~/.claude/skills/database/database --db us --database data_warehouse query "
SELECT task_code, task_name, task_status, project_name,
task_finish_date, task_assigned_staff_name
FROM 113_dw_task
WHERE task_finish_date >= DATE_FORMAT(NOW(), '%Y-%m-01')
AND task_status = 'Completada'
ORDER BY task_finish_date DESC
LIMIT 20
" table
The _dw_task table has ~90 columns including: task_code, task_name, task_status, project_code, project_name, client_name, site_codes, assigned_staff_email, all dates, task_url, etc.
2. Metrics (AI Credits, API Costs)
Metrics are in instance databases, NOT in data warehouse.
AI Credits Consumption
~/.claude/skills/database/database --db us --database sytex_<instance> query "
SELECT
DATE_FORMAT(date_time, '%Y-%m') as month,
SUM(amount) as credits,
COUNT(*) as transactions
FROM metrics_meteredproductusage
WHERE unit_name = 'sytex_ai_credit'
AND date_time >= '2025-01-01' AND date_time < '2026-01-01'
GROUP BY DATE_FORMAT(date_time, '%Y-%m')
ORDER BY month
" table
Third Party API Costs
~/.claude/skills/database/database --db us --database sytex_<instance> query "
SELECT provider_name, ROUND(SUM(total_price), 2) as cost_usd, SUM(amount) as units
FROM metrics_thirdpartyserviceusage
WHERE date_time >= '2025-01-01' AND date_time < '2026-01-01'
GROUP BY provider_name
ORDER BY cost_usd DESC
" table
3. Discovery (For Everything Else)
When unsure which table to use:
# List tables matching keyword
~/.claude/skills/database/database --db us --database sytex_<instance> tables 2>&1 | grep -i "keyword"
# Check schema
~/.claude/skills/database/database --db us --database sytex_<instance> describe table_name
# Sample data
~/.claude/skills/database/database --db us --database sytex_<instance> query "SELECT * FROM table_name LIMIT 5" table
# List distinct values
~/.claude/skills/database/database --db us --database sytex_<instance> query "SELECT DISTINCT column FROM table_name" table
Connections
| Connection | Instances |
|---|---|
us |
app, claro, ufinet, dt, adc, atis, exsei, integrar, torresec, telesoluciones |
eu |
app_eu |
Best Practices
- Use Data Warehouse first - It's denormalized and fast
- Filter by is_inactive = 0 - Exclude deleted records (in sytex_* tables)
- Use LIMIT - Especially on first queries
- Verify schema - Use
describewhen unsure about columns
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