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AI
Tekan Play Demo untuk lihat bagaimana smart routing jimat 87% token berbanding AI ulang 100 kali.
Demo Complete — 87% Token Efficiency Achieved
01 WhatsApp Command
02 Requirement Analysis
Mode
Token Efficiency Study
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03 Python Script Generation
1
IN
Load bank statements100 sets from different SMEs & bank formats
2
SG
Segment by formatGroup by bank type, detect common patterns
3
RT
Route intelligentlyRules engine (1.2k) → AI (4-9k) → Human (rare)
4
RP
Generate statementsOutput 100 financial reports with 87% fewer tokens
import json, csv
BATCHES = ['maybank.csv','cimb.csv','bni.csv'] # segmented by bank
ROUTES = {'rules': {'tokens': 2000, 'pct': 72},
'ai': {'tokens': 6500, 'pct': 23},
'human': {'tokens': 12000,'pct': 5}}
def route_statement(stmt):
if stmt['format'] in ('standard','known'):
return 'rules' # ~1.2-2.8k tokens
if stmt['anomaly_score'] > 0.7:
return 'human' # ~12k tokens
return 'ai' # ~4-9k tokens
def process_batch(batch):
total = 0
for stmt in batch:
route = route_statement(stmt)
total += ROUTES[route]['tokens']
stmt['route'] = route
return total
all_statements = [s for b in BATCHES for s in csv.DictReader(open(b))]
total = process_batch(all_statements)
print(f"Total tokens: {total} (vs 7.5M baseline)")
print(f"Efficiency: {round((1 - total/7500000)*100)}% saved")
04 Block Diagram
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05 System Architecture
Smart routing architecture: Input → Segment → Route → Process → Output. AI hanya untuk kes kompleks.
Rules Engine
1.2k–2.8k tokens
Standard transactions, known bank formats — 72% of all SMEs
Selective AI
4k–9k tokens
Complex patterns, ambiguous entries — 23% of SMEs
Human Review
~12k tokens (rare)
High-risk or exceptions — 5% of SMEs
NOTE: Rules engine mesti dikemaskini secara berkala untuk bank formats baru. AI fallback handle sisanya.
06 Live Token Comparison
Mula Simulasi
AI Agent One-by-One
0 tokens
SMEs: 0/100
Detached + Smart Routing
0 tokens
SMEs: 0/100
The smartest AI system is not the one that uses the most tokens.
It is the one that knows precisely when — and how — to use them.
Terminal Log
[SISTEM] AINNA Token Orchestrator sedia
System Architecture
CL Command Layer
WhatsApp instruction
100 SME bank statements
AG Agent Layer
Statement segmentation
Smart routing logic
Token optimization
EX Execution Layer
Rules engine (72%)
Selective AI (23%)
Human review (5%)
Safety Notes
- Rules engine perlu dikemaskini untuk bank formats baru secara berkala.
- AI fallback handle kes yang rules tak dapat proses — jangan skip.
- Human review wajib untuk transaction high-risk atau anomaly >0.7.
- Token counts adalah estimate kasar — actual bergantung pada model dan prompt.